Marshaling the translational potential of MC1R for precision risk assessment of melanoma Journal Article


Authors: Kanetsky, P. A.; Hay, J. L.
Article Title: Marshaling the translational potential of MC1R for precision risk assessment of melanoma
Abstract: Melanoma rates have been increasing in the United States, and neither primary (sun protection and avoidance) nor secondary (skin examination) prevention is practiced consistently, even by those with melanoma risk factors. Inherited variation at MC1R is a robust marker for increased risk of melanoma, even among individuals with "sun-resistant" phenotypes. Although MC1R conveys important information about inherited melanoma risk for a broad spectrum of individuals, concerns that MC1R feedback could have negative consequences, including increased distress about melanoma, inappropriate use of health services, and development of a false sense of security, are valid and require empirical examination. The time is right for high-quality research focusing on the translation of MC1R genotype into clinical and public health practice. If studies show MC1R genetic risk screening is effective at motivating behavior change, more melanomas may be detected at earliest stages for which surgical excision is highly curative or a large number of melanomas may be prevented altogether. While other genetic markers for melanoma susceptibility may emerge in the coming years, the burgeoning research agenda on the public health translational potential of MC1R genetic risk screening will inform and usefully advance current and future precision risk assessment of melanoma. © 2018 American Association for Cancer Research.
Journal Title: Cancer Prevention Research
Volume: 11
Issue: 3
ISSN: 1940-6207
Publisher: American Association for Cancer Research  
Date Published: 2018-03-01
Start Page: 121
End Page: 124
Language: English
DOI: 10.1158/1940-6207.capr-17-0255
PROVIDER: scopus
PMCID: PMC5839988
PUBMED: 29246956
DOI/URL:
Notes: Review -- Export Date: 2 July 2018 -- Source: Scopus
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  1. Jennifer L Hay
    264 Hay