Characterization of clinical patterns of dengue patients using an unsupervised machine learning approach

Abstract Background Despite the greater sensitivity of the new dengue clinical classification proposed by the World Health Organization (WHO) in 2009, there is a need for a better definition of warning signs and clinical progression of dengue cases. Classic statistical methods have been used to eval...

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Main Authors: Gleicy Macedo Hair, Flávio Fonseca Nobre, Patrícia Brasil
Format: Article
Language:English
Published: BMC 2019-07-01
Series:BMC Infectious Diseases
Subjects:
Age
Online Access:http://link.springer.com/article/10.1186/s12879-019-4282-y
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spelling doaj-f8849847a8794c11bcd9eb1b4f4bacb72020-11-25T03:44:11ZengBMCBMC Infectious Diseases1471-23342019-07-0119111110.1186/s12879-019-4282-yCharacterization of clinical patterns of dengue patients using an unsupervised machine learning approachGleicy Macedo Hair0Flávio Fonseca Nobre1Patrícia Brasil2Laboratório de Engenharia em Sistemas de Saúde, Programa de Engenharia Biomédica/COPPE/UFRJ, Centro de Tecnologia - Bloco H - Sala H327Laboratório de Engenharia em Sistemas de Saúde, Programa de Engenharia Biomédica/COPPE/UFRJ, Centro de Tecnologia - Bloco H - Sala H327Acute Febrile Illnesses Laboratory, Evandro Chagas National Institute of Infectious Diseases; Oswaldo Cruz Foundation (Fiocruz)Abstract Background Despite the greater sensitivity of the new dengue clinical classification proposed by the World Health Organization (WHO) in 2009, there is a need for a better definition of warning signs and clinical progression of dengue cases. Classic statistical methods have been used to evaluate risk criteria in dengue patients, however they usually cannot access the complexity of dengue clinical profiles. We propose the use of machine learning as an alternative tool to identify the possible characteristics that could be used to develop a risk criterion for severity in dengue patients. Method In this study, we analyzed the clinical profiles of 523 confirmed dengue cases using self-organizing maps (SOM) and random forest algorithms to identify clusters of patients with similar patterns. Results We identified four natural clusters, two with features of dengue without warning signs or mild disease, one that comprises the severe dengue cases and high frequency of warning signs, and another with intermediate characteristics. Age appeared as the key variable for splitting the data into these four clusters although warning signs such as abdominal pain or tenderness, clinical fluid accumulation, mucosal bleeding, lethargy, restlessness, liver enlargement and increased hematocrit associated with a decrease in platelet counts should also be considered to evaluate severity in dengue patients. Conclusions These findings suggest that age must be the first characteristic to be considered in places where dengue is hyperendemic. Our results show that warning signs should be closely monitored, mainly in children. Further studies exploring these results in a longitudinal approach may help to understand the full spectrum of dengue clinical manifestations.http://link.springer.com/article/10.1186/s12879-019-4282-yDengueAgeClinical classificationWarning signsMachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Gleicy Macedo Hair
Flávio Fonseca Nobre
Patrícia Brasil
spellingShingle Gleicy Macedo Hair
Flávio Fonseca Nobre
Patrícia Brasil
Characterization of clinical patterns of dengue patients using an unsupervised machine learning approach
BMC Infectious Diseases
Dengue
Age
Clinical classification
Warning signs
Machine learning
author_facet Gleicy Macedo Hair
Flávio Fonseca Nobre
Patrícia Brasil
author_sort Gleicy Macedo Hair
title Characterization of clinical patterns of dengue patients using an unsupervised machine learning approach
title_short Characterization of clinical patterns of dengue patients using an unsupervised machine learning approach
title_full Characterization of clinical patterns of dengue patients using an unsupervised machine learning approach
title_fullStr Characterization of clinical patterns of dengue patients using an unsupervised machine learning approach
title_full_unstemmed Characterization of clinical patterns of dengue patients using an unsupervised machine learning approach
title_sort characterization of clinical patterns of dengue patients using an unsupervised machine learning approach
publisher BMC
series BMC Infectious Diseases
issn 1471-2334
publishDate 2019-07-01
description Abstract Background Despite the greater sensitivity of the new dengue clinical classification proposed by the World Health Organization (WHO) in 2009, there is a need for a better definition of warning signs and clinical progression of dengue cases. Classic statistical methods have been used to evaluate risk criteria in dengue patients, however they usually cannot access the complexity of dengue clinical profiles. We propose the use of machine learning as an alternative tool to identify the possible characteristics that could be used to develop a risk criterion for severity in dengue patients. Method In this study, we analyzed the clinical profiles of 523 confirmed dengue cases using self-organizing maps (SOM) and random forest algorithms to identify clusters of patients with similar patterns. Results We identified four natural clusters, two with features of dengue without warning signs or mild disease, one that comprises the severe dengue cases and high frequency of warning signs, and another with intermediate characteristics. Age appeared as the key variable for splitting the data into these four clusters although warning signs such as abdominal pain or tenderness, clinical fluid accumulation, mucosal bleeding, lethargy, restlessness, liver enlargement and increased hematocrit associated with a decrease in platelet counts should also be considered to evaluate severity in dengue patients. Conclusions These findings suggest that age must be the first characteristic to be considered in places where dengue is hyperendemic. Our results show that warning signs should be closely monitored, mainly in children. Further studies exploring these results in a longitudinal approach may help to understand the full spectrum of dengue clinical manifestations.
topic Dengue
Age
Clinical classification
Warning signs
Machine learning
url http://link.springer.com/article/10.1186/s12879-019-4282-y
work_keys_str_mv AT gleicymacedohair characterizationofclinicalpatternsofdenguepatientsusinganunsupervisedmachinelearningapproach
AT flaviofonsecanobre characterizationofclinicalpatternsofdenguepatientsusinganunsupervisedmachinelearningapproach
AT patriciabrasil characterizationofclinicalpatternsofdenguepatientsusinganunsupervisedmachinelearningapproach
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