Department of Biomedical Engineering, School of Intelligent Medicine, China Medical University, Shenyang, Liaoning, China.
Shanghai-MOST Key Laboratory of Health and Disease Genomics & Institute for Genome and Bioinformatics, Shanghai Institute for Biomedical and Pharmaceutical Technologies, Shanghai, China.
Front Endocrinol (Lausanne). 2023 May 24;14:1196293. doi: 10.3389/fendo.2023.1196293. eCollection 2023.
BACKGROUND: Type 2 diabetes mellitus (T2DM) is a chronic endocrine metabolic disease caused by insulin dysregulation. Studies have shown that aging-related oxidative stress (as "oxidative aging") play a critical role in the onset and progression of T2DM, by leading to an energy metabolism imbalance. However, the precise mechanisms through which oxidative aging lead to T2DM are yet to be fully comprehended. Thus, it is urgent to integrate the underlying mechanisms between oxidative aging and T2DM, where meaningful prediction models based on relative profiles are needed. METHODS: First, machine learning was used to build the aging model and disease model. Next, an integrated oxidative aging model was employed to identify crucial oxidative aging risk factors. Finally, a series of bioinformatic analyses (including network, enrichment, sensitivity, and pan-cancer analyses) were used to explore potential mechanisms underlying oxidative aging and T2DM. RESULTS: The study revealed a close relationship between oxidative aging and T2DM. Our results indicate that nutritional metabolism, inflammation response, mitochondrial function, and protein homeostasis are key factors involved in the interplay between oxidative aging and T2DM, even indicating key indices across different cancer types. Therefore, various risk factors in T2DM were integrated, and the theories of oxi-inflamm-aging and cellular senescence were also confirmed. CONCLUSION: In sum, our study successfully integrated the underlying mechanisms linking oxidative aging and T2DM through a series of computational methodologies.
背景:2 型糖尿病(T2DM)是一种由胰岛素失调引起的慢性内分泌代谢疾病。研究表明,与年龄相关的氧化应激(即“氧化衰老”)在 T2DM 的发病和进展中起着关键作用,导致能量代谢失衡。然而,氧化衰老导致 T2DM 的具体机制尚未完全被理解。因此,迫切需要整合氧化衰老与 T2DM 之间的潜在机制,需要基于相对特征建立有意义的预测模型。
方法:首先,使用机器学习构建衰老模型和疾病模型。接下来,采用综合氧化衰老模型来识别关键的氧化衰老风险因素。最后,进行了一系列生物信息学分析(包括网络、富集、敏感性和泛癌分析),以探讨氧化衰老和 T2DM 潜在机制。
结果:研究揭示了氧化衰老与 T2DM 之间的密切关系。我们的结果表明,营养代谢、炎症反应、线粒体功能和蛋白质稳态是氧化衰老与 T2DM 相互作用的关键因素,甚至表明了不同癌症类型的关键指标。因此,整合了 T2DM 中的各种风险因素,并证实了氧化-炎症-衰老和细胞衰老理论。
结论:总之,我们通过一系列计算方法成功整合了氧化衰老与 T2DM 之间的潜在机制。
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