The invention relates to real-time diagnostic systems, and more particularly, to real-time clinical diagnostic expert systems for fluorescent spectrum analysis of tissue cells.
Cancer diagnosis requires a biopsy to detect cellular changes. The results of conventional biopsy typically requires longer than one week, which is both emotionally trying and potentially dangerous for a patient. Among various cancers, oral cavity cancer and skin cancer can be detected at the earliest stage and are mostly curable. The cure rate for oral cavity cancer in its early stages is relatively high at about 70˜80%, with a 5-year survival rate. This decreases to less than 50%, however, for late stage patients, or even 20% for patients having distant metastasis. Most skin cancer can be treated with simple surgery or radiotherapy if detected early. Skin cancer, including basal cell epithelioma, squamous cell carcinoma, and malignant melanoma, is almost benign. It is found that basal cell epithelioma rarely metastasizes, about 2% of squamous cell carcinoma has metastasized when the final diagnosis is made, especially when occurring in ears, cheeks, temples, and mucosa. Malignant melanoma typically metastasizes in the early stage. The mortality of skin cancer depends on the clinical stage and the occurrence of metastasis when treatment begins. Basal cell epithelioma has a recurrence of only 2%, squamous cell carcinoma about 92% with a 5-year survival rate, and the mortality of malignant melanoma depends on the diagnostic stage. In Taiwan, oral cavity cancer mostly occurs in male and skin cancer mostly in female according to a statistical analysis of Taiwan Department of Health records. In addition, the mortality rate from oral cavity cancer has be increasing.
In the United States, about 30,000 new cases of oral cavity cancer were diagnosed in 2001, and the death was about 7800 according to the report of the American Cancer Society in 2001. As for skin cancer, new cases were about 56,000 with almost 10,000 deaths. In particular, new cases of the life-threatening skin cancer, melanoma, has increased greatly in 20 years.
With the increasing danger of oral cavity cancer and skin cancer, development of a real-time, non-invasive clinical detection system for epidermal tissues is desirable.
Attempts to detect the auto-fluorescence of epidermal tissues mainly utilize a single characteristic for recognition. For example, U.S. Pat. No. 6,405,070, U.S. Pat. No. 6,405,074, WO 99/65394, and WO. 01/69199 to Bhaskar Banerjee disclose methods for the recognition of cancer cells and normal cells by fluorescent intensity at some specific wave lengths. U.S. Pat. No. 6,174,291 and WO 99/45838 to Brian T. McMahon disclose a complicated process for calculating characteristic values at several designated wavelengths to determine normal tissue, hyperplastic tissue, adenomatous tissue, or adenocarcinomas. This process can be classified as procedural representation schemes such as “If . . . Then . . . ”, and forward inference in the expert system classification. In addition, U.S. Pat. No. 6,289,236 to Frank Koenig discloses a method for distinguishing inflamed tissues from cancerous tissues by fluorescent intensity at a specific wavelength. These systems have many problems, thus, a need for a real-time, non-invasive clinical diagnostic system for epidermal cells is desirable.
Real-time, non-invasive clinical diagnostic expert systems for fluorescent spectrum analysis of tissue cells are provided. The fluorescent spectrum analysis of tissue cells may detect cellular changes, such as pathological changes, bacterial infection, hyperplasia, cancerous formation, or tumor growth. An exemplary embodiment of an expert system comprises a set of optical fibers where the first optical fiber introduces an incident light to a subject epidermal tissue and the second optical fiber receives an auto-fluorescent signal, a set of monochromators where the first monochromator produces the incident light and the second monochromator produces the auto-fluorescent signal from the second optical fiber, a light detector for detecting the auto-fluorescent signal from the second monochromator, a signal processing unit for plotting a spectrum of the auto-fluorescent signal, and a spectrum analyzing unit comprising a database for analyzing the spectrum with the database to obtain a disease probability for the subject epidermal tissue.
Methods for real-time, non-invasive clinical diagnosis for fluorescent spectrum analysis of tissue cells are also provided. An exemplary embodiment of a method comprises introducing an incident light produced by a first monochromator to a subject epidermal tissue through a first optical fiber, receiving an auto-fluorescent signal produced by the subject epidermal tissue through a second optical fiber to a second monochromator, detecting the auto-fluorescent signal from the second monochromator by a light detector, plotting a spectrum of the auto-fluorescent signal by a signal processing unit, and analyzing the spectrum of the auto-fluorescent signal with a database in a spectrum analyzing unit to obtain a disease probability for the subject epidermal tissue.
The analysis provides a comprehensive comparison for a plurality of spectrum characteristics such as fluorescent intensity at some specific wavelengths, spectral area at a specific range of wavelength, rising slope of a specific peak. A weight table can be created by these characteristics. The weight is obtained by classification and analysis of the collected tissues. The weight assumption is applied to differentiate diseases with similar characteristics. The calculation of the analysis is similar to frame-based knowledge representation and probability-based assumption in the classification of the expert system, which is different from the conventional methods.
Real-time diagnostic system for fluorescent spectrum analysis of tissue cells and methods thereof can be more fully understood and further advantages become apparent when reference is made to the following description and the accompanying drawings in which:
Real-time clinical diagnostic expert systems for fluorescent spectrum analysis of tissue cells and methods thereof are provided.
An embodiment of a real-time clinical diagnostic expert system for fluorescent spectrum analysis of tissue cells comprises a fluorescent spectrum database for epidermal tissues. In clinical application, an embodiment of the real-time clinical diagnostic expert system may be used prior to biopsy. When epidermal tissue is determined to be cancerous, the result can then be confirmed by biopsy. An embodiment of the expert system is mainly applicable to oral cavity cancer and skin cancer since fluorescent spectra of the epidermal tissues from these cancers can be obtained easily.
