Automated Kidney Tumor Segmentation in CT Images Using Deep Learning: A Multi-Stage Approach

  • Hung Cheng Kan
  • , Geng Ming Fan
  • , Ming Hao Wei
  • , Po Hung Lin
  • , I. Hung Shao
  • , Kai Jie Yu
  • , Ti Hsuan Chien
  • , See Tong Pang
  • , Chun Te Wu
  • , Syu Jyun Peng

研究成果: 雜誌貢獻文章同行評審

摘要

Rationale and Objectives: Computed tomography (CT) remains the primary modality for assessing renal tumors; however, tumor identification and segmentation rely heavily on manual interpretation by clinicians, which is time-consuming and subject to inter-observer variability. The heterogeneity of tumor appearance and indistinct margins further complicate accurate delineation, impacting histopathological classification, treatment planning, and prognostic assessment. There is a pressing clinical need for an automated segmentation tool to enhance diagnostic workflows and support clinical decision-making with results that are reliable, accurate, and reproducible. Materials and Methods: This study developed a fully automated pipeline based on the DeepMedic 3D convolutional neural network for the segmentation of kidneys and renal tumors through multi-scale feature extraction. The model was trained and evaluated using 5-fold cross-validation on a dataset of 382 contrast-enhanced CT scans manually annotated by experienced physicians. Image preprocessing included Hounsfield unit conversion, windowing, 3D reconstruction, and voxel resampling. Post-processing was also employed to refine output masks and improve model generalizability. Results: The proposed model achieved high performance in kidney segmentation, with an average Dice coefficient of 93.82 ± 1.38%, precision of 94.86 ± 1.59%, and recall of 93.66 ± 1.77%. In renal tumor segmentation, the model attained a Dice coefficient of 88.19 ± 1.24%, precision of 90.36 ± 1.90%, and recall of 88.23 ± 2.02%. Visual comparisons with ground truth annotations confirmed the clinical relevance and accuracy of the predictions. Conclusion: The proposed DeepMedic-based framework demonstrates robust, accurate segmentation of kidneys and renal tumors on CT images. With its potential for real-time application, this model could enhance diagnostic efficiency and treatment planning in renal oncology.
原文英語
頁(從 - 到)7193-7203
頁數11
期刊Academic Radiology
32
發行號12
DOIs
出版狀態接受/付印 - 2025

ASJC Scopus subject areas

  • 放射學、核子醫學和影像學

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