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首页> 外文期刊>Journal of molecular cell biology >Discovering a critical transition state from nonalcoholic hepatosteatosis to nonalcoholic steatohepatitis by lipidomics and dynamical network biomarkers.
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Discovering a critical transition state from nonalcoholic hepatosteatosis to nonalcoholic steatohepatitis by lipidomics and dynamical network biomarkers.

机译:通过脂质组学和动态网络生物标记物发现从非酒精性脂肪变性到非酒精性脂肪性肝炎的关键转变状态。

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Nonalcoholic fatty liver disease (NAFLD) is a major risk factor for type 2 diabetes and metabolic syndrome. However, accurately differentiating nonalcoholic steatohepatitis (NASH) from hepatosteatosis remains a clinical challenge. We identified a critical transition stage (termed pre-NASH) during the progression from hepatosteatosis to NASH in a mouse model of high fat-induced NAFLD, using lipidomics and a mathematical model termed dynamic network biomarkers (DNB). Different from the conventional biomarker approach based on the abundance of molecular expressions, the DNB model exploits collective fluctuations and correlations of different metabolites at a network level. We found that the correlations between the blood and liver lipid species drastically decreased after the transition from steatosis to NASH, which may account for the current difficulty in differentiating NASH from steatosis based on blood lipids. Furthermore, most DNB members in the blood circulation, especially for triacylglycerol (TAG), are also identified in the liver during the disease progression, suggesting a potential clinical application of DNB to diagnose NASH based on blood lipids. We further identified metabolic pathways responsible for this transition. Our study suggests that the transition from steatosis to NASH is not smooth and the existence of pre-NASH may be partially responsible for the current clinical limitations to diagnose NASH. If validated in humans, our study will open a new avenue to reliably diagnose pre-NASH and achieve early intervention of NAFLD.
机译:非酒精性脂肪肝疾病(NAFLD)是2型糖尿病和代谢综合征的主要危险因素。然而,准确区分非酒精性脂肪性肝炎(NASH)与肝脂肪变性仍是一项临床挑战。我们使用脂质组学和一种称为动态网络生物标记物(DNB)的数学模型,在高脂肪诱导的NAFLD小鼠模型中确定了从肝脂肪变性到NASH的关键过渡阶段(称为NASH之前)。 DNB模型与基于大量分子表达的传统生物标志物方法不同,它在网络水平上利用了集体波动和不同代谢物的相关性。我们发现,从脂肪变性过渡到NASH后,血液和肝脏脂质种类之间的相关性急剧下降,这可能解释了目前难以将NASH与基于血脂的脂肪变性区别开来的问题。此外,在疾病进展过程中,肝脏中还发现了血液循环中的大多数DNB成员,尤其是三酰甘油(TAG),这表明DNB在基于血脂诊断NASH方面的潜在临床应用。我们进一步确定了导致这种转变的代谢途径。我们的研究表明,从脂肪变性到NASH的过渡并不顺利,并且NASH之前的存在可能部分归因于当前诊断NASH的临床局限性。如果在人类中得到验证,我们的研究将为可靠地诊断NASH之前并实现NAFLD的早期干预开辟新的途径。

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