Department of Nursing, Chi Mei Medical Center, Tainan, Taiwan.
College of Humanities and Social Science, Southern Taiwan University of Science and Technology, Tainan, Taiwan.
JMIR Mhealth Uhealth. 2020 May 20;8(5):e16747. doi: 10.2196/16747.
Workplace bullying has been measured in many studies to investigate its effects on mental health issues. However, none have used web-based computerized adaptive testing (CAT) with bully classifications and convolutional neural networks (CNN) for reporting the extent of individual bullying in the workplace.
This study aims to build a model using CNN to develop an app for automatic detection and classification of nurse bullying-levels, incorporated with online Rasch computerized adaptive testing, to help assess nurse bullying at an earlier stage.
We recruited 960 nurses working in a Taiwan Ch-Mei hospital group to fill out the 22-item Negative Acts Questionnaire-Revised (NAQ-R) in August 2012. The k-mean and the CNN were used as unsupervised and supervised learnings, respectively, for: (1) dividing nurses into three classes (n=918, 29, and 13 with suspicious mild, moderate, and severe extent of being bullied, respectively); and (2) building a bully prediction model to estimate 69 different parameters. Finally, data were separated into training and testing sets in a proportion of 70:30, where the former was used to predict the latter. We calculated the sensitivity, specificity, and receiver operating characteristic curve (area under the curve [AUC]), along with the accuracy across studies for comparison. An app predicting the respondent bullying-level was developed, involving the model's 69 estimated parameters and the online Rasch CAT module as a website assessment.
We observed that: (1) the 22-item model yields higher accuracy rates for three categories, with an accuracy of 94% for the total 960 cases, and accuracies of 99% (AUC 0.99; 95% CI 0.99-1.00) and 83% (AUC 0.94; 95% CI 0.82-0.99) for the lower and upper groups (cutoff points at 49 and 66 points) based on the 947 cases and 42 cases, respectively; and (2) the 700-case training set, with 95% accuracy, predicts the 260-case testing set reaching an accuracy of 97. Thus, a NAQ-R app for nurses that predicts bullying-level was successfully developed and demonstrated in this study.
The 22-item CNN model, combined with the Rasch online CAT, is recommended for improving the accuracy of the nurse NAQ-R assessment. An app developed for helping nurses self-assess workplace bullying at an early stage is required for application in the future.
已有多项研究采用工作场所欺凌调查来衡量其对心理健康问题的影响。然而,尚无研究使用带有欺凌分类的基于网络的计算机化自适应测试(CAT)和卷积神经网络(CNN)来报告工作场所中个体受欺凌的程度。
本研究旨在构建一个使用 CNN 的模型,开发一个自动检测和分类护士受欺凌程度的应用程序,结合在线 Rasch 计算机化自适应测试,以帮助更早地评估护士受欺凌情况。
我们招募了在台湾美和医院集团工作的 960 名护士,于 2012 年 8 月填写 22 项修正后的负面行为问卷(NAQ-R)。k-均值和 CNN 分别作为无监督和监督学习,用于:(1)将护士分为 3 类(n=918、29 和 13,分别为可疑轻度、中度和严重受欺凌程度);(2)建立欺凌预测模型以估计 69 个不同参数。最后,数据以 70:30 的比例分为训练集和测试集,前者用于预测后者。我们计算了敏感性、特异性和接收器工作特征曲线(曲线下面积 [AUC]),并在研究间进行了比较。开发了一个预测受访者欺凌程度的应用程序,涉及模型的 69 个估计参数和在线 Rasch CAT 模块作为网站评估。
我们观察到:(1)22 项模型对 3 个类别具有更高的准确率,960 例总病例的准确率为 94%,基于 947 例的低组( cutoff 点为 49 分)和 42 例的高组( cutoff 点为 66 分)的准确率分别为 99%(AUC 0.99;95%CI 0.99-1.00)和 83%(AUC 0.94;95%CI 0.82-0.99);(2)95%准确率的 700 例训练集可预测 260 例测试集,准确率达到 97%。因此,本研究成功开发并展示了一种用于预测护士欺凌程度的 NAQ-R 应用程序。
建议将 22 项 CNN 模型与 Rasch 在线 CAT 结合使用,以提高护士 NAQ-R 评估的准确性。需要开发一款应用程序,帮助护士在早期阶段自我评估工作场所欺凌情况,以便在未来应用。