利用心音图信号自动检测小儿先天性心脏病

Zafar Ahmad, Muhammad Zeeshan, Arshad Sohail, Fazal-e-Haq, Muhammad Haris, Misha Urooj Khan, Sayed Shahid Hussain, Muhammad Salman Khan
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引用次数: 1

摘要

世界卫生组织(WHO)称,全世界有0.8%至1.2%的新生儿患有先天性心脏病(CHDs)。诊断冠心病的方法有很多,最常用的是心音图(PCG)。这是一种非侵入性的方法,可以提供关于声音(S1, S2, S3和S4)和心脏跳动的关键知识。本研究旨在结合本地和公共数据集,利用深度神经网络训练冠心病的二元分类系统。本地数据集(LD)有583个信号(正常和异常的PCG),而来自密歇根大学的公共数据集(PD)有23个PCG记录。两个数据集都被降采样到8 kHz。带通滤波器的设计确保了20-650 Hz范围以外的任何信号都被过滤掉,只允许处理所需的频率。所有信号以4秒的信号持续时间分块。对于数据增强,应用了音调移位,并将其传递给一维卷积神经网络(CNN)。病例C的结果最好,准确率为98.56%,精密度为98.57%,F1评分为98.56%,特异性为98.0%,敏感性为99.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Detection of Paediatric Congenital Heart Diseases from Phonocardiogram Signals
The World Health Organization (WHO) claims that 0.8% to 1.2% of newborns worldwide are affected by congenital heart diseases (CHDs). There are many methods for CHD identification, and the most prevalent is phonocardiography (PCG). It is a non-invasive method that offers crucial knowledge about the sounds (S1, S2, S3, and S4) and beats of the heart. This research study aims to train a binary categorization system using a deep neural network for CHDs by using a combination of local and public datasets. The local dataset (LD) had 583 signals (normal and abnormal PCG), while the public dataset (PD) taken from Michigan University had 23 PCG recordings. Both datasets were down-sampled to 8 kHz. The band pass filter was designed such that it ensured that any signals outside of the 20–650 Hz range were filtered out, allowing only the desired frequencies to be processed. All signals were chunked at a signal duration of 4 seconds. For data augmentation, pitch-shifting was applied and passed to a 1D convolutional neural network (CNN). The best results were achieved for case C, with an accuracy of 98.56 %, precision of 98.57 %, F1 score of 98.56 %, specificity of 98.0 %, and sensitivity of 99.0%.
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