Why is there no treatment for osteoarthritis – Opportunity for AI based big data analytics to advance the field

IF 9 2区 医学 Q1 ORTHOPEDICS
Osteoarthritis and Cartilage Pub Date : 2026-05-01 Epub Date: 2025-12-26 DOI:10.1016/j.joca.2025.12.021
F. Saxer , G. Jansen , S.M.A. Bierma-Zeinstra , B. Holzhauer , D. Demanse , J. Melnick , D. Vukadinovic Greetham , T. Rall , P. Mesenbrink , M. Schieker
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引用次数: 0

Abstract

Background

Osteoarthritis (OA) has long been researched but insights have not translated into novel treatments for OA. One reason may be the heterogeneity of patients suffering from OA. Developments in machine-learning (ML) especially privacy-preserving, federated approaches could help to detect patterns of patient characteristics that allow better segmentation of patient populations, generate prognostic insights on disease progression, and define regulatory acceptable pathways towards patient-relevant surrogate endpoints.

Opportunity

The article describes the vision of a collaborative inter-professional, inter-institutional and public-private activity leveraging the wealth of rich yet fragmented datasets to achieve this goal. We summarize the underlying assumptions, challenges and potential applications of such an ML-based approach.

Use cases

Employing federated training algorithms locally has the advantage of preserving privacy. The application of novel ML techniques to divers sets of multidimensional health care data such as registries, real-world evidence, trial data etc. allows not only prognostic and predictive inferences but can also overcome issues with incompleteness of variables, heterogeneity in database structures and multidimensionality of variables. This exploration of data can form the foundation for the development of covariates, digital twins, synthetic control groups and form a potential basis for trial emulation. In addition, the approach will enable the development of novel (surrogate) endpoints and inform enrichment strategies.

Conclusion

Leveraging ML in a federated framework, the richness of data on OA and the expertise from various areas including patients, providers, ethicists and regulators has the potential to revolutionize trial designs in OA and finally meet the needs of patients suffering from OA.
为什么没有治疗骨关节炎的方法——基于人工智能的大数据分析推动该领域发展的机会
骨关节炎(OA)研究已久,但见解尚未转化为OA的新治疗方法。其中一个原因可能是OA患者的异质性。机器学习(ML)的发展,特别是隐私保护,联合方法可以帮助检测患者特征的模式,从而更好地细分患者群体,产生疾病进展的预后见解,并定义通往患者相关替代终点的可接受的监管途径。机遇本文描述了利用丰富但碎片化的数据集财富来实现这一目标的跨专业、跨机构和公私合作活动的愿景。我们总结了这种基于机器学习的方法的潜在假设、挑战和潜在应用。用例在本地使用联邦训练算法具有保护隐私的优点。将新的机器学习技术应用于不同的多维医疗数据集,如注册表、真实世界的证据、试验数据等,不仅可以进行预后和预测推断,还可以克服变量不完整、数据库结构异质性和变量多维性等问题。这种对数据的探索可以为协变量、数字双胞胎、合成对照组的发展奠定基础,并为试验仿真提供潜在的基础。此外,该方法将能够开发新的(代理)端点,并为富集策略提供信息。在联邦框架中利用ML,丰富的OA数据和来自不同领域的专业知识,包括患者、提供者、伦理学家和监管机构,有可能彻底改变OA的试验设计,最终满足OA患者的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Osteoarthritis and Cartilage
Osteoarthritis and Cartilage 医学-风湿病学
CiteScore
11.70
自引率
7.10%
发文量
802
审稿时长
52 days
期刊介绍: Osteoarthritis and Cartilage is the official journal of the Osteoarthritis Research Society International. It is an international, multidisciplinary journal that disseminates information for the many kinds of specialists and practitioners concerned with osteoarthritis.
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