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Derivation of the first clinical diagnostic models for dehydration severity in patients over five years with acute diarrhea

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  • Adam C Levine
  • Meagan A Barry
  • Monique Gainey
  • Sabiha Nasrin
  • Kexin Qu
  • Christopher H Schmid
  • Eric J Nelson
  • Stephanie C Garbern
  • Mahmuda Monjory
  • Rochelle Rosen
  • Nur H Alam

Abstract

Diarrheal diseases lead to an estimated 1.3 million deaths each year, with the majority of those deaths occurring in patients over five years of age. As the severity of diarrheal disease can vary widely, accurately assessing dehydration status remains the most critical step in acute diarrhea management. The objective of this study is to empirically derive clinical diagnostic models for assessing dehydration severity in patients over five years with acute diarrhea in low resource settings. We enrolled a random sample of patients over five years with acute diarrhea presenting to the icddr,b Dhaka Hospital. Two blinded nurses independently assessed patients for symptoms/signs of dehydration on arrival. Afterward, consecutive weights were obtained to determine the percent weight change with rehydration, our criterion standard for dehydration severity. Full and simplified ordinal logistic regression models were derived to predict the outcome of none ( 9%) dehydration. The reliability and accuracy of each model were assessed. Bootstrapping was used to correct for over-optimism and compare each model’s performance to the current World Health Organization (WHO) algorithm. 2,172 patients were enrolled, of which 2,139 (98.5%) had complete data for analysis. The Inter-Class Correlation Coefficient (reliability) was 0.90 (95% CI = 0.87, 0.91) for the full model and 0.82 (95% CI = 0.77, 0.86) for the simplified model. The area under the Receiver-Operator Characteristic curve (accuracy) for severe dehydration was 0.79 (95% CI: 0.76–0.82) for the full model and 0.73 (95% CI: 0.70, 0.76) for the simplified model. The accuracy for both the full and simplified models were significantly better than the WHO algorithm (p

Suggested Citation

  • Adam C Levine & Meagan A Barry & Monique Gainey & Sabiha Nasrin & Kexin Qu & Christopher H Schmid & Eric J Nelson & Stephanie C Garbern & Mahmuda Monjory & Rochelle Rosen & Nur H Alam, 2021. "Derivation of the first clinical diagnostic models for dehydration severity in patients over five years with acute diarrhea," PLOS Neglected Tropical Diseases, Public Library of Science, vol. 15(3), pages 1-19, March.
  • Handle: RePEc:plo:pntd00:0009266
    DOI: 10.1371/journal.pntd.0009266
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