儿童肥胖的遗传格局:研究进展与展望。

IF 3.9 Q2 ENDOCRINOLOGY & METABOLISM
Journal of Obesity Pub Date : 2025-07-11 eCollection Date: 2025-01-01 DOI:10.1155/jobe/9186826
Rita Khusainova, Ildar Minniakhmetov, Olga Vasyukova, Bulat Yalaev, Ramil Salakhov, Darya Kopytina, Raisat Guseinova, Ekaterina Dobreva, Galina Melnichenko, Ivan Dedov, Natalia Mokrysheva
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引用次数: 0

摘要

肥胖是一种慢性代谢性疾病,其特征是脂肪在体内过度堆积或分布不均,严重威胁人体健康。肥胖会显著增加患2型糖尿病、冠心病、高血压、阻塞性睡眠呼吸暂停和某些癌症等疾病的风险。在过去的几十年里,肥胖的患病率,特别是在儿童中,在世界范围内显著增加。世界卫生组织预测,到2030年将有2.5亿5-19岁的儿童和青少年肥胖,这表明这是一个具有深远影响的全球性问题。基因组技术的进步已导致确定与该疾病相关的多个遗传位点,从早期发病的严重病例到常见的多因子多基因形式。由饮食和生活方式因素驱动的表观遗传变化现在被认为是肥胖的关键因素。这些修饰可以改变基因表达,从而将环境影响与疾病的可观察临床特征联系起来。在破译肥胖的遗传结构方面取得了重大进展,特别是在儿科人群中。然而,进一步的发展需要整合多组学分析,包括基因组、表观基因组、转录组、蛋白质组、代谢组和微生物组数据。为了更好地了解肥胖的复杂分子基础和临床变异性,研究人员越来越多地应用机器学习和人工智能的方法。这些技术有助于分析大规模的基因组和表型数据集,从而确定参与体重调节的生物学途径。在未来,这可能会支持个性化诊断工具的设计和有针对性的治疗计划,以反映患者的遗传特征、生活方式和环境暴露。为了在肥胖治疗中实施个性化和精准医疗的原则,通过评估多种因素来确定风险概况是至关重要的。这种方法不仅可以预测个体肥胖及其相关疾病的风险,还可以根据患者的遗传特征优化治疗。本研究全面概述了目前对儿童肥胖的理解,包括其患病率、遗传决定因素和病理生理机制。它强调了遗传因素对遗传和综合征形式的贡献,基因-环境相互作用(包括营养和环境污染物)的作用,以及表观遗传修饰对与多基因肥胖相关的代谢紊乱的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Genetic Landscape of Obesity in Children: Research Advances and Prospects.

Genetic Landscape of Obesity in Children: Research Advances and Prospects.

Genetic Landscape of Obesity in Children: Research Advances and Prospects.

Genetic Landscape of Obesity in Children: Research Advances and Prospects.

Obesity is a chronic metabolic disease characterized by excessive accumulation or uneven distribution of fat in the body, which poses a serious threat to health. Obesity significantly increases the risk of developing сonditions such as type 2 diabetes, coronary heart disease, hypertension, obstructive sleep apnea, and some types of cancer. The prevalence of obesity, especially in childhood, has increased significantly worldwide over the past few decades. The World Health Organization predicts that 250 million children and adolescents aged 5-19 years will be obese by 2030, which indicates a global problem with far-reaching consequences. Advances in genomic technologies have led to the identification of multiple genetic loci associated with the disease ranging from severe cases with early onset to common multifactorial polygenic forms. Epigenetic changes driven by dietary and lifestyle factors are now recognized as crucial contributors to obesity. These modifications can alter gene expression and thereby link environmental influences to the observable clinical features of the disease. Significant progress has been made in deciphering the genetic architecture of obesity, particularly in pediatric populations. However, further advancement requires integrative multiomics analyses that encompass genomic, epigenomic, transcriptomic, proteomic, metabolomic, and microbiome data. To better understand the complex molecular underpinnings and clinical variability of obesity, researchers are increasingly applying methods from machine learning and artificial intelligence. These technologies help analyze large-scale genomic and phenotypic datasets, allowing for the identification of biological pathways involved in weight regulation. In the future, this may support the design of individualized diagnostic tools and targeted treatment plans that reflect a patient's genetic profile, lifestyle, and environmental exposures. To implement the principles of personalized and precision medicine in the treatment of obesity, it is crucial to identify risk profiles by assessing multiple contributing factors. This approach not only enables the prediction of an individual's risk of obesity and its associated diseases but also facilitates the optimization of treatment based on the patient's genetic profile. This study provides a comprehensive overview of the current understanding of childhood obesity, including its prevalence, genetic determinants, and pathophysiological mechanisms. It highlights the contribution of genetic factors to hereditary and syndromic forms, the role of gene-environment interactions (including nutrition and environmental pollutants), and the influence of epigenetic modifications on metabolic disturbances associated with polygenic obesity.

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来源期刊
Journal of Obesity
Journal of Obesity ENDOCRINOLOGY & METABOLISM-
CiteScore
7.50
自引率
3.00%
发文量
19
审稿时长
21 weeks
期刊介绍: Journal of Obesity is a peer-reviewed, Open Access journal that provides a multidisciplinary forum for basic and clinical research as well as applied studies in the areas of adipocyte biology & physiology, lipid metabolism, metabolic syndrome, diabetes, paediatric obesity, genetics, behavioural epidemiology, nutrition & eating disorders, exercise & human physiology, weight control and health risks associated with obesity.
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