Claims
- 1. A method of classifying a sample, said method comprising the step of relating NMR spectral intensity at one or more predetermined diagnostic spectral windows for said sample with a predetermined condition associated with atherosclerosis/coronary heart disease.
- 2. A method, according to claim 1, of classifying a sample from a subject, said method comprising the step of relating NMR spectral intensity at one or more predetermined diagnostic spectral windows for said sample with a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 3. A method, according to claim 1, of classifying a sample, said method comprising the step of relating NMR spectral intensity at one or more predetermined diagnostic spectral windows for said sample with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease.
- 4. A method, according to claim 1, of classifying a sample from a subject, said method comprising the step of relating NMR spectral intensity at one or more predetermined diagnostic spectral windows for said sample with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 5. A method, according to claim 1, of classifying a sample, said method comprising the step of relating a modulation of NMR spectral intensity, relative to a control value, at one or more predetermined diagnostic spectral windows for said sample with a predetermined condition associated with atherosclerosis/coronary heart disease.
- 6. A method, according to claim 1, of classifying a sample from a subject, said method comprising the step of relating a modulation of NMR spectral intensity, relative to a control value, at one or more predetermined diagnostic spectral windows for said sample with a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 7. A method, according to claim 1, of classifying a sample, said method comprising the step of relating a modulation of NMR spectral intensity, relative to a control value, at one or more predetermined diagnostic spectral windows for said sample with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease.
- 8. A method, according to claim 1, of classifying a sample from a subject, said method comprising the step of relating a modulation of NMR spectral intensity, relative to a control value, at one or more predetermined diagnostic spectral windows for said sample with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 9. A method of classifying a subject, said method comprising the step of relating NMR spectral intensity at one or more predetermined diagnostic spectral windows for a sample from said subject with a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 10. A method, according to claim 9, of classifying a subject, said method comprising the step of relating NMR spectral intensity at one or more predetermined diagnostic spectral windows for a sample from said subject with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 11. A method, according to claim 9, of classifying a subject, said method comprising the step of relating a modulation of NMR spectral intensity, relative to a control value, at one or more predetermined diagnostic spectral windows for a sample from said subject with a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 12. A method, according to claim 9, of classifying a subject, said method comprising the step of relating a modulation of NMR spectral intensity, relative to a control value, at one or more predetermined diagnostic spectral windows for a sample from said subject with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 13. A method of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the step of relating NMR spectral intensity at one or more predetermined diagnostic spectral windows for a sample from said subject with said predetermined condition of said subject.
- 14. A method, according to claim 13, of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the step of relating NMR spectral intensity at one or more predetermined diagnostic spectral windows for a sample from said subject with the presence or absence of said predetermined condition of said subject.
- 15. A method, according to claim 13, of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the step of relating a modulation of NMR spectral intensity, relative to a control value, at one or more predetermined diagnostic spectral windows for a sample from said subject with said predetermined condition of said subject.
- 16. A method, according to claim 13, of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the step of relating a modulation of NMR spectral intensity, relative to a control value, at one or more predetermined diagnostic spectral windows for a sample from said subject with the presence or absence of said predetermined condition of said subject.
- 17. A method of classifying a sample, said method comprising the step of relating the amount of, or relative amount of one or more diagnostic species present in said sample with a predetermined condition associated with atherosclerosis/coronary heart disease.
- 18. A method, according to claim 17, of classifying a sample from a subject, said method comprising the step of relating the amount of, or relative amount of one or more diagnostic species present in said sample with a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 19. A method, according to claim 17, of classifying a sample, said method comprising the step of relating the amount of, or relative amount of one or more diagnostic species present in said sample with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease.
- 20. A method, according to claim 17, of classifying a sample from a subject, said method comprising the step of relating the amount of, or the relative amount of, one or more diagnostic species present in said sample with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 21. A method, according to claim 17, of classifying a sample, said method comprising the step of relating a modulation of the amount of, or relative amount of one or more diagnostic species present in said sample, as compared to a control sample, with a predetermined condition associated with atherosclerosis/coronary heart disease.
