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Heart sound classification from wavelet decomposed signal using morphological and statistical features

机译:基于形态学和统计特征的小波分解信号心音分类

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Automatic classification of heart sound recordings is one of the widely known challenges for over 50 years. The fundamental objective of this study is to evaluate a large database of heart sounds collected from a variety of clinical and non-clinical surroundings and classify them into normal and abnormal categories. Daubechis-2 wavelet transform was applied to each phonocardiogram (PCG) recording after segmenting each cardiac cycle into four windows containing first heart sound S1-Systole-Second heart sound (S2)-Diastole states of a heart cycle. Morphological, statistical and time features were extracted from each cardiac states window. Heart sound classification into normal and abnormal was based on the SVM with Gaussian kernel function. The algorithm was trained by the recordings from all available training data sets (training set A to F). The performance of the proposed prototype was evaluated by five-fold cross-validation on the available training dataset as well as on the hidden test set by PhysioNet. Overall classification accuracies of 82% during Phase I submissions and 77% during Phase II submissions were achieved of the challenge. The final score on the blind test set was 74.65%. Based on the current result, the proposed prototype could be a potential solution for a robust and automatic classification technique of normal and abnormal heart sound recordings.
机译:心音记录的自动分类是50多年来众所周知的挑战之一。这项研究的基本目标是评估从各种临床和非临床环境中收集到的大型心音数据库,并将其分类为正常和异常类别。将每个心动周期分割为四个窗口后,将Daubechis-2小波变换应用于每个心电图(PCG)记录,四个窗口包含心动周期的第一心音S1-收缩-第二心音(S2)-舒张状态。从每个心脏状态窗口中提取形态,统计和时间特征。基于具有高斯核函数的支持向量机,将心音分为正常和异常。通过所有可用训练数据集(训练集A到F)中的记录对算法进行了训练。通过对可用的训练数据集以及PhysioNet的隐藏测试集进行五重交叉验证,对所提出原型的性能进行了评估。挑战的总体分类准确度在第一阶段提交时达到82%,在第二阶段提交时达到77%。盲测集的最终得分为74.65%。基于当前结果,提出的原型可能是正常和异常心音记录的鲁棒和自动分类技术的潜在解决方案。

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