Cerebral ischemia detection using deep learning techniques.

Journal: Health information science and systems
Published Date:

Abstract

Cerebrovascular accident (CVA), commonly known as stroke, stands as a significant contributor to contemporary mortality and morbidity rates, often leading to lasting disabilities. Early identification is crucial in mitigating its impact and reducing mortality. Non-contrast computed tomography (NCCT) remains the primary diagnostic tool in stroke emergencies due to its speed, accessibility, and cost-effectiveness. NCCT enables the exclusion of hemorrhage and directs attention to ischemic causes resulting from arterial flow obstruction. Quantification of NCCT findings employs the Alberta Stroke Program Early Computed Tomography Score (ASPECTS), which evaluates affected brain structures. This study seeks to identify early alterations in NCCT density in patients with stroke symptoms using a binary classifier distinguishing NCCT scans with and without stroke. To achieve this, various well-known deep learning architectures, namely VGG3D, ResNet3D, and DenseNet3D, validated in the ImageNet challenges, are implemented with 3D images covering the entire brain volume. The training results of these networks are presented, wherein diverse parameters are examined for optimal performance. The DenseNet3D network emerges as the most effective model, attaining a training set accuracy of 98% and a test set accuracy of 95%. The aim is to alert medical professionals to potential stroke cases in their early stages based on NCCT findings displaying altered density patterns.

Authors

  • Rafael Pastor-Vargas
    Departamento de Sistemas de Comunicación y Control, Universidad Nacional de Educación a Distancia, Madrid, Spain.
  • Cristina Antón-Munárriz
    Radiology area, Hospital Universitario de Navarra, Navarra, Spain.
  • Juan M Haut
    School of Technology, University of Extremadura, Cáceres, Extremadura Spain.
  • Antonio Robles-Gómez
    Departamento de Sistemas de Comunicación y Control, Universidad Nacional de Educación a Distancia, Madrid, Spain.
  • Mercedes E Paoletti
    School of Technology, University of Extremadura, Cáceres, Extremadura Spain.
  • José Alberto Benítez-Andrades
    SALBIS Research Group, Department of Electric, Systems and Automatics Engineering, University of León, Campus of Vegazana s/n, 24071 León, Spain.

Keywords

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