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Combining information from multiple data sources to create multivariable risk models: illustration and preliminary assessment of a new method.

机译:结合来自多个数据源的信息以创建多变量风险模型:一种新方法的说明和初步评估。

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摘要

A common practice of metanalysis is combining the results of numerous studies on the effects of a risk factor on a disease outcome. If several of these composite relative risks are estimated from the medical literature for a specific disease, they cannot be combined in a multivariate risk model, as is often done in individual studies, because methods are not available to overcome the issues of risk factor colinearity and heterogeneity of the different cohorts. We propose a solution to these problems for general linear regression of continuous outcomes using a simple example of combining two independent variables from two sources in estimating a joint outcome. We demonstrate that when explicitly modifying the underlying data characteristics (correlation coefficients, standard deviations, and univariate betas) over a wide range, the predicted outcomes remain reasonable estimates of empirically derived outcomes (gold standard). This method shows the most promise in situations where the primary interest is in generating predicted values as when identifying a high-risk group of individuals. The resulting partial regression coefficients are less robust than the predicted values.
机译:荟萃分析的一种常见做法是将关于危险因素对疾病结局的影响的众多研究结果结合在一起。如果从医学文献中针对特定疾病估计了这些复合相对风险中的几种,则不能像在个别研究中那样将它们组合在多变量风险模型中,因为无法使用方法来克服风险因素共线性和不同队列的异质性。我们提出了一个简单的示例,结合了来自两个来源的两个自变量来估计联合结果,从而解决了连续结果一般线性回归的这些问题。我们证明,在广泛范围内显式修改基础数据特征(相关系数,标准差和单变量beta)时,预测结果仍是根据经验得出的结果(金标准)的合理估计。在识别高风险的个人群体时,这种方法显示出最有希望的情况,其中主要的兴趣是生成预测值。所得的部分回归系数不如预测值强健。

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