Researchers analyzed methylomes, transcriptomes, and genomes from 943 individuals to characterize and identify genes that exhibit distinct on-off switches and explore their epigenetic and genetic regulation.
Their analyses identified 473 predominantly tissue-specific genes linked to diseases such as skin, metabolic, and immune disorders or cancer. Epigenetic silencing explains the universally switch-like behavior of genes, but tissue-specific patterns are explained by hormone regulation.
Study
The researchers of this study hypothesized that switch-like gene expression is widespread yet often tissue-specific, with significant implications for common diseases, and that identifying such genes could aid early diagnosis and improve understanding of disease mechanisms.
They focused on 27 tissues and 19,121 genes with sufficiently high expression. Expression data were log-transformed and corrected for technical confounders using principal component analysis and generalized additive models, with surgical cohort samples excluded to minimize bias.
Bimodal gene expression was identified using a two-round dip test, with empirical recalibration to control for false discovery rates, and effect-size thresholds were adjusted for low expression levels.
Functional enrichment for biological processes and disease associations was assessed before co-expression analyses explored how switch-like genes behave across tissues and within individual tissues.
Additional analyses tested links with DNA methylation, sex, age, and body mass index (BMI) by applying strict multiple-testing corrections. Tissue-specific expression patterns were discretized using kernel density estimation, and immunohistochemistry validated selected gene expression in vaginal tissue.
Results
Researchers analyzed over 19,000 highly expressed genes across 27 human tissues and identified 473 genes exhibiting switch-like, bimodal expression, i.e., being either completely on or completely off in different individuals.
These genes are enriched in biological pathways associated with metabolic, immune, and skin processes, as well as various cancers. Most switch-like genes display tissue-specific patterns, while approximately 8.5% exhibit universally bimodal expression across all tissues, primarily due to genetic factors such as the presence of the Y-chromosome, structural variants, or loss-of-function mutations.
A notable example is a common gene deletion that causes two genes (USP32P2 and FAM106A) to be universally switched off, possibly influencing infertility and the severity of coronavirus disease 2019 (COVID-19). Additionally, hormones coordinate tissue-specific expression, with an extreme sex bias observed: 157 of 158 breast-specific switch-like genes are female-biased, and age correlates with uterine gene switching (e.g., TP53INP2 downregulation, which impacts fertility).
Conclusion
This study systematically explored how genetic and epigenetic factors shape switch-like gene expression across multiple tissues, uncovering 473 such genes. Most show tissue-specific patterns, regulated by hormones and DNA methylation, while a small fraction are universally switch-like due to genetic variants.
Key insights link these genes to hormonal disorders, infections, and cancer. Two research priorities emerge: using long-read sequencing to uncover hidden structural variants (e.g., unsolved cases like GPX1P1), and integrating switch-like states into gene-environment studies (e.g., GSTM1 deletion + maternal smoking → asthma risk).
A major strength is the multi-layered analysis combining genomes, transcriptomes, and methylomes from nearly a thousand individuals. However, a limitation is that RNA-level bimodality may not directly translate to protein-level effects due to regulatory mechanisms that buffer protein expression.
The study emphasizes experimental validation of driver genes and diverse cohort studies. Overall, this work advances understanding of gene regulation and suggests new ways to predict and manage disease risk through personalized approaches.
Source:
https://www.news-medical.net/news/20250622/Scientists-discover-onoff-gene-switches-that-could-revolutionize-personalized-medicine.aspx