Samer Schaat1, Philipp Koldrack2, Kristina Yordanova3, Thomas Kirste3, Stefan Teipel2,4. 1. German Center for Neurodegenerative Diseases (DZNE), Rostock, Germany, s.schaat@mailbox.org. 2. German Center for Neurodegenerative Diseases (DZNE), Rostock, Germany. 3. Department of Computer Science, University of Rostock, Rostock, Germany. 4. Department of Psychosomatic and Psychotherapeutic Medicine, University of Rostock, Rostock, Germany.
Abstract
BACKGROUND: Detecting manifestations of spatial disorientation in real time is a key requirement for adaptive assistive navigation systems for people with dementia. OBJECTIVE: To identify predictive patterns of spatial disorientation in cognitively impaired people during unconstrained locomotion behavior in an urban environment. METHODS: Accelerometric data and GPS records were gathered during a wayfinding task along a route of about 1 km in 15 people with amnestic mild cognitive impairment or clinically probable Alzheimer's disease dementia (13 completers). We calculated a set of 48 statistical features for each 10-s segment of the acceleration sensor signal to characterize the physical motion. We used different classifiers with the wrapper method and leave-one-out cross-validation for feature selection and for determining accuracy of disorientation detection. RESULTS: Linear discriminant analysis using three features showed the best classification results, with a cross-validated ROC AUC of 0.75, detecting 65% of all scenes of spatial disorientation in real time. Consideration of an additional feature that informed about a person's distance to the next traffic junction did not provide an additional information gain. CONCLUSIONS: Accelerometric data are able to capture the uniformity and activity of a person's walking, which are identified as the most informative locomotion features of spatially disoriented behavior. This serves as an important basis for real-time navigation assistance. To improve the required accuracy of real-time disorientation prediction, as a next step we will analyze whether location-based behavior is able to inform about person-centered habitual factors of orientation.
BACKGROUND: Detecting manifestations of spatial disorientation in real time is a key requirement for adaptive assistive navigation systems for people with dementia. OBJECTIVE: To identify predictive patterns of spatial disorientation in cognitively impaired people during unconstrained locomotion behavior in an urban environment. METHODS: Accelerometric data and GPS records were gathered during a wayfinding task along a route of about 1 km in 15 people with amnestic mild cognitive impairment or clinically probable Alzheimer's disease dementia (13 completers). We calculated a set of 48 statistical features for each 10-s segment of the acceleration sensor signal to characterize the physical motion. We used different classifiers with the wrapper method and leave-one-out cross-validation for feature selection and for determining accuracy of disorientation detection. RESULTS: Linear discriminant analysis using three features showed the best classification results, with a cross-validated ROC AUC of 0.75, detecting 65% of all scenes of spatial disorientation in real time. Consideration of an additional feature that informed about a person's distance to the next traffic junction did not provide an additional information gain. CONCLUSIONS: Accelerometric data are able to capture the uniformity and activity of a person's walking, which are identified as the most informative locomotion features of spatially disoriented behavior. This serves as an important basis for real-time navigation assistance. To improve the required accuracy of real-time disorientation prediction, as a next step we will analyze whether location-based behavior is able to inform about person-centered habitual factors of orientation.
Authors: Stefan J Teipel; Chimezie O Amaefule; Stefan Lüdtke; Doreen Görß; Sofia Faraza; Sven Bruhn; Thomas Kirste Journal: Front Psychol Date: 2022-04-25
Authors: Neda Firouraghi; Behzad Kiani; Hossein Tabatabaei Jafari; Vincent Learnihan; Jose A Salinas-Perez; Ahmad Raeesi; MaryAnne Furst; Luis Salvador-Carulla; Nasser Bagheri Journal: Int J Health Geogr Date: 2022-08-04 Impact factor: 5.310