Luo Yingqi, Yang Qingqi, Hu Jinglang, Qin Xiaowen, Jiang Shengnan, Liu Ying
Department of Nuclear medicine, The Second Affiliated Hospital, Guangzhou Medical University, Guangzhou, China.
Department of Vascular Surgery, The First Affiliated Hospital, Sun Yat-Sen University, Guangzhou, China.
Eur J Radiol Open. 2024 Dec 17;14:100624. doi: 10.1016/j.ejro.2024.100624. eCollection 2025 Jun.
To develop and validate a deep learning model using multimodal PET/CT imaging for detecting and classifying focal liver lesions (FLL).
This study included 185 patients who underwent F-FDG PET/CT imaging at our institution from March 2022 to February 2023. We analyzed serological data and imaging. Liver lesions were segmented on PET and CT, serving as the "reference standard". Deep learning models were trained using PET and CT images to generate predicted segmentations and classify lesion nature. Model performance was evaluated by comparing the predicted segmentations with the reference segmentations, using metrics such as Dice, Precision, Recall, F1-score, ROC, and AUC, and compared it with physician diagnoses.
This study finally included 150 patients, comprising 46 patients with benign liver nodules, 51 patients with malignant liver nodules, and 53 patients with no FLLs. Significant differences were observed among groups for age, AST, ALP, GGT, AFP, CA19-9and CEA. On the validation set, the Dice coefficient of the model was 0.740. For the normal group, the recall was 0.918, precision was 0.904, F1-score was 0.909, and AUC was 0.976. For the benign group, the recall was 0.869, precision was 0.862, F1-score was 0.863, and AUC was 0.928. For the malignant group, the recall was 0.858, precision was 0.914, F1-score was 0.883, and AUC was 0.979. The model's overall diagnostic performance was between that of junior and senior physician.
This deep learning model demonstrated high sensitivity in detecting FLLs and effectively differentiated between benign and malignant lesions.
开发并验证一种使用多模态PET/CT成像检测和分类肝脏局灶性病变(FLL)的深度学习模型。
本研究纳入了2022年3月至2023年2月在我院接受F-FDG PET/CT成像的185例患者。我们分析了血清学数据和影像学资料。在PET和CT上对肝脏病变进行分割,作为“参考标准”。使用PET和CT图像训练深度学习模型,以生成预测分割并对病变性质进行分类。通过将预测分割与参考分割进行比较,使用Dice、Precision、Recall、F1分数、ROC和AUC等指标评估模型性能,并与医生诊断结果进行比较。
本研究最终纳入150例患者,其中包括46例良性肝结节患者、51例恶性肝结节患者和53例无FLL患者。各组在年龄、AST、ALP、GGT、AFP、CA19-9和CEA方面存在显著差异。在验证集上,模型的Dice系数为0.740。对于正常组,召回率为0.918,精确率为0.904,F1分数为0.909,AUC为0.976。对于良性组,召回率为0.869,精确率为0.862,F1分数为0.863,AUC为0.928。对于恶性组,召回率为0.858,精确率为0.914,F1分数为0.883,AUC为0.979。该模型的整体诊断性能介于初级和高级医生之间。
这种深度学习模型在检测FLL方面表现出高灵敏度,并能有效区分良性和恶性病变。