TY - JOUR
T1 - Understanding the role of phenotypic switching in cancer drug resistance
AU - Gunnarsson, Einar Bjarki
AU - De, Subhajyoti
AU - Leder, Kevin
AU - Foo, Jasmine
N1 - Funding Information:
EBG and KL were supported in part by NSF grant CMMI-1362236 . EBG and JF were supported in part by NSF grant DMS-1349724 . KL and JF were supported in part by the U.S.-Norway Fulbright Foundation. SD was supported in part by NIH grant R01GM129066 . The authors would like to thank the anonymous reviewers whose comments and suggestions helped improve and clarify the manuscript.
Publisher Copyright:
© 2020
PY - 2020/4/7
Y1 - 2020/4/7
N2 - The emergence of acquired drug resistance in cancer represents a major barrier to treatment success. While research has traditionally focused on genetic sources of resistance, recent findings suggest that cancer cells can acquire transient resistant phenotypes via epigenetic modifications and other non-genetic mechanisms. Although these resistant phenotypes are eventually relinquished by individual cells, they can temporarily 'save’ the tumor from extinction and enable the emergence of more permanent resistance mechanisms. These observations have generated interest in the potential of epigenetic therapies for long-term tumor control or eradication. In this work, we develop a mathematical model to study how phenotypic switching at the single-cell level affects resistance evolution in cancer. We highlight unique features of non-genetic resistance, probe the evolutionary consequences of epigenetic drugs and explore potential therapeutic strategies. We find that even short-term epigenetic modifications and stochastic fluctuations in gene expression can drive long-term drug resistance in the absence of any bona fide resistance mechanisms. We also find that an epigenetic drug that slightly perturbs the average retention of the resistant phenotype can turn guaranteed treatment failure into guaranteed success. Lastly, we find that combining an epigenetic drug with an anti-cancer agent can significantly outperform monotherapy, and that treatment outcome is heavily affected by drug sequencing.
AB - The emergence of acquired drug resistance in cancer represents a major barrier to treatment success. While research has traditionally focused on genetic sources of resistance, recent findings suggest that cancer cells can acquire transient resistant phenotypes via epigenetic modifications and other non-genetic mechanisms. Although these resistant phenotypes are eventually relinquished by individual cells, they can temporarily 'save’ the tumor from extinction and enable the emergence of more permanent resistance mechanisms. These observations have generated interest in the potential of epigenetic therapies for long-term tumor control or eradication. In this work, we develop a mathematical model to study how phenotypic switching at the single-cell level affects resistance evolution in cancer. We highlight unique features of non-genetic resistance, probe the evolutionary consequences of epigenetic drugs and explore potential therapeutic strategies. We find that even short-term epigenetic modifications and stochastic fluctuations in gene expression can drive long-term drug resistance in the absence of any bona fide resistance mechanisms. We also find that an epigenetic drug that slightly perturbs the average retention of the resistant phenotype can turn guaranteed treatment failure into guaranteed success. Lastly, we find that combining an epigenetic drug with an anti-cancer agent can significantly outperform monotherapy, and that treatment outcome is heavily affected by drug sequencing.
KW - Cancer drug resistance
KW - Epigenetics
KW - Evolutionary dynamics
KW - Mathematical modeling
KW - Phenotypic switching
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U2 - 10.1016/j.jtbi.2020.110162
DO - 10.1016/j.jtbi.2020.110162
M3 - Article
C2 - 31953135
AN - SCOPUS:85079162972
SN - 0022-5193
VL - 490
JO - Journal of Theoretical Biology
JF - Journal of Theoretical Biology
M1 - 110162
ER -