Single-participant structural similarity matrices lead to greater accuracy in classification of participants than function in autism in MRI.
Matthew J LemingSimon Baron-CohenJohn SucklingPublished in: Molecular autism (2021)
This study provides a simple means of feature extraction for inputting large numbers of structural MRIs into machine learning models. Our methods revealed a unique emphasis of the deep learning model on the structure of the bilateral Heschl's gyrus when characterizing autism.