Affiliation:
1. The Second School of Clinical Medicine Zhejiang Chinese Medical University Hangzhou PR China
2. Department of Ultrasound Tongde Hospital of Zhejiang Province Hangzhou PR China
3. College of Computer Science and Technology Zhejiang University of Technology Hangzhou PR China
4. Department of Nephropathy Tongde Hospital of Zhejiang Province Hangzhou PR China
5. Department of Radiology Zhejiang Cancer Hospital Hangzhou PR China
Abstract
AbstractAimThis study aimed to explore the value of ultrasound (US) images in chronic kidney disease (CKD) screening by constructing a CKD screening model based on grey‐scale US images.MethodsAccording to the CKD diagnostic criteria, 1049 patients from Tongde Hospital of Zhejiang Province were retrospectively enrolled in the study. A total of 4365 renal US images were collected from these patients. Convolutional neural networks were used for feature extractions and a screening model was constructed by fusing ResNet34 and texture features to identify CKD and its stage. A comparative analysis was performed to compare the diagnosis results of the model with physicians.ResultsWhen diagnosing CKD or non‐CKD, the receiver operating characteristic curve (AUC) of our model was 0.918 and that of the senior physician group was 0.869 (p < .05). For the diagnosis of CKD stage, the AUC of our model for CKD G1–G3 was 0.781, 0.880, and 0.905, respectively, while the AUC of the senior physician group for CKD G1–G3 was 0.506, 0.586, and 0.796, respectively; all differences were statistically significant (p < .05). The diagnostic efficiency of our model for CKD G4 and G5 reached the level of the senior physicians group. Specifically, the AUC of our model for CKD G4‐G5 was 0.867 and 0.931, respectively, while the AUC of the senior physician group for CKD G4‐G5 was 0.838 and 0.963, respectively (all p > .05).ConclusionsOur deep learning radiomics model is more effective than senior physicians in the diagnosis of early CKD.image