- 22. A method, according to claim 17, of classifying a sample from a subject, said method comprising the step of relating a modulation of the amount of, or relative amount of one or more diagnostic species present in said sample, as compared to a control sample, with a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 23. A method, according to claim 17, of classifying a sample, said method comprising the step of relating a modulation of the amount of, or relative amount of one or more diagnostic species present in said sample, as compared to a control sample, with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease.
- 24. A method, according to claim 17, of classifying a sample from a subject, said method comprising the step of relating a modulation of the amount of, or relative amount of one or more diagnostic species present in said sample, as compared to a control sample, with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 25. A method of classifying a subject, said method comprising the step of relating the amount of, or relative amount of one or more diagnostic species present in a sample from said subject with a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 26. A method, according to claim 25, of classifying a subject, said method comprising the step of relating the amount of, or relative amount of one or more diagnostic species present in a sample from said subject with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 27. A method, according to claim 25, of classifying a subject, said method comprising the step of relating a modulation of the amount of, or relative amount of one or more diagnostic species present in a sample from said subject, as compared to a control sample, with a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 28. A method, according to claim 25, of classifying a subject, said method comprising the step of relating a modulation of the amount of, or relative amount of one or more diagnostic species present in a sample from said subject, as compared to a control sample, with the presence or absence of a predetermined condition associated with atherosclerosis/coronary heart disease of said subject.
- 29. A method of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the step of relating the amount of, or relative amount of one or more diagnostic species present in a sample from said subject with said predetermined condition of said subject.
- 30. A method, according to claim 29, of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the step of relating the amount of, or relative amount of one or more diagnostic species present in a sample from said subject with the presence or absence of said predetermined condition of said subject.
- 31. A method, according to claim 29, of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the step of relating a modulation of the amount of, or relative amount of one or more diagnostic species present in a sample from said subject, as compared to a control sample, with said predetermined condition of said subject.
- 32. A method, according to claim 29, of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the step of relating a modulation of the amount of, or relative amount of one or more diagnostic species present in a sample from said subject, as compared to a control sample, with the presence or absence of said predetermined condition of said subject.
- 33. A method of classification, said method comprising the steps of:
(a) forming a predictive mathematical model by applying a modelling method to modelling data; (b) using said model to classify a test sample.
- 34. A method, according to claim 33, of classifying a test sample, said method comprising the steps of:
(a) forming a predictive mathematical model by applying a modelling method to modelling data; wherein said modelling data comprises a plurality of data sets for modelling samples of known class; (b) using said model to classify said test sample as being a member of one of said known classes.
- 35. A method, according to claim 33, of classifying a test sample, said method comprising the steps of:
(a) forming a predictive mathematical model by applying a modelling method to modelling data; wherein said modelling data comprises at least one data set for each of a plurality of modelling samples; wherein said modelling samples define a class group consisting of a plurality of classes; wherein each of said modelling samples is of a known class selected from said class group; and, (b) using said model with a data set for said test sample to classify said test sample as being a member of one class selected from said class group.
- 36. A method of classification, said method comprising the step of:
using a predictive mathematical model; wherein said model is formed by applying a modelling method to modelling data; to classify a test sample.
- 37. A method, according to claim 36, of classifying a test sample, said method comprising the step of:
using a predictive mathematical model; wherein said model is formed by applying a modelling method to modelling data; wherein said modelling data comprises a plurality of data sets for modelling samples of known class; to classify said test sample as being a member of one of said known classes.
- 38. A method, according to claim 36, of classifying a test sample, said method comprising the step of:
using a predictive mathematical model; wherein said model is formed by applying a modelling method to modelling data; wherein said modelling data comprises at least one data set for each of a plurality of modelling samples; wherein said modelling samples define a class group consisting of a plurality of classes; wherein each of said modelling samples is of a known class selected from said class group; with a data set for said test sample to classify said test sample as being a member of one class selected from said class group.
- 39. A method of classification, said method comprising the steps of:
(a) forming a predictive mathematical model by applying a modelling method to modelling data; (b) using said model to classify a subject.
- 40. A method, according to claim 39, of classifying a subject, said method comprising the steps of:
(a) forming a predictive mathematical model by applying a modelling method to modelling data; wherein said modelling data comprises a plurality of data sets for modelling samples of known class; (b) using said model to classify a test sample from said subject as being a member of one of said known classes, and thereby classify said subject.
