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指征性混杂和风险调整不足何时会使重症监护研究产生偏差?一项模拟研究。

When do confounding by indication and inadequate risk adjustment bias critical care studies? A simulation study.

作者信息

Sjoding Michael W, Luo Kaiyi, Miller Melissa A, Iwashyna Theodore J

机构信息

Department of Internal Medicine, The Division of Pulmonary & Critical Care Medicine, University of Michigan, 3916 Taubman Center, 1500 E. Medical Center Dr., SPC 5360, Ann Arbor, MI, 48109-5360, USA.

College of Literature, Science and the Arts, University of Michigan, Ann Arbor, MI, USA.

出版信息

Crit Care. 2015 Apr 30;19(1):195. doi: 10.1186/s13054-015-0923-8.

Abstract

INTRODUCTION

In critical care observational studies, when clinicians administer different treatments to sicker patients, any treatment comparisons will be confounded by differences in severity of illness between patients. We sought to investigate the extent that observational studies assessing treatments are at risk of incorrectly concluding such treatments are ineffective or even harmful due to inadequate risk adjustment.

METHODS

We performed Monte Carlo simulations of observational studies evaluating the effect of a hypothetical treatment on mortality in critically ill patients. We set the treatment to have either no association with mortality or to have a truly beneficial effect, but more often administered to sicker patients. We varied the strength of the treatment's true effect, strength of confounding, study size, patient population, and accuracy of the severity of illness risk-adjustment (area under the receiver operator characteristics curve, AUROC). We measured rates in which studies made inaccurate conclusions about the treatment's true effect due to confounding, and the measured odds ratios for mortality for such false associations.

RESULTS

Simulated observational studies employing adequate risk-adjustment were generally able to measure a treatment's true effect. As risk-adjustment worsened, rates of studies incorrectly concluding the treatment provided no benefit or harm increased, especially when sample size was large (n = 10,000). Even in scenarios of only low confounding, studies using the lower accuracy risk-adjustors (AUROC < 0.66) falsely concluded that a beneficial treatment was harmful. Measured odds ratios for mortality of 1.4 or higher were possible when the treatment's true beneficial effect was an odds ratio for mortality of 0.6 or 0.8.

CONCLUSIONS

Large observational studies confounded by severity of illness have a high likelihood of obtaining incorrect results even after employing conventionally "acceptable" levels of risk-adjustment, with large effect sizes that may be construed as true associations. Reporting the AUROC of the risk-adjustment used in the analysis may facilitate an evaluation of a study's risk for confounding.

摘要

引言

在重症监护观察性研究中,当临床医生对病情较重的患者给予不同治疗时,任何治疗比较都会因患者之间疾病严重程度的差异而产生混淆。我们试图研究评估治疗方法的观察性研究在多大程度上存在因风险调整不足而错误得出此类治疗无效甚至有害结论的风险。

方法

我们对评估一种假设治疗对重症患者死亡率影响的观察性研究进行了蒙特卡洛模拟。我们设定该治疗与死亡率要么无关联,要么具有真正的有益效果,但更多地应用于病情较重的患者。我们改变了治疗的真实效果强度、混淆强度、研究规模、患者群体以及疾病严重程度风险调整的准确性(受试者操作特征曲线下面积,AUROC)。我们测量了因混淆而对治疗真实效果得出不准确结论的研究比例,以及此类错误关联的死亡率测量比值比。

结果

采用充分风险调整的模拟观察性研究通常能够测量出治疗的真实效果。随着风险调整变差,错误得出治疗无益处或无危害结论的研究比例增加,尤其是在样本量较大(n = 10,000)时。即使在仅有低程度混淆的情况下,使用准确性较低的风险调整方法(AUROC < 0.66)的研究也会错误地得出有益治疗有害的结论。当治疗的真实有益效果是死亡率比值比为0.6或0.8时,死亡率的测量比值比可能达到1.4或更高。

结论

即使采用传统上“可接受”水平的风险调整,受疾病严重程度混淆的大型观察性研究仍很可能得出错误结果,且可能将较大的效应量解释为真实关联。报告分析中使用的风险调整的AUROC可能有助于评估研究的混淆风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8aaa/4432515/2fefa0e158be/13054_2015_923_Fig1_HTML.jpg

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