A machine learning model based on placental magnetic resonance imaging and clinical factors to predict fetal growth restriction.

IF 2.8 2区 医学 Q1 OBSTETRICS & GYNECOLOGY
Jida Wang, Zhuying Chen, Hongxi Zhang, Weikang Li, Kui Li, Meixiang Deng, Yu Zou
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Abstract

Objectives: To create a placental radiomics-clinical machine learning model to predict FGR.

Materials and methods: Retrospectively analyzed placental MRI and clinical data of 110 FGR cases and 158 healthy controls at 28-37 weeks of gestation from two campuses of ZWH. 227 cases from Hubin campus were randomly divided into training (n = 182) and internal testing set (n = 45). 41 cases from Xiaoshan campus were included in external testing set. Placental MRI features were extracted from sagittal T2WI. Mann-Whitney U test, redundancy analysis, and LASSO were used to identify the radiomics signature, and the best-performing radiomics model was constructed by comparing eight machine learning algorithms. Clinical factors determined by univariate and multivariate analyses. A united model and nomogram combining the radiomics Rad-score and clinical factors were established. The performance of the models was assessed by DeLong test, calibration curve and decision curve analysis.

Results: Of 1561 radiomics features, 10 strongly correlated with FGR were selected. The radiomics model using logistic regression performed best compared eight algorithms. 5 important clinical features identified by analysis. The united model demonstrated a good predictive performance in the training, internal testing and external testing sets, with AUC 0.941 (95% CI, 0.0.904-0.977), 0.899 (95% CI, 0.789-1) and 0.861 (95% CI 0.725-0.998), prediction accuracies 0.885, 0.844 and 0.805, precisions 0.871, 0.789 and 0.867, recalls 0.836, 0.833 and 0.684, and F1 scores 0.853, 0.811 and 0.765, respectively. The calibration and decision curves of the united model also showed good performance. Nomogram confirmed clinical applicability of the model.

Conclusions: The proposed placental radiomics-clinical machine learning model is simple yet effective to predict FGR.

基于胎盘磁共振成像和临床因素的机器学习模型预测胎儿生长受限。
目的:建立胎盘放射组学-临床机器学习模型预测FGR。材料与方法:回顾性分析中山医科大学两个校区28-37周妊娠期110例FGR患者和158例健康对照者的胎盘MRI和临床资料。湖滨校区227例患者随机分为训练组(182例)和内测组(45例)。萧山校区41例纳入外部检测。矢状面T2WI提取胎盘MRI特征。采用Mann-Whitney U检验、冗余分析和LASSO等方法对放射组学特征进行识别,并通过对8种机器学习算法的比较,构建了性能最佳的放射组学模型。临床因素由单因素和多因素分析确定。建立放射组学radr评分与临床因素相结合的统一模型和nomogram。通过德隆检验、标定曲线和决策曲线分析对模型的性能进行了评价。结果:在1561个放射组学特征中,筛选出10个与FGR密切相关的特征。使用逻辑回归的放射组学模型在8种算法中表现最好。经分析确定的5个重要临床特征。联合模型在训练集、内部测试集和外部测试集均表现出良好的预测性能,AUC分别为0.941 (95% CI, 0.0.904-0.977)、0.899 (95% CI, 0.789-1)和0.861 (95% CI, 0.725-0.998),预测准确率分别为0.885、0.844和0.805,精密度分别为0.871、0.789和0.867,召回率分别为0.836、0.833和0.684,F1得分分别为0.853、0.811和0.765。联合模型的标定曲线和决策曲线也显示出良好的性能。图证实了该模型的临床适用性。结论:提出的胎盘放射组学-临床机器学习模型预测FGR简单有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Pregnancy and Childbirth
BMC Pregnancy and Childbirth OBSTETRICS & GYNECOLOGY-
CiteScore
4.90
自引率
6.50%
发文量
845
审稿时长
3-8 weeks
期刊介绍: BMC Pregnancy & Childbirth is an open access, peer-reviewed journal that considers articles on all aspects of pregnancy and childbirth. The journal welcomes submissions on the biomedical aspects of pregnancy, breastfeeding, labor, maternal health, maternity care, trends and sociological aspects of pregnancy and childbirth.
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