- 41. A method, according to claim 39, of classifying a subject, said method comprising the steps of:
(a) forming a predictive mathematical model by applying a modelling method to modelling data; wherein said modelling data comprises at least one data set for each of a plurality of modelling samples; wherein said modelling samples define a class group consisting of a plurality of classes; wherein each of said modelling samples is of a known class selected from said class group; and, (b) using said model with a data set for a test sample from said subject to classify said test sample as being a member of one class selected from said class group, and thereby classify said subject.
- 42. A method of classification, said method comprising the step of:
using a predictive mathematical model; wherein said model is formed by applying a modelling method to modelling data; to classify a subject.
- 43. A method, according to claim 42, of classifying a subject, said method comprising the step of:
using a predictive mathematical model wherein said model is formed by applying a modelling method to modelling data; wherein said modelling data comprises a plurality of data sets for modelling samples of known class; to classify a test sample from said subject as being a member of one of said known classes, and thereby classify said subject.
- 44. A method, according to claim 42, of classifying a subject, said method comprising the step of:
using a predictive mathematical model, wherein said model is formed by applying a modelling method to modelling data; wherein said modelling data comprises at least one data set for each of a plurality of modelling samples; wherein said modelling samples define a class group consisting of a plurality of classes; wherein each of said modelling samples is of a known class selected from said class group; with a data set for a test sample from said subject to classify said test sample as being a member of one class selected from said class group, and thereby classify said subject.
- 45. A method of diagnosis, said method comprising the steps of:
(a) forming a predictive mathematical model by applying a modelling method to modelling data; (b) using said model to diagnose a subject.
- 46. A method, according to claim 45, of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the steps of:
(a) forming a predictive mathematical model by applying a modelling method to modelling data; wherein said modelling data comprises a plurality of data sets for modelling samples of known class; (b) using said model to classify a test sample from said subject as being a member of one of said known classes, and thereby diagnose said subject.
- 47. A method, according to claim 45, of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the steps of:
(a) forming a predictive mathematical model by applying a modelling method to modelling data; wherein said modelling data comprises at least one data set for each of a plurality of modelling samples; wherein said modelling samples define a class group consisting of a plurality of classes; wherein each of said modelling samples is of a known class selected from said class group; and, (b) using said model with a data set for a test sample from said subject to classify said test sample as being a member of one class selected from said class group, and thereby diagnose said subject.
- 48. A method of diagnosis, said method comprising the step of:
using a predictive mathematical model; wherein said model is formed by applying a modelling method to modelling data; to diagnose a subject.
- 49. A method, according to claim 48, of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the step of:
using a predictive mathematical model; wherein said model is formed by applying a modelling method to modelling data; wherein said modelling data comprises a plurality of data sets for modelling samples of known class; to classify a test sample from said subject as being a member of one of said known classes, and thereby diagnose said subject.
- 50. A method, according to claim 48, of diagnosing a predetermined condition associated with atherosclerosis/coronary heart disease of a subject, said method comprising the step of:
using a predictive mathematical model; wherein said model is formed by applying a modelling method to modelling data; wherein said modelling data comprises at least one data set for each of a plurality of modelling samples; wherein said modelling samples define a class group consisting of a plurality of classes; wherein each of said modelling samples is of a known class selected from said class group; with a data set for a test sample from said subject to classify said test sample as being a member of one class selected from said class group, and thereby diagnose said subject.
- 51. A method according to any one of claims 1 to 50, wherein said test sample is a test sample from a subject, and said predetermined condition is a predetermined condition of said subject.
- 52. A method according to any one of claims 1 to 50, wherein said “a modulation of” is “an increase or decrease in.”
- 53. A method according to any one of claims 1 to 52, wherein said relating step involves the use of a predictive mathematical model.
- 54. A method according to any one of claims 1 to 52, wherein said modelling method is a multivariate statistical analysis modelling method.
- 55. A method according to any one of claims 1 to 52, wherein said modelling method is a multivariate statistical analysis modelling method which employs a pattern recognition method.
