Frontiers in Artificial Intelligence (Aug 2024)

Deep learning for prediction of post-thrombectomy outcomes based on admission CT angiography in large vessel occlusion stroke

  • Jakob Sommer,
  • Jakob Sommer,
  • Fiona Dierksen,
  • Tal Zeevi,
  • Tal Zeevi,
  • Anh Tuan Tran,
  • Emily W. Avery,
  • Emily W. Avery,
  • Adrian Mak,
  • Adrian Mak,
  • Ajay Malhotra,
  • Charles C. Matouk,
  • Guido J. Falcone,
  • Guido J. Falcone,
  • Victor Torres-Lopez,
  • Sanjey Aneja,
  • James Duncan,
  • James Duncan,
  • Lauren H. Sansing,
  • Lauren H. Sansing,
  • Kevin N. Sheth,
  • Kevin N. Sheth,
  • Seyedmehdi Payabvash,
  • Seyedmehdi Payabvash

DOI
https://doi.org/10.3389/frai.2024.1369702
Journal volume & issue
Vol. 7

Abstract

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PurposeComputed Tomography Angiography (CTA) is the first line of imaging in the diagnosis of Large Vessel Occlusion (LVO) strokes. We trained and independently validated end-to-end automated deep learning pipelines to predict 3-month outcomes after anterior circulation LVO thrombectomy based on admission CTAs.MethodsWe split a dataset of 591 patients into training/cross-validation (n = 496) and independent test set (n = 95). We trained separate models for outcome prediction based on admission “CTA” images alone, “CTA + Treatment” (including time to thrombectomy and reperfusion success information), and “CTA + Treatment + Clinical” (including admission age, sex, and NIH stroke scale). A binary (favorable) outcome was defined based on a 3-month modified Rankin Scale ≤ 2. The model was trained on our dataset based on the pre-trained ResNet-50 3D Convolutional Neural Network (“MedicalNet”) and included CTA preprocessing steps.ResultsWe generated an ensemble model from the 5-fold cross-validation, and tested it in the independent test cohort, with receiver operating characteristic area under the curve (AUC, 95% confidence interval) of 70 (0.59–0.81) for “CTA,” 0.79 (0.70–0.89) for “CTA + Treatment,” and 0.86 (0.79–0.94) for “CTA + Treatment + Clinical” input models. A “Treatment + Clinical” logistic regression model achieved an AUC of 0.86 (0.79–0.93).ConclusionOur results show the feasibility of an end-to-end automated model to predict outcomes from admission and post-thrombectomy reperfusion success. Such a model can facilitate prognostication in telehealth transfer and when a thorough neurological exam is not feasible due to language barrier or pre-existing morbidities.

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