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Background: Researchers have long studied the regulatory processes of genes to uncover their functions. Gene regulatory network analysis is one of the popular approaches for understanding these processes, requiring accurate identification of interactions among the genes to establish the gene regulatory network. Advances in genome-wide association studies and expression quantitative trait loci studies have led to a wealth of genomic data, facilitating more accurate inference of gene-gene interactions. However, unknown confounding factors may influence these interactions, making their interpretation complicated. Mendelian randomization (MR) has emerged as a valuable tool for causal inference in genetics, addressing confounding effects by estimating causal relationships using instrumental variables. In this paper, we propose a new statistical method, MR-GGI, for accurately inferring gene-gene interactions using Mendelian randomization.
Results: MR-GGI applies one gene as the exposure and another as the outcome, using causal cis-single-nucleotide polymorphisms as instrumental variables in the inverse-variance weighted MR model. Through simulations, we have demonstrated MR-GGI's ability to control type 1 error and maintain statistical power despite confounding effects. MR-GGI performed the best when compared to other methods using the F1 score on the DREAM5 dataset. Additionally, when applied to yeast genomic data, MR-GGI successfully identified six clusters. Through gene ontology analysis, we have confirmed that each cluster in our study performs distinct functional roles by gathering genes with specific functions.
Conclusion: These findings demonstrate that MR-GGI accurately inferences gene-gene interactions despite the confounding effects in real biological environments.
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http://dx.doi.org/10.1186/s12859-024-05808-4 | DOI Listing |
Front Biosci (Landmark Ed)
August 2025
Institute of Statistics, National University of Kaohsiung, 811 Kaohsiung, Taiwan.
Background: Obesity is a chronic condition linked to health issues such as diabetes, heart disease, and increased cancer risk. High body mass index (BMI) is associated with cancers such as breast and colorectal cancer due to hormone imbalances and inflammation from excess fat, whereas a low BMI can raise cancer risk by weakening the immune system. Maintaining a normal BMI improves cancer treatment outcomes, but in some cases, higher BMI might offer protective effects-a phenomenon known as the "obesity paradox".
View Article and Find Full Text PDFPLoS Comput Biol
September 2025
School of Computer Software, College of Intelligence and Computing, Tianjin University, Tianjin, China.
Drug-induced liver injury is a leading cause of high attrition rates for both candidate drugs and marketed medications. Previous in silico models may not effectively utilize biological drug property information and often lack robust model validation. In this study, we developed a graph convolutional network embedded with a biological graph learning (BioGL) module-named BioGL-GCN(Biological Graph Learning-Graph Convolutional Network)-for drug-induced liver injury prediction using toxicogenomic profiles.
View Article and Find Full Text PDFCancer Causes Control
September 2025
Orthopedics department, Guangdong Provincial Hospital of Chinese Medicine (The Second Affiliated Hospital of Guangzhou University of Chinese Medicine), Guangzhou, China.
Background: Bone metastasis (BM) in breast cancer affects patient prognosis, but its molecular mechanisms and relationship with the gut microbiome are not well understood. This study aims to explore gene expression and gut microbiome differences between BM and non-bone metastasis (BNM) patients, which could shed light on cancer progression and metastasis.
Methods: We utilized a multi-omics approach, integrating transcriptomic and microbiomic data.
Toxicol Ind Health
September 2025
Faculty of Pharmacy, Department of Pharmaceutical Toxicology, Biruni University, İstanbul, Türkiye.
Neonicotinoid insecticides and triazole fungicides are widely used in agriculture, often in combination with other pesticides, leading to concerns about potential health effects. This study investigated the combined effect of these chemicals using the Comparative Toxicogenomics Database (CTD) to identify common target genes, followed by functional enrichment analysis and gene-gene and protein-protein interaction assessments. In this study, it was determined that pesticides may interfere with biological processes such as steroid hydroxylase activity, oxidoreductase activity, and steroid metabolism, and cause hormonal imbalances and endocrine system disorders.
View Article and Find Full Text PDFPest Manag Sci
September 2025
Saint-Jean-sur-Richelieu Research and Development Centre, Agriculture and Agri-Food Canada, Saint-Jean-sur-Richelieu, Quebec, Canada.
Background: Glyphosate resistance in Conyza canadensis (Canada fleabane) has been primarily attributed to non-target-site resistance (NTSR) mechanisms such as vacuolar sequestration, though these have not been formally elucidated. While a target-site mutation at EPSPS2 (P106S) was recently identified, it failed to account for many resistant cases. These findings underscore the need to re-evaluate the genetic basis of glyphosate resistance in this species.
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