This invention relates to data mining and visualization. In particular, the invention relates to methods for analyzing text, numerical, categorical, and sequence data within a single framework. The invention also relates to an integrated approach for interactively linking and visualizing disparate data types.
A problem today for many practitioners, particularly in the science disciplines, is the scarcity of time to review the large volumes of information that are being collected. For example, modern methods in the life and chemical sciences are producing data at an unprecedented pace. This data may include not only text information, but also DNA sequences, protein sequences, numerical data (e.g., from gene chip assays), and categoric data.
Effective and timely use of this array of information is no longer possible using traditional approaches, such as lists, tables, or even simple graphs. Furthermore, it is clear that more valuable hypotheses can be derived by simultaneous consideration of multiple types of experimental data (e.g., protein sequence in addition to gene expression data), a process that is currently problematic with large amounts of data.
Visualization-based tools for analyzing data are discussed in, for example, Nielson G M, Hagen H, Muller H, eds., (1997) Scientific Visualization, IEEE Computer Society, Los Alamitos); (Becker R A, Cleveland W S (1987) Brushing Scatterplots, Technometrics 29:127-142; Cleveland W S (1993) Visualizing Data, Hobart Press, Summit, N.J.); (Bertin J (1983) Seminology of Graphics, University of Wisconsin Press, London; Cleveland W S (1993) Visualizing Data, Hobart Press, Summit, N.J.). These tools have focused largely on data characterization, and have provided limited user interactivity. For example, the user may gain access to underlying information by “brushing” an item with a pointer.
These tools, however, have significant drawbacks. Although current tools can handle certain data types (e.g., text, or numerical data), they do not allow a user to interact with disparate data types (i.e., text, numerical, categoric, and sequence data) within an integrated data analysis, mining, and visualization framework. Furthermore, these tools do not allow a user to interact well between different visualizations in the manner required to gain knowledge.
What is needed, therefore, is a tool that allows a user to analyze, mine, link, and visualize information of disparate data types within an integrated framework.
Systems and methods consistent with the present invention aids a user in analyzing large volumes of information that contain different types of data, such as textual data, numeric data, categorical data, or sequential string data. Such systems and methods determine and display the relative content and context of information and aid in identifying relationships among disparate data types.
More specifically, one such method defines a uniform data structure for representing the content of an object of different data types, selects attributes of different objects of a variety of different data types that may be represented in the uniform data structure and operates on the selected attributes to produce first representations of the objects in correspondence with the uniform data structure.
The data types may include numeric, sequence string, categorical and text data types. An index may be produced that includes second representations of non-selected attributes of a particular object and that associates the non-selected attributes with a particular first representation. The first and second representations may be vector representations. A first set of the selected attributes associated with a first set of objects may be used to determine the relationships among the first set of objects of a particular data type and non-selected attributes associated with the first set of selected attributes may be used to correlate objects represented by the first set of selected attributes with a second set of objects represented by a second set of selected attributes. The first and second set of objects may be displayed in first and second windows on a display screen and the second set of objects that corresponds to the selected object or objects may be highlighted.
A method consistent with the present invention identifies relationships among different visualizations of data sets and includes displaying first graphical results of a first type analysis performed on selected attributes of a first set of objects and displaying second graphical results of a second type analysis performed on selected attributes of a second set of objects. Certain objects represented in the first graphical results may be selected and corresponding objects represented by the second graphical results that correspond to the certain objects are highlighted. The highlighting may be based on attributes not used for creating the first graphical results.
Another aspect of the present invention is directed to a system and a method for visualization of multiple queries to a database that includes selecting multiple queries to a database, querying records in the database based on the multiple queries, creating a query matrix indexed based on the selecting, and populating the query matrix based on the querying.
Another method consistent with the present invention interactively displays records and their corresponding attributes and includes generating a first 2-D chart for a first record, where at least two attributes associated with the first record are shown along one axis, and the values of the attributes are shown along the other axis. Input is received from a user selecting the first record on the first 2-D chart and an index is analyzed to determine if the first record is shown in another view. If the first record is shown in another view, the visual representation of the first record is altered in the another view based on the user input.
Another method consistent with the present invention interactively displays records and their corresponding attributes and includes generating a 2-D scatter chart that depicts a plurality of records. A 2-D line chart is generated for a group of records contained in a portion of the 2-D scatter chart. At least two attributes associated with the group of records are shown along one axis, and a statistical value for each of the at least two attributes is shown along the other axis. A 2-D line chart is superimposed at a location on the 2-D scatter chart that is based on the location of the group of records on the 2-D scatter chart.
The accompanying drawings, which are incorporated in, and constitute a part of, this specification illustrate at least one embodiment of the invention and, together with the description, serve to explain the advantages and principles of the invention. In the drawings,
a is a block diagram of a computer system and program modules consistent with the present invention;
b,
2
c,
2
d and 2e are block diagrams of program modules consistent with the present invention;
a and 4b are screen shots associated with a data editor consistent with the present invention;
a-5d are flow diagrams of a processes associated with a view editor consistent with the present invention;
a-6m are screen shots associated with a view editor consistent with the present invention;
a and 7b are flow diagrams of processes associated with an analysis processing module consistent with the present invention;
Reference will now be made in detail to one or more embodiments of the present invention as illustrated in the accompanying drawings. The same reference numbers may be used throughout the drawings and the following description to refer to the same or like parts.
A. Overview
Systems and methods consistent with the present invention are useful in analyzing information that contains different types of data and presenting the information to the user in an interactive visual format that allows the user to discover relationships among the different data types. Such methods and systems include high-dimensional context vector creation for representing elements of a dataset, visualization techniques for representing elements of a dataset including methods for indicating relationships among objects in a proximity map, and interaction among datasets including linking the visualizations and a common set of interactive tools. In an embodiment, the interactions, regardless of data type, among the visualizations and the common set of tools for the interactions is enabled by maintaining meta data, as discussed herein, in a common set of file structures (or database).
Methods and systems consistent with the present invention may include various visualization tools for representing information used in connection with the present invention. A tool for visualizing multiple queries to a database is provided. In another visualization tool, if a first record of a 2-D chart of one view is shown in a second view, the visual representation of the first record is altered in the second view based on the user input. In another visualization tool, a 2-D line chart is superimposed at a location on a 2-D scatter chart that is based on the location of a group of records on the 2-D scatter chart. Other tools consistent with the present invention may be used in conjunction with the methods and systems described herein.
As used herein, a record (or object) generally refers to an individual element of a data set. The characteristics' associated with records are generally referred to herein as attributes. A data set containing records is generally processed as follows. First, the information represented by the records (including text, numeric, categoric, and sequence/string data) are received in electronic form. Second, the records are analyzed to produce a high-dimensional vector for each record. Third, the high-dimensional vectors may be grouped in space (i.e. a coordinate system) to identify relationships, such as clustering among the various records of the data set. Fourth, the high-dimensional vectors are converted to a two-dimensional representation for viewing purposes. The two-dimensional representation of the high-dimensional vectors is generally referred to herein as “projection.” Fifth, the projections may be viewed in different formats according to user-selected options, as shown by the four views (110,120,130, and 140) on display monitor 100 in
Systems and methods consistent with the present invention enable a user to select a record in view 110 and cause the corresponding record in another view to be highlighted. For example, selecting a particular record in view 110 causes the corresponding records 122 and 132 to be highlighted in views 120 and 130, respectively. The highlighted points may represent different analyses performed on the same records or may represent different data types associated with the records.
