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Severe acute malnutrition (SAM) affects 16 million children at any one time and is responsible for the deaths of over 500,000 children under 5 years of age each year. Treatment for severe acute malnutrition is based on the Community-based Management of Acute Malnutrition (CMAM) model. The current methods used for detecting high risk children have not prevented 5% mortality observed in regions using this program. The purpose of the study is to provide evidence that objective methods for detecting high risk children can be used to optimize efficiency of Community-based Management of Acute Malnutrition (CMAM) treatment programs and thus improve child health outcomes.
Full description
A prospective observational study in inpatient care within community-based management of acute malnutrition(CMAM) program run by the nongovernmental organization called Alliance for International Medical Action (ALIMA) within the University of Maiduguri Teaching Hospital, Maiduguri, Nigeria
The objectives of the study are to validate the BedsidePEWS scores as a measure of severity of illness in children who are treated as inpatients for severe acute malnutrition and to compare the BedsidePEWS scores with other risk factors associated for mortality and relapse of children with severe acute malnutrition. The design is a prospective observational study of 1000 children admitted as inpatients in a CMAM program in Maidaguri Teaching Hospital in Maidaguri, Nigeria. Data collection (estimated duration 4-5 months) involves vital signs, and risk factor assessment every 12 hours for duration of hospitalization. Blood test for hemoglobin and malaria will be done once upon admission. Outcomes will be measured every 12 hours and include mortality and/or escalation and de-escalation of care. Logistic regression with significance testing will be used to compare BedsidePEWS scores and risk factors between patients and among individual patients within the outcome categories. Exploratory sensitivity analyses will repeat the main logistic regression analyses to evaluate the performance of partial BedsidePEWS score in patients with missing data of 1-3 of the 7 components, by randomly removing 1-3 data elements from the score calculation from patients, and by removing systolic blood pressure from scoring.
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Study amendment for inclusion: children with and without severe acute malnutrition admitted to emergency pediatric unit (EPU)
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Data sourced from clinicaltrials.gov
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