实用肝脏病杂志 ›› 2025, Vol. 28 ›› Issue (6): 914-917.doi: 10.3969/j.issn.1672-5069.2025.06.029

• 肝癌 • 上一篇    下一篇

基于深度学习的高分辨率磁共振成像鉴别诊断肝脏局灶性病变价值研究*

叶永盛, 史倩菲, 周建国   

  1. 222000 江苏省连云港市第二人民医院医学影像科(叶永盛,史倩菲);南京中医药大学附属连云港市中医院医学影像科(周建国)
  • 收稿日期:2024-11-08 出版日期:2025-11-10 发布日期:2025-11-13
  • 通讯作者: 史倩菲,E-mail:chengchen1949@163.com
  • 作者简介:叶永盛,男,38岁,大学本科,主管技师。E-mail:yeyongsheng1@126.com
  • 基金资助:
    *江苏省卫生健康委科研项目(编号:QNRC20230510)

Deep learning-based high-resolution magnetic resonance imaging in differential diagnosis of focal liver lesions

Ye Yongsheng, Shi Qianfei, Zhou Jianguo   

  1. Department of Radiology, Second People's Hospital, Lianyungang 222000, Jiangsu Province, China
  • Received:2024-11-08 Online:2025-11-10 Published:2025-11-13

摘要: 目的 探讨基于深度学习的高分辨率磁共振成像(hrMRI)诊断肝脏局灶性病变(FLL)的价值。方法 2023年1月~2023年12月连云港市第二人民医院诊治的98例FLL患者,均接受hrMRI扫描检查,采用ResNet50残差网络作为深度学习模型的主干网络,在PyTorch框架下搭建深度学习模型,将前半年纳入的患者作为训练集,将后半年纳入的患者作为测试集。所有患者接受细针穿刺活检或手术,常规行病理学检查。应用受试者工作特征曲线下面积(AUC)评估诊断效能。结果 基于深度学习的hrMRI图像可诊断率93.9%,显著高于hrMRI图像诊断的84.7%(P<0.05);在98例FLL患者中,经病理学检查诊断恶性肿瘤55例和良性病变43例;基于深度学习的hrMRI诊断的灵敏性、特异性、准确性、阳性预测值和阴性预测值分别为89.1%、86.1%、87.8%、89.1%和86.0%,显著优于hrMRI诊断的81.8%、67.8%、76.5%、77.6%和75.0%(P<0.05)。结论 基于深度学习的hrMRI诊断FLL病灶性质准确性较高,值得继续进行深入研究。

关键词: 肝细胞癌, 肝脏局灶性病变, 高分辨率磁共振成像, 深度学习, 诊断

Abstract: Objective The purpose of this study was to investigate deep learning-based high-resolution magnetic resonance imaging (MRI) in the differential diagnosis of focal liver lesions(FLL). Methods 98 patients with FLL were admitted to Second People's Hospital, Lianyungang City between January 2023 and December 2023, and all underwent hrMRI scan. The imaging was repeatedly read by Residual Network under PyTorch, persons encountered in the first half of the year were selected as training set, and those in the second half of the year were acted as validation set. Tissues obtained by fine needle aspiration biopsies or by surgery were routinely pathologically examined. Area under receiver operating characteristic curve (AUC) was applied to evaluate diagnostic performance. Results The eligible image quality rate for diagnosis by deep learning-based hrMRI was 93.9%, much higher than 84.7% by hrMRI (P<0.05); of 98 patients with FLL, histo-pathological examination showed malignant lesions in 55 cases (cholangiocarcinoma in 5 and hepatocellular carcinoma in 50), and benign lesions in 43 cases (focal nodular hyperplasia in 25 and cirrhotic nodules in 18); sensitivity, specificity, accuracy, positive predictive value and negative predictive value by deep learning-based hrMRI were 89.1%, 86.1%, 87.8%, 89.1% and 86.0%, much superior to 81.8%, 67.8%, 76.5%, 77.6% and 75.0%(P<0.05) by hrMRI. Conclusion Efficacy by deep learning-based hrMRI in differentiating quality of intrahepatic lesions is satisfactory, which warrants further investigation.

Key words: Hepatoma, Focal liver lesions, Deep learning, High resolution magnetic resonance imaging, Differential diagnosis