Enhanced regulatory sequence prediction using gapped k-mer features.

Título

Enhanced regulatory sequence prediction using gapped k-mer features.

Autor

Mahmoud Ghandi, Dong Won Lee, Morteza Mohammad-Noori, Michael A Beer

Descripción

Oligomers of length k, or k-mers, are convenient and widely used features for modeling the properties and functions of DNA and protein sequences. However, k-mers suffer from the inherent limitation that if the parameter k is increased to resolve longer features, the probability of observing any specific k-mer becomes very small, and k-mer counts approach a binary variable, with most k-mers absent and a few present once. Thus, any statistical learning approach using k-mers as features becomes susceptible to noisy training set k-mer frequencies once k becomes large. To address this problem, we introduce alternative feature sets using gapped k-mers, a new classifier, gkm-SVM, and a general method for robust estimation of k-mer frequencies. To make the method applicable to large-scale genome wide applications, we develop an efficient tree data structure for computing the kernel matrix. We show that compared to our original kmer-SVM and alternative approaches, our gkm-SVM predicts functional genomic regulatory elements and tissue specific enhancers with significantly improved accuracy, increasing the precision by up to a factor of two. We then show that gkm-SVM consistently outperforms kmer-SVM on human ENCODE ChIP-seq datasets, and further demonstrate the general utility of our method using a Naïve-Bayes classifier. Although developed for regulatory sequence analysis, these methods can be applied to any sequence classification problem.

Fecha

2014

Identificador

DOI: 10.1371/journal.pcbi.1003711

Fuente

PLoS Computational Biology

Editor

Public Library of Science (PLoS)

Cobertura

Biology (General)

Idioma

EN

Archivos

https://socictopen.socict.org/files/to_import/pdfs/article 492.pdf

Colección

Citación

Mahmoud Ghandi, Dong Won Lee, Morteza Mohammad-Noori, Michael A Beer, “Enhanced regulatory sequence prediction using gapped k-mer features.,” SOCICT Open, consulta 20 de abril de 2026, https://socictopen.socict.org/items/show/465.

Formatos de Salida

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