Screening of diagnostic biomarkers for ferroptosis-related osteoarthritis and construction of a risk-prognosis model

医学 列线图 骨关节炎 生物标志物 逻辑回归 滑膜炎 生物信息学 疾病 病理 肿瘤科 内科学 关节炎 生物 生物化学 替代医学
作者
Yiqun Yan,Jun-Yan He,Wendan Cheng
出处
期刊:Annals of medicine and surgery [Wolters Kluwer]
被引量:1
标识
DOI:10.1097/ms9.0000000000001696
摘要

Background: Osteoarthritis (OA) is the most prevalent and commonly chronic joint disease that frequently develops among the elderly population. It is not just a single tissue that is affected, but rather a pathology involving the entire joint. Among them, synovitis is a key pathological change in OA. Ferroptosis is a newly discovered form of cell death that results from the buildup of lipid peroxidation. However, the role and impact of it in OA are yet to be explored. Objective: The key to this work is to uncover the mechanisms of ferroptosis-related OA pathogenesis and develop more novel diagnostic biomarkers to facilitate the diagnostic and therapeutic of OA. Materials and Methods: Download ferroptosis-related genes (FRGs) and OA synovial chip datasets separately from the FerrDB and GEO databases. Identify FDEGs using R software, obtain the intersection genes through two machine learning algorithms, and obtain diagnostic biomarkers after logistic regression analysis. Verify the diagnostic and therapeutic efficacy of specific genes for OA through the construction of clinical risk prognostic models using ROC curves and nomogram. Simultaneously, correlations between specific genes and OA immune cell infiltration co-expression were constructed. Finally, verify the differential presentation of specific genes in OA and Health Control (HC) synovium. Results: Obtain 38 FDEGs through screening. Based on machine learning algorithms and logistic regression analysis, select AGPS, BRD4, RBMS1, and EGR1 as diagnostic biomarker genes. The diagnostic and therapeutic efficacy of the four specific genes for OA has been validated by ROC curves and nomogram of clinical risk prognostic models. The analysis of immune cell infiltration and correlation suggests a close association between specific genes and OA immune cell infiltration. Further revealing the diagnostic value of specific genes for OA by the differential presentation analysis of their differential presentation in synovial tissue from OA and HC. Conclusion: This study identified four diagnostic biomarkers for OA that are associated with iron death. The establishment of a risk-prognostic model is conducive to the premature diagnosis of OA, evaluating functional recovery during rehabilitation, and guidance for subsequent treatment.

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