Sensorized Motor and Cognitive Dual Task Framework for Dementia Diagnosis: Preliminary Insights From a Cross-Sectional Study.

IF 6 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Gianmaria Mancioppi, Erika Rovini, Laura Fiorini, Radia Zeghari, Auriane Gros, Valeria Manera, Philippe Robert, Filippo Cavallo
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Abstract

Background: This study explores the use of novel motor and cognitive dual task (MCDT) approaches, based on upper limb motor function (ULMF) and lower limb motor function (LLMF), to discern individuals with mild cognitive impairment (MCI) or subjective cognitive impairment (SCI) from older adults who are cognitively healthy (OA).

Objective: The study objectives encompass (1) the exploration of alternatives to the traditional walking MCDT; (2) the examination of various ULMF and LLMF MCDT modalities, incorporating different exercises with varying motor difficulties; and eventually, (3) the assessment of OA in comparison with people with MCI and SCI to acquire more nuanced insights into different stages of the diseases.

Methods: The upper and lower limb motor performances of 44 older adults were evaluated using a wearable inertial system during 5 MCDTs comprising 2 ULMF tasks (forefinger tapping [FTAP] and thumb-forefinger tapping [THFF]) and 2 LLMF tasks (toe tapping heel pin [TTHP] and heel tapping toe pin [HTTP]). The gold standard for MCDT, 10-meter walking (GAIT), was included. We incorporated 5 pooled indices based on MCDTs, demographic data, and clinical scores into logistic regression models.

Results: In 2-class classification models (MCI vs OA), HTTP showed the highest accuracy, at 93%; TTHP and TTHF models reached 89% accuracy; and FTAP and GAIT achieved 85% accuracy in distinguishing between the 2 groups of participants. In 3-class classification models (MCI vs SCI vs OA), transitioning from FTAP to THFF improved participant characterization by +5%. TTHP outperformed HTTP by +9%. Furthermore, models effectively identified individuals with MCI, with HTTP achieving 76% recall and TTHP achieving 88% recall.

Conclusions: This study emphasizes the potential of an integrated, sensorized MCDT framework that combines a broader theoretical foundation and task selection with neuropsychological and behavioral data. This approach can enhance our understanding of dementia and provide clinicians with valuable diagnostic tools. Although these tasks demonstrated ease and efficiency, validation in subsequent clinical studies is necessary.

感知运动和认知双重任务框架诊断痴呆:从横断面研究的初步见解。
背景:本研究探索了基于上肢运动功能(ULMF)和下肢运动功能(LLMF)的新型运动和认知双重任务(MCDT)方法,以区分轻度认知障碍(MCI)或主观认知障碍(SCI)个体和认知健康(OA)的老年人。目的:研究目标包括:(1)探索传统步行MCDT的替代方案;(2)检查各种ULMF和LLMF MCDT模式,结合不同运动困难的不同练习;最终,(3)评估OA与MCI和SCI患者的比较,以获得更细致入微的疾病不同阶段的见解。方法:采用可穿戴惯性系统对44名老年人进行5项mcdt测试,包括2项ULMF任务(食指轻敲[FTAP]和拇指-食指轻敲[THFF])和2项LLMF任务(脚趾轻敲脚跟钉[TTHP]和脚跟轻敲脚趾钉[HTTP])。包括MCDT的金标准,10米步行(步态)。我们将基于mcdt、人口统计数据和临床评分的5个合并指标纳入logistic回归模型。结果:在2类分类模型(MCI和OA)中,HTTP的准确率最高,为93%;TTHP和TTHF模型准确率达到89%;FTAP和步态在区分两组参与者方面的准确率达到85%。在3类分类模型(MCI、SCI、OA)中,从FTAP到THFF的转换使参与者表征提高了5%。TTHP的性能比HTTP高9%。此外,模型有效地识别了MCI个体,HTTP的召回率达到76%,TTHP的召回率达到88%。结论:本研究强调了集成的、传感的MCDT框架的潜力,该框架将更广泛的理论基础和任务选择与神经心理学和行为数据相结合。这种方法可以增强我们对痴呆症的理解,并为临床医生提供有价值的诊断工具。虽然这些任务证明了简单和有效,但在随后的临床研究中验证是必要的。
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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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