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The value of daily platelet counts for predicting dengue shock syndrome: Results from a prospective observational study of 2301 Vietnamese children with dengue

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  • Phung Khanh Lam
  • Tran Van Ngoc
  • Truong Thi Thu Thuy
  • Nguyen Thi Hong Van
  • Tran Thi Nhu Thuy
  • Dong Thi Hoai Tam
  • Nguyen Minh Dung
  • Nguyen Thi Hanh Tien
  • Nguyen Tan Thanh Kieu
  • Cameron Simmons
  • Bridget Wills
  • Marcel Wolbers

Abstract

Background: Dengue is the most important mosquito-borne viral infection to affect humans. Although it usually manifests as a self-limited febrile illness, complications may occur as the fever subsides. A systemic vascular leak syndrome that sometimes progresses to life-threatening hypovolaemic shock is the most serious complication seen in children, typically accompanied by haemoconcentration and thrombocytopenia. Robust evidence on risk factors, especially features present early in the illness course, for progression to dengue shock syndrome (DSS) is lacking. Moreover, the potential value of incorporating serial haematocrit and platelet measurements in prediction models has never been assessed. Methodology/Principal findings: We analyzed data from a prospective observational study of Vietnamese children aged 5–15 years admitted with clinically suspected dengue to the Hospital for Tropical Diseases in Ho Chi Minh City between 2001 and 2009. The analysis population comprised all children with laboratory-confirmed dengue enrolled between days 1–4 of illness. Logistic regression was the main statistical model for all univariate and multivariable analyses. The prognostic value of daily haematocrit levels and platelet counts were assessed using graphs and separate regression models fitted on each day of illness. Among the 2301 children included in the analysis, 143 (6%) progressed to DSS. Significant baseline risk factors for DSS included a history of vomiting, higher temperature, a palpable liver, and a lower platelet count. Prediction models that included serial daily platelet counts demonstrated better ability to discriminate patients who developed DSS from others, than models based on enrolment information only. However inclusion of daily haematocrit values did not improve prediction of DSS. Conclusions/Significance: Daily monitoring of platelet counts is important to help identify patients at high risk of DSS. Development of dynamic prediction models that incorporate signs, symptoms, and daily laboratory measurements, could improve DSS prediction and thereby reduce the burden on health services in endemic areas. Author summary: Dengue is a very common, potentially serious, mosquito-borne viral infection. The spectrum of clinical disease is broad. Dengue shock syndrome (DSS), seen primarily in children, is the most serious life-threatening manifestation. Early identification of children presenting with dengue who are likely to develop DSS could improve triage and resource allocation in endemic areas. This study, based on data from 2301 Vietnamese children hospitalized with dengue, aimed to assess the value of readily available clinical and laboratory markers, especially platelet counts and haematocrit levels, in predicting DSS. In addition to risk factors present at the first assessment within 1–4 days from fever onset (vomiting, higher temperature, palpable liver, lower platelet count), we showed that serial daily platelet counts provide useful additional information to identify at an early stage children who are likely to develop shock. Although absolute platelet values were already known to be important, this is the first study to confirm the usefulness of sequential daily platelet counts. It also provides proof of concept for the value of incorporating serial laboratory and clinical signs into future dynamic prognostic models to allow for earlier identification and better management of children at risk of DSS.

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  • Phung Khanh Lam & Tran Van Ngoc & Truong Thi Thu Thuy & Nguyen Thi Hong Van & Tran Thi Nhu Thuy & Dong Thi Hoai Tam & Nguyen Minh Dung & Nguyen Thi Hanh Tien & Nguyen Tan Thanh Kieu & Cameron Simmons , 2017. "The value of daily platelet counts for predicting dengue shock syndrome: Results from a prospective observational study of 2301 Vietnamese children with dengue," PLOS Neglected Tropical Diseases, Public Library of Science, vol. 11(4), pages 1-20, April.
  • Handle: RePEc:plo:pntd00:0005498
    DOI: 10.1371/journal.pntd.0005498
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    1. Tran Quang Thach & Heba Gamal Eisa & AlMotsim Ben Hmeda & Hazem Faraj & Tieu Minh Thuan & Manal Mahmoud Abdelrahman & Mario Gerges Awadallah & Ha Xuan Nam & Michael Noeske & Jeza Muhamad Abdul Aziz & , 2021. "Predictive markers for the early prognosis of dengue severity: A systematic review and meta-analysis," PLOS Neglected Tropical Diseases, Public Library of Science, vol. 15(10), pages 1-25, October.
    2. Sangshin Park & Anon Srikiatkhachorn & Siripen Kalayanarooj & Louis Macareo & Sharone Green & Jennifer F Friedman & Alan L Rothman, 2018. "Use of structural equation models to predict dengue illness phenotype," PLOS Neglected Tropical Diseases, Public Library of Science, vol. 12(10), pages 1-14, October.

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