Departamento de Bioquímica Clínica e Inmunología, Facultad de Farmacia, Universidad de Concepción, Chile; Departamento de Análisis Instrumental, Facultad de Farmacia, Universidad de Concepción, Chile; Machine Learning Applied in Biomedicine (MLAB), Concepción, Chile.
Machine Learning Applied in Biomedicine (MLAB), Concepción, Chile; Departamento de Ciencias Básicas, Facultad de Ciencias, Universidad del Bío-Bío, Chile; Group of Research and Innovation in Vascular Health (GRIVAS-Health), Chile.
Artif Intell Med. 2022 Oct;132:102378. doi: 10.1016/j.artmed.2022.102378. Epub 2022 Aug 24.
Gestational Diabetes Mellitus (GDM) is a hyperglycemia state that impairs maternal and offspring health, short and long-term. It is usually diagnosed at 24-28 weeks of pregnancy (WP), but at that time the fetal phenotype is already altered. Machine learning (ML)-based models have emerged as an auspicious alternative to predict this pathology earlier, however, they must be validated in different populations before their implementation in routine clinical practice. This review aims to give an overview of the ML-based models that have been proposed to predict GDM before 24-28 WP, with special emphasis on their current validation state and predictive performance. Articles were searched in PubMed. Manuscripts written in English and published before January 1, 2022, were considered. 109 original research studies were selected, and categorized according to the type of variables that their models involved: medical, i.e. clinical and/or biochemical parameters; alternative, i.e. metabolites, peptides or proteins, micro-ribonucleic acid molecules, microbiota genera, or other variables that did not fit into the first category; or mixed, i.e. both medical and alternative data. Only 8.3 % of the reviewed models have had validation in independent studies, with low or moderate performance for GDM prediction. In contrast, several models that lack of independent validation have shown a very high predictive power. The evaluation of these promising models in future independent validation studies would allow to assess their performance on different populations, and continue their way towards clinical implementation. Once settled, ML-based models would help to predict GDM earlier, initiate its treatment timely and prevent its negative consequences on maternal and offspring health.
妊娠期糖尿病(GDM)是一种高血糖状态,会损害母婴健康,无论是短期还是长期。通常在怀孕 24-28 周(WP)时诊断出 GDM,但此时胎儿表型已经发生改变。基于机器学习(ML)的模型已成为预测该疾病的有前途的替代方法,然而,在常规临床实践中实施之前,它们必须在不同人群中进行验证。本综述旨在概述在 24-28 WP 之前用于预测 GDM 的基于 ML 的模型,特别强调它们当前的验证状态和预测性能。在 PubMed 中搜索了文章。考虑了以英文撰写并于 2022 年 1 月 1 日之前发表的文章。共选择了 109 项原始研究,并根据其模型涉及的变量类型进行分类:医学,即临床和/或生化参数;替代,即代谢物、肽或蛋白质、micro-ribonucleic acid 分子、微生物群属,或不属于第一类的其他变量;或混合,即医学和替代数据。在所审查的模型中,只有 8.3%在独立研究中进行了验证,对 GDM 的预测性能较低或中等。相比之下,一些缺乏独立验证的模型显示出非常高的预测能力。在未来的独立验证研究中评估这些有前途的模型将能够评估它们在不同人群中的性能,并继续推进其临床应用。一旦确定,基于 ML 的模型将有助于更早地预测 GDM,及时开始治疗,并预防其对母婴健康的负面影响。