Towards precision well-being in medical education.

IF 3.3 2区 教育学 Q1 EDUCATION, SCIENTIFIC DISCIPLINES Medical Teacher Pub Date : 2024-05-29 DOI:10.1080/0142159X.2024.2357279
Thomas Thesen, Wesley J Marrero, Abigail J Konopasky, Matthew S Duncan, Karen E Blackmon
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Abstract

Medical trainee well-being is often met with generalized solutions that overlook substantial individual variations in mental health predisposition and stress reactivity. Precision medicine leverages individual environmental, genetic, and lifestyle factors to tailor preventive and therapeutic interventions. In addition, an exclusive focus on clinical mental illness tends to disregard the importance of supporting the positive aspects of medical trainee well-being. We introduce a novel precision well-being framework for medical education that is built on a comprehensive and individualized view of mental health, combining measures from mental health and positive psychology in a unified, data-driven framework. Unsupervised machine learning techniques commonly used in precision medicine were applied to uncover patterns within multidimensional mental health data of medical students. Using data from 3,632 US medical students, clusters were formulated based on recognized metrics for depression, anxiety, and flourishing. The analysis identified three distinct clusters. Membership in the 'Healthy Flourishers' well-being phenotype was associated with no signs of anxiety or depression while simultaneously reporting high levels of flourishing. Students in the 'Getting By' cluster reported mild anxiety and depression and diminished flourishing. Membership in the 'At-Risk' cluster was associated with high anxiety and depression, languishing, and increased suicidality. Nearly half (49%) of the medical students surveyed were classified as 'Healthy Flourishers', whereas 36% were grouped into the 'Getting-By' cluster and 15% were identified as 'At-Risk'. Findings show that a substantial portion of medical students report diminished well-being during their studies, with a significant number struggling with mental health challenges. This novel precision well-being framework represents an integrated empirical model that classifies individual medical students into distinct and meaningful well-being phenotypes based on their holistic mental health. This approach has direct applicability to student support and can be used to evaluate the effectiveness of personalized intervention strategies stratified by cluster membership.

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在医学教育中实现精准福祉。
医学培训生的健康问题往往以笼统的解决方案来解决,而忽略了个体在心理健康倾向和压力反应方面的巨大差异。精准医学利用个体的环境、遗传和生活方式等因素,量身定制预防和治疗干预措施。此外,只关注临床精神疾病往往会忽视支持医学学员积极健康方面的重要性。我们为医学教育引入了一个新颖的精准幸福感框架,该框架建立在全面和个性化的心理健康视角之上,将心理健康和积极心理学的测量方法结合在一个统一的数据驱动框架中。精准医学中常用的无监督机器学习技术被用于揭示医学生多维心理健康数据中的模式。利用来自 3,632 名美国医科学生的数据,根据公认的抑郁、焦虑和蓬勃发展的衡量标准建立了聚类。分析确定了三个不同的聚类。健康繁荣 "幸福表型的学生没有焦虑或抑郁的迹象,同时报告的繁荣程度较高。在 "过得去 "群组中的学生有轻微的焦虑和抑郁,但学习成绩较差。高危 "群组的学生则表现出高度焦虑和抑郁、无精打采以及自杀倾向增加。在接受调查的医学生中,近一半(49%)被归类为 "健康发展者",36%被归类为 "碌碌无为者",15%被认定为 "高危人群"。调查结果显示,有相当一部分医学生表示在学习过程中幸福感下降,其中有相当一部分人在与心理健康挑战作斗争。这个新颖的精准幸福感框架是一个综合的实证模型,它根据医学生的整体心理健康情况,将医学生个体划分为不同的、有意义的幸福感表型。这种方法可直接应用于学生支持,并可用于评估按集群成员分层的个性化干预策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Medical Teacher
Medical Teacher 医学-卫生保健
CiteScore
7.80
自引率
8.50%
发文量
396
审稿时长
3-6 weeks
期刊介绍: Medical Teacher provides accounts of new teaching methods, guidance on structuring courses and assessing achievement, and serves as a forum for communication between medical teachers and those involved in general education. In particular, the journal recognizes the problems teachers have in keeping up-to-date with the developments in educational methods that lead to more effective teaching and learning at a time when the content of the curriculum—from medical procedures to policy changes in health care provision—is also changing. The journal features reports of innovation and research in medical education, case studies, survey articles, practical guidelines, reviews of current literature and book reviews. All articles are peer reviewed.
期刊最新文献
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