Identification of Resting-State Network Functional Connectivity and Brain Structural Signatures in Fibromyalgia Using a Machine Learning Approach
Abstract
:1. Introduction
2. Materials and Methods
2.1. Participants
2.2. Clinical Assessment
2.3. MRI Acquisitions
2.4. Functional MRI Preprocessing and Resting-State Functional Connectivity Matrix Extraction
2.5. Voxel-Based Morphology Analyses and Gray Matter Volume Matrix Extraction
2.6. Machine Learning Analysis
2.6.1. Preprocessing Data
2.6.2. Feature Selection Methods for Selecting Baseline Models
2.6.3. Classification Algorithms and Hyperparameter Optimization to Build Baseline Models
2.6.4. Permutation Feature Importance Ranking to Building the Final Models for Each Data Type and the Combined Model
2.6.5. Defining the Classification Performance Matrix
2.7. Correlation with Clinical Data
3. Results
3.1. Demographic and Clinical Characteristics
3.2. Fibromyalgia Classification Using Resting-State Functional Connectivity Data
3.2.1. Comparison of Cross-Combination Models and Baseline rs-FC ML Model Selection
3.2.2. The Final ML Model for rs-FC Data
3.3. Fibromyalgia Classification Using Structural Data
3.3.1. Comparison of Cross-Combination Models and Selecting Baseline ML Model for Structural Data
3.3.2. The Final ML Model for Structural Data
3.4. Comparison in the Classification Ability between Functional MRI Data and Structural Data
3.5. Fibromyalgia Classification Using the Combination of Functional and Structural Data
3.6. Correlation between the Selected Features in the Final ML Models with Clinical Data
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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FM (n = 26) | Control (n = 30) | p-Value | |
---|---|---|---|
Age | 49.6 ± 11 | 52.1 ± 10.5 | 0.393 |
Gender (Female/male) | 25/1 | 28/2 | 1.000 |
BMI (kg/m2) | 21.6 ± 3.8 | 23.2 ± 4.5 | 0.183 |
PSQI | 11.7 ± 3.5 | 5.3 ± 2.4 | 2.1 × 10−8 |
BAI | 19.2 ± 13.8 | 4.1 ± 4.2 | 5.5 × 10−7 |
BDI | 18.7 ± 12.9 | 4.6 ± 4.5 | 4.3 × 10−7 |
VAS | 5.6 ± 2.3 | - | - |
WPI | 8.9 ± 4.5 | - | - |
SSS | 6.9 ± 2.8 | - | - |
FIQ | 53.1 ± 16.0 | - | - |
PPT (kg/cm2) | 2.37 ± 1.14 | - | - |
Selection Method | Classifier | Accuracy | Sensitivity | Specificity | F1-Score | ROC_AUC | p-Value (Permutation Test) |
---|---|---|---|---|---|---|---|
RFE (14 features) | SVM | 0.89 | 0.85 | 0.93 | 0.88 | 0.93 | 9.9 × 10−4 |
LR | 0.88 | 0.85 | 0.90 | 0.86 | 0.94 | 9.9 × 10−4 | |
KNN | 0.79 | 0.81 | 0.77 | 0.78 | 0.83 | 9.9 × 10−4 | |
RF | 0.77 | 0.81 | 0.73 | 0.76 | 0.83 | 9.9 × 10−4 | |
LDA | 0.84 | 0.85 | 0.83 | 0.83 | 0.93 | 9.9 × 10−4 | |
GNB | 0.79 | 0.81 | 0.77 | 0.78 | 0.89 | 9.9 × 10−4 | |
Univar (11 features) | SVM | 0.77 | 0.69 | 0.83 | 0.73 | 0.80 | 9.9 × 10−4 |
LR | 0.82 | 0.77 | 0.87 | 0.80 | 0.87 | 9.9 × 10−4 | |
KNN | 0.73 | 0.73 | 0.73 | 0.72 | 0.80 | 0.002 | |
RF | 0.71 | 0.69 | 0.73 | 0.69 | 0.74 | 0.002 | |
LDA | 0.73 | 0.69 | 0.77 | 0.71 | 0.82 | 9.9 × 10−4 | |
GNB | 0.75 | 0.77 | 0.73 | 0.74 | 0.85 | 9.9 × 10−4 | |
PCA (44 components) | SVM | 0.59 | 0.54 | 0.63 | 0.55 | 0.17 | 0.175 |
LR | 0.55 | 0.54 | 0.57 | 0.53 | 0.56 | 0.283 | |
