Transforming Alzheimer's Digital Caregiving through Large Language Models.

Sujin Kim, Dong Y Han, Jihye Bae
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Abstract

Introduction/objective: Alzheimer's Disease and Related Dementias (AD/ADRD) present significant caregiving challenges, with increasing burdens on informal caregivers. This study examines the potential of AI-driven Large Language Models (LLMs) in developing digital caregiving strategies for AD/ADRD. The objectives include analyzing existing caregiving education materials (CEMs) and mobile application descriptions (MADs) and aligning key caregiving tasks with digital functions across different stages of disease progression.

Methods: We analyzed 38 CEMs from the National Library of Medicine's MedlinePlus, along with associated hyperlinked web resources, and 57 MADs focused on AD digital caregiving. Using ChatGPT 3.5, essential caregiving tasks were extracted and matched with digital functionalities suitable for each stage of AD progression, while also highlighting digital literacy requirements for caregivers.

Results: The analysis categorizes AD caregiving into 4 stages-Pre-Clinical, Mild, Moderate, and Severe-identifying key tasks, such as behavior monitoring, daily assistance, direct supervision, and ensuring a safe environment. These tasks were supported by digital aids, including memory- enhancing apps, Global Positioning System (GPS) tracking, voice-controlled devices, and advanced GPS tracking for comprehensive care. Additionally, 6 essential digital literacy skills for AD/ADRD caregiving were identified: basic digital skills, communication, information management, safety and privacy, healthcare knowledge, and caregiver coordination, highlighting the need for tailored training.

Conclusion: The findings advocate for an LLM-driven strategy in designing digital caregiving interventions, particularly emphasizing a novel paradigm in AD/ADRD support, offering adaptive assistance that evolves with caregivers' needs, thereby enhancing their shared decision-making and patient care capabilities.

通过大型语言模型改造阿尔茨海默氏症数字护理。
导言/目标:阿尔茨海默病和相关痴呆症(AD/ADRD)给护理工作带来了巨大挑战,非正式护理人员的负担越来越重。本研究探讨了人工智能驱动的大型语言模型(LLM)在开发针对 AD/ADRD 的数字护理策略方面的潜力。研究目标包括分析现有的护理教育材料(CEM)和移动应用说明(MAD),并在疾病进展的不同阶段将关键护理任务与数字功能相结合:我们分析了美国国家医学图书馆 MedlinePlus 中的 38 篇 CEM 以及相关的超链接网络资源,还分析了 57 篇以 AD 数字护理为重点的 MAD。使用 ChatGPT 3.5 提取了基本护理任务,并将其与适合 AD 进展各阶段的数字功能进行了匹配,同时还强调了对护理人员数字素养的要求:分析将注意力缺失症护理分为 4 个阶段--临床前、轻度、中度和重度,并确定了关键任务,如行为监控、日常协助、直接监督和确保安全环境。这些任务得到了数字辅助工具的支持,包括增强记忆的应用程序、全球定位系统(GPS)跟踪、声控设备和用于全面护理的高级 GPS 跟踪。此外,研究还发现了 6 项护理注意力缺失症/注意力缺陷症患者的基本数字扫盲技能:基本数字技能、沟通、信息管理、安全与隐私、医疗保健知识和护理人员协调,这突出表明需要进行有针对性的培训:研究结果提倡在设计数字护理干预措施时采用以 LLM 为驱动的策略,特别强调 AD/ADRD 支持的新模式,即根据护理人员的需求提供适应性援助,从而提高他们的共同决策和患者护理能力。
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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