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Detection of congestive heart failure from short-term heart rate variability segments using hybrid feature selection approach

机译:使用混合特征选择方法从短期心率变异性部分检测充血性心力衰竭

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Objectives: The aim of this work is to investigate the accuracy limits of automated detection of congestive heart failure (CHF) from short-term heart rate variability (HRV) series. Short-term HRV analysis uses 5-minute segments from HRV recordings to diagnose a disorder. This work proposes a hybrid feature selection procedure aimed at finding highly accurate models containing only a few highly informative features, which enables physiological interpretation of the features relevant for the model.Materials and methods: Short-term HRV segments are analyzed for CHF diagnosis. Subjects' records from four public PhysioNet databases are considered (66 healthy subjects and 42 CHF subjects). The problem is approached from a machine learning perspective, by extracting 111 linear time domain, frequency domain, time-frequency, nonlinear and symbolic dynamics HRV features. A multistage hybrid feature selection method is proposed that eventually eliminates most features. The method uses a symmetrical uncertainty filter, Naive Bayes wrapper with best first search, and final greedy iterative feature elimination. For classification purposes, we use rotation forest (RTF), radial based support vector machines (SVM), random forest (RF), multilayer perceptron artificial neural network, and k-nearest neighbors' classifiers in order to evaluate the feature sets at each step of the process and to obtain as accurate model as possible. Leave-one-subject-out cross-validation evaluation method was used, with two variants: subject-level (coarse-grained) and feature vector-level (fine-grained).Results: The results show that the feature selection method is capable of either improving or retaining the classification accuracy of the full feature set (RTF: subject-level ACC = 88.9%, feature vector-level ACC = 85.6%; SVM: subject-level ACC = 89.8%, feature vector-level ACC = 83.5%; RF: subject-level ACC = 87.0%, feature vector-level ACC = 85.5%), while greatly reducing the number of included features, to only four HRV features for RTF and RF, and only two HRV features for SVM. The resulting best models for subject level classification achieved are: RTF: ACC = 90.7%, SENS = 78.6%, SPEC = 98.6%, obtained with features: LF/HF ratio, maximum alphabet entropy, alphabet entropy variance, and HaarWaveletSD (scale = 8); SVM: ACC 88.0%, SENS = 78.6%, SPEC = 93.9%, obtained with features: LF/HF ratio and Rate_U; RF: ACC = 90.7%, SENS = 78.6%, SPEC 98.6%, obtained with features: LF/HF ratio, maximum alphabet entropy, Rate_U, and Rate_B. Other classifiers provided similar, but somewhat lower results. A comparison of the procedure with the results of individual filter, wrapper, and simple hybrid approaches is provided, which demonstrates the efficiency of the proposed procedure.Conclusions: The results suggest that the method can achieve accurate generalizable models for automated diagnosis of CHF from short-term HRV segments in subjects with very few informative features. The choice of the best features and the classification results are similar between the three best classifiers, so the use of any of them with the proposed method is recommended. Nonlinear and symbolic dynamics features are shown to have an important role in the resulting models. The presented methodology may be useful for first-hand screening for CHF as well as for similar diagnostic or automated detection problems in biomedicine. (C) 2019 Elsevier Ltd. All rights reserved.
机译:目的:这项工作的目的是研究从短期心率变异性(HRV)系列中自动检测充血性心力衰竭(CHF)的准确性极限。短期HRV分析使用HRV记录中的5分钟片段来诊断疾病。这项工作提出了一种混合特征选择程序,旨在找到仅包含一些高信息量特征的高精度模型,从而能够从生理角度解释与模型相关的特征。材料和方法:分析短期HRV片段以进行CHF诊断。考虑来自四个公共PhysioNet数据库的受试者记录(66个健康受试者和42个CHF受试者)。从机器学习的角度解决该问题,方法是提取111个线性时域,频域,时频,非线性和符号动力学HRV特征。提出了一种多阶段混合特征选择方法,该方法最终消除了大多数特征。该方法使用对称不确定性滤波器,具有最佳优先搜索的朴素贝叶斯包装程序和最终贪婪迭代特征消除功能。为了进行分类,我们使用旋转森林(RTF),基于径向的支持向量机(SVM),随机森林(RF),多层感知器人工神经网络和k近邻分类器来评估每个步骤的特征集过程并获得尽可能准确的模型。使用了留一法则的交叉验证评估方法,该方法具有两个变体:主题级别(粗粒度)和特征向量级别(细粒度)。结果:结果表明,特征选择方法能够改善或保留整个特征集的分类准确性的方法(RTF:主题级ACC = 88.9%,特征向量级ACC = 85.6%; SVM:主题级ACC = 89.8%,特征向量级ACC = 83.5 %; RF:主题级ACC = 87.0%,特征矢量级ACC = 85.5%),同时大大减少了包含的功能数量,对于RTF和RF仅减少了4个HRV功能,而对SVM仅减少了2个HRV功能。获得的针对主题级别分类的最佳模型如下:RTF:ACC = 90.7%,SENS = 78.6%,SPEC = 98.6%,具有以下特征:LF / HF比,最大字母熵,字母熵方差和HaarWaveletSD(比例= 8); SVM:ACC 88.0%,SENS = 78.6%,SPEC = 93.9%,具有以下特性:LF / HF比和Rate_U; RF:ACC = 90.7%,SENS = 78.6%,SPEC 98.6%,具有以下特征:LF / HF比,最大字母熵,Rate_U和Rate_B。其他分类器提供了类似的结果,但结果较低。将该程序与单独的过滤器,包装器和简单的混合方法的结果进行了比较,证明了所提出程序的有效性。结论:结果表明该方法可以从短时间获得准确的可泛化模型,用于CHF的自动诊断具有很少信息功能的受试者的长期HRV细分。在三个最佳分类器之间,最佳特征的选择和分类结果相似,因此建议在建议的方法中使用它们中的任何一个。非线性和符号动力学特征在结果模型中显示出重要作用。提出的方法学可能对CHF的第一手筛查以及生物医学中类似的诊断或自动检测问题有用。 (C)2019 Elsevier Ltd.保留所有权利。

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