利用人工智能预测、诊断和治疗低收入和中等收入国家围产期妇女的抑郁和焦虑:系统综述

IF 4.9 0 PSYCHIATRY
Uchechi Shirley Anaduaka,Ayomide Oluwaseyi Oladosu,Samantha Katsande,Clinton Sekyere Frempong,Success Awuku-Amador
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引用次数: 0

摘要

人工智能(AI)工具在孕产妇心理健康(MMH)研究中的应用越来越受到关注。尽管其使用量不断增加,但人们对其在低收入和中等收入国家的前景和挑战知之甚少。本研究旨在系统地回顾有关人工智能在中低收入国家解决MMH问题中的作用的文章。方法采用患者和公众参与的方法,探讨人工智能在低收入国家围产期妇女抑郁和焦虑(PDA)预测、诊断和治疗中的作用。对2010年1月至2024年7月期间发表的关于PDA的人工智能工具/方法的研究进行了七个数据库的检索。根据使用covid - ence的系统评价和荟萃分析指南的首选报告项目确定和提取符合条件的研究,并使用主题分析对数据进行综合。结果在2203项研究中,来自8个国家的19项研究被认为符合提取和合成条件。该综述显示,监督式机器学习方法是最常见的人工智能方法,用于改善围产期妇女抑郁和焦虑的早期检测。此外,产后抑郁症是本研究中最常见的MMH状况。此外,该综述显示,只有三种会话代理(ca)/聊天机器人用于提供心理治疗。结论研究结果强调了基于人工智能的方法在识别PDA危险因素和提供心理治疗方面的潜力。未来的研究应该调查基于人工智能的聊天机器人/ ca有效性的潜在机制,并评估对确诊母亲的长期影响,以帮助改善低收入国家的MMH。普洛斯彼罗注册号crd42024549455。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging artificial intelligence in the prediction, diagnosis and treatment of depression and anxiety among perinatal women in low- and middle-income countries: a systematic review.
AIM The adoption of artificial intelligence (AI) tools is gaining traction in maternal mental health (MMH) research. Despite its growing usage, little is known about its prospects and challenges in low- and middle-income countries (LMICs). This study aims to systematically review articles on the role of AI in addressing MMH in LMICs. METHODS This systematic review adopts a patient and public involvement approach to investigate the role of AI in predicting, diagnosing or treating perinatal depression and anxiety (PDA) among perinatal women in LMICs. Seven databases were searched for studies that reported on AI tools/methods for PDA published between January 2010 and July 2024. Eligible studies were identified and extracted based on the Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines using Covidence, and the data were synthesised using thematic analysis. RESULTS Out of 2203 studies, 19 studies across eight countries were deemed eligible for extraction and synthesis. The review revealed that the supervised machine learning method was the most common AI approach and was used to improve the early detection of depression and anxiety among perinatal women. Additionally, postpartum depression was the most frequently investigated MMH condition in this study. Further, the review revealed only three conversational agents (CAs)/chatbots used to deliver psychological treatment. CONCLUSIONS The findings underscore the potential of AI-based methods in identifying risk factors and delivering psychological treatment for PDA. Future research should investigate the underlying mechanisms of the effectiveness of AI-based chatbots/CAs and assess the long-term effects for diagnosed mothers, to aid the improvement of MMH in LMICs. PROSPERO REGISTRATION NUMBER CRD42024549455.
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