Chronic pain affects more than 100 million individuals in the United States alone. However, our ability to diagnose and properly treat pain disorders is currently limited, including due to the lack of reliable biomarkers. In this work, we present a predictive model for the classification of chronic low back pain (cLBP) patients using multi-modal brain [11C]-PBR28 PET/MR radiomic features extracted from structural, functional, and molecular imaging. Our results suggest that a PET/MR classifier (RFPET/MR) performs better than single-modality classifiers (RFPET and RFMR) for AUC (p’s<0.01), accuracy (p’s<0.01), sensitivity (p’s<0.05), and specificity (p’s<0.01), highlighting the power of multi-modal over single-modality imaging.
This abstract and the presentation materials are available to members only; a login is required.