Claims
- 1. A computer-implemented method for estimating the magnitude of at least a first continuous property of a first sample of a first substance based on nuclear magnetic resonance measurements comprising:
obtaining a first plurality of magnetic resonance responses comprising a set of measurements of each of a plurality of calibration samples of a material which includes said first substance, said plurality of calibration samples being different from said first sample and including a first plurality of values of said first continuous property, each set of said plurality of nuclear magnetic resonance measurements including at least first and second different pulse sequences; defining a first mapping from a first set of values, based on said first plurality of nuclear magnetic resonance measurements, to a set of values of said first continuous property, said mapping being continuous over at least a first domain of values of said first continuous property; obtaining a second plurality of nuclear magnetic resonance measurements of said first sample using at least said first and second pulse sequences; and calculating an estimated value of said first property by applying said first mapping to a second set of values based on said second plurality of nuclear magnetic resonance measurements wherein said estimated value is different from any of said first plurality of values of said first continuous property.
- 2. A computer-implemented method, as claimed in claim 1, wherein said substance comprises non-living material.
- 3. A computer-implemented method, as claimed in claim 1, wherein said substance comprises a living body.
- 4. A computer-implemented method, as claimed in claim 1, wherein said substance comprises in vitro material derived from a living body.
- 5. A computer-implemented method, as claimed in claim 1, wherein said body is a living human body.
- 6. A computer-implemented method, as claimed in claim 1, wherein said step of defining said first mapping includes defining a mapping which predicts a value of said first property based on a plurality of MR measurements.
- 7. A computer-implemented method, as claimed in claim 1, said first mapping provides a value of said first property using a method selected from among PLS, PCR, LWR, PPR, ACG, MARS AND NN.
- 8. A computer-implemented method, as claimed in claim 1, wherein said step of obtaining a first set of MR measurements includes forming a plurality of congruent sets of images.
- 9. A computer-implemented method, as claimed in claim 1, further comprising standardizing said first plurality of MR measurements, using at least a first reference object.
- 10. A computer implemented method, as claimed in claim 1, further comprising standardizing said second plurality of MR measurements, using at least a first calibration object.
- 11. A computer-implemented method, as claimed in claim 1, further comprising storing, in memory, values characterizing said mapping.
- 12. A computer-implemented method, as claimed in claim 1, further comprising:
defining a second mapping from a set of values, based on said-first plurality of MR measurement, to a set of values of a second property different from said first property and calculating an estimated value of said second property using said second mapping.
- 13. A computer-implemented method, as claimed in claim 1, wherein said first plurality of values consists of only two values of said first property.
- 14. A computer-implemented method, as claimed in claim 1, wherein said step of defining a mapping includes defining groups of said MR measurements using cluster analysis.
- 15. A computer-implemented method for estimating the magnitude of at least a first continuous property of a sample of a first substance of unknown composition based on nuclear magnetic resonance measurements, comprising:
obtaining a first plurality of measurements using a MR apparatus, said measurements comprising a set of measurements of each of a plurality of calibration samples of a material which includes said first substance, said plurality of calibration samples being different from said first sample and including a first plurality of values of said first property, each set of said plurality of nuclear magnetic resonance measurements including a first group of measurements which said MR apparatus has a first configuration and a second group of measurements while said MR apparatus has a second configuration, wherein said first and second groups of measurements are independent; defining a first mapping from a first set of values, based on said first plurality of measurements, to a set of values of said first continuous property; obtaining a second plurality of measurements, using an MR apparatus, of said first sample, including at least measurements with said first configuration and measurements with said second configuration; and calculating an estimated value of said first property using said first mapping.
- 16. A method for identifying which, among a first plurality of regions in a first non-homogenous part of a body are most similar to a second plurality of regions in a second non-homogeneous part of a body, comprising:
obtaining MR measurements of each of said first and second parts of said body; defining first and second pluralities of clusters of regions of said first and second part of said body, respectively, using cluster analysis, the regions in each cluster of regions of said first and second pluralities of clusters having similar MR measurements; forming first visual displays, each of said first visual displays, including said first part of said body, said first visual displays including visual indicia identifying at least some of said first plurality of clusters or regions; selecting one of said first plurality of clusters, based on said first visual displays, as a first cluster of interest; forming second visual displays, each of said second visual displays including said second part of said body, said second visual displays including visual indicia identifying at least some of said second plurality of clusters; selecting one of said second plurality of clusters, based on said second visual displays, as a second cluster of interest; and calculating a measure of similarity between the MR measurements for said first clusters of interest and the MR measurements for said second cluster of interest.
