Detection of Temporal Clinical Events in Non-Temporal, Non-Annotated Data.

Dimitrios Zikos, Philip Eappen, Ryan N Schmidt
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Abstract

Introduction: This study developed and validated a Bayesian method which detects pairs of clinical events likely to be temporally ordered.

Methods: Association mining rules between medical procedures were extracted into a research-generated database and, for each pair of procedures A,B, the conditional probability P(A|B), its inverse, and the difference from its inverse (ConfDiff) were calculated. The study hypothesized that the higher the ConfDiff is, the more likely it is for A and B to be temporally ordered. The actual calendar date of each medical procedure served as ground truth.

Results: ConfDiff is the strongest predictor of %Tseq (r=0.278), followed by P(B|A) (r=0.129). This association continued to be present after controlling for the confidence, leverage and conviction metrics.

Conclusion: Findings substantiate the assumption that, in a structured process-based domain (e.g., clinical care) if an attribute is strongly associated with another one, but not the other way around, this could imply temporality.

简介:本研究开发并验证了一种贝叶斯方法:本研究开发并验证了一种贝叶斯方法,该方法可检测出可能在时间上有序的成对临床事件:方法:从研究生成的数据库中提取医疗程序之间的关联挖掘规则,并计算每一对程序 A、B 的条件概率 P(A|B)、其逆概率以及与逆概率之差(ConfDiff)。研究假设,ConfDiff 越高,A 和 B 在时间上排序的可能性就越大。每个医疗程序的实际日历日期作为基本事实:结果:ConfDiff 是 %Tseq 的最强预测因子(r=0.278),其次是 P(B|A)(r=0.129)。在控制了置信度、杠杆率和确信度指标后,这种关联依然存在:研究结果证实了以下假设:在基于结构化流程的领域(如临床护理)中,如果一个属性与另一个属性密切相关,而不是相反,这可能意味着时间性。
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