Cancer remains a leading cause of disease and death worldwide. An estimated 14m new cancer cases were diagnosed in 2012 and the annual cost of treating cancer in the EU is estimated to be over €150b. Thus, there is a clear need for more effective methods of treatment to reduce this global burden. Immunotherapy, and particularly personalized cancer vaccines represent an exciting new weapon in the war against cancer. However, to develop personalized cancer vaccines, it is necessary to identify personalized tumor-specific targets known as neoantigens in a cost effective and clinically actionable timeframe.
OncoImmunity is currently developing a state-of-the-art software solution that addresses this problem– the Immune Profiler prediction engine (PE) which leverages advanced machine-learning algorithms and bioinformatics approaches to predict whether a potential neoantigen has the correct physiochemical features to be immunogenic. However, to fully enable the development of personalized vaccines this software need to be customized to specific vaccine delivery systems (VDS) as different vaccine platforms induce responses against different repertoires of neoantigen. The tailored software will be called MEDIVAC.