Artificial intelligence in digital pathology — time for a reality check

IF 82.2 1区 医学 Q1 ONCOLOGY
Arpit Aggarwal, Satvika Bharadwaj, Germán Corredor, Tilak Pathak, Sunil Badve, Anant Madabhushi
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Abstract

The past decade has seen the introduction of artificial intelligence (AI)-based approaches aimed at optimizing several workflows across many medical specialties. In clinical oncology, the most promising applications include those involving image analysis, such as digital pathology. In this Perspective, we provide a comprehensive examination of the developments in AI in digital pathology between 2019 and 2024. We evaluate the current landscape from the lens of technological innovations, regulatory trends, deployment and implementation, reimbursement and commercial implications. We assess the technological advances that have driven improvements in AI, enabling more robust and scalable solutions for digital pathology. We also examine regulatory developments, in particular those affecting in-house devices and laboratory-developed tests, which are shaping the landscape of AI-based tools in digital pathology. Finally, we discuss the role of reimbursement frameworks and commercial investment in the clinical adoption of AI-based technologies. In this Perspective, we highlight both the progress and challenges in AI-driven digital pathology over the past 5 years, outlining the path forward for its adoption into routine practice in clinical oncology. The authors of this Perspective evaluate the developments in the use of artificial intelligence (AI) in digital pathology for oncology applications between 2019 and 2024, addressing technological innovations, regulatory trends, implementation and financial implications. Importantly, they explore the current landscape of clinical deployment, highlighting future opportunities for the integration of AI into clinical oncology routine practice.

Abstract Image

Abstract Image

数字病理学中的人工智能——是时候进行现实检验了
在过去的十年中,人们引入了基于人工智能(AI)的方法,旨在优化许多医学专业的工作流程。在临床肿瘤学中,最有前途的应用包括那些涉及图像分析的应用,如数字病理学。从这个角度来看,我们对2019年至2024年间人工智能在数字病理学方面的发展进行了全面的研究。我们从技术创新、监管趋势、部署和实施、报销和商业影响的角度来评估当前的形势。我们评估了推动人工智能进步的技术进步,为数字病理学提供了更强大、更可扩展的解决方案。我们还研究了监管方面的发展,特别是那些影响内部设备和实验室开发的测试的发展,这些发展正在塑造数字病理学中基于人工智能的工具的格局。最后,我们讨论了报销框架和商业投资在临床采用人工智能技术中的作用。在这个视角中,我们强调了过去5年来人工智能驱动的数字病理学的进步和挑战,概述了将其应用于临床肿瘤学常规实践的前进道路。
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来源期刊
CiteScore
99.40
自引率
0.40%
发文量
114
审稿时长
6-12 weeks
期刊介绍: Nature Reviews publishes clinical content authored by internationally renowned clinical academics and researchers, catering to readers in the medical sciences at postgraduate levels and beyond. Although targeted at practicing doctors, researchers, and academics within specific specialties, the aim is to ensure accessibility for readers across various medical disciplines. The journal features in-depth Reviews offering authoritative and current information, contextualizing topics within the history and development of a field. Perspectives, News & Views articles, and the Research Highlights section provide topical discussions, opinions, and filtered primary research from diverse medical journals.
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