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非靶向代谢组学揭示了血清代谢物与原发性卵巢功能不全之间的新联系:一项孟德尔随机研究。

Non-targeted metabolomics revealed novel links between serum metabolites and primary ovarian insufficiency: a Mendelian randomization study.

机构信息

Center of Reproductive Medicine, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan, China.

Department of Urology, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan, China.

出版信息

Front Endocrinol (Lausanne). 2024 Apr 26;15:1307944. doi: 10.3389/fendo.2024.1307944. eCollection 2024.

Abstract

BACKGROUND

Primary ovarian insufficiency (POI) is a common clinical endocrine disorder with a high heterogeneity in both endocrine hormones and etiological phenotypes. However, the etiology of POI remains unclear. Herein, we unraveled the causality of genetically determined metabolites (GDMs) on POI through Mendelian randomization (MR) study with the overarching goal of disclosing underlying mechanisms.

METHODS

Genetic links with 486 metabolites were retrieved from GWAS data of 7824 European participants as exposures, while GWAS data concerning POI were utilized as the outcome. Via MR analysis, we selected inverse-variance weighted (IVW) method for primary analysis and several additional MR methods (MR-Egger, weighted median, and MR-PRESSO) for sensitivity analyses. MR-Egger intercept and Cochran's Q statistical analysis were conducted to assess potential heterogeneity and pleiotropy. In addition, genetic variations in the key target metabolite were scrutinized further. We conducted replication, meta-analysis, and linkage disequilibrium score regression (LDSC) to reinforce our findings. The MR Steiger test and reverse MR analysis were utilized to assess the robustness of genetic directionality. Furthermore, to deeply explore causality, we performed colocalization analysis and metabolic pathway analysis.

RESULTS

Via IVW methods, our study identified 33 metabolites that might exert a causal effect on POI development. X-11437 showed a robustly significant relationship with POI in four MR analysis methods ( =0.0119; =0.0145; =0.0499; =0.0248). Among the identified metabolites, N-acetylalanine emerged as the most significant in the primary MR analysis using IVW method, reinforcing its pivotal status as a serum biomarker indicative of an elevated POI risk with the most notable P-value ( =0.0007; =0.0022). Multiple analyses were implemented to further demonstrate the reliability and stability of our deduction of causality. Reverse MR analysis did not provide evidence for the causal effects of POI on 33 metabolites. Colocalization analysis revealed that some causal associations between metabolites and POI might be driven by shared genetic variants.

CONCLUSION

By incorporating genomics with metabolomics, this study sought to offer a comprehensive analysis in causal impact of serum metabolome phenotypes on risks of POI with implications for underlying mechanisms, disease screening and prevention.

摘要

背景

原发性卵巢功能不全(POI)是一种常见的临床内分泌紊乱,其内分泌激素和病因表型具有高度异质性。然而,POI 的病因仍不清楚。在此,我们通过孟德尔随机化(MR)研究揭示了遗传决定的代谢物(GDMs)对 POI 的因果关系,旨在揭示潜在的机制。

方法

从 7824 名欧洲参与者的 GWAS 数据中检索到与 486 种代谢物相关的遗传关联作为暴露因素,而 GWAS 数据则用于 POI 作为结果。通过 MR 分析,我们选择了逆方差加权(IVW)方法进行主要分析,并使用了几种额外的 MR 方法(MR-Egger、加权中位数和 MR-PRESSO)进行敏感性分析。MR-Egger 截距和 Cochran's Q 统计分析用于评估潜在的异质性和多效性。此外,我们还进一步研究了关键靶代谢物的遗传变异。我们进行了复制、荟萃分析和连锁不平衡得分回归(LDSC)以加强我们的发现。MR Steiger 检验和反向 MR 分析用于评估遗传方向性的稳健性。此外,为了深入探讨因果关系,我们进行了 colocalization 分析和代谢途径分析。

结果

通过 IVW 方法,我们的研究确定了 33 种代谢物可能对 POI 发展产生因果影响。X-11437 在四种 MR 分析方法中与 POI 具有显著的关系( =0.0119; =0.0145; =0.0499; =0.0248)。在鉴定出的代谢物中,N-乙酰丙氨酸在使用 IVW 方法进行的主要 MR 分析中表现出最显著的关系,这表明它作为一种血清生物标志物,具有指示 POI 风险升高的最显著 P 值( =0.0007; =0.0022)。进行了多项分析以进一步证明我们推断因果关系的可靠性和稳定性。反向 MR 分析并未提供 POI 对 33 种代谢物的因果效应的证据。colocalization 分析表明,代谢物与 POI 之间的一些因果关系可能是由共同的遗传变异驱动的。

结论

通过将基因组学与代谢组学相结合,本研究旨在对血清代谢组表型对 POI 风险的因果影响进行全面分析,为潜在机制、疾病筛查和预防提供依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bd70/11082646/6f53935ced7c/fendo-15-1307944-g001.jpg

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