For centuries nursing has been known as a job that requires complex manual operations, that cannot be automated or replaced by any machinery. All the devices and techniques have been invented only to support, but never fully replace, a person with knowledge and expert intuition. With the rise of Artificial Intelligence and continuously increasing digital data flow in healthcare, new tools have arrived to improve patient care and reduce the labour-intensive work conditions of a nurse. This cross-disciplinary review aims to build a bridge over the gap between computer science and nursing. It outlines and classifies the methods for machine learning and data processing in patient care before and after the operation. It comprises of Process-, Patient-, Operator-, Feedback-, and Technology-centric classifications. The presented classifications are based on the technical aspects of patient case.
翻译:几百年来,护理工作一直被称为需要复杂的手工操作,不能自动化或由任何机器取代,所有装置和技术的发明都仅仅是为了支持、但从未完全取代具有知识和专家直觉的人,随着人工智能的兴起和保健领域数字数据流的不断增长,新的工具已经抵达,以改善病人护理和减少护士劳动密集型工作条件,这一跨学科审查旨在弥合计算机科学与护理之间的差距,概述和分类在手术前后病人护理中的机器学习和数据处理方法,包括程序、病人、操作者、反馈和技术中心分类,提出的分类基于病人病例的技术方面。