David Silvera-Tawil, Liesel Higgins, Katie Packer, Andrew A Bayor, Janine G Walker, Jane Li, Philippa Niven, Sankalp Khanna, Josh Byrnes, DanaKai Bradford, Jill Freyne
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This paper presents the ''AI-enabled AT Framework'', a tool that aims to facilitate effective decision-making, development, and assessment of AI-enabled AT.</p><p><p><b>Materials and Methods:</b> The framework was co-designed through a participatory research approach, engaging key stakeholders, including people with disabilities, carers and support people, AI and AT industry representatives, government bodies, and researchers. A multi-stage process was employed, including literature review, interviews, focus groups, and industry workshops.</p><p><p><b>Results:</b> The AI-enabled AT Framework provides a structured, person-centered approach for assessing AI-enabled AT, incorporating six core domains: user experience, privacy and security, quality, safety, relative value, and human rights. It supports decision-making for stakeholders by providing clear evaluation criteria to assess AI-enabled AT. The framework highlights the importance of ongoing stakeholder engagement and outlines a roadmap for implementation, refinement, and adoption.</p><p><p><b>Conclusion:</b> The AI-enabled AT Framework offers a practical tool to enhance decision-making in the development, evaluation, and deployment of AI-enabled AT. By emphasizing co-design and stakeholder engagement, it promotes ethical, effective, and user-centered AI applications. Future research should focus on framework validation, implementation strategies, and addressing emerging challenges in AI-enabled AT adoption.</p>","PeriodicalId":47806,"journal":{"name":"Disability and Rehabilitation-Assistive Technology","volume":" ","pages":"1-20"},"PeriodicalIF":1.9000,"publicationDate":"2025-04-02","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"AI-enabled AT Framework: a principles-based approach to emerging assistive technology.\",\"authors\":\"David Silvera-Tawil, Liesel Higgins, Katie Packer, Andrew A Bayor, Janine G Walker, Jane Li, Philippa Niven, Sankalp Khanna, Josh Byrnes, DanaKai Bradford, Jill Freyne\",\"doi\":\"10.1080/17483107.2025.2479838\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p><b>Purpose:</b> Assistive Technology (AT) is an umbrella term that describes the combination of devices and services used by individuals with a disability to perform tasks that might otherwise be difficult or impossible to complete due to their disability. 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引用次数: 0
摘要
目的:辅助技术(AT)是一个总括性术语,描述了残疾人使用的设备和服务的组合,以执行由于残疾而难以或不可能完成的任务。越来越多的人工智能(AI)被用于创新AT的开发。鉴于人工智能的多种应用和残疾人的独特需求,在启用人工智能的交通运输领域,必须采取一种切实可行的方法,促进所有利益攸关方的知情决策,同时支持残疾人的选择和控制。本文介绍了“AI-enabled AT Framework”,这是一个旨在促进AI-enabled AT的有效决策、开发和评估的工具。材料和方法:该框架是通过参与式研究方法共同设计的,涉及关键利益相关者,包括残疾人、护理人员和支持人员、人工智能和人工智能行业代表、政府机构和研究人员。采用多阶段过程,包括文献综述、访谈、焦点小组和行业研讨会。结果:人工智能支持的AT框架为评估人工智能支持的AT提供了一个结构化的、以人为本的方法,包括六个核心领域:用户体验、隐私和安全、质量、安全、相对价值和人权。它通过提供明确的评估标准来评估启用人工智能的AT,从而支持利益相关者的决策。该框架强调了持续涉众参与的重要性,并概述了实现、改进和采用的路线图。结论:人工智能支持的AT框架提供了一个实用的工具,以加强人工智能支持的AT的开发、评估和部署决策。通过强调共同设计和利益相关者参与,它促进了道德、有效和以用户为中心的人工智能应用。未来的研究应侧重于框架验证、实施策略和解决人工智能支持的AT采用中出现的挑战。
AI-enabled AT Framework: a principles-based approach to emerging assistive technology.
Purpose: Assistive Technology (AT) is an umbrella term that describes the combination of devices and services used by individuals with a disability to perform tasks that might otherwise be difficult or impossible to complete due to their disability. Increasingly, Artificial Intelligence (AI) is being used in the development of innovative AT. Given the diverse applications of AI and the unique needs of people with disability, a practical approach that facilitates informed decision-making for all stakeholders while supporting choice and control for people with disability, in the AI-enabled AT space, is essential. This paper presents the ''AI-enabled AT Framework'', a tool that aims to facilitate effective decision-making, development, and assessment of AI-enabled AT.
Materials and Methods: The framework was co-designed through a participatory research approach, engaging key stakeholders, including people with disabilities, carers and support people, AI and AT industry representatives, government bodies, and researchers. A multi-stage process was employed, including literature review, interviews, focus groups, and industry workshops.
Results: The AI-enabled AT Framework provides a structured, person-centered approach for assessing AI-enabled AT, incorporating six core domains: user experience, privacy and security, quality, safety, relative value, and human rights. It supports decision-making for stakeholders by providing clear evaluation criteria to assess AI-enabled AT. The framework highlights the importance of ongoing stakeholder engagement and outlines a roadmap for implementation, refinement, and adoption.
Conclusion: The AI-enabled AT Framework offers a practical tool to enhance decision-making in the development, evaluation, and deployment of AI-enabled AT. By emphasizing co-design and stakeholder engagement, it promotes ethical, effective, and user-centered AI applications. Future research should focus on framework validation, implementation strategies, and addressing emerging challenges in AI-enabled AT adoption.