Publication details

Cross-species analysis of genetically engineered mouse models of MAPK-driven colorectal cancer identifies hallmarks of the human disease

Authors

BELMONT Peter J. BUDINSKÁ Eva JIANG Ping SINNAMON Mark J. COFFEE Erin ROPER Jatin XIE Tao REJTO Paul A. DERKITS Sahra SANSOM Owen J. DELORENZI Mauro TEJPAR Sabine HUNG Kenneth E. MARTIN Eric S.

Year of publication 2014
Type Article in Periodical
Magazine / Source Disease models & mechanisms
MU Faculty or unit

Faculty of Medicine

Citation
Doi http://dx.doi.org/10.1242/dmm.013904
Field Oncology and hematology
Keywords KRAS; BRAF; MAPK; Colorectal cancer; GEMM; Genomic signatures
Description Effective treatment options for advanced colorectal cancer (CRC) are limited, survival rates are poor and this disease continues to be a leading cause of cancer-related deaths worldwide. Despite being a highly heterogeneous disease, a large subset of individuals with sporadic CRC typically harbor relatively few established ‘driver’ lesions. Here, we describe a collection of genetically engineered mouse models (GEMMs) of sporadic CRC that combine lesions frequently altered in human patients, including well-characterized tumor suppressors and activators of MAPK signaling. Primary tumors from these models were profiled, and individual GEMM tumors segregated into groups based on their genotypes. Unique allelic and genotypic expression signatures were generated from these GEMMs and applied to clinically annotated human CRC patient samples. We provide evidence that a Kras signature derived from these GEMMs is capable of distinguishing human tumors harboring KRAS mutation, and tracks with poor prognosis in two independent human patient cohorts. Furthermore, the analysis of a panel of human CRC cell lines suggests that high expression of the GEMM Kras signature correlates with sensitivity to targeted pathway inhibitors. Together, these findings implicate GEMMs as powerful preclinical tools with the capacity to recapitulate relevant human disease biology, and support the use of genetic signatures generated in these models to facilitate future drug discovery and validation efforts.

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