Cardiovascular diseases are one of the leading cause of death in today's world and early screening of heart condition plays a crucial role in preventing them. The heart sound signal is one of the primary indicator of heart condition and can be used to detect abnormality in the heart. The acquisition of heart sound signal is non-invasive, cost effective and requires minimum equipment. But currently the detection of heart abnormality from heart sound signal depends largely on the expertise and experience of the physician. As such an automatic detection system for heart abnormality detection from heart sound signal can be a great asset for the people living in underdeveloped areas. In this paper we propose a novel deep learning based dual stream network with attention mechanism that uses both the raw heart sound signal and the MFCC features to detect abnormality in heart condition of a patient. The deep neural network has a convolutional stream that uses the raw heart sound signal and a recurrent stream that uses the MFCC features of the signal. The features from these two streams are merged together using a novel attention network and passed through the classification network. The model is trained on the largest publicly available dataset of PCG signal and achieves an accuracy of 87.11, sensitivity of 82.41, specificty of 91.8 and a MACC of 87.12.
翻译:心血管疾病是当今世界死亡的主要原因之一,心血管疾病早期筛查在预防这些疾病方面起着关键作用。心脏声音信号是心脏状况的主要指标之一,可用于检测心脏异常。心脏声音信号的获取是非侵入性、成本效益高且需要最起码的设备。但目前从心脏声音信号检测出心脏异常主要取决于医生的专门知识和经验。这种心脏异常检测系统从心脏声音信号中检测出心脏异常的自动检测系统对于生活在欠发达地区的人来说可能是一笔巨大的资产。我们在本文件中提议建立一个基于两流流的新的深层次学习的双向网络,其关注机制既使用原始心脏声音信号,又使用MFCC特征检测病人心脏异常。深神经网络有一个动态流,使用原始心脏声音信号,以及使用MFCC信号特征的经常流。这两个流的特点通过一个新的关注网络并传递给生活在欠发达地区的人们。我们用这个模型对PCG信号的最大公开数据集进行了培训,它使用原始心脏声音信号和MFCCC特性的注意机制。87.11和87.12的精确度为87.11。