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Impact of deleterious passenger mutations on cancer progression
Authors:Christopher D McFarland  Kirill S Korolev  Gregory V Kryukov  Shamil R Sunyaev  Leonid A Mirny
Institution:aGraduate Program in Biophysics, Harvard University, Boston, MA, 02115;;bDepartment of Physics, Massachusetts Institute of Technology, Cambridge, MA, 02129;;cBroad Institute of MIT and Harvard, Cambridge, MA, 02139;;dDivision of Genetics, Brigham and Women''s Hospital, Harvard Medical School, Boston, MA, 02115; and;eInstitute for Medical Engineering and Science, Massachusetts Institute of Technology, Cambridge, MA 02139
Abstract:Cancer progression is driven by the accumulation of a small number of genetic alterations. However, these few driver alterations reside in a cancer genome alongside tens of thousands of additional mutations termed passengers. Passengers are widely believed to have no role in cancer, yet many passengers fall within protein-coding genes and other functional elements that can have potentially deleterious effects on cancer cells. Here we investigate the potential of moderately deleterious passengers to accumulate and alter the course of neoplastic progression. Our approach combines evolutionary simulations of cancer progression with an analysis of cancer sequencing data. From simulations, we find that passengers accumulate and largely evade natural selection during progression. Although individually weak, the collective burden of passengers alters the course of progression, leading to several oncological phenomena that are hard to explain with a traditional driver-centric view. We then tested the predictions of our model using cancer genomics data and confirmed that many passengers are likely damaging and have largely evaded negative selection. Finally, we use our model to explore cancer treatments that exploit the load of passengers by either (i) increasing the mutation rate or (ii) exacerbating their deleterious effects. Though both approaches lead to cancer regression, the latter is a more effective therapy. Our results suggest a unique framework for understanding cancer progression as a balance of driver and passenger mutations.
Keywords:chaperones  stochastic simulations  population genetics  unfolding response pathway
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