人工智能有助于情绪障碍的检测和诊断准确性,并预测自杀风险:系统综述。

IF 1.5 4区 医学 Q3 PSYCHIATRY
Sahithi Edavally, D Doug Miller, Nagy A Youssef
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引用次数: 1

摘要

背景:情绪障碍通常通过临床访谈诊断,但许多病例被漏诊或误诊。情绪障碍增加了自杀的风险,因此必须迅速诊断和治疗这些障碍。人工智能(AI)已被研究用于诊断情绪障碍,但文献的优点尚未得到评估。本系统综述旨在理解和解释人工智能方法,并评估其在增强情绪障碍临床诊断以及识别自杀风险增加个体方面的应用。方法:我们对截至2020年8月1日的所有研究进行了系统的文献综述,研究了不同的人工智能技术在诊断情绪障碍和识别因情绪障碍而自杀风险增加的个体方面的功效。结果:我们的文献检索产生了使用人工智能技术的13项研究(10项关于情绪障碍,3项描述自杀风险)。机器学习和人工神经网络是最常用的;两者在帮助诊断情绪障碍和评估自杀风险方面都表现出了优点。结论:数据显示,人工智能方法在改善情绪障碍的诊断以及识别自杀风险方面具有优势。双相情感障碍需要更多的研究,因为只有两项研究探讨了这种情况,而且经常被误诊。虽然在这篇综述中只详细讨论了一些人工智能技术,但还有更多可以使用的技术,应该在未来的研究中进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence to aid detection and diagnostic accuracy of mood disorders and predict suicide risk: A systematic review.

Background: Mood disorders often are diagnosed by clinical interview, yet many cases are missed or misdiagnosed. Mood disorders increase the risk of suicide, making it imperative to diagnose and treat these disorders quickly. Artificial intelligence (AI) has been investigated for diagnosing mood disorders, but the merits of the literature have not been evaluated. This systematic review aims to understand and explain AI methods and evaluate their use in augmenting clinical diagnosis of mood disorders as well as identifying individuals at increased suicide risk.

Methods: We conducted a systematic literature review of all studies until August 1, 2020 examining the efficacy of different AI techniques for diagnosing mood disorders and identifying individuals at increased suicide risk because of a mood disorder.

Results: Our literature search generated 13 studies (10 of mood disorders and 3 describing suicide risk) where AI techniques were used. Machine learning and artificial neural networks were most commonly used; both showed merit in helping to diagnose mood disorders and assess suicide risk.

Conclusions: The data shows that AI methods have merit in improving the diagnosis of mood disorders as well as identifying suicide risk. More research is needed for bipolar disorder because only 2 studies explored this condition, and it is often misdiagnosed. Although only a few AI techniques are discussed in detail in this review, there are many more that can be employed, and should be evaluated in future studies.

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来源期刊
CiteScore
1.80
自引率
7.70%
发文量
47
审稿时长
>12 weeks
期刊介绍: The ANNALS publishes up-to-date information regarding the diagnosis and /or treatment of persons with mental disorders. Preferred manuscripts are those that report the results of controlled clinical trials, timely and thorough evidence-based reviews, letters to the editor, and case reports that present new appraisals of pertinent clinical topics.
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