First Clinical Medical College, Heilongjiang University of Chinese Medicine, Harbin, 150040, China.
Department of Obstetrics and Gynecology, The First Affiliated Hospital of Heilongjiang University of Chinese Medicine, Harbin, 150040, China.
J Ovarian Res. 2024 Jan 23;17(1):22. doi: 10.1186/s13048-023-01340-w.
The mechanisms and risk factors underlying ovarian cancer (OC) remain under investigation, making the identification of new prognostic biomarkers and improved predictive factors critically important. Recently, circulating metabolites have shown potential in predicting survival outcomes and may be associated with the pathogenesis of OC. However, research into their genetic determinants is limited, and there are some inadequacies in understanding the distinct subtypes of OC. In this context, we conducted a Mendelian randomization study aiming to provide evidence for the relationship between genetically determined metabolites (GDMs) and the risk of OC and its subtypes.
In this study, we consolidated genetic statistical data of GDMs with OC and its subtypes through a genome-wide association study (GWAS) and conducted a two-sample Mendelian randomization (MR) analysis. The inverse variance weighted (IVW) method served as the primary approach, with MR-Egger and weighted median methods employed for cross-validation to determine whether a causal relationship exists between the metabolites and OC risk. Moreover, a range of sensitivity analyses were conducted to validate the robustness of the results. MR-Egger intercept, and Cochran's Q statistical analysis were used to evaluate possible heterogeneity and pleiotropy. False discovery rate (FDR) correction was applied to validate the findings. We also conducted a reverse MR analysis to validate whether the observed blood metabolite levels were influenced by OC risk. Additionally, metabolic pathway analysis was carried out using the MetaboAnalyst 5.0 software.
In MR analysis, we discovered 18 suggestive causal associations involving 14 known metabolites, 8 metabolites as potential risk factors, and 6 as potential cancer risk reducers. In addition, three significant pathways, "caffeine metabolism," "arginine biosynthesis," and "citrate cycle (TCA cycle)" were associated with the development of mucinous ovarian cancer (MOC). The pathways "caffeine metabolism" and "alpha-linolenic acid metabolism" were associated with the onset of endometrioid ovarian cancer (OCED).
Our MR analysis revealed both protective and risk-associated metabolites, providing insights into the potential causal relationships between GDMs and the metabolic pathways related to OC and its subtypes. The metabolites that drive OC could be potential candidates for biomarkers.
卵巢癌(OC)的发病机制和风险因素仍在研究中,因此确定新的预后生物标志物和改进的预测因素至关重要。最近,循环代谢物在预测生存结果方面显示出了潜力,并且可能与 OC 的发病机制有关。然而,对其遗传决定因素的研究有限,并且对 OC 的不同亚型的理解也存在一些不足。在这种情况下,我们进行了一项孟德尔随机化研究,旨在为遗传确定的代谢物(GDMs)与 OC 及其亚型的风险之间的关系提供证据。
在这项研究中,我们通过全基因组关联研究(GWAS)整合了与 OC 及其亚型相关的 GDMs 的遗传统计数据,并进行了两样本孟德尔随机化(MR)分析。逆方差加权(IVW)方法是主要方法,MR-Egger 和加权中位数方法用于交叉验证,以确定代谢物与 OC 风险之间是否存在因果关系。此外,还进行了一系列敏感性分析以验证结果的稳健性。MR-Egger 截距和 Cochran 的 Q 统计分析用于评估可能的异质性和多效性。应用错误发现率(FDR)校正来验证结果。我们还进行了反向 MR 分析,以验证观察到的血液代谢物水平是否受到 OC 风险的影响。此外,还使用 MetaboAnalyst 5.0 软件进行了代谢途径分析。
在 MR 分析中,我们发现了 18 个与 14 种已知代谢物、8 种代谢物作为潜在风险因素和 6 种代谢物作为潜在癌症风险降低物有关的因果关联。此外,三个显著的途径,“咖啡因代谢”,“精氨酸生物合成”和“柠檬酸循环(TCA 循环)”与粘液性卵巢癌(MOC)的发生有关。途径“咖啡因代谢”和“α-亚麻酸代谢”与子宫内膜样卵巢癌(OCED)的发病有关。
我们的 MR 分析揭示了保护性和风险相关的代谢物,为 GDMs 与 OC 及其亚型相关的代谢途径之间的潜在因果关系提供了见解。驱动 OC 的代谢物可能是潜在的生物标志物候选物。