Department of Health Information Technology, School of Paramedical, Ilam University of Medical Sciences, Ilam, Iran.
Clinical Education Research Center, Health Human Resources Research Center, Department of Health Information Management, School of Health Management and Information Sciences, Shiraz University of Medical Sciences, Shiraz, Iran.
BMC Med Inform Decis Mak. 2022 May 20;22(1):139. doi: 10.1186/s12911-022-01880-z.
The COVID-19 pandemic overwhelmed healthcare systems with severe shortages in hospital resources such as ICU beds, specialized doctors, and respiratory ventilators. In this situation, reducing COVID-19 readmissions could potentially maintain hospital capacity. By employing machine learning (ML), we can predict the likelihood of COVID-19 readmission risk, which can assist in the optimal allocation of restricted resources to seriously ill patients.
In this retrospective single-center study, the data of 1225 COVID-19 patients discharged between January 9, 2020, and October 20, 2021 were analyzed. First, the most important predictors were selected using the horse herd optimization algorithms. Then, three classical ML algorithms, including decision tree, support vector machine, and k-nearest neighbors, and a hybrid algorithm, namely water wave optimization (WWO) as a precise metaheuristic evolutionary algorithm combined with a neural network were used to construct predictive models for COVID-19 readmission. Finally, the performance of prediction models was measured, and the best-performing one was identified.
The ML algorithms were trained using 17 validated features. Among the four selected ML algorithms, the WWO had the best average performance in tenfold cross-validation (accuracy: 0.9705, precision: 0.9729, recall: 0.9869, specificity: 0.9259, F-measure: 0.9795).
Our findings show that the WWO algorithm predicts the risk of readmission of COVID-19 patients more accurately than other ML algorithms. The models developed herein can inform frontline clinicians and healthcare policymakers to manage and optimally allocate limited hospital resources to seriously ill COVID-19 patients.
COVID-19 大流行使医院资源(如 ICU 床位、专科医生和呼吸呼吸机)严重短缺,使医疗系统不堪重负。在这种情况下,降低 COVID-19 的再入院率可能有助于维持医院的容量。通过使用机器学习(ML),我们可以预测 COVID-19 再入院风险的可能性,从而帮助将有限的资源最优分配给重病患者。
在这项回顾性单中心研究中,分析了 2020 年 1 月 9 日至 2021 年 10 月 20 日期间出院的 1225 名 COVID-19 患者的数据。首先,使用马群优化算法选择最重要的预测因素。然后,使用三种经典的 ML 算法,包括决策树、支持向量机和 K 最近邻,以及一种混合算法,即水波优化(WWO),作为一种精确的元启发式进化算法与神经网络相结合,构建 COVID-19 再入院的预测模型。最后,测量预测模型的性能,并确定表现最好的模型。
ML 算法使用 17 个验证特征进行训练。在四种选择的 ML 算法中,WWO 在十折交叉验证中的平均性能最好(准确率:0.9705,精度:0.9729,召回率:0.9869,特异性:0.9259,F1 分数:0.9795)。
我们的研究结果表明,WWO 算法比其他 ML 算法更准确地预测 COVID-19 患者的再入院风险。本文开发的模型可以为一线临床医生和医疗保健政策制定者提供信息,以管理和最优地分配有限的医院资源给重病 COVID-19 患者。