Advancing Medical Imaging Research Through Standardization: The Path to Rapid Development, Rigorous Validation, and Robust Reproducibility.

IF 7 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Kyulee Jeon, Woo Yeon Park, Charles E Kahn, Paul Nagy, Seng Chan You, Soon Ho Yoon
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引用次数: 0

Abstract

Abstract: Artificial intelligence (AI) has made significant advances in radiology. Nonetheless, challenges in AI development, validation, and reproducibility persist, primarily due to the lack of high-quality, large-scale, standardized data across the world. Addressing these challenges requires comprehensive standardization of medical imaging data and seamless integration with structured medical data.Developed by the Observational Health Data Sciences and Informatics community, the OMOP Common Data Model enables large-scale international collaborations with structured medical data. It ensures syntactic and semantic interoperability, while supporting the privacy-protected distribution of research across borders. The recently proposed Medical Imaging Common Data Model is designed to encompass all DICOM-formatted medical imaging data and integrate imaging-derived features with clinical data, ensuring their provenance.The harmonization of medical imaging data and its seamless integration with structured clinical data at a global scale will pave the way for advanced AI research in radiology. This standardization will enable federated learning, ensuring privacy-preserving collaboration across institutions and promoting equitable AI through the inclusion of diverse patient populations. Moreover, it will facilitate the development of foundation models trained on large-scale, multimodal datasets, serving as powerful starting points for specialized AI applications. Objective and transparent algorithm validation on a standardized data infrastructure will enhance reproducibility and interoperability of AI systems, driving innovation and reliability in clinical applications.

通过标准化推进医学成像研究:快速开发、严格验证和稳健再现之路。
摘要:人工智能(AI)在放射学领域取得了重大进展。然而,人工智能的开发、验证和可重复性仍面临挑战,这主要是由于全球缺乏高质量、大规模的标准化数据。OMOP 通用数据模型由观察健康数据科学和信息学团体开发,可实现与结构化医疗数据的大规模国际合作。它确保了语法和语义的互操作性,同时支持受隐私保护的跨国界研究分布。最近提出的医学影像通用数据模型旨在涵盖所有 DICOM 格式的医学影像数据,并将影像衍生特征与临床数据整合在一起,确保其出处。医学影像数据的统一及其与结构化临床数据在全球范围内的无缝整合将为放射学领域的高级人工智能研究铺平道路。这种标准化将实现联合学习,确保跨机构的隐私保护合作,并通过纳入不同的患者群体促进公平的人工智能。此外,它还将促进开发在大规模、多模态数据集上训练的基础模型,为专门的人工智能应用提供强大的起点。在标准化数据基础设施上进行客观、透明的算法验证将提高人工智能系统的可重复性和互操作性,推动临床应用的创新和可靠性。
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来源期刊
Investigative Radiology
Investigative Radiology 医学-核医学
CiteScore
15.10
自引率
16.40%
发文量
188
审稿时长
4-8 weeks
期刊介绍: Investigative Radiology publishes original, peer-reviewed reports on clinical and laboratory investigations in diagnostic imaging, the diagnostic use of radioactive isotopes, computed tomography, positron emission tomography, magnetic resonance imaging, ultrasound, digital subtraction angiography, and related modalities. Emphasis is on early and timely publication. Primarily research-oriented, the journal also includes a wide variety of features of interest to clinical radiologists.
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