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Neurodegenerative disease: 'Fifty shades of grey' in the Huntington disease gene

机译:神经退行性疾病:亨廷顿病基因中的“五十道灰色阴影”

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Objective: Clinical trials are unlikely to ever be launched for many comparative effectiveness research (CER) questions. Inferences from hypothetical randomized trials may however be emulated with marginal structural modeling (MSM) using observational data, but success in adjusting for time-dependent confounding and selection bias typically relies on parametric modeling assumptions. If these assumptions are violated, inferences from MSM may be inaccurate. In this article, we motivate the application of a data-adaptive estimation approach called super learning (SL) to avoid reliance on arbitrary parametric assumptions in CER. Study Design and Setting: Using the electronic health records data from adults with new-onset type 2 diabetes, we implemented MSM with inverse probability weighting (IPW) estimation to evaluate the effect of three oral antidiabetic therapies on the worsening of glomerular filtration rate. Results: Inferences from IPW estimation were noticeably sensitive to the parametric assumptions about the associations between both the exposure and censoring processes and the main suspected source of confounding, that is, time-dependent measurements of hemoglobin A1c. SL was successfully implemented to harness flexible confounding and selection bias adjustment from existing machine learning algorithms. Conclusion: Erroneous IPW inference about clinical effectiveness because of arbitrary and incorrect modeling decisions may be avoided with SL.
机译:目的:不太可能针对许多比较有效性研究(CER)问题进行临床试验。但是,可以使用观察数据通过边际结构建模(MSM)来模拟假设的随机试验的推论,但是成功调整基于时间的混淆和选择偏差通常取决于参数建模的假设。如果违反了这些假设,则来自MSM的推论可能是不准确的。在本文中,我们鼓励应用称为超级学习(SL)的数据自适应估计方法,以避免依赖CER中的任意参数假设。研究设计和设置:使用来自新发2型糖尿病成年人的电子健康记录数据,我们实施了具有逆概率加权(IPW)估计的MSM,以评估三种口服降糖药物对肾小球滤过率恶化的影响。结果:IPW估计的推论对有关暴露和审查过程与主要可疑混杂源之间的关联的参数假设(即对血红蛋白A1c的时间依赖性测量)非常敏感。 SL已成功实施,以利用现有机器学习算法中的灵活混杂和选择偏差调整。结论:使用SL可以避免因任意和错误的建模决策而对IPW的临床有效性作出错误的推断。

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