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A Latent Feature Model Approach to Biclustering

机译:潜在特征模型方法

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Biclustering is the unsupervised learning task of mining a data matrix for, useful submatrices, for instance groups of genes that are co-expressed under particular biological conditions. As these submatrices are expected to partly overlap, a significant challenge in biclustering is to develop methods that are able to detect overlapping biclusters. The authors propose a probabilistic mixture modelling framework for biclustering biological data that lends itself to various data types and allows biclusters to overlap. Their framework is akin to the latent feature and mixture-of-experts model families, with inference and parameter estimation being performed via a variational expectation-maximization algorithm. The model compares favorably with competing approaches, both in a binary DNA copy number variation data set and in a miRNA expression data set, indicating that it may potentially be used as a general-problem solving tool in biclustering.
机译:比对是为有用的子矩阵(例如在特定生物学条件下共同表达的基因组)挖掘数据矩阵的无监督学习任务。由于这些子矩阵预计会部分重叠,因此在双聚类分析中面临的一项重大挑战是开发能够检测重叠双聚类分析方法。作者提出了一种用于生物数据聚类的概率混合建模框架,该框架适用于各种数据类型并允许生物聚类重叠。它们的框架类似于潜在特征和专家混合模型系列,其中推理和参数估计是通过变分期望最大化算法执行的。该模型在二进制DNA拷贝数变异数据集和miRNA表达数据集中均优于竞争方法,表明该模型有可能被用作双聚类中的一般问题解决工具。

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