Lola Madrid1,2, Aina Casellas2, Charfudin Sacoor1, Llorenç Quintó2, Antonio Sitoe1, Rosauro Varo1,2, Sozinho Acácio1, Tacilta Nhampossa1, Sergio Massora1, Betuel Sigaúque1, Inacio Mandomando1, Simon Cousens3, Clara Menéndez1,2,4, Pedro Alonso1,2, Eusebio Macete1, Quique Bassat5,2,6,7. 1. Centro de Investigação em Saúde de Manhiça, Maputo, Mozambique. 2. Hospital Clínic de Barcelona, Barcelona Institute for Global Health and Universitat de Barcelona, Barcelona, Spain. 3. Faculty of Epidemiology and Population Health, Department of Infectious Disease Epidemiology, London School of Hygiene and Tropical Medicine, London, United Kingdom. 4. Centro de Investigacion Biomedica en Red (CIBER) de Epidemiología y Salud Pública, Instituto de Salud Carlos III, Madrid, Spain. 5. Centro de Investigação em Saúde de Manhiça, Maputo, Mozambique; quique.bassat@isglobal.org. 6. Institució Catalana de Recerca i Estudis Avançats, Passeig Lluís Companys 23, Barcelona, Spain; and. 7. Pediatric Infectious Diseases Unit, Pediatrics Department, Hospital Sant Joan de Déu and University of Barcelona, Barcelona, Spain.
Abstract
BACKGROUND: Although the burden of postdischarge mortality (PDM) in low-income settings appears to be significant, no clear recommendations have been proposed in relation to follow-up care after hospitalization. We aimed to determine the burden of pediatric PDM and develop predictive models to identify children who are at risk for dying after discharge. METHODS: Deaths after hospital discharge among children aged <15 years in the last 17 years were reviewed in an area under demographic and morbidity surveillance in Southern Mozambique. We determined PDM over time (up to 90 days) and derived predictive models of PDM using easily collected variables on admission. RESULTS: Overall PDM was high (3.6%), with half of the deaths occurring in the first 30 days. One primary predictive model for all ages included young age, moderate or severe malnutrition, a history of diarrhea, clinical pneumonia symptoms, prostration, bacteremia, having a positive HIV status, the rainy season, and transfer or absconding, with an area under the curve of 0.79 (0.75-0.82) at day 90 after discharge. Alternative models for all ages including simplified clinical predictors had a similar performance. A model specific to infants <3 months old was used to identify as predictors being a neonate, having a low weight-for-age z score, having breathing difficulties, having hypothermia or fever, having oral candidiasis, and having a history of absconding or transfer to another hospital, with an area under the curve of 0.76 (0.72-0.91) at day 90 of follow-up. CONCLUSIONS: Death after discharge is an important although poorly recognized contributor to child mortality. A simple predictive algorithm based on easily recognizable variables could readily be used to identify most infants and children who are at a high risk of dying after discharge.
BACKGROUND: Although the burden of postdischarge mortality (PDM) in low-income settings appears to be significant, no clear recommendations have been proposed in relation to follow-up care after hospitalization. We aimed to determine the burden of pediatric PDM and develop predictive models to identify children who are at risk for dying after discharge. METHODS:Deaths after hospital discharge among children aged <15 years in the last 17 years were reviewed in an area under demographic and morbidity surveillance in Southern Mozambique. We determined PDM over time (up to 90 days) and derived predictive models of PDM using easily collected variables on admission. RESULTS: Overall PDM was high (3.6%), with half of the deaths occurring in the first 30 days. One primary predictive model for all ages included young age, moderate or severe malnutrition, a history of diarrhea, clinical pneumonia symptoms, prostration, bacteremia, having a positive HIV status, the rainy season, and transfer or absconding, with an area under the curve of 0.79 (0.75-0.82) at day 90 after discharge. Alternative models for all ages including simplified clinical predictors had a similar performance. A model specific to infants <3 months old was used to identify as predictors being a neonate, having a low weight-for-age z score, having breathing difficulties, having hypothermia or fever, having oral candidiasis, and having a history of absconding or transfer to another hospital, with an area under the curve of 0.76 (0.72-0.91) at day 90 of follow-up. CONCLUSIONS:Death after discharge is an important although poorly recognized contributor to childmortality. A simple predictive algorithm based on easily recognizable variables could readily be used to identify most infants and children who are at a high risk of dying after discharge.
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Authors: Moses M Ngari; Christina Obiero; Martha K Mwangome; Amek Nyaguara; Neema Mturi; Sheila Murunga; Mark Otiende; Per Ole Iversen; Gregory W Fegan; Judd L Walson; James A Berkley Journal: Wellcome Open Res Date: 2021-01-04
Authors: Arjun Chandna; Jennifer Osborn; Quique Bassat; David Bell; Sakib Burza; Valérie D'Acremont; B Leticia Fernandez-Carballo; Kevin C Kain; Mayfong Mayxay; Matthew Wiens; Sabine Dittrich Journal: BMJ Glob Health Date: 2021-07
Authors: Mohammod Jobayer Chisti; Jason B Harris; Ryan W Carroll; K M Shahunja; Abu S M S B Shahid; Peter P Moschovis; Sara R Schenkel; Abu Sayem Mirza Md Hasibur Rahman; Lubaba Shahrin; Tanveer Faruk; Farhad Kabir; Dilruba Ahmed; Tahmeed Ahmed Journal: Open Forum Infect Dis Date: 2021-07-15 Impact factor: 3.835