Revolutionizing precision oncology research

At Epigene Labs, we are committed to transforming today’s data into tomorrow’s treatments.

 

We believe that the wealth of available data is a treasure trove of information that must be made accessible for research. 

By enabling data-driven drug discovery, we aim to accelerate breakthroughs in precision oncology.

 

Our mission is to provide the biopharma industry with valuable solutions that ultimately lead to more effective and personalized treatments for cancer patients.

Our journey of innovation

Since 2019, Epigene Labs has achieved several key milestones that underscore our commitment to innovation and excellence. From the successful launch of our comprehensive cancer patient data atlas to the development of mCUBE, our groundbreaking computational platform, we have consistently pushed the boundaries of what’s possible in immuno-oncology research.

January 2019

Epigene Labs founded

March 2019

Secured pre-seed funding, led by Daphni and Majycc Innovation Santé/UI Investissement

September 2019

Joined the Launch Lab X (LLX) program at the Harvard Innovation Labs

April 2020

Partnered with Institut Curie on ovarian cancer transcriptomics research

July 2020

Completed a seed funding round led by XAnge

December 2021

Awarded the EIC Accelerator grant of the European Commission

January 2022

Announced a partnership with Servier focusing on indication prioritization

July 2022

Won the Concours d’innovation – i-Nov prize and grant from Bpifrance

December 2022

Presented research at the ASH annual meeting with UCSF

April 2023

Unveiled InMoose at the AACR annual meeting

October 2023

Secured financial backing from the EIC Fund of the European Comission

December 2023

Published pyCombat in BMC Bioinformatics

February 2024

Unveiled first research results leveraging large language models at ESMO-TAT

April 2024

Released 10th publication at AACR annual meeting

Redefining secondary data analysis in oncology

Since our inception, we have consistently advanced the field of secondary data analysis (SDA) by tackling some of its most challenging scientific questions. These include determining the appropriate amount of data for specific biology questions, identifying the best methods for combining datasets, and exploring which data types can be integrated to address specific biology questions more effectively.

Our ongoing computational research projects have been instrumental in developing mCUBE, significantly influencing numerous translational research projects, and making substantial contributions to the broader scientific community through our open-source initiative, InMoose.