SYSTEM AND METHOD FOR DETECTING LEVELS OF PAIN USING MAGNETIC RESONANCE SPECTROSCOPY (MRS)

20200178889 ยท 2020-06-11

Assignee

Inventors

Cpc classification

International classification

Abstract

One dimensional (1D) and two dimensional (2D) MR spectroscopy of the brain provides an objective test for pain and level of pain. There are two ways of evaluating the data. The first is conventional analysis of the 2D MRS. The second us the use of data mining methods such as testing for correlation between wavelet-based features and self-reported pain intensity, the MBDA method. Both found multiple spectral regions that were highly correlated with self-reported pain. Two of these spectral regions are consistent with changes to the recently assigned substrate -L Fucose and the Fuc-(1-2) glycans in the human brain. There are common features recorded compared with prior reports using the MBDA method to evaluate pain associated with spinal cord injury and low back pain. Accordingly, by detecting the levels of selected neurochemical markers in MR spectroscopy of an individual, one can determine the level of pain by comparing spectral data obtained with a reference database which correlates level of selected neurochemicals with levels of pain.

Claims

1. A method for enabling detecting the level of pain experienced by an individual, comprising: obtaining spectral data of the brain of an individual; and comparing the spectral data obtained with reference data which correlates the level of at least one selected neurochemical marker with the level of pain and providing an objective measure to enable detection of the level of pain based on the comparison.

2. The method of claim 1, where in the selected neurochemical marker is at least one of the substrate -L-Fucose and fucosylated glycan denoted Fuc II, the higher level of which indicates a higher level of pain.

3. The method of claim 1, wherein the selected neurochemical marker is at least one of the fucosylated glycan denoted Fuc I to Fuc VII, the lower levels of which indicate a higher level of pain.

4. The method of claim 1, wherein the pain is of neuropathic or nociceptive or inflammatory in nature from at least one of chronic or acute from low back pain, pelvic pain, pain as a consequence of spinal injury, trauma injury, jaw or dental injury and sporting injury.

5. A system for enabling detecting the level of pain experienced by an individual, comprising: a magnetic resonance spectrometer for obtaining spectral data of the brain of an individual; and a comparator for comparing the spectral data obtained with reference data which correlates the level of at least one selected neurochemical marker with the level of pain and providing an objective measure to enable detection of the level of pain based on the comparison.

6. A system for detecting the response to therapy as deduced by the level of pain experienced by an individual, comprising: a magnetic resonance spectrometer for obtaining spectral data of the brain of an individual; and a comparator for comparing the spectral data obtained with reference data which correlates the level of at least one selected neurochemical marker with the level of pain and providing an objective measure to enable detection of the level of pain based on the comparison.

7. The system of claim 5, wherein the selected neurochemical marker is at least one of the substrate -L-Fucose I and fucosylated glycan denoted Fuc II, the higher levels of which indicate a higher level of pain.

8. The system of claim 5, wherein the selected neurochemical marker is at least one of fucosylated glycan denoted Fuc I to Fuc VII, the lower level of which indicates a higher level of pain.

9. The system of claim 5, wherein the pain is at least one of chronic or acute from low back pain, pelvic pain, pain as a consequence of spinal injury, trauma injury, jaw or dental injury and sporting injury.

Description

BRIEF DESCRIPTION OF DRAWING

[0014] FIG. 1 is a plot of the expanded region of a 2D L-COSY spectrum (F2: 4-4.5 ppm, F1: 0.95-1.6 ppm) denoting the assignments of Fuc I to Fuc VII and two -L-Fucose and lactate. The frequencies identified as reporting on the level of pain are denoted in orange. This is aligned with the regions identified by the MBDA as significant CPPS markers (p<0.01) and markers correlated with CPPS pain score to show pain vs. no pain and level of pain. The frequencies identified as the level of self-reported pain are denoted as shown in FIG. 4.

