Department of Surgery, University of Cambridge, Cambridge, UK.
Department of Applied Mathematics and Theoretical Physics, University of Cambridge, Cambridge, UK.
Bone Joint J. 2024 Nov 1;106-B(11):1216-1222. doi: 10.1302/0301-620X.106B11.BJJ-2024-0453.R1.
Machine learning (ML), a branch of artificial intelligence that uses algorithms to learn from data and make predictions, offers a pathway towards more personalized and tailored surgical treatments. This approach is particularly relevant to prevalent joint diseases such as osteoarthritis (OA). In contrast to end-stage disease, where joint arthroplasty provides excellent results, early stages of OA currently lack effective therapies to halt or reverse progression. Accurate prediction of OA progression is crucial if timely interventions are to be developed, to enhance patient care and optimize the design of clinical trials.
A systematic review was conducted in accordance with PRISMA guidelines. We searched MEDLINE and Embase on 5 May 2024 for studies utilizing ML to predict OA progression. Titles and abstracts were independently screened, followed by full-text reviews for studies that met the eligibility criteria. Key information was extracted and synthesized for analysis, including types of data (such as clinical, radiological, or biochemical), definitions of OA progression, ML algorithms, validation methods, and outcome measures.
Out of 1,160 studies initially identified, 39 were included. Most studies (85%) were published between 2020 and 2024, with 82% using publicly available datasets, primarily the Osteoarthritis Initiative. ML methods were predominantly supervised, with significant variability in the definitions of OA progression: most studies focused on structural changes (59%), while fewer addressed pain progression or both. Deep learning was used in 44% of studies, while automated ML was used in 5%. There was a lack of standardization in evaluation metrics and limited external validation. Interpretability was explored in 54% of studies, primarily using SHapley Additive exPlanations.
Our systematic review demonstrates the feasibility of ML models in predicting OA progression, but also uncovers critical limitations that currently restrict their clinical applicability. Future priorities should include diversifying data sources, standardizing outcome measures, enforcing rigorous validation, and integrating more sophisticated algorithms. This paradigm shift from predictive modelling to actionable clinical tools has the potential to transform patient care and disease management in orthopaedic practice.
机器学习(ML)是人工智能的一个分支,它使用算法从数据中学习并进行预测,为更个性化和定制化的手术治疗提供了途径。这种方法对于常见的关节疾病,如骨关节炎(OA)尤其相关。与关节置换术提供出色结果的终末期疾病不同,OA 的早期阶段目前缺乏有效疗法来阻止或逆转进展。如果要及时开发干预措施,就需要准确预测 OA 的进展,以增强患者护理并优化临床试验设计。
我们按照 PRISMA 指南进行了系统综述。我们于 2024 年 5 月 5 日在 MEDLINE 和 Embase 上搜索了利用 ML 预测 OA 进展的研究。独立筛选标题和摘要,然后对符合入选标准的研究进行全文审查。提取并综合关键信息进行分析,包括数据类型(如临床、放射学或生物化学)、OA 进展定义、ML 算法、验证方法和结果测量。
最初确定的 1160 项研究中有 39 项被纳入。大多数研究(85%)发表于 2020 年至 2024 年之间,82%使用了公开可用的数据集,主要是骨关节炎倡议。ML 方法主要是监督式的,OA 进展的定义存在很大差异:大多数研究侧重于结构变化(59%),而较少的研究关注疼痛进展或两者兼而有之。44%的研究使用深度学习,5%的研究使用自动化 ML。评估指标缺乏标准化,外部验证有限。54%的研究探讨了可解释性,主要使用 Shapley 加性解释。
我们的系统综述表明,ML 模型在预测 OA 进展方面具有可行性,但也揭示了目前限制其临床应用的关键局限性。未来的重点应包括多样化数据来源、标准化结果测量、严格执行验证以及整合更复杂的算法。这种从预测建模到可操作的临床工具的范式转变有可能改变矫形实践中的患者护理和疾病管理。