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基于自然语言处理模型的自我管理干预措施对减轻抑郁和焦虑症状的效果:系统评价和荟萃分析。

Self-Administered Interventions Based on Natural Language Processing Models for Reducing Depressive and Anxiety Symptoms: Systematic Review and Meta-Analysis.

机构信息

Instituto Peruano de Orientación Psicológica, Lima, Peru.

Department of Biomedical Informatics, School of Medicine, University of Utah, Salt Lake City, UT, United States.

出版信息

JMIR Ment Health. 2024 Aug 21;11:e59560. doi: 10.2196/59560.

Abstract

BACKGROUND

The introduction of natural language processing (NLP) technologies has significantly enhanced the potential of self-administered interventions for treating anxiety and depression by improving human-computer interactions. Although these advances, particularly in complex models such as generative artificial intelligence (AI), are highly promising, robust evidence validating the effectiveness of the interventions remains sparse.

OBJECTIVE

The aim of this study was to determine whether self-administered interventions based on NLP models can reduce depressive and anxiety symptoms.

METHODS

We conducted a systematic review and meta-analysis. We searched Web of Science, Scopus, MEDLINE, PsycINFO, IEEE Xplore, Embase, and Cochrane Library from inception to November 3, 2023. We included studies with participants of any age diagnosed with depression or anxiety through professional consultation or validated psychometric instruments. Interventions had to be self-administered and based on NLP models, with passive or active comparators. Outcomes measured included depressive and anxiety symptom scores. We included randomized controlled trials and quasi-experimental studies but excluded narrative, systematic, and scoping reviews. Data extraction was performed independently by pairs of authors using a predefined form. Meta-analysis was conducted using standardized mean differences (SMDs) and random effects models to account for heterogeneity.

RESULTS

In all, 21 articles were selected for review, of which 76% (16/21) were included in the meta-analysis for each outcome. Most of the studies (16/21, 76%) were recent (2020-2023), with interventions being mostly AI-based NLP models (11/21, 52%); most (19/21, 90%) delivered some form of therapy (primarily cognitive behavioral therapy: 16/19, 84%). The overall meta-analysis showed that self-administered interventions based on NLP models were significantly more effective in reducing both depressive (SMD 0.819, 95% CI 0.389-1.250; P<.001) and anxiety (SMD 0.272, 95% CI 0.116-0.428; P=.001) symptoms compared to various control conditions. Subgroup analysis indicated that AI-based NLP models were effective in reducing depressive symptoms (SMD 0.821, 95% CI 0.207-1.436; P<.001) compared to pooled control conditions. Rule-based NLP models showed effectiveness in reducing both depressive (SMD 0.854, 95% CI 0.172-1.537; P=.01) and anxiety (SMD 0.347, 95% CI 0.116-0.578; P=.003) symptoms. The meta-regression showed no significant association between participants' mean age and treatment outcomes (all P>.05). Although the findings were positive, the overall certainty of evidence was very low, mainly due to a high risk of bias, heterogeneity, and potential publication bias.

CONCLUSIONS

Our findings support the effectiveness of self-administered NLP-based interventions in alleviating depressive and anxiety symptoms, highlighting their potential to increase accessibility to, and reduce costs in, mental health care. Although the results were encouraging, the certainty of evidence was low, underscoring the need for further high-quality randomized controlled trials and studies examining implementation and usability. These interventions could become valuable components of public health strategies to address mental health issues.

TRIAL REGISTRATION

PROSPERO International Prospective Register of Systematic Reviews CRD42023472120; https://www.crd.york.ac.uk/prospero/display_record.php?ID=CRD42023472120.

摘要

背景

自然语言处理 (NLP) 技术的引入极大地提高了通过人机交互治疗焦虑和抑郁的自我管理干预的潜力。尽管这些进展,特别是在生成式人工智能 (AI) 等复杂模型方面,具有很高的前景,但仍缺乏验证干预效果的稳健证据。

目的

本研究旨在确定基于 NLP 模型的自我管理干预是否可以减轻抑郁和焦虑症状。

方法

我们进行了系统回顾和荟萃分析。我们从 1966 年 1 月 1 日至 2023 年 11 月 3 日,在 Web of Science、Scopus、MEDLINE、PsycINFO、IEEE Xplore、Embase 和 Cochrane Library 中搜索了研究。我们纳入了通过专业咨询或经过验证的心理计量工具诊断为抑郁或焦虑的任何年龄的参与者的研究。干预措施必须是基于 NLP 模型的自我管理,且有被动或主动对照。测量的结果包括抑郁和焦虑症状评分。我们纳入了随机对照试验和准实验研究,但排除了叙述性、系统性和范围性综述。数据提取由两名作者独立使用预定义的表格进行。使用标准化均数差 (SMD) 和随机效应模型进行荟萃分析,以解释异质性。

结果

共有 21 篇文章被选入综述,其中 76%(16/21)的文章被纳入每个结局的荟萃分析。大多数研究(21/21,76%)是最近(2020-2023 年)的,干预措施主要是基于 AI 的 NLP 模型(11/21,52%);大多数(21/21,90%)提供了某种形式的治疗(主要是认知行为疗法:16/19,84%)。总体荟萃分析表明,与各种对照条件相比,基于 NLP 模型的自我管理干预在减轻抑郁(SMD 0.819,95%CI 0.389-1.250;P<.001)和焦虑(SMD 0.272,95%CI 0.116-0.428;P=.001)症状方面更有效。亚组分析表明,基于 AI 的 NLP 模型在减轻抑郁症状(SMD 0.821,95%CI 0.207-1.436;P<.001)方面比汇总对照条件更有效。基于规则的 NLP 模型在减轻抑郁(SMD 0.854,95%CI 0.172-1.537;P=.01)和焦虑(SMD 0.347,95%CI 0.116-0.578;P=.003)症状方面均有效。元回归显示,参与者的平均年龄与治疗结果之间没有显著关联(均 P>.05)。尽管结果是积极的,但证据的整体确定性非常低,主要是由于存在高偏倚风险、异质性和潜在的发表偏倚。

结论

我们的研究结果支持基于自我管理的 NLP 干预在减轻抑郁和焦虑症状方面的有效性,强调了它们在增加心理健康护理的可及性和降低成本方面的潜力。尽管结果令人鼓舞,但证据的确定性较低,这突出表明需要进一步开展高质量的随机对照试验和研究,以检验实施和可用性。这些干预措施可能成为解决心理健康问题的公共卫生策略的重要组成部分。

试验注册

PROSPERO 国际前瞻性系统评价注册库 CRD42023472120;https://www.crd.york.ac.uk/prospero/display_record.php?ID=CRD42023472120。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8f06/11375382/c8ea757f28b3/mental_v11i1e59560_fig1.jpg

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