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基于监督主成分分析的结直肠癌患者一线奥沙利铂化疗后结局的预测性多基因评分。

Predictive Polygenic Score for Outcome after First-Line Oxaliplatin-Based Chemotherapy in Colorectal Cancer Patients Using Supervised Principal Component Analysis.

机构信息

Division of Cancer Epidemiology, German Cancer Research Center (DKFZ), Heidelberg, Germany.

Medical Faculty, University of Heidelberg, Heidelberg, Germany.

出版信息

Cancer Epidemiol Biomarkers Prev. 2022 Nov 2;31(11):2087-2091. doi: 10.1158/1055-9965.EPI-22-0320.

Abstract

BACKGROUND

Associations between candidate germline genetic variants and treatment outcome of oxaliplatin, a drug commonly used for patients with colorectal cancer, have been reported but not robustly established. This study aimed to construct polygenic hazard scores (PHSs) as predictive markers for oxaliplatin treatment outcome by using a supervised principal component approach (PCA).

METHODS

Genome-wide association analysis for overall survival, including interaction terms (SNP*treatment type) was carried out using two phase III trials, 3,098 resected stage III colon cancer (rCC) patients of NCCTG N0147 and 506 metastatic colorectal cancer (mCRC) patients of NCCTG N9741, separately. SNPs showing interaction with genome-wide significance (P < 5 × 10-8) were selected for PCA to derive a PHS. PHS interaction with treatment was included in Cox regression models to predict outcome. Replication of prediction models was performed in an independent cohort, DACHS.

RESULTS

The two PHSs based on the first two principal components of selected SNPs (15SNPs for rCC and 13SNPs for mCRC) were used to construct interaction terms with treatment type and included in models adjusted for clinical covariables. However, in the DACHS study, the addition of the two PHS terms to clinical models did not improve the prediction error in either patients with rCC or mCRC. PHS interaction was also not replicated.

CONCLUSIONS

The PHSs derived using principal components efficiently combined multiple predictive SNPs for estimating likelihood of benefit from oxaliplatin versus other treatment but could not be replicated.

IMPACT

These results highlight the potential but also challenges in generating evidence for a predictive polygenic score for oxaliplatin efficacy.

摘要

背景

已报道候选种系遗传变异与奥沙利铂治疗结局之间的关联,奥沙利铂是一种常用于结直肠癌患者的药物,但并未得到充分证实。本研究旨在通过有监督的主成分分析(PCA)构建多基因危险评分(PHS)作为奥沙利铂治疗结局的预测标志物。

方法

使用两项 III 期临床试验,即 NCCTG N0147 中 3098 例 III 期结肠癌(rCC)患者和 NCCTG N9741 中 506 例转移性结直肠癌(mCRC)患者的总生存的全基因组关联分析,包括交互项(SNP*治疗类型)。选择与全基因组显著相关(P < 5 × 10-8)的 SNP 进行 PCA,以得出 PHS。将 PHS 与治疗的相互作用纳入 Cox 回归模型,以预测结局。在独立队列 DACHS 中对预测模型进行了复制。

结果

基于所选 SNP 的前两个主成分(rCC 为 15 个 SNP,mCRC 为 13 个 SNP)构建的两个 PHS 用于构建与治疗类型的相互作用项,并包含在调整了临床协变量的模型中。然而,在 DACHS 研究中,将这两个 PHS 项添加到临床模型中并没有改善 rCC 或 mCRC 患者的预测误差。PHS 相互作用也未得到复制。

结论

使用主成分有效地构建了多个预测 SNP 的 PHS,用于估计奥沙利铂与其他治疗相比获益的可能性,但无法复制。

影响

这些结果突出了为奥沙利铂疗效生成预测性多基因评分的潜在但也具有挑战性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8b30/9627260/ac4a6df6e726/2087fig1.jpg

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