Song Shaoming, Zhang Gong, Yao Zhiyuan, Chen Ruiqiu, Liu Kai, Zhang Tianchen, Zeng Guineng, Wang Zizheng, Liu Rong
The First School of Clinical Medicine, Lanzhou University, Lanzhou, 730000, China.
Faculty of Hepatopancreatobiliary Surgery, The First Medical Center of Chinese PLA General Hospital, Beijing, 100853, China.
BMC Cancer. 2025 Mar 18;25(1):497. doi: 10.1186/s12885-025-13781-1.
The potential of medical imaging to non-invasively assess intratumoral heterogeneity (ITH) is increasingly being recognized. This study aimed to investigate the value of the ITH-based deep learning model for preoperative prediction of histopathologic grade in hepatocellular carcinoma (HCC).
A total of 858 patients from primary cohort and two external cohorts were included. 3.0T or 1.5T axial portal venous phase MRI images were collected. We conducted radiomics feature-driven K-means clustering for automatic partition to reveal ITH. 2.5D and 3D deep learning models based on ResNet architecture were trained to extract deep learning hidden features of each subregion. The selected features were used to train Random Forest classifier, which constructed the feature-fusion model.
The extracted voxel-level radiomics features were unsupervised clustered by K-means to generate three subregions. In the 2.5D deep learning, the feature-fusion model based on ITH had superior predictive efficacy than the whole-tumor model (AUC: 0.82 vs. 0.72; p = 0.004). Even in the validation and external test sets, this model maintained a high AUC of 0.78-0.83, and net reclassification indices indicated that it could improve prediction by 25-28%. Regarding the prognostic value, overall survival (OS) and recurrence-free survival (RFS) could be significantly stratified by the 2.5D feature-fusion model, and multivariable Cox regressions indicated its signature was identified as a risk predictor for OS and RFS (p < 0.05).
The ITH-based feature-fusion model provided a non-invasive method for classifying tumor differentiation in HCC, which may serve as a promising strategy for stratification management.
医学成像对肿瘤内异质性(ITH)进行无创评估的潜力日益受到认可。本研究旨在探讨基于ITH的深度学习模型对肝细胞癌(HCC)组织病理学分级术前预测的价值。
纳入来自初级队列和两个外部队列的共858例患者。收集3.0T或1.5T轴位门静脉期MRI图像。我们进行基于影像组学特征驱动的K均值聚类自动分割以揭示ITH。基于ResNet架构的2.5D和3D深度学习模型被训练以提取每个子区域的深度学习隐藏特征。所选特征用于训练随机森林分类器,构建特征融合模型。
提取的体素级影像组学特征通过K均值进行无监督聚类以生成三个子区域。在2.5D深度学习中,基于ITH的特征融合模型比全肿瘤模型具有更高的预测效能(AUC:0.82对0.72;p = 0.004)。即使在验证集和外部测试集中,该模型仍保持0.78 - 0.83的高AUC,净重新分类指数表明其可将预测提高25 - 28%。关于预后价值,2.5D特征融合模型可显著分层总生存期(OS)和无复发生存期(RFS),多变量Cox回归表明其特征被确定为OS和RFS的风险预测因子(p < 0.05)。
基于ITH的特征融合模型为HCC肿瘤分化分类提供了一种无创方法,可能是分层管理的一种有前景的策略。