A Hidden Markov Model approach to predicting yeast gene function from sequential gene expression data Online publication date: Thu, 17-Jul-2008
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.
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