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Rules extraction in SVM and Neural Network Classifiers of Atrial Fibrillation Patients with Matched Wavelets as a Feature Generator

机译:具有匹配小波匹配小波的心房颤动患者的SVM和神经网络分类器中的规则提取作为特征发生器

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Presented paper describes a system of biomedical signal classifiers with preliminary feature extraction stage based on matched wavelets analysis, where two structures of classifier using Neural Networks (NN) and Support Vector Machine (SVM) are applied. As a pilot study the rules extraction algorithm applied for two of mentioned machine learning approaches (NN & SVM) was used. This was made to extract and transform the representation of knowledge gathered in Black Box parameters during classifier learning phase to be better and natural understandable for human user/expert. Proposed system was tested on the set of ECG signals of 20 atrial fibrillation (AF) and 20 control group (CG) patients, divided into learning and verifying subsets, taken from MIT-BiH database. Obtained results showed, that the ability of generalization of created system, expressed as a measure of sensitivity and specificity increased, due to extracting and selectively choosing only the most representative features for analyzed AF detection problem. Classification results achieved by means of constructed matched wavelet, created for given AF detection features were better than indicators obtained for standard wavelet basic functions used in ECG time-frequency decomposition.
机译:提出的论文描述了一种基于匹配的小波分析的初步特征提取阶段的生物医学信号分类器系统,其中应用了使用神经网络(NN)和支持向量机(SVM)的两个分类器结构。作为试验研究,使用了应用于两个机器学习方法(NN&SVM)的规则提取算法。这是为了在分类机构学习阶段期间提取和转换在黑盒参数中收集的知识的表示,以更好,对人类用户/专家更好地理解。在20个心房颤动(AF)和20个对照组(CG)患者的ECG信号集上测试了所提出的系统,分为学习和验证子集,从MIT-BIH数据库中取出。获得的结果表明,由于仅提取和选择性地选择用于分析的AF检测问题的最具代表性特征,所产生的系统的概括为灵敏度和特异性的量度增加。通过构造的匹配小波实现的分类结果为给定的AF检测特征而来的是优于ECG时频分解中使用的标准小波基本功能的指示器。

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