TY - JOUR
T1 - Clinical symptoms of dengue infection among patients from a non-endemic area and potential for a predictive model
T2 - A multiple logistic regression analysis and decision tree
AU - Khosavanna, Ruchira R.
AU - Kareko, Bettie W.
AU - Brady, Adam C.
AU - Booty, Brian L.
AU - Nix, Chad D.
AU - Lyski, Zoe L.
AU - Curlin, Marcel D.
AU - Messer, William B.
N1 - Funding Information:
Financial support: This work was supported by federal funds from OHSU Global (R. R. K.), the National Institute of Allergy and Infectious Diseases R21 AI135537-01 (W. B. M.) and the National Center for Advancing Translational Science CTSA UL1 TR000128, Oregon Clinical and Translational Research Institute (W. B. M.), Takeda Vaccines IISR 2016–101586 (Messer), and the Sunlin and Priscilla Chou Foundation (W. B. M.).
Funding Information:
We would like to thank our colleagues from Siriraj Hospital, Mahidol University, for sharing their pearls of wisdom with us during the course of this research. We are grateful to Dumrong Mairiang, Panisadee Avirutnan, and Prida Malasit, who provided insight and expertise that greatly assisted the study, although they may not agree with all of the interpretations/conclusions of this article. We would like to thank Justin Denny and OHSU Global for making this research opportunity possible.
Publisher Copyright:
© 2021 American Society of Tropical Medicine and Hygiene. All rights reserved.
PY - 2021/1/6
Y1 - 2021/1/6
N2 - Under-recognition of dengue infection may lead to increased morbidity and mortality, whereas early detection is shown to help improve patient outcomes. Recent incidence and outbreak reports of dengue virus in the United States and other temperate regions where dengue was not typically seen have raised concerns regarding appropriate diagnosis and management by healthcare providers unfamiliar with the disease. This study aimed to describe self-reported clinical symptoms of dengue fever in a non-endemic cohort and to establish a clinically useful predictive algorithm based on presenting features that can assist in the early evaluation of potential dengue infection. Volunteers who experienced febrile illness while traveling in dengue-endemic countries were recruited for this study. History of illness and blood samples were collected at enrollment. Participants were classified as dengue naive or dengue exposed based on neutralizing antibody titers. Statistical analysis was performed to compare characteristics between the two groups. A regression model including joint/muscle/bone pain, rash, dyspnea, and rhinorrhea predicts dengue infection with 78% sensitivity, 63% specificity, 80% positive predictive value, and 61% negative predictive value. A decision tree model including joint/muscle/bone pain, dyspnea, and rash yields 77% sensitivity and 67% specificity. Diagnosis of dengue fever is challenging because of the nonspecific nature of clinical presentation. A sensitive predicting model can be helpful to triage suspected dengue infection in the non-endemic setting, but specificity requires additional testing including laboratory evaluation.
AB - Under-recognition of dengue infection may lead to increased morbidity and mortality, whereas early detection is shown to help improve patient outcomes. Recent incidence and outbreak reports of dengue virus in the United States and other temperate regions where dengue was not typically seen have raised concerns regarding appropriate diagnosis and management by healthcare providers unfamiliar with the disease. This study aimed to describe self-reported clinical symptoms of dengue fever in a non-endemic cohort and to establish a clinically useful predictive algorithm based on presenting features that can assist in the early evaluation of potential dengue infection. Volunteers who experienced febrile illness while traveling in dengue-endemic countries were recruited for this study. History of illness and blood samples were collected at enrollment. Participants were classified as dengue naive or dengue exposed based on neutralizing antibody titers. Statistical analysis was performed to compare characteristics between the two groups. A regression model including joint/muscle/bone pain, rash, dyspnea, and rhinorrhea predicts dengue infection with 78% sensitivity, 63% specificity, 80% positive predictive value, and 61% negative predictive value. A decision tree model including joint/muscle/bone pain, dyspnea, and rash yields 77% sensitivity and 67% specificity. Diagnosis of dengue fever is challenging because of the nonspecific nature of clinical presentation. A sensitive predicting model can be helpful to triage suspected dengue infection in the non-endemic setting, but specificity requires additional testing including laboratory evaluation.
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U2 - 10.4269/AJTMH.20-0192
DO - 10.4269/AJTMH.20-0192
M3 - Article
C2 - 33200724
AN - SCOPUS:85099747718
SN - 0002-9637
VL - 104
SP - 121
EP - 129
JO - American Journal of Tropical Medicine and Hygiene
JF - American Journal of Tropical Medicine and Hygiene
IS - 1
ER -