- 56. A method according to any one of claims 1 to 52, wherein said modelling method is, or employs PCA.
- 57. A method according to any one of claims 1 to 52, wherein said modelling method is, or employs PLS.
- 58. A method according to any one of claims 1 to 52, wherein said modelling method is, or employs PLS-BA.
- 59. A method according to any one of claims 1 to 58, wherein said modelling method includes a step of data filtering.
- 60. A method according to any one of claims 1 to 58, wherein said modelling method includes a step of orthogonal data filtering.
- 61. A method according to any one of claims 1 to 58, wherein said modelling method includes a step of OSC.
- 62. A method according to any one of claims 1 to 61, wherein said model takes account of one or more diagnostic species.
- 63. A method according to any one of claims 1 to 62, wherein said modelling data comprise spectral data.
- 64. A method according to any one of claims 1 to 62, wherein said modelling data comprise both spectral data and non-spectral data.
- 65. A method according to any one of claims 1 to 62, wherein said modelling data comprise NMR spectral data.
- 66. A method according to any one of claims 1 to 62, wherein said modelling data comprise both, NMR spectral data and non-NMR spectral data.
- 67. A method according to any one of claims 1 to 62, wherein said NMR spectral data comprises 1H NMR spectral data and/or 13C NMR spectral data.
- 68. A method according to any one of claims 1 to 62, wherein said NMR spectral data comprises 1H NMR spectral data.
- 69. A method according to any one of claims 1 to 62, wherein said modelling data comprise spectra.
- 70. A method according to any one of claims 1 to 62, wherein said modelling data are spectra.
- 71. A method according to any one of claims 1 to 70, wherein said modelling data comprises a plurality of data sets for modelling samples of known class.
- 72. A method according to any one of claims 1 to 70, wherein said modelling data comprises at least one data set for each of a plurality of modelling samples.
- 73. A method according to any one of claims 1 to 70, wherein said modelling data comprises exactly one data set for each of a plurality of modelling samples.
- 74. A method according to any one of claims 1 to 70, wherein said using step is:
using said model with a data set for said test sample to classify said test sample as being a member of one class selected from said class group.
- 75. A method according to any one of claims 1 to 74, wherein each of said data sets comprises spectral data.
- 76. A method according to any one of claims 1 to 74, wherein each of said data sets comprises both spectral data and non-spectral data.
- 77. A method according to any one of claims 1 to 74, wherein each of said data sets comprises NMR spectral data.
- 78. A method according to any one of claims 1 to 74, wherein each of said data sets comprises both NMR spectral data and non-NMR spectral data.
- 79. A method according to any one of claims 1 to 74, wherein said NMR spectral data comprises 1H NMR spectral data and/or 13C NMR spectral data.
- 80. A method according to any one of claims 1 to 74, wherein said NMR spectral data comprises 1H NMR spectral data.
- 81. A method according to any one of claims 1 to 74, wherein each of said data sets comprises a spectrum.
- 82. A method according to any one of claims 1 to 74, wherein each of said data sets comprises a 1H NMR spectrum and/or 13C NMR spectrum.
- 83. A method according to any one of claims 1 to 74, wherein each of said data sets comprises a 1H NMR spectrum.
- 84. A method according to any one of claims 1 to 74, wherein each of said data sets is a spectrum.
- 85. A method according to any one of claims 1 to 74, wherein each of said data sets is a 1H NMR spectrum and/or 13C NMR spectrum.
- 86. A method according to any one of claims 1 to 74, wherein each of said data sets is a 1H NMR spectrum.
- 87. A method according to any one of claims 1 to 86, wherein said non-spectral data is non-spectral clinical data.
- 88. A method according to any one of claims 1 to 86, wherein said non-NMR spectral data is non-spectral clinical data.
- 89. A method according to any one of claims 1 to 88, wherein said class group comprises classes associated with said predetermined condition.
- 90. A method according to any one of claims 1 to 88, wherein said class group comprises exactly two classes.
- 91. A method according to any one of claims 1 to 88, wherein said class group comprises exactly two classes: presence of said predetermined condition; and absence of said predetermined condition.
