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Segmentation-Based Adaptive Feature Extraction Combined With Mahalanobis Distance Classification Criterion for Heart Sound Diagnostic System

机译:基于分段的自适应特征提取结合Mahalanobis距离分类标准,用于心脏声音诊断系统

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摘要

To utilize heart sound features that may vary according to their suitability for segmentation, automatic adaptive feature extraction combined with the Mahalanobis distance classification criterion is proposed to construct an innovative, heart sound-based system for diagnosing heart diseases. The innovation of this system is primarily reflected in the automatic segmentation and extraction of the first complex heart sound (CS1) and second complex heart sound (CS2) or each cardiac sound (CS), automatic extraction of the segmentation-based frequency feature FF1 or FF2, determination of the diagnostic features [gamma(11), gamma(12)] and [gamma(21), gamma(22), gamma(23)], and the development of a classifier model with adjustable sizes corresponding to the given desired confidence levels (denoted as beta). Three stages corresponding to the implementation of the novel diagnostic system are summarized as follows. In stage 1, the time intervals between two sequentialpeaks are automatically calculated and statistically analyzed, and the result is used to determinewhether a given heart soundcan be segmented. Stage 2 involvesautomaticextractionof segmentation-basedadaptive features for adapting the heart sound to the frequencydomain. Finally, theGaussianmixture model (GMM)-based objective function f(et)(x) is generated, and the k(th) component's confidence region is determined by adjusting the optimal confidence level beta(k) and subsequently used as the classification criterion to diagnose a given heart sound. The performance evaluation was validated with sounds from online heart sound databases and sounds from clinical heart databases. Compared with the state-of-the-art diagnostic methods, the overall accuracy OA of 98.8%, F-1 of 99.27%, and kappa of 98.6% are much higher.
机译:为了利用根据它们的分割适用性而变化的心脏声音特征,提出了与Mahalanobis距离分类标准相结合的自动自适应特征提取,以构建一种用于诊断心脏病的创新性,心脏声音系统。该系统的创新主要反映在第一复杂心声(CS1)和第二复眼(CS2)或每个心声(CS)的自动分割和提取中,自动提取基于分段的频率特征FF1或FF2,测定诊断特征γ(11),γ(12)]和γ,γ(22),γ(23),γ(23)]和具有可调节尺寸的分类器模型的开发所需的置信水平(表示为BETA)。对应于新型诊断系统的实施的三个阶段总结如下。在第1阶段,自动计算和统计分析两个顺序斑块之间的时间间隔,并且结果用于确定将给定的心脏声道进行分割。第2阶段涉及分割的基于分段的atmaticextractive,用于将心声调整到频率域。最后,产生了基于Gaussianmixture模型(GMM)的物流函数f(eT)(x),并且通过调整最佳置信水平β(k)并随后用作分类标准来确定K(th)分量的置信区。诊断给定的心声。绩效评估用来自在线心脏声音数据库的声音和来自临床心脏数据库的声音验证。与最先进的诊断方法相比,98.8%,F-1的整体精度为99.27%,Kappa为98.6%的高得多。

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