Applied artificial intelligence for global child health: Addressing biases and barriers.

PLOS digital health Pub Date : 2024-08-22 eCollection Date: 2024-08-01 DOI:10.1371/journal.pdig.0000583
Vijaytha Muralidharan, Joel Schamroth, Alaa Youssef, Leo A Celi, Roxana Daneshjou
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Abstract

Given the potential benefits of artificial intelligence and machine learning (AI/ML) within healthcare, it is critical to consider how these technologies can be deployed in pediatric research and practice. Currently, healthcare AI/ML has not yet adapted to the specific technical considerations related to pediatric data nor adequately addressed the specific vulnerabilities of children and young people (CYP) in relation to AI. While the greatest burden of disease in CYP is firmly concentrated in lower and middle-income countries (LMICs), existing applied pediatric AI/ML efforts are concentrated in a small number of high-income countries (HICs). In LMICs, use-cases remain primarily in the proof-of-concept stage. This narrative review identifies a number of intersecting challenges that pose barriers to effective AI/ML for CYP globally and explores the shifts needed to make progress across multiple domains. Child-specific technical considerations throughout the AI/ML lifecycle have been largely overlooked thus far, yet these can be critical to model effectiveness. Governance concerns are paramount, with suitable national and international frameworks and guidance required to enable the safe and responsible deployment of advanced technologies impacting the care of CYP and using their data. An ambitious vision for child health demands that the potential benefits of AI/Ml are realized universally through greater international collaboration, capacity building, strong oversight, and ultimately diffusing the AI/ML locus of power to empower researchers and clinicians globally. In order that AI/ML systems that do not exacerbate inequalities in pediatric care, teams researching and developing these technologies in LMICs must ensure that AI/ML research is inclusive of the needs and concerns of CYP and their caregivers. A broad, interdisciplinary, and human-centered approach to AI/ML is essential for developing tools for healthcare workers delivering care, such that the creation and deployment of ML is grounded in local systems, cultures, and clinical practice. Decisions to invest in developing and testing pediatric AI/ML in resource-constrained settings must always be part of a broader evaluation of the overall needs of a healthcare system, considering the critical building blocks underpinning effective, sustainable, and cost-efficient healthcare delivery for CYP.

应用人工智能促进全球儿童健康:消除偏见和障碍。
鉴于人工智能和机器学习(AI/ML)在医疗保健领域的潜在益处,考虑如何将这些技术应用于儿科研究和实践至关重要。目前,医疗保健领域的人工智能/机器学习尚未适应与儿科数据相关的特定技术考虑因素,也未充分解决儿童和青少年(CYP)在人工智能方面的特定脆弱性。虽然儿童和青少年最大的疾病负担主要集中在中低收入国家(LMICs),但现有的儿科人工智能/移动医疗应用却集中在少数高收入国家(HICs)。在中低收入国家,使用案例仍主要处于概念验证阶段。本综述指出了一些相互交织的挑战,这些挑战阻碍了在全球范围内对儿童青少年进行有效的人工智能/移动医疗,并探讨了在多个领域取得进展所需的转变。迄今为止,在整个人工智能/移动媒体生命周期中,针对儿童的技术考虑因素在很大程度上被忽视了,但这些因素对模型的有效性至关重要。管理问题至关重要,需要有适当的国家和国际框架与指导,以便安全、负责任地部署影响儿童保健的先进技术,并使用他们的数据。儿童健康的宏伟愿景要求通过加强国际合作、能力建设、强有力的监督以及最终在全球范围内分散人工智能/移动医疗的权力以增强研究人员和临床医生的能力,从而普遍实现人工智能/移动医疗的潜在益处。为了使人工智能/移动医疗系统不会加剧儿科护理中的不平等,在低收入和中等收入国家研究和开发这些技术的团队必须确保人工智能/移动医疗研究能够兼顾儿童青少年及其护理人员的需求和关切。对人工智能/移动医疗采取广泛、跨学科和以人为本的方法,对于为提供医疗服务的医护人员开发工具至关重要,这样才能使移动医疗的创建和部署立足于当地的系统、文化和临床实践。在资源有限的环境中,投资开发和测试儿科人工智能/移动语言的决策必须始终是对医疗保健系统整体需求进行更广泛评估的一部分,同时考虑到为儿童青少年提供有效、可持续和具有成本效益的医疗保健服务的关键组成部分。
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