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The Current Research Landscape on the Artificial Intelligence Application in the Management of Depressive Disorders: A Bibliometric Analysis

机译:人工智能在抑郁症管理中的应用研究现状:文献计量分析

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摘要

Artificial intelligence (AI)-based techniques have been widely applied in depression research and treatment. Nonetheless, there is currently no systematic review or bibliometric analysis in the medical literature about the applications of AI in depression. We performed a bibliometric analysis of the current research landscape, which objectively evaluates the productivity of global researchers or institutions in this field, along with exploratory factor analysis (EFA) and latent dirichlet allocation (LDA). From 2010 onwards, the total number of papers and citations on using AI to manage depressive disorder have risen considerably. In terms of global AI research network, researchers from the United States were the major contributors to this field. Exploratory factor analysis showed that the most well-studied application of AI was the utilization of machine learning to identify clinical characteristics in depression, which accounted for more than 60% of all publications. Latent dirichlet allocation identified specific research themes, which include diagnosis accuracy, structural imaging techniques, gene testing, drug development, pattern recognition, and electroencephalography (EEG)-based diagnosis. Although the rapid development and widespread use of AI provide various benefits for both health providers and patients, interventions to enhance privacy and confidentiality issues are still limited and require further research.
机译:基于人工智能(AI)的技术已广泛应用于抑郁症的研究和治疗。尽管如此,医学文献中目前还没有关于AI在抑郁症中的应用的系统评价或文献计量分析。我们对当前研究领域进行了文献计量分析,该研究客观地评估了该领域的全球研究人员或机构的生产率,以及探索性因素分析(EFA)和潜在狄利克雷分配(LDA)。从2010年开始,有关使用AI处理抑郁症的论文和引用文献的总数已大大增加。在全球AI研究网络方面,来自美国的研究人员是该领域的主要贡献者。探索性因素分析表明,研究最深入的AI应用是利用机器学习来识别抑郁症的临床特征,这占所有出版物的60%以上。潜在狄利克雷分配确定了特定的研究主题,包括诊断准确性,结构成像技术,基因测试,药物开发,模式识别和基于脑电图(EEG)的诊断。尽管AI的快速发展和广泛使用为医疗提供者和患者带来了各种好处,但是增强隐私和机密性问题的干预措施仍然有限,需要进一步研究。

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