Author:
Zambrano Chaves Juan M.,Wentland Andrew L.,Desai Arjun D.,Banerjee Imon,Kaur Gurkiran,Correa Ramon,Boutin Robert D.,Maron David J.,Rodriguez Fatima,Sandhu Alexander T.,Rubin Daniel,Chaudhari Akshay S.,Patel Bhavik N.
Abstract
AbstractCurrent risk scores using clinical risk factors for predicting ischemic heart disease (IHD) events—the leading cause of global mortality—have known limitations and may be improved by imaging biomarkers. While body composition (BC) imaging biomarkers derived from abdominopelvic computed tomography (CT) correlate with IHD risk, they are impractical to measure manually. Here, in a retrospective cohort of 8139 contrast-enhanced abdominopelvic CT examinations undergoing up to 5 years of follow-up, we developed multimodal opportunistic risk assessment models for IHD by automatically extracting BC features from abdominal CT images and integrating these with features from each patient’s electronic medical record (EMR). Our predictive methods match and, in some cases, outperform clinical risk scores currently used in IHD risk assessment. We provide clinical interpretability of our model using a new method of determining tissue-level contributions from CT along with weightings of EMR features contributing to IHD risk. We conclude that such a multimodal approach, which automatically integrates BC biomarkers and EMR data, can enhance IHD risk assessment and aid primary prevention efforts for IHD. To further promote research, we release the Opportunistic L3 Ischemic heart disease (OL3I) dataset, the first public multimodal dataset for opportunistic CT prediction of IHD.
Funder
GE Healthcare
Knight-Hennessy Scholars
National Institutes of Health
National Heart, Lung, and Blood Institute
American Heart Association/Robert Wood Johnson Harold 666 Amos Medical Faculty Development Program
Philips Research Americas
Publisher
Springer Science and Business Media LLC
Cited by
3 articles.
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