- Animal health
- Animal models
- Bioinformatics / Artificial intelligence
- Cancers of the Reproductive Systems
- Cell Biology
- Dairy production
- Developmental Biology
- Embryology
- Epigenetics
- Female Reproductive Biology
- Genetics / Genomics
- Hormonal Regulation / Endocrinology
- Immunology / Inflammation
- Implantation and Pregnancy
- Infectious diseases / Epidemiology
- Infertility
- Male Reproductive Biology
- Molecular Biology
- Multiomics
- Reproductive Biotechnology
- Sexual Behavior
- Toxicology

Juan Carlos Arango Sabogal applies machine learning techniques and Bayesian statistical models to optimize the detection, prevention, and control of infectious diseases in dairy cattle and horses, thereby strengthening reproductive health and herd sustainability.
Simon Dufour develops data visualization and analysis tools to monitor antimicrobial use and investigate the causes of fetal loss in cattle, particularly through the analysis of biomarkers such as pregnancy-associated glycoproteins.
Kevin Wade specializes in artificial intelligence applied to dairy production, using neural networks, decision trees, and big data analytics to predict dairy cow lifespan and disease incidence, with a focus on profitability and prevention.
Abdoulaye Baniré Diallo leads projects at the intersection of bioinformatics, single-cell biology, and AI. His lab designs algorithms and methods for the integration and analysis of heterogeneous biological data.
Julie Hussin works at the intersection of artificial intelligence (AI), population genetics, and multiomics, with the goal of developing equitable AI tools to better understand reproductive health.
Nicolas Gévry combines functional genomics, systems biology, and bioinformatics to investigate gene regulation involved in reproduction and hormone-related cancers. His team studies nuclear receptors and their influence on gene expression using high-resolution omics approaches.
Sébastien Buczinski helps bridge the gap between research and on-farm application by integrating field data into practical decision-making tools aimed at improving animal health and productivity.
The integration of bioinformatics and artificial intelligence into RQR projects marks a major turning point in the study of animal and human reproduction. By combining large-scale data, advanced modeling, and biological expertise, these approaches enable a better understanding of the complex interactions between genes, environment, and individuals, in a perspective of global and sustainable health.