利用手机和机器学习检测心脏异常

Elhoussine Talab, Omar Mohamed, Labeeba Begum, F. Aloul, A. Sagahyroon
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引用次数: 1

摘要

四分之一的死亡是由心脏相关问题引起的。因此,对心脏病的早期症状采取行动可以大大增加挽救生命的可能性。本文讨论了一种具有成本效益和可靠的方法,通过使用手机诊断心脏异常,现在一般用户都可以使用手机。开发了一种移动应用程序来检测心脏异常活动,使用数字听诊器测量作为输入,或使用移动麦克风记录心跳。为了处理原始心音数据,我们首先使用小波变换对信号进行降噪,然后应用机器学习技术,即卷积神经网络对存储的心音进行分类。由记录的人类心音及其相应诊断组成的数据库用于训练神经网络。此外,还采用了ADAM正则化等神经网络微调技术来平滑预测过程。该方法在5 ~ 8秒长的心音信号上进行了测试,结果表明,该方法在验证集上的准确率为94.2%。
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Detecting Heart Anomalies Using Mobile Phones and Machine Learning
One out of four deaths is caused by heart related issues. Acting upon early signs of heart disease can, thus, drastically increase probability of saving lives. This paper discusses a cost-effective and reliable method of diagnosing heart abnormalities by using mobile phones that are nowadays typically available to an average user. A mobile application is developed to detect heart abnormal activities using either a digital stethoscope measurement as input, or a mobile recording of the heart beat using the mobile's microphone. To process the raw heart sound data, we first denoise the signal using wavelet transforms, and then apply machine learning techniques, namely, Convolutional Neural Networks for the classification of the stored heart sounds. A database consisting of recorded human heart sounds and their corresponding diagnosis is used to train the neural network. Moreover, neural network fine-tuning techniques such as ADAM Regularization is used to smoothen the prediction process. The proposed approach is tested on heart sound signals, that are 5 to 8 seconds long, and is shown to perform with an accuracy of 94.2% on the validation set.
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