An Interoperable Machine Learning Pipeline for Pediatric Obesity Risk Estimation.

Hamed Fayyaz, Mehak Gupta, Alejandra Perez Ramirez, Claudine Jurkovitz, H Timothy Bunnell, Thao-Ly T Phan, Rahmatollah Beheshti
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Abstract

Reliable prediction of pediatric obesity can offer a valuable resource to providers, helping them engage in timely preventive interventions before the disease is established. Many efforts have been made to develop ML-based predictive models of obesity, and some studies have reported high predictive performances. However, no commonly used clinical decision support tool based on existing ML models currently exists. This study presents a novel end-to-end pipeline specifically designed for pediatric obesity prediction, which supports the entire process of data extraction, inference, and communication via an API or a user interface. While focusing only on routinely recorded data in pediatric electronic health records (EHRs), our pipeline uses a diverse expert-curated list of medical concepts to predict the 1-3 years risk of developing obesity. Furthermore, by using the Fast Healthcare Interoperability Resources (FHIR) standard in our design procedure, we specifically target facilitating low-effort integration of our pipeline with different EHR systems. In our experiments, we report the effectiveness of the predictive model as well as its alignment with the feedback from various stakeholders, including ML scientists, providers, health IT personnel, health administration representatives, and patient group representatives.

儿童肥胖风险评估的可互操作机器学习管道。
对儿童肥胖的可靠预测可以为提供者提供宝贵的资源,帮助他们在疾病确定之前及时进行预防干预。基于机器学习的肥胖预测模型的开发已经取得了很多成果,一些研究报告了较高的预测效果。然而,目前还没有基于现有ML模型的常用临床决策支持工具。本研究提出了一种专门为儿童肥胖预测设计的新型端到端管道,该管道支持通过API或用户界面进行数据提取、推理和通信的整个过程。虽然只关注儿科电子健康记录(EHRs)中的常规记录数据,但我们的产品线使用多种专家策划的医学概念列表来预测1-3年的肥胖风险。此外,通过在我们的设计过程中使用快速医疗保健互操作性资源(FHIR)标准,我们的目标是促进我们的管道与不同EHR系统的低工作量集成。在我们的实验中,我们报告了预测模型的有效性,以及它与各种利益相关者(包括ML科学家、提供者、卫生IT人员、卫生管理代表和患者组代表)的反馈的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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