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An exploratory data analysis method to reveal modular latent structures in high-throughput data

机译:探索性数据分析方法,揭示高通量数据中的模块化潜在结构

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Background Modular structures are ubiquitous across various types of biological networks. The study of network modularity can help reveal regulatory mechanisms in systems biology, evolutionary biology and developmental biology. Identifying putative modular latent structures from high-throughput data using exploratory analysis can help better interpret the data and generate new hypotheses. Unsupervised learning methods designed for global dimension reduction or clustering fall short of identifying modules with factors acting in linear combinations. Results We present an exploratory data analysis method named MLSA (Modular Latent Structure Analysis) to estimate modular latent structures, which can find co-regulative modules that involve non-coexpressive genes. Conclusions Through simulations and real-data analyses, we show that the method can recover modular latent structures effectively. In addition, the method also performed very well on data generated from sparse global latent factor models. The R code is available at http://userwww.service.emory.edu/~tyu8/MLSA/ .
机译:背景技术模块化结构在各种类型的生物网络中无处不在。网络模块化的研究可以帮助揭示系统生物学,进化生物学和发育生物学中的调控机制。使用探索性分析从高通量数据中识别出假定的模块化潜在结构可以帮助更好地解释数据并产生新的假设。专为全局降维或聚类而设计的无监督学习方法无法识别具有线性组合中的因素的模块。结果我们提出了一种探索性数据分析方法,称为MLSA(模块化潜在结构分析),用于估计模块化潜在结构,该结构可以找到涉及非共表达基因的共调节模块。结论通过仿真和真实数据分析,我们表明该方法可以有效地恢复模块化潜在结构。此外,该方法在从稀疏全局潜在因子模型生成的数据上也表现出色。 R代码可从http://userwww.service.emory.edu/~tyu8/MLSA/获得。

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