4.6 Article

Nonlinear physics opens a new paradigm for accurate transcription start site prediction

期刊

BMC BIOINFORMATICS
卷 23, 期 1, 页码 -

出版社

BMC
DOI: 10.1186/s12859-022-05129-4

关键词

DNA modelling; DNA breathing; Machine Learning; TSS prediction; SVM; String kernels

资金

  1. Junta de Andalucia
  2. Ministry of Science, Innovation and Universities [UCO1264182]
  3. European Union FEDER funds [PID2019-109481GB-I00/AEI]
  4. University of Burgos

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This article explores the use of a physical model as an additional information source to improve the prediction of transcription start sites. The study shows that the physical model can accurately predict these sites and opens up new possibilities for research at the intersection of statistical mechanics and machine learning.
There is evidence that DNA breathing (spontaneous opening of the DNA strands) plays a relevant role in the interactions of DNA with other molecules, and in particular in the transcription process. Therefore, having physical models that can predict these openings is of interest. However, this source of information has not been used before either in transcription start sites (TSSs) or promoter prediction. In this article, one such model is used as an additional information source that, when used by a machine learning (ML) model, improves the results of current methods for the prediction of TSSs. In addition, we provide evidence on the validity of the physical model, as it is able by itself to predict TSSs with high accuracy. This opens an exciting avenue of research at the intersection of statistical mechanics and ML, where ML models in bioinformatics can be improved using physical models of DNA as feature extractors.

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