Classifying multiple sclerosis patients on the basis of SDMT performance using machine learning.
Korhan BuyukturkogluDana ZengSrinidhi BharadwajCeren TozluEnricomaria MorminaKay C IgweSeonjoo LeeChristian HabeckAdam M BrickmanClaire S RileyPhilip Lawrence De JagerJames F SumowskiVictoria M LeavittPublished in: Multiple sclerosis (Houndmills, Basingstoke, England) (2020)
These results provide an indication of a non-random brain pattern mostly compromising areas involved in attentional processes specific to patients who perform worse in SDMT. High accuracy of the final model supports this pattern as a potential neuroimaging biomarker of subtle cognitive changes in early MS.