Practical examples are given in the following.
1. Establishment of an Embodiment of a Real-Time Clinical Diagnostic Expert System for Fluorescent Spectrum Analysis of Tissue Cells.
An embodiment of a real-time clinical diagnostic expert system for fluorescent spectrum analysis of tissue cells are illustrated in
2. Design of the Calculation of an Embodiment of the Clinical Diagnosis Expert System
The determination of the fluorescence spectrum combines several representations and inference. The calculation was designed in the combination of logic knowledge representation and interference. In addition, probability was applied in the calculation according to the experience of medical expert systems of the inventors. Moreover, the calculation was based on a plurality of spectral characteristics.
The primary basis of the calculation is that spectra of different diseases have more than one property and disease properties may overlap. If two conditions, for example, normal and cancerous tissues, are compared, one property difference in the spectrum is enough to distinguish between them. Only one property difference, however, is not enough to differentiate between more than three kinds of tissues. The calculation is based on the disease probability corresponding to spectral properties in a core database. A higher probability of a disease corresponding to a spectral property indicates that the possibility of the disease is higher. Since probability is a statistical result, a large sample population may simulate clinical diagnosis made by the physicians. The probability of a certain disease can be calculated in corresponding to a spectral property of a sample tissue.
Accordingly, the calculation is based on the probability of diseases corresponding to the spectral properties and the assumption of these probabilities may create a weight table as shown in
The database of the calculation contains several tables which represent different definitions. Each disease, defined as D, indicates a class containing an independent table. Therefore, the sample population of the disease database is:
D={D1, D2, D3, . . . , Dk}, where k∈N (1)
An assumption of spectral properties is in each disease table and can be defined as Dx, and the sample population can be represented as:
Dk={bij}, wherein i,j∈N (2)
The type or title of disease or symptom is defined prior to creation of the database. The samples used in the database are known as belonging to a type of disease. For example, for the determination of the spectra of basal cell epithelioma, squamous cell carcinoma, malignant melanoma, psoriasis, and nevus, the databases of the spectra are numbered as D1, D2, D3, D4, and D5, respectively. The sample can be created in its own database Dk in accordance with the defined types or titles of the diseases and symptoms.
In each database Dk, the statistical probability S of each spectral property can be obtained by biostatistic method as shown below:
Snk=P(Pn|Dk), where n,k∈N (3)
Formula (4) is the representation of the sample size in the weight table W, composed of Snk.
The database and weight table can be established accordingly.
The inference of the expert system is illustrated below. When a spectrum of a new sample tissue is produces, a Boolean array corresponding to each spectral property, represented as Dx, is created. The array is:
Dx={bi}, where i∈N (5)
wherein Dx represents a unknown disease, bi represents the Boolean value of spectral property i in the unknown tissue.
When Dx, is created, the inference can be made based on the weight table W. The inference formula is:
The inference is determined by Tk, representing the sum of the probability of disease Dk corresponding to Dx. The higher the sum of the probability of a certain disease, the higher possibility the disease has. Therefore, an inference can be made by using this formula.
The calculation further comprises an auto-modification of the weight table, as shown in
The spectral property of an embodiment of the clinical diagnosis expert system for fluorescent spectrum analysis of tissue cells is not limited and can be any user-defined properties. The diseases or symptoms are not limited and can be flexibly defined and combined with any spectral properties. The calculation is based on probability, and the establishment of the sample population and the probability of the diseases corresponding to a defined spectral property create the core database for the calculation. The assumption of the probability is correlated to the possibility of a certain disease. In addition, the calculation provides probability of other diseases as a reference for diagnosis. The probability information is different from the positive and negative determination method in the conventional methods.
Generally, the diagnostic method for auto-fluorescent spectrum analysis of tissue cells usually utilizes ultraviolet light at 280 nm to obtain fluorescent spectrum from tissue cells. It was reported that auto-fluorescence is obtained from proteins such as elastin, amino acids such as tryptophan, tyrosine, or phenylalanine, purines such as adenine or guanine, pyrimidines, nucleic acids such as adenosine, guanosine, DNA or RNA, which absorb ultraviolet at 280 nm and produce peaks at 340˜390 nm. Still no study focuses on the auto-fluorescent spectral properties of a simple material such as different amino acids. This property relates to the stages or conditions of a disease, for example, the fluorescent spectra of cancerous and normal tissues are different in the amount of amino acids produced. Amino acids at different concentration are applied in the establishment of the spectral database and for the verification of the calculation. Database Dk is not limited in disease titles, amino acid in different concentration or with different types are also applicable.
Practical examples of the invention uses pathologic cell cultures in state of patient cells. The fluorescent spectra of cells obtained from a culture or a patient should be similar since the cellular components are the same.
For safety considerations, the incident light of an embodiment of the expert system can be modified by the wavelength, for example, the wave range can be from infrared to ultraviolet, preferably green light.
Practical examples are described herein.
The measurement was made by the device as shown in
The measurement was made by the device as shown in
The results indicate that different wave peaks of the fluorescent spectra represent the mixture at different concentration. This is the basic rule for the establishment of spectra database of cellular components.
Measurement was made for different culture cells by the device as shown in
In
Recently, increasing attempts focus on optical measurement for cancer analysis. The principles which can be applied include scattering, laser response, wavelength changes, auto-fluorescence, dye fluorescence, and so on. From the disclosed experimental data, auto-fluorescent properties as well as other optical properties may be useful for cancer cell analysis in the application of the disclosed calculation.
While the invention has been described by way of example and in terms of preferred embodiment, it is to be understood that the invention is not limited thereto
Number | Date | Country | Kind |
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93116311 | Jun 2004 | TW | national |