Please use this identifier to cite or link to this item: http://hdl.handle.net/2445/214854
Title: An integrated machine-learning model to predict nucleosome architecture
Author: Sala Huerta, Alba
Labrador Isern, Mireia
Buitrago, Diana
De Jorge, Pau
Battistini, Federica
Heath, Isabelle Brun
Orozco Lopez, Modesto
Keywords: Astronomia / física
Biochemistry & molecular biology
Biodiversidade
Biotecnología
Ciência da computação
Ciências agrárias i
Ciências biológicas i
Ciências biológicas ii
Ciências biológicas iii
Engenharias ii
Farmacia
Genetics
Interdisciplinar
Matemática / probabilidade e estatística
Medicina i
Medicina ii
Nutrição
Química
Saúde coletiva
Zootecnia / recursos pesqueiros
Issue Date: 20-Aug-2024
Abstract: We demonstrate that nucleosomes placed in the gene body can be accurately located from signal decay theory assuming two emitters located at the beginning and at the end of genes. These generated wave signals can be in phase (leading to well defined nucleosome arrays) or in antiphase (leading to fuzzy nucleosome architectures). We found that the first (+1) and the last (-last) nucleosomes are contiguous to regions signaled by transcription factor binding sites and unusual DNA physical properties that hinder nucleosome wrapping. Based on these analyses, we developed a method that combines Machine Learning and signal transmission theory able to predict the basal locations of the nucleosomes with an accuracy similar to that of experimental MNase-seq based methods. Graphical Abstract
Note: https://doi.org/10.1093/nar/gkae689
It is part of: Nucleic Acids Research, 2024,
URI: http://hdl.handle.net/2445/214854
Related resource: https://doi.org/10.1093/nar/gkae689
ISSN: Sala, Alba; Labrador, Mireia; Buitrago, Diana; De Jorge, Pau; Battistini, Federica; Heath, Isabelle Brun; Orozco, Modesto (2024). An integrated machine-learning model to predict nucleosome architecture. Nucleic Acids Research, (), -. DOI: 10.1093/nar/gkae689
Appears in Collections:Articles publicats en revistes (Institut de Recerca Biomèdica (IRB Barcelona))

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