- 92. A method according to any one of claims 1 to 91, wherein said sample is an in vivo sample.
- 93. A method according to any one of claims 1 to 91, wherein said sample is an ex vivo sample.
- 94. A method according to any one of claims 1 to 91, wherein said sample is a blood sample or a blood-derived sample.
- 95. A method according to any one of claims 1 to 91, wherein said sample is a blood sample.
- 96. A method according to any one of claims 1 to 91, wherein said sample is a blood plasma sample.
- 97. A method according to any one of claims 1 to 91, wherein said sample is a blood serum sample.
- 98. A method according to any one of claims 1 to 97, wherein said subject is an animal.
- 99. A method according to any one of claims 1 to 97, wherein said subject is a mammal.
- 100. A method according to any one of claims 1 to 97, wherein said subject is a human.
- 101. A method according to any one of claims 1 to 100, wherein said one or more predetermined diagnostic spectral windows is: a single predetermined diagnostic spectral window.
- 102. A method according to any one of claims 1 to 100, wherein said one or more predetermined diagnostic spectral windows is: a plurality of predetermined diagnostic spectral windows.
- 103. A method according to any one of claims 1 to 100, wherein
said one or more predetermined diagnostic spectral windows is: a plurality of diagnostic spectral windows, and, said NMR spectral intensity at one or more predetermined diagnostic spectral windows is: a combination of a plurality of NMR spectral intensities, each of which is NMR spectral intensity for one of said plurality of predetermined diagnostic spectral windows.
- 104. A method according to claim 103, wherein said combination is a linear combination.
- 105. A method according to any one of claims 1 to 104, wherein said one or more predetermined diagnostic spectral windows are associated with one or more diagnostic species.
- 106. A method according to any one of claims 1 to 104, wherein at least one of said one or more predetermined diagnostic spectral windows encompasses a chemical shift value for an NMR resonance of a diagnostic species.
- 107. A method according to any one of claims 1 to 104, each of a plurality of said one or more predetermined diagnostic spectral windows encompasses a chemical shift value for an NMR resonance of a diagnostic species.
- 108. A method according to any one of claims 1 to 104, each of said one or more predetermined diagnostic spectral windows encompasses a chemical shift value for an NMR resonance of a diagnostic species.
- 109. A method according to any one of claims 106 to 108, wherein said NMR resonance is a 1H NMR resonance.
- 110. A method according to any one of claims 1 to 109, wherein said one or more diagnostic species are endogenous diagnostic species.
- 111. A method according to any one of claims 1 to 1109, wherein said one or more diagnostic species are associated with NMR spectral intensity at predetermined diagnostic spectral windows.
- 112. A method according to any one of claims 1 to 111, said one or more diagnostic species are a plurality of diagnostic species.
- 113. A method according to any one of claims 1 to 111, said one or more diagnostic species is a single diagnostic species.
- 114. A method according to any one of claims 1 to 113, wherein said classification is performed on the basis of an amount, or a relative amount, of a single diagnostic species.
- 115. A method according to any one of claims 1 to 113, wherein said classification is performed on the basis of an amount, or a relative amount, of a plurality of diagnostic species.
- 116. A method according to any one of claims 1 to 113, wherein said classification is performed on the basis of an amount, or a relative amount, of each of a plurality of diagnostic species.
- 117. A method according to any one of claims 1 to 113, wherein said classification is performed on the basis of a total amount, or a relative total amount, of a plurality of diagnostic species.
- 118. A method according to any one of claims 1 to 113, wherein:
said one or more diagnostic species is: a plurality of diagnostic species; and, said amount of, or relative amount of one or more diagnostic species is: a combination of a plurality of amounts, or relative amounts, each of which is the amount of, or relative amount of one of said plurality of diagnostic species.
- 119. A method according to claim 118, wherein said combination is a linear combination.
- 120. A method according to any one of claims 1 to 119, wherein said predetermined diagnostic spectral windows are defined by one or more index values, δr, corresponding to the bucket regions listed in Table 4-CHD.
- 121. A method according to any one of claims 1 to 119, wherein at least one of said one or more predetermined diagnostic species is a species described in Table 4-CHD.
