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More accurate semiparametric regression in pharmacogenomics

机译:药物基因组学中更准确的半参数回归

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A key step in pharmacogenomic studies is the development of accurate prediction models for drug response based on individuals’ genomic information. Recent interest has centered on semiparametric models based on kernel machine regression, which can flexibly model the complex relationships between gene expression and drug response. However, performance suffers if irrelevant covariates are unknowingly included when training the model. We propose a new semi-parametric regression procedure, based on a novel penalized garrotized kernel machine (PGKM), which can better adapt to the presence of irrelevant covariates while still allowing for a complex nonlinear model and gene-gene interactions. We study the performance of our approach in simulations and in a pharmacogenomic study of the renal carcinoma drug temsirolimus. Our method predicts plasma concentration of temsirolimus as well as standard kernel machine regression when no irrelevant covariates are included in training, but has much higher prediction accuracy when the truly important covariates are not known in advance. Supplemental materials, including $mathrm{R}$ code used in this manuscript, are available online at $href{http://intlpress.com/site/pub/files/_supp/SII-2018-11-4-s2.zip}{small{exttt{http://intlpress.com/site/pub/files/_supp/SII-2018-11-4-s2.zip}}}$.
机译:药物基因组学研究的关键步骤是根据个人的基因组信息开发准确的药物反应预测模型。最近的兴趣集中在基于核机器回归的半参数模型上,该模型可以灵活地模拟基因表达与药物反应之间的复杂关系。但是,如果在训练模型时不知不觉地包含了不相关的协变量,则性能会受到影响。我们提出了一种基于新型惩罚性Garrotized核机器(PGKM)的新半参数回归程序,该程序可以更好地适应无关协变量的存在,同时仍允许复杂的非线性模型和基因-基因相互作用。我们研究了我们的方法在肾癌药物西罗莫司的模拟和药物基因组学研究中的性能。当训练中不包含无关的协变量时,我们的方法可以预测西罗莫司的血浆浓度以及标准的核仁回归分析,但是当事先不知道真正重要的协变量时,我们的方法可以提供更高的预测精度。可在$ href {http://intlpress.com/site/pub/files/_supp/SII-2018-11-4-s2上在线获取补充材料,包括本手稿中使用的$ mathrm {R} $代码。 .zip} { small { texttt {http://intlpress.com/site/pub/files/_supp/SII-2018-11-4-s2.zip}}} $。

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