Patterns of signs, symptoms, and laboratory values associated with Zika, dengue, and undefined acute illnesses in a dengue endemic region: Secondary analysis of a prospective cohort study in southern Mexico

https://doi.org/10.1016/j.ijid.2020.06.071Get rights and content
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Highlights

  • This was a prospective observational study of clinical characteristics of Zika, dengue, and undefined acute illnesses.

  • Clinical characteristics are not predictive of Zika, dengue, or undefined acute illnesses.

  • Low platelets are associated with dengue.

Abstract

Objectives

Dengue and Zika infections cause illnesses with overlapping clinical manifestations. The aim of this study was to explore the association of each of these infections with single or grouped clinical and laboratory parameters.

Methods

Clinical and laboratory data were collected prospectively from a cohort of patients seeking care for symptoms meeting the Pan American Health Organization’s modified case-definition criteria for probable Zika virus infection. Zika and dengue were diagnosed with RT-PCR. The relationship of clinical characteristics and laboratory data with Zika, dengue, and undefined acute illness (UAI) was examined.

Results

In the univariate models, localized rash and maculopapular exanthema were associated with Zika infection. Generalized rash, petechiae, and petechial purpuric rash were associated with dengue. Cough and confusion/disorientation were associated with UAI. Platelets were significantly lower in the dengue group. A conditional inference tree model showed poor sensitivity and positive predictive value for individual viral diagnoses.

Conclusions

Clusters of signs, symptoms, and laboratory values evaluated in this study could not consistently differentiate Zika or dengue cases from UAI in the clinical setting at the individual patient level. We identified symptoms that are important to Zika and dengue in the univariate analyses, but predictive models were unreliable. Low platelet count was a distinctive feature of dengue.

Keywords

Arbovirus infections
Signs
Symptoms
Laboratory values
Diagnosis

Cited by (0)

This study has been registered at ClinicalTrials.gov (NCT02831699).

1

Investigators in the LaRed Zik01 Study Team are listed in the Acknowledgments.