Identifying motor functional neurological disorder using resting-state functional connectivity

oleh: Jennifer Wegrzyk, Valeria Kebets, Jonas Richiardi, Silvio Galli, Dimitri Van de Ville, Selma Aybek

Format: Article
Diterbitkan: Elsevier 2018-01-01

Deskripsi

Background: Motor functional neurological disorder (mFND) is a clinical diagnosis with reliable features; however, patients are reluctant to accept the diagnosis and physicians themselves bear doubts on potential misdiagnoses. The identification of a positive biomarker could help limiting unnecessary costs of multiple referrals and investigations, thus promoting early diagnosis and allowing early engagement in appropriate therapy. Objectives: To test whether resting-state (RS) functional magnetic resonance imaging could discriminate patients suffering from mFND from healthy controls. Methods: We classified 23 mFND patients and 25 age- and gender-matched healthy controls based on whole-brain RS functional connectivity (FC) data, using a support vector machine classifier and the standard Automated Anatomic Labeling (AAL) atlas, as well as two additional atlases for validation. Results: Accuracy, specificity and sensitivity were over 68% (p=0.004) to discriminate between mFND patients and controls, with consistent findings between the three tested atlases. The most discriminative connections comprised the right caudate, amygdala, prefrontal and sensorimotor regions. Post-hoc seed connectivity analyses showed that these regions were hyperconnected in patients compared to controls. Conclusions: The good accuracy to discriminate patients from controls suggests that RS FC could be used as a biomarker with high diagnostic value in future clinical practice to identify mFND patients at the individual level. Keywords: Resting state functional magnetic resonance imaging, Functional connectivity, Functional neurological disorder, Biomarker, Classification