Statistical analysis based on quantile regression methods is more comprehensive, flexible, and less sensitive to outliers when compared to mean regression methods. When the link between different diseases are of interest, joint disease mapping is useful for measuring directional correlation between them. Most studies study this link through multiple correlated mean regressions. In this paper we propose a joint quantile regression framework for multiple diseases where different quantile levels can be considered. We are motivated by the theorized link between the presence of Malaria and the gene deficiency G6PD, where medical scientist have anecdotally discovered a possible link between high levels of G6PD and lower than expected levels of Malaria initially pointing towards the occurrence of G6PD inhibiting the occurrence of Malaria. This link cannot be investigated with mean regressions and thus the need for flexible joint quantile regression in a disease mapping framework. Our joint quantile disease mapping model can be used for linear and non-linear effects of covariates by stochastic splines, since we define it as a latent Gaussian model. We perform Bayesian inference of this model using the INLA framework embedded in the R software package INLA. Finally, we illustrate the applicability of model by analyzing the malaria and G6PD deficiency incidences in 21 African countries using linked quantiles of different levels.
翻译:以四分位回归法为基础的统计分析更加全面、灵活,而且与中位回归法相比,对异常点不那么敏感。当不同疾病之间的联系引起兴趣时,联合疾病绘图有助于衡量它们之间的方向相关性。大多数研究都通过多重相关平均回归法研究这种联系。在本文件中,我们提议为多种疾病建立一个共同的四分回归框架,其中可以考虑不同的四分位水平。我们受到疟疾的存在和基因缺陷G6PD之间的理论联系的驱动,其中医学科学家传闻发现G6PD高水平和低于预期的疟疾水平之间可能存在联系,最初指向G6PD抑制疟疾的发生。这一联系不能通过平均回归法来调查,因此在疾病绘图框架中需要灵活的共同量化回归。我们的联合四分位疾病绘图模型可用于通过随机样板的微分位图谱将它定义为潜伏值模型。我们使用INLA框架对这个模型进行推导出这一模型,最终用 RPD GLA 中连接的21 QQA 级模型分析非洲数据数据库的应用程序。