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首页> 外文期刊>Nature medicine >Avoidable flaws in observational analyses: an application to statins and cancer
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Avoidable flaws in observational analyses: an application to statins and cancer

机译:可避免的观察分析中的缺陷:他汀类药物和癌症的应用

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The increasing availability of large healthcare databases is fueling an intense debate on whether real-world data should play a role in the assessment of the benefit-risk of medical treatments. In many observational studies, for example, statin users were found to have a substantially lower risk of cancer than in meta-analyses of randomized trials. Although such discrepancies are often attributed to a lack of randomization in the observational studies, they might be explained by flaws that can be avoided by explicitly emulating a target trial (the randomized trial that would answer the question of interest). Using the electronic health records of 733,804 UK adults, we emulated a target trial of statins and cancer and compared our estimates with those obtained using previously applied analytic approaches. Over the 10-yr follow-up, 28,408 individuals developed cancer. Under the target trial approach, estimated observational analogs of intention-to-treat and per-protocol 10-yr cancer-free survival differences were -0.5% (95% confidence interval (CI) -1.0%, 0.0%) and -0.3% (95% CI -1.5%, 0.5%), respectively. By contrast, previous analytic approaches yielded estimates that appeared to be strongly protective. Our findings highlight the importance of explicitly emulating a target trial to reduce bias in the effect estimates derived from observational analyses.
机译:大量医疗数据库的可用性越来越多地推动了关于现实世界数据是否应在评估医疗治疗风险的评估中发挥作用的激烈辩论。例如,在许多观察性研究中,发现他汀类药物的癌症风险显着降低,而不是随机试验的荟萃分析。虽然这种差异通常归因于观察研究中缺乏随机化,但是可以通过明确模拟目标试验(将回答利益问题的随机试验)来解释它们的缺陷。使用733,804名英国成年人的电子健康记录,我们模拟了他汀类药物和癌症的目标试验,并将我们的估计与使用以前应用的分析方法获得的人进行了比较。超过10年的随访,28,408人癌症。在目标试验方法下,估计的意图治疗和每种方案10 - Yr无癌生存差异的观察模块为-0.5%(95%置信区间(CI)-1.0%,0.0%)和-0.3% (95%CI -1.5%,0.5%)。相比之下,之前的分析方法产生了似乎强烈保护的估计。我们的研究结果强调了明确地模拟目标试验以减少抗估计估计的重要性,以减少源自观察分析的估计。

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