首页> 外文期刊>Value in health: the journal of the International Society for Pharmacoeconomics and Outcomes Research >Good research practices for comparative effectiveness research: analytic methods to improve causal inference from nonrandomized studies of treatment effects using secondary data sources: the ISPOR Good Research Practices for Retrospective Database Analysis Task Force Report--Part III.
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Good research practices for comparative effectiveness research: analytic methods to improve causal inference from nonrandomized studies of treatment effects using secondary data sources: the ISPOR Good Research Practices for Retrospective Database Analysis Task Force Report--Part III.

机译:进行比较有效性研究的良好研究实践:使用辅助数据源改善治疗效果的非随机研究中因果关系的分析方法:ISPOR回顾性数据库分析任务组报告的良好研究实践-第三部分。

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OBJECTIVES: Most contemporary epidemiologic studies require complex analytical methods to adjust for bias and confounding. New methods are constantly being developed, and older more established methods are yet appropriate. Careful application of statistical analysis techniques can improve causal inference of comparative treatment effects from nonrandomized studies using secondary databases. A Task Force was formed to offer a review of the more recent developments in statistical control of confounding. METHODS: The Task Force was commissioned and a chair was selected by the ISPOR Board of Directors in October 2007. This Report, the third in this issue of the journal, addressed methods to improve causal inference of treatment effects for nonrandomized studies. RESULTS: The Task Force Report recommends general analytic techniques and specific best practices where consensus is reached including: use of stratification analysis before multivariable modeling, multivariable regression including model performance and diagnostic testing, propensity scoring, instrumental variable, and structural modeling techniques including marginal structural models, where appropriate for secondary data. Sensitivity analyses and discussion of extent of residual confounding are discussed. CONCLUSIONS: Valid findings of causal therapeutic benefits can be produced from nonrandomized studies using an array of state-of-the-art analytic techniques. Improving the quality and uniformity of these studies will improve the value to patients, physicians, and policymakers worldwide.
机译:目的:大多数当代流行病学研究需要复杂的分析方法来调整偏见和混淆。新方法正在不断开发中,而较旧的更成熟的方法仍然适用。认真应用统计分析技术可以改善使用辅助数据库进行的非随机研究中比较治疗效果的因果关系。成立了一个工作组,以审查混杂统计控制方面的最新发展。方法:2007年10月,ISPOR董事会任命了工作组并任命了一位主席。该报告是本期杂志的第三期,探讨了改善非随机研究治疗效果因果关系推断的方法。结果:工作组报告建议达成共识的一般分析技术和特定最佳实践,包括:在多变量建模之前使用分层分析,包括模型性能和诊断测试的多变量回归,倾向性评分,工具变量以及包括边际结构的结构建模技术模型,适用于辅助数据。讨论了灵敏度分析和剩余混杂程度的讨论。结论:使用一系列最新的分析技术,可以从非随机研究中得出因果治疗益处的有效发现。改善这些研究的质量和统一性将提高全球患者,医生和决策者的价值。

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