Jia Jianye, Wang Jiahao, Zhang Yongxian, Bai Genji, Han Lei, Niu Yantao
Department of Radiology, Beijing Friendship Hospital, Capital Medical University, No. 95 Yong'an Road, Xicheng District, Beijing 100050, China (J.J., J.W., Y.N.).
Department of Radiology, Beijing Tongren Hospital, Capital Medical University, No.1 DongJiaoMinXiang Street, DongCheng District, Beijing 100730, China (Y.Z.).
Acad Radiol. 2025 May 23. doi: 10.1016/j.acra.2025.05.006.
This study aims to develop and validate a deep learning radiomics signature (DLRS) that integrates radiomics and deep learning features for the non-invasive prediction of microvascular invasion (MVI) in patients with colon cancer (CC). Furthermore, the study explores the potential association between DLRS and tumor immune heterogeneity.
This study is a multi-center retrospective study that included a total of 1007 patients with colon cancer (CC) from three medical centers and The Cancer Genome Atlas (TCGA-COAD) database. Patients from Medical Centers 1 and 2 were divided into a training cohort (n = 592) and an internal validation cohort (n = 255) in a 7:3 ratio. Medical Center 3 (n = 135) and the TCGA-COAD database (n = 25) were used as external validation cohorts. Radiomics and deep learning features were extracted from contrast-enhanced venous-phase CT images. Feature selection was performed using machine learning algorithms, and three predictive models were developed: a radiomics model, a deep learning (DL) model, and a combined deep learning radiomics (DLR) model. The predictive performance of each model was evaluated using multiple metrics, including the area under the curve (AUC), sensitivity, and specificity. Additionally, differential gene expression analysis was conducted on RNA-seq data from the TCGA-COAD dataset to explore the association between the DLRS and tumor immune heterogeneity within the tumor microenvironment.
Compared to the standalone radiomics and deep learning models, DLR fusion model demonstrated superior predictive performance. The AUC for the internal validation cohort was 0.883 (95% CI: 0.828-0.937), while the AUC for the external validation cohort reached 0.855 (95% CI: 0.775-0.935). Furthermore, stratifying patients from the TCGA-COAD dataset into high-risk and low-risk groups based on the DLRS revealed significant differences in immune cell infiltration and immune checkpoint expression between the two groups (P < 0.05).
The contrast-enhanced CT-based DLR fusion model developed in this study effectively predicts the MVI status in patients with CC. This model serves as a non-invasive preoperative assessment tool and reveals a potential association between the DLRS and immune heterogeneity within the tumor microenvironment, providing insights to optimize individualized treatment strategies.
本研究旨在开发并验证一种深度学习放射组学特征(DLRS),该特征整合了放射组学和深度学习特征,用于对结肠癌(CC)患者的微血管侵犯(MVI)进行无创预测。此外,该研究还探讨了DLRS与肿瘤免疫异质性之间的潜在关联。
本研究是一项多中心回顾性研究,共纳入来自三个医疗中心的1007例结肠癌(CC)患者以及癌症基因组图谱(TCGA-COAD)数据库。医疗中心1和2的患者按7:3的比例分为训练队列(n = 592)和内部验证队列(n = 255)。医疗中心3(n = 135)和TCGA-COAD数据库(n = 25)用作外部验证队列。从静脉期增强CT图像中提取放射组学和深度学习特征。使用机器学习算法进行特征选择,并开发了三种预测模型:放射组学模型、深度学习(DL)模型和联合深度学习放射组学(DLR)模型。使用包括曲线下面积(AUC)、敏感性和特异性在内的多个指标评估每个模型的预测性能。此外,对TCGA-COAD数据集中的RNA-seq数据进行差异基因表达分析,以探讨DLRS与肿瘤微环境内肿瘤免疫异质性之间的关联。
与单独的放射组学和深度学习模型相比,DLR融合模型表现出卓越的预测性能。内部验证队列的AUC为0.883(95%CI:0.828 - 0.937),而外部验证队列的AUC达到0.855(95%CI:0.775 - 0.935)。此外,根据DLRS将TCGA-COAD数据集中的患者分为高风险和低风险组,结果显示两组之间免疫细胞浸润和免疫检查点表达存在显著差异(P < 0.05)。
本研究中基于静脉期增强CT开发的DLR融合模型有效地预测了CC患者的MVI状态。该模型可作为一种无创的术前评估工具,并揭示了DLRS与肿瘤微环境内免疫异质性之间的潜在关联,为优化个体化治疗策略提供了思路。