CT-based deep learning for preoperative prediction of pathological grading of renal clear cell carcinoma
Zhenyu Cui, Tao Ma, Kun Liu, Bingye Shi, Wenzeng Yang

TL;DR
This study uses deep learning with CT images to predict the cancer grade of kidney tumors before surgery, offering a noninvasive tool for better preoperative planning.
Contribution
The novel contribution is the development and optimization of a SE-ResNet34 model using four-phase CT images for preoperative pathological grading of renal clear cell carcinoma.
Findings
The SE-ResNet34 model achieved 87.8% accuracy in predicting ccRCC grades using parenchymal phase CT images.
Adding the SENet attention mechanism improved AUC for low-grade and high-grade predictions to 0.929 and 0.927, respectively.
The model shows strong performance but requires further validation for robustness and multi-center applicability.
Abstract
To construct a noninvasive preoperative prediction model for WHO/ISUP grading of renal clear cell carcinoma (ccRCC) using deep learning combined with four-phase CT images, and to evaluate its efficacy. A retrospective study was conducted on 158 ccRCC patients (124 low-grade, 34 high-grade) from the Affiliated Hospital of Hebei University (January 2022-June 2024). Patients were randomly divided into training, validation, and test sets at an 8:1:1 ratio. Four-phase CT images were preprocessed (rectangular box annotation of tumor region of interest [ROI], image resizing to 224×224 pixels). The ResNet34 model was first built to predict ccRCC grading, with performance evaluated by accuracy (ACC) and area under the receiver operating characteristic curve (AUC). The model was then optimized by integrating the SENet attention mechanism (forming the SE-ResNet34 model), and performance before…
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Taxonomy
TopicsRenal cell carcinoma treatment · Radiomics and Machine Learning in Medical Imaging · AI in cancer detection
