基于深度学习的COVID-19大流行对日本护理研究人员研究活动影响的预测模型

IF 1.7 4区 医学 Q2 NURSING
Kumsun Lee, Fusako Takahashi, Yuki Kawasaki, Naoki Yoshinaga, Hiroko Sakai
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引用次数: 0

摘要

目的本研究旨在利用深度学习构建和评估预测模型,探讨新冠肺炎大流行期间属性和生活方式因素对护理研究人员研究活动的影响。方法对新冠肺炎大流行开始时日本护理科学学会的一项横断面在线调查进行二次数据分析。来自护理学院的1089名受访者被分为训练数据集和测试数据集。我们使用人工智能(AI)预测分析工具,用训练数据集构建了两个预测模型;动机和时间被用作对研究活动的负面影响的预测项目。预测因素是彼此的属性、生活方式和预测项目。使用有序逻辑回归分析评估模型的准确性和内部有效性,以评估拟合优度;测试数据集用于评估外部有效性。还计算了每个因素的预测贡献。结果模型的准确性和拟合优度良好。预测贡献分析表明,研究动机没有增加和研究时间没有增加是相互影响的。对研究动机和研究时间产生负面影响的其他因素分别是居住在特殊警戒区和讲师职位之外,以及与伴侣/配偶和副教授职位一起生活。结论深度学习是一种能够早期预测意外事件的研究方法,在护理科学中具有新的适用性。为了在新冠肺炎大流行和未来突发事件期间继续开展研究活动,需要改善研究环境,根据职位调整工作量,并考虑工作与生活的平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction models for the impact of the COVID-19 pandemic on research activities of Japanese nursing researchers using deep learning

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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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
55
审稿时长
>12 weeks
期刊介绍: The Japan Journal of Nursing Science is the official English language journal of the Japan Academy of Nursing Science. The purpose of the Journal is to provide a mechanism to share knowledge related to improving health care and promoting the development of nursing. The Journal seeks original manuscripts reporting scholarly work on the art and science of nursing. Original articles may be empirical and qualitative studies, review articles, methodological articles, brief reports, case studies and letters to the Editor. Please see Instructions for Authors for detailed authorship qualification requirement.
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