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Gene prioritization using Bayesian matrix factorization with genomic and phenotypic side information

机译:基因优先考虑采用基因组和表型侧信息的贝叶斯矩阵分解

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Motivation: Most gene prioritization methods model each disease or phenotype individually, but this fails to capture patterns common to several diseases or phenotypes. To overcome this limitation, we formulate the gene prioritization task as the factorization of a sparsely filled gene-phenotype matrix, where the objective is to predict the unknown matrix entries. To deliver more accurate gene-phenotype matrix completion, we extend classical Bayesian matrix factorization to work with multiple side information sources. The availability of side information allows us to make non-trivial predictions for genes for which no previous disease association is known.
机译:动机:大多数基因优先化方法单独模拟每种疾病或表型,但这未能捕获几种疾病或表型共同的模式。 为了克服这种限制,我们将基因优先化任务制定为稀疏填充的基因表型矩阵的分解,其中目标是预测未知的矩阵条目。 为了提供更准确的基因表型矩阵完成,我们扩展了经典的贝叶斯矩阵分解,以便使用多个侧面信息来源。 侧面信息的可用性使我们能够对未知未知的疾病关联的基因进行非琐碎的预测。

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