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Machine learning based identification of pathological heart sounds

机译:基于机器学习的病理性心音识别

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Automated interpretation of heart sounds holds great promise in increasing the diagnostic accuracy and consistency of cardiac auscultation and allowing for use in remote, tele-health settings. However, existing algorithms for classification of hearts sounds have been constrained by limited idealized training sets and methodological issues with validation. As part of the 2016 PhysioNet Challenge competition, we present an algorithm for automated heart sound classification sthat uses Hilbert-envelope and wavelet features to attempt to capture the qualities of the heart sounds that physicians are trained to interpret. We perform a two-step classification of heart sounds into poor quality, normal or abnormal with sensitivity of 0.7958 and specificity of 0.7459.
机译:心音的自动解释在提高心脏听诊的诊断准确性和一致性以及允许在远程,远程医疗环境中使用方面具有广阔的前景。但是,现有的心音分类算法受到有限的理想化训练集和验证方法问题的限制。作为2016年PhysioNet挑战赛的一部分,我们提出了一种自动心音分类算法,该算法使用希尔伯特包络和小波特征来尝试捕获经过培训的医师所能解释的心音质量。我们对心音进行两步分类,将其分为质量差,正常或异常,灵敏度为0.7958,特异性为0.7459。

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