人工生成智能的出现及其对泌尿外科的潜在影响。

IF 1.2 4区 医学 Q3 UROLOGY & NEPHROLOGY
Canadian Journal of Urology Pub Date : 2023-08-01
Mohamed Javid, Madhu Reddiboina, Mahendra Bhandari
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引用次数: 0

摘要

导语:人工生成智能(AGI)和大型语言模型(llm)在医疗保健领域获得了极大的关注,并对改变我们生活的方方面面有着巨大的希望,泌尿外科也不例外。材料和方法:我们对电子数据库进行了全面的文献检索,并纳入了讨论医疗保健领域AGI和llm的文章。此外,我们将我们在不同情况下与ChatGPT和GPT-4交互的经验与真实案例报告和案例构建结合起来。结果:我们的综述强调了这些技术在泌尿外科的潜在应用和可能的影响,用于鉴别诊断、优先选择治疗方案、促进研究、外科医生和患者教育。在他们目前的发展阶段,我们已经认识到需要并发验证和持续的人类互动,以诱导人类反馈的反向强化学习,使他们成熟到真实。在其广泛应用于临床实践之前,我们需要有意识地适应幻觉并保护患者的隐私。我们对这些缺点提出了可能的补救措施,并强调人类互动在其进化中的关键作用。结论:这些工具的整合有可能彻底改变泌尿外科,但它也提出了一些需要注意的挑战。为了充分利用这些模型的潜力,泌尿科医生必须始终如一地用他们的临床意识和经验来训练这些工具。我们敦促泌尿外科社区积极参与AGI和LLM的发展,以应对潜在的挑战。这些模式可以帮助我们释放我们的全部潜力,帮助我们实现更好的工作与生活平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emergence of artificial generative intelligence and its potential impact on urology.

Introduction: Artificial generative intelligence (AGI) and large language models (LLMs) have gained significant attention in healthcare and hold enormous promise for transforming every aspect of our life and urology is no exception.

Materials and methods: We conducted a comprehensive literature search of electronic databases and included articles discussing AGI and LLMs in healthcare. Additionally, we have incorporated our experiences interacting with the ChatGPT and GPT-4 in different situations with real case reports and case constructs.

Results: Our review highlights the potential applications and likely impact of these technologies in urology, for differential diagnosis, prioritizing treatment options, and facilitating research, surgeon, and patient education. At their current developmental stage, we have recognized the need for concurrent validation and continuous human interaction necessary to induce inverse reinforced learning with human feedback to mature them to authenticity. We need to consciously adjust to the hallucinations and guard patients' confidentiality before their extensive implementations in clinical practice. We propose possible remedies for these shortcomings and emphasize the critical role of human interaction in their evolution.

Conclusion: The integration of these tools has the potential to revolutionize urology, but it also presents several challenges needing attention. To harness the full potential of these models, urologists must consistently engage in training these tools with their clinical sense and experience. We urge the urology community to actively participate in AGI and LLM development to address potential challenges. These models could help us in unleashing our full potential and help us achieve a better work-life balance.

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来源期刊
Canadian Journal of Urology
Canadian Journal of Urology UROLOGY & NEPHROLOGY-
CiteScore
1.90
自引率
0.00%
发文量
86
审稿时长
6-12 weeks
期刊介绍: The CJU publishes articles of interest to the field of urology and related specialties who treat urologic diseases.
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