[0015] FIG. 2 is a depiction of an MRS system wherein a 1D MRS Biomarker Discovery Algorithm (MBDA) is used to process MRS data and identify bio markers with diagnostic ability;

[0016] FIG. 3 shows scatter plots of classifier features selected by the MBDA. The Sequential Forward Selection technique selected a 3-dimensional feature vector from the entire set of features residing between 0-4 ppm that maximized a statistical measure of class separability between male CP/CPPS patients and controls. The selected features were at 1.19, 1.45, and 2.69 ppm chemical shift. The features at 1.19 and 1.45 ppm were individually significant with correspondingly large effect sizes (1.19 ppm: p=0.0012, IESI=2.01; 1.45 ppm: p=0.0062, IESI=1.42) but the feature at 2.69 ppm, by itself, was not significant (p=0.75, IESI=0.09), indicating that despite its small effect size, the feature at 2.69 ppm provides information orthogonal to the first two features.

[0017] FIG. 4 (top) is a plot of the level of pain vs. the intensity at the spectral region at 1.09 ppm; at the spectral frequency of -L-Fucose and Fuc II[9]; which is a positive correlation (of 0.82); i.e., the level of -L-Fucose increased with the level of pain. Top is the spectral frequency intensity at 1.09 ppm plotted against the self-reported level of pain with a positive correlation of 0.82. This is the spectral region that includes the substrate -L-Fucose I Fuc II[9].

[0018] FIG. 4 (bottom) is a plot of the level of pain vs. the intensity at the spectral region at 1.42 ppm, of fucosylated glycans Fuc I to Fuc V, which is a negative correlation (of 0.77); i.e., the level of fucosylated glycans Fuc I to Fuc V decreased as the level of pain increased; Bottom is the self-reported level of pain is plotted against the intensity of the resonances at 1.42 ppm where a strong negative correlation of 0.77 is observed. The frequency of 1.42 ppm would include contributions from the fucosylated glycans Fuc I to Fuc V[9].

[0019] FIG. 5 shows a system which can be used to practice the invention.

DESCRIPTION OF THE PREFERRED EMBODIMENT

[0020] The invention provides a method for enabling detecting the level of pain experienced by an individual, comprising: obtaining spectral data of the brain of an individual; and comparing the spectral data obtained with reference data which correlates the level of at least one selected neurochemical marker with the level of pain and providing an objective measure to enable detection of the level of pain based on the comparison.

[0021] The selected neurochemical marker may be at least one of the substrate -L-Fucose I and fucosylated glycan denoted Fuc II, the higher level of which indicates a higher level of pain. The selected neurochemical marker may be at least one of the fucosylated glycan denoted Fuc I to Fuc VII, the lower levels of which indicate a higher level of pain. The pain may be of neuropathic or nociceptive or inflammatory in nature from at least one of chronic or acute from low back pain, pelvic pain, pain as a consequence of spinal injury, trauma injury, jaw or dental injury and sporting injury.

[0022] The invention provides a system for enabling detecting the level of pain experienced by an individual, comprising: a magnetic resonance spectrometer for obtaining spectral data of the brain of an individual; and a comparator for comparing the spectral data obtained with reference data which correlates the level of at least one selected neurochemical marker with the level of pain and providing an objective measure to enable detection of the level of pain based on the comparison.

[0023] The invention provides a system for detecting the response to therapy as deduced by the level of pain experienced by an individual, comprising: a magnetic resonance spectrometer for obtaining spectral data of the brain of an individual; and a comparator for comparing the spectral data obtained with reference data which correlates the level of at least one selected neurochemical marker with the level of pain and providing an objective measure to enable detection of the level of pain based on the comparison.

[0024] The selected neurochemical marker may be at least one of the substrate -L-Fucose I and fucosylated glycan denoted Fuc II, the higher levels of which indicate a higher level of pain. The selected neurochemical marker may be at least one of fucosylated glycan denoted Fuc I to Fuc VII, the lower level of which indicates a higher level of pain. The pain may be at least one of chronic or acute from low back pain, pelvic pain, pain as a consequence of spinal injury, trauma injury, jaw or dental injury and sporting injury.

[0025] A preferred embodiment will be described, but the invention is not limited to this embodiment.

[0026] There are multiple clinical studies underway.

