工作量
配偶
逻辑回归
拟合优度
考试(生物学)
2019年冠状病毒病(COVID-19)
大流行
心理学
有序逻辑
预测建模
应用心理学
预测效度
护理部
计算机科学
医学
机器学习
临床心理学
社会学
古生物学
病理
传染病(医学专业)
操作系统
生物
疾病
人类学
作者
Kumsun Lee,Fusako Takahashi,Yuki Kawasaki,Naoki Yoshinaga,Hiroko Sakai
摘要
Abstract Aim This study aimed to construct and evaluate prediction models using deep learning to explore the impact of attributes and lifestyle factors on research activities of nursing researchers during the COVID‐19 pandemic. Methods A secondary data analysis was conducted from a cross‐sectional online survey by the Japanese Society of Nursing Science at the inception of the COVID‐19 pandemic. A total of 1089 respondents from nursing faculties were divided into a training dataset and a test dataset. We constructed two prediction models with the training dataset using artificial intelligence (AI) predictive analysis tools; motivation and time were used as predictor items for negative impact on research activities. Predictive factors were attributes, lifestyle, and predictor items for each other. The models' accuracy and internal validity were evaluated using an ordinal logistic regression analysis to assess goodness‐of‐fit; the test dataset was used to assess external validity. Predicted contributions by each factor were also calculated. Results The models' accuracy and goodness‐of‐fit were good. The prediction contribution analysis showed that no increase in research motivation and lack of increase in research time strongly influenced each other. Other factors that negatively influenced research motivation and research time were residing outside the special alert area and lecturer position and living with partner/spouse and associate professor position, respectively. Conclusions Deep learning is a research method enabling early prediction of unexpected events, suggesting new applicability in nursing science. To continue research activities during the COVID‐19 pandemic and future contingencies, the research environment needs to be improved, workload corrected by position, and considered in terms of work‐life balance.
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