Bayesian Unsupervised Learning of DNA Regulatory Binding Regions

Author:

Corander Jukka1,Ekdahl Magnus2,Koski Timo3

Affiliation:

1. Department of Mathematics, Åbo Akademi University, 20500 Turku, Finland

2. Department of Mathematics, University of Linköping, 58183 Linköping, Sweden

3. Department of Mathematics, The Royal Institute of Technology, 100 44 Stockholm, Sweden

Abstract

Identification of regulatory binding motifs, that is, short specific words, within DNA sequences is a commonly occurring problem in computational bioinformatics. A wide variety of probabilistic approaches have been proposed in the literature to either scan for previously known motif types or to attempt de novo identification of a fixed number (typically one) of putative motifs. Most approaches assume the existence of reliable biodatabase information to build probabilistic a priori description of the motif classes. Examples of attempts to do probabilistic unsupervised learning about the number of putative de novo motif types and their positions within a set of DNA sequences are very rare in the literature. Here we show how such a learning problem can be formulated using a Bayesian model that targets to simultaneously maximize the marginal likelihood of sequence data arising under multiple motif types as well as under the background DNA model, which equals a variable length Markov chain. It is demonstrated how the adopted Bayesian modelling strategy combined with recently introduced nonstandard stochastic computation tools yields a more tractable learning procedure than is possible with the standard Monte Carlo approaches. Improvements and extensions of the proposed approach are also discussed.

Funder

Swedish Research Council

Publisher

Hindawi Limited

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Sparse Markov Chains for Sequence Data;Scandinavian Journal of Statistics;2013-10-31

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