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Identifying Patient Groups based on Frequent Patterns of Patient Samples

机译:根据患者样本的常见模式识别患者组

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Grouping patients meaningfully can give insights about the different types of patients, their needs, and the priorities. Finding groups that are meaningful is however very challenging as background knowledge is often required to determine what a useful grouping is. In this paper we propose an approach that is able to find groups of patients based on a small sample set of positive examples given by domain experts. Because of that, the approach relies on very limited efforts by the domain experts. The approach groups based on the activities and diagnostic/billing codes within health pathways of patients. To define such a grouping based on the sample of patients efficiently, frequent patterns of activities are discovered and used to measure the similarity between the care pathways of other patients to the patients in the sample group. This approach results in an insightful definition of the group. The proposed approach is evaluated using several datasets obtained from a large university medical center. The evaluation shows F1-scores of around 0.7 for grouping kidney injury and around 0.6 for diabetes.
机译:对患者进行有意义的分组可以提供有关不同类型的患者,他们的需求和优先级的见解。然而,找到有意义的组非常具有挑战性,因为通常需要背景知识来确定什么是有用的组。在本文中,我们提出了一种方法,该方法能够根据领域专家给出的一小部分阳性实例,找到一组患者。因此,该方法依赖领域专家的有限努力。该方法根据患者健康途径中的活动和诊断/计费代码进行分组。为了有效地基于患者样本来定义这种分组,发现频繁的活动模式并将其用于测量其他患者与样本组中患者的护理途径之间的相似性。这种方法导致对小组的有见地的定义。使用从大型大学医学中心获得的几个数据集对提出的方法进行了评估。评估显示,分组肾脏损伤的F1得分约为0.7,而糖尿病患者的F1得分约为0.6。

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