Deep Learning-Based Automatic Classification of Ischemic Stroke Subtype Using Diffusion-Weighted Images

Wi Sun Ryu, Dawid Schellingerhout, Hoyoun Lee, Keon Joo Lee, Chi Kyung Kim, Beom Joon Kim, Jong Won Chung, Jae Sung Lim, Joon Tae Kim, Dae Hyun Kim, Jae Kwan Cha, Leonard Sunwoo, Dongmin Kim, Sang Il Suh, Oh Young Bang, Hee Joon Bae, Dong Eog Kim

Research output: Contribution to journalArticlepeer-review

Abstract

Background and Purpose Accurate classification of ischemic stroke subtype is important for effective secondary prevention of stroke. We used diffusion-weighted image (DWI) and atrial fibrillation (AF) data to train a deep learning algorithm to classify stroke subtype. Methods Model development was done in 2,988 patients with ischemic stroke from three centers by using U-net for infarct segmentation and EfficientNetV2 for subtype classification. Experienced neurologists (n=5) determined subtypes for external test datasets, while establishing a consensus for clinical trial datasets. Automatically segmented infarcts were fed into the model (DWI-only algorithm). Subsequently, another model was trained, with AF included as a categorical variable (DWI+AF algorithm). These models were tested: (1) internally against the opinion of the labeling experts, (2) against fresh external DWI data, and (3) against clinical trial dataset. Results In the training-and-validation datasets, the mean (±standard deviation) age was 68.0±12.5 (61.1% male). In internal testing, compared with the experts, the DWI-only and the DWI+AF algorithms respectively achieved moderate (65.3%) and near-strong (79.1%) agreement. In external testing, both algorithms again showed good agreements (59.3%–60.7% and 73.7%–74.0%, respectively). In the clinical trial dataset, compared with the expert consensus, percentage agreements and Cohen’s kappa were respectively 58.1% and 0.34 for the DWI-only vs. 72.9% and 0.57 for the DWI+AF algorithms. The corresponding values between experts were comparable (76.0% and 0.61) to the DWI+AF algorithm. Conclusion Our model trained on a large dataset of DWI (both with or without AF information) was able to classify ischemic stroke subtypes comparable to a consensus of stroke experts.

Original languageEnglish
Pages (from-to)300-311
Number of pages12
JournalJournal of Stroke
Volume26
Issue number2
DOIs
StatePublished - May 2024
Externally publishedYes

Bibliographical note

Publisher Copyright:
© 2024 Korean Stroke Society.

Keywords

  • Artificial intelligence
  • Atrial fibrillation
  • Deep learning
  • Diffusion magnetic resonance imaging
  • Ischemic stroke

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