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A Clustering-Based Approach to Analyse Examinations for Diabetic Patients

机译:基于聚类的糖尿病患者检查分析方法

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Health care data collections are usually characterized by an inherent sparseness due to a large cardinality of patient records and a variety of medical treatments usually adopted for a given pathology. Innovative data analytics approaches are needed to effectively extract interesting knowledge from these large collections. This paper presents an explorative data mining approach, based on a density-based clustering algorithm, to identify the examinations commonly followed by patients with a given disease. To cluster patients undergoing similar medical treatments and sharing common patient profiles (i.e., Patient age and gender) a novel combined distance measure has been proposed. Furthermore, to focus on different dataset portions and locally identify groups of patients, the clustering algorithm has been exploited in a multiple-level fashion. Based on this cluster set, a classification model has been created to characterize the content of clusters and measure the effectiveness of the clustering process. The experiments, performed on a real diabetic patient dataset, demonstrate the effectiveness of the proposed approach in discovering interesting groups of patients with a similar examination history and with increasing disease severity.
机译:卫生保健数据收集的特征通常是固有的稀疏性,这是因为患者记录的基数很大,并且通常针对给定的病理情况采用各种医疗方法。需要创新的数据分析方法来有效地从这些大型馆藏中提取有趣的知识。本文提出了一种探索性的数据挖掘方法,该方法基于基于密度的聚类算法,以识别具有特定疾病的患者通常进行的检查。为了将经历相似药物治疗的患者聚类并且共享共同的患者概况(即患者年龄和性别),已经提出了一种新颖的组合距离测量。此外,为了关注不同的数据集部分并本地识别患者组,已经以多级方式利用了聚类算法。基于此聚类集,已创建了一个分类模型来表征聚类的内容并衡量聚类过程的有效性。在真实的糖尿病患者数据集上进行的实验证明了该方法在发现具有相似检查历史且疾病严重程度不断提高的有趣患者群体中的有效性。

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