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New progress of artificial intelligence in medical application |
LI Yan1 YANG Guoqing2 SHUANG Jiaoyue1 |
1.Department of Imaging and Nuclear Medicine, North Sichuan Medical College, Sichuan Province, Nanchong 637000, China;
2.Department of Radiology, Suining Central Hospital, Sichuan Province, Suining 629000, China |
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Abstract As a new auxiliary tool, artificial intelligence (AI) is widely used in all walks of life. However, its application in the medical field is not well known to most medical staff, resulting in a large amount of data can not be effectively used. In order to let more medical workers better understand AI, this paper reviews the related concepts of AI and its application in imaging, surgery and pathology. It mainly includes image-based disease diagnosis, treatment evaluation and avoidance of examination side effects; annotation of structure and steps in surgery, application of surgical robot; judgment of lesion infiltration depth in pathological examination and risk assessment of patients. It is expected to inspire clinicians and encourage medical workers to join in AI research.
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