Stephens Jacqueline H, Northcott Celine, Machell Amanda, Lewis Trent, Ooi Eng H
Flinders Health and Medical Research Institute, College of Medicine and Public Health, Flinders University, Adelaide, Australia.
Pregnancy And Newborn Health, South Australian Health and Medical Research Institute, Adelaide, Australia.
Health Expect. 2025 Oct;28(5):e70421. doi: 10.1111/hex.70421.
Artificial intelligence and machine learning (AI/ML) algorithms will transform the childhood otitis media (OM) diagnostic experience. However, there is limited data on parents' current experiences within clinical settings, limited research exploring AI/ML acceptability among consumers generally, and none regarding consumer perspectives on its use for childhood OM. This study aimed to explore current parental experiences of, as well as their perspectives on the use of AI/ML in, clinical care for OM in children.
We conducted and thematically analysed semi-structured interviews with parents of children seen for OM within the ENT or audiology departments of an Australian urban teaching hospital.
Seven themes were identified: (1) Meeting children's needs; (2) Challenges in accessing and waiting for audiology and ENT care; (3) Urban versus rural healthcare experience; (4) Public versus private health system; (5) Strategies for enhancing paediatric audiology services; (6) Perceived benefits of AI/ML in ear disease diagnosis; and (7) Concerns and considerations regarding AI/ML in ear health diagnosis.
Parents have concerns about the use and development of AI/ML tools, but also acknowledge the potential benefits of such tools for healthcare delivery. Currently, the understanding amongst parents of AIAI/ML/ML tools for OM diagnosis was limited, and more education on the use and development of AIAI/ML/ML for OM is warranted.
We did not involve patients or the public in the design of this study. However, three authors have lived experience as parents of children who have had recurrent ear infections.
人工智能和机器学习(AI/ML)算法将改变儿童中耳炎(OM)的诊断体验。然而,关于父母当前在临床环境中的经历的数据有限,对消费者总体上对AI/ML可接受性的研究有限,且没有关于消费者对其用于儿童OM的看法的研究。本研究旨在探讨父母目前在儿童OM临床护理中对AI/ML的使用体验及其看法。
我们对澳大利亚一家城市教学医院耳鼻喉科或听力学科中因OM就诊儿童的父母进行了半结构化访谈,并进行了主题分析。
确定了七个主题:(1)满足儿童需求;(2)获得和等待听力学及耳鼻喉科护理的挑战;(3)城市与农村医疗保健体验;(4)公立与私立卫生系统;(5)加强儿科听力学服务的策略;(6)AI/ML在耳部疾病诊断中的感知益处;以及(7)对AI/ML在耳部健康诊断中的担忧和考虑。
父母对AI/ML工具的使用和开发存在担忧,但也承认此类工具在医疗服务提供方面的潜在益处。目前,父母对用于OM诊断的AI/ML工具的了解有限,有必要对AI/ML在OM中的使用和开发进行更多教育。
我们在本研究的设计中未涉及患者或公众。然而,三位作者有作为患有复发性耳部感染儿童的父母的生活经历。