Generative artificial intelligence, patient safety and healthcare quality: a review.

IF 5.6 1区 医学 Q1 HEALTH CARE SCIENCES & SERVICES BMJ Quality & Safety Pub Date : 2024-07-24 DOI:10.1136/bmjqs-2023-016690
Michael D Howell
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Abstract

The capabilities of artificial intelligence (AI) have accelerated over the past year, and they are beginning to impact healthcare in a significant way. Could this new technology help address issues that have been difficult and recalcitrant problems for quality and safety for decades? While we are early in the journey, it is clear that we are in the midst of a fundamental shift in AI capabilities. It is also clear these capabilities have direct applicability to healthcare and to improving quality and patient safety, even as they introduce new complexities and risks. Previously, AI focused on one task at a time: for example, telling whether a picture was of a cat or a dog, or whether a retinal photograph showed diabetic retinopathy or not. Foundation models (and their close relatives, generative AI and large language models) represent an important change: they are able to handle many different kinds of problems without additional datasets or training. This review serves as a primer on foundation models' underpinnings, upsides, risks and unknowns-and how these new capabilities may help improve healthcare quality and patient safety.

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生成式人工智能、患者安全和医疗质量:综述。
在过去的一年里,人工智能(AI)的能力加速发展,并开始对医疗保健产生重大影响。这项新技术能否帮助解决数十年来在质量和安全方面一直难以解决的问题?虽然我们还处于起步阶段,但很明显,我们正处于人工智能能力的根本性转变之中。同样显而易见的是,这些能力直接适用于医疗保健以及提高质量和患者安全,同时也带来了新的复杂性和风险。以前,人工智能一次只专注于一项任务:例如,分辨一张照片是猫还是狗,或者一张视网膜照片是否显示糖尿病视网膜病变。基础模型(及其近亲,生成式人工智能和大型语言模型)代表了一个重要的变化:它们无需额外的数据集或训练,就能处理许多不同类型的问题。本综述介绍了基础模型的基础、优势、风险和未知因素,以及这些新功能如何帮助提高医疗质量和患者安全。
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来源期刊
BMJ Quality & Safety
BMJ Quality & Safety HEALTH CARE SCIENCES & SERVICES-
CiteScore
9.80
自引率
7.40%
发文量
104
审稿时长
4-8 weeks
期刊介绍: BMJ Quality & Safety (previously Quality & Safety in Health Care) is an international peer review publication providing research, opinions, debates and reviews for academics, clinicians and healthcare managers focused on the quality and safety of health care and the science of improvement. The journal receives approximately 1000 manuscripts a year and has an acceptance rate for original research of 12%. Time from submission to first decision averages 22 days and accepted articles are typically published online within 20 days. Its current impact factor is 3.281.
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