B. Architecture
a depicts a computer system 200 consistent with the present invention. Computer programs used to implement methods consistent with the present invention are generally located in a memory unit 210, and the processes of the present invention are carried out through the use of a central processing unit (CPU) 280 in conjunction with application programs or modules. Those skilled in the art will appreciate that memory unit 210 is representative of read-only, random access memory, and other memory elements used in a computer system. For simplicity, many components of a computer system have not been illustrated, such as address buffers and other standard control circuits; these elements are well known in the art.
Memory unit 210 contains databases, tables, and files that are used in carrying out the processes associated with the present invention. CPU 280, in combination with computer software and an operating system, controls the operations of the computer system. Memory unit 210, CPU 280, and other components of the computer system communicate via a bus 284. Data or signals resulting from the processes of the present invention are output from the computer system via an input/output (I/O) interface 290.
The computer program modules and data used by methods and systems consistent with the present invention include visualization set up programs 212, processing programs 220, meta data files 230, interactive graphics and tools programs 240, and an application interface 250. The visualization set up programs 212 determine the name to be used for a collection of records identified by a user, determine the formats to be used for reading files associated with the records, identify formatting conventions for storing and indexing the records, and determine parameters to be used for analysis and viewing of the records. The processing programs 220 transform the raw data of the identified records into meta data, which in turn is used by the interactive visualization tools. The meta data files 230 include the results of statistical feature extraction, n-space representation, clustering, indexing and other information used to construct and interact among the different views. The interactive graphics and tools programs 240 enable the user to explore and interact with various views to identify the relationships among records. The application programming interface (API) 250 enables the components 212, 220, 230, and 240 to exchange and interface information as needed for use in analysis and visual display.
The visualization setup programs 212 further include a data set editor 214 and a view editor 216. The processing programs 220 further include vector programs 222, cluster programs 224, and projection programs 226. The meta data files 230 are a subset of databases and files 260.
The data set editor 212 enables the user to define the collection of records (i.e., a data set) to be analyzed, identifies the data type, and creates directories for use in organizing the data of the data set. The view editor 216 sets up the user's raw data for viewing by the interactive tools and graphics. Vector programs 222 create high-dimensional context vectors that represent attributes of the records of the data set. Cluster program 224 groups related records near each other in a given space (cluster) to enable a user to visually determine relationships. Projection programs 226 convert high-dimensional representations of the records of a data set to a two-dimensional or three-dimensional representation that is used for display. The databases and files 260 contain data used in conjunction with the present invention, such as the meta data 230.
C. Architectural Operation
1. Data Collection (Data Set Editor)
If the validation process determines that the data is sequence data, such as genome sequence data (step 312), the process determines whether the sequence data is in FastA file format (step 322) or whether the sequence data is in a SwissProt file format (step 324). An example FastA input file is provided in Appendix B. The operations and data associated with processing sequence data is discussed in more detail in U.S. patent application Ser. No. 09/409,260, now issued as U.S. Pat. No. 6,898,530, entitled “Methods and Apparatus for Extracting Attributes from Sequence Strings and Biopolymer Material” filed on Sep. 30, 1999, by Jeffrey Saffer, et al. If the sequence data is not in either of these formats, an error message is generated (step 320). If, however, the data is either a FASTA file (step 322) or a SwissProt file (step 324), the appropriate formats and delimiters, as discussed herein, are determined to be used for the respective FASTA file or SwissProt file (step 330). After the appropriate format/delimiters for the data type are determined (step 330), the corresponding format file/record delimiters are established (step 340). The format file/record delimiters specify the valid formats for reading the files and identifies the meta data files that are to be used for subsequent processing of the data set as discussed herein.
A file directory 360 is created for storing the meta data files associated with the data set (step 350). The file directory 360 includes a document catalog file (DCAT) 362 and a data set properties file 364. The BCAT file 362 is used as a master index for all records in the data set. The indexes stored in the DCAT file are used to integrate the information associated with the various views selected for the data set. For example, the DCAT file 362 contains indexes that associate all the data of a data set with a particular view, although only a subset of the data set is used to create the view. The properties file 364 is also produced and stored in the file directory and contains information about the source data files for the view, including their type (corpus type), the number and full path (location) for the source files, the format used, and the date created. In addition, the properties file keeps track of subsequently processed views including the subdirectory where those views reside. An example properties file is provided in Appendix A.
a and 4b depict exemplary screen shots presented on a display monitor to a user for defining a new data set (i.e., collection of records) using data set editor 212. A user names and defines a data set using the data set editor 212. When the data set editor is selected, a graphical interface screen 400 is presented to a user for use in defining options or parameters associated with the data set. For example, graphical interface screen 400 is presented to a user when the user selects the sources tab 410.
The user may enter a name for the data set in a field 412 and may specify the data set type as indicated by the selection options 414, such as array data, protein or nucleotide sequences, or text. The source of this data set may be specified in the field 418 as indicated by the directory and subdirectory specification 420. The user may select the add, view, or delete options 424 to perform the function indicated by the name on the data set source. The user may save the data as indicated by the option 426 or continue to a new view as indicated by the option 428.
By selecting the format tab 440, the user may specify how fields contained within the source file are delimited by selection of a field delimiter option 442. The field delimiter options illustrated include an option to delimit the field by a colon, comma, space, tab, or a user defined delimiter.
2. Analysis and View Setup (View Editor)
a illustrates a preferred implementation of a process used for creating parameters to be used in defining the type of analyses or views for a data set, as performed by view editor 216. The user may enter this information using a graphical interface as depicted in
The user is first requested to name the view (step 510) and also is requested to identify the directory locations of the source files (step 520). The user is requested to specify the format of the source data (step 530).
The user is also requested to provide preparation parameters (step 540). The processes associated with step 540 are discussed in more detail in
Referring to
c illustrates a preferred implementation of the processes associated with gathering vector creation parameters within the view editor 216 (
If the data is not sequence data (step 552), the view editor determines whether the data is text data (step 555). If the data is text data, text specific text engine parameters are requested from the user (step 556) such as the text engine parameters discussed above (step 554). If the data is not text data (step 555), no 5 user specified parameters are needed and default parameters may be used (step 557). The text engine parameters may be used if desired (step 554).
d illustrates a preferred implementation of a process for specifying clustering parameters. Various types of clustering may be used such as k-means or hierarchical clustering as known to those skilled in the art. The view editor 216 presents a display screen to the user for the user to specify the clustering choice (step 561). The process determines whether k-means clustering has been chosen (step 562). If k-means clustering is requested (step 562), k-means clustering parameters are requested from a user or obtained (step 563) such as the number of clusters, the number of iterations, the cluster seed method or whether correlation order is to be used (step 564). If k-means clustering is not requested (step 562), the process determines whether the user desires hierarchical clustering (step 565), and displays or gets hierarchical clustering parameters (step 566). The hierarchical clustering parameters may include determining the number of clusters or cluster coherence values to be used and whether the user desires correlation order for the clusters may be determined (step 567). If hierarchical clustering is not desired (step 565), no parameters are required (step 568).
Referring to
A user may perform any number of mathematical manipulations on the numeric data (one or more manipulations or transformations of the data is referred to as an operation set). These options include various logarithmic operations, methods for normalizing data, methods for filing missing data points, and all algebraic functions. Referring to
e shows the screen displayed if the clustering selection tab 650 is selected. The user is presented with a set of field/trench forms 652 for which clustering operations may be applied. In the example illustrated, operation set 1, or numeric field name 1 may be chosen for clustering.
Referring to
Referring to
Referring to
Referring to
Referring to
Referring to
3. Common Formatting, Vector Creation, and Index Creation
b illustrates vector creation engines consistent with the present invention. In a preferred implementation, vector creation programs 222 include a numeric engine 222a, and a text engine 222b.
