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Genetic risk prediction using a spatial autoregressive model withadaptive lasso

机译:使用空间自回归模型的遗传风险预测自适应套索

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摘要

With rapidly evolving high-throughput technologies, studies are being initiated to accelerate the process toward precision medicine. The collection of the vast amounts of sequencing data provides us with great opportunities to systematically study the role of a deep catalog of sequencing variants in risk prediction. Nevertheless, the massive amount of noise signals and low frequencies of rare variants in sequencing data pose great analytical challenges on risk prediction modeling. Motivated by the development in spatial statistics, we propose a spatial autoregressive model with adaptive lasso (SARAL) for risk prediction modeling using high-dimensional sequencing data. The SARAL is a set-based approach, and thus, it reduces the data dimension and accumulates genetic effects within a single-nucleotide variant (SNV) set. Moreover, it allows different SNV sets having various magnitudes and directions of effect sizes, which reflects the nature of complex diseases. With the adaptive lasso implemented, SARAL can shrink the effects of noise SNV sets to be zero and, thus, further improve prediction accuracy. Through simulation studies, we demonstrate that, overall, SARAL is comparable to, if not better than, the genomic best linear unbiased prediction method. The method is furtherillustrated by an application to the sequencing data from the Alzheimer’sDisease Neuroimaging Initiative.
机译:随着快速发展的高通量技术,正在开始研究以加速朝着精密医学的方向发展。收集大量测序数据为我们提供了巨大的机会,可以系统地研究深层测序变异目录在风险预测中的作用。尽管如此,测序数据中大量的噪声信号和稀有变异体的低频成分对风险预测建模提出了巨大的分析挑战。基于空间统计的发展,我们提出了一种具有自适应套索(SARAL)的空间自回归模型,用于使用高维排序数据进行风险预测建模。 SARAL是基于集合的方法,因此,它减小了数据维度,并在单核苷酸变异(SNV)集合内积累了遗传效应。而且,它允许具有不同大小和方向的效应大小的不同SNV集,这反映了复杂疾病的性质。通过实现自适应套索,SARAL可以将噪声SNV集的影响缩小为零,从而进一步提高预测精度。通过仿真研究,我们证明,总体而言,SARAL可以媲美甚至优于基因组最佳线性无偏预测方法。该方法更进一步应用程序对来自阿尔茨海默氏病的测序数据进行了说明疾病神经影像学倡议。

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