@article{GoerssHeinBaderetal.2020, author = {Goerss, Doreen and Hein, Albert and Bader, Sebastian and Halek, Margareta and Kernebeck, Sven and Kutschke, Andreas and Heine, Christina and Krueger, Frank and Kirste, Thomas and Teipel, Stefan}, title = {Automated sensor-based detection of challenging behaviors in advanced stages of dementia in nursing homes}, series = {Alzheimer's \& Dementia}, volume = {16}, journal = {Alzheimer's \& Dementia}, issn = {1552-5260}, doi = {10.1016/j.jalz.2019.08.193}, pages = {672 -- 680}, year = {2020}, abstract = {Sensor-based assessment of challenging behaviors in dementia may be useful to support caregivers. Here, we investigated accelerometry as tool for identification and prediction of challenging behaviors. We set up a complex data recording study in two nursing homes with 17 persons in advanced stages of dementia. Study included four-week observation of behaviors. In parallel, subjects wore sensors 24 h/7 d. Participants underwent neuropsychological assessment including MiniMental State Examination and Cohen-Mansfield Agitation Inventory. We calculated the accelerometric motion score (AMS) from accelerometers. The AMS was associated with several types of agitated behaviors and could predict subject's Cohen-Mansfield Agitation Inventory values. Beyond the mechanistic association between AMS and behavior on the group level, the AMS provided an added value for prediction of behaviors on an individual level. We confirm that accelerometry can provide relevant information about challenging behaviors. We extended previous studies by differentiating various types of agitated behaviors and applying long-term measurements in a real-world setting.}, language = {mul} }