Community Interventions Research Branch, Instituto Nacional de Perinatología Isidro Espinosa de los Reyes, Mexico City 11000, Mexico.
PhD Program in Biological and Health Sciences, Universidad Autónoma Metropolitana, Mexico City 09310, Mexico.
Int J Mol Sci. 2023 Sep 8;24(18):13851. doi: 10.3390/ijms241813851.
Preterm birth (PB) is a leading cause of perinatal morbidity and mortality. PB prediction is performed by measuring cervical length, with a detection rate of around 70%. Although it is known that a cytokine-mediated inflammatory process is involved in the pathophysiology of PB, none screening method implemented in clinical practice includes cytokine levels as a predictor variable. Here, we quantified cytokines in cervical-vaginal mucus of pregnant women (18-23.6 weeks of gestation) with high or low risk for PB determined by cervical length, also collecting relevant obstetric information. IL-2, IL-6, IFN-γ, IL-4, and IL-10 were significantly higher in the high-risk group, while IL-1ra was lower. Two different models for PB prediction were created using the Random Forest machine-learning algorithm: a full model with 12 clinical variables and cytokine values and the adjusted model, including the most relevant variables-maternal age, IL-2, and cervical length- (detection rate 66 vs. 87%, false positive rate 12 vs. 3.33%, false negative rate 28 vs. 6.66%, and area under the curve 0.722 vs. 0.875, respectively). The adjusted model that incorporate cytokines showed a detection rate eight points higher than the gold standard calculator, which may allow us to identify the risk PB risk more accurately and implement strategies for preventive interventions.
早产(PB)是围产期发病率和死亡率的主要原因。通过测量宫颈长度来预测 PB,其检出率约为 70%。虽然已知细胞因子介导的炎症过程参与 PB 的病理生理学,但目前尚无临床实践中实施的筛选方法将细胞因子水平作为预测变量。在这里,我们定量了宫颈长度确定的高危和低危孕妇(18-23.6 孕周)的宫颈阴道黏液中的细胞因子,并收集了相关的产科信息。高危组中 IL-2、IL-6、IFN-γ、IL-4 和 IL-10 显著升高,而 IL-1ra 较低。使用随机森林机器学习算法创建了两种用于 PB 预测的不同模型:一个包含 12 个临床变量和细胞因子值的完整模型,以及一个包含最相关变量(母亲年龄、IL-2 和宫颈长度)的调整模型(检出率分别为 66%和 87%、假阳性率分别为 12%和 3.33%、假阴性率分别为 28%和 6.66%、曲线下面积分别为 0.722 和 0.875)。纳入细胞因子的调整模型的检出率比黄金标准计算器高 8 个百分点,这可能使我们能够更准确地识别 PB 风险,并实施预防干预策略。