IEEE Rev Biomed Eng. 2021;14:181-203. doi: 10.1109/RBME.2020.2988295. Epub 2021 Jan 22.
Echocardiography (echo) is a critical tool in diagnosing various cardiovascular diseases. Despite its diagnostic and prognostic value, interpretation and analysis of echo images are still widely performed manually by echocardiographers. A plethora of algorithms has been proposed to analyze medical ultrasound data using signal processing and machine learning techniques. These algorithms provided opportunities for developing automated echo analysis and interpretation systems. The automated approach can significantly assist in decreasing the variability and burden associated with manual image measurements. In this paper, we review the state-of-the-art automatic methods for analyzing echocardiography data. Particularly, we comprehensively and systematically review existing methods of four major tasks: echo quality assessment, view classification, boundary segmentation, and disease diagnosis. Our review covers three echo imaging modes, which are B-mode, M-mode, and Doppler. We also discuss the challenges and limitations of current methods and outline the most pressing directions for future research. In summary, this review presents the current status of automatic echo analysis and discusses the challenges that need to be addressed to obtain robust systems suitable for efficient use in clinical settings or point-of-care testing.
超声心动图(echo)是诊断各种心血管疾病的重要工具。尽管它具有诊断和预后价值,但超声心动图医师仍然广泛地手动进行回声图像的解释和分析。已经提出了大量的算法,使用信号处理和机器学习技术来分析医学超声数据。这些算法为开发自动回声分析和解释系统提供了机会。自动化方法可以显著减少与手动图像测量相关的变异性和负担。在本文中,我们回顾了分析超声心动图数据的最新自动方法。特别是,我们全面系统地回顾了四个主要任务的现有方法:回声质量评估、视图分类、边界分割和疾病诊断。我们的综述涵盖了 B 模式、M 模式和多普勒三种超声成像模式。我们还讨论了当前方法的挑战和局限性,并概述了未来研究最紧迫的方向。总之,本综述介绍了自动回声分析的现状,并讨论了为获得适合在临床环境或即时护理测试中高效使用的稳健系统而需要解决的挑战。