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Abnormal heart sounds detection based on the scaled time-frequency representation and feature selection

机译:基于缩放的时频表示和特征选择的异常心音检测

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Abnormal heart sounds detection is of great value for the pre-diagnosis of heart disease. Since the pathological information is usually contained in each heart cycle, it is essential to segment the heart sounds before further analysis. In order to extract more detailed information, the time and frequency domain analysis of the heart cycle is necessary. So the time-frequency representation (TFR) of each heart cycle is extracted in this study. However, the durations of the heart cycles between different samples are usually not the same. As a result, the sizes of the corresponding TFR are different which prohibits the direct comparison between them. To solve this problem, the TFRs are scaled to a fixed size through the bilinear interpolation method. Nevertheless, the scaled TFR contains some noises which are useless for classification. For the purpose of removing noises, a feature selection method based on similarity is applied. Then, the selected features are input to a support vector machine (SVM) for classification. At last, the proposed method is evaluated on the dataset offered by the PhysioNet/Computing in Cardiology Challenge 2016. The overall score 85.40% is achieved by a 5-fold cross-validation. It is the average of the sensitivity(75.03%) and specificity(95.76%). The best overall performance of our method on the challenge is 84%.
机译:异常的心音检测对于心脏病的预诊断非常重要。由于病理信息通常包含在每个心动周期中,因此在进一步分析之前对心音进行分段至关重要。为了提取更详细的信息,必须对心动周期进行时域和频域分析。因此,本研究提取了每个心动周期的时频表示(TFR)。但是,不同样本之间的心动周期持续时间通常不相同。结果,相应的TFR的大小是不同的,这阻止了它们之间的直接比较。为了解决这个问题,通过双线性插值方法将TFR缩放到固定大小。但是,缩放的TFR包含一些对于分类没有用的噪声。为了消除噪声,应用了基于相似度的特征选择方法。然后,将所选特征输入到支持向量机(SVM)中进行分类。最后,在PhysioNet / Computing in Cardiology Challenge 2016提供的数据集上对提出的方法进行了评估。通过5倍交叉验证,总体得分为85.40%。它是敏感性(75.03%)和特异性(95.76%)的平均值。我们的方法在挑战中的最佳整体表现为84%。

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