Machine Learning-Based Approach to Predict Last-Minute Cancellation of Pediatric Day Surgeries.

IF 1.3 4区 医学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Canping Li, Zheming Li, Shoujiang Huang, Xiyan Chen, Tingting Zhang, Jihua Zhu
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引用次数: 0

Abstract

The last-minute cancellation of surgeries profoundly affects patients and their families. This research aimed to forecast these cancellations using EMR data and meteorological conditions at the time of the appointment, using a machine learning approach. We retrospectively gathered medical data from 13 440 pediatric patients slated for surgery from 2018 to 2021. Following data preprocessing, we utilized random forests, logistic regression, linear support vector machines, gradient boosting trees, and extreme gradient boosting trees to predict these abrupt cancellations. The efficacy of these models was assessed through performance metrics. The analysis revealed that key factors influencing last-minute cancellations included the impact of the coronavirus disease 2019 pandemic, average wind speed, average rainfall, preanesthetic assessments, and patient age. The extreme gradient boosting algorithm outperformed other models in predicting cancellations, boasting an area under the curve value of 0.923 and an accuracy of 0.841. This algorithm yielded superior sensitivity (0.840), precision (0.837), and F1 score (0.838) relative to the other models. These insights underscore the potential of machine learning, informed by EMRs and meteorological data, in forecasting last-minute surgical cancellations. The extreme gradient boosting algorithm holds promise for clinical deployment to curtail healthcare expenses and avert adverse patient-family experiences.

基于机器学习的小儿日间手术最后一分钟取消预测方法。
手术在最后一刻取消对患者及其家属造成了深远的影响。这项研究旨在利用EMR数据和预约时的气象条件,采用机器学习方法预测这些取消手术的情况。我们回顾性地收集了 2018 年至 2021 年期间预定手术的 13 440 名儿科患者的医疗数据。经过数据预处理后,我们利用随机森林、逻辑回归、线性支持向量机、梯度提升树和极端梯度提升树来预测这些突然取消的手术。我们通过性能指标评估了这些模型的功效。分析表明,影响最后一刻取消手术的关键因素包括 2019 年冠状病毒疾病大流行的影响、平均风速、平均降雨量、麻醉前评估和患者年龄。极端梯度提升算法在预测取消手术方面的表现优于其他模型,其曲线下面积值为 0.923,准确率为 0.841。该算法的灵敏度(0.840)、精确度(0.837)和 F1 分数(0.838)均优于其他模型。这些见解强调了机器学习在 EMR 和气象数据基础上预测最后一分钟手术取消的潜力。极端梯度提升算法有望在临床应用中减少医疗费用,避免患者和家属的不良体验。
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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