Journal of the American Heart Association: Cardiovascular and Cerebrovascular Disease (Feb 2019)

Angiography‐Based Machine Learning for Predicting Fractional Flow Reserve in Intermediate Coronary Artery Lesions

  • Hyungjoo Cho,
  • June‐Goo Lee,
  • Soo‐Jin Kang,
  • Won‐Jang Kim,
  • So‐Yeon Choi,
  • Jiyuon Ko,
  • Hyun‐Seok Min,
  • Gun‐Ho Choi,
  • Do‐Yoon Kang,
  • Pil Hyung Lee,
  • Jung‐Min Ahn,
  • Duk‐Woo Park,
  • Seung‐Whan Lee,
  • Young‐Hak Kim,
  • Cheol Whan Lee,
  • Seong‐Wook Park,
  • Seung‐Jung Park

DOI
https://doi.org/10.1161/JAHA.118.011685
Journal volume & issue
Vol. 8, no. 4

Abstract

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Background An angiography‐based supervised machine learning (ML) algorithm was developed to classify lesions as having fractional flow reserve ≤0.80 versus >0.80. Methods and Results With a 4:1 ratio, 1501 patients with 1501 intermediate lesions were randomized into training versus test sets. Between the ostium and 10 mm distal to the target lesion, a series of angiographic lumen diameter measurements along the centerline was plotted. The 24 computed angiographic features based on the diameter plot and 4 clinical features (age, sex, body surface area, and involve segment) were used for ML by XGBoost. The model was independently trained and tested by 2000 bootstrap iterations. External validation with 79 patients was conducted. Including all 28 features, the ML model with 5‐fold cross‐validation in the 1204 training samples predicted fractional flow reserve ≤0.80 with overall diagnostic accuracy of 78±4% (averaged area under the curve: 0.84±0.03). The 12 high‐ranking features selected by scatter search were involved segment; body surface area; distal lumen diameter; minimal lumen diameter; length of a lumen diameter 70%. Using those 12 features, the ML predicted fractional flow reserve ≤0.80 in the test set with sensitivity of 84%, specificity of 80%, and overall accuracy of 82% (area under the curve: 0.87). The averaged diagnostic accuracy in bootstrap replicates was 81±1% (averaged area under the curve: 0.87±0.01). External validation showed accuracy of 85% (area under the curve: 0.87). Conclusions Angiography‐based ML showed good diagnostic performance in identifying ischemia‐producing lesions and reduced the need for pressure wires.

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