基于机器学习算法和实验的骨关节炎液-液相分离相关诊断生物标记物探索

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
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引用次数: 0

摘要

背景骨关节炎(OA)是一种以软骨退化和关节炎症为特征的常见关节疾病。液-液相分离(LLPS)是一种参与细胞组织的生物物理过程,最近在 OA 研究中受到关注。我们分析了 GSE48556 数据集中的基因表达数据,以确定与 OA 相关的 LLPS 相关基因。我们利用差异表达分析、富集分析和机器学习算法探讨了 LLPS 相关基因在 OA 中的功能意义,并构建了 OA 诊断模型。此外,还以IL-1β为促炎因子建立了体外OA模型,并通过Western印迹检测了OA生物标志物的蛋白表达水平。富集分析表明,这些基因主要富集在 mRNA 代谢过程、细胞质颗粒和胰岛素抵抗中。利用机器学习算法筛选出了四个 OA 特征基因,包括 ADRB2、H3F3B、GNL3L 和 PELO。这些基因显示出令人满意的诊断价值。此外,这些生物标志物还与免疫细胞(包括 T 细胞 CD8 和单核细胞)有关。体外实验表明,IL-1β刺激会明显抑制软骨细胞的活力,并提高促炎因子的水平,从而模拟出OA的炎症状态。IL-1β组中GNL3L和H3F3B蛋白的表达水平明显低于对照组,而ADRB2和PELO的表达水平较高,这与生物信息学分析的结果一致。这些发现深入揭示了 OA 发病的分子机制,为开发新型治疗策略提供了机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring liquid-liquid phase separation-related diagnostic biomarkers in osteoarthritis based on machine learning algorithms and experiment

Background

Osteoarthritis (OA) is a prevalent joint disorder characterized by cartilage degeneration and joint inflammation. Liquid-liquid phase separation (LLPS), a biophysical process involved in cellular organization, has recently gained attention in OA research. However, the relationship between LLPS and OA remains poorly understood.

Methods

We analyzed gene expression data from the GSE48556 dataset to identify LLPS-related genes associated with OA. Differential expression analysis, enrichment analyses, and machine learning algorithms were employed to explore the functional significance of LLPS-related genes in OA and then construct a diagnostic model for OA. In addition, IL-1β as a pro-inflammatory factor to establish an in vitro OA model, and the protein expression levels of OA biomarkers were detected by western blot.

Results

A total of 145 LLPS-related genes were screened in OA samples. Enrichment analyses revealed these genes were mainly enriched in mRNA metabolic processes, cytoplasmic granules, and insulin resistance. Four characteristic genes for OA were selected by using machine learning algorithms, including ADRB2, H3F3B, GNL3L, and PELO. These genes showed satisfactory diagnostic values. Furthermore, there were association between these biomarkers and immune cells, including T cells CD8 and monocytes. In vitro experiments showed that IL-1β stimulation significantly inhibited the cell viability of chondrocytes and enhanced the levels of pro-inflammatory factors, that could mimic the inflammatory state of OA. The expression levels of GNL3L and H3F3B proteins in IL-1β group were obviously lower than those in control group, while levels of ADRB2 and PELO were higher, which was consistent with the results of bioinformatics analysis.

Conclusion

Our study identifies LLPS-related genes as potential diagnostic biomarkers for OA. These findings provide insights into the molecular mechanisms underlying OA pathogenesis and offer opportunities for the development of novel therapeutic strategies.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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