lunes, 30 de octubre de 2017

Researchers quantify breast cancer risk based on rare variants and background risk | EurekAlert! Science News

Researchers quantify breast cancer risk based on rare variants and background risk | EurekAlert! Science News

EurekAlert! Science News


Researchers quantify breast cancer risk based on rare variants and background risk

Findings reported at ASHG 2017 Annual Meeting
BETHESDA, MD - Rare variants combined with background genetic risk factors may account for many unexplained cases of familial breast cancer, and knowing the specific genes involved could inform choice of prevention and treatment strategies, according to findings presented in a plenary session at the American Society of Human Genetics (ASHG) 2017 Annual Meeting in Orlando, Fla.
Researchers Na Li, MD, who presented the work; Ian Campbell, PhD, lead investigator; and their colleagues at the Peter MacCallum Cancer Centre in Melbourne, Australia, focused their study on patients at high risk of breast cancer: those with a personal or family history who were seeking an explanation.
"When you know which gene is conferring the risk of breast cancer, you can provide a more precise estimate of risk, know what to expect and watch out for, and tailor risk management strategies to the patient," said Dr. Campbell. Unfortunately, in about half of these high-risk patients, no known genetic cause was found, suggesting a more complicated explanation. In such cases, cancer geneticists had long suspected that polygenic risk (risk conferred by a combination of genetic variants) was involved.
Genes do not work on their own, but rather as part of one's overall genetic context, explained Dr. Li. "That 'polygenic risk' background is like a landscape full of hills and valleys, with each risky variant like a house on top of it," she said. "If you inherit a high-risk variant - a tall house - but live in a valley, your overall risk of breast cancer may end up being average because your genetic landscape pulls it down."
The concept of background genetic risk is not new, but for many years, scientists did not have the tools to collect and analyze the thousands of genomes needed to quantify it. Recent improvements in next-generation sequencing technology have addressed this challenge. As a result, Dr. Li and colleagues were able to sequence up to 1,400 candidate breast cancer genes in 6,000 familial breast cancer patients and 6,000 cancer-free controls. In this large sample, they searched for potential cancer-associated genes suggested by the literature, collaborators, and their own previous results, and identified at least 46 genes that were at least twice as likely to have mutations among participants with breast cancer than in those without.
They also used the data to calculate a polygenic risk score for each patient, and combined this score with data on their high and moderate-risk variants to estimate each patient's overall risk of developing breast cancer. In the coming years, the researchers plan to expand the study internationally to further test and refine their findings across populations. They also hope to bring these more precise risk estimates into the clinic, to more accurately reassure women about their personal risk of cancer, or - if risk is high - advise preventive strategies such as screening at a younger age.
Presentation: Dr. Li will present this research on Friday, October 20, 2017, from 5:30-5:50 p.m., in South Hall B, Level 1, South Building, Orange County Convention Center.
Press Availability: Dr. Li and co-author Ian Campbell, PhD, will be available to discuss this research with interested media on Wednesday, October 18, 2017, from 9:30-10:00 a.m. in the ASHG 2017 Press Office (Room 210D).
Reference: Li N et al. (2017 Oct 20). Abstract: The contribution of rare variants, polygenic risk, and novel candidate genes to the hereditary risk of breast cancer in a large cohort of breast cancer families. Presented at the American Society of Human Genetics 2017 Annual Meeting. Orlando, Florida.

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