利用地区健康社会决定因素调查回复进行预测建模的 R Shiny 应用程序 (SDOH)。

0 HEALTH CARE SCIENCES & SERVICES
Isuru Ratnayake, Sam Pepper, Aliyah Anderson, Alexander Alsup, Dinesh Pal Mudaranthakam
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引用次数: 0

摘要

健康的社会决定因素(SDoH)调查是提供个人和社区健康相关有用信息的数据集。本研究旨在开发一个用户友好型网络应用程序,使临床医生能够利用 SDoH 调查数据,在病人住院就诊前对其社会需求进行预测性洞察,从而提供更好的个性化服务。该研究使用了一项纵向调查,其中包括 108,563 名患者对 12 个问题的回答。问题被设计为二元结果,患者对每个问题的最新回答都通过纳入解释变量进行了独立建模。使用了多种分类和回归技术,包括逻辑回归、贝叶斯广义线性模型、极梯度提升、梯度提升、神经网络和随机森林。根据曲线下面积值,梯度提升模型提供了最高的精度值。最后,这些模型被整合到一个 R Shiny 应用程序中,使用户能够预测和比较 SDoH 对患者生活的影响。该工具由堪萨斯大学医学中心生物统计与数据科学系免费在线托管。该应用程序的辅助材料可在 GitHub 上公开访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An R Shiny Application (SDOH) for Predictive Modeling Using Regional Social Determinants of Health Survey Responses.

Social determinants of health (SDoH) surveys are data sets that provide useful health-related information about individuals and communities. This study aims to develop a user-friendly web application that allows clinicians to get a predictive insight into the social needs of their patients before their in-patient visits using SDoH survey data to provide an improved and personalized service. The study used a longitudinal survey that consisted of 108,563 patient responses to 12 questions. Questions were designed to have a binary outcome as the response and the patient's most recent responses for each of these questions were modeled independently by incorporating explanatory variables. Multiple classification and regression techniques were used, including logistic regression, Bayesian generalized linear model, extreme gradient boosting, gradient boosting, neural networks, and random forests. Based on the area under the curve values, gradient boosting models provided the highest precision values. Finally, the models were incorporated into an R Shiny application, enabling users to predict and compare the impact of SDoH on patients' lives. The tool is freely hosted online by the University of Kansas Medical Center's Department of Biostatistics and Data Science. The supporting materials for the application are publicly accessible on GitHub.

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CiteScore
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