The Multimorbidity Cluster Analysis Tool: Identifying Combinations and Permutations of Multiple Chronic Diseases Using a Record-Level Computational Analysis

Introduction: Multimorbidity, or the co-occurrence of multiple chronic health conditions within an individual, is an increasingly dominant presence and burden in modern health care systems.  To fully capture its complexity, further research is needed to uncover the patterns and consequences of these...

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Main Authors: Kathryn Nicholson, Michael Bauer, Amanda Terry, Martin Fortin, Tyler Williamson, Amardeep Thind
Format: Article
Language:English
Published: BCS, The Chartered Institute for IT 2017-12-01
Series:Journal of Innovation in Health Informatics
Subjects:
Online Access:https://hijournal.bcs.org/index.php/jhi/article/view/962
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spelling doaj-9b07df5e1f2c4b8f8b5cf347907b65ed2020-11-25T01:09:33ZengBCS, The Chartered Institute for ITJournal of Innovation in Health Informatics2058-45552058-45632017-12-0124410.14236/jhi.v24i4.962843The Multimorbidity Cluster Analysis Tool: Identifying Combinations and Permutations of Multiple Chronic Diseases Using a Record-Level Computational AnalysisKathryn Nicholson0Michael Bauer1Amanda Terry2Martin Fortin3Tyler Williamson4Amardeep Thind5Western UniversityDepartment of Computer Science, Western UniversityDepartment of Epidemiology and Biostatistics, Department of Family Medicine, Schulich Interfaculty Program in Public Health, Schulich School of Medicine and Dentistry, Centre for Studies in Family Medicine, Western UniversityDepartment of Family Medicine and Emergency Medicine, Université de SherbrookeDepartment of Community Health Sciences, Cumming School of Medicine, University of CalgaryDepartment of Epidemiology and Biostatistics, Department of Family Medicine, Interfaculty Program in Public Health, Schulich School of Medicine and Dentistry, Centre for Studies in Family Medicine, Western UniversityIntroduction: Multimorbidity, or the co-occurrence of multiple chronic health conditions within an individual, is an increasingly dominant presence and burden in modern health care systems.  To fully capture its complexity, further research is needed to uncover the patterns and consequences of these co-occurring health states.  As such, the Multimorbidity Cluster Analysis Tool and the accompanying Multimorbidity Cluster Analysis Toolkit have been created to allow researchers to identify distinct clusters that exist within a sample of participants or patients living with multimorbidity.  Development: The Tool and Toolkit were developed at Western University in London, Ontario, Canada.  This open-access computational program (JAVA code and executable file) was developed and tested to support an analysis of thousands of individual records and up to 100 disease diagnoses or categories.  Application: The computational program can be adapted to the methodological elements of a research project, including type of data, type of chronic disease reporting, measurement of multimorbidity, sample size and research setting.  The computational program will identify all existing, and mutually exclusive, combinations and permutations within the dataset.  An application of this computational program is provided as an example, in which more than 75,000 individual records and 20 chronic disease categories resulted in the detection of 10,411 unique combinations and 24,647 unique permutations among female and male patients.  Discussion: The Tool and Toolkit are now available for use by researchers interested in exploring the complexities of multimorbidity.  Its careful use, and the comparison between results, will be valuable additions to the nuanced understanding of multimorbidity.https://hijournal.bcs.org/index.php/jhi/article/view/962Multimorbidity, comorbidity, chronic disease, multiple chronic conditions, disease clustering
collection DOAJ
language English
format Article
sources DOAJ
author Kathryn Nicholson
Michael Bauer
Amanda Terry
Martin Fortin
Tyler Williamson
Amardeep Thind
spellingShingle Kathryn Nicholson
Michael Bauer
Amanda Terry
Martin Fortin
Tyler Williamson
Amardeep Thind
The Multimorbidity Cluster Analysis Tool: Identifying Combinations and Permutations of Multiple Chronic Diseases Using a Record-Level Computational Analysis
Journal of Innovation in Health Informatics
Multimorbidity, comorbidity, chronic disease, multiple chronic conditions, disease clustering
author_facet Kathryn Nicholson
Michael Bauer
Amanda Terry
Martin Fortin
Tyler Williamson
Amardeep Thind
author_sort Kathryn Nicholson
title The Multimorbidity Cluster Analysis Tool: Identifying Combinations and Permutations of Multiple Chronic Diseases Using a Record-Level Computational Analysis
title_short The Multimorbidity Cluster Analysis Tool: Identifying Combinations and Permutations of Multiple Chronic Diseases Using a Record-Level Computational Analysis
title_full The Multimorbidity Cluster Analysis Tool: Identifying Combinations and Permutations of Multiple Chronic Diseases Using a Record-Level Computational Analysis
title_fullStr The Multimorbidity Cluster Analysis Tool: Identifying Combinations and Permutations of Multiple Chronic Diseases Using a Record-Level Computational Analysis
title_full_unstemmed The Multimorbidity Cluster Analysis Tool: Identifying Combinations and Permutations of Multiple Chronic Diseases Using a Record-Level Computational Analysis
title_sort multimorbidity cluster analysis tool: identifying combinations and permutations of multiple chronic diseases using a record-level computational analysis
publisher BCS, The Chartered Institute for IT
series Journal of Innovation in Health Informatics
issn 2058-4555
2058-4563
publishDate 2017-12-01
description Introduction: Multimorbidity, or the co-occurrence of multiple chronic health conditions within an individual, is an increasingly dominant presence and burden in modern health care systems.  To fully capture its complexity, further research is needed to uncover the patterns and consequences of these co-occurring health states.  As such, the Multimorbidity Cluster Analysis Tool and the accompanying Multimorbidity Cluster Analysis Toolkit have been created to allow researchers to identify distinct clusters that exist within a sample of participants or patients living with multimorbidity.  Development: The Tool and Toolkit were developed at Western University in London, Ontario, Canada.  This open-access computational program (JAVA code and executable file) was developed and tested to support an analysis of thousands of individual records and up to 100 disease diagnoses or categories.  Application: The computational program can be adapted to the methodological elements of a research project, including type of data, type of chronic disease reporting, measurement of multimorbidity, sample size and research setting.  The computational program will identify all existing, and mutually exclusive, combinations and permutations within the dataset.  An application of this computational program is provided as an example, in which more than 75,000 individual records and 20 chronic disease categories resulted in the detection of 10,411 unique combinations and 24,647 unique permutations among female and male patients.  Discussion: The Tool and Toolkit are now available for use by researchers interested in exploring the complexities of multimorbidity.  Its careful use, and the comparison between results, will be valuable additions to the nuanced understanding of multimorbidity.
topic Multimorbidity, comorbidity, chronic disease, multiple chronic conditions, disease clustering
url https://hijournal.bcs.org/index.php/jhi/article/view/962
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