Artificial Intelligence (AI) and the future of Iran's Primary Health Care (PHC) system.

IF 2 Q2 MEDICINE, GENERAL & INTERNAL
Reza Dehnavieh, Sohail Inayatullah, Farzaneh Yousefi, Mohsen Nadali
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引用次数: 0

Abstract

Objective: The rapid adoption of Artificial Intelligence (AI) in health service delivery underscores the need for awareness, preparedness, and strategic utilization of AI's potential to optimize Primary Health Care (PHC) systems. This study aims to equip Iran's PHC system for AI integration by envisioning potential futures while addressing past challenges and recognizing current trends.

Method: This study developed a conceptual framework based on the "Future Triangle" (FT) and the "Health Systems Governance" (HSG) models. This framework delineates the characteristics associated with the 'pulls on the future' for desired and intelligent PHC, as identified by a panel of experts. Additionally, the 'weights of the past'-referring to the challenges faced by Iran's PHC system in utilizing AI-, and the 'push of the present'-which captures the impacts of AI implementation in global primary care settings-were extracted through a review of relevant literature. The integration and analysis of the collected evidence facilitated the formulation of a range of potential future scenarios, including both optimistic and pessimistic scenarios.

Findings: The interaction between the three elements of the FT will shape the future states of Iran's PHC, whether optimistic or pessimistic. Building an optimistic scenario for an AI-driven PHC system necessitates addressing past challenges, including deficiencies in the referral and family doctor systems, the absence of evidence-based decision-making, neglect of essential community health needs, fragmented service delivery, high provider workload, and inadequate follow-up on the health status of service recipients. Consideration must also be given to the current impacts of AI in primary care, including comprehensive, coordinated, and need-based service delivery with systematic and integrated monitoring, quality improvement, early disease prevention, precise diagnosis, and effective treatment. Furthermore, fostering a shared vision among stakeholders by defining and advocating for a future system characterized by foresight, resilience, agility, adaptability, and collaboration is essential.

Conclusion: Envisioning potential future states requires a balanced consideration of the influence of past, present, and future, recognizing the dual potential of AI to drive either positive or negative outcomes. Achieving the optimistic future or the "utopia of intelligent PHC" and avoiding the pessimistic future or the "dystopia of intelligent PHC" requires coherent planning, attention to the tripartite considerations of the future, past, and present, and a clear understanding of the roles, expectations, and needs of stakeholders.

人工智能(AI)与伊朗初级卫生保健(PHC)系统的未来。
目的:人工智能(AI)在卫生服务提供中的快速采用强调了对人工智能潜力的认识、准备和战略利用的必要性,以优化初级卫生保健(PHC)系统。这项研究旨在通过展望潜在的未来,同时解决过去的挑战和认识当前的趋势,为伊朗的初级卫生保健系统整合人工智能提供装备。方法:本研究基于“未来三角”(FT)和“卫生系统治理”(HSG)模型开发了一个概念框架。该框架描述了由专家小组确定的与理想的智能PHC“拉动未来”相关的特征。此外,通过对相关文献的回顾,提取了“过去的权重”——指的是伊朗初级保健系统在利用人工智能方面面临的挑战——和“现在的推动”——捕捉了人工智能在全球初级保健环境中实施的影响。对收集到的证据进行整合和分析有助于制定一系列可能的未来情景,包括乐观和悲观的情景。研究结果:英国《金融时报》三个要素之间的相互作用将塑造伊朗PHC的未来状态,无论是乐观还是悲观。为人工智能驱动的初级保健系统建立一个乐观的情景,需要解决过去的挑战,包括转诊和家庭医生系统的缺陷、缺乏循证决策、忽视基本的社区卫生需求、分散的服务提供、高提供者工作量以及对服务接受者健康状况的随访不足。还必须考虑人工智能目前对初级保健的影响,包括提供全面、协调和基于需求的服务,并进行系统和综合监测,提高质量,早期预防疾病,精确诊断和有效治疗。此外,通过定义和倡导以远见、弹性、敏捷性、适应性和协作为特征的未来系统,在涉众之间培养共同的愿景是必不可少的。结论:设想潜在的未来状态需要平衡地考虑过去、现在和未来的影响,认识到人工智能的双重潜力,既可以带来积极的结果,也可以带来消极的结果。实现乐观的未来或“智能初级保健的乌托邦”,避免悲观的未来或“智能初级保健的反乌托邦”,需要进行连贯的规划,注意未来、过去和现在的三方考虑,并清楚地了解利益相关者的角色、期望和需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.40
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