Metabolic memory: mechanisms and diseases

疾病 机制(生物学) 生物信息学 表观遗传学 神经科学 表观基因组 代谢性疾病 生物 医学 病理 DNA甲基化 遗传学 内分泌学 基因 哲学 基因表达 认识论
作者
Hao Dong,Yuezhang Sun,Lulingxiao Nie,Aimin Cui,Pengfei Zhao,WK Leung,Qi Wang
出处
期刊:Signal Transduction and Targeted Therapy [Springer Nature]
卷期号:9 (1) 被引量:32
标识
DOI:10.1038/s41392-024-01755-x
摘要

Metabolic diseases and their complications impose health and economic burdens worldwide. Evidence from past experimental studies and clinical trials suggests our body may have the ability to remember the past metabolic environment, such as hyperglycemia or hyperlipidemia, thus leading to chronic inflammatory disorders and other diseases even after the elimination of these metabolic environments. The long-term effects of that aberrant metabolism on the body have been summarized as metabolic memory and are found to assume a crucial role in states of health and disease. Multiple molecular mechanisms collectively participate in metabolic memory management, resulting in different cellular alterations as well as tissue and organ dysfunctions, culminating in disease progression and even affecting offspring. The elucidation and expansion of the concept of metabolic memory provides more comprehensive insight into pathogenic mechanisms underlying metabolic diseases and complications and promises to be a new target in disease detection and management. Here, we retrace the history of relevant research on metabolic memory and summarize its salient characteristics. We provide a detailed discussion of the mechanisms by which metabolic memory may be involved in disease development at molecular, cellular, and organ levels, with emphasis on the impact of epigenetic modulations. Finally, we present some of the pivotal findings arguing in favor of targeting metabolic memory to develop therapeutic strategies for metabolic diseases and provide the latest reflections on the consequences of metabolic memory as well as their implications for human health and diseases.

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