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Discovery of Risky Cases in Chronic Diseases: An Approach Using Trajectory Grouping

机译:慢性病中危险病例的发现:使用轨迹分组的方法

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This paper presents an approach to finding risky cases in chronic diseases using a trajectory grouping technique. Grouping of trajectories on hospital laboratory examinations is still a challenging task as it requires comparison of data with mutidimensionalty and temporal irregularity. Our method first maps a set of time series containing different types of laboratory tests into directed trajectories representing the time course of patient states. Then the trajectories for individual patients are compared in multiscale and grouped into similar cases. Experimental results on the chronic hepatitis data demonstrated that the method could find the groups of discending trajectories that well corresponded to the cases of higher fibrotic stages.
机译:本文提出了一种使用轨迹分组技术查找慢性病中危险病例的方法。在医院实验室检查中对轨迹进行分组仍然是一项艰巨的任务,因为它需要比较多维和时间不规则的数据。我们的方法首先将一组包含不同类型的实验室测试的时间序列映射到表示患者状态随时间变化的有向轨迹。然后,对各个患者的轨迹进行多尺度比较,并分组为相似的病例。慢性肝炎数据的实验结果表明,该方法可以找到与较高纤维化分期的病例非常吻合的不同轨迹组。

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