Megalmani Drishti Ramesh, G Shailesh B, Rao M V Achuth, Jeevannavar Satish S, Ghosh Prasanta Kumar
Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:713-717. doi: 10.1109/EMBC46164.2021.9629596.
Cardiac Auscultation, an integral part of the physical examination of a patient, is essential for early diagnosis of cardiovascular diseases (CVDs). The ability to accurately diagnose the heart sounds requires experience and expertise, which is lacking in doctors in the early years of clinical practice. Thus, there is a need for an automatic diagnostic tool that would aid medical practitioners with their diagnosis. We propose novel hybrid architectures for classification of unsegmented heart sounds to normal and abnormal classes. We propose two methods, with and without the conventional feature extraction step in the classification pipeline. We demonstrate that the F score using the approach with conventional feature extraction is 1.25 (absolute) more than using a baseline implementation on the Physionet dataset. We also introduce a mechanism to tag predictions as unsure and compare results with a varying threshold.
心脏听诊是患者体格检查的重要组成部分,对于心血管疾病(CVD)的早期诊断至关重要。准确诊断心音的能力需要经验和专业知识,而临床实践初期的医生缺乏这些。因此,需要一种自动诊断工具来辅助医生进行诊断。我们提出了新颖的混合架构,用于将未分割的心音分类为正常和异常类别。我们提出了两种方法,一种在分类流程中有传统特征提取步骤,另一种没有。我们证明,在Physionet数据集上,使用带有传统特征提取的方法得到的F分数比使用基线实现高出1.25(绝对值)。我们还引入了一种将预测标记为不确定的机制,并使用不同的阈值比较结果。