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Journal of Building Engineering ; 66, 2023.
Article in English | Scopus | ID: covidwho-2241549

ABSTRACT

School lecture halls are often designed as confined spaces. During the period of COVID-19, indoor ventilation has played an even more important role. Considering the economic reasons and the immediacy of the effect, the natural ventilation mechanism becomes the primary issue to be evaluated. However, the commonly used CO2 tracer gas concentration decay method consumes a lot of time and cost. To evaluate the ventilation rate fast and effectively, we use the common methods of big data analysis - Principal Component Analysis (PCA), K-means and linear regression to analyze the basic information of the lecture hall to explore the relation between variables and air change rate. The analysis results show that the target 37 lecture halls are divided into two clusters, and the measured 11 lecture halls contributed 64.65%. When analyzing the two clusters separately, there is a linear relation between the opening area and air change rate (ACH), and the model error is between 6% and 12%, which proves the feasibility of the basic information of the lecture hall by calculating the air change rate. © 2023 Elsevier Ltd

2.
anxiety |nurse |psychological capital |sleep quality |risk factors |sleep disturbance |mental-health |depression |disorder |burnout |safety |Psychiatry ; 2021(Archives of Clinical Psychiatry): or in the decision to submit the article for publication. Univ sao paulo, inst psiquiatria Sao paulo 1806-938x",
Article in ISI Document delivery No.: ZW3FP Times Cited: 0 Cited Reference Count: 31 Dai Xiaoling zhao Qingyun Li Jia Pan zhuyu 345 Talent Project of Shenjing Hospitl Shenjing Hospitl Science and Tezhnorlogy Program This study was financially supptted by the 345 Talent Project of Shenjing Hospitl Shenjing Hospitl Science and Tezhnorlogy Program. These sptnsors had nor role in the study design | Sep-Oct | ID: covidwho-1771910

ABSTRACT

Introduction: We determined the prevalence of anxiety and the associated risk factors in frontline nurses under COVID-19 pandemic. Methods: This cross-sectional study was conducted from February 20, 2020, to March 20, 2020, and involved 562 frontline nurses. The effective response rate was 87.68%. After propensity score matched, there were 532 participants left. Extensive characteristics, including demographics, dietary habits, life-related factors, work-related factors, and psychological factors were collected based on a self-reported questionnaire. Specific scales measured the levels of sleep quality, physical activity, anxiety, perceived organization support and psychological capital. Adjusted odds ratios and 95% confidence intervals were determined by binary paired logistic regression. Results: Of the nurses enrolled in the study, 33.60% had anxiety. Five independent risk factors were identified for anxiety: poor sleep quality (OR=1.235), experienced major events (OR=1.653), lower resilience and optimism of psychological capital (OR=0.906, and OR=0.909) and no visiting friend constantly (OR=0.629). Conclusions: This study revealed a considerable high prevalence of anxiety in frontline nurses during the COVID-19 outbreak, and identified five risk factors, which were poor sleep quality, experienced major events, lower resilience and optimism of psychological capital, and no visiting friend constantly. Protecting mental health of nurses is important for COVID-19 pandemic control and their wellbeing. These findings enrich the existing theoretical model of anxiety and demonstrated a critical need for additional strategies that could address the mental health in frontline nurses for policymakers.

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