Mika E. Mononen , Mikael J. Turunen , Lauri Stenroth , Simo Saarakkala , Mikael Boesen
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It also briefly reviews future research and how these methods could be used as a part of OA management.</p></div><div><h3>Results</h3><p>AI algorithms have proven highly effective in recognizing the subtle changes in joint tissues associated with OA and in identifying patients at high risk for the disease. While these automated tools facilitate early diagnosis, they typically do not provide personalized intervention strategies to prevent disease progression. AI-enhanced biomechanical modeling has the potential to simulate the effects of various conservative interventions (e.g., weight management, optimal footwear, and gait retraining) on slowing OA progression, which could be pivotal for patient engagement and preventive care.</p></div><div><h3>Conclusions</h3><p>The integration of AI with biomechanical modeling holds significant promise for enhancing the management of OA by not only predicting disease onset and progression but also by enabling personalized intervention plans. Future research should focus on the development of these models to include personalized, preventive strategies that could effectively engage patients and potentially delay or prevent the onset of OA. This approach could revolutionize patient care by making early, targeted intervention feasible.</p></div>","PeriodicalId":74378,"journal":{"name":"Osteoarthritis imaging","volume":"4 2","pages":"Article 100182"},"PeriodicalIF":0.0000,"publicationDate":"2024-05-21","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2772654124000102/pdfft?md5=be691a989dc9689be4e470c70f89b6f3&pid=1-s2.0-S2772654124000102-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Biomechanical modeling and imaging for knee osteoarthritis – is there a role for AI?\",\"authors\":\"Mika E. Mononen , Mikael J. 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It also briefly reviews future research and how these methods could be used as a part of OA management.</p></div><div><h3>Results</h3><p>AI algorithms have proven highly effective in recognizing the subtle changes in joint tissues associated with OA and in identifying patients at high risk for the disease. While these automated tools facilitate early diagnosis, they typically do not provide personalized intervention strategies to prevent disease progression. AI-enhanced biomechanical modeling has the potential to simulate the effects of various conservative interventions (e.g., weight management, optimal footwear, and gait retraining) on slowing OA progression, which could be pivotal for patient engagement and preventive care.</p></div><div><h3>Conclusions</h3><p>The integration of AI with biomechanical modeling holds significant promise for enhancing the management of OA by not only predicting disease onset and progression but also by enabling personalized intervention plans. Future research should focus on the development of these models to include personalized, preventive strategies that could effectively engage patients and potentially delay or prevent the onset of OA. 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引用次数: 0
摘要
本微型综述旨在评估骨关节炎(OA)研究领域的最新进展,尤其侧重于通过利用生物机械建模和人工智能(AI)的先进成像技术来早期检测和预测疾病进展。研究结果表明,人工智能算法在识别与 OA 相关的关节组织细微变化和识别高危患者方面非常有效。虽然这些自动化工具有助于早期诊断,但它们通常无法提供个性化的干预策略来预防疾病进展。人工智能增强型生物力学建模有可能模拟各种保守干预措施(如体重管理、最佳鞋袜和步态再训练)对减缓 OA 进展的影响,这对患者参与和预防性护理至关重要。未来的研究应侧重于这些模型的开发,以纳入个性化的预防策略,从而有效地吸引患者参与,并有可能推迟或预防 OA 的发病。这种方法可以实现早期、有针对性的干预,从而彻底改变对患者的护理。
Biomechanical modeling and imaging for knee osteoarthritis – is there a role for AI?
Objective
This mini review aims to assess the latest advancements in the field of osteoarthritis (OA) research, particularly focusing on the early detection and prediction of disease progression through the use of advanced imaging technologies utilizing biomechanical modeling and artificial intelligence (AI).
Design
The review consolidates and discusses findings from studies that utilize biomechanical modeling and/or machine learning algorithms to identify pathological changes in joint tissues indicative of OA or prediction of disease progression. It also briefly reviews future research and how these methods could be used as a part of OA management.
Results
AI algorithms have proven highly effective in recognizing the subtle changes in joint tissues associated with OA and in identifying patients at high risk for the disease. While these automated tools facilitate early diagnosis, they typically do not provide personalized intervention strategies to prevent disease progression. AI-enhanced biomechanical modeling has the potential to simulate the effects of various conservative interventions (e.g., weight management, optimal footwear, and gait retraining) on slowing OA progression, which could be pivotal for patient engagement and preventive care.
Conclusions
The integration of AI with biomechanical modeling holds significant promise for enhancing the management of OA by not only predicting disease onset and progression but also by enabling personalized intervention plans. Future research should focus on the development of these models to include personalized, preventive strategies that could effectively engage patients and potentially delay or prevent the onset of OA. This approach could revolutionize patient care by making early, targeted intervention feasible.