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新辅助化疗后胰腺导管腺癌的基因表达谱分析。

Gene expression profiling of pancreatic ductal adenocarcinomas in response to neoadjuvant chemotherapy.

机构信息

Northern Clinical School, Faculty of Medicine and Health, University of Sydney, St Leonards, New South Wales, Australia.

Northern Clinical School, Kolling Institute of Medical Research, University of Sydney, St Leonards, New South Wales, Australia.

出版信息

Cancer Med. 2023 Sep;12(17):18050-18061. doi: 10.1002/cam4.6411. Epub 2023 Aug 2.

Abstract

AIM

Pancreatic ductal adenocarcinoma (PDAC) has the lowest survival rate of all major cancers. Chemotherapy is the mainstay systemic therapy for PDAC, and chemoresistance is a major clinical problem leading to therapeutic failure. This study aimed to identify key differences in gene expression profile in tumors from chemoresponsive and chemoresistant patients.

METHODS

Archived formalin-fixed paraffin-embedded tumor tissue samples from patients treated with neoadjuvant chemotherapy were obtained during surgical resection. Specimens were macrodissected and gene expression analysis was performed. Multi- and univariate statistical analysis was performed to identify differential gene expression profile of tumors from good (0%-30% residual viable tumor [RVT]) and poor (>30% RVT) chemotherapy-responders.

RESULTS

Initially, unsupervised multivariate modeling was performed by principal component analysis, which demonstrated a distinct gene expression profile between good- and poor-chemotherapy responders. There were 396 genes that were significantly (p < 0.05) downregulated (200 genes) or upregulated (196 genes) in tumors from good responders compared to poor responders. Further supervised multivariate analysis of significant genes by partial least square (PLS) demonstrated a highly distinct gene expression profile between good- and poor responders. A gene biomarker of panel (IL18, SPA17, CD58, PTTG1, MTBP, ABL1, SFRP1, CHRDL1, IGF1, and CFD) was selected based on PLS model, and univariate regression analysis of individual genes was performed. The identified biomarker panel demonstrated a very high ability to diagnose good-responding PDAC patients (AUROC: 0.977, sensitivity: 82.4%; specificity: 87.0%).

CONCLUSION

A distinct tumor biological profile between PDAC patients who either respond or not respond to chemotherapy was identified.

摘要

目的

胰腺导管腺癌 (PDAC) 的生存率在所有主要癌症中最低。化疗是 PDAC 的主要系统治疗方法,而化疗耐药是导致治疗失败的主要临床问题。本研究旨在确定化疗敏感和耐药患者肿瘤基因表达谱的关键差异。

方法

从接受新辅助化疗的患者手术切除时获得存档的福尔马林固定石蜡包埋肿瘤组织样本。对标本进行宏观解剖,并进行基因表达分析。采用多变量和单变量统计分析方法,鉴定化疗反应良好(残余存活肿瘤 [RVT] 0%-30%)和较差 (>30%RVT) 患者肿瘤的差异基因表达谱。

结果

最初,通过主成分分析进行无监督多变量建模,结果显示化疗反应良好和较差患者之间存在明显的基因表达谱差异。与化疗反应较差的患者相比,化疗反应良好的患者肿瘤中有 396 个基因(200 个基因下调,196 个基因上调)显著下调(p<0.05)或上调。进一步通过偏最小二乘(PLS)对有意义的基因进行有监督的多变量分析,显示化疗反应良好和较差患者之间存在高度不同的基因表达谱。根据 PLS 模型选择基因标志物(IL18、SPA17、CD58、PTTG1、MTBP、ABL1、SFRP1、CHRDL1、IGF1 和 CFD),并对单个基因进行单变量回归分析。鉴定的标志物组合对诊断化疗反应良好的 PDAC 患者具有很高的能力(AUROC:0.977,敏感性:82.4%;特异性:87.0%)。

结论

鉴定出化疗反应良好和反应不佳的 PDAC 患者之间存在明显的肿瘤生物学特征。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8e85/10523964/1b9c98c89886/CAM4-12-18050-g001.jpg

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