基于人工智能的测量在心理治疗实践中的可行性:患者和临床医生的观点

IF 1.2 Q3 PSYCHOLOGY, CLINICAL Counselling & Psychotherapy Research Pub Date : 2024-07-31 DOI:10.1002/capr.12800
Katie Aafjes-van Doorn
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引用次数: 0

摘要

背景:逐节跟踪患者报告的结果(如联盟和临床症状)已被证明可以改善治疗结果。然而,自我报告测量收集起来很麻烦,完成率也不一致。使用心理治疗数据集的概念验证机器学习研究应用表明,基于从心理治疗过程的视频记录中提取的行为标记,有可能生成对患者报告的联盟和症状评级的全自动预测。为了使这些基于人工智能(AI)的测量方法可行,患者和临床医生必须对视频记录他们的会话感到满意,并且必须在他们的心理治疗实践中部署这种基于人工智能的自动化模型。方法我们于2022年12月至2023年3月进行了两次在线调查研究。我们询问了954名患者和248名临床医生关于(1)常规结果监测的自我报告措施的使用和有用性,(2)视频记录治疗过程,(3)在治疗中利用基于人工智能的预测模型。结果患者和临床医生发现使用自我报告测量方法有用,但负担过重。虽然患者和临床医生都表示有兴趣和意愿接受基于人工智能的技术进行基于测量的护理,但与临床医生相比,患者更愿意记录他们的会话,并且对基于人工智能的测量反馈对临床结果的使用和有用性持更积极的看法。结论在人工智能测量工具成功应用于临床之前,临床医生应加强人工智能工具的使用实践和培训,以辅助临床工作。
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Feasibility of artificial intelligence-based measurement in psychotherapy practice: Patients' and clinicians' perspectives

Background

Tracking session-by-session patient-reported outcomes (e.g. alliance and clinical symptoms) has been shown to improve treatment outcomes. However, self-report measures are cumbersome to collect, and completion rates are inconsistent. Proof-of-concept machine learning research applications using psychotherapy data sets suggest that it may be possible to generate fully automated predictions of patient-reported alliance and symptom ratings based on behavioural markers extracted from video recordings of psychotherapy sessions. For these artificial intelligence (AI)-based measurements to be feasible, patients and clinicians must be comfortable with video recording their sessions and must be open to deploying such automated AI-based models in their psychotherapy practice.

Methods

We conducted two online survey studies between December 2022 and March 2023. We asked 954 patients and 248 clinicians about the use and usefulness of (1) self-report measures for routine outcome monitoring, (2) video recording therapy sessions and (3) utilising AI-based prediction models in their treatments.

Results

Patients and clinicians found the use of self-report measures useful but burdensome. While both patients and clinicians reported interest and willingness to embrace AI-based technology for measurement-based care, patients reported significantly more willingness to record their sessions, and more positive views on the use and usefulness of AI-based measurement feedback for clinical outcomes, compared with clinicians.

Conclusion

Clinicians should be provided with more practice and training in the use of AI-based tools to aid their clinical work before such AI-based measurement tools may be successfully implemented into clinical practice.

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来源期刊
Counselling & Psychotherapy Research
Counselling & Psychotherapy Research PSYCHOLOGY, CLINICAL-
CiteScore
4.40
自引率
12.50%
发文量
80
期刊介绍: Counselling and Psychotherapy Research is an innovative international peer-reviewed journal dedicated to linking research with practice. Pluralist in orientation, the journal recognises the value of qualitative, quantitative and mixed methods strategies of inquiry and aims to promote high-quality, ethical research that informs and develops counselling and psychotherapy practice. CPR is a journal of the British Association of Counselling and Psychotherapy, promoting reflexive research strongly linked to practice. The journal has its own website: www.cprjournal.com. The aim of this site is to further develop links between counselling and psychotherapy research and practice by offering accessible information about both the specific contents of each issue of CPR, as well as wider developments in counselling and psychotherapy research. The aims are to ensure that research remains relevant to practice, and for practice to continue to inform research development.
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