Research on Artificial Intelligence Neural Model Based on Human Neuroscience Simulation: A Case Study of Orthopedic Medical Robots and Economic Discussion

Authors

  • Yi Qin Medical Oncology, Chifeng Cancer Hospital (The Second Affiliated Hospital of Chifeng University), Chifeng Innermongolia, 024000, China
  • Zhenyu Liu International Sakharov Environmental Institute, Belarusian State University, Minsk Minsk, 220070, Belarus
  • Yihan Liao International Sakharov Environmental Institute, Belarusian State University, Minsk Minsk, 220070, Belarus
  • Yuan Shen International Sakharov Environmental Institute, Belarusian State University, Minsk Minsk, 220070, Belarus

Keywords:

Neuroscience, Artificial intelligence, Medicine, Economics of robotics

Abstract

Simulation computer models of human neuroscience are widely used in artificial intelligence. The extensive use of surgical robots in China makes the simulation model of neuroscience have a broader stage in economic development. We have more usage for medical image recognition and surgical robot programming. We try to analyze the neural network model commonly used by orthopedic medical robots from the simulation of human neuroscience. The discussion is based on economic principles.

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Published

2026-02-03

How to Cite

Qin, Y., Liu, Z., Liao, Y., & Shen, Y. (2026). Research on Artificial Intelligence Neural Model Based on Human Neuroscience Simulation: A Case Study of Orthopedic Medical Robots and Economic Discussion. International Journal of Advance in Applied Science Research, 5(2), 19–21. Retrieved from https://h-tsp.com/index.php/ijaasr/article/view/244

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Articles