机器学习在类风湿性关节炎诊疗及并发症预测中的研究进展
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天津中医药大学 医学技术学院

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天津市教委科研计划项目(2023KJ143)通信作者(Corresponding author): 刘琪,E-mail: LiuQi23@tjutcm.edu.cn(ORCID: 0000-0002-3871-9016)


Machine Learning in Rheumatoid Arthritis: Advances in Clinical Diagnosis, Therapeutic Strategies, and Complication Prognostication
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College of Medical Technology,Tianjin University of Traditional Chinese Medicine

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    摘要:

    类风湿性关节炎(Rheumatoid Arthritis, RA)作为一种慢性系统性自身免疫性疾病,以滑膜炎和进行性关节破坏为特征,具有高致残率与复杂并发症风险,严重威胁患者生活质量。尽管传统诊疗方案可以显著改善患者预后,但其早期诊断困难、治疗反应个体差异大及心血管疾病、间质性肺病等并发症的高发生率,仍是临床实践中的焦点问题。近年来人工智能与机器学习技术的快速发展,为突破RA诊疗瓶颈提供了全新机遇。通过深度挖掘RA多模态医学数据,如患者影像学、基因组学和电子健康记录等,机器学习模型在早期诊断、治疗反应分层管理及并发症风险建模,如心血管事件预警中均展现出潜在优势。但数据异质性、模型可解释性不足及临床转化壁垒等问题仍制约其广泛应用。本文旨在系统梳理机器学习在RA诊疗中的最新研究进展,为RA依据机器学习技术实现精准诊疗提供理论依据与实践参考。

    Abstract:

    Rheumatoid arthritis (RA) is a chronic systemic autoimmune disease characterized by synovitis and progressive joint destruction, leading to a high disability rate and complex complications that severely compromise patients' quality of life. Although traditional diagnosis and treatment have been shown to significantly enhance patient prognosis, challenges such as the difficulty of early diagnosis, substantial individual variability in treatment response, and the high prevalence of complications, including cardiovascular diseases and interstitial lung disease, continue to be focal points in clinical practice. Recent rapid advancements in artificial intelligence (AI) and machine learning (ML) technologies offer novel opportunities to overcome these bottlenecks in RA management. By deeply mining RA multimodal medical data, such as patient imaging, genomics, and electronic health records, ML models have shown potential advantages in early diagnosis, stratified management of treatment response, and modeling of complication risk, such as early warning of cardiovascular events. However, barriers such as data heterogeneity, limited model interpretability, and challenges in clinical translation hinder widespread adoption. This paper systematically reviews the latest research progress in applying ML to RA diagnosis and treatment, aiming to provide a theoretical foundation and practical reference for realizing ML-driven precision medicine in RA.

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  • 收稿日期:2025-03-05
  • 最后修改日期:2025-06-03
  • 录用日期:2025-11-17
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