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Alz-Sense: A Novel Non-invasive Pre-clinical Testing to Differentiate Dementia from MCI

机译:Alz型:一种新的非侵袭性前临床检测,可从MCI分化痴呆症

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It is time-critical to administer pre-clinical cognitive health screening of patients to detect dementia and differentiate from mild cognitive impairment (MCI), and ensure early intervention, treatment and caregiving plans. Current medical standard and practice for pre-clinical screening follows standardized cognitive questionnaire test and patients’ verbal response based scoring. However, such practice misses sensing valuable signals of non-verbal stress response relevant to deciding dementia vs. MCI. To this end, we propose a novel approach, Alz-Sense, that integrates non-invasive passive sensing (during the standard cognitive questionnaire test) with an intelligent algorithm based assessment of dementia vs. MCI. The contributions of our Alz-Sense approach are: (i) innovative non-invasive passive sensing of non-verbal stress response from a custom made Smart Chair Cover; (ii) identifying and quantifying a novel indicator of stress response from chair cover multi-sensors data; and (iii) intelligent integration of stress indicator into a revised scoring mechanism. We deployed the Alz-Sense system for patients study in a hospital clinic, and validated its performance through 50 patients dataset. We compare the ROC (Receiver Operating Characteristic) performance of Alz-Sense approach with widely used standardized SLUMS questionnaire based scoring. We also compare performance in the contextual region of ROC curve relevant to pre-clinical cognitive health screening to show advantages of our approach. Further analysis selects optimal model parameters and compares SLUMS performance using medical clinic recommended threshold.
机译:对于患者患者检测痴呆和区分轻度认知障碍(MCI)并确保早期干预,治疗和护理计划是时令临床认知健康筛查的时间 - 关键。目前的医疗标准和临床前筛查的实践遵循标准化的认知问卷测试和患者的口头响应的得分。然而,这种实践错过了与决定痴呆与MCI相关的非口头压力反应的有价值信号。为此,我们提出了一种新颖的方法,Alz istres,它与基于痴呆症与MCI的智能算法评估相结合了非侵入性被动感测(在标准认知问卷测试期间)。我们的ALZ侦查方法的贡献是:(i)自定义制造智能椅盖的非口头压力反应的创新无侵犯被动感应; (ii)识别和量化椅子覆盖多传感器数据的压力响应的新型指标; (iii)应力指标智能集成到修订的评分机制中。我们部署了在医院诊所的患者学习的ALZ感测系统,并通过50名患者数据集进行了验证。我们比较ALZ感应方法的ROC(接收器运营特征)性能与广泛使用的标准化贫民窟问卷基于基于评分。我们还比较与临床前认知健康筛查相关的ROC曲线的上下文区域的表现,以表明我们的方法的优势。进一步的分析选择最佳模型参数,并使用医疗诊所建议的阈值进行比较贫民窟性能。

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