Cao Jinlong, Chen Siyu, Wang Jirong, Fan Xinpeng, Liu Shanhui, Shan Jiaqi, Li Xiaoran, Yang Li
Department of Urology, Lanzhou University Second Hospital, Lanzhou, 730000, China.
Gansu Province Clinical Research Center for Urology, Lanzhou, 730000, China.
Discov Oncol. 2025 May 2;16(1):660. doi: 10.1007/s12672-025-02476-5.
The plasma proteins are an important source of therapeutic targets. This study aims to address the diagnostic and therapeutic challenges of bladder cancer (BC) by using Mendelian randomization (MR) with a large sample size from multiple centers to identify the plasma proteins which are causally related to the pathogenesis of BC. Followed by merging nine plasma protein datasets from six studies, a total of 5538 plasma proteins and three BC datasets (ieu-b-4874, ukb-b-8193, FinnGen_R11_C3_ BLADDER_EXALL) were used to perform proteome‑wide MR to estimate the contribution of plasma proteins to BC, separately. To ensure the robustness of the results, Veen intersection operation on MR results revealed that 14 meaningful candidate pathogenic plasma proteins (ANKRD27, BIN1, FAHD1, IL17RB, MRPL21, PPT1, PSCA, SLC16A3, SLURP1, SPON2, TACSTD2, TMEM87B, YWHAB) were obtain from three datasets. Then, we validated these proteins through various methods, including meta-analysis, reverse MR, Bayesian co-localization analysis and summary-data-based MR (SMR), and pathogenic plasma proteins were divided into three layers according to the validation confidence. We then performed single-cell transcriptome analysis (Registration number: GSE222315), which showed that 13/14 candidate plasma proteins were expressed and 12 proteins were differentially expressed in at least one cell type. Finally, protein-protein interactions (PPI) analysis and druggability evaluation were performed to explore the relationship between the interaction of plasma protein markers and existing cancer drug targets. Summarily, our research uncovered 14 plasma protein biomarkers linked to BC risk, offering novel perspectives on the etiology and potential targets for developing screening biomarkers and therapeutic drugs for BC.
血浆蛋白是治疗靶点的重要来源。本研究旨在通过孟德尔随机化(MR)方法,利用来自多个中心的大样本数据,解决膀胱癌(BC)的诊断和治疗挑战,以识别与BC发病机制有因果关系的血浆蛋白。在合并来自六项研究的九个血浆蛋白数据集后,总共使用了5538种血浆蛋白和三个BC数据集(ieu-b-4874、ukb-b-8193、FinnGen_R11_C3_BLADDER_EXALL)分别进行全蛋白质组MR,以评估血浆蛋白对BC的贡献。为确保结果的稳健性,对MR结果进行Veen交集运算,从三个数据集中获得了14种有意义的候选致病血浆蛋白(ANKRD27、BIN1、FAHD1、IL17RB、MRPL21、PPT1、PSCA、SLC16A3、SLURP1、SPON2、TACSTD2、TMEM87B、YWHAB)。然后,我们通过多种方法对这些蛋白进行验证,包括荟萃分析、反向MR、贝叶斯共定位分析和基于汇总数据的MR(SMR),并根据验证置信度将致病血浆蛋白分为三层。接着,我们进行了单细胞转录组分析(登记号:GSE222315),结果显示14种候选血浆蛋白中有13种表达,且至少在一种细胞类型中有12种蛋白差异表达。最后,进行了蛋白质-蛋白质相互作用(PPI)分析和药物可及性评估,以探讨血浆蛋白标志物相互作用与现有癌症药物靶点之间的关系。总之,我们的研究发现了14种与BC风险相关的血浆蛋白生物标志物,为BC的病因学以及开发筛查生物标志物和治疗药物的潜在靶点提供了新的视角。