860 research outputs found
Community-Based Trials of Mobile Solutions for the Detection and Management of Cognitive Decline
This study focused on the development and usability evaluation of EnCare diagnostics (ECD) and the brain fit plan (BFP) in healthy older adults, cognitively impaired and physically impaired individuals. ECD is proposed as a novel solution to cognitive assessment based on colour selection. BFP is a novel solution to personalised cognitive stimulation. The study consisted of two trials designed to evaluate the usability of the apps. Trial 1 involved 11 healthy older adults and four older adults with physical impairments who undertook ECD and mini-mental state examination (MMSE) once per month for 4 months with only those with physical impairments also completing the BFP daily. Trial 2 involved eight older adults diagnosed with early stage dementia who completed MMSE and ECD once per month for 6 months. In Trial 1, 10 out of 11 participants enjoyed the trial and managed the usability of the app easily. A 75% drop out was observed in response to the BFP with issues of dexterity and lack of understanding on how to use the technology being the main reasons for lack of compliance. Four out of eight participants completed Trial 2 with most of the participants having no usability issues. This usability study demonstrated that ECD is highly acceptable in both healthy older adults and those with early stage dementia when given the shorter versions to accommodate their diagnosis. The BFP was not suited to this population of participants
Situation Aware Cognitive Assistance in Smart Homes
Smart Homes (SH) have emerged as a realistically viable solution capable of providing
technology-driven assistive living for the elderly and disabled. Nevertheless, it still remains
a challenge to provide situation-aware cognitive assistance for those in need in
their Activity of Daily Living (ADL). This paper introduces a systematic approach to
providing situation-aware ADL assistances in a smart home environment. The approach
makes use of semantic technologies for sensor data modeling, fusion and management,
thus creating machine understandable and processable situational data. It exploits intelligent
agents for interpreting and reasoning semantic situational (meta)data to enhance
situation-aware decision support for cognitive assistance. We analyze the nature and issues
of SH-based healthcare for cognitively deficient inhabitants. We discuss the ways in
which semantic technologies enhance situation comprehension. We describe a cognitive
agent for realizing high-level cognitive capabilities such as prediction and explanation.
We outline the implementation of a prototype assistive system and illustrate the proposed
approach through simulated and real-time ADL assistance scenarios in the context
of situation aware assistive living
Probabilistic Analysis of Temporal and Sequential Aspects of Activities of Daily Living for Abnormal Behaviour Detection
This paper presents a probabilistic approach for the identification of abnormal behaviour in Activities of Daily Living (ADLs) from dense sensor data collected from 30 participants. The ADLs considered are related to preparing and drinking (i) tea, and (ii) coffee. Abnormal behaviour identified in the context of these activities can be an indicator of a progressive health problem or the occurrence of a hazardous incident. The approach presented considers the temporal and sequential aspects of the actions that are part of each ADL and that vary between participants. The average and standard deviation for the duration and number of steps of each activity are calculated to define the average time and steps and a range within which a behaviour could be considered as normal for each stage and activity. The Cumulative Distribution Function (CDF) is used to obtain the probabilities of abnormal behaviours related to the early and late completion of activities and stages within an activity in terms of time and steps. Analysis shows that CDF can provide precise and reliable results regarding the presence of abnormal behaviour in stages and activities that last over a minute or consist of many steps. Finally, this approach could be used to train machine learning algorithms for abnormal behaviour detection.status: publishe
Goal Lifecycles and Ontological Models for Intention Based Assistive Living within Smart Environments
Current ambient assistive living solutions have adopted a traditional sensor-centric approach, involving data analysis and activity recognition to provide assistance to individuals. The reliance on sensors and activity recognition in this approach introduces issues with scalability and ability to model activity variations. This study introduces a novel approach to assistive living which intends to address these issues via a paradigm shift from a sensor centric approach to a goal-oriented one. The goal-oriented approach focuses on identification of user goals in order to pro-actively offer assistance by either pre-defined or dynamically constructed instructions. This paper introduces the architecture of this goal-oriented approach and describes an ontological goal model to serve as its basis. The use of this approach is illustrated in a case study which focuses on assisting a user with activities of daily living
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