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Machine Learning in Clinical Psychology and Psychotherapy Education: A Mixed Methods Pilot Survey of Postgraduate Students at a Swiss University

机译:临床心理学与心理治疗教育的机器学习:瑞士大学研究生研究生的混合方法

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Background: There is increasing use of psychotherapy apps in mental health care. Objective: This mixed methods pilot study aimed to explore postgraduate clinical psychology students' familiarity and formal exposure to topics related to artificial intelligence and machine learning (AI/ML) during their studies. Methods: In April-June 2020, we conducted a mixed-methods online survey using a convenience sample of 120 clinical psychology students enrolled in a two-year Masters' program at a Swiss University. Results: In total 37 students responded (response rate: 37/120, 31%). Among respondents, 73% ( n = 27) intended to enter a mental health profession, and 97% reported that they had heard of the term “machine learning.” Students estimated 0.52% of their program would be spent on AI/ML education. Around half (46%) reported that they intended to learn about AI/ML as it pertained to mental health care. On 5-point Likert scale, students “moderately agreed” (median = 4) that AI/M should be part of clinical psychology/psychotherapy education. Qualitative analysis of students' comments resulted in four major themes on the impact of AI/ML on mental healthcare: (1) Changes in the quality and understanding of psychotherapy care; (2) Impact on patient-therapist interactions; (3) Impact on the psychotherapy profession; (4) Data management and ethical issues. Conclusions: This pilot study found that postgraduate clinical psychology students held a wide range of opinions but had limited formal education on how AI/ML-enabled tools might impact psychotherapy. The survey raises questions about how curricula could be enhanced to educate clinical psychology/psychotherapy trainees about the scope of AI/ML in mental healthcare.
机译:背景:心理治疗心理治疗中的心理治疗应用程序越来越多地使用。目的:这种混合方法试点研究旨在探讨研究生临床心理学学生熟悉和正规接触与人工智能和机器学习(AI / ML)相关的主题。方法:2020年4月 - 6月,我们使用120名临床心理学学生的便利样本进行了混合方法的在线调查,该学生在瑞士大学注册了两年的硕士课程。结果:总计37名学生回应(响应率:37/120,31%)。在受访者中,73%(n = 27)旨在进入心理卫生职业,97%的人报告说,他们已经听说过“机器学习”一词。学生估计其计划的0.52%将在AI / ML教育上度过。大约一半(46%)报告说,他们打算了解AI / ml,因为它有关精神保健。在5点李克特规模,学生“中等商定”(中位数= 4),AI / M应该是临床心理学/心理治疗教育的一部分。对学生的评论进行定性分析导致AI / ML对心理医疗保健的影响有四个主要主题:(1)心理治疗质量和理解的变化; (2)对患者治疗师相互作用的影响; (3)对心理治疗专业的影响; (4)数据管理和道德问题。结论:这项试验研究发现,研究生临床心理学学生持有了广泛的意见,但对AI / ML的工具如何影响心理治疗的情况有限。该调查提出了有关如何提高课程的问题,以教育临床心理学/心理治疗学员关于精神医疗保健的AI / ml的范围。

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