Zhu Tong, Tang Lin, Qin Man, Wang Wen-Wen, Chen Ling
Department of Ultrasound Medicine, The First Affiliated Hospital of Shihezi University, Shihezi, Xinjiang Province, China.
BMC Med Inform Decis Mak. 2025 Mar 18;25(1):138. doi: 10.1186/s12911-025-02962-4.
Gestational diabetes mellitus (GDM) is one of the most common complications during pregnancy and has been on a continuous increase in recent years. This study aimed to establish a combined prediction model for the risk of GDM and to provide more reliable reference information for non-invasive assessment of GDM in clinical practice.
This study retrospectively collected clinical data and ultrasound information of 122 pregnant women who underwent fetal nuchal translucency screening, which divided into 36 cases of the GDM group and 86 cases of the non-gestational diabetes mellitus(NGDM) group. The collected clinical data and ultrasound information were analyzed using Student's t-test and Wilcoxon W test for univariate analysis. Independent risk factors for patients with GDM were screened through binary logistic regression analysis. A model was established based on the screened results, and the diagnostic performance of different models was evaluated by drawing the receiver operating characteristic curve(ROC). The optimal prediction model was selected, and the calibration curve and clinical decision curve were drawn to evaluate the goodness of fit and clinical application efficiency of the model.
Univariate results showed that age, body mass index(BMI), number of abortions, gravidity, placental volume(PV), vascularization index(VI), flow index(FI), and vascularization flow index(VFI) all had statistically significant differences between the GDM and NGDM groups(p < 0.05). Binary logistic regression analysis showed that BMI, number of abortions, PV, VI, and FI were independent risk factors for the development of GDM in pregnant women (p < 0.05). Based on these results, five prediction models were established in this study. Their area under the ROC curve(AUC) were 0.67, 0.80, 0.80, 0.87, and 0.85, respectively. The model combining clinical data with 30° ultrasound data had the highest AUC, so we constructed a nomogram for this model. The results of its calibration curve showed that the model had a good fit, and the results of the clinical decision curve showed that the model had good clinical application efficiency.
The nomogram model combining clinical data with 30° ultrasound data has good accuracy and clinical application value for predicting the risk of GDM.
妊娠期糖尿病(GDM)是孕期最常见的并发症之一,近年来其发病率持续上升。本研究旨在建立GDM风险的联合预测模型,为临床实践中GDM的无创评估提供更可靠的参考信息。
本研究回顾性收集了122例行胎儿颈部透明带筛查的孕妇的临床资料和超声信息,分为GDM组36例和非妊娠期糖尿病(NGDM)组86例。对收集的临床资料和超声信息采用Student's t检验和Wilcoxon W检验进行单因素分析。通过二元逻辑回归分析筛选GDM患者的独立危险因素。根据筛选结果建立模型,并通过绘制受试者工作特征曲线(ROC)评估不同模型的诊断性能。选择最佳预测模型,绘制校准曲线和临床决策曲线,评估模型的拟合优度和临床应用效率。
单因素结果显示,年龄、体重指数(BMI)、流产次数、孕次、胎盘体积(PV)、血管化指数(VI)、血流指数(FI)和血管化血流指数(VFI)在GDM组和NGDM组之间均有统计学显著差异(p < 0.05)。二元逻辑回归分析显示,BMI、流产次数、PV、VI和FI是孕妇发生GDM的独立危险因素(p < 0.05)。基于这些结果,本研究建立了五个预测模型。它们的ROC曲线下面积(AUC)分别为0.67、0.80、0.80、0.87和0.85。结合临床数据与30°超声数据的模型AUC最高,因此我们为该模型构建了列线图。其校准曲线结果显示模型拟合良好,临床决策曲线结果显示模型具有良好的临床应用效率。
结合临床数据与30°超声数据的列线图模型对预测GDM风险具有良好的准确性和临床应用价值。