Askari GholamReza, Rouhani Mohammad Hossein, Sattari Mohammad
Department of Community Nutrition, School of Nutrition & Food Sciences, Isfahan University of Medical Sciences, Isfahan, Iran.
Nutrition and Food Security Research Center, Isfahan University of Medical Sciences, Isfahan, Iran.
Int J Biomater. 2022 Sep 16;2022:6474883. doi: 10.1155/2022/6474883. eCollection 2022.
The aim of this paper is to predict the patient hospitalization time with coronavirus disease 2019 (COVID-19). It uses various data mining techniques, such as random forest. Many rules were derived by applying these techniques to the dataset. The extracted rules mainly were related to people over 55 years old. The rule with the most support states that if the person is between 70 and 80 years old, has cardiovascular disease, and the gender is female; then, the person will be hospitalized for at least five days. The gradient boosting random forest technique has performed better than other techniques. As a limitation of the study, it can be pointed out that a few features were unavailable and had not been recorded. Patients with diabetes, chronic respiratory problems, and cardiovascular diseases have a relatively long hospitalization. So, the hospital manager should consider a suitable priority for these patients. Older people were also more likely to take part in the selection rules.
本文的目的是预测2019冠状病毒病(COVID-19)患者的住院时间。它使用了各种数据挖掘技术,如随机森林。通过将这些技术应用于数据集得出了许多规则。提取的规则主要与55岁以上的人有关。支持度最高的规则表明,如果一个人年龄在70到80岁之间,患有心血管疾病,且性别为女性;那么,这个人将至少住院五天。梯度提升随机森林技术的表现优于其他技术。作为该研究的一个局限性,可以指出有一些特征不可用且未被记录。患有糖尿病、慢性呼吸道问题和心血管疾病的患者住院时间相对较长。因此,医院管理人员应该为这些患者考虑合适的优先级。老年人也更有可能参与选择规则。