Design of Machine Learning Models for the Prediction of Transcription Factor Binding Regions in Bacterial DNA
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Alvarez-Gonzalez, Sara; Erill, Ivan; Design of Machine Learning Models for the Prediction of Transcription Factor Binding Regions in Bacterial DNA; 4th XoveTIC Conference, Engineering Proceedings 7, no. 1: 5, 29 October, 2021; https://doi.org/10.3390/engproc2021007059
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Attribution 4.0 International (CC BY 4.0)
Attribution 4.0 International (CC BY 4.0)
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Abstract
Transcription Factors (TFs) are proteins that regulate the expression of genes by binding to their promoter regions. There is great interest in understanding in which regions TFs will bind to the DNA sequence of an organism and the possible genetic implications that this entails. Occasionally, the sequence patterns (motifs) that a TF binds are not well defined. In this work, machine learning (ML) models were applied to TF binding data from ChIP-seq experiments. The objective was to detect patterns in TF binding regions that involved structural (DNAShapeR) and compositional (kmers) characteristics of the DNA sequence. After the application of random forest and Glmnet ML techniques with both internal and external validation, it was observed that two types of generated descriptors (HelT and tetramers) were significantly better than the others in terms of prediction, achieving values of more than 90%.