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Trajectory Analysis of Laboratory Tests as Medical Complex Data Mining

机译:作为医学综合数据挖掘的实验室测试轨迹分析

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Finding temporally covariant variables is very important for clinical practice because we are able to obtain the measurements of some examinations very easily, while it takes a long time for us to measure other ones. Also, unexpected covariant patterns give us new knowledge for temporal evolution of chronic diseases. This paper focuses on clustering of trajectories of temporal sequences of two laboratory examinations. First, we map a set of time series containing different types of laboratory tests into directed trajectories representing temporal change in patients' status. Then the trajectories for individual patients are compared in multiscale and grouped into similar cases by using clustering methods. Experimental results on the chronic hepatitis data demonstrated that the method could find the groups of trajectories which reflects temporal covariance of platelet, albumin and choline esterase.
机译:查找时间协变量对于临床实践非常重要,因为我们能够非常轻松地获得某些检查的测量值,而我们需要花费很长时间来测量其他检查。同样,意想不到的协方差模式为我们提供了有关慢性疾病的时间演变的新知识。本文着重于两次实验室检查的时间序列轨迹的聚类。首先,我们将一组包含不同类型的实验室测试的时间序列映射为表示患者状况随时间变化的定向轨迹。然后,将各个患者的轨迹进行多尺度比较,并使用聚类方法将其分为相似的病例。慢性肝炎数据的实验结果表明,该方法可以找到反映血小板,白蛋白和胆碱酯酶的时间协方差的轨迹组。

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