Research on the Application of Deep Learning in Medical Image Segmentation and 3D Reconstruction

Authors

  • Yun Zi
  • Qi Wang
  • Zijun Gao
  • Xiaohan Cheng
  • Taiyuan Mei

DOI:

https://doi.org/10.54097/0h77ge77

Keywords:

3D Reconstruction; Deep Learning; Medical Image Segmentation; Self-attention mechanism.

Abstract

 Medical image segmentation (MIS) and 3D reconstruction are crucial research directions in the field of medical imaging, which is of great significance for disease diagnosis, treatment planning and surgical navigation. In recent years, with the rapid development of Deep Learning (DL) technology, DL has made remarkable progress in the field of medical image processing and has become one of the important methods of MIS and 3D reconstruction. In this paper, the application of DL technologies in MIS and 3D reconstruction is systematically studied and discussed. Firstly, the paper introduces the basic concepts and technical challenges of MIS and 3D reconstruction, including image quality, noise interference and edge detection. Secondly, the paper introduces the data acquisition process in detail, including the medical image data set and data preprocessing method. Then, the paper puts forward the DL model framework based on self-attention mechanism, as well as the loss function and optimizer used in the training process. Then, the model is verified by experiments, and the performance of different models in MIS and 3D reconstruction is analyzed. Finally, the experimental results are comprehensively analyzed, and the application prospect and future development direction of DL in MIS and 3D reconstruction are discussed. The research results of this paper provide important theoretical and practical guidance for improving medical image processing technology and promoting the development and clinical application of medical imaging.

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Published

15-04-2024

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Section

Articles

How to Cite

Zi, Y., Wang, Q., Gao, Z., Cheng, X., & Mei, T. (2024). Research on the Application of Deep Learning in Medical Image Segmentation and 3D Reconstruction. Academic Journal of Science and Technology, 10(2), 8-12. https://doi.org/10.54097/0h77ge77