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A genetic stochastic process model for genome-wide joint analysis of biomarker dynamics and disease susceptibility with longitudinal data

机译:生物标志物动力学和纵向数据的基因组联合分析遗传随机过程模型

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摘要

Unraveling the underlying biological mechanisms or pathways behind the effects of genetic variations on complex diseases remains one of the major challenges in the post-GWAS (where GWAS is genome-wide association study) era. To further explore the relationship between genetic variations, biomarkers, and diseases for elucidating underlying pathological mechanism, a huge effort has been placed on examining pleiotropic and gene-environmental interaction effects. We propose a novel genetic stochastic process model (GSPM) that can be applied to GWAS and jointly investigate the genetic effects on longitudinally measured biomarkers and risks of diseases. This model is characterized by more profound biological interpretation and takes into account the dynamics of biomarkers during follow-up when investigating the hazards of a disease. We illustrate the rationale and evaluate the performance of the proposed model through two GWAS. One is to detect single nucleotide polymorphisms (SNPs) having interaction effects on type 2 diabetes (T2D) with body mass index (BMI) and the other is to detect SNPs affecting the optimal BMI level for protecting from T2D. We identified multiple SNPs that showed interaction effects with BMI on T2D, including a novel SNP rs11757677 in the CDKAL1 gene (P = 5.77 x 10(-7)). We also found a SNP rs1551133 located on 2q14.2 that reversed the effect of BMI on T2D (P = 6.70 x 10(-7)). In conclusion, the proposed GSPM provides a promising and useful tool in GWAS of longitudinal data for interrogating pleiotropic and interaction effects to gain more insights into the relationship between genes, quantitative biomarkers, and risks of complex diseases.
机译:揭开遗传变异对复杂疾病影响的潜在生物机制或途径仍然是后GWAS(GWAS是基因组 - 范围协会研究)时代的主要挑战之一。为了进一步探讨遗传变异,生物标志物和疾病之间的关系,以阐明潜在的病理机制,已经促进了检查脂肪和基因环境相互作用影响的巨大努力。我们提出了一种新型遗传随机过程模型(GSPM),可应用于GWA,并共同调查纵向测量的生物标志物和疾病风险的遗传效应。该模型的特点是更深刻的生物解释,并考虑了在调查疾病危害时在随访期间生物标志物的动态。我们说明了理由,并通过两个GWA评估所提出的模型的性能。一种是检测具有对体重指数(BMI)的2型糖尿病(T2D)对具有相互作用作用的单核苷酸多态性(SNP),另一个是检测影响从T2D保护最佳BMI水平的SNP。我们鉴定了多种SNP,其显示与T2D上的BMI相互作用效应,包括CDKAL1基因中的新型SNP RS11757677(P = 5.77×10(-7))。我们还发现位于2Q14.2的SNP RS151133,扭转了BMI对T2D的影响(P = 6.70 x 10(-7))。总之,拟议的GSPM在纵向数据的GWAS中提供了有希望的有效和有用的工具,用于询问狂热和相互作用效应,以获得更多洞察力,对基因,定量生物标志物和复杂疾病风险的关系。

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