School of Dentistry & Medical Sciences, Charles Sturt University, Wagga Wagga, Australia; Department of Radiology, Baylor College of Medicine, Texas.
School of Dentistry & Medical Sciences, Charles Sturt University, Wagga Wagga, Australia; Department of Radiology, Baylor College of Medicine, Texas.
Semin Nucl Med. 2022 Jul;52(4):498-503. doi: 10.1053/j.semnuclmed.2021.11.011. Epub 2021 Dec 29.
Social and health care equity and justice should be prioritized by the mantra of medicine, first do no harm. Despite highly motivated national and global health strategies, there remains significant health care inequity. Intrinsic and extrinsic factors, including a number of biases, are key drivers of ongoing health inequity including equity of access and opportunity for nuclear medicine and radiology services. There is a substantial gap in the global practice of nuclear medicine in particular, but also radiology, between developed health economies and those considered developing or undeveloped. At a local level, even in developed health economies, there can be a significant disparity between health services, including medical imaging, between communities based on socioeconomic, cultural or geographic differences. Artificial intelligence (AI) has the potential to either widen the health inequity divide or substantially reduce it. Distributed generally, AI technology could be used to overcome geographic boundaries to health care, thus bringing general and specialist care into underserved communities. However, should AI technology be limited to localities already enjoying ample healthcare access and direct access to health infrastructure, like radiology and nuclear medicine, it could then accentuate the gap. There are a number of challenges across the AI pipeline that need careful attention to ensure beneficence over maleficence. Fully realized, AI augmented health care could be crafted as an integral part of the broader strategy convergence on local, national and global health equity. The applications of AI in nuclear medicine and radiology could emerge as a powerful tool in social and health equity.
社会和医疗保健公平正义应该是医学的首要原则,即首先不造成伤害。尽管有高度积极的国家和全球卫生战略,但仍存在显著的医疗保健不公平现象。内在和外在因素,包括多种偏见,是持续存在的卫生不公平现象的主要驱动因素,包括核医学和放射学服务的公平获取和机会。在全球范围内,特别是在核医学领域,但也包括放射学领域,发达国家的卫生经济和被认为是发展中或欠发达国家之间存在着巨大的差距。在地方一级,即使在发达国家的卫生经济中,也可能存在着基于社会经济、文化或地理差异的卫生服务,包括医疗成像之间的显著差异。人工智能(AI)有可能扩大或缩小卫生不公平差距。如果普遍部署,人工智能技术可以用于克服医疗保健的地理界限,从而将一般和专业护理带入服务不足的社区。然而,如果人工智能技术仅限于已经享有充足医疗保健机会和直接获得放射学和核医学等卫生基础设施的地方,那么它可能会加剧这种差距。在人工智能的整个发展过程中存在着许多挑战,需要谨慎关注,以确保有益而不是有害。如果人工智能增强型医疗保健得到充分实现,它可以成为地方、国家和全球卫生公平的更广泛战略趋同的一个组成部分。人工智能在核医学和放射学中的应用可能成为社会和卫生公平的有力工具。