Structure-based learning to predict and model protein-DNA interactions and transcription-factor co-operativity in cis -regulatory elements.
Fornes OriolMeseguer AlbertoAguirre-Plans JoachimGohl PatrickBota Patricia MMolina-Fernández RubenBonet JaumeChinchilla-Hernandez AltairPegenaute FerranGallego OriolFernandez-Fuentes NarcisBaldomero Oliva MiguelPublished in: NAR genomics and bioinformatics (2024)
Transcription factor (TF) binding is a key component of genomic regulation. There are numerous high-throughput experimental methods to characterize TF-DNA binding specificities. Their application, however, is both laborious and expensive, which makes profiling all TFs challenging. For instance, the binding preferences of ∼25% human TFs remain unknown; they neither have been determined experimentally nor inferred computationally. We introduce a structure-based learning approach to predict the binding preferences of TFs and the automated modelling of TF regulatory complexes. We show the advantage of using our approach over the classical nearest-neighbor prediction in the limits of remote homology. Starting from a TF sequence or structure, we predict binding preferences in the form of motifs that are then used to scan a DNA sequence for occurrences. The best matches are either profiled with a binding score or collected for their subsequent modeling into a higher-order regulatory complex with DNA. Co-operativity is modelled by: (i) the co-localization of TFs and (ii) the structural modeling of protein-protein interactions between TFs and with co-factors. We have applied our approach to automatically model the interferon-β enhanceosome and the pioneering complexes of OCT4, SOX2 (or SOX11) and KLF4 with a nucleosome, which are compared with the experimentally known structures.
Keyphrases
- transcription factor
- dna binding
- protein protein
- high throughput
- genome wide identification
- circulating tumor
- single cell
- computed tomography
- binding protein
- small molecule
- endothelial cells
- cell free
- magnetic resonance imaging
- dendritic cells
- high resolution
- optical coherence tomography
- decision making
- dna methylation
- nucleic acid
- contrast enhanced