TY - JOUR
T1 - Sensor-based agitation prediction in institutionalized people with dementia A systematic review
AU - Kleine Deters, Jan
AU - Janus, Sarah
AU - Silva, Jair A.Lima
AU - Wörtche, Heinrich J.
AU - Zuidema, Sytse U.
N1 - Publisher Copyright:
© 2024
PY - 2024/2
Y1 - 2024/2
N2 - Early detection of agitation in individuals with dementia can lead to timely interventions, preventing the worsening of situations and enhancing their quality of life. The emergence of multi-modal sensing and advances in artificial intelligence make it feasible to explore and apply technology for this goal. We conducted a literature review to understand the current technical developments and challenges of its integration in caregiving institutions. Our systematic review used the Pubmed and IEEE scientific databases, considering studies from 2017 onwards. We included studies focusing on linking sensor data to vocal and/or physical manifestations of agitation. Out of 1622 identified studies, 12 were selected for the final review. Analysis was conducted on study design, technology, decisional data, and data analytics. We identified a gap in the standardized semantic representation of both behavioral descriptions and system event generation configurations. This research highlighted initiatives that leverage existing information in a caregiver's routine, such as correlating electronic health records with sensor data. As predictive systems become more integrated into caregiving routines, false positive reduction needs to be addressed as those will discourage their adoption. Therefore, to ensure adaptive predictive capacity and personalized system re-configuration, we suggest future work to evaluate a framework that incorporates a human-in-the-loop approach for detecting and predicting agitation.
AB - Early detection of agitation in individuals with dementia can lead to timely interventions, preventing the worsening of situations and enhancing their quality of life. The emergence of multi-modal sensing and advances in artificial intelligence make it feasible to explore and apply technology for this goal. We conducted a literature review to understand the current technical developments and challenges of its integration in caregiving institutions. Our systematic review used the Pubmed and IEEE scientific databases, considering studies from 2017 onwards. We included studies focusing on linking sensor data to vocal and/or physical manifestations of agitation. Out of 1622 identified studies, 12 were selected for the final review. Analysis was conducted on study design, technology, decisional data, and data analytics. We identified a gap in the standardized semantic representation of both behavioral descriptions and system event generation configurations. This research highlighted initiatives that leverage existing information in a caregiver's routine, such as correlating electronic health records with sensor data. As predictive systems become more integrated into caregiving routines, false positive reduction needs to be addressed as those will discourage their adoption. Therefore, to ensure adaptive predictive capacity and personalized system re-configuration, we suggest future work to evaluate a framework that incorporates a human-in-the-loop approach for detecting and predicting agitation.
KW - Agitation
KW - Bbehavior
KW - Dementia
KW - Long-term monitoring
KW - Sensor system
UR - http://www.scopus.com/inward/record.url?scp=85182913796&partnerID=8YFLogxK
U2 - 10.1016/j.pmcj.2024.101876
DO - 10.1016/j.pmcj.2024.101876
M3 - Review article
AN - SCOPUS:85182913796
SN - 1574-1192
VL - 98
JO - Pervasive and Mobile Computing
JF - Pervasive and Mobile Computing
M1 - 101876
ER -