Fang Ruqi, Yue Meilin, Wu Keyi, Liu Kaili, Zheng Xianying, Weng Shuping, Chen Xiaping, Su Yuzheng
Department of Radiology, Fujian Maternity and Child Health Hospital, College of Clinical Medicine for Obstetrics and Gynecology and Pediatrics, Fujian Medical University, Fuzhou, China.
Department of Radiology, Fujian Maternity and Child Health Hospital, Wusi North Campus (Fujian Provincial Obstetrics and Gynecology Hospital), Fuzhou, China.
Abdom Radiol (NY). 2025 Sep 8. doi: 10.1007/s00261-025-05182-6.
We aimed to develop and validate a radiomics-based machine learning nomogram using multiparametric magnetic resonance imaging to preoperatively predict substantial lymphovascular space invasion in patients with endometrial cancer.
This retrospective dual-center study included patients with histologically confirmed endometrial cancer who underwent preoperative magnetic resonance imaging (MRI). The patients were divided into training and test sets. Radiomic features were extracted from multiparametric magnetic resonance imaging to generate radiomic scores using a support vector machine algorithm. Three predictive models were constructed: clinical (Model), radiomics-only (Model), and fusion (Model). The models' performances were evaluated by analyzing their receiver operating characteristic curves, and pairwise comparisons of the models' areas under the curves were conducted using DeLong's test and adjusted using the Bonferroni correction. Decision curve analysis with integrated discrimination improvement was used for net benefit comparison.
This study enrolled 283 women (training set: n = 198; test set: n = 85). The lymphovascular space invasion groups (substantial and no/focal) had significantly different radiomic scores (P < 0.05). Model achieved an area under the curve of 0.818 (95% confidence interval: 0.757-0.869) and 0.746 (95% confidence interval: 0.640-0.835) for the training and test sets, respectively, demonstrating a good fit according to the Hosmer-Lemeshow test (P > 0.05). The DeLong test with Bonferroni correction indicated that Model demonstrated better diagnostic efficiency than Model in predicting substantial lymphovascular space invasion in the two sets (adjusted P < 0.05). In addition, decision curve analysis demonstrated a higher net benefit for Model, with integrated discrimination improvements of 0.043 and 0.732 (P < 0.01) in the training and test sets, respectively.
The multiparametric magnetic resonance imaging-based radiomics machine learning nomogram showed moderate diagnostic performance for substantial lymphovascular space invasion in patients with endometrial cancer.
我们旨在开发并验证一种基于放射组学的机器学习列线图,该列线图利用多参数磁共振成像在术前预测子宫内膜癌患者的显著淋巴管间隙浸润情况。
这项回顾性双中心研究纳入了经组织学确诊且术前行磁共振成像(MRI)检查的子宫内膜癌患者。将患者分为训练集和测试集。从多参数磁共振成像中提取放射组学特征,使用支持向量机算法生成放射组学评分。构建了三个预测模型:临床模型(模型)、仅放射组学模型(模型)和融合模型(模型)。通过分析模型的受试者工作特征曲线来评估模型性能,并使用德龙检验对模型曲线下面积进行两两比较,并用邦费罗尼校正进行调整。采用具有综合判别改善的决策曲线分析进行净效益比较。
本研究纳入了283名女性(训练集:n = 198;测试集:n = 85)。淋巴管间隙浸润组(显著浸润组和无/局灶浸润组)的放射组学评分有显著差异(P < 0.05)。模型在训练集和测试集中的曲线下面积分别为0.818(95%置信区间:0.757 - 0.869)和0.746(95%置信区间:0.640 - 0.835),根据霍斯默 - 莱梅肖检验显示拟合良好(P > 0.05)。经邦费罗尼校正的德龙检验表明,在预测两组患者的显著淋巴管间隙浸润方面,模型的诊断效率优于模型(校正P < 0.05)。此外,决策曲线分析显示模型的净效益更高,训练集和测试集的综合判别改善分别为0.043和0.732(P < 0.01)。
基于多参数磁共振成像的放射组学机器学习列线图在预测子宫内膜癌患者的显著淋巴管间隙浸润方面显示出中等的诊断性能。