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    Medical Image Training Lab

    Introduction

    Artificial intelligence has made significant breakthroughs in medical image processing, including the intelligent recognition, automatic segmentation, three-dimensional reconstruction, and quantification of lesions in CT, MRI, and ultrasound images, as well as the subsequent intelligent diagnosis and prognosis assessment. This laboratory covers the typical applications of artificial intelligence in medical imaging, including CT, MRI, and ultrasound images, and provides detailed processes of medical image processing and deep learning model training, including data annotation, model training, model call and deployment, to help students quickly get started and master relevant knowledge and skills.


    Corporate Positions: Data Collection and Annotation Engineer, AI Training Engineer, AI Application Development Engineer

    Applicable Majors: AI Engineering Technology/Medical Imaging Technology/Computer-related majors

    Course Products: professional core courses and professional extension courses on imaging, image segmentation, image enhancement and other medical aspects

    Project Products: a number of practical training projects centering on image segmentation, artifact recognition, image simulation and other technologies based on the background of medical imaging industry

    Application scenarios: Professional teaching, comprehensive training, competition training

     



    Feature


    State-of-the-art and focused

    Utilizing cutting-edge artificial intelligence algorithms to solve hot issues in medical imaging

     

    Technology coverage across the board

    The project covers the entire technology chain of medical imaging processing, including core technology areas such as imaging, enhancement, segmentation, and registration.

     

    Self-developed imaging algorithm

    The CT imaging process in the simulation system is visually visible