Stroke recovery phenotyping through network trajectory approaches and graph neural networks
Sanjukta Krishnagopal, Keith Lohse, Robynne Braun

TL;DR
This study introduces a novel network trajectory and graph neural network approach to identify and predict distinct stroke recovery patterns across multiple neurological domains, aiding personalized treatment strategies.
Contribution
It is the first to apply network trajectory clustering and graph neural networks for stroke recovery phenotyping, enabling early prediction of recovery subtypes from multidimensional data.
Findings
Identified 3 distinct stroke recovery profiles aligned with clinical syndromes.
Validated predictive accuracy of graph neural networks for early stratification.
Demonstrated effectiveness of trajectory clustering in multidimensional longitudinal data.
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 amongst symptoms. Here we use tools from network science and machine learning that are particularly well-suited to extracting underlying patterns in such data, and may assist in prediction of recovery patterns. To demonstrate the utility of this approach, we analyzed data from the NINDS tPA trial using the Trajectory Profile Clustering (TPC) method to identify distinct stroke recovery…
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Taxonomy
TopicsStroke Rehabilitation and Recovery · Acute Ischemic Stroke Management
