Machine learning assessment of myocardial ischemia using angiography: Development and retrospective validation

Hyeonyong Hae(Ulsan College), Soo‐Jin Kang(Ulsan College), Won‐Jang Kim(CHA University Bundang Medical Center), So‐Yeon Choi(Ajou University), June‐Goo Lee(Asan Medical Center), Youngoh Bae(Ulsan College), Hyungjoo Cho(Ulsan College), Dong Hyun Yang(Ulsan College), Joon‐Won Kang(Ulsan College), Tae‐Hwan Lim(Ulsan College), Cheol Hyun Lee(Ulsan College), Do‐Yoon Kang(Ulsan College), Pil Hyung Lee(Ulsan College), Jung‐Min Ahn(Ulsan College), Duk‐Woo Park(Ulsan College), Seung‐Whan Lee(Ulsan College), Young‐Hak Kim(Ulsan College), Cheol Whan Lee(Ulsan College), Seong‐Wook Park(Ulsan College), Seung‐Jung Park(Ulsan College)
PLoS Medicine
November 13, 2018
Cited by 59Open Access
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Abstract

Invasive fractional flow reserve (FFR) is a standard tool for identifying ischemia-producing coronary stenosis. However, in clinical practice, over 70% of treatment decisions still rely on visual estimation of angiographic stenosis, which has limited accuracy (about 60%-65%) for the prediction of FFR < 0.80. One of the reasons for the visual-functional mismatch is that myocardial ischemia can be affected by the supplied myocardial size, which is not always evident by coronary angiography. The aims of this study were to develop an angiographybased machine learning (ML) algorithm for predicting the supplied myocardial volume for a stenosis, as measured using coronary computed tomography angiography (CCTA), and then to build an angiography-based classifier for the lesions with an FFR < 0.80 versus 0.80.


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