A Structural Model of Stress, Motivation, and Academic Performance in Medical Students

无动机 路径分析(统计学) 感知压力量表 心理学 临床心理学 贝克抑郁量表 比例(比率) 心理干预 人格 萧条(经济学) 压力(语言学) 焦虑 社会心理学 精神科 内在动机 计算机科学 语言学 哲学 物理 量子力学 经济 宏观经济学 机器学习
作者
Jangho Park,Seockhoon Chung,Hoyoung An,Seungjin Park,Chul Lee,Seong Yoon Kim,Jae-Dam Lee,Ki Soo Kim
出处
期刊:Psychiatry Investigation [Korean Neuropsychiatric Association]
卷期号:9 (2): 143-143 被引量:114
标识
DOI:10.4306/pi.2012.9.2.143
摘要

The purpose of the present study was 1) to identify factors that may influence academic stress in medical students and 2) to investigate the causal relationships among these variables with path analysis.One hundred sixty medical students participated in the present study. Psychological parameters were assessed with the Medical Stress Scale, Minnesota Multiphasic Personality Inventory, Hamilton Depression Scale, Beck Depression Inventory, and Academic Motivation Scale. Linear regression and path analysis were used to examine the relationships among variables.Significant correlations were noted between several factors and Medical Stress scores. Specifically, Hamilton Depression Scale scores (β=0.26, p=0.03) and amotivation (β=0.20, p=0.01) and extrinsically identified regulation (β=0.27, p<0.01) response categories on the Academic Motivation Scale had independent and significant influences on Medical Stress Scale scores. A path analysis model indicated that stress, motivation, and academic performance formed a triangular feedback loop. Moreover, depression was associated with both stress and motivation, and personality was associated with motivation.The triangular feedback-loop structure in the present study indicated that actions that promote motivation benefit from interventions against stress and depression. Moreover, stress management increases motivation in students. Therefore, strategies designed to reduce academic pressures in medical students should consider these factors. Additional studies should focus on the relationship between motivation and depression.

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