He Yao, Wei Jiaying, Sun Yinsong, Bao Wei, Huang Denghua, Fan Yuanjun, Huang Wei, Wang Tingting
Department of Orthopedics, Banan Hospital of Chongqing Medical University, Chongqing, China.
Department of Orthopedics, The First Affiliated Hospital of Chongqing Medical University, Chongqing, China.
PLoS One. 2025 Aug 13;20(8):e0328299. doi: 10.1371/journal.pone.0328299. eCollection 2025.
Degenerative meniscus tears are often accompanied by varying degrees of osteoarthritis, making the prognostic outcome of arthroscopic partial meniscectomy (APM) difficult to predict. Our research objective is to develop and validate a multimodal deep learning radiology (MDLR) model based on the integration of multimodal data using deep learning radiology (DLR) scores from preoperative magnetic resonance imaging (MRI) images and clinical variables.
From February 2020 to February 2022, 452 eligible patients with degenerative meniscus tear who underwent APM were retrospectively enrolled in cohorts. DLR features were extracted from MRI of the patient's knee. Then, an MDLR model was used for the patient prognosis after arthroscopy. The MDLR model for prognostic risk stratification incorporated DLR signatures and clinical variable.
The standalone DLR model performed poorly, with a micro average receiver operating characteristic (ROC) curve and macro average ROC line of 0.780 and 0.765 in the training set, 0.747 and 0.747 in the validation set, and 0.720 and 0.732 in the test set, respectively, for predicting postoperative outcomes in degenerative meniscus tears. Multivariate analysis identified gender, height, weight, duration of pain, ESR, and VAS as indicators of poor prognosis. After combining the above clinical features, the performance of the MDLR model has been significantly improved, with the best performance achieved under the Light Gradient Boosting Machine (GBM) algorithm. The micro average ROC curve and macro average ROC line of this model for predicting the postoperative effect of degenerative meniscus tear were 0.917 and 0.919 in the training set, 0.874 and 0.882 in the validation set, and 0.921 and 0.951 in the test set, respectively. With these variables, the MDLR model provides four levels of prognosis for arthroscopic partial meniscectomy: Poor, pain relief 0-25%, Average, pain relief 25-50%, Good, pain relief 50-75%, Excellent, pain relief 75-100%.
A tool based on MDLR was developed to consider that the pain exacerbation time is an important prognosis factor for arthroscopic partial meniscectomy in degenerative meniscus tear patients. MDLR showed outstanding performance for the prognostic efficiency stratification of degenerative meniscus tear patients who underwent arthroscopic partial meniscectomy and may help physicians with therapeutic decision making and surveillance strategy selection in clinical practice.
退行性半月板撕裂常伴有不同程度的骨关节炎,使得关节镜下部分半月板切除术(APM)的预后难以预测。我们的研究目的是开发并验证一种基于多模态深度学习放射学(MDLR)的模型,该模型整合了术前磁共振成像(MRI)图像的深度学习放射学(DLR)评分和临床变量等多模态数据。
2020年2月至2022年2月,452例接受APM的符合条件的退行性半月板撕裂患者被回顾性纳入队列研究。从患者膝关节的MRI中提取DLR特征。然后,使用MDLR模型预测关节镜检查后的患者预后。用于预后风险分层的MDLR模型纳入了DLR特征和临床变量。
独立的DLR模型表现不佳,在训练集中预测退行性半月板撕裂术后结果的微平均受试者操作特征(ROC)曲线和宏平均ROC曲线分别为0.780和0.765,在验证集中为0.747和0.747,在测试集中为0.720和0.732。多因素分析确定性别、身高、体重、疼痛持续时间、红细胞沉降率(ESR)和视觉模拟评分(VAS)为预后不良的指标。结合上述临床特征后,MDLR模型的性能得到显著改善,在轻梯度提升机(GBM)算法下表现最佳。该模型预测退行性半月板撕裂术后效果的微平均ROC曲线和宏平均ROC曲线在训练集中分别为0.917和0.919,在验证集中为0.874和0.882,在测试集中为0.921和0.951。利用这些变量,MDLR模型为关节镜下部分半月板切除术提供了四个预后等级:差,疼痛缓解0 - 25%;一般,疼痛缓解25 - 50%;良好,疼痛缓解50 - 75%;优秀,疼痛缓解75 - 100%。
开发了一种基于MDLR的工具,考虑到疼痛加剧时间是退行性半月板撕裂患者关节镜下部分半月板切除术的重要预后因素。MDLR在接受关节镜下部分半月板切除术的退行性半月板撕裂患者的预后效率分层方面表现出色,可能有助于医生在临床实践中进行治疗决策和监测策略选择。