在电子健康记录上验证大出血和临床相关的非大出血表型算法。

IF 2.4 4区 医学 Q3 PHARMACOLOGY & PHARMACY Pharmacoepidemiology and Drug Safety Pub Date : 2024-08-01 DOI:10.1002/pds.5875
Aaron Jun Yi Yap, Desmond Chun Hwee Teo, Pei San Ang, Eng Soo Yap, Siew Har Tan, Celine Wei Ping Loke, Sreemanee Raaj Dorajoo
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引用次数: 0

摘要

目的:出血是流行病学研究中一个重要的健康结果。我们旨在开发和验证基于规则的算法,以便在真实世界的电子医疗数据中识别(1)大出血和(2)所有临床相关出血(CRB)(大出血和所有临床相关非大出血的复合):我们对 2019 年和 2020 年新加坡公立医疗机构的住院病人进行了随机抽样(n = 1630),并按医院和年份进行了分层。我们纳入了所有年龄组、性别和种族的患者。大出血和 CRB 由两名注释员通过病历审查确定。算法开发和验证分别共使用了 630 条和 1000 条记录。我们制定了两种算法:灵敏度和阳性预测值(PPV)优化算法。在最终算法中结合使用了血红蛋白检测模式和诊断代码:在验证过程中,虽然特异性和 PPV 较高(>0.97),但仅凭诊断代码对大出血(0.16)和 CRB(0.24)的灵敏度较低。对于大出血,灵敏度优化算法的灵敏度和阴性预测值(NPV)要高得多(灵敏度 = 0.94,NPV = 1.00),但假阳性率也相对较高(特异性 = 0.90,PPV = 0.34)。PPV 优化算法提高了特异性和 PPV(特异性 = 0.96,PPV = 0.52),但灵敏度和 NPV(灵敏度 = 0.88,NPV = 0.99)几乎没有降低。对于 CRB 事件,我们的算法灵敏度较低(0.50-0.56):结论:仅使用诊断代码会遗漏许多真正的大出血事件。我们开发的大出血算法具有很高的灵敏度,可以确定相关人群中的大出血事件。
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Validation of a Major and Clinically Relevant Nonmajor Bleeding Phenotyping Algorithm on Electronic Health Records.

Purpose: Bleeding is an important health outcome of interest in epidemiological studies. We aimed to develop and validate rule-based algorithms to identify (1) major bleeding and (2) all clinically relevant bleeding (CRB) (composite of major and all clinically relevant nonmajor bleeding) within real-world electronic healthcare data.

Methods: We took a random sample (n = 1630) of inpatient admissions to Singapore public healthcare institutions in 2019 and 2020, stratifying by hospital and year. We included patients of all age groups, sex, and ethnicities. Presence of major bleeding and CRB were ascertained by two annotators through chart review. A total of 630 and 1000 records were used for algorithm development and validation, respectively. We formulated two algorithms: sensitivity- and positive predictive value (PPV)-optimized algorithms. A combination of hemoglobin test patterns and diagnosis codes were used in the final algorithms.

Results: During validation, diagnosis codes alone yielded low sensitivities for major bleeding (0.16) and CRB (0.24), although specificities and PPV were high (>0.97). For major bleeding, the sensitivity-optimized algorithm had much higher sensitivity and negative predictive values (NPVs) (sensitivity = 0.94, NPV = 1.00), however false positive rates were also relatively high (specificity = 0.90, PPV = 0.34). PPV-optimized algorithm had improved specificity and PPV (specificity = 0.96, PPV = 0.52), with little reduction in sensitivity and NPV (sensitivity = 0.88, NPV = 0.99). For CRB events, our algorithms had lower sensitivities (0.50-0.56).

Conclusions: The use of diagnosis codes alone misses many genuine major bleeding events. We have developed major bleeding algorithms with high sensitivities, which can ascertain events within populations of interest.

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来源期刊
CiteScore
4.80
自引率
7.70%
发文量
173
审稿时长
3 months
期刊介绍: The aim of Pharmacoepidemiology and Drug Safety is to provide an international forum for the communication and evaluation of data, methods and opinion in the discipline of pharmacoepidemiology. The Journal publishes peer-reviewed reports of original research, invited reviews and a variety of guest editorials and commentaries embracing scientific, medical, statistical, legal and economic aspects of pharmacoepidemiology and post-marketing surveillance of drug safety. Appropriate material in these categories may also be considered for publication as a Brief Report. Particular areas of interest include: design, analysis, results, and interpretation of studies looking at the benefit or safety of specific pharmaceuticals, biologics, or medical devices, including studies in pharmacovigilance, postmarketing surveillance, pharmacoeconomics, patient safety, molecular pharmacoepidemiology, or any other study within the broad field of pharmacoepidemiology; comparative effectiveness research relating to pharmaceuticals, biologics, and medical devices. Comparative effectiveness research is the generation and synthesis of evidence that compares the benefits and harms of alternative methods to prevent, diagnose, treat, and monitor a clinical condition, as these methods are truly used in the real world; methodologic contributions of relevance to pharmacoepidemiology, whether original contributions, reviews of existing methods, or tutorials for how to apply the methods of pharmacoepidemiology; assessments of harm versus benefit in drug therapy; patterns of drug utilization; relationships between pharmacoepidemiology and the formulation and interpretation of regulatory guidelines; evaluations of risk management plans and programmes relating to pharmaceuticals, biologics and medical devices.
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