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Comparison of different methods of measuring similarity in physiologic time series

机译:生理时间序列中测量相似度的不同方法的比较

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Searching for similarity between time series plays an important role when large amounts of information need to be clustered to integrate intelligent supported personal health care diagnosis systems. The performance of classification, clustering and disease prediction are influenced by the prior stage where similarity between time series is performed. Physiologic signals vary even within the same patient, so an analysis of their possible variation without affecting future clustering accuracy is hereby addressed. Commonly employed methods of measuring similarity between time series were tested on longer data segments than the typical cardiac cycle envisaging its use integrated on personalized health care cardiovascular diagnosis systems. Euclidean distance, Discrete Wavelet Transform, Discrete Fourier Transform, Correlation Coefficient, Mahalanobis distance, Minkowski Distance, and Dynamic Time Warping Distance were compared when 20 levels of small variations in amplitude scaling and shift, time scaling and shift, baseline variance and additive Gaussian noise are forced to the tested time series. Concentrating on the performance of the similarity methods in terms of their insensibility to small data variations results demonstrate that the time domain Correlation Coefficient is the most robust method while the Discrete Wavelet Transform is the elected one between the transform-based methods tested. Selection of a similarity method to be applied should also take into account implementation issues, namely need of data reduction to avoid computational burden, and in this case transform-based methods should be elected.
机译:当需要聚集大量信息以集成智能支持的个人保健诊断系统时,搜索时间序列之间的相似性起着重要作用。分类,聚类和疾病预测的性能受到执行时间序列之间相似性的先前阶段的影响。生理信号甚至在同一患者内也会发生变化,因此在此分析了它们可能发生的变化而又不影响将来的聚类准确性。在比典型心动周期更长的数据段上测试了常用的测量时间序列之间相似性的方法,并设想了将其集成在个性化医疗心血管诊断系统中的使用。当幅度缩放和平移,时间缩放和平移,基线方差和加性高斯噪声的20个小变化水平比较时,比较了欧氏距离,离散小波变换,离散傅立叶变换,相关系数,马氏距离,明可夫斯基距离和动态时间规整距离被迫使用经过测试的时间序列。从对小数据变化不敏感的角度着眼于相似方法的性能,结果表明,时域相关系数是最稳健的方法,而离散小波变换是测试的基于变换的方法之间的最佳选择。选择要应用的相似性方法时,还应考虑实施问题,即需要减少数据量以避免计算负担,在这种情况下,应选择基于变换的方法。

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