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Analysis of the Development Trends of Life and Health Sciences and Technology |
Li XU,Ruonan YANG,Yue WANG,Huilin SHI,Zhenqi LI,Chenqi JIN,Wei LI,Ping XU**() |
Shanghai Information Center for Life Sciences, Shanghai Institute of Nutrition and Health,Chinese Academy of Sciences, Shanghai 200031, China |
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Abstract Life and health sciences and technology is one of the key areas that are most expected to achieve revolutionary breakthroughs in the new round of scientific and technological revolution and industrial transformation. Through the convergence and integration of disciplines and technologies, it has shown a new development trend, givenrise to new disciplines, new directions, and new frontiers, and created new subdivisions and growth points in the industry. In recent years, innovation in the field of life and health sciences and technology has been active, and major achievements in frontier areas such as gene editing, synthetic biology, life omics, regenerative medicine, and organoids have been intensively developed. Based on the in-depth analysis of the current development trends and frontier directions in the field of life and health sciences and technology, its future development prospects are discussed and the key layout direction is proposed to provide reference for the development of life and health sciences and technology innovation.
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Received: 26 December 2023
Published: 04 February 2024
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