Cargando…

Mining patterns of comorbidity evolution in patients with multiple chronic conditions using unsupervised multi-level temporal Bayesian network

Over the past few decades, the rise of multiple chronic conditions has become a major concern for clinicians. However, it is still not known precisely how multiple chronic conditions emerge among patients. We propose an unsupervised multi-level temporal Bayesian network to provide a compact represen...

Descripción completa

Detalles Bibliográficos
Autores principales: Faruqui, Syed Hasib Akhter, Alaeddini, Adel, Jaramillo, Carlos A., Potter, Jennifer S., Pugh, Mary Jo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6042705/
https://www.ncbi.nlm.nih.gov/pubmed/30001371
http://dx.doi.org/10.1371/journal.pone.0199768
_version_ 1783339200975732736
author Faruqui, Syed Hasib Akhter
Alaeddini, Adel
Jaramillo, Carlos A.
Potter, Jennifer S.
Pugh, Mary Jo
author_facet Faruqui, Syed Hasib Akhter
Alaeddini, Adel
Jaramillo, Carlos A.
Potter, Jennifer S.
Pugh, Mary Jo
author_sort Faruqui, Syed Hasib Akhter
collection PubMed
description Over the past few decades, the rise of multiple chronic conditions has become a major concern for clinicians. However, it is still not known precisely how multiple chronic conditions emerge among patients. We propose an unsupervised multi-level temporal Bayesian network to provide a compact representation of the relationship among emergence of multiple chronic conditions and patient level risk factors over time. To improve the efficiency of the learning process, we use an extension of maximum weight spanning tree algorithm and greedy search algorithm to study the structure of the proposed network in three stages, starting with learning the inter-relationship of comorbidities within each year, followed by learning the intra-relationship of comorbidity emergence between consecutive years, and finally learning the hierarchical relationship of comorbidities and patient level risk factors. We also use a longest path algorithm to identify the most likely sequence of comorbidities emerging from and/or leading to specific chronic conditions. Using a de-identified dataset of more than 250,000 patients receiving care from the U.S. Department of Veterans Affairs for a period of five years, we compare the performance of the proposed unsupervised Bayesian network in comparison with those of Bayesian networks developed based on supervised and semi-supervised learning approaches, as well as multivariate probit regression, multinomial logistic regression, and latent regression Markov mixture clustering focusing on traumatic brain injury (TBI), post-traumatic stress disorder (PTSD), depression (Depr), substance abuse (SuAb), and back pain (BaPa). Our findings show that the unsupervised approach has noticeably accurate predictive performance that is comparable to the best performing semi-supervised and the second-best performing supervised approaches. These findings also revealed that the unsupervised approach has improved performance over multivariate probit regression, multinomial logistic regression, and latent regression Markov mixture clustering.
format Online
Article
Text
id pubmed-6042705
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-60427052018-07-19 Mining patterns of comorbidity evolution in patients with multiple chronic conditions using unsupervised multi-level temporal Bayesian network Faruqui, Syed Hasib Akhter Alaeddini, Adel Jaramillo, Carlos A. Potter, Jennifer S. Pugh, Mary Jo PLoS One Research Article Over the past few decades, the rise of multiple chronic conditions has become a major concern for clinicians. However, it is still not known precisely how multiple chronic conditions emerge among patients. We propose an unsupervised multi-level temporal Bayesian network to provide a compact representation of the relationship among emergence of multiple chronic conditions and patient level risk factors over time. To improve the efficiency of the learning process, we use an extension of maximum weight spanning tree algorithm and greedy search algorithm to study the structure of the proposed network in three stages, starting with learning the inter-relationship of comorbidities within each year, followed by learning the intra-relationship of comorbidity emergence between consecutive years, and finally learning the hierarchical relationship of comorbidities and patient level risk factors. We also use a longest path algorithm to identify the most likely sequence of comorbidities emerging from and/or leading to specific chronic conditions. Using a de-identified dataset of more than 250,000 patients receiving care from the U.S. Department of Veterans Affairs for a period of five years, we compare the performance of the proposed unsupervised Bayesian network in comparison with those of Bayesian networks developed based on supervised and semi-supervised learning approaches, as well as multivariate probit regression, multinomial logistic regression, and latent regression Markov mixture clustering focusing on traumatic brain injury (TBI), post-traumatic stress disorder (PTSD), depression (Depr), substance abuse (SuAb), and back pain (BaPa). Our findings show that the unsupervised approach has noticeably accurate predictive performance that is comparable to the best performing semi-supervised and the second-best performing supervised approaches. These findings also revealed that the unsupervised approach has improved performance over multivariate probit regression, multinomial logistic regression, and latent regression Markov mixture clustering. Public Library of Science 2018-07-12 /pmc/articles/PMC6042705/ /pubmed/30001371 http://dx.doi.org/10.1371/journal.pone.0199768 Text en © 2018 Faruqui 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
Faruqui, Syed Hasib Akhter
Alaeddini, Adel
Jaramillo, Carlos A.
Potter, Jennifer S.
Pugh, Mary Jo
Mining patterns of comorbidity evolution in patients with multiple chronic conditions using unsupervised multi-level temporal Bayesian network
title Mining patterns of comorbidity evolution in patients with multiple chronic conditions using unsupervised multi-level temporal Bayesian network
title_full Mining patterns of comorbidity evolution in patients with multiple chronic conditions using unsupervised multi-level temporal Bayesian network
title_fullStr Mining patterns of comorbidity evolution in patients with multiple chronic conditions using unsupervised multi-level temporal Bayesian network
title_full_unstemmed Mining patterns of comorbidity evolution in patients with multiple chronic conditions using unsupervised multi-level temporal Bayesian network
title_short Mining patterns of comorbidity evolution in patients with multiple chronic conditions using unsupervised multi-level temporal Bayesian network
title_sort mining patterns of comorbidity evolution in patients with multiple chronic conditions using unsupervised multi-level temporal bayesian network
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6042705/
https://www.ncbi.nlm.nih.gov/pubmed/30001371
http://dx.doi.org/10.1371/journal.pone.0199768
work_keys_str_mv AT faruquisyedhasibakhter miningpatternsofcomorbidityevolutioninpatientswithmultiplechronicconditionsusingunsupervisedmultileveltemporalbayesiannetwork
AT alaeddiniadel miningpatternsofcomorbidityevolutioninpatientswithmultiplechronicconditionsusingunsupervisedmultileveltemporalbayesiannetwork
AT jaramillocarlosa miningpatternsofcomorbidityevolutioninpatientswithmultiplechronicconditionsusingunsupervisedmultileveltemporalbayesiannetwork
AT potterjennifers miningpatternsofcomorbidityevolutioninpatientswithmultiplechronicconditionsusingunsupervisedmultileveltemporalbayesiannetwork
AT pughmaryjo miningpatternsofcomorbidityevolutioninpatientswithmultiplechronicconditionsusingunsupervisedmultileveltemporalbayesiannetwork