Pan-cancer analysis demonstrates that integrating polygenic risk scores with modifiable risk factors improves risk prediction

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作者
Linda Kachuri
Rebecca E. Graff
Karl Smith-Byrne
Travis J. Meyers
Sara R. Rashkin
Elad Ziv
John S. Witte
Mattias Johansson
机构
[1] University of California,Department of Epidemiology and Biostatistics
[2] San Francisco,Genetic Epidemiology Group, Section of Genetics
[3] International Agency for Research on Cancer,Department of Medicine
[4] University of California,Helen Diller Family Comprehensive Cancer Center
[5] San Francisco,Institute for Human Genetics
[6] University of California,Department of Urology
[7] San Francisco,undefined
[8] University of California,undefined
[9] San Francisco,undefined
[10] University of California,undefined
[11] San Francisco,undefined
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摘要
Cancer risk is determined by a complex interplay of environmental and heritable factors. Polygenic risk scores (PRS) provide a personalized genetic susceptibility profile that may be leveraged for disease prediction. Using data from the UK Biobank (413,753 individuals; 22,755 incident cancer cases), we quantify the added predictive value of integrating cancer-specific PRS with family history and modifiable risk factors for 16 cancers. We show that incorporating PRS measurably improves prediction accuracy for most cancers, but the magnitude of this improvement varies substantially. We also demonstrate that stratifying on levels of PRS identifies significantly divergent 5-year risk trajectories after accounting for family history and modifiable risk factors. At the population level, the top 20% of the PRS distribution accounts for 4.0% to 30.3% of incident cancer cases, exceeding the impact of many lifestyle-related factors. In summary, this study illustrates the potential for improving cancer risk assessment by integrating genetic risk scores.
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