Referring to
High-dimensional context vectors are created based upon the attributes of the objects or records to be used for a view and vector indices that correspond to the particular view are created and stored in a vector file associated with the data set (step 706). The vectors are clustered using known clustering programs based upon information from the vector files (step 708). The cluster assignment file (.hcls), as discussed below, is created (step 708). Two dimensional coordinates of the records and centroids are calculated for creating a two dimensional projection of the clustered vectors (step 710). Two dimensional coordinate files are created (.docpt) for each document.
i. Vector Creation and Formatting
The visualizations discussed herein are based on high-dimensional context vector representations of the data. Thus, each type of data is represented in that manner. For purely numeric data, the vector representation is simply the values associated with each record attribute. For categorical data, the vector representation can be based on any method that translates categorical values or the distances between values as a number. For text data, the vector representation can be derived by latent semantic indexing as known to those skilled in the art or by related methods, such as described in U.S. patent application Ser. No. 08/713,313, entitled “System for Information Discovery,” filed on Sep. 13, 1996, now issued as U.S. Pat. No. 6,772,170. For sequence data, the context vector can be derived from any combination of numerical or categorical attributes of the sequence or by methods described herein. In addition, a user skilled in the art will recognize that the vectors created for each record do not have to be created from a single data type. Rather, the vectors can be created from mixed mode data, such as combined numeric and text data.
Not only are high-dimensional vectors created for each record of a data type, but also a common method is used to store that information about the records and their vectors so that later processes can access the data. Methods consistent with the present invention create a group of meta data files through the action of a series of computational steps (collectively referred to as the numeric engine) alone, or in conjunction with another series of computational steps, referred to as the text engine. The files that are produced are binary, for reasons of access speed and storage compactness. The files produced during vector creation are discussed below in more detail.
Unless otherwise noted, the files discussed below have the following characteristics: (1) Files are binary, and remain within a directory established for the analysis; (2) IDs and positions are 0-based; (3) Terms have been converted to lowercase, and are listed in ascending lexical order; (4) Record IDs are listed in ascending order (5) Index files (.<x>_index) contain cumulative counts of records written to the file they are indexing (.<x>). This cumulative count is for the current record and all previous records. This cumulative count is equivalent to the record no. of the next record; (6) Internal Numerical representations in Sun Microsystem Operating System are:
TermID (4 bytes)
TermCount (4)
DoeID (4)
DocCount (4)
streampos (4)
double (8)
Although the examples provided refer to flat file storage of the relevant information, one skilled in the art will recognize that a database could equally serve as the method for storing and retrieving the meta data.
The files produced during vector creation are:
ii. Visualization and Formatting
The visualization methods keep track of the location of the record representation and may use an object-oriented design. One type of visualization that is especially effective with high-dimensional data is a proximity map or a galaxy view. This and related visualizations can take advantage of methods to group the records in the high-dimensional space (clustering) and to project the arrangement of objects in high-dimensional space to two or three dimensions (projection).
Clustering can be by any of a number of methods including partition methods (such as k-means) or hierarchical methods (such as complete linkage). Any of these type methods can be used with the present invention. Despite the different methods, the computational processes that carry out the clustering create a common set of meta files that allow the chosen visualization method to access the clustering information, regardless of original data type.
The files produced during cluster analysis are:
After the .hcls file is produced, it may be resorted in correlation order ( a user-definable option).
An example .hcls file:
iii. Projection and Formatting
Projection can also be by any number of methods, for example, multidimensional scaling. Like cluster analysis, a specific projection method is not required for use with the present invention. However, as with clustering, the results of that projection are stored in a common format so that the visualization operations can retrieve the data independent of the original data type. Files created during projection from high-dimensional space to 2 or 3 dimensions are:
.cluster (2-D coordinates for the cluster centroids)
This file contains the 2-D coordinates for placing the cluster centroid on a galaxy view). For each cluster, a single line in the file contains:
Cluster ID
X coordinate
Y coordinate
An example .cluster file:
.docpt (2-D coordinates for the individual records)
This file contains the 2-D coordinates for placing the records on the Galaxy
For each record, a single line in the file contains
Record ID
X coordinate
Y coordinate
Cluster ID that the record belongs to
Example of a .docpt file
Note that the X and Y coordinates in the cluster and .docpt files are represented by a number between 0 and 1 inclusive. Also note that analogous file structures would be used for a 3D projection.
iv. Data Linkage and Formatting
Advantageously, the present invention enables linkage among all visualizations and data types (text, categorical, numerical, or sequence). Prior methods simply enabled linkage between views of the same data visualized using different attributes or visualizations. In addition to the attributes used to create the visualization, other attributes or descriptors for each data record are linked and readily available for interaction. These interactions are possible with any of the data types. That is, additional attributes related to a record, as well as those used for vector creation, are equally available regardless of data type. This is accomplished through the use of a common set of file or database structures created by the numeric or text engines. These files store information about each record attribute, which itself can be any of the data types. These files are created during an initial processing of the data and are independent of the specific visualization method to be employed. These files provide a common framework that can be addressed by any visualization or interactive tool through an API.
The files created to store and manage the ancillary data, such as data not used in creating a view, are:
In each of the above files, “terms” refer to text vocabulary words; “topics” refer to text vocabulary words deemed by statistical analysis to be most likely to convey the thematic meaning of the text; and “crossterms” refer to text vocabulary words that provide some meaningful description of the text content but are not topics. U.S. patent application Ser. No. 08/713,313, entitled “System for Information Discovery,” filed on Sep. 13, 1996 discusses topics and crossterms in more detail.
Many of the binary files are paired, with the first file holding the information, and the second providing an easily accessed index into the first. For example, the inverted file index consists of .ifi and ifi_index files. Each index is a list of the cumulative number of records in the data file.
Together these files provide indexing of and access to the textual information associated with each record including the distribution of keywords within each record and co-occurrences of those keywords. Furthermore, the files provide a catalog of all the categorical data including the distribution of the values. For numerical attributes not used in the actual vector representation, additional files are created using the .docv format so that this type of ancillary information will also be readily available to establish interaction among the various views.
The processes associated with producing the series of common files described above are depicted in
For sequence data in the commonly used formats FASTA (720) or SwissProt (722), a software module (724) reformats the input file to contain a series of fields that delineate the initial input and meta data created for the vector representation (726). The reformatting and processing of sequence data is discussed in more detail in the U.S. patent application Ser. No. 09/409,260, now issued as U.S. Pat. No. 6,898,530, entitled “Method and Apparatus for Extracting Attributes from Sequence Strings and Biopolymer Material” filed Sep. 30, 1999, which is incorporated herein by reference. Once in this tagged format (726), the text engine (730) is able to create all the required meta data files.
Numerical data, or any other data presented in a data matrix, (750) is received at the numeric engine (752). The data in the input file can be tab delimited or use any other delimiter. The numeric engine (752) creates the record vectors for data presented in a data matrix instead of the text engine. In addition to the numerical columns, the user may specify other columns within the table that can contain textual, sequence, or categorical information or additional numerical data that will not be used for the vector created. Usually, each row in the table becomes a record; however, the user can choose to make each column the record. Each user-defined set of columns becomes an attribute (also called fields) within the record. A set of numeric columns is specified by the user for subsequent clustering. The other fields, which can be numeric, text, categorical, or sequence, will become attributes of the record that can be queried, listed, or otherwise made available within the interactive tools.
