Comprehensive mapping of transcription factor binding sites is essential in postgenomic biology. For this, we propose a mining approach combining noisy data from ChIP (chromatin immunoprecipitation)-chip experiments with known binding site patterns. Our method (BoCaTFBS) uses boosted cascades of classifiers for optimum efficiency, in which components are alternating decision trees; it exploits interpositional correlations; and it explicitly integrates massive negative information from ChIP-chip experiments. We applied BoCaTFBS within the ENCODE project and showed that it outperforms many traditional binding site identification methods (for instance, profiles). © 2006 Wang et al.; licensee BioMed Central Ltd.
CITATION STYLE
Wang, L. yong, Snyder, M., & Gerstein, M. (2006). BoCaTFBS: A boosted cascade learner to refine the binding sites suggested by ChIP-chip experiments. Genome Biology, 7(11). https://doi.org/10.1186/gb-2006-7-11-r102
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