人工智能在慢性伤口护理领域的应用进展
Advances in the Application of Artificial Intelligence in the Field of Chronic Wound Care
DOI: 10.12677/ACM.2022.12121586, PDF,  被引量   
作者: 邢梦莹, 李梦西*:延安大学,陕西 延安;李 津:西安交通大学,陕西 西安;李 豹:西安交通大学第一附属医院,陕西 西安
关键词: 人工智能慢性伤口护理综述Artificial Intelligence Chronic Wound Nursing Review
摘要: 随着人口老龄化,肥胖和糖尿病患者的增加,慢性伤口已然成为了世界各国卫生保健系统的挑战和负担。人工智能的出现,极大地促进了慢性伤口护理领域的发展,在伤口评估、治疗、风险预测和远程护理方面可以为患者提供更加精准、高效的护理方案,同时减少不良事件和并发症的发生。本文对人工智能在慢性伤口护理领域的应用进展进行综述,以期为人工智能在慢性伤口护理领域的进一步发展提供参考。
Abstract: With the increase of population aging, obesity and diabetics, chronic wounds have become a chal-lenge and burden for health care systems around the world. The emergence of artificial intelligence has greatly promoted the development of chronic wound care field, in wound assessment, treat-ment, risk prediction and remote care, it can provide patients with more accurate and efficient care solutions and reduce the occurrence of adverse events and complications in the meantime. This ar-ticle reviews the application progress of artificial intelligence in the field of chronic wound care, in order to provide reference for the further development of artificial intelligence in the field of chron-ic wound care.
文章引用:邢梦莹, 李梦西, 李津, 李豹. 人工智能在慢性伤口护理领域的应用进展[J]. 临床医学进展, 2022, 12(12): 11013-11018. https://doi.org/10.12677/ACM.2022.12121586

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