Development and testing of a polygenic risk score for breast cancer aggressiveness

被引:0
作者
Yiwey Shieh
Jacquelyn Roger
Christina Yau
Denise M. Wolf
Gillian L. Hirst
Lamorna Brown Swigart
Scott Huntsman
Donglei Hu
Jovia L. Nierenberg
Pooja Middha
Rachel S. Heise
Yushu Shi
Linda Kachuri
Qianqian Zhu
Song Yao
Christine B. Ambrosone
Marilyn L. Kwan
Bette J. Caan
John S. Witte
Lawrence H. Kushi
Laura van ‘T Veer
Laura J. Esserman
Elad Ziv
机构
[1] Weill Cornell Medicine,Department of Population Health Sciences
[2] University of California,PhD Program in Biological and Medical Informatics
[3] San Francisco,Department of Surgery
[4] University of California,Department of Laboratory Medicine
[5] San Francisco,Division of General Internal Medicine, Department of Medicine
[6] University of California,Department of Epidemiology and Biostatistics
[7] San Francisco,Department of Epidemiology and Population Health
[8] University of California,Department of Biostatistics and Bioinformatics
[9] San Francisco,Department of Cancer Prevention and Control
[10] University of California,Division of Research
[11] San Francisco,undefined
[12] Stanford University,undefined
[13] Roswell Park Cancer Institute,undefined
[14] Roswell Park Comprehensive Cancer Center,undefined
[15] Kaiser Permanente Northern California,undefined
来源
npj Precision Oncology | / 7卷
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摘要
Aggressive breast cancers portend a poor prognosis, but current polygenic risk scores (PRSs) for breast cancer do not reliably predict aggressive cancers. Aggressiveness can be effectively recapitulated using tumor gene expression profiling. Thus, we sought to develop a PRS for the risk of recurrence score weighted on proliferation (ROR-P), an established prognostic signature. Using 2363 breast cancers with tumor gene expression data and single nucleotide polymorphism (SNP) genotypes, we examined the associations between ROR-P and known breast cancer susceptibility SNPs using linear regression models. We constructed PRSs based on varying p-value thresholds and selected the optimal PRS based on model r2 in 5-fold cross-validation. We then used Cox proportional hazards regression to test the ROR-P PRS’s association with breast cancer-specific survival in two independent cohorts totaling 10,196 breast cancers and 785 events. In meta-analysis of these cohorts, higher ROR-P PRS was associated with worse survival, HR per SD = 1.13 (95% CI 1.06–1.21, p = 4.0 × 10–4). The ROR-P PRS had a similar magnitude of effect on survival as a comparator PRS for estrogen receptor (ER)-negative versus positive cancer risk (PRSER-/ER+). Furthermore, its effect was minimally attenuated when adjusted for PRSER-/ER+, suggesting that the ROR-P PRS provides additional prognostic information beyond ER status. In summary, we used integrated analysis of germline SNP and tumor gene expression data to construct a PRS associated with aggressive tumor biology and worse survival. These findings could potentially enhance risk stratification for breast cancer screening and prevention.
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