Guangdong Key Laboratory for Biomedical Measurements and Ultrasound Imaging, School of Biomedical Engineering, National-Regional Key Technology Engineering Laboratory for Medical Ultrasound, Shenzhen University Medical School, Shenzhen, China.
The Reproductive Medicine Center, The Third Affiliated Hospital of Shenzhen University, No. 47 Youyi Rd, Shenzhen, China.
Reprod Biol Endocrinol. 2024 Aug 19;22(1):104. doi: 10.1186/s12958-024-01277-9.
Premature ovarian failure (POF) is a clinical condition characterized by the cessation of ovarian function, leading to infertility. The underlying molecular mechanisms remain unclear, and no predictable biomarkers have been identified. This study aimed to investigate the protein and metabolite contents of serum extracellular vesicles to investigate underlying molecular mechanisms and explore potential biomarkers.
This study was conducted on a cohort consisting of 14 POF patients and 16 healthy controls. The extracellular vesicles extracted from the serum of each group were subjected to label-free proteomic and unbiased metabolomic analysis. Differentially expressed proteins and metabolites were annotated. Pathway network clustering was conducted with further correlation analysis. The biomarkers were confirmed by ROC analysis and random forest machine learning.
The proteomic and metabolomic profiles of POF patients and healthy controls were compared. Two subgroups of POF patients, Pre-POF and Pro-POF, were identified based on the proteomic profile, while all patients displayed a distinguishable metabolomic profile. Proteomic analysis suggested that inflammation serves as an early factor contributing to the infertility of POF patients. For the metabolomic analysis, despite the dysfunction of metabolism, oxidative stress and hormone imbalance were other key factors appearing in POF patients. Signaling pathway clustering of proteomic and metabolomic profiles revealed the progression of dysfunctional energy metabolism during the development of POF. Moreover, correlation analysis identified that differentially expressed proteins and metabolites were highly associated, with six of them being selected as potential biomarkers. ROC curve analysis, together with random forest machine learning, suggested that AFM combined with 2-oxoarginine was the best diagnostic biomarker for POF.
Omics analysis revealed that inflammation, oxidative stress, and hormone imbalance are factors that damage ovarian tissue, but the progressive dysfunction of energy metabolism might be the critical pathogenic pathway contributing to the development of POF. AFM combined with 2-oxoarginine serves as a precise biomarker for clinical POF diagnosis.
卵巢早衰(POF)是一种以卵巢功能停止为特征的临床病症,导致不孕。其潜在的分子机制尚不清楚,也没有确定可预测的生物标志物。本研究旨在通过研究血清细胞外囊泡的蛋白质和代谢物含量,探讨潜在的分子机制和寻找潜在的生物标志物。
本研究对 14 名 POF 患者和 16 名健康对照者组成的队列进行了研究。对每组血清中提取的细胞外囊泡进行无标记蛋白质组学和无偏代谢组学分析。对差异表达的蛋白质和代谢物进行注释。采用通路网络聚类进行进一步的相关分析。通过 ROC 分析和随机森林机器学习来验证生物标志物。
比较了 POF 患者和健康对照组的蛋白质组学和代谢组学图谱。根据蛋白质组学图谱,确定了两个 POF 患者亚组,即 Pre-POF 和 Pro-POF,而所有患者都显示出可区分的代谢组学图谱。蛋白质组学分析表明,炎症是导致 POF 患者不孕的早期因素。对于代谢组学分析,尽管代谢功能失调,但氧化应激和激素失衡也是 POF 患者的另一个关键因素。蛋白质组学和代谢组学图谱的信号通路聚类揭示了 POF 发展过程中功能失调的能量代谢的进展。此外,相关性分析表明差异表达的蛋白质和代谢物高度相关,其中有 6 个被选为潜在的生物标志物。ROC 曲线分析和随机森林机器学习表明,AFM 与 2-氧代精氨酸结合是诊断 POF 的最佳诊断生物标志物。
组学分析表明,炎症、氧化应激和激素失衡是破坏卵巢组织的因素,但能量代谢的进行性功能障碍可能是导致 POF 发展的关键致病途径。AFM 与 2-氧代精氨酸结合可作为 POF 临床诊断的精确生物标志物。