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Performance characteristics of code‐based algorithms to identify urinary tract infections in large United States administrative claims databases

机译:基于代码的算法在大型美国行政索赔数据库中识别尿路感染的性能特征

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Abstract Background In real‐world evidence research, reliability of coding in healthcare databases dictates the accuracy of code‐based algorithms in identifying conditions such as urinary tract infection (UTI). This study evaluates the performance characteristics of code‐based algorithms to identify UTI. Methods Retrospective observational study of adults contained within three large U.S. administrative claims databases on or after January 1, 2010. A targeted literature review was performed to inform the development of 10 code‐based algorithms to identify UTIs consisting of combinations of diagnosis codes, antibiotic exposure for the treatment of UTIs, and/or ordering of a urinalysis or urine culture. For each database, a probabilistic gold standard was developed using PheValuator. The performance characteristics of each code‐based algorithm were assessed compared with the probabilistic gold standard. Results A total of 2?950?641, 1?831?405, and 2?294?929 patients meeting study criteria were identified in each database. Overall, the code‐based algorithm requiring a primary UTI diagnosis code achieved the highest positive predictive values (PPV; >93.8) but the lowest sensitivities (0.899) and improved sensitivity (72.1) alongside a slight reduction in PPVs (<78.3). All‐time prevalence estimates of UTI ranged from 21.6 to 48.6. Conclusions Based on these findings, we recommend use of algorithms requiring a single UTI diagnosis code, which achieved high sensitivity and PPV. In studies where PPV is critical, we recommend code‐based algorithms requiring three UTI diagnosis codes rather than a single primary UTI diagnosis code.
机译:摘要 背景 在真实世界的证据研究中,医疗保健数据库中编码的可靠性决定了基于代码的算法在识别尿路感染 (UTI) 等疾病方面的准确性。本研究评估了基于代码的算法的性能特征,以识别尿路感染。方法 对2010年1月1日或之后美国三个大型行政索赔数据库中包含的成年人进行回顾性观察性研究。进行了有针对性的文献综述,为开发 10 种基于代码的算法提供信息,以识别 UTI,包括诊断代码、治疗 UTI 的抗生素暴露和/或尿液分析或尿培养的顺序的组合。对于每个数据库,都使用 PheValuator 开发了概率黄金标准。与概率黄金标准相比,评估了每种基于代码的算法的性能特征。结果 各数据库共纳入符合研究标准的2?950?641例、1?831?405例和2?294?929例患者。总体而言,需要主要UTI诊断代码的基于代码的算法实现了最高的阳性预测值(PPV;>93.8%),但敏感性最低(0.899%)和更高的灵敏度(72.1%),同时PPV略有降低(<78.3%)。UTI 的历史患病率估计范围为 21.6%-48.6%。结论 基于这些发现,我们推荐使用需要单个UTI诊断代码的算法,该算法实现了高灵敏度和PPV。在PPV至关重要的研究中,我们推荐基于代码的算法,需要三个UTI诊断代码,而不是一个主要的UTI诊断代码。

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