If categorical data is specified by the file format (
Each field expected in the input file is defined by a section beginning with ||F followed by the field number (e.g., ||F0). For each field, the name is defined (in this case, title). Then the type of field is defined; this could be string (text or categorical), numeric, or sequence. Next, the delimiter tag for the field is defined. The METHOD line indicates whether the field is on a single line or continues to the next field. The DOC_VECTOR line tells the clustering module whether to use this information in the cluster analysis. The next item designates whether the field should be accessible within the query tools. The CORR line determines whether the contents of the field should be indexed for all possible associations. The next item defines whether the content is case sensitive or not. The following lines describe the behavior of the delimiter tag. WHOLE_BOUNDARY indicates whether the tag must be a single word or could be embedded within other text; LINEPOS indicates whether the tag must start at the beginning of a line or may be found elsewhere. Similar information would be given about each field in the data. This format file is stored in a directory associated with the view created.
Referring again to
Once the record vector is created (758), the numeric engine automatically creates a text engine compatible source file (i.e., reverse engineered tagged text file, 754), and corresponding format file (756) from the input column/row formatted table. An example format file produced from the numeric engine is shown in Appendix D. The new tagged text source file and format files (726) are used so that any text, categorical, or sequence information that may have been embedded within the original column/row files, can be processed by the same programs that operate on text, categorical, or sequence information. This subsequent processing is performed by the text engine (730), which reads the reverse-engineered tagged text source file and indexes the textual and/or categorical data fields within each record (732, 734 and 736). The result is a standardized set of meta data which is related to the user source data and which is available to all tools regardless of data type.
Although the numeric engine processes numerical data, the processing steps of the numeric engine places any of the other data types (text, categorical, or sequence) into an appropriate tagged field in the data file so that the text engine will handle it appropriately.
In summary, if the data input is array data, the array data (column/row formatted tables) is processed by the numeric engine (752). The numeric engine 752 creates a second vector that is identical to the format of the context vectors for sequence and text data produced by the text engine (730). However, in contrast to the text engine, which can automatically determine the features to use in the second vector, the numeric engine 1052 accepts a user defined series of mathematical operations to be performed on specified columns of the array data source file. In order to make the non-numeric contents, such as annotated notes, associated with the array file accessible for subsequent analysis, a format file is produced and a tag text format file is produced for the non-numeric contents associated with the numeric file. The associated non-numeric contents is used as an input to the text engine and the output is associated with the numeric data. Thus, the textual or categorical data associated with the numeric array data may be indexed and associated with the data as produced for other text data sets that are input to the text engine (730). Plain text data should be in a tagged text format and does not require any pre-processing prior to input to the text engine (730).
4. Clustering
c illustrates clustering programs. Three clustering modules or options k-means 224a, cluster-sid 224b, and correlation order 224c are provided. The clustering options may have a set of user definable parameters. The k-means module 224a clusters documents by establishing a user specified number of seed clusters and then iteratively assigns documents to those documents until a user specified number of iterations is reached or the process/algorithm determines that all the documents have been assigned to the clusters.
The k-means module 224a moves documents to minimize the sum of squares between objects and centroids as known by those skilled in the art. The cluster-sid 224b is an agglomerative/hierarchical clustering method that minimizes the maximal between clusters distance (farthest neighbor method). The output of the clustering process is a file containing a correlation ordered list of clusters and the record's IDs of their members. Those skilled in the art will recognize that other clustering algorithms can be used.
5. Projection
d illustrates projection programs 226. Systems consistent with the present invention may apply three separate processes to produce the meta data used to produce visualizations. These processes are carried out by three modules, the PCA-clusters module 226a, a triangulation module 226b, and a document projection module 226c. The PCA-clusters module 226a determines the principle components for each cluster and then determines the two dimensional coordinates for projecting the cluster centroids as known to those skilled in the art. The triangulation module 226b determines the boundaries for the area around each cluster centroid. These boundaries are later used in the doc projection module 226c to take into account the influence of records and neighboring clusters when determining how far from the center and on what side of the cluster centroid a record will be projected. The doc projection module 226c determines the x,y projection coordinates for each record in the visual analysis.
Referring to
6. Graphic Modules and Tools
Referring to
The galaxy module 240g displays records as a scatter plot. The master query module 240b applies a correlation algorithm to all indexed categorical data and creates a two dimensional matrix with values of a category along each axis. At each intersection in the matrix, a rectangle is drawn with sections colored to show the correlation between the categories. The following are analytical tools. The plot data module 240c displays a two dimensional line plot of the n-dimensional vectors created for analysis by the user, this is done for all records in the analysis or just those selected by the user. This module can also be used to examine any ancillary numerical attributes associated with the records. The record viewer module 240d displays a list of the currently selected documents, displays a text of a document, highlights terms selected by other tools, such as the query tool 240e. The query tools 240e and 240f enable the user to input requests to search for information that has been represented by a vector during the processing and analysis of the user's data set. The query tools 240e and 240f compare the user input to vectors representing the processed data set. The query tool 240f performs Boolean or phrase queries in any text or categorical field based on a users input. The query tool 240f also performs n-space queries based on the user's input and compares the input to the n-dimensional vector used for clustering. Thus, vectors that correspond to the user's input can be identified and highlighted. The numeric query tool 240f performs queries based on numeric values. The group tool 240g enables users to create groups of records of a data set, based on queries or based on user selections, and colors the groups for display in the galaxy visualization created by is the galaxy module 240a. The gist tool 240h determines the most frequently used terms in the currently selected set of records. The surface map module 240i provides a surface map that shows records and a plurality of attributes associated with those records.
Referring to
After the clustering and projection processes have been completed, the user may now view the results of the various operations performed on the user's data set. As discussed above, prior methods of visualization do not adequately provide access to relationships among attributes of data records other than those used in creating the visualization and, consequently, do not enable the identification of relationships between attributes of different visualizations or views. A system operating according to the present invention enables a user to identify relationships among different visualizations or views by maintaining all attributes associated with the data record for indexing although all attributes are not used in creating the visualization. Referring to
Methods and apparatus consistent with the invention also provide tools that allow a user to display information interactively so that the user can explore the information to discover knowledge. One such tool displays a set of records and their associated attributes in the form of superimposed two-dimensional line charts. The tool can also generate a single two-dimensional line chart that provides the average values for the attributes associated with the set of records. Each of these charts are linked to other views, such that a record selected in the charts is highlighted in the other views, and vice versa.
Another tool generates summary miniplots that may be quickly used by a user to obtain an overview of the attributes associated with a particular group of records. In particular, records shown in a scatter chart are organized into groups. The average values for the attributes associated with each group of records is used to form a two-dimensional line chart. The line chart is superimposed on the scatter chart, based on the location of the set of records.
As described above, one basic visual tool implemented by the invention for viewing information is a “galaxy view” as produced by the galaxy tool 350a. A galaxy view is shown in window 120 of
Next, a two-dimensional line chart is generated to visually depict the records and their associated attributes (stage 1315).
Chart 1405 contains a collection of superimposed line charts that depict a set of records. For example, line chart 1420 depicts one record within the set, while line chart 1425 depicts another. In the line charts, the x-axis (e.g., as shown by 1410) 15 represents attributes associated with the records, and the y-axis (e.g., as shown by 1415) represents the value of each attribute. The scale of each axis and the colors of the line charts may be modified by the user. Although this description focuses on line charts, other types of charts may be used to depict a set of records, as shown for example by the point chart shown as 1505 in
Methods consistent with the invention can also generate a two-dimensional line chart that shows relationships between the records shown in 1405 (stage 1320). For example,
In addition to viewing the information in graphical form, the user can interact with the line charts. The invention is capable of receiving input from a user selecting a portion of a chart (stage 1325). This may be achieved, for example, by using a device to point to a portion of map 1405 or by clicking a pointing device on a portion of map 1405. In response to this user input, the text-based description of the selected record and/or attribute is highlighted in legends 1440 and 1450 (stage 1330). In the example shown in
Furthermore, any selections made by the user on charts 1405 or 1430 are propagated to other views. For example, in response to receiving input from a user selecting a record on chart 1405, an index, as discussed above, is analyzed to determine if the record is shown in another view (stage 1335). If the record is shown in another display (stage 1340), the visual representation of that record in the other view is altered (stage 1345).
