Progressive assessment system for dementia care through smart home

J. Elakkiya, K. Gayathri
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引用次数: 7

Abstract

Dementia is an age-related memory loss. It is a long-term and often the gradual decrease of thinking ability that affects the patient's daily living. Constant monitoring and support from caretaker is required to carry out routine activities. The overhead incurred in caretaking is high in terms of money, time and energy. Thus, assistive health care system for dementia is essential and feasible through the smart home. Activity recognition, decision support, and clinical score assessment are the various phases concerned in modeling dementia care system. This research work focuses specifically on clinical score assessment that measures the performance of the activities in terms of cognitive and mobility traits of the dementia patient. This progressive estimation provides decision support system to the doctors so as to offer appropriate treatment based on patient's performance in daily activities. The usual procedure for clinical assessment is a questionnaire session which is prone to errors. Therefore, the proposed system models a progressive assessment framework for dementia care through the smart home that integrates supervised machine learning and context-based reasoning to perform context-based clinical assessment. Thus, the experimental results suggest that each diagnosis dement occupant reached 80% of classification accuracy.
基于智能家居的痴呆护理渐进式评估系统
痴呆症是一种与年龄有关的记忆丧失。这是一个长期的,往往是逐渐下降的思维能力,影响患者的日常生活。日常活动需要看护人的持续监督和支持。在金钱、时间和精力方面,照料所产生的开销是很高的。因此,通过智能家居为痴呆症提供辅助医疗保健系统是必要的和可行的。活动识别、决策支持和临床评分评估是痴呆护理系统建模的各个阶段。这项研究工作特别侧重于临床评分评估,以衡量痴呆症患者在认知和行动特征方面的活动表现。这种渐进式估计为医生提供了决策支持系统,以便根据患者在日常活动中的表现提供适当的治疗。通常的临床评估程序是一个容易出错的问卷调查环节。因此,该系统通过智能家居为痴呆症护理建模了一个渐进式评估框架,该框架集成了监督机器学习和基于情境的推理,以执行基于情境的临床评估。因此,实验结果表明,每个诊断要素占用达到80%的分类准确率。
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