Yeo Sing Chen, Lai Clin K Y, Tan Jacinda, Gooley Joshua J
Neuroscience and Behavioural Disorders Programme, Duke-NUS Medical School, Singapore, Singapore.
Institute for Applied Learning Sciences and Educational Technology, National University of Singapore, Singapore, Singapore.
PLoS One. 2021 Apr 8;16(4):e0249839. doi: 10.1371/journal.pone.0249839. eCollection 2021.
The COVID-19 pandemic led to widespread closure of universities. Many universities turned to e-learning to provide educational continuity, but they now face the challenge of how to reopen safely and resume in-class learning. This is difficult to achieve without methods for measuring the impact of school policies on student physical interactions. Here, we show that selectively deploying e-learning for larger classes is highly effective at decreasing campus-wide opportunities for student-to-student contact, while allowing most in-class learning to continue uninterrupted. We conducted a natural experiment at a large university that implemented a series of e-learning interventions during the COVID-19 outbreak. The numbers and locations of 24,000 students on campus were measured over a 17-week period by analysing >24 million student connections to the university Wi-Fi network. We show that daily population size can be manipulated by e-learning in a targeted manner according to class size characteristics. Student mixing showed accelerated growth with population size according to a power law distribution. Therefore, a small e-learning dependent decrease in population size resulted in a large reduction in student clustering behaviour. Our results suggest that converting a small number of classes to e-learning can decrease potential for disease transmission while minimising disruption to university operations. Universities should consider targeted e-learning a viable strategy for providing educational continuity during periods of low community disease transmission.
新冠疫情导致大学广泛关闭。许多大学转向电子学习以确保教育的连续性,但它们现在面临着如何安全重新开放并恢复课堂学习的挑战。如果没有衡量学校政策对学生身体互动影响的方法,这很难实现。在此,我们表明,针对大班选择性地部署电子学习在减少校园范围内学生之间接触机会方面非常有效,同时能让大多数课堂学习不受干扰地继续进行。我们在一所大型大学进行了一项自然实验,该大学在新冠疫情爆发期间实施了一系列电子学习干预措施。通过分析超过2400万个学生与大学无线网络的连接,在17周的时间里对校园内24000名学生的数量和位置进行了测量。我们表明,根据班级规模特征,电子学习可以有针对性地控制每日在校人数。根据幂律分布,学生之间的混合情况随着人数的增加而加速增长。因此,因电子学习导致的在校人数少量减少会使学生聚集行为大幅减少。我们的结果表明,将少量课程转换为电子学习可以降低疾病传播的可能性,同时将对大学运营的干扰降至最低。大学应将有针对性的电子学习视为在社区疾病传播率较低期间提供教育连续性的可行策略。