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Machine learning detects altered spatial navigation features in outdoor behaviour of Alzheimer's disease patients

Machine learning detects altered spatial navigation features in outdoor behaviour of Alzheimer's disease patients
Machine learning detects altered spatial navigation features in outdoor behaviour of Alzheimer's disease patients

Impairment of navigation is one of the earliest symptoms of Alzheimer's disease (AD), but to date studies have involved proxy tests of navigation rather than studies of real life behaviour. Here we use GPS tracking to measure ecological outdoor behaviour in AD. The aim was to use data-driven machine learning approaches to explore spatial metrics within real life navigational traces that discriminate AD patients from controls. 15 AD patients and 18 controls underwent tracking of their outdoor navigation over two weeks. Three kinds of spatiotemporal features of segments were extracted, characterising the mobility domain (entropy, segment similarity, distance from home), spatial shape (total turning angle, segment complexity), and temporal characteristics (stop duration). Patients significantly differed from controls on entropy (p-value 0.008), segment similarity (p-value [Formula: see text]), and distance from home (p-value [Formula: see text]). Graph-based analyses yielded preliminary data indicating that topological features assessing the connectivity of visited locations may also differentiate patients from controls. In conclusion, our results show that specific outdoor navigation features discriminate AD patients from controls, which has significant implication for future AD diagnostics, outcome measures and interventions. Furthermore, this work illustrates how wearables-based sensing of everyday behaviour may be used to deliver ecologically-valid digital biomarkers of AD pathophysiology.

Aged, Aged, 80 and over, Alzheimer Disease/diagnosis, Female, Humans, Machine Learning, Male, Middle Aged, Neuropsychological Tests, Spatial Behavior, Spatial Navigation, Spatio-Temporal Analysis
2045-2322
Ghosh, Abhirup
afbbeec6-e32f-4d1b-9189-c2ef01e07600
Puthusseryppady, Vaisakh
2c245ba1-16d3-4d03-a825-6b1d9b47bf77
Chan, Dennis
1cb5f600-97fa-43d5-a8de-7b4e476149ff
Mascolo, Cecilia
e4a7bcf7-72c8-43b7-b6b3-4f8980da245d
Hornberger, Michael
a48c1c63-422a-4c11-9a51-c7be0aa3026d
Ghosh, Abhirup
afbbeec6-e32f-4d1b-9189-c2ef01e07600
Puthusseryppady, Vaisakh
2c245ba1-16d3-4d03-a825-6b1d9b47bf77
Chan, Dennis
1cb5f600-97fa-43d5-a8de-7b4e476149ff
Mascolo, Cecilia
e4a7bcf7-72c8-43b7-b6b3-4f8980da245d
Hornberger, Michael
a48c1c63-422a-4c11-9a51-c7be0aa3026d

Ghosh, Abhirup, Puthusseryppady, Vaisakh, Chan, Dennis, Mascolo, Cecilia and Hornberger, Michael (2022) Machine learning detects altered spatial navigation features in outdoor behaviour of Alzheimer's disease patients. Scientific Reports, 12 (1), [3160]. (doi:10.1038/s41598-022-06899-w).

Record type: Article

Abstract

Impairment of navigation is one of the earliest symptoms of Alzheimer's disease (AD), but to date studies have involved proxy tests of navigation rather than studies of real life behaviour. Here we use GPS tracking to measure ecological outdoor behaviour in AD. The aim was to use data-driven machine learning approaches to explore spatial metrics within real life navigational traces that discriminate AD patients from controls. 15 AD patients and 18 controls underwent tracking of their outdoor navigation over two weeks. Three kinds of spatiotemporal features of segments were extracted, characterising the mobility domain (entropy, segment similarity, distance from home), spatial shape (total turning angle, segment complexity), and temporal characteristics (stop duration). Patients significantly differed from controls on entropy (p-value 0.008), segment similarity (p-value [Formula: see text]), and distance from home (p-value [Formula: see text]). Graph-based analyses yielded preliminary data indicating that topological features assessing the connectivity of visited locations may also differentiate patients from controls. In conclusion, our results show that specific outdoor navigation features discriminate AD patients from controls, which has significant implication for future AD diagnostics, outcome measures and interventions. Furthermore, this work illustrates how wearables-based sensing of everyday behaviour may be used to deliver ecologically-valid digital biomarkers of AD pathophysiology.

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s41598-022-06899-w (1) - Version of Record
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More information

Accepted/In Press date: 31 January 2022
Published date: 24 February 2022
Additional Information: © 2022. The Author(s).
Keywords: Aged, Aged, 80 and over, Alzheimer Disease/diagnosis, Female, Humans, Machine Learning, Male, Middle Aged, Neuropsychological Tests, Spatial Behavior, Spatial Navigation, Spatio-Temporal Analysis

Identifiers

Local EPrints ID: 506482
URI: http://eprints.soton.ac.uk/id/eprint/506482
ISSN: 2045-2322
PURE UUID: bacbeb44-fcae-41a7-a47e-08cc127d882f
ORCID for Michael Hornberger: ORCID iD orcid.org/0000-0002-2214-3788

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Date deposited: 10 Nov 2025 17:35
Last modified: 11 Nov 2025 03:10

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Contributors

Author: Abhirup Ghosh
Author: Vaisakh Puthusseryppady
Author: Dennis Chan
Author: Cecilia Mascolo
Author: Michael Hornberger ORCID iD

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