Next, a two-dimensional scatter chart is generated to visually depict the records (stage 1715). An example of such a chart is galaxy view 1805 shown in
For each group shown in galaxy view 1805, a two-dimensional line chart (summary miniplot) is generated that depicts some information about the records contained within that group (stage 1725). Each such summary miniplot is superimposed onto the two-dimensional scatter chart, based on the location of the group of records on the scatter chart (stage 1730). For example, chart 1805 contains a group of records 1815, for which summary miniplot 1820 represents the average attribute values. In the example shown, summary miniplot 1820 is superimposed at the centroid coordinate for the records in group 1815.
In alternate implementations, summary miniplots may be used to represent other groupings of record. For example, the records shown in a scatter chart may be grouped into quadrants of the scatter chart; and four summary miniplots could be used to represent the quadrants. Furthermore, each line charts, such as line chart 1820, can also be coded in a variety of ways (e.g., size, color, thickness of lines, etc.) to represent additional information (e.g., the variability within the group's records, the value of an unrelated field, etc.).
In addition to viewing the information in graphical form, the user can interact with the summary miniplots. The invention is capable of receiving input from a user selecting a summary miniplot (stage 1735). This may be achieved, for example, by using a device to point to a portion of map 1805 or by clicking a pointing device on a portion of map 1105. In
Furthermore, any selections made by the user of a summary miniplot on chart 1805 is propagated to other views. For example, in response to receiving input from a user selecting summary miniplot 1820, an index, as discussed above, is analyzed to determine if the records represented by summary miniplot 1820 are shown in another view.(stage 1745). If the records are shown in another display (stage 1750), the visual representation of the records in the other view are altered (stage 1755). Similarly, if a user selects a record in another view, the summary miniplot corresponding to that record can be highlighted.
The preceding visualizations provide the opportunity to query records by attributes represented, e.g., by categorical and numerical values and by sequence of text content. Because the visualizations support a limited number of queries, the visualizations cannot analyze large associations efficiently. A multiple query tool creates a visualization that provides an overview of a large number of comparisons automatically, presenting the user with information, e.g., about associations and their expectation. Further, the multiple query tool also provides information about associations between clusters and attributes as well as associations between sets of attributes.
Visualization of data begins with the selection of a data file. As shown in step 2020, a user selects a data file of interest. Alternatively, the data file can be preselected, when, e.g., the multiple query visualization is linked to another visualization analysis.
After a data set is selected, as shown in step 2030, the user sets the type of query. As shown in
Upon selection of a query type, a dialog box specific to the query type is displayed so that the user can set the parameters of the query.
For example,
In attribute source area 2210, labeled ‘Vocabulary Word(s),’ of dialog box 2200, the user types in the word or words that serve as attributes. For multiple words, a delimiter, such as a semicolon, could be used to separate entries. Other processing could also intelligently separate the words. Also, logical operators, such as Boolean AND, OR, NOT, could be included to produce a single composite attribute.
Also, the user can identify attribute words by pointing to a text file that contains a list of words. The user can identify the text file in attribute source area 2220, labeled ‘Vocabulary File.’ One format for this list would be a single keyword per line or a single phrase per line. With the text file, synonyms can also be identified. Vocabulary files including synonyms may have the following formats in one aspect of the present invention:
Format 1
Keyword1: alt_word1A; alt_word1B
Keyword2:
Keyword3: alt_word3A
Format 2
Keyword1
-alt_word1A
-alt_word1B
Keyword2
Keyword3
-alt_word3A
The processing of the identified text file will operate on files of the format(s) of existing user files, so as to avoid issues of file format conversion.
In attribute source area 2240, labeled ‘Category File,’ the user can identify attribute categories by pointing to a text file that contains a list of categories. Selecting categories from a file enables to the user to specify easily the order in which the categorical values would be displayed in the visualization and to allow the user to specify a hierarchy for those values. One format for the categorical value file is:
Further, to collapse the number of attribute columns, the categories could be combined, similarly to the use of synonyms, or, for hierarchical categorical data, the user could select a maximum hierarchical level. As shown in step 2040 of
For example, as shown in
Following creation of the query matrix, the query matrix is visualized, in step 2060. One visualization is a binary, co-occurrence scheme, as shown in
To minimize the display, the user can select a visualization based on cluster rows. When large numbers of records are to be analyzed, the cluster row visualization could be set as the default.
In this case, as shown in
When the matrix using cluster rows is visualized in step 2060, cells are colored or shaded to indicate their composite values.
Another more complex visualization, however, serves as the default when cluster rows are used. In this alternative visualization of cluster rows, the cells show association probabilities. The scheme of showing association probabilities would be to represent deviations as a difference from an expected value under a random distribution assumption. To calculate expected values, the total number of records containing each attribute, or the sum of the columns of the query matrix, is computed. Lower than expected values could be, for example, cool colors (blue (=−1) to green) and higher than expected will be hot colors (inverted black body with red =1). Deviations from an expected value under a random distribution assumption could also be represented as a ratio. Also, the probability of observing a number of attributes in a cluster of this size given this many total number of attributes are randomly distributed over all the clusters could also be represented. In this case, the values will range from 0 to 1 and the color display would have blue=0, white=0.5, and red=1; for example. To highlight extreme behaviors, the scale could be non-linear so that only the very high and very low probabilities are highlighted.
To compute association probabilities either an exact or approximate method is used for each of the association methods of the present invention. The exact method is precise at the cost of being computationally intensive. The approximate method can reduce the number of computations when the total number of objects and total number of occurrences of the attributes are relatively large. Further, the use of the laws of logarithms to reduce products and quotients to sums and differences, respectively, and exponentiation to a product will also save computing time.
The probability of observing what is observed given a random distribution indicates the possibility of observing certain number of occurrences of an attribute in a given cluster if the attribute is randomly distributed over all clusters. The lower the probability, the further the attribute distribution deviates from randomness. Described below are the exact method and approximate method for calculating this probability.
Equation 1 provides the exact method. Equation 1 is the discrete density function for a random variable having a hypergeometric distribution. The numerator consists of the product of two terms. The first term calculates how many ways to choose exactly m attributes out of M possible for the cluster of interest; the second term calculates the ways to assign the other (n-m) attributes which are not in the cluster of interest to the other clusters collectively. The denominator calculates the total number of ways to assign N objects to a cluster of size n.
where N: total number of objects in the data set
M: total number of occurrence of the attribute
n: number of objects in the given cluster
m: number of occurrences of the attribute in the given cluster
Equation 2 provides the approximate method. Equation 2 is the discrete density function for a random variable having a binomial distribution, where the probability of a success is M/N and the probability of failure is (1-M/N). When N and M are large, (N-n)/(N-1) is close to one; thus, Equation 2 provides a reasonably good approximation to the hypergeometric distribution. N, M, n, and m denote the same quantities as defined above in Equation 1.
Alternatively, the association probability can be represented as a measure of an unusual number of occurrences, which is a deviation of observed occurrence from the expected occurrence if the attribute is randomly distributed over all clusters. An exact method (Equation 3) or an approximate method (Equation 4) can be used. N, M, n, and m denote the same quantities in Equation 1. Note that the expectation is the sum over the range of the random variable of x of x multiplies p(x). Equation 3 uses hypergeometric distribution and Equation 4 uses a binomial method, similar to Equations 1 and 2, respectively. The exact method is very computationally expensive due to the summation, while summation in the approximate method can be calculated through and written into the simple form of Equation 4.
