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运用人工神经网络评估沙特护理执照考试成功的预测因素。

Assessment of determinants predicting success on the Saudi Nursing Licensure Examination by employing artificial neural network.

作者信息

Butcon Vincent Edward, Pasay-An Eddieson, Indonto Maria Charito Laarni, Villacorte Liza, Cajigal Jupiter

机构信息

Medical-Surgical Department, College of Nursing, University of Hail, Hail, Kingdom of Saudi Arabia.

出版信息

J Educ Health Promot. 2021 Oct 29;10:396. doi: 10.4103/jehp.jehp_652_20. eCollection 2021.

Abstract

BACKGROUND

This study aims to use the artificial neural network as a novel approach to explore factors that determine and predict successful performance of nursing interns in Saudi Arabia on the Saudi Nursing Licensure Examination (SNLE).

MATERIALS AND METHODS

The study employed a cross-sectional, analytic approach. A total of 62 nursing interns were recruited by convenience sampling from the University of Hail to participate. Data collection was conducted from September to December 2019. Descriptive statistics were used to describe the demographic characteristics of the nursing interns and their responses regarding examination determinants. Neural network analysis was used to identify factors that are highly predictive of the success of the nursing interns on the SNLE.

RESULTS

Overall, the nursing interns were undecided (3.94 ± 0.14) about the influential factors determining their success. Their study hours (100%) and grade point average (GPA) (96.9%) were identified as strong determinants reflective of the tenacity and vigor of the nursing interns, based on the predictive power of the model. Meanwhile, age (45.7%), marital status (21.3%), gender (15.2%), and the type of academic program (5.9%) were considered the least important of the sociodemographic variables.

CONCLUSION

Exam preparation activities such as preparation programs, review classes, and exam simulations must be promoted and enhanced to increase the passing tendencies of the nursing interns in the SNLE. The GPA and increased study hours make the most significant contributions to success on the SNLE as compared to other variables such as age, gender, marital status, and the academic program. This study serves as a springboard for nursing educators and administrators in laying tailored strategies to strengthen the nurse interns' GPA and time management.

摘要

背景

本研究旨在采用人工神经网络这一新颖方法,探究决定和预测沙特阿拉伯护理实习生在沙特护理执照考试(SNLE)中取得成功表现的因素。

材料与方法

本研究采用横断面分析方法。通过便利抽样从海勒大学招募了62名护理实习生参与研究。数据收集于2019年9月至12月进行。描述性统计用于描述护理实习生的人口统计学特征及其对考试决定因素的回答。神经网络分析用于识别对护理实习生在SNLE中取得成功具有高度预测性的因素。

结果

总体而言,护理实习生对决定其成功的影响因素尚无定论(3.94±0.14)。根据模型的预测能力,他们的学习时长(100%)和平均绩点(GPA)(96.9%)被确定为反映护理实习生坚韧和活力的重要决定因素。同时,年龄(45.7%)、婚姻状况(21.3%)、性别(15.2%)和学术项目类型(5.9%)被认为是社会人口统计学变量中最不重要的因素。

结论

必须推广和加强诸如备考课程、复习课和考试模拟等考试准备活动,以提高护理实习生在SNLE中的通过率。与年龄、性别、婚姻状况和学术项目等其他变量相比,GPA和增加学习时长对SNLE的成功贡献最大。本研究为护理教育工作者和管理人员制定量身定制的策略以提高实习护士的GPA和时间管理能力提供了一个跳板。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/aad6/8641714/be66e9fb13c8/JEHP-10-396-g001.jpg

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