精神病学中的人工智能,目前的趋势和挑战:最新综述

Q4 Psychology
Vijaya Chandra Reddy Avula, Sridhar Amalakanti
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引用次数: 0

摘要

人工智能(AI)代表了计算机科学与类人解决问题能力的革命性融合。在医学领域,人工智能有望带来革命性的变化,使医疗文档自动化,简化医疗保险流程,并增强医学图像分析。世界各地精神疾病的发病率不断上升,凸显了精神病学对人工智能的需求,语音分析和实时精神健康评估等创新方法正在出现。然而,挑战隐现。人工智能在放射学中的表现仍然不一致。有偏差的训练数据、工作流程中断以及缺乏验证标准都构成了障碍。语音识别系统会出现单词错误,影响临床记录的准确性。人工智能算法的黑箱性质及其在临床环境中的不透明性需要引起注意,特别是在保护患者安全方面。制定在精神卫生领域负责任地使用人工智能的准则、解决保密问题和处理危急情况至关重要。总之,尽管人工智能在革新精神病学和医学方面有着巨大的希望,但认识并应对其挑战对于将其负责任和有效地融入临床实践至关重要。
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 in psychiatry, present trends, and challenges: An updated review
Abstract Artificial intelligence (AI) represents a revolutionary fusion of computer science and human-like problem-solving capabilities. In medicine, AI promises transformative changes, automating medical documentation, streamlining health insurance processes, and enhancing medical image analysis. The rising prevalence of mental illness across the world underscores the need for AI in psychiatry, where innovative approaches, such as speech analysis and real-time mental health assessments, are emerging. However, challenges loom. AI’s performance in radiology remains inconsistent. Biased training data, workflow disruptions, and a lack of validation standards pose hurdles. Speech recognition systems suffer from word errors, impacting clinical notes’ accuracy. The black-box nature of AI algorithms and their opacity in clinical settings require attention, particularly in safeguarding patient safety. Establishing guidelines for responsible AI use in mental health, addressing confidentiality, and handling critical situations is crucial. In conclusion, while AI holds immense promise in revolutionizing psychiatry and medicine, recognizing and addressing its challenges is imperative for its responsible and effective integration into clinical practice.
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来源期刊
Archives of Mental Health
Archives of Mental Health Psychology-Clinical Psychology
CiteScore
0.30
自引率
0.00%
发文量
19
审稿时长
20 weeks
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