Integrative Omics Analyses across Multiple Conditions Using Tensor Decomposition and Regularization

来源 :上海交通大学 | 被引量 : 0次 | 上传用户:qq793053
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  Advances in technology have led to generation of omics data(such as genetics,transcriptomics,metabolomics data),which in some studies may be collected from multiple conditions(e.g.,cell types,tissue samples,disease states).Such data can be analyzed to explore expression quantitative trait loci(eQTL)or metabolomic quantitative trait loci(mQTL)networks across multiple conditions.
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