An App for Detecting Bullying of Nurses Using Convolutional Neural Networks and Web-Based Computerized Adaptive Testing: Development and Usability Study

Background 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. Objective 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. Methods 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. Results 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. Conclusions 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.

[1]  M. B. Nielsen,et al.  Measuring Exposure to Workplace Bullying , 2010 .

[2]  M. Guzmán,et al.  Dengue: an update. , 2002, The Lancet. Infectious diseases.

[3]  Eric R. Ziegel,et al.  Generalized Linear Models , 2002, Technometrics.

[4]  Yixin Chen,et al.  Predicting Hospital Readmission via Cost-Sensitive Deep Learning , 2018, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[5]  Magdalena Szumilas Explaining odds ratios. , 2010, Journal of the Canadian Academy of Child and Adolescent Psychiatry = Journal de l'Academie canadienne de psychiatrie de l'enfant et de l'adolescent.

[6]  Lydia P. Howell,et al.  Artificial Intelligence and Machine Learning in Pathology: The Present Landscape of Supervised Methods , 2019, Academic pathology.

[7]  Rich Caruana,et al.  An empirical comparison of supervised learning algorithms , 2006, ICML.

[8]  Willy Chou,et al.  An App Developed for Detecting Nurse Burnouts Using the Convolutional Neural Networks in Microsoft Excel: Population-Based Questionnaire Study , 2020, JMIR medical informatics.

[9]  K. Lange,et al.  Genetics of early-onset obsessive–compulsive disorder , 2010, European Child & Adolescent Psychiatry.

[10]  T. Chien,et al.  A new technique to measure online bullying: online computerized adaptive testing , 2017, Annals of General Psychiatry.

[11]  Shafiq R. Joty,et al.  Impact of Physical Activity on Sleep: A Deep Learning Based Exploration , 2016, ArXiv.

[12]  Yoshua. Bengio,et al.  Learning Deep Architectures for AI , 2007, Found. Trends Mach. Learn..

[13]  Assessing the Prevalence and Predictors of Bullying Among Emergency Medical Service Providers , 2018, Prehospital emergency care : official journal of the National Association of EMS Physicians and the National Association of State EMS Directors.

[14]  D. Cox The Regression Analysis of Binary Sequences , 1958 .

[15]  T. Bayes LII. An essay towards solving a problem in the doctrine of chances. By the late Rev. Mr. Bayes, F. R. S. communicated by Mr. Price, in a letter to John Canton, A. M. F. R. S , 1763, Philosophical Transactions of the Royal Society of London.

[16]  Shafiq R. Joty,et al.  Sleep Quality Prediction From Wearable Data Using Deep Learning , 2016, JMIR mHealth and uHealth.

[17]  Stephanie J Mitchell,et al.  Internet and Mobile Technology Use Among Urban African American Parents: Survey Study of a Clinical Population , 2012, Journal of medical Internet research.

[18]  Pedro M. Domingos,et al.  On the Optimality of the Simple Bayesian Classifier under Zero-One Loss , 1997, Machine Learning.

[19]  T. Chien,et al.  Applying Computerized Adaptive Testing to the Negative Acts Questionnaire-Revised: Rasch Analysis of Workplace Bullying , 2014, Journal of medical Internet research.

[20]  Tsair-Wei Chien,et al.  Simulation study of activities of daily living functions using online computerized adaptive testing , 2011, BMC Medical Informatics and Decision Making.

[21]  K. McPhaul,et al.  Comparative psychometric review of the Negative Acts Questionnaire-Revised in a unionized U.S. public sector workforce. , 2019, Work.

[22]  T. Chien,et al.  Improving Inpatient Surveys: Web-Based Computer Adaptive Testing Accessed via Mobile Phone QR Codes , 2016, JMIR medical informatics.

[23]  D. Andrich A rating formulation for ordered response categories , 1978 .

[24]  Soonil Kwon,et al.  Deep Learning Approaches to Detect Atrial Fibrillation Using Photoplethysmographic Signals: Algorithms Development Study , 2019, JMIR mHealth and uHealth.

[25]  J. Gloor,et al.  Bullying and Harassment in the Workplace: Developments in Theory, Research, and Practice , 2014 .

[26]  Georg Rasch,et al.  Probabilistic Models for Some Intelligence and Attainment Tests , 1981, The SAGE Encyclopedia of Research Design.

[27]  S. F.R.,et al.  An Essay towards solving a Problem in the Doctrine of Chances . By the late Rev . Mr . Bayes , communicated by Mr . Price , in a letter to , 1999 .

[28]  M. Dave,et al.  An Empirical Comparison Of Supervised Learning Processes , 2007 .

[29]  J. Friedman Stochastic gradient boosting , 2002 .

[30]  Zedong Nie,et al.  Deep Learning Intervention for Health Care Challenges: Some Biomedical Domain Considerations , 2019, JMIR mHealth and uHealth.

[31]  Kiyoko Abe,et al.  Bullying (Ijime) Among Japanese Hospital Nurses: Modeling Responses to the Revised Negative Acts Questionnaire , 2010, Nursing research.

[32]  J. Ross Quinlan,et al.  Induction of Decision Trees , 1986, Machine Learning.

[33]  D. Cox The Regression Analysis of Binary Sequences , 2017 .

[34]  S. Einarsen,et al.  Assessment of workplace bullying: reliability and validity of an Arabic version of the Negative Acts Questionnaire-Revised (NAQ-R) , 2018, BMJ Open.

[35]  Guang-Zhong Yang,et al.  Deep Learning for Health Informatics , 2017, IEEE Journal of Biomedical and Health Informatics.

[36]  Jiebo Luo,et al.  Image segmentation via adaptive K-mean clustering and knowledge-based morphological operations with biomedical applications , 1998, IEEE Trans. Image Process..