Scientific Data (Jan 2024)

Dataset for Automatic Region-based Coronary Artery Disease Diagnostics Using X-Ray Angiography Images

  • Maxim Popov,
  • Akmaral Amanturdieva,
  • Nuren Zhaksylyk,
  • Alsabir Alkanov,
  • Adilbek Saniyazbekov,
  • Temirgali Aimyshev,
  • Eldar Ismailov,
  • Ablay Bulegenov,
  • Arystan Kuzhukeyev,
  • Aizhan Kulanbayeva,
  • Almat Kalzhanov,
  • Nurzhan Temenov,
  • Alexey Kolesnikov,
  • Orazbek Sakhov,
  • Siamac Fazli

DOI
https://doi.org/10.1038/s41597-023-02871-z
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 9

Abstract

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Abstract X-ray coronary angiography is the most common tool for the diagnosis and treatment of coronary artery disease. It involves the injection of contrast agents into coronary vessels using a catheter to highlight the coronary vessel structure. Typically, multiple 2D X-ray projections are recorded from different angles to improve visualization. Recent advances in the development of deep-learning-based tools promise significant improvement in diagnosing and treating coronary artery disease. However, the limited public availability of annotated X-ray coronary angiography image datasets presents a challenge for objective assessment and comparison of existing tools and the development of novel methods. To address this challenge, we introduce a novel ARCADE dataset with 2 objectives: coronary vessel classification and stenosis detection. Each objective contains 1500 expert-labeled X-ray coronary angiography images representing: i) coronary artery segments; and ii) the locations of stenotic plaques. These datasets will serve as a benchmark for developing new methods and assessing existing approaches for the automated diagnosis and risk assessment of coronary artery disease.