首页> 美国卫生研究院文献>Inquiry: A Journal of Medical Care Organization Provision and Financing >Identifying Patients With Inflammatory Bowel Diseases in an Administrative Health Claims Database: Do Algorithms Generate Similar Findings?
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Identifying Patients With Inflammatory Bowel Diseases in an Administrative Health Claims Database: Do Algorithms Generate Similar Findings?

机译:在行政健康声明数据库中识别患有炎症性肠病的患者:算法是否会产生相似的发现?

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摘要

Application of selective algorithms to administrative health claims databases allows detection of specific patients and disease or treatment outcomes. This study identified and applied different algorithms to a single data set to compare the numbers of patients with different inflammatory bowel disease classifications identified by each algorithm. A literature review was performed to identify algorithms developed to define inflammatory bowel disease patients, including ulcerative colitis, Crohn’s disease, and inflammatory bowel disease unspecified in routinely collected administrative claims databases. Based on the study population, validation methods, and results, selected algorithms were applied to the Optum Clinformatics® Data Mart database from June 2000 to March 2017. The patient cohorts identified by each algorithm were compared. Three different algorithms were identified from literature review and selected for comparison (A, B, and C). Each identified different numbers of patients with any form of inflammatory bowel disease (323 833; 246 953, and 171 537 patients, respectively). The proportions of patients with ulcerative colitis, Crohn’s disease, and inflammatory bowel disease unspecified were 32.0% to 47.5%, 38.6% to 43.8%, and 8.7% to 26.6% of the total population with inflammatory bowel disease, respectively, depending on the algorithm applied. Only 5.1% of patients with inflammatory bowel disease unspecified were identified by all 3 algorithms. Algorithm C identified the smallest cohort for each disease category except inflammatory bowel disease unspecified. This study is the first to compare numbers of inflammatory bowel disease patients identified by different algorithms from a single database. The differences between results highlight the need for validation of algorithms to accurately identify inflammatory bowel disease patients.
机译:选择性算法在行政健康声明数据库中的应用可以检测特定患者以及疾病或治疗结果。这项研究确定了不同的算法并将其应用于单个数据集,以比较每种算法确定的具有不同炎症性肠病分类的患者人数。进行了文献综述,以鉴定为定义炎症性肠病患者而开发的算法,包括常规收集的行政索赔数据库中未指定的溃疡性结肠炎,克罗恩病和炎症性肠病。根据研究人群,验证方法和结果,从2000年6月至2017年3月,将选定的算法应用于OptumClinformatics®Data Mart数据库。比较了每种算法确定的患者队列。从文献综述中确定了三种不同的算法,并选择了它们进行比较(A,B和C)。他们各自确定了患有任何形式的炎症性肠病的患者数量不同(分别为323名患者; 323名患者; 246名953名患者; 171名537名患者)。根据算法,未明确的溃疡性结肠炎,克罗恩病和炎性肠病患者的比例分别为炎性肠病总人口的32.0%至47.5%,38.6%至43.8%和8.7%至26.6%。应用。所有3种算法仅识别出5.1%的未指明的炎症性肠病患者。算法C确定了每种疾病类别的最小队列,除了未指定的炎症性肠病。这项研究是第一个比较通过不同算法从单个数据库中识别出的炎症性肠病患者数量的研究。结果之间的差异突出表明需要对算法进行验证,以准确识别炎症性肠病患者。

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