Modelling complex features from histone modification signatures using genetic algorithm for the prediction of enhancer region

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Abstract

Using Genetic Algorithm, this paper presents a modelling method to generate novel logical-based features from DNA sequences enriched with H3K4mel histone signatures. Current histone signature is mostly represented using k-mers content features incapable of representing all the possible complex interactions of various DNA segments. The main contributions are, among others: (a) demonstrating that there are complex interactions among sequence segments in the histone regions; (b) developing a parse tree representation of the logical complex features. The proposed novel feature is compared to the k-mers content features using datasets from the mouse (mm9) genome. Evaluation results show that the new feature improves the prediction performance as shown by f-measure for all datasets tested. Also, it is discovered that treebased features generated from a single chromosome can be generalized to predict histone marks in other chromosomes not used in the training. These findings have a great impact on feature design considerations for histone signatures as well as other classifier design features.

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Lee, N. K., Fong, P. K., & Abdullah, M. T. (2014). Modelling complex features from histone modification signatures using genetic algorithm for the prediction of enhancer region. In Bio-Medical Materials and Engineering (Vol. 24, pp. 3807–3814). IOS Press. https://doi.org/10.3233/BME-141210

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