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On the Effects of Feature Selection in Atrial Fibrillation Detection

机译:特征选择在房颤检测中的作用

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Atrial fibrillation is the most prevalent cardiac arrhythmia, and its automatic detection is an important task. In this research, segments that presented atrial fibrillation were separated from segments with normal sinus rhythm. Dozens of parameters were computed from RR intervals, and each one of them was separately used as input to linear classifiers. Then, the ten parameters that provided the highest accuracies–-maximum over minimum ratio, median of the absolute deviation; sum of the magnitude of spectral components divided by the mean RR interval; mean value of the absolute angles and mean value of the sines in Poincaré plots; standard deviation of the differences between consecutive RR intervals; sample, fuzzy and Shannon entropies; and coefficient of sample entropy–-were standardized and presented as inputs to a support vector machine. Accuracy rates of up to 99.81% were attained.
机译:心房颤动是最普遍的心律不齐,其自动检测是一项重要的任务。在这项研究中,表现为房颤的节段与窦性心律正常的节段分开。从RR间隔中计算出数十个参数,并将每个参数分别用作线性分类器的输入。然后,提供最高准确度的十个参数-最小比率的最大值-绝对偏差的中位数;频谱分量的大小之和除以平均RR间隔;庞加莱图中绝对角度的平均值和正弦的平均值;连续RR间隔之间的差异的标准偏差;样本,模糊和香农熵;样本熵和系数被标准化,并作为支持向量机的输入。准确率高达99.81%。

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