Revolutionizing e-health: the transformative role of AI-powered hybrid chatbots in healthcare solutions.

IF 3.4 3区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Frontiers in Public Health Pub Date : 2025-02-13 eCollection Date: 2025-01-01 DOI:10.3389/fpubh.2025.1530799
Jack Ng Kok Wah
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Abstract

Introduction: The integration of Artificial Intelligence (AI) in healthcare, particularly through hybrid chatbots, is reshaping the industry by enhancing service delivery, patient engagement, and clinical outcomes. These chatbots combine AI with human input to provide intelligent, personalized interactions in areas like diagnostics, chronic disease management, and mental health support. However, gaps remain in trust, data security, system integration, and user experience, which hinder widespread adoption. Key challenges include the hesitancy of patients to trust AI due to concerns over data privacy and the accuracy of medical advice, as well as difficulties in integrating chatbots into existing healthcare infrastructures. The review aims to assess the effectiveness of hybrid AI chatbots in improving healthcare outcomes, reducing costs, and enhancing patient engagement, while identifying barriers to adoption such as cultural adaptability and trust issues. The novelty of the review lies in its comprehensive exploration of both technological advancements and the socio-emotional factors influencing chatbot acceptance.

Methods: The review follows a systematic methodology with four core components: eligibility criteria, review selection, data extraction, and data synthesis. Studies focused on AI applications and hybrid chatbots in healthcare, particularly in chronic disease management and mental health support, were included. Publications from 2022 to 2025 were prioritized, and peer-reviewed sources in English were considered. After screening 116 studies, 29 met the criteria for inclusion. Data was extracted using a structured template, capturing study objectives, methodologies, findings, and challenges. Thematic analysis was applied to identify four themes: AI applications, technical advancements, user adoption, and challenges/ethical concerns. Statistical and content analysis methods were employed to synthesize the data comprehensively, ensuring robustness in the findings.

Results: Hybrid chatbots in healthcare have shown significant benefits, such as reducing hospital readmissions by up to 25%, improving patient engagement by 30%, and cutting consultation wait times by 15%. They are widely used for chronic disease management, mental health support, and patient education, demonstrating their efficiency in both developed and developing countries.

Discussion: The review concludes that overcoming these barriers through infrastructure investment, training, and enhanced transparency is crucial for maximizing the potential of AI in healthcare. Future researchers should focus on long-term outcomes, addressing ethical considerations, and expanding cross-cultural adaptability. Limitations of the review include the narrow scope of some case studies and the absence of long-term data on AI's efficacy in diverse healthcare contexts. Further studies are needed to explore these challenges and the long-term impact of AI-driven healthcare solutions.

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电子医疗革命:人工智能混合聊天机器人在医疗保健解决方案中的变革作用。
导言:人工智能(AI)在医疗保健领域的整合,特别是通过混合聊天机器人,正在通过增强服务提供、患者参与和临床结果来重塑行业。这些聊天机器人将人工智能与人类输入相结合,在诊断、慢性疾病管理和心理健康支持等领域提供智能、个性化的互动。然而,在信任、数据安全、系统集成和用户体验方面仍然存在差距,这阻碍了广泛采用。主要挑战包括,由于担心数据隐私和医疗建议的准确性,患者对信任人工智能犹豫不决,以及将聊天机器人集成到现有医疗基础设施中的困难。该综述旨在评估混合人工智能聊天机器人在改善医疗保健结果、降低成本和提高患者参与度方面的有效性,同时确定采用的障碍,如文化适应性和信任问题。这篇综述的新颖之处在于它全面探讨了技术进步和影响聊天机器人接受度的社会情感因素。方法:评价遵循一个系统的方法,有四个核心组成部分:资格标准、评价选择、数据提取和数据综合。研究的重点是医疗保健领域的人工智能应用和混合聊天机器人,特别是慢性病管理和心理健康支持。优先考虑2022年至2025年的出版物,并考虑同行评议的英文来源。在对116项研究进行筛选后,有29项符合纳入标准。使用结构化模板提取数据,捕获研究目标、方法、发现和挑战。主题分析用于确定四个主题:人工智能应用、技术进步、用户采用和挑战/道德问题。采用统计和内容分析方法综合数据,确保研究结果的稳健性。结果:混合聊天机器人在医疗保健领域显示出显著的优势,例如将医院再入院率降低了25%,将患者参与度提高了30%,并将咨询等待时间缩短了15%。它们被广泛用于慢性病管理、心理健康支持和患者教育,显示了它们在发达国家和发展中国家的效率。讨论:审查的结论是,通过基础设施投资、培训和提高透明度来克服这些障碍,对于最大限度地发挥人工智能在医疗保健领域的潜力至关重要。未来的研究人员应该关注长期结果,解决伦理问题,扩大跨文化适应性。该综述的局限性包括一些案例研究的范围狭窄,以及缺乏人工智能在不同医疗保健环境中的疗效的长期数据。需要进一步的研究来探索这些挑战以及人工智能驱动的医疗保健解决方案的长期影响。
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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来源期刊
Frontiers in Public Health
Frontiers in Public Health Medicine-Public Health, Environmental and Occupational Health
CiteScore
4.80
自引率
7.70%
发文量
4469
审稿时长
14 weeks
期刊介绍: Frontiers in Public Health is a multidisciplinary open-access journal which publishes rigorously peer-reviewed research and is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians, policy makers and the public worldwide. The journal aims at overcoming current fragmentation in research and publication, promoting consistency in pursuing relevant scientific themes, and supporting finding dissemination and translation into practice. Frontiers in Public Health is organized into Specialty Sections that cover different areas of research in the field. Please refer to the author guidelines for details on article types and the submission process.
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