StrokeNeXt: an automated stroke classification model using computed tomography and magnetic resonance images.

Authors

Ekingen E,Yildirim F,Bayar O,Akbal E,Sercek I,Hafeez-Baig A,Dogan S,Tuncer T

Affiliations (6)

  • Department of Emergency, Etlik City Hospital, Ankara, Turkey.
  • Department of Radiology, Finike City Hospital, Antalya, Turkey.
  • Department of Emergency, Ankara Provincial Health Directorate, Mamak State Hospital, Ankara, Turkey.
  • Department of Digital Forensics Engineering, Technology Faculty, Firat University, Elazig, Turkey. [email protected].
  • Department of Digital Forensics Engineering, Technology Faculty, Firat University, Elazig, Turkey.
  • School of Business, University of Southern Queensland, Toowoomba Queensland, Australia.

Abstract

Stroke ranks among the leading causes of disability and death worldwide. Timely detection can reduce its impact. Machine learning delivers powerful tools for image‑based diagnosis. This study introduces StrokeNeXt, a lightweight convolutional neural network (CNN) for computed tomography (CT) and magnetic resonance (MR) scans, and couples it with deep feature engineering (DFE) to improve accuracy and facilitate clinical deployment. We assembled a multimodal dataset of CT and MR images, each labeled as stroke or control. StrokeNeXt employs a ConvNeXt‑inspired block and a squeeze‑and‑excitation (SE) unit across four stages: stem, StrokeNeXt block, downsampling, and output. In the DFE pipeline, StrokeNeXt extracts features from fixed‑size patches, iterative neighborhood component analysis (INCA) selects the top features, and a t algorithm-based k-nearest neighbors (tkNN) classifier has been utilized for classification. StrokeNeXt achieved 93.67% test accuracy on the assembled dataset. Integrating DFE raised accuracy to 97.06%. This combined approach outperformed StrokeNeXt alone and reduced classification time. StrokeNeXt paired with DFE offers an effective solution for stroke detection on CT and MR images. Its high accuracy and fewer learnable parameters make it lightweight and it is suitable for integration into clinical workflows. This research lays a foundation for real‑time decision support in emergency and radiology settings.

Topics

Journal Article

Ready to Sharpen Your Edge?

Join hundreds of your peers who rely on RadAI Slice. Get the essential weekly briefing that empowers you to navigate the future of radiology.

We respect your privacy. Unsubscribe at any time.