Ren Jie, Li Xingpeng, Liu Mengke, Cui Tingting, Guo Jia, Zhou Rongjie, Hao Kun, Wang Rengui, Yue Yunlong
Department of MRI, Beijing Shijitan Hospital, Capital Medical University, Beijing, China.
Department of Radiology, Beijing Shijitan Hospital, Capital Medical University, Beijing, China.
J Vasc Surg Venous Lymphat Disord. 2025 Mar;13(2):102161. doi: 10.1016/j.jvsv.2024.102161. Epub 2024 Dec 16.
According to International Lymphology Society guidelines, the severity of lymphedema is determined by the difference in volume between the affected limb and the healthy side divided by the volume of the healthy side. However, this method of measuring volume is time consuming, laborious, and has certain errors in clinical applications. Therefore, this study aims to explore whether machine learning radiomics features based on noncontrast magnetic resonance imaging (MRI) can predict the severity of primary lower limb lymphedema.
A retrospective analysis of 119 patients with primary lower limb lymphedema. The enrolled patients were divided into a nonsevere group (mild and moderate) and a severe group. Using the semiautomatic threshold method in ITK-snap software on the patient's noncontrast MRI, we filled the area between the subcutaneous tissue and muscle of the edematous site. The PyRadiomics software package was used to extract radiomic features. The radiomic features were analyzed using the t test or Mann-Whitney test. Subsequently, Pearson correlation testing and least absolute shrinkage and selection operator screening were performed. Using Scikit-learn, the remaining features were used to construct five models: logistic regression, support vector machine, random Forest, ExtraTrees, and light gradient boosting machine. The predictive performance were evaluated by the receiver operating characteristic curve, and the sensitivity and specificity of these measures were calculated. The predictive curve was used to evaluate the performance of the predictive model in guiding decisions for nonsevere and severe lymphedema patients.
The enrolled patients including 28 patients with mild lymphedema (grade I), 38 patients with moderate lymphedema (grade II), and 53 patients with severe lymphedema (grade III) was conducted. A total of 1196 features were extracted, and after Pearson correlation testing and least absolute shrinkage and selection operator screening, 21 nonzero features were selected. The ExtraTree model performed the best, with an area under the curve of 0.974 (95% confidence interval, 0.9437-1.0000) in the training set, a sensitivity of 89.2%, and a specificity of 95.7%. In the test set, these values were 0.938 (95% confidence interval, 0.8539-1.0000), 75%, and 100%, respectively. The decision curve showed that when the predicted probability was between 16% and 78%, the net benefit of the ExtraTree model was greater than that of the two extreme curves, indicating strong clinical value in guiding decisions for nonsevere and severe lymphedema patients.
All five models performed well in distinguishing between the nonsevere group and the severe group. Noncontrast MRI-based machine learning radiomics signature can predict the severity of primary lower limb lymphedema.
根据国际淋巴学会指南,淋巴水肿的严重程度由患侧肢体与健侧的体积差除以健侧体积来确定。然而,这种测量体积的方法耗时、费力,且在临床应用中存在一定误差。因此,本研究旨在探讨基于非增强磁共振成像(MRI)的机器学习放射组学特征能否预测原发性下肢淋巴水肿的严重程度。
对119例原发性下肢淋巴水肿患者进行回顾性分析。将纳入的患者分为非重度组(轻度和中度)和重度组。使用ITK-snap软件中的半自动阈值法对患者的非增强MRI进行处理,填充水肿部位皮下组织与肌肉之间的区域。采用PyRadiomics软件包提取放射组学特征。使用t检验或Mann-Whitney检验对放射组学特征进行分析。随后,进行Pearson相关性检验和最小绝对收缩和选择算子筛选。使用Scikit-learn,将剩余特征用于构建五个模型:逻辑回归、支持向量机、随机森林、极端随机树和轻梯度提升机。通过受试者工作特征曲线评估预测性能,并计算这些指标的敏感性和特异性。使用决策曲线评估预测模型在指导非重度和重度淋巴水肿患者决策方面的性能。
纳入的患者包括28例轻度淋巴水肿(I级)患者、38例中度淋巴水肿(II级)患者和53例重度淋巴水肿(III级)患者。共提取了1196个特征,经过Pearson相关性检验和最小绝对收缩和选择算子筛选,选择了21个非零特征。极端随机树模型表现最佳,在训练集中曲线下面积为0.974(95%置信区间,0.9437 - 1.0000),敏感性为89.2%,特异性为95.7%。在测试集中,这些值分别为0.938(95%置信区间,0.8539 - 1.0000)、75%和100%。决策曲线显示,当预测概率在16%至78%之间时,极端随机树模型的净效益大于两条极端曲线,表明在指导非重度和重度淋巴水肿患者决策方面具有较强的临床价值。
所有五个模型在区分非重度组和重度组方面表现良好。基于非增强MRI的机器学习放射组学特征可预测原发性下肢淋巴水肿的严重程度。