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Machine learning methods for detecting urinary tract infection and analysing daily living activities in people with dementia

Dementia is a neurological and cognitive condition that affects millions of people around the world. At any given time in the United Kingdom, 1 in 4 hospital beds are occupied by a person with dementia, while about 22% of these hospital admissions are due to preventable causes. In this paper we disc...

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Autores principales: Enshaeifar, Shirin, Zoha, Ahmed, Skillman, Severin, Markides, Andreas, Acton, Sahr Thomas, Elsaleh, Tarek, Kenny, Mark, Rostill, Helen, Nilforooshan, Ramin, Barnaghi, Payam
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6333356/
https://www.ncbi.nlm.nih.gov/pubmed/30645599
http://dx.doi.org/10.1371/journal.pone.0209909
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author Enshaeifar, Shirin
Zoha, Ahmed
Skillman, Severin
Markides, Andreas
Acton, Sahr Thomas
Elsaleh, Tarek
Kenny, Mark
Rostill, Helen
Nilforooshan, Ramin
Barnaghi, Payam
author_facet Enshaeifar, Shirin
Zoha, Ahmed
Skillman, Severin
Markides, Andreas
Acton, Sahr Thomas
Elsaleh, Tarek
Kenny, Mark
Rostill, Helen
Nilforooshan, Ramin
Barnaghi, Payam
author_sort Enshaeifar, Shirin
collection PubMed
description Dementia is a neurological and cognitive condition that affects millions of people around the world. At any given time in the United Kingdom, 1 in 4 hospital beds are occupied by a person with dementia, while about 22% of these hospital admissions are due to preventable causes. In this paper we discuss using Internet of Things (IoT) technologies and in-home sensory devices in combination with machine learning techniques to monitor health and well-being of people with dementia. This will allow us to provide more effective and preventative care and reduce preventable hospital admissions. One of the unique aspects of this work is combining environmental data with physiological data collected via low cost in-home sensory devices to extract actionable information regarding the health and well-being of people with dementia in their own home environment. We have worked with clinicians to design our machine learning algorithms where we focused on developing solutions for real-world settings. In our solutions, we avoid generating too many alerts/alarms to prevent increasing the monitoring and support workload. We have designed an algorithm to detect Urinary Tract Infections (UTI) which is one of the top five reasons of hospital admissions for people with dementia (around 9% of hospital admissions for people with dementia in the UK). To develop the UTI detection algorithm, we have used a Non-negative Matrix Factorisation (NMF) technique to extract latent factors from raw observation and use them for clustering and identifying the possible UTI cases. In addition, we have designed an algorithm for detecting changes in activity patterns to identify early symptoms of cognitive decline or health decline in order to provide personalised and preventative care services. For this purpose, we have used an Isolation Forest (iForest) technique to create a holistic view of the daily activity patterns. This paper describes the algorithms and discusses the evaluation of the work using a large set of real-world data collected from a trial with people with dementia and their caregivers.
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spelling pubmed-63333562019-01-31 Machine learning methods for detecting urinary tract infection and analysing daily living activities in people with dementia Enshaeifar, Shirin Zoha, Ahmed Skillman, Severin Markides, Andreas Acton, Sahr Thomas Elsaleh, Tarek Kenny, Mark Rostill, Helen Nilforooshan, Ramin Barnaghi, Payam PLoS One Research Article Dementia is a neurological and cognitive condition that affects millions of people around the world. At any given time in the United Kingdom, 1 in 4 hospital beds are occupied by a person with dementia, while about 22% of these hospital admissions are due to preventable causes. In this paper we discuss using Internet of Things (IoT) technologies and in-home sensory devices in combination with machine learning techniques to monitor health and well-being of people with dementia. This will allow us to provide more effective and preventative care and reduce preventable hospital admissions. One of the unique aspects of this work is combining environmental data with physiological data collected via low cost in-home sensory devices to extract actionable information regarding the health and well-being of people with dementia in their own home environment. We have worked with clinicians to design our machine learning algorithms where we focused on developing solutions for real-world settings. In our solutions, we avoid generating too many alerts/alarms to prevent increasing the monitoring and support workload. We have designed an algorithm to detect Urinary Tract Infections (UTI) which is one of the top five reasons of hospital admissions for people with dementia (around 9% of hospital admissions for people with dementia in the UK). To develop the UTI detection algorithm, we have used a Non-negative Matrix Factorisation (NMF) technique to extract latent factors from raw observation and use them for clustering and identifying the possible UTI cases. In addition, we have designed an algorithm for detecting changes in activity patterns to identify early symptoms of cognitive decline or health decline in order to provide personalised and preventative care services. For this purpose, we have used an Isolation Forest (iForest) technique to create a holistic view of the daily activity patterns. This paper describes the algorithms and discusses the evaluation of the work using a large set of real-world data collected from a trial with people with dementia and their caregivers. Public Library of Science 2019-01-15 /pmc/articles/PMC6333356/ /pubmed/30645599 http://dx.doi.org/10.1371/journal.pone.0209909 Text en © 2019 Enshaeifar et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Enshaeifar, Shirin
Zoha, Ahmed
Skillman, Severin
Markides, Andreas
Acton, Sahr Thomas
Elsaleh, Tarek
Kenny, Mark
Rostill, Helen
Nilforooshan, Ramin
Barnaghi, Payam
Machine learning methods for detecting urinary tract infection and analysing daily living activities in people with dementia
title Machine learning methods for detecting urinary tract infection and analysing daily living activities in people with dementia
title_full Machine learning methods for detecting urinary tract infection and analysing daily living activities in people with dementia
title_fullStr Machine learning methods for detecting urinary tract infection and analysing daily living activities in people with dementia
title_full_unstemmed Machine learning methods for detecting urinary tract infection and analysing daily living activities in people with dementia
title_short Machine learning methods for detecting urinary tract infection and analysing daily living activities in people with dementia
title_sort machine learning methods for detecting urinary tract infection and analysing daily living activities in people with dementia
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6333356/
https://www.ncbi.nlm.nih.gov/pubmed/30645599
http://dx.doi.org/10.1371/journal.pone.0209909
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