Validated administrative data based ICD-10 algorithms for chronic conditions: A systematic review.

Angela Kuang, Claire Xu, Danielle A Southern, Namneet Sandhu, Hude Quan
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Abstract

Objective: This systematic review aimed to identify ICD-10 based validated algorithms for chronic conditions using health administrative data.

Methods: A comprehensive systematic literature search using Ovid MEDLINE, Embase, PsycINFO, Web of Science and CINAHL was performed to identify studies, published between 1983 and May 2023, on validated algorithms for chronic conditions using administrative health data. Two reviewers independently screened titles and abstracts and reviewed full text of selected studies to complete data extraction. A third reviewer resolved conflicts arising at the screening or study selection stages. The primary outcome was validated studies of ICD-10 based algorithms with both sensitivity and PPV of ≥70 %. Studies with either sensitivity or PPV <70 % were included as secondary outcomes.

Results: Overall, the search identified 1686 studies of which 54 met the inclusion criteria. Combining a previously published literature search, a total of 61 studies were included for data extraction. The study identified 40 chronic conditions with high validity and 22 conditions with moderate validity. The validated algorithms were based on administrative data from different countries including Canada, USA, Australia, Japan, France, South Korea, and Taiwan. The algorithms identified included several types of cancers, cardiovascular conditions, kidney diseases, gastrointestinal disorders, and peripheral vascular diseases, amongst others.

Conclusion: With ICD-10 prominently used across the world, this up-to-date systematic review can prove to be a helpful resource for research and surveillance initiatives using administrative health data for identifying chronic conditions.

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经过验证的基于行政数据的慢性病 ICD-10 算法:系统综述。
目的本系统综述旨在利用健康管理数据确定基于 ICD-10 的慢性病有效算法:使用 Ovid MEDLINE、Embase、PsycINFO、Web of Science 和 CINAHL 进行了全面的系统性文献检索,以确定 1983 年至 2023 年 5 月间发表的关于使用卫生行政数据对慢性病进行验证算法的研究。两名审稿人独立筛选了标题和摘要,并审阅了所选研究的全文,以完成数据提取。第三位审稿人负责解决筛选或研究选择阶段出现的冲突。主要结果是基于 ICD-10 算法的灵敏度和 PPV 均≥70%的有效研究。灵敏度或 PPV 的研究结果:总体而言,此次检索共发现了 1686 项研究,其中 54 项符合纳入标准。结合之前发表的文献检索,共纳入 61 项研究进行数据提取。该研究确定了 40 种具有高度有效性的慢性疾病和 22 种具有中等有效性的疾病。经过验证的算法基于不同国家的行政数据,包括加拿大、美国、澳大利亚、日本、法国、韩国和台湾。确定的算法包括多种类型的癌症、心血管疾病、肾脏疾病、胃肠道疾病和外周血管疾病等:随着 ICD-10 在全球范围内的广泛应用,这篇最新的系统综述将成为利用行政健康数据识别慢性疾病的研究和监测计划的有用资源。
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