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用于急性护理医学复杂决策的人工智能系统:综述

Artificial intelligence systems for complex decision-making in acute care medicine: a review.

作者信息

Lynn Lawrence A

机构信息

The Sleep and Breathing Research Institute, 1251 Dublin Rd, Columbus, OH 43215 USA.

出版信息

Patient Saf Surg. 2019 Feb 1;13:6. doi: 10.1186/s13037-019-0188-2. eCollection 2019.

Abstract

The integration of artificial intelligence (AI) into acute care brings a new source of intellectual thought to the bedside. This offers great potential for synergy between AI systems and the human intellect already delivering care. This much needed help should be embraced, if proven effective. However, there is a risk that the present role of physicians and nurses as the primary arbiters of acute care in hospitals may be overtaken by computers. While many argue that this transition is inevitable, the process of developing a formal plan to prevent the need to pass control of patient care to computers should not be further delayed. The first step in the interdiction process is to recognize; the limitations of existing hospital protocols, why we need AI in acute care, and finally how the focus of medical decision making will change with the integration of AI based analysis. The second step is to develop a strategy for changing the focus of medical education to empower physicians to maintain oversight of AI. Physicians, nurses, and experts in the field of safe hospital communication must control the transition to AI integrated care because there is significant risk during the transition period and much of this risk is subtle, unique to the hospital environment, and outside the expertise of AI designers. AI is needed in acute care because AI detects complex relational time-series patterns within datasets and this level of analysis transcends conventional threshold based analysis applied in hospital protocols in use today. For this reason medical education will have to change to provide healthcare workers with the ability to understand and over-read relational time pattern centered communications from AI. Medical education will need to place less emphasis on threshold decision making and a greater focus on detection, analysis, and the pathophysiologic basis of relational time patterns. This should be an early part of a medical student's education because this is what their hospital companion (the AI) will be doing. Effective communication between human and artificial intelligence requires a common pattern centered knowledge base. Experts in safety focused human to human communication in hospitals should lead during this transition process.

摘要

将人工智能(AI)整合到急性护理中,为床边护理带来了新的智力思考来源。这为人工智能系统与已经在提供护理的人类智力之间的协同作用提供了巨大潜力。如果证明有效,这种急需的帮助应该被接受。然而,存在一种风险,即目前医生和护士在医院急性护理中作为主要仲裁者的角色可能会被计算机取代。虽然许多人认为这种转变是不可避免的,但制定正式计划以防止将患者护理控制权交给计算机的过程不应再被拖延。拦截过程的第一步是认识到现有医院协议的局限性、我们在急性护理中为何需要人工智能,以及最后医疗决策重点将如何随着基于人工智能的分析的整合而改变。第二步是制定一项战略,改变医学教育的重点,使医生有能力对人工智能进行监督。医生、护士和安全医院沟通领域的专家必须控制向人工智能集成护理的过渡,因为在过渡期间存在重大风险,而且这种风险很多是微妙的、医院环境所特有的,并且超出了人工智能设计师的专业知识范围。急性护理中需要人工智能,因为人工智能能够检测数据集中复杂的关系时间序列模式,而这种分析水平超越了当今医院协议中应用的传统基于阈值的分析。因此,医学教育将不得不进行变革,以使医护人员有能力理解并解读来自人工智能的以关系时间模式为中心的沟通。医学教育需要减少对阈值决策的强调,而更多地关注检测、分析以及关系时间模式的病理生理基础。这应该是医学生教育的早期部分,因为这是他们在医院中的伙伴(人工智能)将要做的事情。人与人工智能之间的有效沟通需要一个以共同模式为中心的知识库。专注于医院中人与人安全沟通的专家应该在这个过渡过程中发挥主导作用。

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