A Hidden Markov Model approach to predicting yeast gene function from sequential gene expression data
by Xutao Deng, Huimin Geng, Hesham H. Ali
International Journal of Bioinformatics Research and Applications (IJBRA), Vol. 4, No. 3, 2008

Abstract: Existing data mining tools can only achieve about 40% precision in function prediction of unannotated genes. We developed a gene function prediction tool based on profile Hidden Markov Models (HMMs). Each function class was modelled using a distinct HMM whose parameters were trained using yeast time-series gene expression profiles. Two structural variants of HMMs were designed and tested, each of them on 40 function classes. The highest overall prediction precision achieved was 67% using double-split HMM with leave-one-out cross-validation. We also attempted to generalise HMMs to dynamic Bayesian networks for gene function prediction using heterogeneous data sets.

Online publication date: Thu, 17-Jul-2008

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