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非竞争诊断病因异质性检验方法及其在围产期暴露与自闭症和注意缺陷多动障碍关系中的应用。

Method for Testing Etiologic Heterogeneity Among Noncompeting Diagnoses, Applied to Impact of Perinatal Exposures on Autism and Attention Deficit Hyperactivity Disorder.

机构信息

From the Joseph J. Zilber College of Public Health, University of Wisconsin-Milwaukee, Milwaukee, WI.

Department of Biostatistics, University of Nebraska Medical Center, Omaha, NE.

出版信息

Epidemiology. 2024 Sep 1;35(5):689-700. doi: 10.1097/EDE.0000000000001760. Epub 2024 Jul 18.

Abstract

BACKGROUND

Testing etiologic heterogeneity, whether a disorder subtype is more or less impacted by a risk factor, is important for understanding causal pathways and optimizing statistical power. The study of mental health disorders especially benefits from strategic subcategorization because these disorders are heterogeneous and frequently co-occur. Existing methods to quantify etiologic heterogeneity are not appropriate for noncompeting events in an open cohort of variable-length follow-up. Thus, we developed a new method.

METHODS

We estimated risks from urban residence, maternal smoking during pregnancy, and parental psychiatric history, with subtypes defined by the presence or absence of a codiagnosis: autism alone, attention deficit hyperactivity disorder (ADHD) alone, and joint diagnoses of autism + ADHD. To calculate the risk of a single diagnosis (e.g., autism alone), we subtracted the risk for autism + ADHD from the risk for autism overall. We tested the equivalency of average risk ratios over time, using a Wald-type test and bootstrapped standard errors.

RESULTS

Urban residence was most strongly linked with autism + ADHD and least with ADHD only; maternal smoking was associated with ADHD only but not autism only; and parental psychiatric history exhibited similar associations with all subgroups.

CONCLUSION

Our method allowed the calculation of appropriate P values to test the strength of association, informing etiologic heterogeneity wherein two of these three risk factors exhibited different impacts across diagnostic subtypes. The method used all available data, avoided neurodevelopmental outcome misclassification, exhibited robust statistical precision, and is applicable to similar heterogeneous complex conditions using common diagnostic data with variable follow-up.

摘要

背景

测试病因异质性,即一个疾病亚型是否更容易受到某个风险因素的影响,对于理解因果途径和优化统计功效非常重要。精神健康障碍的研究特别受益于策略性亚分类,因为这些障碍具有异质性,并且经常同时发生。现有的量化病因异质性的方法不适用于具有可变随访时间的开放性队列中的非竞争事件。因此,我们开发了一种新方法。

方法

我们使用城市居住、母亲怀孕期间吸烟和父母精神病史这三个风险因素来进行估计,亚型的定义是有无共病诊断:自闭症、注意缺陷多动障碍(ADHD)或自闭症+ADHD 共病。为了计算单一诊断(例如自闭症)的风险,我们从自闭症总体风险中减去自闭症+ADHD 的风险。我们使用 Wald 型检验和自举标准误差来检验平均风险比随时间的等效性。

结果

城市居住与自闭症+ADHD 关系最密切,与 ADHD 关系最不密切;母亲吸烟与 ADHD 相关,但与自闭症无关;而父母精神病史与所有亚组均有类似的关联。

结论

我们的方法允许计算适当的 P 值来检验关联的强度,为病因异质性提供信息,其中这三个风险因素中的两个在不同的诊断亚型中具有不同的影响。该方法使用了所有可用的数据,避免了神经发育结局的分类错误,具有稳健的统计精度,并且适用于使用具有可变随访时间的常见诊断数据的类似异质复杂情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dded/11309336/c3b60f480b35/ede-35-689-g001.jpg

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