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Artificial neural network computer tomography perfusion prediction of ischemic core

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posted on 2025-05-08, 23:11 authored by Aimen S. Kasasbeh, Søren Christensen, Mark ParsonsMark Parsons, Bruce Campbell, Gregory W. Albers, Maarten G. Lansberg
Background and Purpose: Computed tomography perfusion (CTP) is a useful tool in the evaluation of acute ischemic stroke, where it can provide an estimate of the ischemic core and the ischemic penumbra. The optimal CTP parameters to identify the ischemic core remain undetermined. Methods: We used artificial neural networks (ANNs) to optimally predict the ischemic core in acute stroke patients, using diffusion-weighted imaging as the gold standard. We first designed an ANN based on CTP data alone and next designed an ANN based on clinical and CTP data. Results: The ANN based on CTP data predicted the ischemic core with a mean absolute error of 13.8 mL (SD, 13.6 mL) compared with diffusion-weighted imaging. The area under the receiver operator characteristic curve was 0.85. At the optimal threshold, the sensitivity for predicting the ischemic core was 0.90 and the specificity was 0.62. Combining CTP data with clinical data available at time of presentation resulted in the same mean absolute error (13.8 mL) but lower SD (12.4 mL). The area under the curve, sensitivity, and specificity were 0.87, 0.91, and 0.65, respectively. The maximal Dice coefficient was 0.48 in the ANN based on CTP data exclusively. Conclusions: An ANN that integrates clinical and CTP data predicts the ischemic core with accuracy.

History

Journal title

Stroke

Volume

50

Issue

6

Pagination

1578-1581

Publisher

Lippincott Williams & Wilkins

Language

  • en, English

College/Research Centre

Faculty of Health and Medicine

School

School of Medicine and Public Health

Rights statement

This is a non-final version of an article published in final form in Stroke, 50(6) 1578-1581

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