- 17. A method for identifying which, among a first plurality of regions in a first non-homogenous part of a body are most similar to a second plurality of regions in a second non-homogeneous part of a body, comprising:
obtaining MR measurements of each of said first and second parts of said body; defining first and second pluralities of clusters of regions of said first and second part of said body, respectively, using cluster analysis, the regions in each cluster of regions of said first and second pluralities of clusters having similar MR measurements; calculating a measure of similarity between MR measurements for a plurality of pairs of clusters, each pair of clusters in said plurality of pairs of clusters comprising a cluster from said first plurality of clusters and a cluster from said second plurality of clusters; selecting at least some of said pairs of clusters, based on said measures of similarity, as pairs of interest; and forming visual displays including visual indicia distinguishably identifying at least said pairs of interest.
- 18. A method of using magnetic resonance imaging (MRI) to produce an image of a body, the method comprising the steps of:
using an MRI apparatus to produce a training set comprising one or more training samples, the training set being formed from a plurality of congruent first images of a training region of the body, each first image being produced using an MRI pulse sequence different from the pulse sequences used to produce the other first images, each first image comprising an array of pixels, each training sample comprising a spatially aligned set of pixels from each first image; using an MRI apparatus to produce a test set comprising a plurality of test samples, the test set being formed from a plurality of congruent second images of a test region of the same body, the second images being produced using the same MRI pulse sequences as the first images, each second image comprising an array of pixels, each test sample comprising a spatially aligned set of pixels from each second image; producing similarity data, based on cluster analysis, indicating, for each test sample, the degree of similarity between the test sample and the training samples; and producing a display based upon the similarity data.
- 19. A method for identifying the composition of regions of a body comprising:
storing a first plurality of MR measurements of a substance having a first composition; storing a second plurality of MR measurements of a substance having a second composition; obtaining MR measurements of a non-homogeneous portion of said body; identifying at least a first region of said non-homogeneous portion of said body by applying cluster analysis to said MR measurements; calculating measures of similarity between the MR measurements for said first region and at least said first and second plurality of MR measurements; and identifying one of said first composition and said second composition as the composition of said region based on said measures of similarity.
- 20. A method, as claimed in claim 18, further comprising displaying at least one image of said body, with visual indicia based on composition of said region.
- 21. A method, as claimed in claim 19, further comprising displaying a plurality of images of said body in real time to provide an indicate of changes or movement of said first or second composition.
- 22. A method for identifying the composition of regions of a body comprising:
obtaining MR measurements of a portion of said body, including said region; obtaining a second measurement of said portion of said body, said second measurement being different from said MR measurement; and identifying the composition of said region using both said MR measurement and said second measurement.
- 23. A method, as claimed in claim 21, wherein said step of obtaining MR measurements includes recalling at least some of a library of stored MR measurements from a memory device.
- 24. A method, as claimed in claim 21, wherein said step of identifying includes calculating a measurement of similarity by combining said first measurement of similarity with said second measurement of similarity.
- 25. A method, as claimed in claim 21, wherein said portion of said body is a substantially non-homogeneous portion.
- 26. A method for estimating the volume occupied by a substance within a body comprising:
obtaining first MR measurements of a first plurality of regions in said body, said first plurality of regions substantially defining a first surface passing through a portion of said body each of said first plurality of regions being substantially representative of a volume of said body having a dimension substantially transverse to said first surface; obtaining a second MR measurement of a second plurality of regions in said body, said second plurality of regions substantially defining a second surface, different from said first surface, each of said second plurality of regions being substantially representative of a volume of said body having a dimension substantially transverse to said second surface; identifying a plurality of target regions in said body based on said MR measurements, said target regions having MR measurements which indicate said target region comprising said substance, said target region including at least some of said first and second pluralities of regions; and calculating the sum of the volumes which said target region are representative of.
- 27. A method of using magnetic resonance imaging (MRI) to produce an image of a body, the method comprising the steps of:
using an MRI apparatus to produce a training set comprising one or more training samples, the training set being formed from a plurality of congruent first images of a training region of the body, each first image being produced using an MRI pulse sequence different from the pulse sequences used to produce the other first images, each first image comprising an array of pixels, each training sample comprising a spatially aligned set of pixels from each first image; using an MRI apparatus to produce a test set comprising a plurality of test samples, the test set being formed from a plurality of congruent second images of a test region of the same body, the second images being produced using the same MRI pulse sequences as the first images, each second image comprising an array of pixels, each test sample comprising a spatially aligned set of pixels from each second image; producing similarity data indicating, for each test sample, the degree of similarity between the test sample and the training samples; and calculating a volume by identifying those pixels having at least a first degree of similarity and multiplying the number of said pixels by the volumes of said body represented by said pixels.