[0027] Magnetic Resonance

[0028] Imaging and Spectroscopy: Following screening for MR contraindications, all subjects were examined using a 3T MR scanner (Siemens TIM Trio, or Verio or Prisma or Vida) and a 12 or 32 or 64 channel head coil. The exam consisted of a localizer MRI using 3D MPRAGE which was reconstructed in all three planes for localization of the spectroscopy voxel. Single voxel 1D magnetic resonance spectroscopy (MRS) was acquired from the Posterior Cingulate Gyrus (PCG) using a 333 voxel and the following parameters were employed: Point-resolved spectroscopy (PRESS) was used with an echo time of 30 ms, repetition time of 2000 ms, 128 averages, and water suppression. A water reference was acquired in the same location using 16 averages and no water suppression. The field homogeneity was optimized for the selected spectroscopy volume of interest by manual shimming to a linewidth of less than 15 Hz for the linewidth at half-height of the unsuppressed water.

[0029] Conventional evaluation of the spectra as described in Quadrelli [5] and Tosh [2]. Wavelet-Based Analysis using MBDA as described in Stanwell [10] and see MBDA (FIG. 2). This is an automated, fully parameterized ensemble of signal processing and machine learning algorithms that consists of four key modules: post-acquisition processing, feature extraction, feature selection and significance testing, and statistical classification and cross-validation.

[0030] Results

[0031] The healthy controls were compared to those with pain and the differences analyzed. Using both conventional spectral analysis, -L-Fucose I and Fuc II increased with level of pain and Fuc-(1-2) glycans denoted Fuc I-Fuc VII decreased as the level of pain increased (FIG. 3).

[0032] The MBDA method (FIG. 2) selected features were at 1.19, 1.45, and 2.69 ppm chemical shift. Moreover, the features at 1.19 and 1.45 ppm were wavelet-based features at the finest scale, having widths of 0.0088 ppm, whereas the feature at 2.69 ppm was from the coarsest scale having a width of 0.054 ppm. To avoid overfitting with limited training data, higher-dimensional feature vectors were not considered. The three-dimensional feature vector was submitted to Linear Discriminant Analysis (LDA) and Support Vector Machine (SVM) classifiers. Their cross-validated performance in Table 1 documents high sensitivity and specificity. The 3-dimensional scatter plot in FIG. 3 illustrates the ability of the algorithm to separate and discriminate with high degree the pain patients from controls. FIG. 4 shows the plot of the chosen frequencies by both MBDA and conventional spectral analysis versus self-reported pain level.

[0033] Since the MBDA method selects the features that are the major discriminators it would appear that pain versus no pain has common features for each of these conditions. The spectral frequencies that are in common for pain versus no pain in spinal cord injury, low back pain and CPPS include 1.19 to 1.21 ppm; 2.1 ppm; and 2.3-2.4 ppm; and 2.64 (CPPS and SCI but not LBP).

[0034] Because the common spectral features were seen for CP/CPPS, chronic low back pain and spinal cord injury pain for pain detection, one can fairly conclude that the level of pain (based on amplitude of the neurochemical values) can be detected for chronic low back pain and spinal cord injury pain, as well as trigeminal neuralgia, wherein some data has been obtained to support this.

[0035] FIG. 5 shows a system which can be used to practice the invention. The system includes a magnetic resonance spectrometer, which could be a Siemens MR scanner as identified above, or any other make and made scanner. The comparator can be an applications program residing on a computer (local or cloud based) which contains a classifier to perform as described herein.

[0036] Accordingly, following the method and system described above, one can distinguish between no pain and pain, and also the pain level. The regions will be the frequencies correlating with certain fucosylated molecules and their free substrate.

[0037] Although a preferred embodiment has been described, the invention is not limited to this embodiment, and the scope of the invention is defined only by the following claims.

REFERENCES CITED, INCORPORATED BY REFERENCE

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[0042] 5. Quadrelli, S., et al., Post-traumatic stress disorder affects fucose-alpha(1-2)-glycans in the human brain: preliminary findings of neuro deregulation using in vivo two-dimensional neuro MR spectroscopy. Transl Psychiatry, 2019. 9(1): p. 27.

[0043] 6. Stanwell, P., et al., Neuro magnetic resonance spectroscopy using wavelet decomposition and statistical testing identifies biochemical changes in people with spinal cord injury and pain. NeuroImage, 2010. 53(2): p. 544-52.

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