Computational Image-based Stroke Assessment for Evaluation of Cerebroprotectants with Longitudinal and Multi-site Preclinical MRI
While ischemic stroke is a leading cause of death worldwide, there has been little success translating putative cerebroprotectants from rodent preclinical trials to human patients. We investigated computational image-based assessment tools for practical improvement of the quality, scalability, and o...
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Zusammenfassung: | While ischemic stroke is a leading cause of death worldwide, there has been
little success translating putative cerebroprotectants from rodent preclinical
trials to human patients. We investigated computational image-based assessment
tools for practical improvement of the quality, scalability, and outlook for
large scale preclinical screening for potential therapeutic interventions in
rodent models. We developed, evaluated, and deployed a pipeline for image-based
stroke outcome quantification for the Stroke Preclinical Assessment Network
(SPAN), a multi-site, multi-arm, multi-stage study evaluating a suite of
cerebroprotectant interventions. Our fully automated pipeline combines
state-of-the-art algorithmic and data analytic approaches to assess stroke
outcomes from multi-parameter MRI data collected longitudinally from a rodent
model of middle cerebral artery occlusion (MCAO), including measures of infarct
volume, brain atrophy, midline shift, and data quality. We applied our approach
to 1,368 scans and report population level results of lesion extent and
longitudinal changes from injury. We validated our system by comparison with
both manual annotations of coronal MRI slices and tissue sections from the same
brain, using crowdsourcing from blinded stroke experts from the network. Our
results demonstrate the efficacy and robustness of our image-based stroke
assessments. The pipeline may provide a promising resource for ongoing rodent
preclinical studies conducted by SPAN and other networks in the future. |
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DOI: | 10.48550/arxiv.2203.05714 |