@inproceedings{a405b3c953464a86ac11034c98d79d83,
title = "Deep learning-based stenosis quantification from coronary CT angiography",
abstract = "Coronary computed tomography angiography (CTA) allows quantification of stenosis. However, such quantitative analysis is not part of clinical routine. We evaluated the feasibility of utilizing deep learning for quantifying coronary artery disease from CTA. Methods: A total of 716 diseased segments in 156 patients (66 ± 10 years) who underwent CTA were analyzed. Minimal luminal area (MLA), percent diameter stenosis (DS), and percent contrast density difference (CDD) were measured using semi-automated software (Autoplaque) by an expert reader. Using the expert annotations, deep learning was performed with convolutional neural networks using 10-fold cross-validation to segment CTA lumen and calcified plaque. MLA, DS and CDD computed using deep-learning-based approach was compared to expert reader measurements. Results: There was excellent correlation between the expert reader and deep learning for all quantitative measures (r=0.984 for MLA; r=0.957 for DS; and r=0.975 for CDD, p<0.001 for all). The expert reader and deep learning method was not significantly different for MLA (median 4.3 mm2 for both, p=0.68) and CDD (11.6 vs 11.1\%, p=0.30), and was significantly different for DS (26.0 vs 26.6\%, p<0.05); however, the ranges of all the quantitative measures were within inter-observer variability between 2 expert readers. Conclusions: Our deep learning-based method allows quantitative measurement of coronary artery disease segments accurately from CTA and may enhance clinical reporting.",
keywords = "contrast density difference, coronary CT Angiography, deep learning, minimum luminal area, quantitative CT., stenosis",
author = "Youngtaek Hong and Frederic Commandeur and Sebastien Cadet and Markus Goeller and Doris, \{Mhairi K.\} and Xi Chen and Jacek Kwiecinski and Berman, \{Daniel S.\} and Slomka, \{Piotr J.\} and Chang, \{Hyuk Jae\} and Damini Dey",
note = "Publisher Copyright: {\textcopyright} COPYRIGHT SPIE. Downloading of the abstract is permitted for personal use only.; Medical Imaging 2019: Image Processing ; Conference date: 19-02-2019 Through 21-02-2019",
year = "2019",
doi = "10.1117/12.2512168",
language = "English",
series = "Progress in Biomedical Optics and Imaging - Proceedings of SPIE",
publisher = "SPIE",
editor = "Angelini, \{Elsa D.\} and Angelini, \{Elsa D.\} and Angelini, \{Elsa D.\} and Landman, \{Bennett A.\}",
booktitle = "Medical Imaging 2019",
address = "United States",
}