Romero-Tapia Sergio de Jesus, Becerril-Negrete José Raúl, Castro-Rodriguez Jose A, Del-Río-Navarro Blanca E
Health Sciences Academic Division (DACS), Juarez Autonomous University of Tabasco (UJAT), Villahermosa 86040, Mexico.
Department of Clinical Immunopathology, Universidad Autónoma del Estado de México, Toluca 50000, Mexico.
J Clin Med. 2023 Aug 20;12(16):5404. doi: 10.3390/jcm12165404.
The clinical manifestations of asthma in children are highly variable, are associated with different molecular and cellular mechanisms, and are characterized by common symptoms that may diversify in frequency and intensity throughout life. It is a disease that generally begins in the first five years of life, and it is essential to promptly identify patients at high risk of developing asthma by using different prediction models. The aim of this review regarding the early prediction of asthma is to summarize predictive factors for the course of asthma, including lung function, allergic comorbidity, and relevant data from the patient's medical history, among other factors. This review also highlights the epigenetic factors that are involved, such as DNA methylation and asthma risk, microRNA expression, and histone modification. The different tools that have been developed in recent years for use in asthma prediction, including machine learning approaches, are presented and compared. In this review, emphasis is placed on molecular mechanisms and biomarkers that can be used as predictors of asthma in children.
儿童哮喘的临床表现高度多变,与不同的分子和细胞机制相关,其特征是常见症状在一生中的频率和强度可能会有所不同。这是一种通常在生命的头五年开始的疾病,通过使用不同的预测模型及时识别有患哮喘高风险的患者至关重要。本综述关于哮喘早期预测的目的是总结哮喘病程的预测因素,包括肺功能、过敏性合并症以及患者病史中的相关数据等。本综述还强调了所涉及的表观遗传因素,如DNA甲基化与哮喘风险、微小RNA表达和组蛋白修饰。介绍并比较了近年来开发的用于哮喘预测的不同工具,包括机器学习方法。在本综述中,重点关注可作为儿童哮喘预测指标的分子机制和生物标志物。