利用自然语言处理筛查抑郁症:文献综述。

IF 1.9 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Bazen Gashaw Teferra, Alice Rueda, Hilary Pang, Richard Valenzano, Reza Samavi, Sridhar Krishnan, Venkat Bhat
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引用次数: 0

摘要

背景:抑郁症是一种普遍存在的全球性精神疾病,对个人和社会都有重大影响。自然语言处理(NLP)是人工智能的一个分支,它通过从文本数据中提取有意义的信息,为改善抑郁症筛查提供了可能,但也存在一些挑战和伦理方面的考虑:本文献综述旨在探讨现有的NLP抑郁症检测方法,讨论其成功之处和局限性,解决伦理问题,并强调潜在的偏见:我们使用 Semantic Scholar、PubMed 和 Google Scholar 进行了文献检索,以确定使用 NLP 进行抑郁症筛查的研究。关键词包括 "抑郁症筛查"、"抑郁症检测 "和 "自然语言处理"。只要是讨论将 NLP 技术应用于抑郁症筛查或检测的研究,都会被纳入其中。对研究进行筛选,选出相关性较强的研究,并提取和综合数据,以确定文献中的共同主题和空白点:包括情感分析、语言标记和深度学习模型在内的 NLP 技术为抑郁症筛查提供了实用工具。有监督和无监督机器学习模型以及大型语言模型(如转换器)在各种应用领域都表现出很高的准确性。然而,与隐私、偏见、可解释性有关的伦理问题以及缺乏保护个人的法规也随之而来。此外,文化和多语言视角也凸显了对文化敏感模型的需求:结论:NLP 为加强抑郁检测提供了机遇,但仍存在相当大的挑战。必须解决伦理方面的问题,需要管理指导来降低风险,还必须整合跨文化视角。未来的发展方向包括提高可解释性、个性化以及加强与数据科学家和机器学习工程师等领域专家的合作。NLP在加强心理健康护理方面的潜力仍然大有可为,这取决于克服障碍和持续创新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Screening for Depression Using Natural Language Processing: Literature Review.

Background: Depression is a prevalent global mental health disorder with substantial individual and societal impact. Natural language processing (NLP), a branch of artificial intelligence, offers the potential for improving depression screening by extracting meaningful information from textual data, but there are challenges and ethical considerations.

Objective: This literature review aims to explore existing NLP methods for detecting depression, discuss successes and limitations, address ethical concerns, and highlight potential biases.

Methods: A literature search was conducted using Semantic Scholar, PubMed, and Google Scholar to identify studies on depression screening using NLP. Keywords included "depression screening," "depression detection," and "natural language processing." Studies were included if they discussed the application of NLP techniques for depression screening or detection. Studies were screened and selected for relevance, with data extracted and synthesized to identify common themes and gaps in the literature.

Results: NLP techniques, including sentiment analysis, linguistic markers, and deep learning models, offer practical tools for depression screening. Supervised and unsupervised machine learning models and large language models like transformers have demonstrated high accuracy in a variety of application domains. However, ethical concerns related to privacy, bias, interpretability, and lack of regulations to protect individuals arise. Furthermore, cultural and multilingual perspectives highlight the need for culturally sensitive models.

Conclusions: NLP presents opportunities to enhance depression detection, but considerable challenges persist. Ethical concerns must be addressed, governance guidance is needed to mitigate risks, and cross-cultural perspectives must be integrated. Future directions include improving interpretability, personalization, and increased collaboration with domain experts, such as data scientists and machine learning engineers. NLP's potential to enhance mental health care remains promising, depending on overcoming obstacles and continuing innovation.

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来源期刊
Interactive Journal of Medical Research
Interactive Journal of Medical Research MEDICINE, RESEARCH & EXPERIMENTAL-
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审稿时长
12 weeks
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