Weighted Gene Correlation Network Meta-Analysis Reveals Functional Candidate Genes Associated with High- and Sub-Fertile Reproductive Performance in Beef Cattle.
Pablo Augusto de Souza FonsecaAroa Suárez-VegaAngela CánovasPublished in: Genes (2020)
Improved reproductive efficiency could lead to economic benefits for the beef industry, once the intensive selection pressure has led to a decreased fertility. However, several factors limit our understanding of fertility traits, including genetic differences between populations and statistical limitations. In the present study, the RNA-sequencing data from uterine samples of high-fertile (HF) and sub-fertile (SF) animals was integrated using co-expression network meta-analysis, weighted gene correlation network analysis, identification of upstream regulators, variant calling, and network topology approaches. Using this pipeline, top hub-genes harboring fixed variants (HF × SF) were identified in differentially co-expressed gene modules (DcoExp). The functional prioritization analysis identified the genes with highest potential to be key-regulators of the DcoExp modules between HF and SF animals. Consequently, 32 functional candidate genes (10 upstream regulators and 22 top hub-genes of DcoExp modules) were identified. These genes were associated with the regulation of relevant biological processes for fertility, such as embryonic development, germ cell proliferation, and ovarian hormone regulation. Additionally, 100 candidate variants (single nucleotide polymorphisms (SNPs) and insertions and deletions (INDELs)) were identified within those genes. In the long-term, the results obtained here may help to reduce the frequency of subfertility in beef herds, reducing the associated economic losses caused by this condition.
Keyphrases
- network analysis
- genome wide
- genome wide identification
- copy number
- bioinformatics analysis
- dna methylation
- systematic review
- transcription factor
- genome wide analysis
- cell proliferation
- meta analyses
- magnetic resonance
- climate change
- gene expression
- poor prognosis
- big data
- electronic health record
- young adults
- acute heart failure
- computed tomography
- magnetic resonance imaging
- childhood cancer
- risk assessment
- contrast enhanced
- case control
- atrial fibrillation