Content area

Abstract

Background

Deep learning approach plays a pivotal role in nursing education, equipping students with the critical thinking skills and knowledge necessary to address complex clinical challenges. However, nursing students exhibit diverse approaches to deep learning, affected by individual characteristics, academic environments and teaching methods.

Objective

This study aims to identify latent profiles of deep learning approach among undergraduate nursing students and analyze the factors influencing these profiles and their association with learning outcomes.

Design

A descriptive cross-sectional survey.

Methods

A total of 891 undergraduate nursing students from two medical universities in China participated in this study between May and July 2024. Data were collected using the Deep Learning Scale and the Learning Outcomes Scale. Latent profile analysis was employed to identify deep learning profiles. One-way analysis of variance and multinomial logistic regression were used to explore influencing factors of different profiles. The Bolck-Croon-Hagenaars (BCH) method was applied to examine differences in learning outcomes across profiles.

Results

Four latent profiles of deep learning were identified: "Comprehensive Deep Learners" (27.0 %), "Ability-Oriented Learners" (25.4 %), "Attitude-Driven Learners" (21.7 %) and "Surface Coping Learners" (25.8 %). Gender, grade, preference for the nursing major and participation in flipped classrooms were significant factors influencing profile membership ( p < 0.05). "Comprehensive Deep Learners" had the highest learning outcome scores, while "Surface Coping Learners" scored the lowest.

Conclusions

Significant heterogeneity exists in deep learning approach among undergraduate nursing students. "Comprehensive Deep Learners" achieved the highest learning outcomes. Nursing education should adopt tailored interventions based on the characteristics of different deep learning profiles to improve students’ learning outcomes and comprehensive competencies.

Details

Location
Title
Deep learning approach in undergraduate nursing students and their relationship with learning outcomes: A latent profile analysis
Author
Zhang Jiayuan 1 ; Ji Xiangzi 2 ; Yang, Li 2 ; Zhang, Hui 1 ; Li-Na, Meng 1 

 department of psychological nursing, Harbin Medical University, Daqing City, Heilongjiang Province, China 
 department of management, Suzhou Industrial Park Institute of Service Outsourcing, Suzhou City, Jiangsu Province, China 
Publication title
Volume
85
Pages
104379
Publication year
2025
Publication date
May 2025
Publisher
Elsevier Limited
Place of publication
Kidlington
Country of publication
United Kingdom
ISSN
14715953
e-ISSN
18735223
Source type
Scholarly Journal
Language of publication
English
Document type
Journal Article
ProQuest document ID
3203184916
Document URL
https://www.proquest.com/scholarly-journals/deep-learning-approach-undergraduate-nursing/docview/3203184916/se-2?accountid=208611
Copyright
©2025. Elsevier Ltd
Last updated
2025-11-07
Database
ProQuest One Academic