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Meta‐analysis of non‐linear exposure‐outcome relationships using individual participant data: A comparison of two methods

机译:使用个体参与者数据进行非线性暴露-结果关系的荟萃分析:两种方法的比较

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摘要

Non‐linear exposure‐outcome relationships such as between body mass index (BMI) and mortality are common. They are best explored as continuous functions using individual participant data from multiple studies. We explore two two‐stage methods for meta‐analysis of such relationships, where the confounder‐adjusted relationship is first estimated in a non‐linear regression model in each study, then combined across studies. The “metacurve” approach combines the estimated curves using multiple meta‐analyses of the relative effect between a given exposure level and a reference level. The “mvmeta” approach combines the estimated model parameters in a single multivariate meta‐analysis. Both methods allow the exposure‐outcome relationship to differ across studies. Using theoretical arguments, we show that the methods differ most when covariate distributions differ across studies; using simulated data, we show that mvmeta gains precision but metacurve is more robust to model mis‐specification. We then compare the two methods using data from the Emerging Risk Factors Collaboration on BMI, coronary heart disease events, and all‐cause mortality (>80 cohorts, >18 000 events). For each outcome, we model BMI using fractional polynomials of degree 2 in each study, with adjustment for confounders. For metacurve, the powers defining the fractional polynomials may be study‐specific or common across studies. For coronary heart disease, metacurve with common powers and mvmeta correctly identify a small increase in risk in the lowest levels of BMI, but metacurve with study‐specific powers does not. For all‐cause mortality, all methods identify a steep U‐shape. The metacurve and mvmeta methods perform well in combining complex exposure‐disease relationships across studies.
机译:诸如体重指数(BMI)和死亡率之间的非线性暴露-结果关系很常见。最好使用来自多个研究的单个参与者数据将它们作为连续函数进行探索。我们探索了用于这种关系的荟萃分析的两个两阶段方法,即首先在每个研究的非线性回归模型中估算混杂因素调整的关系,然后在各个研究中进行组合。 “ metacurve”方法通过对给定暴露水平和参考水平之间的相对影响进行多次荟萃分析,将估计曲线组合在一起。 “ mvmeta”方法将估计的模型参数合并到一个多元的荟萃分析中。两种方法均使不同研究的暴露-结果关系有所不同。使用理论论证,我们表明,当不同研究之间的协变量分布不同时,方法的差异最大。使用模拟数据,我们显示mvmeta可以提高精度,但是metacurve对于模型错误指定更为健壮。然后,我们使用新兴风险因素协作组织中有关BMI,冠心病事件和全因死亡率(> 80个队列,> 18 000个事件)的数据对两种方法进行比较。对于每个结果,我们在每个研究中使用2级分数多项式对BMI进行建模,并针对混杂因素进行了调整。对于元曲线,定义分数多项式的幂可能是特定于研究的,或在研究中共有。对于冠心病,具有共同功效和mvmeta的元曲线可以正确识别出最低BMI水平下风险的小幅增加,但是具有研究特定功效的元曲线却不能。对于全因死亡率,所有方法都可以识别出陡峭的U形。 Metacurve和mvmeta方法在组合研究中复杂的暴露-疾病关系方面表现良好。

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