从行政健康记录中挖掘不成比例的项目集,用于表征心力衰竭患者组

Isak Karlsson, P. Papapetrou, L. Asker, Henrik Boström, H. Persson
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引用次数: 2

摘要

心力衰竭是一种严重的医疗状况,涉及生活质量下降和过早死亡的风险增加。瑞典国家健康和福利委员会最近的一项评估表明,瑞典心力衰竭患者经常得不到充分治疗,并且没有按照国家心力衰竭治疗指南的建议接受基本药物治疗。本文的目的是使用注册数据来描述心力衰竭患者的群体,重点是基本治疗。为此,我们探索频繁项目集挖掘和歧化分析的适用性,以寻找目标患者群体(例如,接受基本治疗的患者)与对照组(例如,未接受基本治疗的患者)的有趣和独特特征。我们的实证评估是从斯德哥尔摩县2010年至2016年的行政健康记录中提取的数据进行的。我们的研究结果表明,频率并不总是最合适的衡量频繁项目集的重要性,而项目集对对照组的歧化提供了提取项目集的替代排名,从而导致目标群体的一些医学上直观的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining disproportional itemsets for characterizing groups of heart failure patients from administrative health records
Heart failure is a serious medical conditions involving decreased quality of life and an increased risk of premature death. A recent evaluation by the Swedish National Board of Health and Welfare shows that Swedish heart failure patients are often undertreated and do not receive basic medication as recommended by the national guidelines for treatment of heart failure. The objective of this paper is to use registry data to characterize groups of heart failure patients, with an emphasis on basic treatment. Towards this end, we explore the applicability of frequent itemset mining and disproportionality analysis for finding interesting and distinctive characterizations of a target group of patients, e.g., those who have received basic treatment, against a control group, e.g., those who have not received basic treatment. Our empirical evaluation is performed on data extracted from administrative health records from the Stockholm County covering the years 2010--2016. Our findings suggest that frequency is not always the most appropriate measure of importance for frequent itemsets, while itemset disproportionality against a control group provides alternative rankings of the extracted itemsets leading to some medically intuitive characterizations of the target groups.
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