A Residual Multi-task Network for Joint Classification and Regression in Medical Imaging
- URL: http://arxiv.org/abs/2502.19692v1
- Date: Thu, 27 Feb 2025 02:02:59 GMT
- Title: A Residual Multi-task Network for Joint Classification and Regression in Medical Imaging
- Authors: Junji Lin, Yi Zhang, Yunyue Pan, Yuli Chen, Chengchang Pan, Honggang Qi,
- Abstract summary: We propose a residual multi-task network (Res-MTNet) model, which combines multi-task learning and residual learning.<n>Res-MTNet enhances the robustness and accuracy of the model, providing a more reliable lung analysis tool for clinical medicine and telemedicine.
- Score: 7.541046664320951
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Detection and classification of pulmonary nodules is a challenge in medical image analysis due to the variety of shapes and sizes of nodules and their high concealment. Despite the success of traditional deep learning methods in image classification, deep networks still struggle to perfectly capture subtle changes in lung nodule detection. Therefore, we propose a residual multi-task network (Res-MTNet) model, which combines multi-task learning and residual learning, and improves feature representation ability by sharing feature extraction layer and introducing residual connections. Multi-task learning enables the model to handle multiple tasks simultaneously, while the residual module solves the problem of disappearing gradients, ensuring stable training of deeper networks and facilitating information sharing between tasks. Res-MTNet enhances the robustness and accuracy of the model, providing a more reliable lung nodule analysis tool for clinical medicine and telemedicine.
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