摘要PR10:综合已知和未知主基因和多基因的结直肠癌风险预测工具(CRiPT)的开发

Aung Ko Win, M. Jenkins, J. Dowty, A. Antoniou, Andrew Lee, Yingye Zheng, N. Lindor, P. Newcomb, J. Hopper, R. MacInnis
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引用次数: 0

摘要

目的:开发一种综合性的结直肠癌风险预测工具(CRiPT)。为了实现这一目标,有必要将种系突变纳入DNA错配修复基因和MUTYH中,以解释结直肠癌家族聚集的一部分。然而,这些突变的人口流行率以及其余家族聚集的遗传和环境原因尚不清楚。方法:我们研究了从美国、加拿大和澳大利亚人口癌症登记处招募的5744例结直肠癌病例(先证者)的家庭,并筛选错配修复基因MLH1、MSH2、MSH6、PMS2和MUTYH的突变先证者。我们使用MENDEL软件对一级亲属的癌症病史进行修正分离分析模型的拟合,该模型以先证者诊断时的年龄为条件。我们使用χ2拟合优度检验,通过估计已知易感基因的突变发生率、未测量的高风险基因突变的发生率和风险比,以及未测量的多基因成分的方差,确定了最能解释结直肠癌家族性聚集的遗传模型。结果:最佳拟合模型为多基因标准差随年龄变化的混合显性模型。在该模型下,我们估计279人中有1人携带错配修复基因突变(1946年MLH = 1, 2841年MSH2 = 1, 758年MSH6 = 1, 714年PMS2 = 1), 45人中有1人携带MUTYH突变,504人中有1人携带未知主基因突变,这些突变与结直肠癌的平均风险增加31倍有关。结论:CRiPT是一个综合了已知和未知主基因和多基因的综合预测模型。CRiPT可以提供DNA错配修复基因或MUTYH突变的概率,以及估计未来患结直肠癌的风险(例如,5年风险)。该模型类似于乳腺和卵巢疾病发病率和携带者估计算法分析(BOADICEA),该算法根据家族史计算女性携带BRCA1或BRCA2突变的概率以及她们未来患乳腺癌和卵巢癌的风险。进一步的工作将包括测量CRiPT的环境因素和遗传变异,这将有助于在临床实践中进行遗传咨询和靶向结直肠癌筛查。此摘要也以海报B04的形式呈现。引文格式:Aung Ko Win, Mark A. Jenkins, James G. Dowty, Antonis C. Antoniou, Andrew Lee, Yingye Zheng, Noralane M. Lindor, Polly A. Newcomb, John L. Hopper, Robert J. MacInnis。综合已知和未知主基因和多基因的结直肠癌风险预测工具(CRiPT)的开发。[摘要]。摘自:AACR特别会议论文集:改进癌症风险预测以预防和早期发现;2016年11月16日至19日;费城(PA): AACR;Cancer epidemiology Biomarkers pre2017;26(5增刊):摘要nr PR10。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abstract PR10: Development of a comprehensive colorectal cancer risk prediction tool (CRiPT) incorporating known and unknown major genes and polygenes
Aim: We aimed to develop a comprehensive Colorectal cancer Risk Prediction Tool (CRiPT). To achieve this, it is necessary to incorporate germline mutations in the DNA mismatch repair genes and MUTYH to account for a proportion of the familial aggregation of colorectal cancer. Population prevalence of these mutations and the genetic and environmental causes of the remaining familial aggregation, however, are not known. Methods: We studied the families of 5,744 colorectal cancer cases (probands) recruited from population cancer registries in the USA, Canada and Australia, and screened probands for mutations in the mismatch repair genes MLH1 , MSH2 , MSH6 , and PMS2 , and MUTYH . We fitted modified segregation analysis models to the cancer history of first-degree relatives, conditional on the age at diagnosis of the proband, using the software MENDEL. We determined the genetic model that best explained the familial aggregation of colorectal cancer by estimating the prevalence of mutations in the known susceptibility genes, the prevalence of and hazard ratio for unmeasured high-risk gene mutations, and the variance of the unmeasured polygenic component, using a χ2 goodness-of-fit test. Results: The best fitting model was a mixed dominant model with the polygenic standard deviation varying by age. Under that model, we estimated 1 in 279 of the population carry mutations in the mismatch repair genes ( MLH = 1 in 1946, MSH2 = 1 in 2841, MSH6 = 1 in 758, PMS2 = 1 in 714), 1 in 45 carry mutations in MUTYH , and 1 in 504 carry mutations in unknown major gene(s) which are associated with on average a 31-fold increased risk of colorectal cancer. The estimated variance of the polygenic component decreased from 1.8 for age Conclusion: CRiPT is a comprehensive prediction model that incorporates both known and unknown major genes and polygenes. CRiPT can provide the probabilities of having a mutation in a DNA mismatch repair gene or MUTYH as well as estimate future risk (e.g., 5-year risk) of developing colorectal cancer. This model is similar to the Breast and Ovarian Analysis of Disease Incidence and Carrier Estimation Algorithm (BOADICEA) that calculates for women the probabilities of carrying a BRCA1 or BRCA2 mutation and their future risk of developing breast and ovarian cancer based on their family history. Further work will include measured environmental factors and genetic variants to CRiPT, and it will be useful for genetic counselling and targeted colorectal cancer screening in clinical practices. This abstract is also being presented as Poster B04. Citation Format: Aung Ko Win, Mark A. Jenkins, James G. Dowty, Antonis C. Antoniou, Andrew Lee, Yingye Zheng, Noralane M. Lindor, Polly A. Newcomb, John L. Hopper, Robert J. MacInnis. Development of a comprehensive colorectal cancer risk prediction tool (CRiPT) incorporating known and unknown major genes and polygenes. [abstract]. In: Proceedings of the AACR Special Conference: Improving Cancer Risk Prediction for Prevention and Early Detection; Nov 16-19, 2016; Orlando, FL. Philadelphia (PA): AACR; Cancer Epidemiol Biomarkers Prev 2017;26(5 Suppl):Abstract nr PR10.
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