患者的协同因素推动了近期儿科紧急护理需求的增长。

PLOS digital health Pub Date : 2024-08-22 eCollection Date: 2024-08-01 DOI:10.1371/journal.pdig.0000572
Emily Lehan, Peyton Briand, Eileen O'Brien, Aleena Amjad Hafeez, Daniel J Mulder
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引用次数: 0

摘要

目的我们旨在利用高保真紧急护理患者数据来模拟导致当地儿科紧急护理中心需求增加的因素:这项回顾性队列研究的数据集来自当地医疗保健中心 2006 年至 2022 年的全国儿科急诊就诊报告数据。分析的变量包括:患者基本人口统计学特征、主诉、分诊紧急程度、登记/出院日期和时间、出院诊断和出院目的地。对非线性趋势的统计分析通过局部估计的散点图平滑样条进行总结。在机器学习方面,我们使用了 tidymodels R 软件包。使用 k = 5 的 k 倍交叉验证对模型进行训练验证。我们使用单变量线性回归作为基线模型。数据标准化后,对所有参数排列之间的相关性和同方差性进行了评估:该数据集包括 164,660 人次到我们学术中心的儿科急诊就诊。在研究期间,每天的急诊就诊人数总体上大幅增加,在 2021 年迅速超过以前的水平,在 2022 年进一步增加。住院时间延长的趋势在各种主诉类别中都是一致的。2022 年没有初级医疗服务的患者比例是 2013 年的 2.5 倍。随机森林机器学习模型显示,预测2022年就诊的相对重要特征是:住院时间较长、当天挂号时间较晚、诊断为传染病以及年龄较小:这项研究发现,基层医疗机构就诊率的下降、病毒感染的流行以及主诉的变化是导致近期急诊就诊频率和就诊时间增加的综合因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synergistic patient factors are driving recent increased pediatric urgent care demand.

Objectives: We aimed to use the high fidelity urgent care patient data to model the factors that have led to the increased demand at our local pediatric urgent care centre.

Methods: The dataset for this retrospective cohort study was obtained from our local healthcare centre's national reporting data for pediatric urgent care visits from 2006 to 2022. Variables analyzed included: basic patient demographics, chief complaint, triage urgency, date and time of registration/discharge, discharge diagnosis, and discharge destination. Statistical analysis of non-linear trends was summarized by locally estimated scatterplot smoothing splines. For machine learning, we used the tidymodels R package. Models were validated in training using k-fold cross validation with k = 5. We used univariate linear regression as a baseline model. After the data was standardized, correlation and homoscedasticity were evaluated between all parameter permutations.

Results: This dataset consisted of 164,660 unique visits to our academic centre's pediatric urgent care. Over the study period, there was an overall substantial increase in the number of urgent care visits per day, with a rapid increase beyond previous levels in 2021 and further in 2022. The increased length of stay trend was consistent across presenting complaint categories. The proportion of patients without primary care in 2022 was 2.5 times higher than in 2013. A random forest machine learning model revealed the relative importance of features to predicting a visit in 2022 were: longer stay, later registration in the day, diagnosis of an infectious illness, and younger age.

Conclusions: This study identified a combination of declining primary care access, circulating viral infections, and shifting chief complaints as factors driving the recent increase in frequency and duration of visits to our urgent care service.

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