Feng Changzhou, Li Haining, Zhang Chu, Zhou Ying, Zhang Huanhuan, Zheng Ping, Zhao Shaolin, Wang Lei, Yang Jin
Department of Clinical Laboratory, The First People's Hospital of Lianyungang, The Affiliated Lianyungang Hospital of Xuzhou Medical University, The First Affiliated Hospital of Kangda College of Nanjing Medical University, Lianyungang, Jiangsu, China.
Front Mol Biosci. 2025 Jan 6;11:1406055. doi: 10.3389/fmolb.2024.1406055. eCollection 2024.
Prostate cancer (PCa), the most prevalent malignant neoplasm in males, involves complex biological mechanisms and risk factors, many of which remain unidentified. By employing a novel two-sample Mendelian randomization (MR) approach, this study aims to elucidate the causal relationships between the circulating metabolome and PCa risk, utilizing comprehensive data on genetically determined plasma metabolites and metabolite ratios.
For the MR analysis, we utilized data from the GWAS Catalog database to analyze 1,091 plasma metabolites and 309 ratios in relation to PCa outcomes within two independent GWAS datasets. The inverse variance weighted (IVW) method was the primary approach for determining the existence of the causal relationship, supplemented by additional MR methods for heterogeneity, pleiotropy, and cross-validation. The false discovery rate (FDR) and Bonferroni correction were applied to identify the most significant causative associations. Additionally, reverse MR and Steiger filtering were conducted to ascertain whether PCa influenced the observed metabolite levels. Furthermore, metabolic pathway analysis was conducted with MetaboAnalyst 6.0 software.
In the MR analysis, our findings reveal three overlapped metabolite ratios (arginine to glutamate, phosphate to uridine, and glycerol to mannitol/sorbitol) inversely associated with PCa risk. Following FDR correction (FDR < 0.05), cysteinylglycine disulfide was identified as a potential reducer of PCa risk, whereas Uridine and N-acetyl-L-glutamine (NAG) were pinpointed as potential risk factors. Notably, NAG (OR 1.044; 95% CI 1.025-1.063) emerged as a metabolite with significant causal influence, as confirmed by stringent Bonferroni correction ( < 0.05/1400). Steiger's directionality test ( < 0.001) and reverse MR confirmed the proposed causal direction. Furthermore, metabolic pathway analysis revealed a significant association between the "Glutathione Metabolism" pathway and PCa development.
This study provides novel insights into the potential causal effects of plasma metabolites and metabolite ratios on PCa. The identified metabolites and ratios could serve as candidate biomarkers, contributing to the elucidation of PCa's biological mechanisms.
前列腺癌(PCa)是男性中最常见的恶性肿瘤,其涉及复杂的生物学机制和风险因素,其中许多因素仍未明确。本研究采用一种新颖的两样本孟德尔随机化(MR)方法,旨在利用关于基因决定的血浆代谢物和代谢物比率的综合数据,阐明循环代谢组与PCa风险之间的因果关系。
对于MR分析,我们利用来自GWAS Catalog数据库的数据,在两个独立的GWAS数据集中分析1091种血浆代谢物和309种比率与PCa结果的关系。逆方差加权(IVW)方法是确定因果关系存在的主要方法,并辅以用于异质性、多效性和交叉验证的其他MR方法。应用错误发现率(FDR)和Bonferroni校正来识别最显著的因果关联。此外,进行了反向MR和Steiger过滤,以确定PCa是否影响观察到的代谢物水平。此外,使用MetaboAnalyst 6.0软件进行代谢途径分析。
在MR分析中,我们的研究结果揭示了三种与PCa风险呈负相关的重叠代谢物比率(精氨酸与谷氨酸、磷酸盐与尿苷、甘油与甘露醇/山梨醇)。经过FDR校正(FDR < 0.05)后,半胱氨酰甘氨酸二硫化物被确定为PCa风险的潜在降低因素,而尿苷和N-乙酰-L-谷氨酰胺(NAG)被确定为潜在风险因素。值得注意的是,经过严格的Bonferroni校正(< 0.05/1400)证实,NAG(OR 1.044;95% CI 1.025 - 1.063)是一种具有显著因果影响的代谢物。Steiger方向性检验(< 0.001)和反向MR证实了所提出的因果方向。此外,代谢途径分析揭示了“谷胱甘肽代谢”途径与PCa发生之间存在显著关联。
本研究为血浆代谢物和代谢物比率对PCa的潜在因果效应提供了新的见解。所确定的代谢物和比率可作为候选生物标志物,有助于阐明PCa的生物学机制。