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2021
DOI: 10.1101/2021.09.29.21264313
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Stroke recovery phenotyping through network trajectory approaches and graph neural networks

Abstract: Stroke is a leading cause of neurological injury characterized by impairments in multiple neurological domains including cognition, language, sensory and motor functions. Clinical recovery in these domains is tracked using a wide range of measures that may be continuous, ordinal, interval or categorical in nature, which presents challenges for standard multivariate regression approaches. This has hindered stroke researchers' ability to achieve an integrated picture of the complex time-evolving interactions amo… Show more

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