A Method for Deriving Quasi-healthy Cohorts From Clinical Data.

Biomedical informatics insights Pub Date : 2018-05-29 eCollection Date: 2018-01-01 DOI:10.1177/1178222618777758
Satoshi Irino, Yukio Kurihara
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引用次数: 1

Abstract

We evaluated quasi-healthy cohorts (model cohorts), derived from clinical data, to determine how well they simulated control cohorts. Control cohorts comprised individuals extracted from a public checkup database in Japan, under the condition that their values for 3 basic laboratory tests fall within specific reference ranges (3Ts condition). Model cohorts comprised outpatients, extracted from a clinical database at a hospital, under the 3Ts condition or under the condition that their values for 4 laboratory tests fall within specific reference ranges (4Ts condition). Because even a patient with a serious illness, such as cancer, may present with normal values on basic laboratory tests, one additional condition was added: the duration (1 or 3 months; 1M or 3M) during which patients were not hospitalized after their first laboratory test. For evaluations, cohorts were specified by age and sex. The 4Ts + 3M condition was the most effective condition, under which model cohorts were used to successfully simulate age-dependent changes and sex differences in laboratory test values for control cohorts. Therefore, by properly setting the conditions for extracting quasi-healthy individuals, we can derive cohorts from clinical data to simulate various types of cohorts. Although some issues with the proposed method remain to be solved, this approach presents new possibilities for using clinical data for cohort studies.

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一种从临床资料中提取准健康队列的方法。
我们评估了来自临床数据的准健康队列(模型队列),以确定它们模拟对照队列的效果。对照队列由从日本公共检查数据库中提取的个人组成,条件是他们的3项基本实验室检测值在特定参考范围内(3Ts条件)。模型队列包括从医院临床数据库中提取的门诊患者,这些患者处于3Ts条件下,或其4项实验室检查值处于特定参考范围(4Ts条件)的条件下。因为即使是患有严重疾病(如癌症)的患者,在基本实验室检查中也可能显示正常值,因此增加了一个附加条件:持续时间(1或3个月;1M或3M),患者在第一次实验室检查后不住院。为了进行评估,按年龄和性别指定队列。4Ts + 3M条件是最有效的条件,在此条件下,使用模型队列成功地模拟了对照队列实验室测试值的年龄依赖性变化和性别差异。因此,通过适当设置提取准健康个体的条件,我们可以从临床数据中导出队列,模拟各种类型的队列。尽管该方法存在一些问题有待解决,但该方法为使用临床数据进行队列研究提供了新的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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