Li Jia-yuan, Long Qi-ming, Tao Ping, Hu Rui, Li Hui, Lei Fang-ming, Zhou Wei-dong, Li Shuang-fei
Department of Mastologic Surgery, Sichuan Cancer Hospital, Chengdu 610041, China.
Sichuan Da Xue Xue Bao Yi Xue Ban. 2008 Sep;39(5):780-3, 787.
To identify the interactions of susceptive genes with related to the genetic polymorphism of metabolism enzymes (CYP1A1, GSTT1 and GSTM1) and their impacts on the risk of breast cancer; and to test the feasibility of using Multifactor Dimensionality Reduction (MDR) model in analyzing gene-gene interactions.
A paired case-control study, matched by age and menstruate state, was conducted. From December 2003 to September 2004, 78 pairs of people with and without breast cancers were investigated. The variant genotypes of CYP1A1 Msp I and GSTT1/M1 were identified by PCR-RFLP and multiplex PCR assays. The gene-gene interactions were analyzed with the MDR model. Based on the result of the MDR model, a conditional logistic regression model was constructed as the final cause-effect interpretative model.
The interaction between CYP1A1 Msp I variant genotype (vv) and GSTT1 null genotype gave the best MDR model with statistical significance (Sign Test, P = 0.05). The model Testing Balance Accuracy was 0. 5920. The Cross-Validation consistency was 10/10. The final conditional logistic regression based on the MDR model showed that passive smoking, abortion and gene-gene interaction were risks of breast cancers, with an OR (95% confidence interval) of 12.234 (1.7459-85.7279), 4.554 (1.3250-15.6507) and 9.597 (1.5783-58.3599), respectively.
The MDR model may be an effective method for estimating risks of breast cancers due to gene-gene and gene-environment interactions. The gene-gene interaction with related to the genetic polymorphism of metabolism enzymes (CYP1A1 and GSTT1) may increase the risk of breast cancer by disturbing the metabolism of estrogen.
确定与代谢酶(CYP1A1、GSTT1和GSTM1)基因多态性相关的易感基因之间的相互作用及其对乳腺癌风险的影响;并检验使用多因素降维(MDR)模型分析基因-基因相互作用的可行性。
进行一项按年龄和月经状态匹配的配对病例对照研究。2003年12月至2004年9月,调查了78对患乳腺癌和未患乳腺癌的人群。通过PCR-RFLP和多重PCR检测确定CYP1A1 Msp I和GSTT1/M1的变异基因型。用MDR模型分析基因-基因相互作用。基于MDR模型的结果,构建条件逻辑回归模型作为最终的因果解释模型。
CYP1A1 Msp I变异基因型(vv)与GSTT1缺失基因型之间的相互作用给出了具有统计学意义的最佳MDR模型(符号检验,P = 0.05)。模型检验平衡准确率为0.5920。交叉验证一致性为10/10。基于MDR模型的最终条件逻辑回归显示,被动吸烟、流产和基因-基因相互作用是乳腺癌的风险因素,其比值比(95%置信区间)分别为12.234(1.7459 - 85.7279)、4.554(1.3250 - 15.6507)和9.597(1.5783 - 58.3599)。
MDR模型可能是评估基因-基因和基因-环境相互作用导致乳腺癌风险的有效方法。与代谢酶(CYP1A1和GSTT1)基因多态性相关的基因-基因相互作用可能通过干扰雌激素代谢增加乳腺癌风险。