Variation to biology: optimizing functional analysis of cancer risk variants

Research conducted over the past 15+ years has identified hundreds of common germline genetic variants associated with cancer risk, but understanding the biological impact of these primarily non-protein coding variants has been challenging. The National Cancer Institute sought to better understand a...

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Veröffentlicht in:JNCI : Journal of the National Cancer Institute 2024-12, Vol.116 (12), p.1882-1889
Hauptverfasser: Nelson, Stefanie, Carrick, Danielle, Daee, Danielle, Fingerman, Ian, Gillanders, Elizabeth
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Sprache:eng
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Zusammenfassung:Research conducted over the past 15+ years has identified hundreds of common germline genetic variants associated with cancer risk, but understanding the biological impact of these primarily non-protein coding variants has been challenging. The National Cancer Institute sought to better understand and address those challenges by requesting input from the scientific community via a survey and a 2-day virtual meeting, which focused on discussions among participants. Here, we discuss challenges identified through the survey as important to advancing functional analysis of common cancer risk variants: 1) When is a variant truly characterized; 2) Developing and standardizing databases and computational tools; 3) Optimization and implementation of high-throughput assays; 4) Use of model organisms for understanding variant function; 5) Diversity in data and assays; and 6) Creating and improving large multidisciplinary collaborations. We define these 6 challenges, describe how success in addressing them may look, propose potential solutions, and note issues that span all the challenges. Implementation of these ideas could help develop a framework for methodically analyzing common cancer risk variants to understand their function and make effective and efficient use of the wealth of existing genomic association data.
ISSN:0027-8874
1460-2105
1460-2105
DOI:10.1093/jnci/djae173