Jang Yeonggul, Choi Hyejung, Yoon Yeonyee E, Jeon Jaeik, Kim Hyejin, Kim Jiyeon, Jeong Dawun, Ha Seongmin, Hong Youngtaek, Lee Seung-Ah, Park Jiesuck, Choi Wonsuk, Choi Hong-Mi, Hwang In-Chang, Cho Goo-Yeong, Chang Hyuk-Jae
CONNECT-AI Research Center, Yonsei University College of Medicine, Seoul, Korea.
Ontact Health Inc., Seoul, Korea.
Korean Circ J. 2024 Nov;54(11):743-756. doi: 10.4070/kcj.2024.0060. Epub 2024 Aug 26.
Although various cardiac parameters on echocardiography have clinical importance, their measurement by conventional manual methods is time-consuming and subject to variability. We evaluated the feasibility, accuracy, and predictive value of an artificial intelligence (AI)-based automated system for echocardiographic analysis in patients with ST-segment elevation myocardial infarction (STEMI).
The AI-based system was developed using a nationwide echocardiographic dataset from five tertiary hospitals, and automatically identified views, then segmented and tracked the left ventricle (LV) and left atrium (LA) to produce volume and strain values. Both conventional manual measurements and AI-based fully automated measurements of the LV ejection fraction and global longitudinal strain, and LA volume index and reservoir strain were performed in 632 patients with STEMI.
The AI-based system accurately identified necessary views (overall accuracy, 98.5%) and successfully measured LV and LA volumes and strains in all cases in which conventional methods were applicable. Inter-method analysis showed strong correlations between measurement methods, with Pearson coefficients ranging 0.81-0.92 and intraclass correlation coefficients ranging 0.74-0.90. For the prediction of clinical outcomes (composite of all-cause death, re-hospitalization due to heart failure, ventricular arrhythmia, and recurrent myocardial infarction), AI-derived measurements showed predictive value independent of clinical risk factors, comparable to those from conventional manual measurements.
Our fully automated AI-based approach for LV and LA analysis on echocardiography is feasible and provides accurate measurements, comparable to conventional methods, in patients with STEMI, offering a promising solution for comprehensive echocardiographic analysis, reduced workloads, and improved patient care.
尽管超声心动图上的各种心脏参数具有临床重要性,但通过传统手动方法测量这些参数既耗时又存在变异性。我们评估了基于人工智能(AI)的自动化系统对ST段抬高型心肌梗死(STEMI)患者进行超声心动图分析的可行性、准确性和预测价值。
基于人工智能的系统是利用来自五家三级医院的全国性超声心动图数据集开发的,该系统可自动识别视图,然后对左心室(LV)和左心房(LA)进行分割和追踪,以得出容积和应变值。对632例STEMI患者同时进行了左心室射血分数和整体纵向应变以及左心房容积指数和储备应变的传统手动测量和基于人工智能的全自动测量。
基于人工智能的系统准确识别了所需视图(总体准确率为98.5%),并在所有适用传统方法的病例中成功测量了左心室和左心房的容积及应变。方法间分析显示测量方法之间具有很强的相关性,Pearson系数范围为0.81 - 0.92,组内相关系数范围为0.74 - 0.90。对于临床结局(全因死亡、因心力衰竭再次住院、室性心律失常和复发性心肌梗死的综合情况)的预测,人工智能得出的测量结果显示出独立于临床危险因素的预测价值,与传统手动测量结果相当。
我们基于人工智能的超声心动图左心室和左心房分析全自动方法是可行的,并且在STEMI患者中提供了与传统方法相当的准确测量结果,为全面的超声心动图分析、减轻工作量和改善患者护理提供了一个有前景的解决方案。