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Gibbs Sampling Based Banoian Biclustering of Gene Expression Data

机译:基于Gibbs抽样的基因表达数据的Banoian双聚类

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摘要

This paper proposes a rigorous Bayes model to infer biclusters of microarray data formed by gene sets and condition sets. The model employs few fine-tune threshold parameters and handles missing data by statistically inferring them in Gibbs sampling. The proposed model outperforms others on simulated data and discovered meaningful local patterns, 63% of which were corroborated by biological evidence.
机译:本文提出了一种严格的贝叶斯模型来推断由基因集和条件集形成的微阵列数据的二聚体。该模型使用了一些微调阈值参数,并通过在Gibbs采样中进行统计推断来处理丢失的数据。拟议的模型在模拟数据上胜过其他模型,并发现了有意义的局部模式,其中有63%被生物学证据证实。

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