Insulin receptor expression by human prostate cancers

Michael Cox(University of British Columbia), Martin Gleave(University of British Columbia), Mahvash Zakikhani(Jewish General Hospital), Robert H. Bell(University of British Columbia), Esther Piura(Jewish General Hospital), Elaine Vickers(University of British Columbia), Matthew E. Cunningham(Jewish General Hospital), Ola Larsson(McGill University), Ladan Fazli(University of British Columbia), Michaël Pollak(Jewish General Hospital)
The Prostate
September 10, 2008
Cited by 219

Abstract

BACKGROUND: Although recent laboratory and population studies suggest that prostate cancer may be responsive to insulin, there is a gap in knowledge concerning the expression of insulin receptors on benign or malignant prostate tissue. METHODS: We immunostained 644 cores on tissue microarrays prepared from 29 prostate tissue samples without malignancies, 78 Gleason grade 3 cancers, 21 Gleason grade 4 cancers and 33 Gleason grade 5 cancers with antibodies against the insulin-like growth factor I receptor and the insulin receptor. RESULTS: We observed immunoreactivity with both antibodies, which implies the presence of hybrid receptors as well as IGF-I receptors and insulin receptors. Insulin receptor staining intensity was significantly (P < 0.001) higher on malignant than benign prostate epithelial cells. Analysis of information from public gene expression databases confirmed that co-expression of insulin receptor mRNA and IGF-I receptor mRNA is common in prostate cancer specimens. RT-PCR methods provided evidence for the presence of mRNA for both IR-A and IR-B insulin receptor isoforms. CONCLUSION: These observations document the presence of insulin receptors on primary human prostate cancers. The findings are relevant not only to ongoing clinical trials of drug candidates that target IGF-I and/or insulin receptors, but also to the hypothesis that obesity-associated hyperinsulinemia mediates the adverse effect of obesity on prostate cancer prognosis.


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