Tian Yuchi, Komolafe Temitope Emmanuel, Zheng Jian, Zhou Guofeng, Chen Tao, Zhou Bo, Yang Xiaodong
Academy of Engineering and Technology, Fudan University, Shanghai 200433, China.
School of Biomedical Engineering, Shanghai Tech. University, Shanghai 201210, China.
Diagnostics (Basel). 2021 Oct 12;11(10):1875. doi: 10.3390/diagnostics11101875.
To assess if quantitative integrated deep learning and radiomics features can predict the PD-L1 expression level in preoperative MRI of hepatocellular carcinoma (HCC) patients. The data in this study consist of 103 hepatocellular carcinoma patients who received immunotherapy in a single center. These patients were divided into a high PD-L1 expression group (30 patients) and a low PD-L1 expression group (73 patients). Both radiomics and deep learning features were extracted from their MRI sequence of T2-WI, which were merged into an integrative feature space for machine learning for the prediction of PD-L1 expression. The five-fold cross-validation was adopted to validate the performance of the model, while the AUC was used to assess the predictive ability of the model. Based on the five-fold cross-validation, the integrated model achieved the best prediction performance, with an AUC score of 0.897 ± 0.084, followed by the deep learning-based model with an AUC of 0.852 ± 0.043 then the radiomics-based model with AUC of 0.794 ± 0.035. The feature set integrating radiomics and deep learning features is more effective in predicting PD-L1 expression level than only one feature type. The integrated model can achieve fast and accurate prediction of PD-L1 expression status in preoperative MRI of HCC patients.
评估定量整合深度学习和影像组学特征能否预测肝细胞癌(HCC)患者术前MRI中的PD-L1表达水平。本研究的数据包括103例在单一中心接受免疫治疗的肝细胞癌患者。这些患者被分为高PD-L1表达组(30例)和低PD-L1表达组(73例)。从他们的T2-WI MRI序列中提取影像组学和深度学习特征,并将其合并到一个综合特征空间中用于机器学习以预测PD-L1表达。采用五折交叉验证来验证模型的性能,同时使用AUC来评估模型的预测能力。基于五折交叉验证,整合模型取得了最佳预测性能,AUC评分为0.897±0.084,其次是基于深度学习的模型,AUC为0.852±0.043,然后是基于影像组学的模型,AUC为0.794±0.035。整合影像组学和深度学习特征的特征集在预测PD-L1表达水平方面比仅一种特征类型更有效。该整合模型能够在HCC患者术前MRI中快速准确地预测PD-L1表达状态。