Department of Diagnostic Imaging, The Hospital for Sick Children (SickKids), Toronto, ON, Canada.
Institute of Medical Science, University of Toronto, Toronto, ON, Canada.
Front Public Health. 2023 Feb 24;11:968319. doi: 10.3389/fpubh.2023.968319. eCollection 2023.
In this work, we examine magnetic resonance imaging (MRI) and ultrasound (US) appointments at the Diagnostic Imaging (DI) department of a pediatric hospital to discover possible relationships between selected patient features and no-show or long waiting room time endpoints. The chosen features include age, sex, income, distance from the hospital, percentage of non-English speakers in a postal code, percentage of single caregivers in a postal code, appointment time slot (morning, afternoon, evening), and day of the week (Monday to Sunday). We trained univariate Logistic Regression (LR) models using the training sets and identified predictive (significant) features that remained significant in the test sets. We also implemented multivariate Random Forest (RF) models to predict the endpoints. We achieved Area Under the Receiver Operating Characteristic Curve (AUC) of 0.82 and 0.73 for predicting no-show and long waiting room time endpoints, respectively. The univariate LR analysis on DI appointments uncovered the effect of the time of appointment during the day/week, and patients' demographics such as income and the number of caregivers on the no-shows and long waiting room time endpoints. For predicting no-show, we found age, time slot, and percentage of single caregiver to be the most critical contributors. Age, distance, and percentage of non-English speakers were the most important features for our long waiting room time prediction models. We found no sex discrimination among the scheduled pediatric DI appointments. Nonetheless, inequities based on patient features such as low income and language barrier did exist.
在这项工作中,我们检查了一家儿童医院诊断影像(DI)部门的磁共振成像(MRI)和超声(US)预约情况,以发现选定的患者特征与未出现或在候诊室等待时间过长之间的可能关系。所选特征包括年龄、性别、收入、与医院的距离、邮政编码中非英语使用者的百分比、邮政编码中单亲照顾者的百分比、预约时间段(上午、下午、晚上)以及一周中的天数(周一至周日)。我们使用训练集训练了单变量逻辑回归(LR)模型,并确定了在测试集中仍然显著的预测(显著)特征。我们还实施了多变量随机森林(RF)模型来预测端点。我们实现了预测无预约和长候诊室时间端点的接收器操作特征曲线下面积(AUC)分别为 0.82 和 0.73。DI 预约的单变量 LR 分析揭示了一天/一周中预约时间以及患者收入和照顾者人数等人口统计学特征对未出现和长候诊室时间端点的影响。对于预测无预约,我们发现年龄、时段和单亲照顾者的百分比是最重要的贡献者。对于我们的长候诊室时间预测模型,年龄、距离和非英语使用者的百分比是最重要的特征。我们发现计划中的儿科 DI 预约中没有性别歧视。尽管如此,基于低收入和语言障碍等患者特征的不平等确实存在。