Department of Human Nutrition, Faculty of Health Sciences, University of Pretoria, Pretoria, South Africa.
Research Centre for Maternal, Fetal, Newborn & Child Health Care Strategies, University of Pretoria, Pretoria, South Africa.
Matern Child Nutr. 2022 Jul;18(3):e13364. doi: 10.1111/mcn.13364. Epub 2022 May 19.
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 receiver-operating 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.
体重与年龄(WFA)增长迟缓通常先于儿童严重急性营养不良(SAM),但在常规生长监测中常常被忽视。电子健康记录中 WFA 生长的自动解读可以加快识别有 SAM 风险的儿童。本研究旨在开发一种自动筛查工具,从 WFA 生长预测 SAM 风险,并确定其与体重或 WFA z 评分的简单变化相比的预测能力。为了开发筛查工具,南非儿童生长专家(n=30)对 100 个 WFA 生长曲线进行了 SAM 风险评分,然后使用人工神经网络(ANN)对连续的 WFA z 评分评估 SAM 风险。使用诊断准确性方法在 185 名五岁以下儿童(63 例 SAM 病例;122 例对照)中验证了 ANN。将 ANN 的性能与体重或 WFA z 评分的变化进行了比较。尽管专家对 WFA 生长曲线的 SAM 风险评分差异很大,但 ANN 在验证真实病例时的灵敏度为 73.0%(95%置信区间[CI]:60.3%;83.4%),特异性为 86.1%(95% CI:78.6%;91.7%),接受者操作特征曲线下面积为 0.795(95% CI:0.732%;0.859%),优于体重或 WFA z 评分的变化。作为一种自动筛查工具,ANN 可以使用常规收集的 WFA 生长信息,显著提高对 SAM 风险儿童的识别。