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Interactive Segmentation and Report Generation for CT Images

5 March 2025
Yannian Gu
Wenhui Lei
Hanyu Chen
Xiaofan Zhang
S. Zhang
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Abstract

Automated CT report generation plays a crucial role in improving diagnostic accuracy and clinical workflow efficiency. However, existing methods lack interpretability and impede patient-clinician understanding, while their static nature restricts radiologists from dynamically adjusting assessments during image review. Inspired by interactive segmentation techniques, we propose a novel interactive framework for 3D lesion morphology reporting that seamlessly generates segmentation masks with comprehensive attribute descriptions, enabling clinicians to generate detailed lesion profiles for enhanced diagnostic assessment. To our best knowledge, we are the first to integrate the interactive segmentation and structured reports in 3D CT medical images. Experimental results across 15 lesion types demonstrate the effectiveness of our approach in providing a more comprehensive and reliable reporting system for lesion segmentation and capturing. The source code will be made publicly available following paper acceptance.

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@article{gu2025_2503.03294,
  title={ Interactive Segmentation and Report Generation for CT Images },
  author={ Yannian Gu and Wenhui Lei and Hanyu Chen and Xiaofan Zhang and Shaoting Zhang },
  journal={arXiv preprint arXiv:2503.03294},
  year={ 2025 }
}
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