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Query: UMLS:C0015674 (
chronic fatigue syndrome
)
2,978
document(s) hit in 31,850,051 MEDLINE articles (0.00 seconds)
Chronic Fatigue Syndrome
(
CFS
) is a debilitating condition estimated to impact at least 1 million individuals in the United States, however there persists controversy about its existence. Machine learning algorithms have become a powerful methodology for evaluating multi-regional areas of fMRI activation that can classify disease phenotype from sedentary control. Uncovering objective biomarkers such as an fMRI pattern is important for lending credibility to diagnosis of
CFS
. fMRI scans were evaluated for 69 patients (38
CFS
and 31 Control) taken before (Day 1) and after (Day 2) a submaximal exercise test while undergoing the n-back memory paradigm. A predictive model was created by grouping fMRI voxels into the Automated Anatomical Labeling (AAL) atlas, splitting the data into a training and testing dataset, and feeding these inputs into a logistic regression to evaluate differences between
CFS
and control. Model results were cross-validated 10 times to ensure accuracy. Model results were able to differentiate
CFS
from sedentary controls at a 80% accuracy on Day 1 and 76% accuracy on Day 2 (
Table 3
). Recursive features selection identified 29 ROI's that significantly distinguished
CFS
from control on Day 1 and 28 ROI's on Day 2 with 10 regions of overlap shared with Day 1 (
Figure 3
). These 10 shared regions included the putamen, inferior frontal gyrus, orbital (F3O), supramarginal gyrus (SMG), temporal pole; superior temporal gyrus (
T1P
) and caudate ROIs. This study was able to uncover a pattern of activated neurological regions that differentiated
CFS
from Control. This pattern provides a first step toward developing fMRI as a diagnostic biomarker and suggests this methodology could be emulated for other disorders. We concluded that a logistic regression model performed on fMRI data significantly differentiated
CFS
from Control.
...
PMID:A Machine Learning Approach to the Differentiation of Functional Magnetic Resonance Imaging Data of Chronic Fatigue Syndrome (CFS) From a Sedentary Control. 3206 39