Prediction of Stroke Infarct Growth Rates by Baseline Perfusion Imaging

A. Wouters*, D. Robben, S. Christensen, H.A. Marquering, Y.B.W.E.M. Roos, R.J. van Oostenbrugge, W.H. van Zwam, D.W.J. Dippel, C.B.L.M. Majoie, W.J. Schonewille, A. van Der Lugt, M. Lansberg, G.W. Albers, P. Suetens, R. Lemmens

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

2 Citations (Web of Science)

Abstract

Background and Purpose: Computed tomography perfusion imaging allows estimation of tissue status in patients with acute ischemic stroke. We aimed to improve prediction of the final infarct and individual infarct growth rates using a deep learning approach. Methods: We trained a deep neural network to predict the final infarct volume in patients with acute stroke presenting with large vessel occlusions based on the native computed tomography perfusion images, time to reperfusion and reperfusion status in a derivation cohort (MR CLEAN trial [Multicenter Randomized Clinical Trial of Endovascular Treatment for Acute Ischemic Stroke in the Netherlands]). The model was internally validated in a 5-fold cross-validation and externally in an independent dataset (CRISP study [CT Perfusion to Predict Response to Recanalization in Ischemic Stroke Project]). We calculated the mean absolute difference between the predictions of the deep learning model and the final infarct volume versus the mean absolute difference between computed tomography perfusion imaging processing by RAPID software (iSchemaView, Menlo Park, CA) and the final infarct volume. Next, we determined infarct growth rates for every patient. Results: We included 127 patients from the MR CLEAN (derivation) and 101 patients of the CRISP study (validation). The deep learning model improved final infarct volume prediction compared with the RAPID software in both the derivation, mean absolute difference 34.5 versus 52.4 mL, and validation cohort, 41.2 versus 52.4 mL (P<0.01). We obtained individual infarct growth rates enabling the estimation of final infarct volume based on time and grade of reperfusion. Conclusions: We validated a deep learning-based method which improved final infarct volume estimations compared with classic computed tomography perfusion imaging processing. In addition, the deep learning model predicted individual infarct growth rates which could enable the introduction of tissue clocks during the management of acute stroke.
Original languageEnglish
Pages (from-to)569-577
Number of pages9
JournalStroke
Volume53
Issue number2
DOIs
Publication statusPublished - 1 Feb 2022

Keywords

  • deep learning
  • infarction
  • ischemic stroke
  • perfusion imaging
  • reperfusion
  • ACUTE ISCHEMIC-STROKE
  • TIME
  • THROMBECTOMY
  • DIFFUSION
  • SALVAGE
  • VOLUME
  • THROMBOLYSIS
  • REPERFUSION
  • INTENSITY
  • EVOLUTION

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