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Multivariate time-series analysis of biomarkers from a dengue cohort offers new approaches for diagnosis and prognosis

  • Baptiste Vasey
  • , Anuraj H. Shankar
  • , Bobby Brooke Herrera
  • , Aniuska Becerra
  • , Kris Xhaja
  • , Marion Echenagucia
  • , Sara R. Machado
  • , Diana Caicedo
  • , John Miller
  • , Paolo Amedeo
  • , Elena N. Naumova
  • , Irene Bosch
  • , Norma Blumenfeld de Bosch
  • University of Oxford
  • E25Bio Inc
  • Harvard University
  • University of Massachusetts Medical School
  • Universidad Central de Venezuela
  • The London School of Economics and Political Science
  • J. Craig Venter Institute
  • Tufts University
  • Icahn School of Medicine at Mount Sinai
  • Massachusetts Institute of Technology

Research output: Contribution to journalArticlepeer-review

9 Scopus citations

Abstract

Dengue is a major public health problem worldwide with distinct clinical manifestations: an acute presentation (dengue fever, DF) similar to other febrile illnesses (OFI) and a more severe, life-threatening form (severe dengue, SD). Due to nonspecific clinical presentation during the early phase of dengue infection, differentiating DF from OFI has remained a chal-lenge, and current methods to determine severity of dengue remain poor early predictors. We present a prospective clinical cohort study conducted in Caracas, Venezuela from 2001–2005, designed to determine whether clinical and hematological parameters could distinguish DF from OFI, and identify early prognostic biomarkers of SD. From 204 enrolled suspected dengue patients, there were 111 confirmed dengue cases. Piecewise mixed effects regression and nonparametric statistics were used to analyze longitudinal records. Decreased serum albumin and fibrinogen along with increased D-dimer, thrombin-anti-thrombin complex, activated partial thromboplastin time and thrombin time were prognostic of SD on the day of defervescence. In the febrile phase, the day-to-day rates of change in serum albumin and fibrinogen concentration, along with platelet counts, were significantly decreased in dengue patients compared to OFI, while the day-to-day rates of change of lym-phocytes (%) and thrombin time were increased. In dengue patients, the absolute lympho-cytes to neutrophils ratio showed specific temporal increase, enabling classification of dengue patients entering the critical phase with an area under the ROC curve of 0.79. Secondary dengue patients had elongation of Thrombin time compared to primary cases while the D-dimer formation (fibrinolysis marker) remained always lower for secondary compared to primary cases. Based on partial analysis of 31 viral complete genomes, a high frequency of C-to-T transitions located at the third codon position was observed, suggesting deamina-tion events with five major hot spots of amino acid polymorphic sites outside in non-structural proteins. No association of severe outcome was statistically significant for any of the five major polymorphic sites found. This study offers an improved understanding of dengue hemostasis and a novel way of approaching dengue diagnosis and disease prognosis using piecewise mixed effect regression modeling. It also suggests that a better discrimination of the day of disease can improve the diagnostic and prognostic classification power of clinical variables using ROC curve analysis. The piecewise mixed effect regression model corroborated key early clinical determinants of disease, and offers a time-series approach for future vaccine and pathogenesis clinical studies.

Original languageEnglish
Article numbere0008199
JournalPLoS Neglected Tropical Diseases
Volume14
Issue number6
DOIs
StatePublished - Jun 2020

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

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