糖尿病前期表型:病因学和风险概况可以指导糖尿病预防的生活方式策略吗?

IF 2.7 Q3 ENDOCRINOLOGY & METABOLISM
Sally D Poppitt, Jennifer Miles-Chan, Marta P Silvestre
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引用次数: 0

摘要

导语:2型糖尿病(T2D)在全球范围内随着肥胖的增加而继续恶化。无症状血糖异常,在T2D之前,提供了机会来识别那些有风险和目标预防,但前驱糖尿病是高度可变的。并不是所有超重的人都会出现血糖异常,也不是所有患有血糖异常的人都会超重。重要的是异位脂质在胰腺、肝脏和肌肉中的沉积。目前尚无国际定义,存在几种前驱糖尿病表型,每种表型都基于空腹血糖、餐后血糖和/或HbA1c的一种或多种成分。涉及领域:我们解决糖尿病前期表型的可变性和缺乏普遍定义。基于不同血糖定义的四种主要表型,它们可能具有不同的病因,风险概况,T2D的时间表以及对生活方式干预的反应。我们治疗谁,什么时候?我们是早治疗还是晚治疗?预防糖尿病的最佳饮食是什么?不同的表型需要不同的预防方法吗?专家意见:与“一刀切”的方法相比,个性化的生活方式或针对表型的治疗方法可能更能成功地预防糖尿病。人工智能(AI)方法目前处于起步阶段,预计将通过整合“大数据”来彻底改变个性化营养,更好地表征和预测糖尿病前期表型,以及对饮食和生活方式干预的表型特异性反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediabetes phenotypes: can aetiology and risk profile guide lifestyle strategies for diabetes prevention?

Introduction: Type 2 diabetes (T2D) continues to worsen globally alongside rise in obesity. Asymptomatic dysglycaemia, which precedes T2D, provides opportunities to identify those at risk and target prevention but prediabetes is highly variable. Not all with overweight develop dysglycaemia and not all with dysglycaemia are overweight. Important is the deposition of ectopic lipids in the pancreas, liver, and muscle. With no international definition, several prediabetes phenotypes exist, each based on one or more components of fasting glucose, postprandial glucose and/or HbA1c.

Areas covered: We address variability in prediabetes phenotype and absence of a universal definition. With four main phenotypes based on the various glycemic definitions, it is likely they have different etiologies, risk profiles, timelines to T2D, and response to lifestyle intervention. Who do we treat, and when? Do we treat early or late? What is the optimum diet for T2D prevention? Do different phenotypes require different prevention approaches?

Expert opinion: Personalized lifestyle, or phenotype-specific treatments, are likely to be more successful for T2D prevention than a 'one-size-fits-all' approach. Artificial intelligence (AI) methods, currently in their infancy, are expected to revolutionize personalized nutrition with integration of 'big data' better characterizing and predicting prediabetes phenotype, and phenotype-specific response to diet and lifestyle interventions.

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来源期刊
Expert Review of Endocrinology & Metabolism
Expert Review of Endocrinology & Metabolism ENDOCRINOLOGY & METABOLISM-
CiteScore
4.80
自引率
0.00%
发文量
44
期刊介绍: Implicated in a plethora of regulatory dysfunctions involving growth and development, metabolism, electrolyte balances and reproduction, endocrine disruption is one of the highest priority research topics in the world. As a result, we are now in a position to better detect, characterize and overcome the damage mediated by adverse interaction with the endocrine system. Expert Review of Endocrinology and Metabolism (ISSN 1744-6651), provides extensive coverage of state-of-the-art research and clinical advancements in the field of endocrine control and metabolism, with a focus on screening, prevention, diagnostics, existing and novel therapeutics, as well as related molecular genetics, pathophysiology and epidemiology.
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