- 122. A method according to any one of claims 1 to 119, wherein each of a plurality of said one or more predetermined diagnostic species is a species described in Table 4-CHD.
- 123. A method according to any one of claims 1 to 119, wherein each of said one or more predetermined diagnostic species is a species described in Table 4-CHD.
- 124. A method of identifying a diagnostic species, or a combination of a plurality of diagnostic species, for a predetermined condition associated with atherosclerosis/coronary heart disease, said method comprising the steps of:
(a) applying a multivariate statistical analysis method to experimental data; wherein said experimental data comprises at least one data comprising experimental parameters measured for each of a plurality of experimental samples; wherein said experimental samples define a class group consisting of a plurality of classes; wherein at least one of said plurality of classes is a class associated with said predetermined condition, e.g., a class associated with the presence of said predetermined condition; wherein at least one of said plurality of classes is a class not associated with said predetermined condition, e.g., a class associated with the absence of said predetermined condition; wherein each of said experimental samples is of known class selected from said class group; and: (b) identifying one or more critical experimental parameters; wherein each of said critical experimental parameters is statistically significantly different for classes of said class group, e.g., is statistically significant for discriminating between classes of said class group; and, (c) matching each of one or more of said one or more critical experimental parameters with said diagnostic species; or: (b) identifying a combination of a plurality of critical experimental parameters; wherein said combination of a plurality of critical experimental parameters is statistically significantly different for classes of said class group, e.g., is statistically significant for discriminating between classes of said class group; and, (c) matching each of one or more of said plurality of critical experimental parameters with said combination of a plurality of diagnostic species.
- 125. A method, according to claim 124, wherein:
one or more of said critical experimental parameters is a spectral parameter, and said identifying and matching steps are: (b) identifying one or more critical experimental spectral parameters; and, (c) matching each of one or more of said one or more critical experimental spectral parameters with a spectral feature, e.g., a spectral peak; and matching one or more of said spectral peaks with said diagnostic species; or: (b) identifying a combination of a plurality of critical experimental spectral parameters; and, (c) matching each of a plurality of said plurality of critical experimental spectral parameters with a spectral feature, e.g., a spectral peak; and matching one or more of said spectral peaks with said combination of a plurality of diagnostic species.
- 126. A method according to any one of claims 124 to 125, wherein said multivariate statistical analysis method is a multivariate statistical analysis method which employs a pattern recognition method.
- 127. A method according to any one of claims 124 to 126, wherein said multivariate statistical analysis method is, or employs PCA.
- 128. A method according to any one of claims 124 to 126, wherein said multivariate statistical analysis method is, or employs PLS.
- 129. A method according to any one of claims 124 to 126, wherein said multivariate statistical analysis method is, or employs PLS-DA.
- 130. A method according to any one of claims 124 to 129, wherein said multivariate statistical analysis method includes a step of data filtering.
- 131. A method according to any one of claims 124 to 129, wherein said multivariate statistical analysis method includes a step of orthogonal data filtering.
- 132. A method according to any one of claims 124 to 129, wherein said multivariate statistical analysis method includes a step of OSC.
- 133. A method according to any one of claims 124 to 132, wherein said experimental parameters comprise spectral data.
- 134. A method according to any one of claims 124 to 132, wherein said experimental parameters comprise both spectral data and non-spectral data.
- 135. A method according to any one of claims 124 to 132, wherein said experimental parameters comprise NMR spectral data.
- 136. A method according to any one of claims 124 to 132, wherein said experimental parameters comprise both NMR spectral data and non-NMR spectral data.
- 137. A method according to any one of claims 124 to 136, wherein said NMR spectral data comprises 1H NMR spectral data and/or 13C NMR spectral data.
- 138. A method according to any one of claims 124 to 136, wherein said NMR spectral data comprises 1H NMR spectral data.
- 139. A method according to any one of claims 124 to 138, wherein said non-spectral data is non-spectral clinical data.
- 140. A method according to any one of claims 124 to 138, wherein said non-NMR spectral data is non-spectral clinical data.
- 141. A method according to any one of claims 124 to 140, wherein said critical experimental parameters are spectral parameters.
- 142. A method according to any one of claims 124 to 141, wherein said class group comprises classes associated with said predetermined condition.
