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1.
Nature ; 626(7997): 151-159, 2024 Feb.
Article in English | MEDLINE | ID: mdl-38233525

ABSTRACT

Enhancers control the location and timing of gene expression and contain the majority of variants associated with disease1-3. The ZRS is arguably the most well-studied vertebrate enhancer and mediates the expression of Shh in the developing limb4. Thirty-one human single-nucleotide variants (SNVs) within the ZRS are associated with polydactyly4-6. However, how this enhancer encodes tissue-specific activity, and the mechanisms by which SNVs alter the number of digits, are poorly understood. Here we show that the ETS sites within the ZRS are low affinity, and identify a functional ETS site, ETS-A, with extremely low affinity. Two human SNVs and a synthetic variant optimize the binding affinity of ETS-A subtly from 15% to around 25% relative to the strongest ETS binding sequence, and cause polydactyly with the same penetrance and severity. A greater increase in affinity results in phenotypes that are more penetrant and more severe. Affinity-optimizing SNVs in other ETS sites in the ZRS, as well as in ETS, interferon regulatory factor (IRF), HOX and activator protein 1 (AP-1) sites within a wide variety of enhancers, cause gain-of-function gene expression. The prevalence of binding sites with suboptimal affinity in enhancers creates a vulnerability in genomes whereby SNVs that optimize affinity, even slightly, can be pathogenic. Searching for affinity-optimizing SNVs in genomes could provide a mechanistic approach to identify causal variants that underlie enhanceropathies.


Subject(s)
Enhancer Elements, Genetic , Extremities , Polydactyly , Proto-Oncogene Proteins c-ets , Humans , Enhancer Elements, Genetic/genetics , Extremities/embryology , Extremities/pathology , Gain of Function Mutation , Homeodomain Proteins/metabolism , Interferon Regulatory Factors/metabolism , Organ Specificity/genetics , Penetrance , Phenotype , Polydactyly/embryology , Polydactyly/genetics , Polydactyly/pathology , Polymorphism, Single Nucleotide , Protein Binding , Proto-Oncogene Proteins c-ets/metabolism , Transcription Factor AP-1/metabolism
2.
Dev Cell ; 58(21): 2206-2216.e5, 2023 11 06.
Article in English | MEDLINE | ID: mdl-37848026

ABSTRACT

Transcriptional enhancers direct precise gene expression patterns during development and harbor the majority of variants associated with phenotypic diversity, evolutionary adaptations, and disease. Pinpointing which enhancer variants contribute to changes in gene expression and phenotypes is a major challenge. Here, we find that suboptimal or low-affinity binding sites are necessary for precise gene expression during heart development. Single-nucleotide variants (SNVs) can optimize the affinity of ETS binding sites, causing gain-of-function (GOF) gene expression, cell migration defects, and phenotypes as severe as extra beating hearts in the marine chordate Ciona robusta. In human induced pluripotent stem cell (iPSC)-derived cardiomyocytes, a SNV within a human GATA4 enhancer increases ETS binding affinity and causes GOF enhancer activity. The prevalence of suboptimal-affinity sites within enhancers creates a vulnerability whereby affinity-optimizing SNVs can lead to GOF gene expression, changes in cellular identity, and organismal-level phenotypes that could contribute to the evolution of novel traits or diseases.


Subject(s)
Enhancer Elements, Genetic , Induced Pluripotent Stem Cells , Humans , Enhancer Elements, Genetic/genetics , Myocytes, Cardiac/metabolism , Binding Sites , Nucleotides
3.
Nat Comput Sci ; 3(11): 946-956, 2023 Nov.
Article in English | MEDLINE | ID: mdl-38177592

ABSTRACT

Deep learning has become a popular tool to study cis-regulatory function. Yet efforts to design software for deep-learning analyses in regulatory genomics that are findable, accessible, interoperable and reusable (FAIR) have fallen short of fully meeting these criteria. Here we present elucidating the utility of genomic elements with neural nets (EUGENe), a FAIR toolkit for the analysis of genomic sequences with deep learning. EUGENe consists of a set of modules and subpackages for executing the key functionality of a genomics deep learning workflow: (1) extracting, transforming and loading sequence data from many common file formats; (2) instantiating, initializing and training diverse model architectures; and (3) evaluating and interpreting model behavior. We designed EUGENe as a simple, flexible and extensible interface for streamlining and customizing end-to-end deep-learning sequence analyses, and illustrate these principles through application of the toolkit to three predictive modeling tasks. We hope that EUGENe represents a springboard towards a collaborative ecosystem for deep-learning applications in genomics research.


Subject(s)
Genomics , Genome , Software , Workflow
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