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首页> 外文期刊>Diabetes/metabolism research and reviews >Nested case‐control data analysis using weighted conditional logistic regression in The Environmental Determinants of Diabetes in the Young (TEDDY) study: A novel approach
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Nested case‐control data analysis using weighted conditional logistic regression in The Environmental Determinants of Diabetes in the Young (TEDDY) study: A novel approach

机译:嵌套案例控制数据分析,使用糖尿病环境决定因子的加权条件逻辑回归研究:一种新方法

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Abstract Background A nested case‐control (NCC) design within a prospective cohort study can realize substantial benefits for biomarker studies. In this context, it is natural to consider the sample availability in the selection of controls to minimize data loss when implementing the design. However, this violates the randomness required for selection, and it leads to biased analyses. An inverse probability weighting may improve the analysis, but the current approach using weighted Cox regression fails to maintain the benefits of NCC design. Methods This paper introduces weighted conditional logistic regression. We illustrate our proposed analysis using data recently investigated in The Environmental Determinants of Diabetes in the Young (TEDDY). Considering the potential data loss, the TEDDY NCC design was moderately selective in its selection of controls. A data‐driven simulation study was performed to present the bias correction when a nonrandom control selection was ignored in the analysis. Results The TEDDY data analysis showed that the standard analysis using conditional logistic regression estimated the parameter: ?0.015 (?0.023, ?0.007). The biased estimate using Cox regression was ?0.011 (95% confidence interval: ?0.019, ?0.003). Weighted Cox regression estimated ?0.013 (?0.026, 0.0004). The proposed weighted conditional logistic regression estimated ?0.020 (?0.033, ?0.007), showing a stronger negative effect size than the one using conditional logistic regression. The simulation study also showed that the standard estimate of β ignoring the nonrandom control selection tends to be greater than the true β (ie, positive relative biases). Conclusion Weighted conditional logistic regression can enhance the analysis by offering flexibility in the selection of controls, while maintaining the matching.
机译:摘要背景在预期队列研究中的嵌套案例控制(NCC)设计可以实现对生物标志物研究的大量益处。在这种情况下,需要考虑选择控制中的样本可用性,以最小化实现设计时的数据丢失。但是,这违反了选择所需的随机性,并且它导致偏见分析。反向概率加权可以改善分析,但是使用加权Cox回归的当前方法无法维持NCC设计的益处。方法本文介绍了加权条件逻辑回归。我们说明了我们使用最近在年轻(TEDDY)的糖尿病环境决定因素中的数据进行了建议的分析。考虑到潜在的数据丢失,TEDDY NCC设计在其对照选择中适度选择性。在分析中忽略非粗暴控制选择时,执行数据驱动的模拟研究以呈现偏置校正。结果泰迪数据分析表明,使用条件逻辑回归的标准分析估计参数:0.015(?0.023,<0.007)。使用Cox回归的偏见估计是?0.011(95%置信区间:?0.019,?0.003)。加权Cox回归估计?0.013(?0.026,0.0004)。所提出的加权条件逻辑回归估计?0.020(?0.033,<0.007),显示比使用条件逻辑回归的更强的负效应大小。模拟研究还表明,忽略非粗糙度控制选择的标准估计趋于大于真正的β(即正相对偏差)。结论加权条件逻辑回归可以通过在选择控制中提供灵活性来增强分析,同时保持匹配。

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