- 143. A method according to any one of claims 124 to 142, wherein said class group comprises exactly two classes.
- 144. A method according to any one of claims 124 to 142, wherein said class group comprises exactly two classes: presence of said predetermined condition; and
absence of said predetermined condition.
- 145. A method according to any one of claims 124 to 142, wherein said class associated with said predetermined condition is a class associated with the presence of said predetermined condition.
- 146. A method according to any one of claims 124 to 142, wherein said class not associated with said predetermined condition is a class associated with the absence of said predetermined condition.
- 147. A method according to any one of claims 124 to 146, said method further comprising the additional step of:
(d) confirming the identity of said diagnostic species.
- 148. A computer system or device, such as a computer or linked computers, operatively configured to implement a method according to any one of claims 1 to 147.
- 149. Computer code suitable for implementing a method according to any one of claims 1 to 147 on a suitable computer system.
- 150. A computer program comprising computer program means adapted to perform a method according to according to any one of claims 1 to 147, when said program is run on a computer.
- 151. A computer program according to claim 150, embodied on a computer readable medium.
- 152. A data carrier which carries computer code suitable for implementing a method according to any one of claims 1 to 147 on a suitable computer.
- 153. Computer code and/or computer readable data representing a predictive mathematical model as described in any one of claims 1 to 147.
- 154. A data carrier which carries computer code and/or computer readable data representing a predictive mathematical model as described in any one of claims 1 to 147.
- 155. A computer system or device, such as a computer or linked computers, programmed or loaded with computer code and/or computer readable data representing a predictive mathematical model as described in any one of claims 1 to 147.
- 156. A system comprising:
(a) a first component comprising a device for obtaining NMR spectral intensity data for a sample; and, (b) a second component comprising computer system or device, such as a computer or linked computers, operatively configured to implement a method according to any one of claims 1 to 147, and operatively linked to said first component.
- 157. A diagnostic species identified by a method according to any one of claims 124 to 147.
- 158. A diagnostic species identified by a method according to any one of claims 124 to 147 for use in a method of classification.
- 159. A method of classification which employs or relies upon one or more diagnostic species identified by a method according to any one of claims 124 to 147.
- 160. Use of one or more diagnostic species identified by a method of classification according to any one of claims 124 to 147.
- 161. An assay for use in a method of classification, which assay relies upon one or more diagnostic species identified by a method according to any one of claims 124 to 147.
- 162. Use of an assay in a method of classification, which assay relies upon one or more diagnostic species identified by a method according to any one of claims 124 to 147.
- 163. A method of therapeutic monitoring of a subject undergoing therapy which employs a method of classification according to any one of claims 1 to 123.
- 164. A method of evaluating drug therapy and/or drug efficacy which employs a method of classification according to any one of claims 1 to 123.
Priority Claims (2)
Number |
Date |
Country |
Kind |
0109930.8 |
Apr 2001 |
GB |
|
0117428.3 |
Jul 2001 |
GB |
|
RELATED APPLICATIONS
[0001] This application is related to (and where permitted by law, claims priority to):
[0002] (a) United Kingdom patent application GB 0109930.8 filed Apr. 23, 2001;
[0003] (b) United Kingdom patent application GB 0117428.3 filed Jul. 17, 2001;
[0004] (c) United States Provisional patent application USSN 601307,015 filed Jul. 20, 2001; the contents of each of which are incorporated herein by reference in their entirety.
[0005] This application is one of five applications filed on even date naming the same applicant:
[0006] (1) attorney reference number WJW/LP5995600 (PCT/GB02/_);
[0007] (2) attorney reference number WJW/LP5995618 (PCT/GB02/_);
[0008] (3) attorney reference number WJW/LP5995626 (PCT/GB02/_);
[0009] (4) attorney reference number WJW/LP5995634 (PCT/GB02/_);
[0010] (5) attorney reference number WJW/LP5995642 (PCT/GB02/_); the contents of each of which are incorporated herein by reference in their entirety.
PCT Information
Filing Document |
Filing Date |
Country |
Kind |
PCT/GB02/01854 |
4/23/2002 |
WO |
|