The deviation from expected occurrence can be measured using ether ratio or difference of the observed number of occurrences over (or from) the expected number of occurrences. The range of the ratio is between zero and infinity. A ratio value further away from 1 indicates a larger deviation from randomness.
Alternatively to make the deviation more comparable for various sizes of clusters, the difference between observed and expected occurrences is divided by the size of the cluster (Equation 6). Therefore, the range of this deviation measure is normalized between −1 and 1. A value further away from zero indicates a larger deviation from randomness.
While the order of attributes along the columns and the order of rows or clusters along the columns of the matrix can be selected by the user, using a menu item or by dragging rows and columns to new positions, for example, the order of the records or the order of the clusters is preferably automatically set to same correlation order as known to those skilled in the art. The default display for attributes is based on correlation order, with the attribute having the highest column sum being on the left-hand side.
Thus, visualizations for the record vs. attributes query type is explained. The processing involved in creating the query matrix and visualization for the remaining query types is similar to the process of records vs. attributes query type.
If the user selects an attribute vs. attributes query type in step 230, as shown in
Query dialog box 2260 operates similarly to records vs. attribute query dialog box 2200, except that the user will be specifying two sets of attributes (vocabulary words or categories).
When querying the database in step 2040 and creating the query matrix in step 2050, the matrix cell scores are generated as a cumulative measure of the number of records that contain both test attributes. Then, the score should be normalized against the number of records. In other words, for n records, i row attributes, and j column attributes:
Also, the total number of records that have each attribute is counted so that deviation from expected frequency can be calculated.
In step 2060, the attribute vs. attribute visualization follows the same mechanics as for records vs. attributes, but with a few differences. Specifically, in the default view for the attributes vs. attributes visualization, the default order for both axes would be the correlation order, with the column with the highest total score 5 (e.g., the highest average value) on the top or left, and the default mode for showing associations uses deviation from expectation using with lower than expected values shown as cool colors (blue (=−1) to green) and higher than expected shown as hot colors (inverted black body with red=1).
Another use of the multiple query tool visualization is rapid assessment of the correlation between the current experiment being analyzed and historical data. Such a visualization points to the similarities or differences for all equivalent data points (record and condition).
As shown in
In step 2040, the method determines where the current and historical experiments overlap. For example, if the current experiment contains records 1 through 10 and the historical experiment contains records 1 through 5 and records 8 through 12, then correlations would only be performed with the common records 1 to 5 and 8 to 10. Similarly, if the current experiment used conditions (components) A through E (e.g., 5 time points or distinct treatments) and the historical experiment used conditions A, C, D, and F, then the correlation would be calculated only using the common conditions A, C, and D.
In step 2050, a query data matrix would then be created comparing the common entries. For record1, a correlation with the historical data set would be performed using all the common conditions (intersection). In the example given, this would be a correlation between current record1(A,C,D) and historical record1(A,C,D). A similar score would be derived for each record present in both data sets. For a record in the current data set that is not present in the historical set, the query matrix would be blank (or set to some flag). The calculations would be repeated for each historical set requested.
In step 2060, the query matrix is visualized as follows. The color code in each cell is based on the correlation of that record to its counterpart in the historical data. The correlation values will range from −1 to +1 and be presented using, for example, a modified rainbow with negative correlations being cool colors (blue=−1) and positive correlations being hot colors (red=1). For records that are not shared with the historical data set, the matrix cell should have no color (or be colored the same as the background) or, alternatively, these cells can be hidden. If the cells not shared with the historical data set are shown, the degree of overlap between the current and the historical data sets can be visualized. This visualization could also be selected as a separate visualization that shows the overlap, for example by using a gray-scale color code in the matrix, where black indicates full overlap with the historical data components and white indicates no overlap. This query type would also be useful with other data mining tools.
Instead of comparisons of the records of the current and historical data, cluster assignments from one experiment to the next, even when the experiment types are quite different, can be compared. Preferably, for each record in a current data cluster, the method can assess what fraction of other current cluster records exist in the same cluster in the historical set. Then, an average of the results from each current cluster record to is computed to get a score for that cluster. Another example assesses, for each record in a current cluster, what fraction of other current cluster records are found in the historical data within x Euclidean distance. An interactive slider would allow the user to change x and the method would allow viewing of the results dynamically.
When records are combined into clusters, the overall value for the cluster will be represented as the average or other statistical measure, such as median of the record correlations, based only on those records that are common between the data sets. An indication of variation is provided since a cluster that contains 10 records with a correlation of 0.8 and a cluster that contains 10 records with a correlation of 0.9 and 1 with a correlation of −1 (both cluster with average of 0.8) may be of different interest to the user. Such an indication can be achieved using multiple visualizations, for example by duplicating the previous query, that simultaneously show the average and the standard deviation, the minimum value or the maximum value.
The default order of clusters and records in this visualization should be the same as in the records vs. attributes query tool. In addition, a row is added that summarizes the comparison of the entire current data against each historical data set. For example, a row labeled “Summary” will be the average of all record correlations.
Alternatively, the user or system could identify specific records to group together at the top of the visualization. For example, all the controls could be grouped together as opposed to in separate clusters. Also, while only one set each of current and historical data is used, several sets data could be visualized contemporaneously. That is, any one of the data sets is treated as the prototype against which others are measured. A slider bar having each visualization would allow the user to run through multiple experiments. The progress through the slider (data sets) could be semiautomated to play like a movie, stopping whenever certain similarities or dissimilarities are found.
The ‘current data vs. literature/expert knowledge’ query is similar to the other queries. Correlations between the current data and the literature or expert knowledge are defined either as what records have previously been found to group together or as similarity to actual published/historical values.
Regardless of the query type, the visualization, as shown in
For example, to provide commands, the visualization could include a menu bar and a toolbar. A menu bar 1010, with associated sub-menus, of the visualization could include the features shown in
The Duplicate command in the File menu of menu bar 2810 allows access to previously stored queries, so that the user can either re-run or adjust a previously run multiple query. The other commands in the File order are self-explanatory.
The Row Order menu of menu bar 2810 provides option for organizing the records, clusters, or row attributes. The Cluster from View command results in a correlation ordering for the records and clusters (if correlation ordering was not done for the view, then it is also not done here in the default), as discussed above this ordering is the default for a records vs. attributes query type or a current data vs. historical data query type. The Correlation with Columns command is an option for recalculating the cluster order based on the values in the query matrix. In a cluster view, records would remain with their cluster and the clusters are reordered according to correlation ordering. If a cluster was expanded to show records, the records in the cluster would be reordered according to correlation ordering. As discussed above, for an attributes vs. attributes query, correlation with columns is the default.
The Advanced sub-menu of the Row Order menu allows access to the following commands. The Cluster Based on Column Values command recalculates the clustering of the records or the attributes using the scores along the row as the vectors for clustering. The user would have the choice of using any clustering algorithm, such as either the hierarchical or partition methods. The Sum command is an option to order the records or attributes based on the sum of the scores across the row, with the record/attribute with the highest sum being at the top and the lowest being at the bottom, for example. Rows having a value below a predetermined threshold could be placed in a low value row or removed from the visualization matrix. The Sum command is not valid for visualization using clusters and would be deactivated. The File Order sets the order of clusters or attributes to that specified by the user, for example in an input file. If no file is provided or record rows are selected, this option would be deactivated.
