Content area
Aim
To identify predictors of academic dropout before graduation and professional attrition after graduation among nursing students, using the theoretical IPOD model and a machine learning approach.
Background
Academic dropout and professional attrition are global challenges.
Design
A retrospective study design.
Method
This study included 878 undergraduate nursing students enrolled between 2007 and 2018. Data were collected from Education Department records and follow-up interviews conducted via phone, email, or social media platforms. To predict academic dropout before graduation, four machine learning models were used: Extreme Gradient Boosting (XGBoost), Support Vector Machine (SVM), Decision Tree (DT), and Multinomial Logistic Regression (mLR). To predict professional attrition after graduation, Random Forest (RF), SVM, DT, and Binary Logistic Regression (BLR) models were applied.
Outcomes
The academic dropout rate was 2.2 %, while the professional attrition rate was 28.3 %. The XGBoost model, with 91 % accuracy, identified dropout predictors including a higher ratio of failed semesters to total semesters, lower GPA in the first and second semesters, younger age at admission, abnormal early academic status, tuition payment, and male gender. The Random Forest model, with 90 % accuracy, linked professional attrition to higher clinical competency, higher overall GPA, longer waiting time before employment, job burnout, and longer work experience.
Conclusions
Academic performance indicators, particularly during the early semesters, were associated with nursing student dropout, while professional factors such as job burnout and employment delays were linked to post-graduation attrition. These findings may inform targeted interventions to improve retention across both academic and professional stages.
Details
Attrition (Research Studies);
Doctoral Programs;
Academic Records;
Academic Achievement;
Graduation;
Job Satisfaction;
Artificial Intelligence;
Graduate Surveys;
Dropouts;
Career Change;
Algorithms;
Individual Characteristics;
Content Validity;
Educational Quality;
Undergraduate Students;
Nurses;
Graduates;
Learning Experience;
Environmental Influences;
Intention;
Data Analysis;
Labor Force Development;
Educational Experience;
College Science
Students;
Email;
Attrition;
Shortages;
College students;
Employment;
Professional development;
Burnout;
Performance indicators;
Work experience;
Entrance examinations;
Social media;
Workforce;
Nurses;
Algorithms;
Learning;
Midwifery;
Accuracy;
Nursing education;
Dropping out;
Grades (Scholastic);
Digital audio players;
Nursing;
Work;
Machine learning;
Decision making;
Nursing care;
Nursing schools;
Data collection;
Tuition;
Admissions policies;
Career advancement;
Regression analysis
1 Department of Medical-Surgical Nursing, School of Nursing and Midwifery, Mashhad University of Medical Sciences, Mashhad, Iran, Nursing and Midwifery Care Research Center, Mashhad University of Medical Sciences, Mashhad, Iran
2 Department of Nursing, Bojnurd Faculty of Nursing, North Khorasan University of Medical Sciences, Bojnurd, Iran