Deep learning-based multi-view echocardiographic framework for comprehensive diagnosis of pericardial disease
European Heart Journal - Digital Health

Abstract
Pericardial disease spans a wide spectrum from small effusions to life-threatening tamponade or constriction. Transthoracic echocardiography (TTE) is the main diagnostic tool, but its interpretation is limited by operator dependence and incomplete functional assessment. Existing deep learning (DL) models focus mainly on effusion detection, lacking broader evaluation.
We developed a DL-based framework that performs sequential assessment of pericardial disease: (i) morphological features, including effusion amount (normal/small/moderate/large) and pericardial thickening/adhesion (yes/no), from five B-mode views, and (ii) haemodynamic significance (yes/no), incorporating Doppler and inferior vena cava measurements. The developmental dataset comprises 2253 TTEs from multiple Korean institutions (225 for internal testing), and the independent external test set consists of 274 TTEs. In the internal test set, diagnostic accuracy was 81.8–97.3% for effusion, 91.6% for thickening/adhesion, and 86.2% for haemodynamic significance. External test set accuracy was 80.3–94.2%, 94.5%, and 85.5%, respectively. Area under the receiver operating curves for the three tasks were 0.92–0.99, 0.90, and 0.79 internally, and 0.95–0.98, 0.85, and 0.76 externally. Sensitivity for thickening/adhesion and haemodynamic significance improved from 66.7% to 77.3%, and 68.8% to 80.8%, respectively, when poor image quality were excluded. Similar performance gains were observed in subgroups with complete target views and a higher number of available video clips.
This study presents the first DL-based TTE model for broader pericardial disease evaluation, integrating morphological with supportive functional assessments. The proposed framework demonstrated strong generalizability and aligned with the real-world diagnostic workflow. However, caution is warranted when interpreting results under suboptimal imaging conditions.
Contributors

Sihyeon Jeong
Author

In Tae Moon
Author

Jaeik Jeon
Author

Dawun Jeong
Author

Jina Lee
Author

Jiyeon Kim
Author

Seung-Ah Lee
Author

Yeonggul Jang
Author

Hyuk-Jae Chang
Author

