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Abstract #3611

Predicting recovery from stroke using baseline imaging biomarkers of structural connectome disruption

Amy Kuceyeski 1 , Babak B. Navi 2 , Hooman Kamel 2 , Norman Relkin 2 , Ashish Raj 3 , Joan Toglia 4 , Costantino Iadecola 2 , and Michael O'Dell 4

1 Radiology and the Brain and Mind Research Institute, Weill Cornell Medical College, New York, NY, United States, 2 Neurology and the Brain and Mind Research Institute, Weill Cornell Medical College, NY, United States, 3 Radiology and the Brain and Mind Research Institute, Weill Cornell Medical College, NY, United States, 4 Rehabilitation Medicine, Weill Cornell Medical College, NY, United States

This work aims to predict three aspects of post-stroke recovery, including daily activity, cognition and basic mobility. We compare two models, one based on patient demographics and lesion volume and the other based on patient demographics and structural connectome disruption information gleaned from the Network Modification (NeMo) Tool. Models based on the NeMo tool had higher accuracy and lower Akaike Information Criterion, and also provided insight into the regions important for each of the three measured functional domains. After thorough validation, this method could be a valuable quantitative tool for clinicians in developing prognoses and rehabilitation plans for post-stroke recovery.

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