Devasahayam Arokia Balaya Rex, Sen Partho, Grant Caroline W, Zenka Roman, Sappani Marimuthu, Lakshmanan Jeyaseelan, Athreya Arjun P, Kandasamy Richard K, Pandey Akhilesh, Byeon Seul Kee
Department of Laboratory Medicine and Pathology, Mayo Clinic, Rochester, MN, 55905, USA.
Department of Molecular Pharmacology and Experimental Therapeutics, Mayo Clinic, Rochester, MN, 55905, USA.
J Gastroenterol. 2025 Apr;60(4):496-511. doi: 10.1007/s00535-024-02197-6. Epub 2024 Dec 12.
Pancreatic ductal adenocarcinoma (PDAC) remains a formidable health challenge due to its detection at a late stage and a lack of reliable biomarkers for early detection. Although levels of carbohydrate antigen 19-9 are often used in conjunction with imaging-based tests to aid in the diagnosis of PDAC, there is still a need for more sensitive and specific biomarkers for early detection of PDAC.
We obtained serum samples from 88 subjects (patients with PDAC (n = 58) and controls (n = 30)). We carried out a multi-omics analysis to measure cytokines and related proteins using proximity extension technology and lipidomics and metabolomics using tandem mass spectrometry. Statistical analysis was carried out to find molecular alterations in patients with PDAC and a machine learning model was used to derive a molecular signature of PDAC.
We quantified 1,462 circulatory proteins along with 873 lipids and 1,001 metabolites. A total of 505 proteins, 186 metabolites and 33 lipids including bone marrow stromal antigen 2 (BST2), keratin 18 (KRT18), and cholesteryl ester(20:5) were found to be significantly altered in patients. We identified different levels of sphingosine, sphinganine, urobilinogen and lactose indicating that glycosphingolipid and galactose metabolisms were significantly altered in patients compared to controls. In addition, elevated levels of diacylglycerols and decreased cholesteryl esters were observed in patients. Using a machine learning model, we identified a signature of 38 biomarkers for PDAC, composed of 21 proteins, 4 lipids, and 13 metabolites.
Overall, this study identified several proteins, metabolites and lipids involved in various pathways including cholesterol and lipid metabolism to be changing in patients. In addition, we discovered a multi-analyte signature that could be further tested for detection of PDAC.
胰腺导管腺癌(PDAC)因其在晚期才被发现且缺乏用于早期检测的可靠生物标志物,仍然是一个严峻的健康挑战。尽管糖类抗原19-9的水平常与基于成像的检测方法联合使用以辅助PDAC的诊断,但仍需要更敏感和特异的生物标志物用于PDAC的早期检测。
我们从88名受试者(58例PDAC患者和30例对照)获取血清样本。我们进行了多组学分析,使用邻位延伸技术测量细胞因子和相关蛋白,并使用串联质谱进行脂质组学和代谢组学分析。进行统计分析以发现PDAC患者的分子改变,并使用机器学习模型得出PDAC的分子特征。
我们定量了1462种循环蛋白以及873种脂质和1001种代谢物。共发现505种蛋白、186种代谢物和33种脂质,包括骨髓基质抗原2(BST2)、角蛋白18(KRT18)和胆固醇酯(20:5)在患者中发生了显著改变。我们鉴定出不同水平的鞘氨醇、鞘氨醇胺、尿胆原和乳糖,表明与对照相比,患者的糖鞘脂和半乳糖代谢发生了显著改变。此外,在患者中观察到二酰甘油水平升高和胆固醇酯水平降低。使用机器学习模型,我们鉴定出一个由38种生物标志物组成的PDAC特征,包括21种蛋白、4种脂质和13种代谢物。
总体而言,本研究鉴定出多种参与包括胆固醇和脂质代谢等各种途径的蛋白、代谢物和脂质在患者中发生了变化。此外,我们发现了一种多分析物特征,可进一步进行检测PDAC的测试。