Advancing osteoarthritis research: the role of AI in clinical, imaging and omics fields

IF 14.3 1区 医学 Q1 CELL & TISSUE ENGINEERING
Jingfeng Ou, Jin Zhang, Momen Alswadeh, Zhenglin Zhu, Jijun Tang, Hongxun Sang, Ke Lu
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Abstract

Osteoarthritis (OA) is a degenerative joint disease with significant clinical and societal impact. Traditional diagnostic methods, including subjective clinical assessments and imaging techniques such as X-rays and MRIs, are often limited in their ability to detect early-stage OA or capture subtle joint changes. These limitations result in delayed diagnoses and inconsistent outcomes. Additionally, the analysis of omics data is challenged by the complexity and high dimensionality of biological datasets, making it difficult to identify key molecular mechanisms and biomarkers. Recent advancements in artificial intelligence (AI) offer transformative potential to address these challenges. This review systematically explores the integration of AI into OA research, focusing on applications such as AI-driven early screening and risk prediction from electronic health records (EHR), automated grading and morphological analysis of imaging data, and biomarker discovery through multi-omics integration. By consolidating progress across clinical, imaging, and omics domains, this review provides a comprehensive perspective on how AI is reshaping OA research. The findings have the potential to drive innovations in personalized medicine and targeted interventions, addressing longstanding challenges in OA diagnosis and management.

Abstract Image

推进骨关节炎研究:人工智能在临床、成像和海洋学领域的作用
骨关节炎(OA)是一种具有显著临床和社会影响的退行性关节疾病。传统的诊断方法,包括主观临床评估和成像技术,如x射线和核磁共振成像,通常在检测早期OA或捕捉细微关节变化方面能力有限。这些限制导致诊断延迟和结果不一致。此外,组学数据的分析受到生物数据集的复杂性和高维性的挑战,这使得识别关键的分子机制和生物标志物变得困难。人工智能(AI)的最新进展为应对这些挑战提供了变革性的潜力。本文系统探讨了人工智能与OA研究的整合,重点关注人工智能驱动的早期筛查和电子健康记录(EHR)风险预测、成像数据的自动分级和形态学分析以及通过多组学整合发现生物标志物等应用。通过整合临床、影像学和组学领域的进展,本综述提供了人工智能如何重塑OA研究的全面视角。这些发现有可能推动个性化医疗和针对性干预的创新,解决OA诊断和管理方面长期存在的挑战。
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来源期刊
Bone Research
Bone Research CELL & TISSUE ENGINEERING-
CiteScore
20.00
自引率
4.70%
发文量
289
审稿时长
20 weeks
期刊介绍: Established in 2013, Bone Research is a newly-founded English-language periodical that centers on the basic and clinical facets of bone biology, pathophysiology, and regeneration. It is dedicated to championing key findings emerging from both basic investigations and clinical research concerning bone-related topics. The journal's objective is to globally disseminate research in bone-related physiology, pathology, diseases, and treatment, contributing to the advancement of knowledge in this field.
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