Reliable prediction of childhood obesity using only routinely collected EHRs may be possible

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Abstract

Background

Early identification of children at high risk of obesity can provide clinicians with the information needed to provide targeted lifestyle counseling to high-risk children at a critical time to change the disease course.

Objectives

This study aimed to develop predictive models of childhood obesity, applying advanced machine learning methods to a large unaugmented electronic health record (EHR) dataset. This work improves on other studies that have (i) relied on data not routinely available in EHRs (like prenatal data), (ii) focused on single-age predictions, or (iii) not been rigorously validated.

Methods

A customized sequential deep-learning model to predict the development of obesity was built, using EHR data from 36,191 diverse children aged 0–10 years. The model was evaluated using extensive discrimination, calibration, and utility analysis; and was validated temporally, geographically, and across various subgroups.

Results

Our results are mostly better or comparable to similar studies. Specifically, the model achieved an AUROC above 0.8 in all cases (with most cases around 0.9) for predicting obesity within the next 3 years for children 2–7 years of age. Validation results show the model's robustness and top predictors match important risk factors of obesity.

Conclusions

Our model can predict the risk of obesity for young children at multiple time points using only routinely collected EHR data, greatly facilitating its integration into clinical care. Our model can be used as an objective screening tool to provide clinicians with insights into a patient's risk for developing obesity so that early lifestyle counseling can be provided to prevent future obesity in young children.

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仅使用常规收集的电子病历就能可靠预测儿童肥胖症
背景早期识别肥胖高风险儿童可为临床医生提供所需的信息,以便在改变病程的关键时刻为高风险儿童提供有针对性的生活方式咨询。目标本研究旨在开发儿童肥胖预测模型,将先进的机器学习方法应用于大型未增强电子健康记录(EHR)数据集。这项工作改进了其他研究,这些研究(i)依赖于电子病历中未常规提供的数据(如产前数据),(ii)侧重于单一年龄段的预测,或(iii)未经过严格验证。方法利用来自36191名0-10岁不同儿童的电子病历数据,建立了一个预测肥胖发展的定制序列深度学习模型。通过广泛的辨别、校准和效用分析对模型进行了评估,并在时间、地域和不同亚群中进行了验证。具体来说,该模型在预测 2-7 岁儿童未来 3 年内的肥胖情况时,AUROC 全部高于 0.8(大部分在 0.9 左右)。验证结果表明,该模型具有稳健性,且顶级预测因子与肥胖的重要风险因素相匹配。结论我们的模型只需使用日常收集的电子病历数据,就能预测幼儿在多个时间点的肥胖风险,极大地促进了该模型与临床护理的整合。我们的模型可作为一种客观的筛查工具,让临床医生了解患者患肥胖症的风险,从而提供早期生活方式咨询,预防幼儿未来患肥胖症。
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