Department of General Surgery, State Key Laboratory of Complex Severe and, Rare Diseases, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, P.R. China.
MOE Key Laboratory of Bioinformatics, Division of BNRist Bioinformatics, Department of Automation, Tsinghua University, Beijing, P.R. China.
Clin Cancer Res. 2021 Jun 15;27(12):3383-3396. doi: 10.1158/1078-0432.CCR-19-3975. Epub 2021 Mar 5.
Gemcitabine is most commonly used for pancreatic cancer. However, the molecular features and mechanisms of the frequently occurring resistance remain unclear. This work aims at exploring the molecular features of gemcitabine resistance and identifying candidate biomarkers and combinatorial targets for the treatment.
In this study, we established 66 patient-derived xenografts (PDXs) on the basis of clinical pancreatic cancer specimens and treated them with gemcitabine. We generated multiomics data (including whole-exome sequencing, RNA sequencing, miRNA sequencing, and DNA methylation array) of 15 drug-sensitive and 13 -resistant PDXs before and after the gemcitabine treatment. We performed integrative computational analysis to identify the molecular networks related to gemcitabine intrinsic and acquired resistance. Then, short hairpin RNA-based high-content screening was implemented to validate the function of the deregulated genes.
The comprehensive multiomics analysis and functional experiment revealed that and had strong effects on cell proliferation, and and contributed to gemcitabine resistance in pancreatic cancer cells. Moreover, we found miR-135a-5p was significantly associated with the prognosis of patients with pancreatic cancer and could be a candidate biomarker to predict gemcitabine response. Comparing the molecular features before and after the treatment, we found that PI3K-Akt, p53, and hypoxia-inducible factor-1 pathways were significantly altered in multiple patients, providing candidate target pathways for reducing the acquired resistance.
This integrative genomic study systematically investigated the predictive markers and molecular mechanisms of chemoresistance in pancreatic cancer and provides potential therapy targets for overcoming gemcitabine resistance.
吉西他滨最常用于治疗胰腺癌。然而,频繁发生的耐药性的分子特征和机制仍不清楚。本研究旨在探索吉西他滨耐药的分子特征,并确定治疗的候选生物标志物和联合靶标。
本研究基于临床胰腺癌标本建立了 66 例患者来源的异种移植(PDX),并用吉西他滨进行治疗。我们对 15 例药物敏感和 13 例耐药 PDX 治疗前后的多组学数据(包括全外显子测序、RNA 测序、miRNA 测序和 DNA 甲基化阵列)进行了分析。我们进行了综合计算分析,以确定与吉西他滨内在和获得性耐药相关的分子网络。然后,我们通过基于短发夹 RNA 的高内涵筛选来验证失调基因的功能。
全面的多组学分析和功能实验表明, 和 对细胞增殖有很强的影响, 和 有助于胰腺癌细胞对吉西他滨的耐药性。此外,我们发现 miR-135a-5p 与胰腺癌患者的预后显著相关,可能是预测吉西他滨反应的候选生物标志物。比较治疗前后的分子特征,我们发现 PI3K-Akt、p53 和缺氧诱导因子-1 通路在多个患者中发生了显著改变,为降低获得性耐药性提供了候选靶通路。
本研究通过综合基因组学系统地研究了胰腺癌化疗耐药的预测标志物和分子机制,并为克服吉西他滨耐药性提供了潜在的治疗靶点。