Suppr超能文献

利用电子病历数据预测儿科急诊患者特征及入院偏好和等候时间:回顾性对比分析。

Characteristics and Admission Preferences of Pediatric Emergency Patients and Their Waiting Time Prediction Using Electronic Medical Record Data: Retrospective Comparative Analysis.

机构信息

Children's Hospital Capital Institute of Pediatrics, Beijing, China.

Institute of Medical Information, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.

出版信息

J Med Internet Res. 2023 Nov 1;25:e49605. doi: 10.2196/49605.

Abstract

BACKGROUND

The growing number of patients visiting pediatric emergency departments could have a detrimental impact on the care provided to children who are triaged as needing urgent attention. Therefore, it has become essential to continuously monitor and analyze the admissions and waiting times of pediatric emergency patients. Despite the significant challenge posed by the shortage of pediatric medical resources in China's health care system, there have been few large-scale studies conducted to analyze visits to the pediatric emergency room.

OBJECTIVE

This study seeks to examine the characteristics and admission patterns of patients in the pediatric emergency department using electronic medical record (EMR) data. Additionally, it aims to develop and assess machine learning models for predicting waiting times for pediatric emergency department visits.

METHODS

This retrospective analysis involved patients who were admitted to the emergency department of Children's Hospital Capital Institute of Pediatrics from January 1, 2021, to December 31, 2021. Clinical data from these admissions were extracted from the electronic medical records, encompassing various variables of interest such as patient demographics, clinical diagnoses, and time stamps of clinical visits. These indicators were collected and compared. Furthermore, we developed and evaluated several computational models for predicting waiting times.

RESULTS

In total, 183,024 eligible admissions from 127,368 pediatric patients were included. During the 12-month study period, pediatric emergency department visits were most frequent among children aged less than 5 years, accounting for 71.26% (130,423/183,024) of the total visits. Additionally, there was a higher proportion of male patients (104,147/183,024, 56.90%) compared with female patients (78,877/183,024, 43.10%). Fever (50,715/183,024, 27.71%), respiratory infection (43,269/183,024, 23.64%), celialgia (9560/183,024, 5.22%), and emesis (6898/183,024, 3.77%) were the leading causes of pediatric emergency room visits. The average daily number of admissions was 501.44, and 18.76% (34,339/183,204) of pediatric emergency department visits resulted in discharge without a prescription or further tests. The median waiting time from registration to seeing a doctor was 27.53 minutes. Prolonged waiting times were observed from April to July, coinciding with an increased number of arrivals, primarily for respiratory diseases. In terms of waiting time prediction, machine learning models, specifically random forest, LightGBM, and XGBoost, outperformed regression methods. On average, these models reduced the root-mean-square error by approximately 17.73% (8.951/50.481) and increased the R by approximately 29.33% (0.154/0.525). The SHAP method analysis highlighted that the features "wait.green" and "department" had the most significant influence on waiting times.

CONCLUSIONS

This study offers a contemporary exploration of pediatric emergency room visits, revealing significant variations in admission rates across different periods and uncovering certain admission patterns. The machine learning models, particularly ensemble methods, delivered more dependable waiting time predictions. Patient volume awaiting consultation or treatment and the triage status emerged as crucial factors contributing to prolonged waiting times. Therefore, strategies such as patient diversion to alleviate congestion in emergency departments and optimizing triage systems to reduce average waiting times remain effective approaches to enhance the quality of pediatric health care services in China.

摘要

背景

越来越多的患者前往儿科急诊部门就诊,这可能对需要紧急关注的儿科患者的护理产生不利影响。因此,持续监测和分析儿科急诊患者的入院和等待时间变得至关重要。尽管中国医疗体系中儿科医疗资源短缺构成了重大挑战,但很少有大规模研究分析儿科急诊就诊情况。

目的

本研究旨在使用电子病历(EMR)数据来研究儿科急诊患者的特征和入院模式。此外,我们旨在开发和评估用于预测儿科急诊就诊等待时间的机器学习模型。

方法

本回顾性分析纳入了 2021 年 1 月 1 日至 2021 年 12 月 31 日期间首都儿科研究所附属儿童医院急诊入院的患者。从电子病历中提取这些入院的临床数据,包括患者人口统计学、临床诊断和临床就诊时间戳等各种感兴趣的变量。我们收集并比较了这些指标。此外,我们开发并评估了几种用于预测等待时间的计算模型。

结果

共纳入了 127368 名儿科患者的 183024 例符合条件的入院。在 12 个月的研究期间,5 岁以下儿童的儿科急诊就诊最为频繁,占总就诊人数的 71.26%(130423/183024)。此外,男性患者(104147/183024,56.90%)的比例高于女性患者(78877/183024,43.10%)。发热(50715/183024,27.71%)、呼吸道感染(43269/183024,23.64%)、腹痛(9560/183024,5.22%)和呕吐(6898/183024,3.77%)是儿科急诊就诊的主要原因。平均每日入院人数为 501.44 人,18.76%(34339/183204)的儿科急诊就诊无需处方或进一步检查即可出院。从挂号到看医生的平均等待时间为 27.53 分钟。从 4 月到 7 月,等待时间延长,与呼吸道疾病就诊人数增加有关。在等待时间预测方面,机器学习模型(特别是随机森林、LightGBM 和 XGBoost)优于回归方法。平均而言,这些模型将均方根误差降低了约 17.73%(8.951/50.481),并将 R 值提高了约 29.33%(0.154/0.525)。SHAP 方法分析强调了“wait.green”和“department”这两个特征对等待时间的影响最大。

结论

本研究对儿科急诊就诊情况进行了当代探索,揭示了不同时期入院率的显著变化,并揭示了某些入院模式。机器学习模型,特别是集成方法,提供了更可靠的等待时间预测。待诊或待治疗的患者数量和分诊状态是导致等待时间延长的关键因素。因此,患者分流以减轻急诊部门的拥堵和优化分诊系统以减少平均等待时间等策略仍然是提高中国儿科医疗服务质量的有效方法。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验