Chen Lufeng, Chen Qingquan, Huang Zhimin, Yao Ling, Zhuang Jiajing, Lu Haibin, Zeng Yifu, Fan Jimin, Song Ailing, Zhang Yixiang
The Second Affiliated Hospital of Fujian Medical University, Quanzhou, Fujian Province, 362000, China.
The School of Public Health, Fujian Medical University, Fuzhou, Fujian Province, 350108, China.
BMC Public Health. 2025 Feb 21;25(1):721. doi: 10.1186/s12889-025-21746-z.
In March 2022, a new outbreak of COVID-19 emerged in Quanzhou, leading to the implementation of strict lockdown management measures in colleges. While existing research has indicated that the pandemic has had a significant impact on sleep quality, the specific effects of containment measures on college students' sleep patterns remain understudied.
This study aimed to understand the sleep quality of college students in Fujian Province during the epidemic and determine sensitive variables, in order to develop an efficient prediction model for the early screening of sleep problems in college students.
A cross-sectional survey was conducted April 5-16, 2022 to survey college students in Quanzhou. A total of 4959 college students in Quanzhou were enrolled in this study. Descriptive analysis, univariate analysis, correlation analysis, and multiple regression analysis were used to explore the influencing factors regarding sleep quality. In addition, we constructed eight sleep quality risk prediction models to predict sleep quality.
A mean PSQI total score of 6.03 ± 3.21 and a sleep disorder rate of 29.4% (PSQI > 7) were obtained. Sleep quality, sleep latency, sleep efficiency, diurnal dysfunction, and PSQI score were all higher than the national norm (P < 0.05). A total of eight significant predictors finally identified by the LASSO algorithm was incorporated into prediction models. Through a series of assessments, we identified the artificial neural network model as the best model, achieving an area under curve of 73.8% an accuracy of 67.3%, a precision of 84.0%, a recall of 66.3%, and an F1 score of 69.3%. These performance indices suggest that the ANN model outperforms other models. It is noteworthy that the threshold probabilities for net benefit were found to be between 0.81 and 0.92 and the clinical impact curve confirmed that the models' predictions were particularly effective in identifying individuals with poor sleep quality when the threshold probability was set above 70%. These findings underscore the potential clinical utility of our models for the early detection of sleep disorders.
In Quanzhou, under COVID-19 quarantine management, the sleep quality of college students was affected to a certain extent, and their PSQI scores were higher than the national average in China. The artificial neural network model had the best performance, and it is expected to be used to provide early interventions to prevent sleep disorders.
2022年3月,泉州市出现新一轮新冠疫情,各高校实施严格封控管理措施。尽管现有研究表明疫情对睡眠质量有显著影响,但管控措施对大学生睡眠模式的具体影响仍未得到充分研究。
本研究旨在了解疫情期间福建省大学生的睡眠质量,并确定敏感变量,以建立一个有效的预测模型,用于大学生睡眠问题的早期筛查。
于2022年4月5日至16日进行横断面调查,以调查泉州市的大学生。共有4959名泉州市大学生参与本研究。采用描述性分析、单因素分析、相关性分析和多元回归分析来探讨睡眠质量的影响因素。此外,我们构建了8个睡眠质量风险预测模型来预测睡眠质量。
PSQI总分平均为6.03±3.21,睡眠障碍率为29.4%(PSQI>7)。睡眠质量、入睡潜伏期、睡眠效率、日间功能障碍和PSQI得分均高于全国常模(P<0.05)。通过LASSO算法最终确定的8个显著预测因子被纳入预测模型。通过一系列评估,我们确定人工神经网络模型为最佳模型,其曲线下面积为73.8%,准确率为67.3%,精确率为84.0%,召回率为66.3%,F1分数为69.3%。这些性能指标表明人工神经网络模型优于其他模型。值得注意的是,净效益的阈值概率在0.81至0.92之间,临床影响曲线证实,当阈值概率设定在70%以上时,模型的预测在识别睡眠质量差的个体方面特别有效。这些发现强调了我们的模型在早期检测睡眠障碍方面的潜在临床应用价值。
在泉州,新冠疫情封控管理下,大学生的睡眠质量受到一定程度影响,其PSQI得分高于全国平均水平。人工神经网络模型性能最佳,有望用于提供早期干预以预防睡眠障碍。