The Column Order menu of menu bar 2810 provides analogous options as the Row Order menu for organizing the column attributes, expect that there will be no clustering from the view, as records and clusters do not appear in the columns, in one aspect of the present invention.
To provide the user the ability to choose a custom coloring scheme, the Color menu of menu bar 2810 permits a selection of display colors within the multiple query tool.
A tool bar is also provided in the visualization, either as a separate pop-up area or a bar, for example, located below a status bar, to provide access to functions with a single click.
The RecordViewer function displays the currently highlighted record (or records in the highlighted cluster). For a record vs. attribute cell, this shows the single record with the specific attribute highlighted in the record. For a cluster vs. attribute cell, the RecordViewer shows all the records in that cluster with the specific attribute highlighted in the records. For an attribute vs. attribute cell, the RecordViewer would display all records that contain both attributes, with both attributes highlighted. To access the records, the RecordViewer calls a process that parses the data source file in the galaxy cluster view. An interpretation tool, such as the plot data tool, could also be provided. A double click on a cell can also call the RecordViewer function.
The Zoom function operates similarly to a zoom in the galaxy visualization. Primarily, the zoom will zoom out, so that an overview of a large multiple query tool can be obtained. The maximum zoom out should be based on the number of records and a user's desired minimum resolution, so that the colors of the visualization will be readily discernable. A possible default size for a cell in the multiple query tool is 12 by 12 pixels. This is large enough to display text labels at 10 point Helvetica for both rows and columns. Zooming out would provide an overview for large data sets. The Zoom Reset function returns the visualization to its default size.
The Pan function takes the form of a hand and allows the user to drag the graphic around the window, so that area hidden by display objects or the physical dimensions of a display screen can be viewed. Scroll bars, as shown in the multiple query tool above, could be employed instead of, or in addition to, the Pan tool. Nevertheless, labels for the rows and columns would always remain visible.
The Expand Row Clusters and Expand Column Clusters functions open the selected cluster(s) to display all their records or attributes as separate rows. If no clusters are selected, all clusters are expanded. If no clusters are defined (either from the associated view or by having done a cluster ordering within the multiple query tool), these functions are deactivated.
The Collapse Row Clusters and Collapse Column Clusters functions closes the cluster that contains the selected record(s) or attribute(s). If no record or attribute is selected, all clusters are collapsed. If no clusters are defined (either from the associated view or by having done a cluster ordering within the multiple query tool, these functions are deactivated. Although not illustrated in
The Orient Rows vs. Values and Orient Columns vs. Values functions orient the visualization so that the view is perpendicular to the row axis or column axis, respectively. This provides views of the 2-D scatterplot, as shown in
The Spacing Toggle function toggles the matrix between the two types of views shown in
In addition to the command bars, the visualization area itself, as shown in
When the rows are records, the row labels are the record titles. Since record titles may be long, the initial substantially 20 characters could be displayed with a scroll bar or pop-up function to enable viewing of all of the characters. When collapsed into clusters, the row labels are labeled by cluster number. For attributes, the categorical value or vocabulary word itself serve as the label. In addition to the labels themselves, the rows and columns could have a master label indicating the content. For records as rows, the label would say “RECORDS.” For vocabulary words input directly in the initial dialog box, the label would be “VOCABULARY”. For vocabulary words input through a file, the label would be the file name. For categories as attributes, the field name would be shown. If multiple fields were requested, each field name would be shown, centered over its collection of row or column labels. The user could also edit or define the row, column, and major labels.
Rows and columns are selected and highlighted by clicking on the row and column labels using a mouse input device, for example. Shift-clicking and control-clicking can be used to select multiple labels.
The visualization is preferably interactive. In addition to highlighting labels for selecting rows and columns, clicking on a cell should display key information regarding the cell. This pop-up information would be context sensitive, depending on the type of query and whether the cell represents an individual record or attribute as opposed to a cluster or group. The following provide suggested formats of the key attributes of a cell of the different groups and query types:
For a cell intersecting a record and attribute in a records vs. attributes query:
Row: Record_name
Column: Column_attribute_name
Co-occurrence: 0 (or 1)
Attribute found in ##/total_rows records
For a cell intersecting a cluster and attribute in a records vs. attributes query:
Row: Cluster# containing ## members
Column: Column_attribute_name
Co-occurrences: ##
Number of co-occurrences expected: ##
Deviation from expected co-occurrence: ##
Probability of observation: ##
For a cell intersecting an attribute and attribute in an attributes vs. attributes query:
Row: Row_attribute_name
Column: Column_attribute_name
Co-occurrences: ##
Row attribute found in ##/total_columns columns
Column attribute found in ##/total_rows rows
Number of co-occurrences expected: ##
Deviation from expected co-occurrence: ##
Probability of observation: ##
For the cell intersecting a record and historical data in a current data vs. historical
data query:
Probability of observation: ##
Row: Record_name
Column: historical_experiment_name
Correlation: ## (if this record does not intersect with historical data, ‘no intersection’)
For the cell intersecting a cluster and historical data in a current data vs. historical
data query:
Probability of observation: ##
Row: Record_name
Column: historical_experiment_name
Average Correlation: ## (if this cluster does not contain any genes that intersect with historical data this should say ‘no intersection’)
Maximum Correlation: ## with record_name
Minimum Correlation: ## with record_name
Records that do not intersect historical data(could be a scrollable list): record_name1 record_name5 . . .
Conclusion
Systems and methods consistent with the present invention employ an open architecture that enables different types of data to be used for analysis and visualization.
It will be understood by those skilled in the art that various changes and modifications may be made, and equivalents may be substituted for elements thereof without departing from the true scope of the invention.
Modifications may be made to adapt a particular element, technique, or implementation to the teachings of the present invention without departing from the spirit of the invention. For example, any genetic material, from organism to microbe, could be represented using the context vectors of the present invention. Further, the present invention is not limited to genetic material, and any material or energy could also be represented. Additionally, the rows and columns used in the description are illustrative only, and, for example, records could be placed along the columns. Also, the attributes used are not limited to text and categorical features. Numerical values could be set as attributes, for example using binning where adjacent ranges of numbers are defined. Additionally, for queries against individual records, categorical data could be presented in a single column rather than multiple columns for each categorical value as described above; in this case, the occurrence of a specific categorical value as described above; in this case, the occurrence of a specific categorical value could be represented as a specific color. The resulting matrix could also be dynamically controllable by the user. The order of rows or columns could be adjusted by dragging or sorted according to the information within the row or column.
Moreover, although the described implementation includes software, the invention may be implemented as a combination of hardware and software or in hardware alone. Additionally, although aspects of the present invention are described as being stored in memory, one skilled in the art will appreciate that these aspects can also be stored on other types of computer-readable media, such as secondary storage devices, like hard disks, floppy disks, or CD-ROM; a carrier wave from the Internet; or other forms of memory.
Therefore, it is intended that this invention not be limited to the particular embodiment and method disclosed herein, but that the invention include all embodiments falling within the scope of the appended claims.
Example Data Set Properties File
CORPUS_TYPE=1
VIEW=protein.aa\gene.express ion
source_file—0.com.bmi.vision.api.FastaDataFile.format=
source_file_class—0=com.bmi.vision.api.FastaDataFile
source_file—0.
com.bmi.vision.api.FastaDataFile.fullpath=/home/battelle/omniviz_data/sources
/yeast.fasta
number_sources=1
RECORDKEY
TITLE: Effect of metabisulphite on sporulation and alkaline phosphatase in Bacillus subtilis and Bacillus cereus
DATE: 1990
The effect of metabisulphite on spore formation and alkaline phosphatase activity/production in Bacillus subtilis and Bacillus cereus was investigated both in liquid and semi-solid substrates. While supplementary nutrient broth (SNB) and sporulation medium (SM) were used as the liquid growth media, two brands of powdered milk were used as the food (semi-solid) substrates. Under both aerobic and anaerobic conditions, B. subtilis was more resistant to metabisulphite than B. cereus while the level of enzyme production and spores formed were generally higher under aerobic than anaerobic conditions. The metabisulphite concentrations required to inhibit spore production as well as alkaline phosphatase synthesis/activity were found to be relatively low and well within safety levels for human consumption. It is concluded that metabisulphite is an effective anti-sporulation agent and a recommendation for its general use in semi-solid and liquid foods is proposed.
