Department of Biomedical Informatics, Emory University, Atlanta, GA, United States of America. Department of Biomedical Engineering, Georgia Institute of Technology, Atlanta, GA, United States of America.
Physiol Meas. 2017 Aug 1;38(8):E10-E25. doi: 10.1088/1361-6579/aa7ec8.
Heart sounds have been widely studied and have been demonstrated to have value for detecting pathologies in clinical applications. Over the last few decades, the use of heart sound signals has become increasingly uncommon and its practice in modern medicine somewhat diminished, although research into automated analysis has continued. Unfortunately, a comparative analyses of algorithms in the literature have been hindered by the lack of high-quality, rigorously validated, and standardized open databases of heart sound recordings. The 2016 PhysioNet/Computing in Cardiology (CinC) Challenge addressed this issue by assembling the largest public heart sound database, aggregated from eight sources obtained by seven independent research groups around the world. The database comprises a total of 4,430 recordings collected from 1,072 healthy subjects and patients with a variety of conditions, including heart valve disease and coronary artery disease. This editorial reviews the background issues for this Challenge, the design of the Challenge itself, the key achievements, and the follow-up research generated as a result of the Challenge, published in the concurrent special issue of . Additionally we make some recommendations for future changes in this the field of heart sound signal processing as a result of the Challenge. In the Challenge, participants were asked to classify recordings as normal, abnormal, or unsure. The overall score for an entry was based on a weighted sensitivity and specificity score with respect to manual expert annotations. To aid researchers, we provided a simple baseline classification method and a complex open source code base for segmenting the heart sounds, based on a hidden semi-Markov model. During the official phase of the Challenge, a total of 48 teams submitted 348 open source entries, with a highest score of 0.860 (Se=0.942, Sp=0.778). Subsequently, for this special issue, researchers reported the new highest score of 0.855 (Se=0.890, Sp=0.816) in the follow-up phase of the Challenge, indicating that the Challenge entrants achieved exceptional results which were extremely dicult to improve (even when there is a trade-off between Sp and Se) upon in the 4 months available post-Challenge. We expect that future researchers will be able to use the extensive database generated for the Challenge to significantly improve on the approaches detailed here.
心音已被广泛研究,其在临床应用中检测病理学的价值已得到证实。在过去几十年中,心音信号的使用变得越来越不常见,其在现代医学中的应用也有所减少,尽管自动分析的研究仍在继续。不幸的是,由于缺乏高质量、严格验证和标准化的公开心音记录数据库,文献中的算法比较分析受到了阻碍。2016 年 PhysioNet/计算心脏病学(CinC)挑战赛通过汇集来自全球七个独立研究小组的八个来源的最大的公共心音数据库来解决此问题。该数据库共包含 4430 条记录,来自 1072 名健康受试者和患有各种疾病的患者,包括心脏瓣膜病和冠心病。本社论回顾了该挑战赛的背景问题、挑战赛本身的设计、主要成果以及由此产生的后续研究,这些研究发表在同期的特刊中。此外,我们还根据挑战赛的结果,就心音信号处理领域的未来变化提出了一些建议。在挑战赛中,参与者被要求将记录分类为正常、异常或不确定。参赛作品的总评分是基于与手动专家注释相关的加权灵敏度和特异性评分。为了帮助研究人员,我们提供了一种简单的基线分类方法和一种基于隐半马尔可夫模型的心音分割的复杂开源代码库。在挑战赛的正式阶段,共有 48 个团队提交了 348 个开源参赛作品,最高得分为 0.860(Se=0.942,Sp=0.778)。随后,在挑战赛的后续阶段,研究人员报告的新的最高得分为 0.855(Se=0.890,Sp=0.816),这表明挑战赛参赛者取得了非常出色的结果,即使在挑战赛结束后的 4 个月内存在 Sp 和 Se 之间的权衡,也很难进一步提高。我们预计,未来的研究人员将能够利用挑战赛生成的广泛数据库,显著改进这里详述的方法。