Borgmästars Emmy, Ulfenborg Benjamin, Johansson Mattias, Jonsson Pär, Billing Ola, Franklin Oskar, Lundin Christina, Jacobson Sara, Simm Maja, Lubovac-Pilav Zelmina, Sund Malin
Department of Diagnostics and Intervention/ Surgery, Umeå University, Umeå, Sweden.
School of Bioscience, Department of Biology and Bioinformatics, University of Skövde, Skövde, Sweden.
Transl Oncol. 2024 Oct;48:102059. doi: 10.1016/j.tranon.2024.102059. Epub 2024 Jul 16.
Pancreatic ductal adenocarcinoma (PDAC) is an aggressive disease with poor survival. Novel biomarkers are urgently needed to improve the outcome through early detection. Here, we aimed to discover novel biomarkers for early PDAC detection using multi-omics profiling in pre-diagnostic plasma samples biobanked after routine health examinations. A nested case-control study within the Northern Sweden Health and Disease Study was designed. Pre-diagnostic plasma samples from 37 future PDAC patients collected within 2.3 years before diagnosis and 37 matched healthy controls were included. We analyzed metabolites using liquid chromatography mass spectrometry and gas chromatography mass spectrometry, microRNAs by HTG edgeseq, proteins by multiplex proximity extension assays, as well as three clinical biomarkers using milliplex technology. Supervised and unsupervised multi-omics integration were performed as well as univariate analyses for the different omics types and clinical biomarkers. Multiple hypothesis testing was corrected using Benjamini-Hochberg's method and a false discovery rate (FDR) below 0.1 was considered statistically significant. Carbohydrate antigen (CA) 19-9 was associated with PDAC risk (OR [95 % CI] = 3.09 [1.31-7.29], FDR = 0.03) and increased closer to PDAC diagnosis. Supervised multi-omics models resulted in poor discrimination between future PDAC cases and healthy controls with obtained accuracies between 0.429-0.500. No single metabolite, microRNA, or protein was differentially altered (FDR < 0.1) between future PDAC cases and healthy controls. CA 19-9 levels increase up to two years prior to PDAC diagnosis but extensive multi-omics analysis including metabolomics, microRNAomics and proteomics in this cohort did not identify novel early biomarkers for PDAC.
胰腺导管腺癌(PDAC)是一种侵袭性疾病,生存率低。迫切需要新的生物标志物以通过早期检测改善预后。在此,我们旨在利用常规健康检查后生物样本库中保存的诊断前血浆样本的多组学分析,发现用于早期PDAC检测的新生物标志物。我们在瑞典北部健康与疾病研究中设计了一项巢式病例对照研究。纳入了37例未来PDAC患者在诊断前2.3年内采集的诊断前血浆样本以及37例匹配的健康对照。我们使用液相色谱质谱联用仪和气相色谱质谱联用仪分析代谢物,通过HTG edgeseq分析微小RNA,通过多重邻近延伸分析法定量蛋白质,以及使用Milliplex技术检测三种临床生物标志物。进行了监督和非监督多组学整合以及对不同组学类型和临床生物标志物的单变量分析。使用Benjamini-Hochberg方法校正多重假设检验,错误发现率(FDR)低于0.1被认为具有统计学意义。糖类抗原(CA)19-9与PDAC风险相关(OR [95% CI] = 3.09 [1.31 - 7.29],FDR = 0.03),且在接近PDAC诊断时升高。监督多组学模型对未来PDAC病例和健康对照的区分能力较差,获得的准确率在0.429 - 0.500之间。在未来PDAC病例和健康对照之间,没有单一的代谢物、微小RNA或蛋白质有差异改变(FDR < 0.1)。CA 19-9水平在PDAC诊断前两年就开始升高,但在该队列中进行的包括代谢组学、微小RNA组学和蛋白质组学在内的广泛多组学分析未发现PDAC新的早期生物标志物。