Elsevier

NeuroImage: Clinical

Volume 2, 2013, Pages 424-433
NeuroImage: Clinical

Predicting outcome and recovery after stroke with lesions extracted from MRI images

https://doi.org/10.1016/j.nicl.2013.03.005Get rights and content
Under a Creative Commons license
open access

Highlights

  • We use lesion information to predict speech production skills in 270 stroke patients.

  • We validate our approach with both cross-sectional and longitudinal patient data.

  • Better predictions employ more relevant and detailed lesion site information.

Abstract

Here, we present and validate a method that lets us predict the severity of cognitive impairments after stroke, and the likely course of recovery over time. Our approach employs (a) a database that records the behavioural scores from a large population of patients who have, collectively, incurred a comprehensive range of focal brain lesions, (b) an automated procedure to convert structural brain scans from those patients into three-dimensional images of their lesions, and (c) a system to learn the relationship between patients' lesions, demographics and behavioural capacities at different times post-stroke. Validation against data collected from 270 stroke patients suggests that our first set of variables yielded predictions that match or exceed the predictive power reported in any comparable work in the available literature. Predictions are likely to improve when other determinants of recovery are included in the system. Many behavioural outcomes after stroke could be predicted using the proposed approach.

Keywords

Stroke
Aphasia
Speech production
Recovery
Machine learning
Gaussian processes

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