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针对治疗和危害的研究中的调整分析:医学文献的使用者指南。

Adjusted Analyses in Studies Addressing Therapy and Harm: Users' Guides to the Medical Literature.

机构信息

Divisions of Clinical Epidemiology and General Internal Medicine, University Hospitals of Geneva, Geneva, Switzerland2Department of Clinical Epidemiology and Biostatistics, Faculty of Health Sciences, McMaster University, Hamilton, Ontario, Canada.

Department of Clinical Epidemiology and Biostatistics, Faculty of Health Sciences, McMaster University, Hamilton, Ontario, Canada3Division of General Pediatrics, University Hospitals of Geneva and Faculty of Medicine, University of Geneva, Geneva, Switzerland4Division of Pediatric Medicine, Pediatric Outcomes Research Team (PORT), Department of Pediatrics Hospital for Sick Children, University of Toronto, Toronto, Ontario, Canada.

出版信息

JAMA. 2017 Feb 21;317(7):748-759. doi: 10.1001/jama.2016.20029.

Abstract

Observational studies almost always have bias because prognostic factors are unequally distributed between patients exposed or not exposed to an intervention. The standard approach to dealing with this problem is adjusted or stratified analysis. Its principle is to use measurement of risk factors to create prognostically homogeneous groups and to combine effect estimates across groups.The purpose of this Users' Guide is to introduce readers to fundamental concepts underlying adjustment as a way of dealing with prognostic imbalance and to the basic principles and relative trustworthiness of various adjustment strategies.One alternative to the standard approach is propensity analysis, in which groups are matched according to the likelihood of membership in exposed or unexposed groups. Propensity methods can deal with multiple prognostic factors, even if there are relatively few patients having outcome events. However, propensity methods do not address other limitations of traditional adjustment: investigators may not have measured all relevant prognostic factors (or not accurately), and unknown factors may bias the results.A second approach, instrumental variable analysis, relies on identifying a variable associated with the likelihood of receiving the intervention but not associated with any prognostic factor or with the outcome (other than through the intervention); this could mimic randomization. However, as with assumptions of other adjustment approaches, it is never certain if an instrumental variable analysis eliminates bias.Although all these approaches can reduce the risk of bias in observational studies, none replace the balance of both known and unknown prognostic factors offered by randomization.

摘要

观察性研究几乎总是存在偏倚,因为预后因素在暴露于干预措施的患者和未暴露于干预措施的患者之间分布不均。处理这个问题的标准方法是调整或分层分析。其原理是使用危险因素的测量来创建预后一致的组,并在组间组合效果估计值。本用户指南的目的是向读者介绍作为处理预后不平衡的一种方法的调整的基本概念,以及各种调整策略的基本原理和相对可信度。标准方法的替代方法之一是倾向分析,其中根据暴露组或未暴露组的成员可能性对组进行匹配。倾向方法可以处理多个预后因素,即使只有相对较少的患者发生结局事件。然而,倾向方法并不能解决传统调整的其他局限性:研究人员可能没有测量所有相关的预后因素(或不准确),未知因素可能会使结果产生偏差。第二种方法是工具变量分析,它依赖于识别与接受干预的可能性相关但与任何预后因素或结局(除了通过干预)不相关的变量;这可以模拟随机化。然而,与其他调整方法的假设一样,从未确定工具变量分析是否可以消除偏倚。尽管所有这些方法都可以降低观察性研究中的偏倚风险,但没有一种方法可以替代随机化提供的已知和未知预后因素的平衡。

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