- 28. A method of accounting for inhomogeneities in fields produced by an MR apparatus comprising:
positioning a first substantially homogeneous reference material at least within a first field of view of said MR apparatus; obtaining first MR measurements in a first plurality of region of said calibration material, said first plurality of regions being within said first field of view; calculating correction factors for at least some of said first plurality of regions, based on said MR measurements of said calibration material; obtaining second MR measurements in a second plurality of regions of a test substance, said second plurality of regions being within said first field of view; and combining said correction factor with said second MR measurements to provide corrected MR measurements for said second plurality of regions.
- 29. A method, as claimed in claim 27, wherein said step of calculating comprises dividing first values by the MR intensity for each of said first plurality of regions.
- 30. A method, as claimed in claim 27, wherein said first value can be an average intensity.
- 31. A method, as claimed in claim 27, wherein each of said second plurality of regions can be spatially coupled with one of said first plurality of regions and the step of combining can include multiplying the intensity for each of said second plurality of regions by the corresponding correction factor.
- 32. A method, as claimed in claim 27, wherein said reference material comprises water.
- 33. A method, as claimed in claim 27, wherein said first MR measurements comprise measurements using at least first and second sequences and further comprising calculating separate correction factors for said first and second sequences.
- 34. A method of using magnetic resonance imaging (MRI) to produce an image of a test object, the method comprising the steps of:
using an MRI apparatus to produce a training set comprising one or more training samples, the training set being formed from a plurality of congruent first images of a training region of a first object, each first image being produced using an MRI pulse sequence different from the pulse sequences used to produce the other first images, each first image comprising an array of pixels, each training sample comprising a spatially aligned set of pixels from each first image, at least some of said first images including an image of at least one training set reference object; using an MRI apparatus to produce a test set comprising a plurality of test samples, the test set being formed from a plurality of congruent second images of a test region of the test object, the second images being produced using the same MRI pulse sequences as the first images, each second image comprising an array of pixels, each test sample comprising a spatially aligned set of pixels from each second image, at least some of said second images including an image of at least one test set reference object substantially similar to said test set reference object; correcting at least part of said test set based on differences between said image of said training set reference object and said image of said test set reference object; producing similarity data indicating, for each test sample, the degree of similarity between the test sample and the training samples; and producing a display based upon the similarity data.
- 35. A method of using magnetic resonance imaging (MRI) to produce an image of a test object, the method comprising the steps of:
using an MRI apparatus to produce a training set comprising one or more training samples, the training set being formed from a plurality of congruent first images of a training region of a first object, each first image being produced using an MRI pulse sequence different from the pulse sequences used to produce the other first images, each first image comprising an array of pixels, each training sample comprising a spatially aligned set of pixels from each first image, at least some of said first images including an image of at least one training set reference object; using an MRI apparatus to produce a test set comprising a plurality of test samples, the test set being formed from a plurality of congruent second images of a test region of the test object, the second images being produced using the same MRI pulse sequences as the first images, each second image comprising an array of pixels, each test sample comprising a spatially aligned set of pixels from each second image, at least some of said second images including an image of at least one test set reference object substantially similar to said test set reference object; producing similarity data indicating, for each test sample, the degree of similarity between the test sample and the training samples; correcting at least part of said similarity data based on differences between said image of said training set reference object and said image of said test set reference object; and producing a display based upon the similarity data.
