A novel screening tool to predict severe acute malnutrition through automated monitoring of weight-for-age growth curves
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Date
Authors
Nel, Sanja
Feucht, Ute Dagmar
Nel, Andre L.
Becker, Piet J.
Wenhold, Friedeburg Anna Maria
Journal Title
Journal ISSN
Volume Title
Publisher
Wiley Open Access
Abstract
Weight‐for‐age (WFA) growth faltering often precedes severe acute malnutrition
(SAM) in children, yet it is often missed during routine growth
monitoring. Automated interpretation of WFA growth within electronic health
records could expedite the identification of children at risk of SAM. This study
aimed to develop an automated screening tool to predict SAM risk from WFA
growth, and to determine its predictive ability compared with simple changes in
weight or WFA z‐score. To develop the screening tool, South African child
growth experts (n = 30) rated SAM risk on 100 WFA growth curves, which were
then used to train an artificial neural network (ANN) to assess SAM risk from
consecutive WFA z‐scores. The ANN was validated in 185 children under five
(63 SAM cases; 122 controls) using diagnostic accuracy methodology. The
ANN's performance was compared with that of changes in weight or WFA
z‐score. Even though experts' SAM risk ratings of the WFA growth curves
differed considerably, the ANN achieved a sensitivity of 73.0% (95% confidence
interval [CI]: 60.3; 83.4), specificity of 86.1% (95% CI: 78.6; 91.7) and receiveroperating
characteristic curve area of 0.795 (95% CI: 0.732; 0.859) during
validation with real cases, outperforming changes in weight or WFA z‐scores.
The ANN, as an automated screening tool, could markedly improve the identification of children at risk of SAM using routinely collected WFA growth
information.
Description
DATA AVAILABILITY STATEMENT : Data are available from the authors on request.
Keywords
Child growth monitoring, Computer, Electronic health records, Failure to thrive, Neural networks, Nutrition screening, Artificial intelligence (AI), Weight‐for‐age (WFA), Severe acute malnutrition (SAM), Artificial neural network (ANN), SDG-03: Good health and well-being, SDG-02: Zero hunger
Sustainable Development Goals
SDG-02:Zero Hunger
SDG-03:Good heatlh and well-being
SDG-03:Good heatlh and well-being
Citation
Nel, S., Feucht, U.D., Nel, A.L., Becker, P.J., & Wenhold, F.A.M. (2022). A novel screening tool to predict severe acute malnutrition through automated monitoring of weight‐for‐age growth curves. Maternal & Child Nutrition, 18, e13364. https://DOI.org/10.1111/mcn.13364.