| Literature DB >> 32416068 |
Ariel Erijman1, Lukasz Kozlowski2, Salma Sohrabi-Jahromi2, James Fishburn1, Linda Warfield1, Jacob Schreiber3, William S Noble4, Johannes Söding5, Steven Hahn6.
Abstract
Acidic transcription activation domains (ADs) are encoded by a wide range of seemingly unrelated amino acid sequences, making it difficult to recognize features that promote their dynamic behavior, "fuzzy" interactions, and target specificity. We screened a large set of random 30-mer peptides for AD function in yeast and trained a deep neural network (ADpred) on the AD-positive and -negative sequences. ADpred identifies known acidic ADs within transcription factors and accurately predicts the consequences of mutations. Our work reveals that strong acidic ADs contain multiple clusters of hydrophobic residues near acidic side chains, explaining why ADs often have a biased amino acid composition. ADs likely use a binding mechanism similar to avidity where a minimum number of weak dynamic interactions are required between activator and target to generate biologically relevant affinity and in vivo function. This mechanism explains the basis for fuzzy binding observed between acidic ADs and targets.Entities:
Keywords: activator; allovalency; avidity; coactivator; deep learning; enhancer; intrinsically disordered protein; machine learning; transcription activation; transcriptional regulation
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Year: 2020 PMID: 32416068 PMCID: PMC7275923 DOI: 10.1016/j.molcel.2020.04.020
Source DB: PubMed Journal: Mol Cell ISSN: 1097-2765 Impact factor: 17.970