- 36. A method of using magnetic resonance imaging (MRI) to produce an image of a test object, the method comprising the steps of:
using an MRI apparatus to produce a training set comprising one or more training samples, the training set being formed from a plurality of congruent first images of a training region of a first object, each first image being produced using an MRI pulse sequence different from the pulse sequences used to produce the other first images, each first image comprising an array of pixels, wherein each pixel comprises a pixel value corresponding to the intensity of a magnetic resonance signal from a corresponding position within the object, each training sample comprising a spatially aligned set of pixels from each first image and wherein the training set includes at least one spatial correlation image corresponding to and congruent with one of the first images, the spatial correlation image comprising an array of spatial correlation pixels, each spatial correlation pixel having a pixel value that is determined on the basis of a textural feature, wherein each training sample comprises a spatially aligned set of pixels from each first image and from each first spatial correlation image; using an MRI apparatus to produce a test set comprising a plurality of test samples, the test set being formed from a plurality of congruent second images of a test region of the test object, the second images being produced using the same MRI pulse sequences as the first images, each second image comprising an array of pixels, wherein each pixel comprises a pixel value corresponding to the intensity of a magnetic resonance signal from a corresponding position within the object, each test sample comprising a spatially aligned set of pixels from each second image wherein the test set includes at least one second spatial correlation image corresponding to and congruent with one of the second images, the second spatial correlation image comprising an array of second spatial correlation pixels, each second spatial correlation pixel having a pixel value that is determined on the basis of a textural feature, each test sample comprising a spatially aligned set of pixels from each second image and from each second spatial correlation image; producing similarity data indicating, for each test sample, the degree of similarity between the test sample and the training samples; and producing a display based upon the similarity data.
- 37. A method of using magnetic resonance imaging (MRI) to produce an image of a body, the method comprising the steps of:
using an MRI apparatus to produce a training set comprising one or more training samples, the training set being formed from a plurality of congruent first images of a training region of the body, each first image being produced using an MRI pulse sequence different from the pulse sequences used to produce the other first images, each first image comprising an array of pixels, each training sample comprising a spatially aligned set of pixels from each first image; using an MRI apparatus to produce a test set comprising a plurality of test samples, the test set being formed from a plurality of congruent second images of a test region of the same body, the second images being produced using the same MRI pulse sequences as the first images, each second image comprising an array of pixels, each test sample comprising a spatially aligned set of pixels from each second image; producing similarity data indicating, for each test sample, the degree of similarity between the test sample and the training samples; producing a first image based on at least some of said second congruent images producing a second image which displays only those portions of the first image which are within a user-defined similarity threshold of a portion of said training set; and subtracting said second image from said first image to produce a third image.
- 38. A method of using magnetic resonance imaging (MRI) to produce an image of a body, the method comprising the steps of:
using an MRI apparatus to produce a training set comprising one or more training samples, the training set being formed from a plurality of congruent first images of a training region of the body, each first image being produced using an MRI pulse sequence different from the pulse sequences used to produce the other first images, each first image comprising an array of pixels, each training sample comprising a spatially aligned set of pixels from each first image; using an MRI apparatus to produce a test set comprising a plurality of test samples, the test set being formed from a plurality of congruent second images of a test region of the same body, the second images being produced using the same MRI pulse sequences as the first images, each second image comprising an array of pixels, each test sample comprising a spatially aligned set of pixels from each second image; producing similarity data indicating, for each test sample, the degree of similarity between the test sample and the training samples; producing a first image based on at least some of said second congruent images calculating, for each of a plurality of pixels within at least a part of said first image, a difference value indicating the magnitude of the difference between the MR data corresponding to said pixel and at least a first portion of the MR data from said training set; and producing a second image including visual indicia indicating, for said plurality of pixels at least first and second different levels based on said difference value.
- 39. A method of using magnetic resonance imaging (MRI) to produce an image of a test object, the method comprising the steps of:
using an MRI apparatus to produce a training set comprising one or more training samples, the training set being formed from a plurality of congruent first images of a training region of a first object, each first image being produced using an MRI pulse sequence different from the pulse sequences used to produce the other first images, each first image comprising an array of pixels, each training sample comprising a spatially aligned set of pixels from each first image; using an MRI apparatus to produce a test set comprising a plurality of test samples, the test set being formed from a plurality of congruent second images of a test region of the test object, the second images being produced using the same MRI pulse sequences as the first images, each second image comprising an array of pixels, each test sample comprising a spatially aligned set of pixels from each second image; producing similarity data representing distance in a multi-dimensional measurement space; and producing a display based upon the similarity data.
Parent Case Info
[0001] This application is a continuation-in-part application of commonly-assigned U.S. Ser. No. 07/883,565, filed May 15, 1992 incorporated herein by reference
Divisions (3)
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Number |
Date |
Country |
Parent |
08166449 |
Dec 1993 |
US |
Child |
10102444 |
Mar 2002 |
US |
Parent |
08814304 |
Mar 1997 |
US |
Child |
08166449 |
Dec 1993 |
US |
Parent |
08153118 |
Nov 1993 |
US |
Child |
08814304 |
Mar 1997 |
US |
Continuation in Parts (1)
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Number |
Date |
Country |
Parent |
07883565 |
May 1992 |
US |
Child |
08153118 |
Nov 1993 |
US |