Tao Yali, Sun Rong, Li Jian, Wu Wenhui, Xie Yuanzhong, Ye Xiaodan, Li Xiujuan, Nie Shengdong
School of Health Science and Engineering, University of Shanghai for Science and Technology, Shanghai, China.
Product Research Center, Jiufeng Healthcare Co., Ltd., Jiangxi, China.
Med Phys. 2025 Jun;52(6):4557-4566. doi: 10.1002/mp.17781. Epub 2025 Apr 1.
Invasive lung adenocarcinoma (LUAD) with the high-grade patterns (HGPs) has the potential for rapid metastasis and frequent recurrence. Therefore, accurately predicting the presence of high-grade components is crucial for doctors to develop personalized treatment plans and improve patient prognosis.
To develop a CNN-transformer fusion network based on radiomics and clinical information for predicting the HGPs of LUAD.
A total of 288 lesions in 288 patients with pathologically confirmed invasive LUAD were enrolled. Firstly, radiomics features were extracted from the entire tumor region on lung computed tomography (CT) images and then fused with clinical patient characteristics. Secondly, a structure was proposed that concatenated a convolutional neural network (CNN) and Transformer encoding blocks to mine and extract more comprehensive information. Finally, a classification prediction was performed through fully connected layers.
Accuracy, sensitivity, specificity, precision, and area under the receiver operating characteristic (ROC) curve (AUC) were utilized for evaluation of the model's classification prediction performance. Delong's test was used to compare the AUCs of different models for significance. The proposed model was effective with an accuracy of 0.86, sensitivity of 0.67, specificity of 0.94, precision of 0.74, and AUC of 0.91.
The CNN-transformer fusion network, based on radiomics and clinical information, demonstrates good performance in predicting the presence of HGPs and can be employed to assist in the development of personalized treatment plans for patients with invasive LUAD.
具有高级别模式(HGPs)的侵袭性肺腺癌(LUAD)具有快速转移和频繁复发的可能性。因此,准确预测高级别成分的存在对于医生制定个性化治疗方案和改善患者预后至关重要。
开发一种基于放射组学和临床信息的卷积神经网络 - 变压器融合网络,用于预测LUAD的HGPs。
纳入288例经病理证实的侵袭性LUAD患者的288个病灶。首先,从肺部计算机断层扫描(CT)图像上的整个肿瘤区域提取放射组学特征,然后与患者临床特征进行融合。其次,提出一种将卷积神经网络(CNN)和Transformer编码块连接起来的结构,以挖掘和提取更全面的信息。最后,通过全连接层进行分类预测。
使用准确率、灵敏度、特异性、精确率和受试者操作特征(ROC)曲线下面积(AUC)来评估模型的分类预测性能。采用德龙检验比较不同模型的AUCs是否具有显著性差异。所提出的模型有效,准确率为0.86,灵敏度为0.67,特异性为0.94,精确率为0.74,AUC为0.91。
基于放射组学和临床信息的卷积神经网络 - 变压器融合网络在预测HGPs的存在方面表现出良好性能,可用于协助制定侵袭性LUAD患者的个性化治疗方案。