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Digital auscultation analysis for heart murmur detection.

机译:用于心脏杂音检测的数字听诊分析。

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摘要

This work presents a comparison of different approaches for the detection of murmurs from phonocardiographic signals. Taking into account the variability of the phonocardiographic signals induced by valve disorders, three families of features were analyzed: (a) time-varying & time-frequency features; (b) perceptual; and (c) fractal features. With the aim of improving the performance of the system, the accuracy of the system was tested using several combinations of the aforementioned families of parameters. In the second stage, the main components extracted from each family were combined together with the goal of improving the accuracy of the system. The contribution of each family of features extracted was evaluated by means of a simple k-nearest neighbors classifier, showing that fractal features provide the best accuracy (97.17%), followed by time-varying & time-frequency (95.28%), and perceptual features (88.7%). However, an accuracy around 94% can be reached just by using the two main features of the fractal family; therefore, considering the difficulties related to the automatic intrabeat segmentation needed for spectral and perceptual features, this scheme becomes an interesting alternative. The conclusion is that fractal type features were the most robust family of parameters (in the sense of accuracy vs. computational load) for the automatic detection of murmurs. This work was carried out using a database that contains 164 phonocardiographic recordings (81 normal and 83 records with murmurs). The database was segmented to extract 360 representative individual beats (180 per class).
机译:这项工作提出了从心电图信号检测杂音的不同方法的比较。考虑到由瓣膜异常引起的心电图信号的可变性,分析了三个系列的特征:(a)时变和时频特征; (b)感性的; (c)分形特征。为了改善系统的性能,使用上述参数系列的几种组合来测试系统的准确性。在第二阶段,将从每个系列中提取的主要组件合并在一起,以提高系统的准确性。通过简单的k近邻分类器评估提取的每个特征族的贡献,表明分形特征提供了最佳准确性(97.17%),其次是时变和时频(95.28%),以及感知性功能(88.7%)。但是,仅使用分形族的两个主要特征就可以达到94%左右的精度。因此,考虑到与频谱和感知特征所需的自动心跳内分割相关的困难,该方案成为一种有趣的选择。结论是,分形类型特征是用于自动检测杂音的最健壮的参数族(从准确性到计算量的意义上)。使用包含164个心电图记录(81个正常记录和83个带有杂音的记录)的数据库进行了这项工作。对数据库进行了分段,以提取360个有代表性的个人节拍(每节课180个)。

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