人工智能与阿片类药物使用:叙述性回顾

IF 1.4 Q3 HEALTH CARE SCIENCES & SERVICES
S. Gadhia, G. Richards, Tracey Marriott, J. Rose
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引用次数: 1

摘要

阿片类药物是一种强效止痛药,对急性疼痛至关重要。然而,阿片类药物也常用于慢性疾病和非法使用,人们对其利弊平衡存在公认的担忧。正在开发使用人工智能(AI)的技术,以检查和优化阿片类药物的使用。然而,这项研究还没有被综合起来确定正在开发的人工智能模型的类型以及这些模型的应用。方法我们旨在综合研究人工智能在阿片类药物患者中的应用。我们于2021年1月4日检索了三个数据库:Cochrane系统评价数据库、Embase和Medline。如果研究在2010年之后发表,在现实生活中有人类参与的社区环境中进行,并使用人工智能来了解阿片类药物的使用情况,则将其纳入其中。提取人工智能模型的类型和应用数据并进行描述性分析。结果81篇文章纳入我们的综述,代表了530多万参与者和1460万社交媒体帖子。大多数(93%)的研究是在美国进行的。人工智能技术的类型包括自然语言处理(46%)和一系列机器学习算法,最常见的是随机森林算法(36%)。人工智能主要应用于阿片类药物的监测和监测(46%),其次是风险预测(42%)、疼痛管理(10%)和患者支持(2%)。很少有人工智能模型已经准备好采用,大多数(62%)处于初步阶段。许多人工智能模型正在开发和应用,以了解阿片类药物的使用。然而,需要对这些人工智能技术进行外部验证和强有力的评估,以确定它们是否可以改善阿片类药物的使用和安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence and opioid use: a narrative review
Background Opioids are strong pain medications that can be essential for acute pain. However, opioids are also commonly used for chronic conditions and illicitly where there are well-recognised concerns about the balance of their benefits and harms. Technologies using artificial intelligence (AI) are being developed to examine and optimise the use of opioids. Yet, this research has not been synthesised to determine the types of AI models being developed and the application of these models. Methods We aimed to synthesise studies exploring the use of AI in people taking opioids. We searched three databases: the Cochrane Database of Systematic Reviews, Embase and Medline on 4 January 2021. Studies were included if they were published after 2010, conducted in a real-life community setting involving humans and used AI to understand opioid use. Data on the types and applications of AI models were extracted and descriptively analysed. Results Eighty-one articles were included in our review, representing over 5.3 million participants and 14.6 million social media posts. Most (93%) studies were conducted in the USA. The types of AI technologies included natural language processing (46%) and a range of machine learning algorithms, the most common being random forest algorithms (36%). AI was predominately applied for the surveillance and monitoring of opioids (46%), followed by risk prediction (42%), pain management (10%) and patient support (2%). Few of the AI models were ready for adoption, with most (62%) being in preliminary stages. Conclusions Many AI models are being developed and applied to understand opioid use. However, there is a need for these AI technologies to be externally validated and robustly evaluated to determine whether they can improve the use and safety of opioids.
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来源期刊
BMJ Innovations
BMJ Innovations Medicine-Medicine (all)
CiteScore
4.20
自引率
0.00%
发文量
63
期刊介绍: Healthcare is undergoing a revolution and novel medical technologies are being developed to treat patients in better and faster ways. Mobile revolution has put a handheld computer in pockets of billions and we are ushering in an era of mHealth. In developed and developing world alike healthcare costs are a concern and frugal innovations are being promoted for bringing down the costs of healthcare. BMJ Innovations aims to promote innovative research which creates new, cost-effective medical devices, technologies, processes and systems that improve patient care, with particular focus on the needs of patients, physicians, and the health care industry as a whole and act as a platform to catalyse and seed more innovations. Submissions to BMJ Innovations will be considered from all clinical areas of medicine along with business and process innovations that make healthcare accessible and affordable. Submissions from groups of investigators engaged in international collaborations are especially encouraged. The broad areas of innovations that this journal aims to chronicle include but are not limited to: Medical devices, mHealth and wearable health technologies, Assistive technologies, Diagnostics, Health IT, systems and process innovation.
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