Cécile Beust, Alberto Valdeolivas, Anthony Baptista, Galadriel Brière, Nicolas Lévy, Ozan Ozisik, Anaïs Baudot
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引用次数: 0
Abstract
Premature Aging (PA) diseases are rare genetic disorders that mimic some aspects of physiological aging at an early age. Various causative genes of PA diseases have been identified in recent years, providing insights into some dysfunctional cellular processes. However, the identification of PA genes also revealed significant genetic heterogeneity and highlighted the gaps in this understanding of PA-associated molecular mechanisms. Furthermore, many patients remain undiagnosed. Overall, the current lack of knowledge about PA diseases hinders the development of effective diagnosis and therapies and poses significant challenges to improving patient care.
Here, a network-based approach to systematically unravel the cellular functions disrupted in PA diseases is presented. Leveraging a network community identification algorithm, it is delved into a vast multilayer network of biological interactions to extract the communities of 67 PA diseases from their 132 associated genes. It is found that these communities can be grouped into six distinct clusters, each reflecting specific cellular functions: DNA repair, cell cycle, transcription regulation, inflammation, cell communication, and vesicle-mediated transport. That these clusters collectively represent the landscape of the molecular mechanisms that are perturbed in PA diseases, providing a framework for better understanding their pathogenesis is proposed. Intriguingly, most clusters also exhibited a significant enrichment in genes associated with physiological aging, suggesting a potential overlap between the molecular underpinnings of PA diseases and natural aging.
早衰(PA)疾病是一种罕见的遗传性疾病,会在幼年时模拟生理衰老的某些方面。近年来发现了多种 PA 疾病的致病基因,为了解某些功能失调的细胞过程提供了线索。然而,PA 基因的鉴定也揭示了显著的遗传异质性,凸显了人们对 PA 相关分子机制认识的不足。此外,许多患者仍未得到诊断。总之,目前对 PA 疾病缺乏了解阻碍了有效诊断和疗法的开发,并对改善患者护理提出了重大挑战。本文介绍了一种基于网络的方法,以系统地揭示 PA 疾病所破坏的细胞功能。利用网络群落识别算法,深入研究了庞大的多层生物相互作用网络,从 67 种 PA 疾病的 132 个相关基因中提取出其群落。研究发现,这些群落可分为六个不同的群组,每个群组都反映了特定的细胞功能:DNA修复、细胞周期、转录调控、炎症、细胞通讯和囊泡介导的转运。这些群组共同代表了 PA 疾病中受到干扰的分子机制的全貌,为更好地理解其发病机制提供了一个框架。耐人寻味的是,大多数集群还表现出与生理衰老相关基因的显著富集,这表明 PA 疾病的分子基础与自然衰老之间存在潜在的重叠。