将人工智能应用于罕见疾病:强调法布里病经验教训的文献综述。

IF 3.4 2区 医学 Q2 GENETICS & HEREDITY
Dominique P Germain, David Gruson, Marie Malcles, Nicolas Garcelon
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引用次数: 0

摘要

背景:近年来,人工智能(AI)在罕见病中的应用发展迅速。在这篇综述中,我们概述了目前用于分类和分析大量数据(如电子健康记录中的标准化图像或特定文本)的最常见的机器学习和深度学习方法。为了说明这些方法是如何适应或发展用于罕见疾病的,我们重点研究了法布里病,一种由溶酶体α-半乳糖苷酶引起的x连锁遗传疾病。这种缺陷会导致多个器官受损。方法:我们在PubMed检索到2025年1月8日之前发表的关于人工智能、罕见病和法布里病的文章。进一步的搜索,仅限于2021年1月1日至2023年12月31日之间发表的文章,还使用与人工智能和法布里病中受影响的每个器官相关的关键字的双重组合,以及人工智能和罕见疾病。结果:共纳入AI与Fabry病相关文献20篇。在罕见病领域,人工智能方法可以前瞻性地应用于大量人群以识别特定患者,或者回顾性地应用于大数据集以诊断以前被忽视的罕见病。不同的人工智能方法可能有助于法布里病的诊断,帮助监测受影响器官的进展,并可能有助于个性化治疗的发展。在普通保健和医学成像中心实施人工智能方法可能有助于提高对罕见病的认识,并促使全科医生在诊断过程中更早地考虑这些疾病,而聊天机器人和远程医疗可能会加速患者转诊给罕见病专家。在医疗保健中使用人工智能技术可能会产生特定的道德风险,促使欧洲和美国建立旨在解决这些问题的新的人工智能监管框架。结论:基于人工智能的方法将大大提高罕见病的诊断和管理水平。在追求创新的同时,在这场技术革命中,人工智能需要人类的保障,这是一个关键问题,同时确保人类参与仍然是患者护理的核心。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying artificial intelligence to rare diseases: a literature review highlighting lessons from Fabry disease.

Background: Use of artificial intelligence (AI) in rare diseases has grown rapidly in recent years. In this review we have outlined the most common machine-learning and deep-learning methods currently being used to classify and analyse large amounts of data, such as standardized images or specific text in electronic health records. To illustrate how these methods have been adapted or developed for use with rare diseases, we have focused on Fabry disease, an X-linked genetic disorder caused by lysosomal α-galactosidase. A deficiency that can result in multiple organ damage.

Methods: We searched PubMed for articles focusing on AI, rare diseases, and Fabry disease published anytime up to 08 January 2025. Further searches, limited to articles published between 01 January 2021 and 31 December 2023, were also performed using double combinations of keywords related to AI and each organ affected in Fabry disease, and AI and rare diseases.

Results: In total, 20 articles on AI and Fabry disease were included. In the rare disease field, AI methods may be applied prospectively to large populations to identify specific patients, or retrospectively to large data sets to diagnose a previously overlooked rare disease. Different AI methods may facilitate Fabry disease diagnosis, help monitor progression in affected organs, and potentially contribute to personalized therapy development. The implementation of AI methods in general healthcare and medical imaging centres may help raise awareness of rare diseases and prompt general practitioners to consider these conditions earlier in the diagnostic pathway, while chatbots and telemedicine may accelerate patient referral to rare disease experts. The use of AI technologies in healthcare may generate specific ethical risks, prompting new AI regulatory frameworks aimed at addressing these issues to be established in Europe and the United States.

Conclusion: AI-based methods will lead to substantial improvements in the diagnosis and management of rare diseases. The need for a human guarantee of AI is a key issue in pursuing innovation while ensuring that human involvement remains at the centre of patient care during this technological revolution.

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来源期刊
Orphanet Journal of Rare Diseases
Orphanet Journal of Rare Diseases 医学-医学:研究与实验
CiteScore
6.30
自引率
8.10%
发文量
418
审稿时长
4-8 weeks
期刊介绍: Orphanet Journal of Rare Diseases is an open access, peer-reviewed journal that encompasses all aspects of rare diseases and orphan drugs. The journal publishes high-quality reviews on specific rare diseases. In addition, the journal may consider articles on clinical trial outcome reports, either positive or negative, and articles on public health issues in the field of rare diseases and orphan drugs. The journal does not accept case reports.
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