Predicting Average Wait-Time of COVID-19 Test Results and Efficacy Using Machine Learning Algorithms

Hassan Hijry, Richard Olawoyin, William Edwards, Gary C. McDonald, D. Debnath, Y. Al-Hejri
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Abstract

Due to the rising number of confirmed positive tests, the global impact of COVID-19 continues to grow. This can be attributed to the long wait times patients face to receive COVID-19 test results. During these lengthy waiting periods, people become anxious, especially those who are not experiencing early COVID-19 symptoms. This study aimed to develop models that predict waiting times for COVID-19 test results based on different factors such as testing facility, result interpretation, and date of test. Several machine learning algorithms were used to predict average waiting times for COVID-19 test results and to find the most accurate model. These algorithms include neural network, support vector regression, K-nearest neighbor regression, and more. COVID-19 test result waiting times were predicted for 54,730 patients recorded during the pandemic across 171 hospitals and 14 labs. To examine and evaluate the model’s accuracy, different measurements were applied such as root mean squared and R-Squared. Among the eight proposed models, the results showed that decision tree regression performed the best for predicting COVID-19 test results waiting times. The proposed models could be used to prioritize testing for COVID-19 and provide decision makers with the proper prediction tools to prepare against possible threats and consequences of future COVID-19 waves.
使用机器学习算法预测COVID-19测试结果和疗效的平均等待时间
由于确诊阳性检测人数不断增加,COVID-19的全球影响继续扩大。这可能是因为患者等待新冠病毒检测结果的时间很长。在这些漫长的等待期间,人们变得焦虑,尤其是那些没有出现COVID-19早期症状的人。该研究旨在开发基于检测设施、结果解释和检测日期等不同因素预测COVID-19检测结果等待时间的模型。使用几种机器学习算法来预测COVID-19检测结果的平均等待时间,并找到最准确的模型。这些算法包括神经网络、支持向量回归、k近邻回归等。预计在大流行期间,171家医院和14个实验室记录的54730名患者的COVID-19检测结果等待时间。为了检验和评估模型的准确性,采用了不同的测量方法,如均方根和r平方。结果表明,决策树回归在预测COVID-19检测结果等待时间方面效果最好。提出的模型可用于优先检测COVID-19,并为决策者提供适当的预测工具,以应对未来COVID-19浪潮可能带来的威胁和后果。
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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