KNN | 0.61 | 0.65 | 0.57 | 0.61 | 0.61 | 0.089 | |
RF | 0.55 | 0.46 | 0.63 | 0.49 | 0.55 | 0.266 | |
LDA | 0.45 | 0.42 | 0.47 | 0.42 | 0.45 | 0.753 | |
GNB | 0.39 | 0.31 | 0.47 | 0.32 | 0.32 | 0.889 | |
L1-based (2 features) | SVM | 0.68 | 0.85 | 0.53 | 0.71 | 0.63 | 0.008 |
LR | 0.66 | 0.65 | 0.67 | 0.64 | 0.68 | 0.013 | |
KNN | 0.61 | 0.58 | 0.63 | 0.58 | 0.61 | 0.110 | |
RF | 0.64 | 0.62 | 0.67 | 0.62 | 0.64 | 0.027 | |
LDA | 0.64 | 0.65 | 0.63 | 0.63 | 0.67 | 0.024 | |
GNB | 0.66 | 0.69 | 0.63 | 0.65 | 0.69 | 0.018 |
Selection Method | Classifier | Accuracy | Sensitivity | Specificity | F1-Score | ROC_AUC | p-Value (Permutation Test) |
---|---|---|---|---|---|---|---|
RFE (9 features) | SVM | 0.82 | 0.85 | 0.80 | 0.81 | 0.89 | 9.9 × 10−4 |
LR | 0.86 | 0.85 | 0.87 | 0.85 | 0.86 | 9.9 × 10−4 | |
KNN | 0.79 | 0.85 | 0.73 | 0.79 | 0.79 | 0.002 | |
RF | 0.71 | 0.73 | 0.70 | 0.70 | 0.64 | 0.217 | |
LDA | 0.82 | 0.81 | 0.83 | 0.81 | 0.89 | 9.9 × 10−4 | |
GNB | 0.70 | 0.65 | 0.73 | 0.67 | 0.78 | 0.004 | |
Univar (96 features) | SVM | 0.71 | 0.73 | 0.70 | 0.70 | 0.76 | 0.006 |
LR | 0.77 | 0.73 | 0.80 | 0.75 | 0.76 | 9.9 × 10−4 | |
KNN | 0.63 | 0.81 | 0.47 | 0.67 | 0.60 | 0.415 | |
RF | 0.66 | 0.62 | 0.70 | 0.63 | 0.58 | 9.9 × 10−4 | |
LDA | 0.57 | 0.73 | 0.43 | 0.61 | 0.66 | 0.225 | |
GNB | 0.55 | 0.58 | 0.53 | 0.55 | 0.62 | 0.327 | |
PCA (44 components) | SVM | 0.59 | 0.54 | 0.63 | 0.55 | 0.24 | 0.146 |
LR | 0.55 | 0.54 | 0.57 | 0.53 | 0.59 | 0.285 | |
KNN | 0.50 | 0.85 | 0.20 | 0.61 | 0.44 | 0.408 | |
RF | 0.53 | 0.54 | 0.53 | 0.52 | 0.53 | 0.250 | |
LDA | 0.38 | 0.42 | 0.33 | 0.39 | 0.40 | 0.948 | |
GNB | 0.46 | 0.42 | 0.50 | 0.42 | 0.46 | 0.644 | |
L1-based (1 feature) | SVM | 0.70 | 0.62 | 0.77 | 0.65 | 0.55 | 0.007 |
LR | 0.70 | 0.62 | 0.67 | 0.65 | 0.64 | 9.9 × 10−4 | |
KNN | 0.61 | 0.73 | 0.50 | 0.63 | 0.58 | 0.096 | |
RF | 0.48 | 0.38 | 0.57 | 0.41 | 0.46 | 0.618 | |
LDA | 0.70 | 0.62 | 0.77 | 0.65 | 0.64 | 0.002 | |
GNB | 0.61 | 0.50 | 0.70 | 0.54 | 0.59 | 0.071 |
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Thanh Nhu, N.; Chen, D.Y.-T.; Kang, J.-H. Identification of Resting-State Network Functional Connectivity and Brain Structural Signatures in Fibromyalgia Using a Machine Learning Approach. Biomedicines 2022, 10, 3002. https://doi.org/10.3390/biomedicines10123002
Thanh Nhu N, Chen DY-T, Kang J-H. Identification of Resting-State Network Functional Connectivity and Brain Structural Signatures in Fibromyalgia Using a Machine Learning Approach. Biomedicines. 2022; 10(12):3002. https://doi.org/10.3390/biomedicines10123002
Chicago/Turabian StyleThanh Nhu, Nguyen, David Yen-Ting Chen, and Jiunn-Horng Kang. 2022. "Identification of Resting-State Network Functional Connectivity and Brain Structural Signatures in Fibromyalgia Using a Machine Learning Approach" Biomedicines 10, no. 12: 3002. https://doi.org/10.3390/biomedicines10123002
APA StyleThanh Nhu, N., Chen, D. Y. -T., & Kang, J. -H. (2022). Identification of Resting-State Network Functional Connectivity and Brain Structural Signatures in Fibromyalgia Using a Machine Learning Approach. Biomedicines, 10(12), 3002. https://doi.org/10.3390/biomedicines10123002