Proposal of a Clinical Decision Tree Algorithm Using Factors Associated with Severe Dengue Infection.

WHO's new classification in 2009: dengue with or without warning signs and severe dengue, has necessitated large numbers of admissions to hospitals of dengue patients which in turn has been imposing a huge economical and physical burden on many hospitals around the globe, particularly South Eas...

Full description

Bibliographic Details
Main Authors: Jayashamani Tamibmaniam, Narwani Hussin, Wee Kooi Cheah, Kee Sing Ng, Prema Muninathan
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4994952?pdf=render
id doaj-fb6dac22daf4438ca5749218f7d880f7
record_format Article
spelling doaj-fb6dac22daf4438ca5749218f7d880f72020-11-25T01:42:18ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01118e016169610.1371/journal.pone.0161696Proposal of a Clinical Decision Tree Algorithm Using Factors Associated with Severe Dengue Infection.Jayashamani TamibmaniamNarwani HussinWee Kooi CheahKee Sing NgPrema MuninathanWHO's new classification in 2009: dengue with or without warning signs and severe dengue, has necessitated large numbers of admissions to hospitals of dengue patients which in turn has been imposing a huge economical and physical burden on many hospitals around the globe, particularly South East Asia and Malaysia where the disease has seen a rapid surge in numbers in recent years. Lack of a simple tool to differentiate mild from life threatening infection has led to unnecessary hospitalization of dengue patients.We conducted a single-centre, retrospective study involving serologically confirmed dengue fever patients, admitted in a single ward, in Hospital Kuala Lumpur, Malaysia. Data was collected for 4 months from February to May 2014. Socio demography, co-morbidity, days of illness before admission, symptoms, warning signs, vital signs and laboratory result were all recorded. Descriptive statistics was tabulated and simple and multiple logistic regression analysis was done to determine significant risk factors associated with severe dengue.657 patients with confirmed dengue were analysed, of which 59 (9.0%) had severe dengue. Overall, the commonest warning sign were vomiting (36.1%) and abdominal pain (32.1%). Previous co-morbid, vomiting, diarrhoea, pleural effusion, low systolic blood pressure, high haematocrit, low albumin and high urea were found as significant risk factors for severe dengue using simple logistic regression. However the significant risk factors for severe dengue with multiple logistic regressions were only vomiting, pleural effusion, and low systolic blood pressure. Using those 3 risk factors, we plotted an algorithm for predicting severe dengue. When compared to the classification of severe dengue based on the WHO criteria, the decision tree algorithm had a sensitivity of 0.81, specificity of 0.54, positive predictive value of 0.16 and negative predictive of 0.96.The decision tree algorithm proposed in this study showed high sensitivity and NPV in predicting patients with severe dengue that may warrant admission. This tool upon further validation study can be used to help clinicians decide on further managing a patient upon first encounter. It also will have a substantial impact on health resources as low risk patients can be managed as outpatients hence reserving the scarce hospital beds and medical resources for other patients in need.http://europepmc.org/articles/PMC4994952?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Jayashamani Tamibmaniam
Narwani Hussin
Wee Kooi Cheah
Kee Sing Ng
Prema Muninathan
spellingShingle Jayashamani Tamibmaniam
Narwani Hussin
Wee Kooi Cheah
Kee Sing Ng
Prema Muninathan
Proposal of a Clinical Decision Tree Algorithm Using Factors Associated with Severe Dengue Infection.
PLoS ONE
author_facet Jayashamani Tamibmaniam
Narwani Hussin
Wee Kooi Cheah
Kee Sing Ng
Prema Muninathan
author_sort Jayashamani Tamibmaniam
title Proposal of a Clinical Decision Tree Algorithm Using Factors Associated with Severe Dengue Infection.
title_short Proposal of a Clinical Decision Tree Algorithm Using Factors Associated with Severe Dengue Infection.
title_full Proposal of a Clinical Decision Tree Algorithm Using Factors Associated with Severe Dengue Infection.
title_fullStr Proposal of a Clinical Decision Tree Algorithm Using Factors Associated with Severe Dengue Infection.
title_full_unstemmed Proposal of a Clinical Decision Tree Algorithm Using Factors Associated with Severe Dengue Infection.
title_sort proposal of a clinical decision tree algorithm using factors associated with severe dengue infection.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description WHO's new classification in 2009: dengue with or without warning signs and severe dengue, has necessitated large numbers of admissions to hospitals of dengue patients which in turn has been imposing a huge economical and physical burden on many hospitals around the globe, particularly South East Asia and Malaysia where the disease has seen a rapid surge in numbers in recent years. Lack of a simple tool to differentiate mild from life threatening infection has led to unnecessary hospitalization of dengue patients.We conducted a single-centre, retrospective study involving serologically confirmed dengue fever patients, admitted in a single ward, in Hospital Kuala Lumpur, Malaysia. Data was collected for 4 months from February to May 2014. Socio demography, co-morbidity, days of illness before admission, symptoms, warning signs, vital signs and laboratory result were all recorded. Descriptive statistics was tabulated and simple and multiple logistic regression analysis was done to determine significant risk factors associated with severe dengue.657 patients with confirmed dengue were analysed, of which 59 (9.0%) had severe dengue. Overall, the commonest warning sign were vomiting (36.1%) and abdominal pain (32.1%). Previous co-morbid, vomiting, diarrhoea, pleural effusion, low systolic blood pressure, high haematocrit, low albumin and high urea were found as significant risk factors for severe dengue using simple logistic regression. However the significant risk factors for severe dengue with multiple logistic regressions were only vomiting, pleural effusion, and low systolic blood pressure. Using those 3 risk factors, we plotted an algorithm for predicting severe dengue. When compared to the classification of severe dengue based on the WHO criteria, the decision tree algorithm had a sensitivity of 0.81, specificity of 0.54, positive predictive value of 0.16 and negative predictive of 0.96.The decision tree algorithm proposed in this study showed high sensitivity and NPV in predicting patients with severe dengue that may warrant admission. This tool upon further validation study can be used to help clinicians decide on further managing a patient upon first encounter. It also will have a substantial impact on health resources as low risk patients can be managed as outpatients hence reserving the scarce hospital beds and medical resources for other patients in need.
url http://europepmc.org/articles/PMC4994952?pdf=render
work_keys_str_mv AT jayashamanitamibmaniam proposalofaclinicaldecisiontreealgorithmusingfactorsassociatedwithseveredengueinfection
AT narwanihussin proposalofaclinicaldecisiontreealgorithmusingfactorsassociatedwithseveredengueinfection
AT weekooicheah proposalofaclinicaldecisiontreealgorithmusingfactorsassociatedwithseveredengueinfection
AT keesingng proposalofaclinicaldecisiontreealgorithmusingfactorsassociatedwithseveredengueinfection
AT premamuninathan proposalofaclinicaldecisiontreealgorithmusingfactorsassociatedwithseveredengueinfection
_version_ 1725037399733436416