Variable Clonal Repopulation Dynamics Influence Chemotherapy Response in Colorectal Cancer

Antonija Kreso(Ontario Institute for Cancer Research), Catherine O′Brien(Ontario Institute for Cancer Research), Peter van Galen(Ontario Institute for Cancer Research), Olga I. Gan(Ontario Institute for Cancer Research), Faiyaz Notta(Ontario Institute for Cancer Research), Andrew Brown(Ontario Institute for Cancer Research), Karen Ng(Ontario Institute for Cancer Research), Jing Ma(St. Jude Children's Research Hospital), Erno Wienholds(Ontario Institute for Cancer Research), Cyrille F. Dunant(University of Toronto), Aaron Pollett(Mount Sinai Hospital), Steven Gallinger(Mount Sinai Hospital), John D. McPherson(Ontario Institute for Cancer Research), Charles G. Mullighan(St. Jude Children's Research Hospital), Darryl Shibata(University of Southern California), John E. Dick(Ontario Institute for Cancer Research)
Science
December 14, 2012
Cited by 739Open Access
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Abstract

Intratumoral heterogeneity arises through the evolution of genetically diverse subclones during tumor progression. However, it remains unknown whether cells within single genetic clones are functionally equivalent. By combining DNA copy number alteration (CNA) profiling, sequencing, and lentiviral lineage tracking, we followed the repopulation dynamics of 150 single lentivirus-marked lineages from 10 human colorectal cancers through serial xenograft passages in mice. CNA and mutational analysis distinguished individual clones and showed that clones remained stable upon serial transplantation. Despite this stability, the proliferation, persistence, and chemotherapy tolerance of lentivirally marked lineages were variable within each clone. Chemotherapy promoted the dominance of previously minor or dormant lineages. Thus, apart from genetic diversity, tumor cells display inherent functional variability in tumor propagation potential, which contributes to both cancer growth and therapy tolerance.


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