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Geospatial analysis of environmental risk factors for missing dementia patients

Geospatial analysis of environmental risk factors for missing dementia patients
Geospatial analysis of environmental risk factors for missing dementia patients
Background:
Dementia-related missing incidents are highly prevalent but still poorly understood. This is particularly true for environmental/geospatial risk factors, which might contribute to these missing incidents.

Objective:
The study aimed to conduct a retrospective, observational analysis on a large sample of missing dementia patient case records provided by the police (n = 210), covering dates from January 2014 to December 2017. In particular, we wanted to explore 1) whether there were any hotspot regions of missing incidents and 2) the relationship between outdoor landmark density and missing incidents.

Methods:
Global spatial autocorrelation (Moran’s I) was used to identify the potential hotspot regions for missing incidents. Meanwhile, spatial buffer and regression modelling were used to determine the relationship between outdoor landmark density and missing incidents.

Results:
Our demographics measures replicated and extended previous studies of dementia-related missing incidents. Meanwhile, no hotspot regions for missing incidents were identified, while higher outdoor landmark density led to increased missing incidents.

Conclusion:
Our results highlight that missing incidents do not occur in isolated hotspots of regions but instead are endemic in patients regardless of location. Higher outdoor landmark density emerges as a significant geospatial factor for missing incidents in dementia, which crucially informs future safeguarding/intervention studies.
Puthusseryppady, V
2c245ba1-16d3-4d03-a825-6b1d9b47bf77
Coughlan, G
d202a575-3974-4929-9010-b4d946578bba
Patel, M
c5e0b7e2-4d69-465d-9ea6-d75d9ebdff58
Hornberger, M
a48c1c63-422a-4c11-9a51-c7be0aa3026d
Puthusseryppady, V
2c245ba1-16d3-4d03-a825-6b1d9b47bf77
Coughlan, G
d202a575-3974-4929-9010-b4d946578bba
Patel, M
c5e0b7e2-4d69-465d-9ea6-d75d9ebdff58
Hornberger, M
a48c1c63-422a-4c11-9a51-c7be0aa3026d

Puthusseryppady, V, Coughlan, G, Patel, M and Hornberger, M (2019) Geospatial analysis of environmental risk factors for missing dementia patients. Journal of Alzheimer's Disease : JAD. (doi:10.3233/jad-190244).

Record type: Article

Abstract

Background:
Dementia-related missing incidents are highly prevalent but still poorly understood. This is particularly true for environmental/geospatial risk factors, which might contribute to these missing incidents.

Objective:
The study aimed to conduct a retrospective, observational analysis on a large sample of missing dementia patient case records provided by the police (n = 210), covering dates from January 2014 to December 2017. In particular, we wanted to explore 1) whether there were any hotspot regions of missing incidents and 2) the relationship between outdoor landmark density and missing incidents.

Methods:
Global spatial autocorrelation (Moran’s I) was used to identify the potential hotspot regions for missing incidents. Meanwhile, spatial buffer and regression modelling were used to determine the relationship between outdoor landmark density and missing incidents.

Results:
Our demographics measures replicated and extended previous studies of dementia-related missing incidents. Meanwhile, no hotspot regions for missing incidents were identified, while higher outdoor landmark density led to increased missing incidents.

Conclusion:
Our results highlight that missing incidents do not occur in isolated hotspots of regions but instead are endemic in patients regardless of location. Higher outdoor landmark density emerges as a significant geospatial factor for missing incidents in dementia, which crucially informs future safeguarding/intervention studies.

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e-pub ahead of print date: 23 August 2019

Identifiers

Local EPrints ID: 505218
URI: http://eprints.soton.ac.uk/id/eprint/505218
PURE UUID: 30cd505d-2f00-4074-8006-a7b6ff332b79
ORCID for M Hornberger: ORCID iD orcid.org/0000-0002-2214-3788

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Date deposited: 01 Oct 2025 16:54
Last modified: 02 Oct 2025 02:19

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Contributors

Author: V Puthusseryppady
Author: G Coughlan
Author: M Patel
Author: M Hornberger ORCID iD

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