A Systematic Review of Features Forecasting Patient Arrival Numbers.

IF 1.3 4区 医学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Markus Förstel, Oliver Haas, Stefan Förstel, Andreas Maier, Eva Rothgang
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引用次数: 0

Abstract

Adequate nurse staffing is crucial for quality healthcare, necessitating accurate predictions of patient arrival rates. These forecasts can be determined using supervised machine learning methods. Optimization of machine learning methods is largely about minimizing the prediction error. Existing models primarily utilize data such as historical patient visits, seasonal trends, holidays, and calendars. However, it is unclear what other features reduce the prediction error. Our systematic literature review identifies studies that use supervised machine learning to predict patient arrival numbers using nontemporal features, which are features not based on time or dates. We scrutinized 26 284 studies, eventually focusing on 27 relevant ones. These studies highlight three main feature groups: weather data, internet search and usage data, and data on (social) interaction of groups. Internet data and social interaction data appear particularly promising, with some studies reporting reduced errors by up to 33%. Although weather data are frequently used, its utility is less clear. Other potential data sources, including smartphone and social media data, remain largely unexplored. One reason for this might be potential data privacy challenges. In summary, although patient arrival prediction has become more important in recent years, there are still many questions and opportunities for future research on the features used in this area.

对预测患者到达人数特征的系统性回顾。
充足的护士人手对优质医疗服务至关重要,因此需要对病人到达率进行准确预测。这些预测可以通过有监督的机器学习方法来确定。机器学习方法的优化主要在于最大限度地减少预测误差。现有模型主要利用历史病人就诊情况、季节趋势、节假日和日历等数据。然而,目前还不清楚还有哪些特征可以减少预测误差。我们的系统性文献综述确定了使用非时间特征(即不基于时间或日期的特征)的监督机器学习来预测患者到达人数的研究。我们仔细研究了 26 284 项研究,最终聚焦于 27 项相关研究。这些研究突出了三个主要特征组:天气数据、互联网搜索和使用数据以及群体(社会)互动数据。互联网数据和社交互动数据似乎特别有前景,一些研究报告称其误差减少了 33%。虽然天气数据经常被使用,但其效用并不明显。其他潜在数据源,包括智能手机和社交媒体数据,在很大程度上仍未得到开发。其中一个原因可能是潜在的数据隐私挑战。总之,虽然近年来病人到达预测变得越来越重要,但在这一领域使用的特征方面仍有许多问题和未来研究的机会。
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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来源期刊
Cin-Computers Informatics Nursing
Cin-Computers Informatics Nursing 工程技术-护理
CiteScore
2.00
自引率
15.40%
发文量
248
审稿时长
6-12 weeks
期刊介绍: For over 30 years, CIN: Computers, Informatics, Nursing has been at the interface of the science of information and the art of nursing, publishing articles on the latest developments in nursing informatics, research, education and administrative of health information technology. CIN connects you with colleagues as they share knowledge on implementation of electronic health records systems, design decision-support systems, incorporate evidence-based healthcare in practice, explore point-of-care computing in practice and education, and conceptually integrate nursing languages and standard data sets. Continuing education contact hours are available in every issue.
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