发现定量时间功能依赖于临床数据

Combi Carlo, M. Mantovani, P. Sala
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引用次数: 7

摘要

近似功能依赖关系,即使有适当的时间扩展,最近已被提出作为挖掘临床数据的方法学工具。它允许医疗保健利益相关者从大量的医疗保健和临床数据中获取新知识。通过依赖关系从数据中衍生出的知识的一些例子可能是"具有相同症状的患者每月得到相同类型的治疗"或"在15天内,具有相同诊断和相同治疗的患者每天得到相同剂量的药物"。这种依赖关系的主要限制是它们不能处理定量数据,而数值是可以容忍的。特别是,这种限制出现在临床数据仓库中,其中的分析和挖掘必须考虑一个或多个度量(与定量数据相关,如实验室测试结果,生命体征,如血压、温度等),涉及多个维度(如患者、医院、医生、诊断)属性和一些时间维度(如住院后的日期、日历日期等)。针对这种情况,我们引入了一种新的近似时间功能依赖,即多重近似时间功能依赖(MATFD),它考虑了时间临床数据的维度和定量度量之间的依赖关系。这种新的依赖关系可以提供新的知识,“在15天内,相同诊断和相同治疗的患者每天接受固定范围内的药物量”。此外,我们还提供了一种原始的算法来挖掘这种依赖关系,并为发现的时间窗口和涉及的维度属性派生出一些核心依赖关系。最后,讨论了对MIMIC III数据库ICU数据进行预处理和挖掘的初步结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering Quantitative Temporal Functional Dependencies on Clinical Data
Approximate functional dependencies, even with suitable temporal extensions, have been recently proposed as a methodological tool for mining clinical data. It allows healthcare stakeholders to derive new knowledge from overwhelming amount of healthcare and clinical data. Some examples of the kind of knowledge derivable from data through dependencies may be "month by month, patients with the same symptoms get the same type of therapy" or "within 15 days, patients with the same diagnosis and the same therapy receive the same daily amount of drug". The main limitation of such kind of dependencies is that they cannot deal with quantitative data, when some tolerance can be allowed for numerical values. In particular, such limitation arises in clinical data warehouses, where analysis and mining have to consider one or more measures (related to quantitative data as lab test results, vital signs as blood pressures, temperature and so on), with respect to many dimensional (alphanumeric) attributes (as patient, hospital, physician, diagnosis) and to some time dimensions (as the day since hospitalization, the calendar date, and so on). According to this scenario, we introduce here a new kind of approximate temporal functional dependency, named multi approximate temporal functional dependency (MATFD), which consider dependencies between dimensions and quantitative measures from temporal clinical data. Such new dependencies may provide new knowledge as "within 15 days, patients with the same diagnosis and the same therapy receive a daily amount of drug within a fixed range". Moreover, we provide an original algorithm to mine such kind of dependencies and to derive some core dependencies, both for the discovered temporal window and for the involved dimensional attributes. Finally, we discuss some first results we obtained by pre-processing and mining ICU data from MIMIC III database.
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