Chronic Heart Failure Detection from Heart Sounds Using a Stack of Machine-Learning Classifiers

M. Gjoreski, M. Simjanoska, A. Gradišek, A. Peterlin, M. Gams, G. Poglajen
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引用次数: 19

Abstract

Chronic heart failure represents a global pandemic, currently affecting over 26 million of patients worldwide. It is a major contributor in the death rate of patients with cardiovascular diseases and results in more than 1 million hospitalizations annually in Europe and North America. Methods for chronic heart failure detection can be utilized to act preventive, improve early diagnosis and avoid hospitalizations or even life-threatening situations, thus highly enhance the quality of patient’s life. In this paper, we present a machine-learning method for chronic heart failure detection from heart sounds. The method consists of: filtering, segmentation, feature extraction and machine learning. The method was tested with a leave-one-subject-out evaluation technique on data from 122 subjects, gathered in the study. The method achieved 96% accuracy, outperforming a majority classifier for 15 percentage points. More specifically, it detects (recalls) 87% of the chronic heart failure subjects with a precision of 87%. The study confirmed that advanced machine learning applied on real-life sounds recorded with an unobtrusive digital stethoscope can be used for chronic heart failure detection.
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使用机器学习分类器堆栈从心音中检测慢性心力衰竭
慢性心力衰竭是一种全球性流行病,目前影响着全世界2600多万患者。它是心血管疾病患者死亡率的一个主要因素,在欧洲和北美,每年有100多万人住院治疗。慢性心力衰竭的检测方法可用于预防,提高早期诊断,避免住院甚至危及生命的情况,从而极大地提高患者的生活质量。在本文中,我们提出了一种从心音检测慢性心力衰竭的机器学习方法。该方法包括:滤波、分割、特征提取和机器学习。该方法采用留一受试者评估技术对122名受试者的数据进行了测试。该方法达到了96%的准确率,比大多数分类器高出15个百分点。更具体地说,它检测(召回)87%的慢性心力衰竭受试者,准确率为87%。该研究证实,先进的机器学习应用于用不引人注目的数字听诊器记录的真实声音,可用于慢性心力衰竭检测。
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