Liu Rong, Yang Junlin, Zhang Wei, Li Xiaobo, Shi Dai, Cai Wu, Zhang Yue, Fan Guohua, Li Chenglong, Jiang Zhen
Department of Radiology, The Second Affiliated Hospital of Soochow University, Suzhou, China.
Department of Radiology, The First Affiliated Hospital of Anhui Medical University, Hefei, China.
Open Med (Wars). 2023 Mar 6;18(1):20230671. doi: 10.1515/med-2023-0671. eCollection 2023.
Our purpose was to devise a radiomics model using preoperative computed tomography angiography (CTA) images to differentiate new from old emboli of acute lower limb arterial embolism. 57 patients (95 regions of interest; training set: = 57; internal validation set: = 38) with femoral popliteal acute lower limb arterial embolism confirmed by pathology and with preoperative CTA images were retrospectively analyzed. We selected the best prediction model according to the model performance tested by area under the curve (AUC) analysis across 1,000 iterations of prediction from three most common machine learning methods: support vector machine, feed-forward neural network (FNN), and random forest, through several steps of feature selection. Then, the selected best model was also validated in an external validation dataset ( = 24). The established radiomics signature had good predictive efficacy. FNN exhibited the best model performance on the training and validation groups: its AUC value was 0.960 (95% CI, 0.899-1). The accuracy of this model was 89.5%, and its sensitivity and specificity were 0.938 and 0.864, respectively. The AUC of external validation dataset was 0.793. Our radiomics model based on preoperative CTA images is valuable. The radiomics approach of preoperative CTA to differentiate new emboli from old is feasible.
我们的目的是设计一种基于术前计算机断层扫描血管造影(CTA)图像的放射组学模型,以区分急性下肢动脉栓塞的新栓子和旧栓子。对57例经病理证实为股腘动脉急性下肢动脉栓塞且有术前CTA图像的患者(95个感兴趣区域;训练集:n = 57;内部验证集:n = 38)进行回顾性分析。我们通过特征选择的几个步骤,根据支持向量机、前馈神经网络(FNN)和随机森林这三种最常见的机器学习方法在1000次预测迭代中通过曲线下面积(AUC)分析测试的模型性能,选择了最佳预测模型。然后,在一个外部验证数据集(n = 24)中对所选的最佳模型进行了验证。所建立的放射组学特征具有良好的预测效能。FNN在训练组和验证组中表现出最佳的模型性能:其AUC值为0.960(95%CI,0.899 - 1)。该模型的准确率为89.5%,其敏感性和特异性分别为0.938和0.864。外部验证数据集的AUC为0.793。我们基于术前CTA图像的放射组学模型具有重要价值。术前CTA通过放射组学方法区分新栓子和旧栓子是可行的。