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Discrimination of normal and abnormal heart sounds using probability assessment

机译:使用概率评估区分正常和异常心音

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Aims: According to the “2016 Physionet/CinC Challenge”, we propose an automated method identifying normal or abnormal phonocardiogram recordings. Method: Invalid data segments are detected (saturation, blank and noise tests). The record is transformed into amplitude envelopes in five frequency bands. Systole duration and RR estimations are computed; 15–90 Hz amplitude envelope and systole/RR estimations are used for detection of the first and second heart sound (S1 and S2). Features from accumulated areas surrounding S1 and S2 as well as features from the whole recordings were extracted and used for training. During the training process, we collected probability and weight values of each feature in multiple ranges. For feature selection and optimization tasks, we developed C# application PROBAfind, able to generate the resultant Matlab code. Results: The method was trained with 3153 Physionet Challenge recordings (length 8–60 seconds; 6 databases). The results of the training set show the sensitivity, specificity and score of 0.93, 0.97 and 0.95, respectively. The method was evaluated on a hidden Challenge dataset with sensitivity and specificity of 0.77 and 0.91, respectively. These results led to an overall score of 0.84.
机译:目的:根据“ 2016年Physionet / CinC挑战赛”,我们提出了一种自动方法,用于识别正常或异常心电图记录。方法:检测到无效的数据段(饱和度,空白和噪声测试)。记录被转换为五个频带中的幅度包络。计算心律持续时间和RR估计值; 15–90 Hz幅度包络和心律/ RR估计值用于检测第一和第二种心音(S1和S2)。从S1和S2周围的累积区域中提取的特征以及整个记录中的特征被提取出来并用于训练。在训练过程中,我们收集了多个范围内每个特征的概率和权重值。对于功能选择和优化任务,我们开发了C#应用程序PROBAfind,它能够生成结果的Matlab代码。结果:对该方法进行了3153次Physionet Challenge录音(长度8-60秒; 6个数据库)的培训。训练结果显示敏感性,特异性和得分分别为0.93、0.97和0.95。该方法在隐式质询数据集上进行了评估,灵敏度和特异性分别为0.77和0.91。这些结果导致总得分为0.84。

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