一种基于电子病历中不规则测量数据的患者时间相似性度量方法。

Ying Sha, Janani Venugopalan, May D Wang
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引用次数: 13

摘要

患者相似度测量是临床决策支持应用中队列识别的重要工具。可靠的相似性度量可用于从具有类似医疗保健事件轨迹的其他患者中获得有关目标患者的诊断或预后信息。然而,对类似护理轨迹的测量受到保健固有的测量不规范的挑战。为了应对这一挑战,我们提出了一种新的患者时间相似性度量方法,该方法基于来自亚特兰大儿童医疗保健中心重症监护多参数智能监测数据库和儿科重症监护病房(ICU)数据库的不规则测量实验室测试数据。这种相似度度量是由Smith Waterman算法改进而来的,它可以识别由相似长度的时间间隔分隔的具有顺序相似实验室结果的患者。我们证明了我们的方法的预测能力;也就是说,既往病史相似度较高的患者,其后来的病史也很可能具有较高的相似度。此外,与其他非时间指标相比,我们的方法在预测诊断为急性肾损伤和败血症的ICU患者死亡率方面更强。类别和主题描述符:H.3.3[信息存储和检索]:检索模型和排名-相似性度量;J.3[应用计算]:生命和医学科学-健康和医疗信息系统。总称:算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Novel Temporal Similarity Measure for Patients Based on Irregularly Measured Data in Electronic Health Records.

A Novel Temporal Similarity Measure for Patients Based on Irregularly Measured Data in Electronic Health Records.

A Novel Temporal Similarity Measure for Patients Based on Irregularly Measured Data in Electronic Health Records.

Patient similarity measurement is an important tool for cohort identification in clinical decision support applications. A reliable similarity metric can be used for deriving diagnostic or prognostic information about a target patient using other patients with similar trajectories of health-care events. However, the measure of similar care trajectories is challenged by the irregularity of measurements, inherent in health care. To address this challenge, we propose a novel temporal similarity measure for patients based on irregularly measured laboratory test data from the Multiparameter Intelligent Monitoring in Intensive Care database and the pediatric Intensive Care Unit (ICU) database of Children's Healthcare of Atlanta. This similarity measure, which is modified from the Smith Waterman algorithm, identifies patients that share sequentially similar laboratory results separated by time intervals of similar length. We demonstrate the predictive power of our method; that is, patients with higher similarity in their previous histories will most likely have higher similarity in their later histories. In addition, compared with other non-temporal measures, our method is stronger at predicting mortality in ICU patients diagnosed with acute kidney injury and sepsis.

Categories and subject descriptors: H.3.3 [Information Storage and Retrieval]: Retrieval models and rankings - similarity measures; J.3 [Applied Computing]: Life and medical sciences - health and medical information systems.

General term: Algorithm.

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