Department of Radiology, The First Affiliated Hospital, College of Medicine, Zhejiang University, 79 Qingchun Road, Hangzhou, 310003, Zhejiang, China.
BMC Pediatr. 2023 Nov 29;23(1):603. doi: 10.1186/s12887-023-04432-0.
The current diagnosis of central precocious puberty (CPP) relies on the gonadotropin-releasing hormone analogue (GnRHa) stimulation test, which requires multiple invasive blood sampling procedures. The aim of this study was to construct machine learning models incorporating basal pubertal hormone levels, pituitary magnetic resonance imaging (MRI), and pelvic ultrasound parameters to predict the response of precocious girls to GnRHa stimulation test.
This retrospective study included 455 girls diagnosed with precocious puberty who underwent transabdominal pelvic ultrasound, brain MRI examinations and GnRHa stimulation testing were retrospectively reviewed. They were randomly assigned to the training or internal validation set in an 8:2 ratio. Four machine learning classifiers were developed to identify girls with CPP, including logistic regression, random forest, light gradient boosting (LightGBM), and eXtreme gradient boosting (XGBoost). The accuracy, sensitivity, specificity, positive predictive value, negative predictive value, area under receiver operating characteristic (AUC) and F1 score of the models were measured.
The participates were divided into an idiopathic CPP group (n = 263) and a non-CPP group (n = 192). All machine learning classifiers used achieved good performance in distinguishing CPP group and non-CPP group, with the area under the curve (AUC) ranging from 0.72 to 0.81 in validation set. XGBoost had the highest diagnostic efficacy, with sensitivity of 0.81, specificity of 0.72, and F1 score of 0.80. Basal pubertal hormone levels (including luteinizing hormone, follicle-stimulating hormone, and estradiol), averaged ovarian volume, and several uterine parameters were predictors in the model.
The machine learning prediction model we developed has good efficacy for predicting response to GnRHa stimulation tests which could help in the diagnosis of CPP.
目前中枢性性早熟(CPP)的诊断依赖于促性腺激素释放激素类似物(GnRHa)刺激试验,该试验需要多次进行有创性采血。本研究旨在构建一种机器学习模型,该模型结合了基础青春期激素水平、垂体磁共振成像(MRI)和盆腔超声参数,以预测性早熟女孩对 GnRHa 刺激试验的反应。
本回顾性研究纳入了 455 名诊断为性早熟的女孩,她们均接受了经腹盆腔超声、脑 MRI 检查和 GnRHa 刺激试验。她们被随机按 8:2 的比例分配到训练或内部验证集。开发了四种机器学习分类器来识别 CPP 女孩,包括逻辑回归、随机森林、轻梯度提升(LightGBM)和极端梯度提升(XGBoost)。模型的准确性、敏感性、特异性、阳性预测值、阴性预测值、受试者工作特征(ROC)曲线下面积(AUC)和 F1 评分。
参与者被分为特发性 CPP 组(n = 263)和非 CPP 组(n = 192)。所有机器学习分类器在区分 CPP 组和非 CPP 组方面均表现出良好的性能,验证集的 AUC 范围为 0.72 至 0.81。XGBoost 的诊断效能最高,其敏感性为 0.81,特异性为 0.72,F1 评分为 0.80。基础青春期激素水平(包括黄体生成素、卵泡刺激素和雌二醇)、平均卵巢体积和几个子宫参数是模型中的预测因子。
我们开发的机器学习预测模型对预测 GnRHa 刺激试验的反应具有良好的效果,有助于 CPP 的诊断。