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Leveraging Linkage of Cohort Studies With Administrative Claims Data to Identify Individuals With Cancer

机译:利用行政权利要求的队列研究的联系鉴定癌症的个体

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Background:In an effort to overcome quality and cost constraints inherent in population-based research, diverse data sources are increasingly being combined. In this paper, we describe the performance of a Medicare claims-based incident cancer identification algorithm in comparison with observational cohort data from the Nurses' Health Study (NHS).Methods:NHS-Medicare linked participants' claims data were analyzed using 4 versions of a cancer identification algorithm across 3 cancer sites (breast, colorectal, and lung). The algorithms evaluated included an update of the original Setoguchi algorithm, and 3 other versions that differed in the data used for prevalent cancer exclusions.Results:The algorithm that yielded the highest positive predictive value (PPV) (0.52-0.82) and statistic (0.62-0.87) in identifying incident cancer cases utilized both Medicare claims and observational cohort data (NHS) to remove prevalent cases. The algorithm that only used NHS data to inform the removal of prevalent cancer cases performed nearly equivalently in statistical performance (PPV, 0.50-0.79; , 0.61-0.85), whereas the version that used only claims to inform the removal of prevalent cancer cases performed substantially worse (PPV, 0.42-0.60; , 0.54-0.70), in comparison with the dual data source-informed algorithm.Conclusions:Our findings suggest claims-based algorithms identify incident cancer with variable reliability when measured against an observational cohort study reference standard. Self-reported baseline information available in cohort studies is more effective in removing prevalent cancer cases than are claims data algorithms. Use of claims-based algorithms should be tailored to the research question at hand and the nature of available observational cohort data.
机译:背景:在克服基于人口的研究中固有的质量和成本限制的努力,多样化的数据来源越来越多地组合。在本文中,我们描述了与护士健康研究(NHS)的观察队列数据相比,介绍了基于Medicar索赔的事件癌症癌症识别算法的性能。方法:NHS-Medicare联系参与者使用4个版本分析了数据患有3种癌网站(乳腺,结直肠和肺)的癌症鉴定算法。评估的算法包括更新原始SETOGUCHI算法,以及用于普遍癌症排除的数据中的3个其他版本。结果:产生最高阳性预测值(PPV)(0.52-0.82)和统计量的算法(0.62 -0.87)在识别事件癌症案例中,使用医疗保险索赔和观察队列数据(NHS)以除去普遍的病例。仅使用NHS数据以告知移除普遍存在的癌症病例的算法几乎等效地在统计性能(PPV,0.50-0.79;,0.61-0.85),而仅使用所涉及促请移除普遍存在的癌症病例的版本与双数据源通知算法相比,基本差。在队列研究中提供的自我报告的基线信息在除去普遍存在的癌症病例方面更有效,而不是声称数据算法。应根据手头的研究问题和可用的观察队队列数据的研究来定制基于权利要求的算法。

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