Abstract
The development of artificial intelligence (AI) has a short history, starting in the 1950s, yet after continuous iterations and upgrades, today, it can be said to have penetrated all areas of society, especially people’s lifestyles have also undergone radical changes. Clothing, food, housing, and transportation, while pursuing efficiency, people are also in pursuit of a more personalized and comfortable experience, which is also reflected in seeking medical care. Therefore, experts and scholars in the medical field are rooted in their own professions and actively seek cross-disciplinary cooperation to promote the beautiful vision of intelligent and smart medical care to become a reality.
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Jiang, H. (2023). Artificial Intelligence: An Overview. In: Xia, M., Jiang, H. (eds) Artificial Intelligence in Anesthesiology. Springer, Singapore. https://doi.org/10.1007/978-981-99-5925-9_1
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