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Detecting networks of genes associated with human drug induced liver injury (DILI) concern using sparse principal components

机译:使用稀疏主成分检测与人类药物性肝损伤(DILI)相关的基因网络

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The 12th Annual International Conference on the Critical Assessment of Massive Data Analysis (CAMDA) used data from the massive Japanese Toxicogenomics Project (TGP) to predict drug-induced liver injury (DILI) concern provided by the U.S. Food and Drug Administration (FDA). The challenge was to predict DILI concern by means of gene expression data. Analysis of this high-dimensional toxicogenomic data requires statistical methodologies that can detect the transcriptomic associations with toxicity. We propose an analysis technique that involves sparse principal component analysis to efficiently reduce the dimension of the analysis problem. Sparse principal component variables are composed of groups of expressed genes. Associations between DILI concern and sparse principal component variables were tested and further scrutinized with sparse regression methodology to identify concise transcriptomic structures potentially responsible for and predictive of drug toxicity. Working with a subset of the TGP data with FDA DILI concern classification, we identified 5 transcriptomic structures (sparse principal component variables) statistically associated with DILI concern. The most statistically significant structure consists of the genes ZBTB16, FLVCR2, TN53, and ASB13. Sparse statistical methods offer a new way to handle analysis issues with massive omic data. Sparse PCA can efficiently extract groups of transcriptomic markers that may indicate drug toxicity.
机译:第12届年度大规模数据分析关键评估国际会议(CAMDA)使用来自日本大规模毒物基因组计划(TGP)的​​数据来预测美国食品药品监督管理局(FDA)提供的药物诱发的肝损伤(DILI)问题。面临的挑战是通过基因表达数据来预测DILI的问题。对这种高维毒物基因组数据的分析需要能够检测与毒性相关的转录组关联的统计方法。我们提出一种分析技术,其中涉及稀疏主成分分析,以有效地减小分析问题的范围。稀疏的主成分变量由表达的基因组组成。测试了DILI关注点与稀疏主成分变量之间的关联,并使用稀疏回归方法进行了进一步审查,以鉴定可能负责和预测药物毒性的简洁转录组结构。使用FDA DILI关注分类的TGP数据的子集,我们确定了与DILI关注统计相关的5个转录组结构(稀疏的主成分变量)。统计上最重要的结构由基因ZBTB16,FLVCR2,TN53和ASB13组成。稀疏的统计方法提供了一种处理大量眼科数据的分析问题的新方法。稀疏PCA可以有效地提取可能表明药物毒性的转录组标记物组。

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