Perales-Patón Javier, Piñeiro-Yañez Elena, Tejero Héctor, López-Casas Pedro P, Hidalgo Manuel, Gómez-López Gonzalo, Al-Shahrour Fátima
Bioinformatics Unit, Spanish National Cancer Research Centre (CNIO), Madrid, Spain.
Public Health Genomics. 2017;20(2):81-91. doi: 10.1159/000479812. Epub 2017 Sep 1.
Pancreatic ductal adenocarcinoma (PDAC) is a leading cause of cancer-related death among solid malignancies. Unfortunately, PDAC lethality has not substantially decreased over the past 20 years. This aggressiveness is related to the genomic complexity and heterogeneity of PDAC, but also to the absence of an effective screening for the detection of early-stage tumors and a lack of efficient therapeutic options. Therefore, there is an urgent need to improve the arsenal of anti-PDAC drugs for an effective treatment of these patients. Patient-derived xenograft (PDX) mouse models represent a promising strategy to personalize PDAC treatment, offering a bench testing of candidate treatments and helping to select empirical treatments in PDAC patients with no therapeutic targets. Moreover, bioinformatics-based approaches have the potential to offer systematic insights into PDAC etiology predicting putatively actionable tumor-specific genomic alterations, identifying novel biomarkers and generating disease-associated gene expression signatures. This review focuses on recent efforts to individualize PDAC treatments using PDX models. Additionally, we discuss the current understanding of the PDAC genomic landscape and the putative druggable targets derived from mutational studies. PDAC molecular subclassifications and gene expression profiling studies are reviewed as well. Finally, latest bioinformatics methodologies based on somatic variant detection and prioritization, in silico drug response prediction, and drug repositioning to improve the treatment of advanced PDAC tumors are also covered.
胰腺导管腺癌(PDAC)是实体恶性肿瘤中癌症相关死亡的主要原因。不幸的是,在过去20年里,PDAC的致死率并未大幅下降。这种侵袭性与PDAC的基因组复杂性和异质性有关,也与缺乏有效的早期肿瘤检测筛查方法以及有效的治疗选择有关。因此,迫切需要增加抗PDAC药物的种类,以便有效治疗这些患者。患者来源的异种移植(PDX)小鼠模型是实现PDAC个性化治疗的一种有前景的策略,可对候选治疗方法进行实验测试,并有助于为无治疗靶点的PDAC患者选择经验性治疗方案。此外,基于生物信息学的方法有可能为PDAC病因提供系统性见解,预测可能可采取行动的肿瘤特异性基因组改变,识别新的生物标志物并生成疾病相关的基因表达特征。本综述重点关注利用PDX模型实现PDAC个性化治疗的最新研究进展。此外,我们还讨论了目前对PDAC基因组格局的认识以及突变研究中得出的潜在可药物化靶点。同时也对PDAC分子亚分类和基因表达谱研究进行了综述。最后,还涵盖了基于体细胞变异检测与优先级排序、计算机模拟药物反应预测以及药物重新定位以改善晚期PDAC肿瘤治疗的最新生物信息学方法。