AI and Machine Learning for Detection and Management of Delirium in Care Home Residents.

IF 3.1 3区 医学 Q3 GERIATRICS & GERONTOLOGY
Gerontology Pub Date : 2025-01-01 Epub Date: 2025-01-27 DOI:10.1159/000543561
Jay Banerjee, Fabian Hoger, Adam Lee Gordon
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引用次数: 0

Abstract

Background: Presently, diagnosing delirium in older people is a challenge. Diagnostic support tools such as the Confusion Assessment Method and 4AT provide structure but require specialist training, resources, and implementation support, while some subjectivity persists in diagnosis. This is particularly the case in people who live with dementia who often experience rapid fluctuation in cognitive abilities and behaviours. This leads to variation in diagnosis between settings and care providers, with consequent harmful impact on those experiencing delirium. These challenges become greater in care homes where dementia is prevalent, daily fluctuation is the norm, and the majority of staff are not trained healthcare professionals.

Summary: Here, we outline the potential for AI-based human activity recognition (HAR) approaches to identify and flag deviations from normal behaviour that may be precursors of a delirium state, enabling earlier detection and management, and better outcomes. We outline how statistical process control approaches could form the basis of diagnostic algorithms and the steps required to test the feasibility of this approach in the care home setting.

Key messages: Delirium detection and diagnosis, difficult in any setting, are more difficult in care homes because of resident, staff, and organisational factors. Artificial intelligence, machine learning, and HAR have potential to make diagnosis more reliable because of their ability to recognise changes from normal patterns of behaviour at an individual level.

人工智能和机器学习对养老院居民谵妄的检测和管理。
背景:目前,诊断老年人谵妄是一个挑战。诊断支持工具,如混淆评估方法和4AT提供了结构,但需要专家培训、资源和实施支持,而诊断中仍然存在一些主观性。痴呆症患者尤其如此,他们的认知能力和行为经常出现快速波动。这导致环境和护理提供者之间的诊断差异,对经历谵妄的人产生了随之而来的有害影响。这些挑战在老年痴呆症普遍存在的养老院变得更大,每天的波动是常态,大多数工作人员不是受过培训的医疗保健专业人员。摘要:在这里,我们概述了基于人工智能的人类活动识别(HAR)方法的潜力,以识别和标记可能是谵妄状态前兆的正常行为偏差,从而实现更早的检测和管理,并获得更好的结果。我们概述了统计过程控制方法如何形成诊断算法的基础,以及在养老院设置中测试该方法可行性所需的步骤。关键信息:谵妄的检测和诊断在任何环境中都很困难,在养老院由于居民、工作人员和组织因素而更加困难。人工智能、机器学习和HAR有可能使诊断更加可靠,因为它们能够在个人层面上识别正常行为模式的变化。
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
Gerontology
Gerontology 医学-老年医学
CiteScore
6.00
自引率
0.00%
发文量
94
审稿时长
6-12 weeks
期刊介绍: In view of the ever-increasing fraction of elderly people, understanding the mechanisms of aging and age-related diseases has become a matter of urgent necessity. ''Gerontology'', the oldest journal in the field, responds to this need by drawing topical contributions from multiple disciplines to support the fundamental goals of extending active life and enhancing its quality. The range of papers is classified into four sections. In the Clinical Section, the aetiology, pathogenesis, prevention and treatment of agerelated diseases are discussed from a gerontological rather than a geriatric viewpoint. The Experimental Section contains up-to-date contributions from basic gerontological research. Papers dealing with behavioural development and related topics are placed in the Behavioural Science Section. Basic aspects of regeneration in different experimental biological systems as well as in the context of medical applications are dealt with in a special section that also contains information on technological advances for the elderly. Providing a primary source of high-quality papers covering all aspects of aging in humans and animals, ''Gerontology'' serves as an ideal information tool for all readers interested in the topic of aging from a broad perspective.
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