Bioinformatics Research Scientist II
About the role
The Position:
We are seeking a talented and motivated Bioinformatics Research Scientist to join the Translational Bioinformatics group within the Bioinformatics and Data Science Team. This role will focus on applying computational and statistical methods to large-scale transcriptomic and genomic datasets, with a strong emphasis on prostate cancer biology and clinical applications. The successful candidate will contribute to the discovery of clinically meaningful molecular signatures that advance disease stratification, prognosis, and diagnostic development, communicating the results of their work to scientists and clinicians. This position is an excellent opportunity to work at the intersection of data science, biology, and clinical research, collaborating closely with scientists, clinicians, and cross-functional partners to translate complex data into impactful insights.
KEY RESPONSIBILITIES:
- Analyze gene expression, transcriptomic, and next-generation sequencing data applying state-of-the-art statistical and machine-learning methods to derive biological and clinical insights, with a primary focus on prostate cancer cohorts from clinical and research studies.
- Design, train, and evaluate supervised and unsupervised machine learning models to predict disease subtypes, biological and clinical endpoints, and clinically actionable genomic signatures across multiple disease areas.
- Document methods, analyses, and results to support reproducibility and regulatory-grade research standards.
- Translate findings into presentations, abstracts, and publication to be presented to internal teams as well as external collaborators, including academic researchers, clinicians, and commercial partners.
- Collaborate closely with multidisciplinary teams to support research initiatives that inform product development and scientific strategy.
Who You Are:
REQUIRED EXPERIENCE:
- PhD. in Cancer Biology, Bioinformatics, Statistics or related field, or M.Sc. with 3-4 years of relevant post-graduate experience (postdoc or industry).
- Deep familiarity with cancer genomics, pathology, or clinical management (prostate cancer preferred).
- Hands-on experience analyzing transcriptomics and NGS data.
- Expertise in R programming and data analysis.
- Strong proficiency in feature reduction techniques and visualization (e.g., U-MAP), supervised and unsupervised