Conceptual framework and algorithms to classify wandering travel patterns of elderly with dementia

Wandering is one of the most common behavioral disturbances among people with dementia (PWD). Sensing and localization technologies have been used in wandering management, especially elopement prevention. However, little research has been focused on measuring wandering behavior and not many applicat...

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Main Author: Vuong, Nhu Khue
Other Authors: Chan Syin
Format: Theses and Dissertations
Language:English
Published: 2017
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Online Access:http://hdl.handle.net/10356/72813
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-728132023-03-04T00:47:21Z Conceptual framework and algorithms to classify wandering travel patterns of elderly with dementia Vuong, Nhu Khue Chan Syin Lau Chiew Tong School of Computer Science and Engineering DRNTU::Engineering::Computer science and engineering Wandering is one of the most common behavioral disturbances among people with dementia (PWD). Sensing and localization technologies have been used in wandering management, especially elopement prevention. However, little research has been focused on measuring wandering behavior and not many applications in wandering management are widely used in practice due to two reasons. First, technologists’ understanding and perception of wandering do not align with those of gerontologists. This consequently lowers the chance of proposed solutions to be accepted for clinical research and applications. Second, most solutions do not address all the dimensions of dementia wandering nor do they cater to the needs of other stakeholders involved including caregivers, physicians and researchers. The contributions of this thesis are two-fold. We first present a conceptual map of wandering science from the perspectives of gerontologists. Then we provide a framework which identifies main threads of technologies that can be further developed to manage dementia wandering. We further discuss research and design issues, human factors, ethical concerns, security and privacy that need to be considered when implementing solutions for wandering management. Second, we develop pattern recognition methods to identify and classify travel patterns automatically from sensor data. According to gerontologists, this is the first key step in any specific investigation of dementia wandering and subsequently measuring wandering behavior. In this thesis, we design and develop two discriminative algorithms to classify dementia-related travel patterns using different sensor modalities. The first algorithm uses spatial and temporal information from location sensors and the second one uses inertial information from inertial sensors. We have evaluated the performance of our developed algorithms on real world datasets of both dementia and non-dementia subjects. A comparison of our algorithms’ performance with one of classical machine learning classifiers, Markov models, and time series classification algorithms such as Symbolic Aggregation Approximation (SAX) and Dynamic Time Warping (DTW) shows that our algorithms outperform other classifiers from 5% to 26% in terms of classification recall and 51 to 739 times faster in terms of classification processing time. Doctor of Philosophy (SCE) 2017-11-23T06:26:18Z 2017-11-23T06:26:18Z 2017 Thesis Vuong, N. K. (2017). Conceptual framework and algorithms to classify wandering travel patterns of elderly with dementia. Doctoral thesis, Nanyang Technological University, Singapore. http://hdl.handle.net/10356/72813 10.32657/10356/72813 en 167 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Computer science and engineering
spellingShingle DRNTU::Engineering::Computer science and engineering
Vuong, Nhu Khue
Conceptual framework and algorithms to classify wandering travel patterns of elderly with dementia
description Wandering is one of the most common behavioral disturbances among people with dementia (PWD). Sensing and localization technologies have been used in wandering management, especially elopement prevention. However, little research has been focused on measuring wandering behavior and not many applications in wandering management are widely used in practice due to two reasons. First, technologists’ understanding and perception of wandering do not align with those of gerontologists. This consequently lowers the chance of proposed solutions to be accepted for clinical research and applications. Second, most solutions do not address all the dimensions of dementia wandering nor do they cater to the needs of other stakeholders involved including caregivers, physicians and researchers. The contributions of this thesis are two-fold. We first present a conceptual map of wandering science from the perspectives of gerontologists. Then we provide a framework which identifies main threads of technologies that can be further developed to manage dementia wandering. We further discuss research and design issues, human factors, ethical concerns, security and privacy that need to be considered when implementing solutions for wandering management. Second, we develop pattern recognition methods to identify and classify travel patterns automatically from sensor data. According to gerontologists, this is the first key step in any specific investigation of dementia wandering and subsequently measuring wandering behavior. In this thesis, we design and develop two discriminative algorithms to classify dementia-related travel patterns using different sensor modalities. The first algorithm uses spatial and temporal information from location sensors and the second one uses inertial information from inertial sensors. We have evaluated the performance of our developed algorithms on real world datasets of both dementia and non-dementia subjects. A comparison of our algorithms’ performance with one of classical machine learning classifiers, Markov models, and time series classification algorithms such as Symbolic Aggregation Approximation (SAX) and Dynamic Time Warping (DTW) shows that our algorithms outperform other classifiers from 5% to 26% in terms of classification recall and 51 to 739 times faster in terms of classification processing time.
author2 Chan Syin
author_facet Chan Syin
Vuong, Nhu Khue
format Theses and Dissertations
author Vuong, Nhu Khue
author_sort Vuong, Nhu Khue
title Conceptual framework and algorithms to classify wandering travel patterns of elderly with dementia
title_short Conceptual framework and algorithms to classify wandering travel patterns of elderly with dementia
title_full Conceptual framework and algorithms to classify wandering travel patterns of elderly with dementia
title_fullStr Conceptual framework and algorithms to classify wandering travel patterns of elderly with dementia
title_full_unstemmed Conceptual framework and algorithms to classify wandering travel patterns of elderly with dementia
title_sort conceptual framework and algorithms to classify wandering travel patterns of elderly with dementia
publishDate 2017
url http://hdl.handle.net/10356/72813
_version_ 1759856038954139648