A Web-Based Non-Intrusive Ambient System to Measure and Classify Activities of Daily Living

Background The number of older adults in the global population is increasing. This demographic shift leads to an increasing prevalence of age-associated disorders, such as Alzheimer’s disease and other types of dementia. With the progression of the disease, the risk for institutional care increases, which contrasts with the desire of most patients to stay in their home environment. Despite doctors’ and caregivers’ awareness of the patient’s cognitive status, they are often uncertain about its consequences on activities of daily living (ADL). To provide effective care, they need to know how patients cope with ADL, in particular, the estimation of risks associated with the cognitive decline. The occurrence, performance, and duration of different ADL are important indicators of functional ability. The patient’s ability to cope with these activities is traditionally assessed with questionnaires, which has disadvantages (eg, lack of reliability and sensitivity). Several groups have proposed sensor-based systems to recognize and quantify these activities in the patient’s home. Combined with Web technology, these systems can inform caregivers about their patients in real-time (eg, via smartphone). Objective We hypothesize that a non-intrusive system, which does not use body-mounted sensors, video-based imaging, and microphone recordings would be better suited for use in dementia patients. Since it does not require patient’s attention and compliance, such a system might be well accepted by patients. We present a passive, Web-based, non-intrusive, assistive technology system that recognizes and classifies ADL. Methods The components of this novel assistive technology system were wireless sensors distributed in every room of the participant’s home and a central computer unit (CCU). The environmental data were acquired for 20 days (per participant) and then stored and processed on the CCU. In consultation with medical experts, eight ADL were classified. Results In this study, 10 healthy participants (6 women, 4 men; mean age 48.8 years; SD 20.0 years; age range 28-79 years) were included. For explorative purposes, one female Alzheimer patient (Montreal Cognitive Assessment score=23, Timed Up and Go=19.8 seconds, Trail Making Test A=84.3 seconds, Trail Making Test B=146 seconds) was measured in parallel with the healthy subjects. In total, 1317 ADL were performed by the participants, 1211 ADL were classified correctly, and 106 ADL were missed. This led to an overall sensitivity of 91.27% and a specificity of 92.52%. Each subject performed an average of 134.8 ADL (SD 75). Conclusions The non-intrusive wireless sensor system can acquire environmental data essential for the classification of activities of daily living. By analyzing retrieved data, it is possible to distinguish and assign data patterns to subjects' specific activities and to identify eight different activities in daily living. The Web-based technology allows the system to improve care and provides valuable information about the patient in real-time.

[1]  N. L. Griffin,et al.  A rule-based inference engine which is optimal and VLSI implementable , 1989, [Proceedings 1989] IEEE International Workshop on Tools for Artificial Intelligence.

[2]  Vincent Rialle,et al.  What Do Family Caregivers of Alzheimer’s Disease Patients Desire in Smart Home Technologies? , 2009, Methods of Information in Medicine.

[3]  Martha E. Pollack,et al.  Intelligent Technology for an Aging Population: The Use of AI to Assist Elders with Cognitive Impairment , 2005, AI Mag..

[4]  J. D. Janssen,et al.  A triaxial accelerometer and portable data processing unit for the assessment of daily physical activity , 1997, IEEE Transactions on Biomedical Engineering.

[5]  S. Soraci,et al.  Assessment of patient satisfaction in activities of daily living using a modified Stanford Health Assessment Questionnaire. , 1983, Arthritis and rheumatism.

[6]  Marjorie Skubic,et al.  An eldercare electronic health record system for predictive health assessment , 2011, 2011 IEEE 13th International Conference on e-Health Networking, Applications and Services.

[7]  R. Reitan,et al.  The Trail Making Test as an initial screening procedure for neuropsychological impairment in older children. , 2004, Archives of clinical neuropsychology : the official journal of the National Academy of Neuropsychologists.

[8]  Guy E. Blelloch,et al.  A comparison of sorting algorithms for the connection machine CM-2 , 1991, SPAA '91.

[9]  M. Skubic,et al.  Older adults' attitudes towards and perceptions of ‘smart home’ technologies: a pilot study , 2004, Medical informatics and the Internet in medicine.

[10]  Michael D. Marti,et al.  Cost of dementia in Switzerland. , 2010, Swiss medical weekly.

[11]  Edward Corwin,et al.  Sorting in linear time - variations on the bucket sort , 2004 .

[12]  E. Hanson,et al.  Working together with persons with early stage dementia and their family members to design a user-friendly technology-based support service , 2007 .

[13]  J. Cummings,et al.  The Montreal Cognitive Assessment, MoCA: A Brief Screening Tool For Mild Cognitive Impairment , 2005, Journal of the American Geriatrics Society.

[14]  A. Monsch,et al.  Identifying a cut-off point for normal mobility: a comparison of the timed 'up and go' test in community-dwelling and institutionalised elderly women. , 2003, Age and ageing.

[15]  John A. Stankovic,et al.  Behavioral Patterns of Older Adults in Assisted Living , 2008, IEEE Transactions on Information Technology in Biomedicine.

[16]  Neil Johnson,et al.  A smart sensor to detect the falls of the elderly , 2004, IEEE Pervasive Computing.

[17]  J. Marôco,et al.  Construct Validity of the Montreal Cognitive Assessment (MoCA) , 2011, Journal of the International Neuropsychological Society.

[18]  Anthony Almudevar,et al.  Home monitoring using wearable radio frequency transmitters , 2008, Artif. Intell. Medicine.

[19]  John A. Stankovic,et al.  ALARM-NET: Wireless Sensor Networks for Assisted-Living and Residential Monitoring , 2006 .

[20]  Stephen S Intille,et al.  To Track or Not to Track: User Reactions to Concepts in Longitudinal Health Monitoring , 2006, Journal of medical Internet research.

[21]  Minho Kim,et al.  Toward real time detection of the basic living activity in home using a wearable sensor and smart home sensors , 2008, 2008 30th Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[22]  Chad A. Phipps,et al.  CareWatch: A Home Monitoring System for Use in Homes of Persons With Cognitive Impairment , 2007, Topics in geriatric rehabilitation.

[23]  Kent Larson,et al.  Real-Time Recognition of Physical Activities and Their Intensities Using Wireless Accelerometers and a Heart Rate Monitor , 2007, 2007 11th IEEE International Symposium on Wearable Computers.

[24]  Rafik A. Goubran,et al.  Integration of Smart Home Technologies in a Health Monitoring System for the Elderly , 2007, 21st International Conference on Advanced Information Networking and Applications Workshops (AINAW'07).

[25]  D. Wade,et al.  The Barthel ADL Index: a standard measure of physical disability? , 1988, International disability studies.

[26]  S. Zarit,et al.  Relatives of the impaired elderly: correlates of feelings of burden. , 1980, The Gerontologist.

[27]  Diane Podsiadlo,et al.  The Timed “Up & Go”: A Test of Basic Functional Mobility for Frail Elderly Persons , 1991, Journal of the American Geriatrics Society.

[28]  Sumio Murase,et al.  New approach for the early detection of dementia by recording in-house activities. , 2007, Telemedicine journal and e-health : the official journal of the American Telemedicine Association.

[29]  Michel Vacher,et al.  SVM-Based Multimodal Classification of Activities of Daily Living in Health Smart Homes: Sensors, Algorithms, and First Experimental Results , 2010, IEEE Transactions on Information Technology in Biomedicine.

[30]  Kalpana Shankar,et al.  Making Sense of Mobile- and Web-Based Wellness Information Technology: Cross-Generational Study , 2013, Journal of medical Internet research.