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MRHMMs: Multivariate Regression Hidden Markov Models and the variantS

机译:MRHMM:多元回归隐马尔可夫模型和变量S

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摘要

Hidden Markov models (HMMs) are flexible and widely used in scientific studies. Particularly in genomics and genetics, there are multiple distinct regimes in the genome within each of which the relationships among multivariate features are distinct. Examples include differential gene regulation depending on gene functions and experimental conditions, and varying combinatorial patterns of multiple transcription factors. We developed a software package called MRHMMs (Multivariate Regression Hidden Markov Models and the variantS) that accommodates a variety of HMMs that can be flexibly applied to many biological studies and beyond. MRHMMs supplements existing HMM software packages in two aspects. First, MRHMMs provides a diverse set of emission probability structures, including mixture of multivariate normal distributions and (logistic) regression models. Second, MRHMMs is computationally efficient for analyzing large data-sets generated in current genome-wide studies. Especially, the software is written in C for the speed advantage and further amenable to implement alternative models to meet users' own purposes.
机译:隐马尔可夫模型(HMM)灵活并且广泛用于科学研究中。特别是在基因组学和遗传学中,基因组中存在多种不同的机制,其中每一种的多元特征之间的关系是不同的。实例包括取决于基因功能和实验条件的差异基因调控,以及多种转录因子的不同组合模式。我们开发了一个名为MRHMMs(多元回归隐马尔可夫模型和variantS)的软件包,该软件包可容纳可灵活应用于许多生物学研究及其他领域的多种HMM。 MRHMM在两个方面补充了现有的HMM软件包。首先,MRHMM提供了多种排放概率结构,包括多元正态分布和(逻辑)回归模型的混合。其次,MRHMMs在分析当前全基因组研究中产生的大数据集方面具有计算效率。特别是,该软件是用C编写的,以提高速度并进一步实现其他模型以满足用户自己的目的。

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