Stephens Jacqueline H, Northcott Celine, Poirier Brianna F, Lewis Trent
Flinders Health and Medical Research Institute, College of Medicine and Public Health, Flinders University, Adelaide, Australia.
South Australian Health and Medical Research Institute, Adelaide, Australia.
Digit Health. 2025 Jan 6;11:20552076241288631. doi: 10.1177/20552076241288631. eCollection 2025 Jan-Dec.
Given the increasing number of artificial intelligence and machine learning (AI/ML) tools in healthcare, we aimed to gain an understanding of consumer perspectives on the use of AI/ML tools for healthcare diagnostics.
We conducted a qualitative systematic review, following established standardized methods, of the existing literature indexed in the following databases up to 4 April 2022: OVID MEDLINE, OVID EMBASE, Scopus and Web of Science.
Fourteen studies were identified as appropriate for inclusion in the meta-synthesis and systematic review. Most studies ( = 12) were conducted in high-income countries, with data extracted from both mixed methods (42.9%) and qualitative (57.1%) studies. The meta-synthesis identified four overarching themes across the included studies: (1) Trust, fear, and uncertainty; (2) Data privacy and ML governance; (3) Impact on healthcare delivery and access; and (4) Consumers want to be engaged.
The current evidence demonstrates consumers' understandings of AI/ML for medical diagnosis are complex. Consumers express a complex combination of both hesitancy and support towards AI/ML in healthcare diagnosis. Importantly, their views of the use of AI/ML in medical diagnosis are influenced by the perceived trustworthiness of their healthcare providers who use these AI/ML tools. Consumers recognize the potential for AI/ML tools to improve diagnostic accuracy, efficiency and access, and express a strong interest to be engaged in the development and implementation process of AI/ML into routine healthcare.
鉴于医疗保健领域中人工智能和机器学习(AI/ML)工具的数量不断增加,我们旨在了解消费者对使用AI/ML工具进行医疗诊断的看法。
我们按照既定的标准化方法,对截至2022年4月4日在以下数据库中索引的现有文献进行了定性系统评价:OVID MEDLINE、OVID EMBASE、Scopus和科学网。
确定了14项研究适合纳入元综合分析和系统评价。大多数研究(n = 12)在高收入国家进行,数据来自混合方法(42.9%)和定性(57.1%)研究。元综合分析在纳入的研究中确定了四个总体主题:(1)信任、恐惧和不确定性;(2)数据隐私和机器学习治理;(3)对医疗服务提供和可及性的影响;(4)消费者希望参与其中。
目前的证据表明消费者对用于医疗诊断的AI/ML的理解很复杂。消费者对医疗保健诊断中的AI/ML既表现出犹豫又表示支持,呈现出复杂的态度。重要的是,他们对在医疗诊断中使用AI/ML的看法受到使用这些AI/ML工具的医疗服务提供者的可信度的影响。消费者认识到AI/ML工具在提高诊断准确性、效率和可及性方面的潜力,并表达了强烈的兴趣参与将AI/ML开发和应用到常规医疗保健的过程中。