Stephenson Callum, Jagayat Jasleen, Kumar Anchan, Khamooshi Paniz, Eadie Jazmin, Pannu Amrita, Meartsi Dekel, Danaee Eileen, Gutierrez Gilmar, Khan Ferwa, Gizzarelli Tessa, Patel Charmy, Moghimi Elnaz, Yang Megan, Shirazi Amirhossein, Omrani Mohsen, Patel Archana, Alavi Nazanin
Department of Psychiatry, Faculty of Health Sciences, Queen's University, Kingston, ON, Canada.
Centre for Neuroscience Studies, Faculty of Health Sciences, Queen's University, Kingston, ON, Canada.
Front Psychiatry. 2023 Dec 21;14:1220607. doi: 10.3389/fpsyt.2023.1220607. eCollection 2023.
Depression is a leading cause of disability worldwide, affecting up to 300 million people globally. Despite its high prevalence and debilitating effects, only one-third of patients newly diagnosed with depression initiate treatment. Electronic cognitive behavioural therapy (e-CBT) is an effective treatment for depression and is a feasible solution to make mental health care more accessible. Due to its online format, e-CBT can be combined with variable therapist engagement to address different care needs. Typically, a multi-professional care team determines which combination therapy most benefits the patient. However, this process can add to the costs of these programs. Artificial intelligence (AI) has been proposed to offset these costs.
This study is a double-blinded randomized controlled trial recruiting individuals experiencing depression. The degree of care intensity a participant will receive will be randomly decided by either: (1) a machine learning algorithm, or (2) an assessment made by a group of healthcare professionals. Subsequently, participants will receive depression-specific e-CBT treatment through the secure online platform. There will be three available intensities of therapist interaction: (1) e-CBT; (2) e-CBT with a 15-20-min phone/video call; and (3) e-CBT with pharmacotherapy. This approach aims to accurately allocate care tailored to each patient's needs, allowing for more efficient use of resources.
Artificial intelligence and providing patients with varying intensities of care can increase the efficiency of mental health care services. This study aims to determine a cost-effective method to decrease depressive symptoms and increase treatment adherence to online psychotherapy by allocating the correct intensity of therapist care for individuals diagnosed with depression. This will be done by comparing a decision-making machine learning algorithm to a multi-professional care team. This approach aims to accurately allocate care tailored to each patient's needs, allowing for more efficient use of resources with the convergence of technologies and healthcare.
The study received ethics approval and began participant recruitment in December 2022. Participant recruitment has been conducted through targeted advertisements and physician referrals. Complete data collection and analysis are expected to conclude by August 2024.
ClinicalTrials.Gov, identifier NCT04747873.
抑郁症是全球致残的主要原因,全球多达3亿人受其影响。尽管其患病率高且具有使人衰弱的影响,但新诊断出抑郁症的患者中只有三分之一开始接受治疗。电子认知行为疗法(e-CBT)是治疗抑郁症的有效方法,也是使心理健康护理更易获得的可行解决方案。由于其在线形式,e-CBT可以与不同程度的治疗师参与相结合,以满足不同的护理需求。通常,一个多专业护理团队会确定哪种联合疗法对患者最有益。然而,这个过程会增加这些项目的成本。有人提出利用人工智能(AI)来抵消这些成本。
本研究是一项招募抑郁症患者的双盲随机对照试验。参与者将接受的护理强度程度将通过以下两种方式随机决定:(1)机器学习算法,或(2)一组医疗保健专业人员进行的评估。随后,参与者将通过安全的在线平台接受针对抑郁症的e-CBT治疗。有三种可用的治疗师互动强度:(1)e-CBT;(2)e-CBT加15 - 20分钟的电话/视频通话;(3)e-CBT加药物治疗。这种方法旨在准确分配适合每个患者需求的护理,从而更有效地利用资源。
人工智能以及为患者提供不同强度的护理可以提高心理健康护理服务的效率。本研究旨在确定一种具有成本效益的方法,通过为被诊断患有抑郁症的个体分配正确强度的治疗师护理,来减轻抑郁症状并提高对在线心理治疗的治疗依从性。这将通过将一种决策机器学习算法与一个多专业护理团队进行比较来实现。这种方法旨在准确分配适合每个患者需求的护理,随着技术与医疗保健的融合,实现更有效的资源利用。
该研究已获得伦理批准,并于2022年12月开始招募参与者。参与者招募通过定向广告和医生推荐进行。预计完整的数据收集和分析将于2024年8月结束。
ClinicalTrials.Gov,标识符NCT04747873。