RECORDKEY
TITLE: Effects of replacing saturated fat with-complex carbohydrate in diets of subjects with NIDDM
DATE: 1989
This study examined the safety of an isocaloric high-complex carbohydrate low-saturated fat diet (HICARB) in obese patients with non-insulin-dependent diabetes mellitus (NIDDM). Although hypocaloric diets should be recommended to these patients, many find compliance with this diet difficult; therefore, the safety of an isocaloric increase in dietary carbohydrate needs assessment. Lipoprotein cholesterol and triglyceride (TG, mg/dl) concentrations in isocaloric high-fat and HICARB diets were compared in 7 NIDDM subjects (fat 32±3%, fasting glucose 190±38 mg/dl) and 6 nondiabetic subjects (fat 33±5%). They ate a high-fat diet (43% carbohydrate; 42% fat, polyunsaturated to saturated 0.3; fiber 9 g/1000 kcal; cholesterol 550 mg/day) for 7-10 days. Control subjects (3 NIDDM, 3 nondiabetic) continued this diet for 5 wk. The 13 subjects changed to a HICARB diet (65% carbohydrate; 21% fat, polyunsaturated to saturated 1.2; fiber 18 g/1000 kcal; cholesterol 550 mg/day) for 5 wk. NIDDM subjects on the HICARB diet had decreased low-density lipoprotein cholesterol (LDL-chol) concentrations (107 vs. 82, P less than 0.001), but their high-density lipoprotein cholesterol (HDL-chol) concentrations, glucose, and body weight were unchanged. Changes in total plasma TG concentrations in NIDDM subjects were heterogeneous. Concentrations were either unchanged or had decreased in 5 and increased in 2 NIDDM subjects. Nondiabetic subjects on the HICARB diet had decreased LDL-chol (111 vs. 81, P less than 0.01) and unchanged HDL-chol and plasma TG concentrations).(ABSTRACT TRUNCATED AT 250 WORDS)
RECORDKEY
TITLE: Enteral feeding of dogs and cats: 51 cases (1989-1991)
DATE: 1992
Feeding commercial enteral diets to critically ill dogs and cats via nasogastric tubes was an appropriate means for providing nutritional support and was associated with few complications. Twenty-six cats and 25 dogs in the intensive care unit of our teaching hospital were evaluated for malnutrition and identified as candidates for nutritional support via nasogastric tube. Four commercial liquid formula diets and one protein supplement designed for use in human beings were fed to the dogs and cats. Outcome variables used to assess efficacy and safety of nutritional support were return to voluntary food intake, maintenance of body weight to within 10% of admission weight, and complications associated with feeding liquid diets. Sixty-three percent of animals experienced no complications with enteral feedings; resumption of food intake began for most animals (52%) while they were still in the hospital. Weight was maintained in 61% of the animals (16 of 26 cats and 15 of 25 dogs). Complications that did occur included vomiting, diarrhea, and inadvertent tube removal. Most problems were resolved by changing the diet or adhering to the recommended feeding protocol. Nutritional support as a component of therapy in small animals often is initiated late in the course of the disease when animals have not recovered as quickly as expected. If begun before the animal becomes nutrient depleted, enteral feeding may better support the animal and avoid serious complications.
TITLE: Microbiology of fresh and restructured lamb meat: a review
DATE: 1995
Microbiology of meats has been a subject of great concern in food science and public health in recent years. Although many articles have been devoted to the microbiology of beef, pork, and poultry meats, much less has been written about microbiology of lamb meat and even less on restructured lamb meat. This article presents data on microbiology and shelf-life of fresh lamb meat; restructured meat products, restructured lamb meat products, bacteriology of restructured meat products, and important foodborne pathogens such as Salmonella, Escherichia coli 0157:H7, and Listeria monocytogenes in meats and lamb meats. Also, the potential use of sodium and potassium lactates to control foodborne pathogens in meats and restructured lamb meat is reviewed This article should be of interest to all meat scientists, food scientists, and public health microbiologists who are concerned with the safety of meats in general and lamb meat in particular.
RECORDKEY
TITLE: Hyperacute stroke therapy with tissue plasminogen activator
DATE: 1997
The past year has seen tremendous progress in developing new therapies aimed at reversing the effects of acute stroke. Thrombolytic therapy with various agents has been extensively studied in stroke patients for the past 7 years. Tissue plasminogen activator (t-PA) received formal US Food and Drug Administration approval in June 1996 for use in patients within 3 hours of onset of an ischemic stroke. Treatment with t-PA improves neurologic outcome and functional disability to such a degree that, for every 100 stroke patients treated with t-PA, an additional 11-13 will be normal or nearly normal 3 months after their stroke. The downside of t-PA therapy is a 6% rate of symptomatic intracerebral hemorrhage (ICH) and a 3% rate of fatal ICH. Studies are under way to determine whether t-PA can be administered with an acceptable margin of safety within 5 hours of stroke, to evaluate the therapeutic benefits of intraarterial pro-urokinase, and to assess the use of magnetic resonance spectroscopy to identify which patients are most likely to benefit from thrombolysis. Combination thrombolytic-neuroprotectant therapy is also being studied. In theory, patients could be given an initial dose of a neuroprotectant by paramedics and receive thrombolytic therapy in the hospital. We are now entering an era of proactive, not reactive, stroke therapies. These treatments may reverse some or all acute stroke symptoms and improve functional outcomes.
RECORDKEY
TITLE: A 12-month study of policosanol oral toxicity in Sprague Dawley rats
DATE: 1994
Policosanol is a natural mixture of higher aliphatic primary alcohols. Oral toxicity of policosanol was evaluated in a 12-month study in which doses from 0.5 to 500 mg/kg were given orally to Sprague Dawley (SD) rats (20/sex/group) daily. There was no treatment-related toxicity. Thus, effects on body weight gain, food consumption, clinical observations, blood biochemistry, hematology, organ weight ratios and histopathological findings were similar in control and treated groups. This study supports the wide safety margin of policosanol when administered chronically.
This is a division of Application Ser. No. 09/410,367, filed Sep. 30, 1999. The following identified U.S. patent applications are relied upon and are incorporated by reference in this application: U.S. patent application Ser. No. 09/409,260, entitled “METHOD AND APPARATUS FOR EXTRACTING ATTRIBUTES FROM SEQUENCE STRINGS AND BIOPOLYMER MATERIAL,” now issued as U.S. Pat. No. 6,898,530, filed Sep. 30, 1999, by Jeffrey Saffer, et al.; U.S. patent application Ser. No. 08/695,455, entitled “THREE-DIMENSIONAL DISPLAY OF DOCUMENT SET,” filed on Aug. 12,1996; and U.S. patent application Ser. No. 08/713,313, entitled “SYSTEM FOR INFORMATION DISCOVERY,” filed on Sep. 13, 1996. The disclosures of each of these applications are herein incorporated by reference in their entirety.
Number | Date | Country | |
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Parent | 09410367 | Sep 1999 | US |
Child | 11282569 | Nov 2005 | US |