是时候让A/I(过敏症专科医生/免疫学家)在诊断和治疗先天免疫缺陷方面接受AI(人工智能)了吗?

IF 2.2 3区 医学 Q2 ALLERGY
Joseph A Bellanti
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引用次数: 0

摘要

背景:1970年,W.B.施瓦茨预测,计算机将通过提高医生的智力来彻底改变医学,这一愿景在过去的50年里基本上实现了。人工智能(AI)的最新进展,特别是在医疗保健领域,已经将人工智能从一个概念工具转变为临床实践的基本组成部分。人工智能已成功应用于诊断成像、卫生系统管理和患者护理工作流程。在免疫学领域,人们越来越认识到人工智能在诊断和管理先天性免疫错误等复杂疾病方面的潜力。本文探讨了人工智能在iei诊断和治疗中的不断发展的作用,强调了其在过敏/免疫学领域推进精准医学的潜力。为了说明这一潜力,选择了六个代表性的iei,每个都附有总结患者病史和实验室结果的临床小品。这些疾病包括严重联合免疫缺陷、常见变异性免疫缺陷、慢性肉芽肿病、x连锁无球蛋白血症、Wiskott-Aldrich综合征和活化的PI3K δ综合征。方法:应用原发性免疫缺陷、先天性免疫缺陷(IEIs)和过敏等术语,在医学文献数据库中进行广泛的文献综述。搜索的重点是确定探索人工智能技术与免疫学交叉的研究,特别是在iei的诊断和管理方面。结果:文献综述发现,人工智能在过敏和免疫学中的应用越来越多,有1907篇关于人工智能和过敏的文章,其中16篇专门关注IEI。人工智能在诊断准确性方面,特别是在罕见和复杂的免疫疾病方面,以及在提高临床决策效率方面显示出了希望。结论:人工智能通过彻底改变iei的诊断和治疗,对过敏症医师/免疫学家具有重大潜力。通过提高诊断精度、改善患者护理工作流程和实现个性化治疗策略,人工智能可以推进免疫学的实践。然而,为了在临床环境中充分利用人工智能的能力,必须解决数据质量、模型通用性和伦理考虑等挑战。本文强调了人工智能在免疫学中的变革潜力,并建议将其整合到临床实践中,以获得更好的患者结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Is it time for the A/I (allergist/immunologist) to embrace AI (artificial intelligence) in diagnosis and treatment of the inborn errors of immunity?

Background: In 1970, W.B. Schwartz predicted that computers would revolutionize medicine by enhancing the physician's intellect, a vision that has largely materialized in the past 5 decades. Recent advancements in artificial intelligence (AI), especially in health care, have transformed AI from a conceptual tool into a fundamental part of clinical practice. AI has been successfully applied in diagnostic imaging, health system management, and patient care workflows. Within immunology, AI's potential for diagnosing and managing complex conditions such as inborn errors of immunity (IEI) is increasingly recognized. This article explores the evolving role of AI in the diagnosis and treatment of IEIs, highlighting its potential to advance precision medicine in allergy/immunology. To illustrate this potential, six representative IEIs were selected, each accompanied by a clinical vignette that summarizes the patient history and laboratory findings. These include severe combined immunodeficiency, common variable immunodeficiency, chronic granulomatous disease, X-linked agammaglobulinemia, Wiskott-Aldrich syndrome, and the activated PI3K delta syndrome. Methods: An extensive literature review was conducted in medical literature data bases by applying terms such as primary immune deficiency, inborn errors of immunity (IEIs), and allergy. The search focused on identifying studies that explored the intersection of AI technologies with immunology, particularly with regard to the diagnosis and management of IEIs. Results: The literature review identified a growing body of work on the application of AI in allergy and immunology, with 1907 articles on AI and allergy, 16 of which focused specifically on IEI. AI has shown promise in diagnostic accuracy, particularly in rare and complex immunologic conditions, and in improving the efficiency of clinical decision-making. Conclusion: AI holds significant potential for the allergist/immunologist by revolutionizing the diagnosis and treatment of IEIs. By enhancing diagnostic precision, improving patient care workflows, and enabling personalized treatment strategies, AI can advance the practice of immunology. However, challenges such as data quality, model generalizability, and ethical considerations must be addressed to fully harness AI's capabilities in the clinical setting. This article highlights the transformative potential of AI in immunology and proposes its integration into clinical practice for better patient outcomes.

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来源期刊
CiteScore
5.70
自引率
35.70%
发文量
106
审稿时长
6-12 weeks
期刊介绍: Allergy & Asthma Proceedings is a peer reviewed publication dedicated to distributing timely scientific research regarding advancements in the knowledge and practice of allergy, asthma and immunology. Its primary readership consists of allergists and pulmonologists. The goal of the Proceedings is to publish articles with a predominantly clinical focus which directly impact quality of care for patients with allergic disease and asthma. Featured topics include asthma, rhinitis, sinusitis, food allergies, allergic skin diseases, diagnostic techniques, allergens, and treatment modalities. Published material includes peer-reviewed original research, clinical trials and review articles.
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