Su Kui, Yuan Xin, Huang Yukai, Yuan Qian, Yang Minghui, Sun Jianwu, Li Shuyi, Long Xinyi, Liu Lang, Li Tianwang, Yuan Zhengqiang
School of Biomedical and Pharmaceutical Sciences, Guangdong University of Technology, Higher Education Mega Center, 100 Outside Ring West Road, Guangzhou, 510006 People's Republic of China.
Department of Rheumatology and Immunology, Guangdong Second Provincial General Hospital, Guangzhou, 510317 People's Republic of China.
Indian J Orthop. 2023 Jul 29;57(10):1667-1677. doi: 10.1007/s43465-023-00936-0. eCollection 2023 Oct.
The accurate prediction of osteoarthritis (OA) severity in patients can be helpful to make the proper decision of intervention. This study aims to build up a powerful model to assess predictive risk factors and severity of knee osteoarthritis (KOA) in the clinical scenario.
A total of 4796 KOA cases and 1205 features were selected by feature selections from the public OA database, Osteoarthritis Initiative (OAI). Six machine learning-based models were constructed and compared for the accuracy of OA prediction. The gradient-boosting decision tree was used to identify important prediction features in the extreme gradient boosting (XGBoost) model. The performance of models was evaluated by F1-score.
Twenty features were determined as predictors for KOA risk and severity, including the subject characteristics, knee symptoms/risk factors and physical exam. The XGBoost model demonstrated 100% prediction accuracy for 54.7% of examined samples, and the remaining 45.3% of samples showed Kellgren and Lawrence (KL) gradings very close to the actual levels. It showed the highest prediction accuracy with an F1-score of 0.553 among the tested six models.
We demonstrate that the XGBoost is the best model for the prediction of KOA severity in the six examined models. In addition, 20 risk features were determined as the essential predictors of KOA, including the physical exam, knee symptoms/risk factors and subject characteristics, which may be useful for the identification of high-risk KOA cases and for making appropriate treatment decisions as well.
准确预测患者骨关节炎(OA)的严重程度有助于做出恰当的干预决策。本研究旨在建立一个强大的模型,以评估临床情景下膝关节骨关节炎(KOA)的预测风险因素和严重程度。
从公开的骨关节炎数据库骨关节炎倡议(OAI)中通过特征选择选取了4796例KOA病例和1205个特征。构建了六种基于机器学习的模型,并比较它们在OA预测方面的准确性。使用梯度提升决策树在极端梯度提升(XGBoost)模型中识别重要的预测特征。通过F1分数评估模型的性能。
确定了20个特征作为KOA风险和严重程度的预测指标,包括受试者特征、膝关节症状/风险因素和体格检查。XGBoost模型对54.7%的检测样本显示出100%的预测准确率,其余45.3%的样本显示的凯尔格伦和劳伦斯(KL)分级与实际水平非常接近。在测试的六个模型中,它以0.553的F1分数显示出最高的预测准确率。
我们证明,在六个测试模型中,XGBoost是预测KOA严重程度的最佳模型。此外,确定了20个风险特征为KOA的重要预测指标,包括体格检查、膝关节症状/风险因素和受试者特征,这可能有助于识别高风险KOA病例并做出适当的治疗决策。