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    Prediction of dengue disease severity among pediatric Thai patients using early clinical laboratory indicators

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    Authors
    Potts, James A.
    Gibbons, Robert V.
    Rothman, Alan L.
    Srikiatkhachorn, Anon
    Thomas, Stephen J.
    Supradish, Pra-On
    Lemon, Stephenie C.
    Libraty, Daniel H.
    Green, Sharone
    Kalayanarooj, Siripen
    UMass Chan Affiliations
    Department of Medicine, Division of Infectious Diseases and Immunology
    Department of Medicine, Division of Preventive and Behavioral Medicine
    Graduate School of Biomedical Sciences, Clinical and Population Health Research Program
    Center for Infectious Disease and Vaccine Research
    Document Type
    Journal Article
    Publication Date
    2010-08-07
    Keywords
    Adolescent
    Age Factors
    Algorithms
    Aspartate Aminotransferases
    Child
    Child, Preschool
    Cohort Studies
    Dengue
    Dengue Virus
    Female
    Hematocrit
    Humans
    Infant
    Leukocyte Count
    Leukocytes
    Male
    Platelet Count
    Prognosis
    Prospective Studies
    Sensitivity and Specificity
    Severity of Illness Index
    Thailand
    Behavioral Disciplines and Activities
    Behavior and Behavior Mechanisms
    Community Health and Preventive Medicine
    Immunology and Infectious Disease
    Preventive Medicine
    Virus Diseases
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    Abstract
    BACKGROUND: Dengue virus is endemic in tropical and sub-tropical resource-poor countries. Dengue illness can range from a nonspecific febrile illness to a severe disease, Dengue Shock Syndrome (DSS), in which patients develop circulatory failure. Earlier diagnosis of severe dengue illnesses would have a substantial impact on the allocation of health resources in endemic countries. METHODS AND FINDINGS: We compared clinical laboratory findings collected within 72 hours of fever onset from a prospective cohort children presenting to one of two hospitals (one urban and one rural) in Thailand. Classification and regression tree analysis was used to develop diagnostic algorithms using different categories of dengue disease severity to distinguish between patients at elevated risk of developing a severe dengue illness and those at low risk. A diagnostic algorithm using WBC count, percent monocytes, platelet count, and hematocrit achieved 97% sensitivity to identify patients who went on to develop DSS while correctly excluding 48% of non-severe cases. Addition of an indicator of severe plasma leakage to the WHO definition led to 99% sensitivity using WBC count, percent neutrophils, AST, platelet count, and age. CONCLUSIONS: This study identified two easily applicable diagnostic algorithms using early clinical indicators obtained within the first 72 hours of illness onset. The algorithms have high sensitivity to distinguish patients at elevated risk of developing severe dengue illness from patients at low risk, which included patients with mild dengue and other non-dengue febrile illnesses. Although these algorithms need to be validated in other populations, this study highlights the potential usefulness of specific clinical indicators early in illness.
    Source
    PLoS Negl Trop Dis. 2010 Aug 3;4(8):e769. Link to article on publisher's site
    DOI
    10.1371/journal.pntd.0000769
    Permanent Link to this Item
    http://hdl.handle.net/20.500.14038/44750
    PubMed ID
    20689812
    Related Resources
    Link to Article in PubMed
    ae974a485f413a2113503eed53cd6c53
    10.1371/journal.pntd.0000769
    Scopus Count
    Collections
    Morningside Graduate School of Biomedical Sciences Scholarly Publications
    Population and Quantitative Health Sciences Publications

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