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Identifying Coronary Artery Calcification Using Chest X-ray Radiographs and Machine Learning: The Role of the Radiomics ScoreIdentifying Coronary Artery Calcification Using Chest X-ray Radiographs and Machine Learning The Role of the Radiomics Score

Other Titles
Identifying Coronary Artery Calcification Using Chest X-ray Radiographs and Machine Learning The Role of the Radiomics Score
Authors
Jeong, HyunseokPark, Hyung-BokHong, JongsooLee, JinaHa, SeongminHeo, RanJung, JuyeongHong, YoungtaekChang, Hyuk-Jae
Issue Date
Mar-2024
Publisher
Lippincott Williams & Wilkins Ltd.
Keywords
cardiovascular risk; chest radiograph; coronary artery calcification; machine learning; radiomics score
Citation
Journal of Thoracic Imaging, v.39, no.2, pp 119 - 126
Pages
8
Indexed
SCIE
SCOPUS
Journal Title
Journal of Thoracic Imaging
Volume
39
Number
2
Start Page
119
End Page
126
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/197698
DOI
10.1097/RTI.0000000000000757
ISSN
0883-5993
1536-0237
Abstract
Purpose: To evaluate the ability of radiomics score (RS)-based machine learning to identify moderate to severe coronary artery calcium (CAC) on chest x-ray radiographs (CXR). Materials and Methods: We included 559 patients who underwent a CAC scan with CXR obtained within 6 months and divided them into training (n = 391) and validation (n = 168) cohorts. We extracted radiomic features from annotated cardiac contours in the CXR images and developed an RS through feature selection with the least absolute shrinkage and selection operator regression in the training cohort. We evaluated the incremental value of the RS in predicting CAC scores when combined with basic clinical factor in the validation cohort. To predict a CAC score ≥100, we built an RS-based machine learning model using random forest; the input variables were age, sex, body mass index, and RS. Results: The RS was the most prominent factor for the CAC score ≥100 predictions (odds ratio = 2.33; 95% confidence interval: 1.62-3.44; P < 0.001) compared with basic clinical factor. The machine learning model was tested in the validation cohort and showed an area under the receiver operating characteristic curve of 0.808 (95% confidence interval: 0.75-0.87) for a CAC score ≥100 predictions. Conclusions: The use of an RS-based machine learning model may have the potential as an imaging marker to screen patients with moderate to severe CAC scores before diagnostic imaging tests, and it may improve the pretest probability of detecting coronary artery disease in clinical practice.
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