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A new learning and classification framework for the detection of abnormal heart sound signals using hybrid signal processing and neural networks

机译:使用混合信号处理和神经网络检测心音异常信号的新学习和分类框架

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The objective of this study is to develop an adaptive learning and classification framework for anomaly (normal vs. abnormal) detection of Phonocardiogram (PCG) recordings without any segmentation of heart sound signals. First, heart sound signal is decomposed into a set of frequency subbands with a number of decomposition levels by using the tunable Q-factor wavelet transform (TQWT) method. Second, variational mode decomposition (VMD) is employed to decompose the subband of the heart sound signal into different intrinsic modes, in which the first four intrinsic modes contain the majority of the heart sound signal’s energy and are considered to be the predominant intrinsic modes. Third, three-dimensional (3D) phase space reconstruction (PSR) together with Euclidean distance (ED) has been utilized to derive features. Fourth, an adaptive learning and classification framework is constructed based on deterministic learning theory to model, identify and classify the normal and abnormal patterns in the dynamics of PCG system between normal people and patients with heart diseases. Finally, PhysioNet/CinC Challenge heart sound database is used for evaluation. By using the 10-fold cross-validation style, the proposed method achieves the classification performance with sensitivity, specificity, overall score and accuracy values of 97.46%, 97.67%, 97.57%, and 97.56%, respectively.
机译:这项研究的目的是为心音信号(PCG)记录的异常(正常与异常)检测开发一种自适应学习和分类框架,而无需对心音信号进行任何分割。首先,通过使用可调Q因子小波变换(TQWT)方法,将心音信号分解为具有多个分解级别的一组频率子带。其次,采用变分模式分解(VMD)将心音信号的子带分解为不同的固有模式,其中前四个固有模式包含了大部分心音信号的能量,被认为是主要的固有模式。第三,三维(3D)相空间重构(PSR)与欧几里得距离(ED)一起被用来推导特征。第四,建立基于确定性学习理论的自适应学习和分类框架,对正常人与心脏病患者之间PCG系统动力学的正常和异常模式进行建模,识别和分类。最后,使用PhysioNet / CinC Challenge心音数据库进行评估。通过使用10倍交叉验证样式,该方法可实现分类性能,其灵敏度,特异性,总分和准确度值分别为97.46%,97.67%,97.57%和97.56%。

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