MACHINE LEARNING AND WEARABLE DEVICES FOR PHONOCARDIOGRAM-BASED DIAGNOSIS

S. Abdelmageed, M. Elmusrati
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Abstract

The heart sound signal, Phonocardiogram (PCG) is difficult to interpret even for experienced cardiologists. Interpretation are very subjective depending on the hearing ability of the physician. mHealth has been the adopted approach towards simplifying that and getting quick diagnosis using mobile devices. However, it has been challenging due to the required high quality of data, high computation load, and high-power consumption. The aim of this paper is to diagnose the heart condition based on Phonocardiogram analysis using Machine Learning techniques assuming limited processing power to be encapsulated later in a wearable device. The cardiovascular system is modelled in a transfer function to provide PCG signal recording as it would be recorded at the wrist. The signal is, then, decomposed using filter bank and the analysed using discriminant function. The results showed that PCG with a 19 dB Signal-toNoise-Ratio can lead to 97.33% successful diagnosis.The same decomposed signal is then analysed using pattern recognition neural network, and the classification was 100% successful with 83.3% trust level.
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基于心音图诊断的机器学习和可穿戴设备
心音信号,心音图(PCG)即使是有经验的心脏病专家也很难解释。口译是非常主观的,取决于医生的听力能力。移动医疗已被采用的方法是简化这一过程,并使用移动设备进行快速诊断。然而,由于需要高质量的数据、高计算负载和高功耗,它一直具有挑战性。本文的目的是使用机器学习技术基于心音图分析诊断心脏状况,假设有限的处理能力稍后被封装在可穿戴设备中。心血管系统在传递函数中建模,以提供PCG信号记录,因为它将被记录在手腕上。然后用滤波器组对信号进行分解,用判别函数对信号进行分析。结果表明,信噪比为19 dB的PCG诊断成功率为97.33%。然后使用模式识别神经网络对相同的分解信号进行分析,分类成功率为100%,信任度为83.3%。
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