Agarwal Gaurav, Tulsyan Sonam, Lal Punita, Mittal Balraj
Departments of Endocrine & Breast Surgery, Sanjay Gandhi Postgraduate Institute of Medical Sciences, Raebareli Road, Lucknow, 226014, India.
Genetics, Sanjay Gandhi Postgraduate Institute of Medical Sciences, Raebareli Road, Lucknow, 226014, India.
World J Surg. 2016 Jul;40(7):1600-10. doi: 10.1007/s00268-015-3263-6.
Prediction of response and toxicity of chemotherapy can help personalize the treatment and choose effective yet non-toxic treatment regimen for a breast cancer patient. Interplay of variations in various drug-metabolizing enzyme (DME)-encoding genes results in variable response and toxicity of chemotherapeutic drugs. Generalized multi-analytical (GMDR) approach was used to determine the influence of the combination of variants of genes encoding phase 0 (SLC22A16); phase I (CYP450, NQO1); phase II (GSTs, MTHFR, UGT2B15); and phase III (ABCB1) DMEs along with confounding factors on the response and toxicity of chemotherapeutic drugs in breast cancer patients.
In an Indian breast cancer patient cohort (n = 234), response to neo-adjuvant chemotherapy (n = 111) and grade 2-4 toxicity to chemotherapy were recorded. Patients were genotyped for 19 polymorphisms selected in four phases of DMEs by PCR or PCR-RFLP or Taqman allelic discrimination assay. Binary logistic regression and GMDR analysis was performed. Bonferroni test for multiple comparisons was applied, and p value was considered to be significant at <0.025.
For ABCB1 1236C>T polymorphism, CT genotype was found to be significantly associated with response to NACT in uni-variate and multi-variate analysis (p = 0.018; p = 0.013). The TT genotype of NQO1 609C>T had a significant association with (absence of) grade 2-4 toxicity in uni-variate analysis (p = 0.021), but a non-significant correlation in multi-variate analysis. In GMDR analysis, interaction of CYP3A53, NQO1 609C>T, and ABCB1 1236C>T polymorphisms yielded the highest testing accuracy for response to NACT (CVT = 0.62). However, for grade 2-4 toxicity, CYP2C192 and ABCB1 3435C>T polymorphisms yielded the best interaction model (CVT = 0.57).
This pharmacogenetic study suggests a role of higher order gene-gene interaction of DME-encoding genes, along with confounding factors, in determination of treatment outcomes and toxicity in breast cancer patients. This can be used as a potential objective tool for individualizing breast cancer chemotherapy with high efficacy and low toxicity.
预测化疗的反应和毒性有助于实现个体化治疗,并为乳腺癌患者选择有效且无毒的治疗方案。各种药物代谢酶(DME)编码基因的变异相互作用导致化疗药物的反应和毒性各不相同。采用广义多分析(GMDR)方法来确定编码0期(SLC22A16)、I期(CYP450、NQO1)、II期(GSTs、MTHFR、UGT2B15)和III期(ABCB1)DME的基因变异组合以及混杂因素对乳腺癌患者化疗药物反应和毒性的影响。
在一个印度乳腺癌患者队列(n = 234)中,记录新辅助化疗的反应(n = 111)以及化疗2 - 4级毒性。通过聚合酶链反应(PCR)、聚合酶链反应-限制性片段长度多态性分析(PCR-RFLP)或Taqman等位基因鉴别分析对患者进行19种在DME四个阶段选择的多态性基因分型。进行二元逻辑回归和GMDR分析。应用Bonferroni多重比较检验,p值<0.025被认为具有显著性。
对于ABCB1 1236C>T多态性,在单变量和多变量分析中,CT基因型与新辅助化疗的反应显著相关(p = 0.018;p = 0.013)。NQO1 609C>T的TT基因型在单变量分析中与2 - 4级毒性(无)显著相关(p = 0.021),但在多变量分析中相关性不显著。在GMDR分析中,CYP3A * 3、NQO1 609C>T和ABCB1 1236C>T多态性的相互作用对新辅助化疗反应产生了最高的检测准确性(交叉验证准确率[CVT]=0.62)。然而,对于2 - 4级毒性,CYP2C19 * 2和ABCB1 3435C>T多态性产生了最佳的相互作用模型(CVT = 0.57)。
这项药物遗传学研究表明,DME编码基因的高阶基因-基因相互作用以及混杂因素在确定乳腺癌患者的治疗结果和毒性方面发挥作用。这可作为一种潜在的客观工具,用于实现高效低毒的乳腺癌个体化化疗。