计算机辅助技术在临床医学中的应用与进展
Applications and Developments of Computer-Aided Technology in Clinical Medicine
DOI: 10.12677/ACM.2022.123312, PDF,   
作者: 尚 静:胜利油田中心医院,山东 东营;李博阳*:吉林大学,吉林 长春;徐志昊*:青岛大学,山东 青岛;中国科学院青岛生物能源与过程研究所,山东 青岛
关键词: 临床医学计算机辅助技术决策支持Clinical Medicine Computer-Aided Technology Decision Support
摘要: 计算机辅助技术正在推动着临床医学的变革和创新。在不违背专业医学知识、道德、伦理和法律界限的同时,计算机辅助技术可以在临床医学领域提供高效的决策支持,并且进行实践操作。计算机辅助技术是指将计算机当作主要生产工具,帮助人们完成某些复杂任务的前沿技术。近年来,它被广泛应用于肿瘤切除仿真、骨骼重建仿真、肿瘤良恶性识别和危重症病人的护理等临床医学领域。本文主要对计算机辅助技术在临床医学中的应用、原理和进展进行全面且细致的综述。
Abstract: Advances and developments in computer technology are continuing to foster innovation in the field of clinical medicine. Without violating the boundaries of professional medical knowledge, morality, ethics, and law, computer-aided technology can provide high-performance decision support and practice in the field of clinical medicine. Computer-aided technology refers to theories, methods, and techniques that use computers as a basic tool to assist people in accomplishing certain specific tasks. In recent years, it has been widely used in clinical medicine fields such as tumor resection simulation, bone reconstruction simulation, tumor benign and malignant identification, and care of critically ill patients. This paper mainly provides a comprehensive and detailed review of the applications, principles, and progress of computer-aided technology in clinical medicine.
文章引用:尚静, 李博阳, 徐志昊. 计算机辅助技术在临床医学中的应用与进展[J]. 临床医学进展, 2022, 12(3): 2165-2170. https://doi.org/10.12677/ACM.2022.123312

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