从合并的药物使用障碍和基因型中合作推断表型。

Jin Lu, Jiangwen Sun, Xinyu Wang, Henry R Kranzler, Joel Gelernter, Jinbo Bi
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引用次数: 0

摘要

对人类复杂疾病(如药物使用障碍)进行大规模遗传研究的数据往往是不完整的。尽管在基因型估算(如 IMPUTE2 方法)方面取得了很大进展,但在推断表型方面的进展却少得多。我们设计了一种新方法,将个人的合并症与其基因型数据整合在一起,以推断缺失的(未报告的)疾病诊断标准。我们的方法的前提是症状之间的相关性以及并发症(如对可卡因和阿片类药物的共同依赖)的共同生物学基础。我们介绍了一种矩阵补全方法,该方法基于基因型和相关疾病的已知症状之间的相互作用构建一个双线性模型,以推断另一组症状或表型的未知值。为了解决提出的优化问题,我们开发了一种基于线性化交替乘法的高效随机并行算法。通过案例研究对该方法与其他先进的数据矩阵补全方法进行的经验评估表明,该方法既能显著提高估算精度,又能提供更高的计算效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Collaborative Phenotype Inference from Comorbid Substance Use Disorders and Genotypes.

Collaborative Phenotype Inference from Comorbid Substance Use Disorders and Genotypes.

Collaborative Phenotype Inference from Comorbid Substance Use Disorders and Genotypes.

Collaborative Phenotype Inference from Comorbid Substance Use Disorders and Genotypes.

Data in large-scale genetic studies of complex human diseases, such as substance use disorders, are often incomplete. Despite great progress in genotype imputation, e.g., the IMPUTE2 method, considerably less progress has been made in inferring phenotypes. We designed a novel approach to integrate individuals' comorbid conditions with their genotype data to infer missing (unreported) diagnostic criteria of a disorder. The premise of our approach derives from correlations among symptoms and the shared biological bases of concurrent disorders such as co-dependence on cocaine and opioids. We describe a matrix completion method to construct a bi-linear model based on the interactions of genotypes and known symptoms of related disorders to infer unknown values of another set of symptoms or phenotypes. An efficient stochastic and parallel algorithm based on the linearized alternating direction method of multipliers was developed to solve the proposed optimization problem. Empirical evaluation of the approach in comparison with other advanced data matrix completion methods via a case study shows that it both significantly improves imputation accuracy and provides greater computational efficiency.

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