Motion Biomarkers for Early Detection of Dementia-Related Agitation

Agitation in dementia poses a major health risk for both the patients and their caregivers and induces a huge caregiving burden. Early detection of agitation can facilitate timely intervention and prevent escalation of critical episodes. Sensing behavioral patterns for detecting health critical events is a challenging task. Wearable sensors are often employed for sensing physiological signals, but extracting possible biomarkers for confident detection of early agitation is still an open research. In this paper, we employ an ongoing iterative study to explore the motion biomarkers related to agitation in community-dwelling persons with dementia (PWD). This study uses accelerometers in smart watches to capture PWD behavioral patterns unobtrusively. Analysis of the feature space is performed using data from multiple subjects to discriminate among epochs of onset, preset, and offset of agitation while considering inter-person variability in real deployments. This paper shows the prospect of feature space analysis of the motion data for developing early agitation detection models to deploy in the wild.

[1]  Eui-Nam Huh,et al.  Dementia Wandering Detection and Activity Recognition Algorithm Using Tri-Axial Accelerometer Sensors , 2009, Proceedings of the 4th International Conference on Ubiquitous Information Technologies & Applications.

[2]  Majid Sarrafzadeh,et al.  Robust Human Activity and Sensor Location Corecognition via Sparse Signal Representation , 2012, IEEE Transactions on Biomedical Engineering.

[3]  Masatoshi Takeda,et al.  [Behavioral and psychological symptoms of dementia]. , 2011, Nihon rinsho. Japanese journal of clinical medicine.

[4]  Tonya L. Smith-Jackson,et al.  Continuous, non-invasive assessment of agitation in dementia using inertial body sensors , 2011, Wireless Health.

[5]  M. Carrillo,et al.  Everyday technologies for Alzheimer's disease care: Research findings, directions, and challenges , 2009, Alzheimer's & Dementia.

[6]  J. Weuve,et al.  2016 Alzheimer's disease facts and figures , 2016 .

[7]  J. Morris,et al.  Clinical Dementia Rating: A Reliable and Valid Diagnostic and Staging Measure for Dementia of the Alzheimer Type , 1997, International Psychogeriatrics.

[8]  Thomas Kirste,et al.  Detecting the effect of Alzheimer's disease on everyday motion behavior. , 2013, Journal of Alzheimer's disease : JAD.

[9]  Jamie M. Zeitzer,et al.  Ambulatory actigraphy correlates with apathy in mild Alzheimer’s disease , 2010 .

[10]  J. Forlizzi,et al.  Intelligent assistive technology applications to dementia care: current capabilities, limitations, and future challenges. , 2009, The American journal of geriatric psychiatry : official journal of the American Association for Geriatric Psychiatry.

[11]  John Lach,et al.  TEMPO 3.1: A Body Area Sensor Network Platform for Continuous Movement Assessment , 2009, 2009 Sixth International Workshop on Wearable and Implantable Body Sensor Networks.

[12]  J Sansoni,et al.  Caregivers of Alzheimer's patients and factors influencing institutionalization of loved ones: some considerations on existing literature. , 2013, Annali di igiene : medicina preventiva e di comunita.

[13]  Gang Zhou,et al.  Accurate, Fast Fall Detection Using Gyroscopes and Accelerometer-Derived Posture Information , 2009, 2009 Sixth International Workshop on Wearable and Implantable Body Sensor Networks.

[14]  Guy Nagels,et al.  Actigraphic measurement of agitated behaviour in dementia , 2006, International journal of geriatric psychiatry.

[15]  Tonya L. Smith-Jackson,et al.  BESI: Reliable and Heterogeneous Sensing and Intervention for In-home Health Applications , 2017, 2017 IEEE/ACM International Conference on Connected Health: Applications, Systems and Engineering Technologies (CHASE).

[16]  Fatos Xhafa,et al.  Monitoring and Detection of Agitation in Dementia: Towards Real-Time and Big-Data Solutions , 2013, 2013 Eighth International Conference on P2P, Parallel, Grid, Cloud and Internet Computing.

[17]  P. Robert,et al.  Detection of activities of daily living impairment in Alzheimer’s disease and mild cognitive impairment using information and communication technology , 2012, Clinical interventions in aging.

[18]  R. Vaccaro,et al.  Behavioral and psychotic symptoms of dementia (BPSD) improvements in a special care unit: a factor analysis. , 2007, Archives of gerontology and geriatrics.

[19]  S. Walther,et al.  Actigraphy in agitated patients with dementia , 2007, Zeitschrift für Gerontologie und Geriatrie.

[20]  Seetha Hari,et al.  Learning From Imbalanced Data , 2019, Advances in Computer and Electrical Engineering.

[21]  H. Chui,et al.  The Modified Mini-Mental State (3MS) examination. , 1987, The Journal of clinical psychiatry.