Predicting food insecurity in a pediatric population using the electronic health record.

IF 2.1 Q3 MEDICINE, RESEARCH & EXPERIMENTAL Journal of Clinical and Translational Science Pub Date : 2024-10-28 eCollection Date: 2024-01-01 DOI:10.1017/cts.2024.645
Joseph Rigdon, Kimberly Montez, Deepak Palakshappa, Callie Brown, Stephen M Downs, Laurie W Albertini, Alysha Taxter
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Abstract

Introduction: More than 5 million children in the United States experience food insecurity (FI), yet little guidance exists regarding screening for FI. A prediction model of FI could be useful for healthcare systems and practices working to identify and address children with FI. Our objective was to predict FI using demographic, geographic, medical, and historic unmet health-related social needs data available within most electronic health records.

Methods: This was a retrospective longitudinal cohort study of children evaluated in an academic pediatric primary care clinic and screened at least once for FI between January 2017 and August 2021. American Community Survey Data provided additional insight into neighborhood-level information such as home ownership and poverty level. Household FI was screened using two validated questions. Various combinations of predictor variables and modeling approaches, including logistic regression, random forest, and gradient-boosted machine, were used to build and validate prediction models.

Results: A total of 25,214 encounters from 8521 unique patients were included, with FI present in 3820 (15%) encounters. Logistic regression with a 12-month look-back using census block group neighborhood variables showed the best performance in the test set (C-statistic 0.70, positive predictive value 0.92), had superior C-statistics to both random forest (0.65, p < 0.01) and gradient boosted machine (0.68, p = 0.01), and showed the best calibration. Results were nearly unchanged when coding missing data as a category.

Conclusions: Although our models could predict FI, further work is needed to develop a more robust prediction model for pediatric FI.

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利用电子健康记录预测儿科人群的粮食不安全状况。
导读:在美国,有超过500万的儿童经历过食物不安全(FI),但关于FI筛查的指导很少。FI的预测模型可用于医疗保健系统和实践工作,以识别和处理FI儿童。我们的目标是利用大多数电子健康记录中可获得的人口统计、地理、医学和历史上未满足的健康相关社会需求数据来预测FI。方法:这是一项回顾性纵向队列研究,儿童在学术儿科初级保健诊所评估,并在2017年1月至2021年8月期间至少筛查一次FI。美国社区调查数据(American Community Survey Data)提供了更多关于房屋所有权和贫困水平等社区层面信息的见解。家庭FI使用两个验证问题进行筛选。预测变量和建模方法的各种组合,包括逻辑回归、随机森林和梯度增强机,用于建立和验证预测模型。结果:8521例独特患者共25214例就诊,其中3820例(15%)就诊中存在FI。采用人口普查块组邻域变量的12个月回顾Logistic回归在检验集中表现最佳(c -统计量0.70,阳性预测值0.92),c -统计量优于随机森林(0.65,p < 0.01)和梯度增强机(0.68,p = 0.01),具有最佳校准效果。当将缺失数据编码为一个类别时,结果几乎没有变化。结论:虽然我们的模型可以预测FI,但需要进一步的工作来建立一个更可靠的儿科FI预测模型。
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来源期刊
Journal of Clinical and Translational Science
Journal of Clinical and Translational Science MEDICINE, RESEARCH & EXPERIMENTAL-
CiteScore
2.80
自引率
26.90%
发文量
437
审稿时长
18 weeks
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