Yang You Chang, Wu Jiao Jiao, Shi Feng, Ren Qing Guo, Jiang Qing Jun, Guan Shuai, Tang Xiao Qiang, Meng Xiang Shui
Department of Radiology, Qilu Hospital (Qingdao), Cheeloo College of Medicine, Shandong University, Shandong Province, China.
Department of Research and Development, Shanghai United Imaging Intelligence Co., Ltd., Shanghai, China.
Acad Radiol. 2025 Jan;32(1):237-249. doi: 10.1016/j.acra.2024.08.006. Epub 2024 Aug 14.
Clear cell renal cell carcinoma (ccRCC) is the most common malignant neoplasm affecting the kidney, exhibiting a dismal prognosis in metastatic instances. Elucidating the composition of ccRCC holds promise for the discovery of highly sensitive biomarkers. Our objective was to utilize habitat imaging techniques and integrate multimodal data to precisely predict the risk of metastasis, ultimately enabling early intervention and enhancing patient survival rates.
A retrospective analysis was performed on a cohort of 263 patients with ccRCC from three hospitals between April 2013 and March 2021. Preoperative CT images, ultrasound images, and clinical data were comprehensively analyzed. Patients from two campuses of Qilu Hospital of Shandong University were assigned to the training dataset, while the third hospital served as the independent testing dataset. A robust consensus clustering method was used to classify the primary tumor space into distinct sub-regions (i.e., habitats) using contrast-enhanced CT images. Radiomic features were extracted from these tumor sub-regions and subsequently reduced to identify meaningful features for constructing a predictive model for ccRCC metastasis risk assessment. In addition, the potential value of radiomics in predicting ccRCC metastasis risk was explored by integrating ultrasound image features and clinical data to construct and compare alternative models.
In this study, we performed k-means clustering within the tumor region to generate three distinct tumor subregions. We quantified the Hounsfiled Unit (HU) value, volume fraction, and distribution of high- and low-risk groups in each subregion. Our investigation focused on 252 patients with Habitat1 + Habitat3 to assess the discriminative power of these two subregions. We then developed a risk prediction model for ccRCC metastasis risk classification based on radiomic features extracted from CT and ultrasound images, and clinical data. The Combined model and the CT_Habitat3 model showed AUC values of 0.935 [95%CI: 0.902-0.968] and 0.934 [95%CI: 0.902-0.966], respectively, in the training dataset, while in the independent testing dataset, they achieved AUC values of 0.891 [95%CI: 0.794-0.988] and 0.903 [95%CI: 0.819-0.987], respectively.
We have identified a non-invasive imaging predictor and the proposed sub-regional radiomics model can accurately predict the risk of metastasis in ccRCC. This predictive tool has potential for clinical application to refine individualized treatment strategies for patients with ccRCC.
透明细胞肾细胞癌(ccRCC)是影响肾脏的最常见恶性肿瘤,在转移情况下预后不佳。阐明ccRCC的组成有望发现高度敏感的生物标志物。我们的目标是利用影像学技术并整合多模态数据,精确预测转移风险,最终实现早期干预并提高患者生存率。
对2013年4月至2021年3月期间来自三家医院的263例ccRCC患者进行回顾性分析。综合分析术前CT图像、超声图像和临床数据。山东大学齐鲁医院两个院区的患者被分配到训练数据集,而第三家医院作为独立测试数据集。使用稳健的一致性聚类方法,利用增强CT图像将原发肿瘤空间分类为不同的子区域(即栖息地)。从这些肿瘤子区域提取放射组学特征,随后进行降维以识别有意义的特征,用于构建ccRCC转移风险评估的预测模型。此外,通过整合超声图像特征和临床数据构建并比较替代模型,探索放射组学在预测ccRCC转移风险方面的潜在价值。
在本研究中,我们在肿瘤区域内进行k均值聚类,生成三个不同的肿瘤子区域。我们量化了每个子区域的Hounsfiled单位(HU)值、体积分数以及高风险和低风险组的分布。我们的研究聚焦于252例具有Habitat1 + Habitat3的患者,以评估这两个子区域的鉴别能力。然后,我们基于从CT和超声图像以及临床数据中提取的放射组学特征,开发了一个用于ccRCC转移风险分类的风险预测模型。在训练数据集中,联合模型和CT_Habitat3模型的AUC值分别为0.9