利用深度学习技术增强前交叉韧带损伤患者内侧半月板后角斜坡病变的检测。

Hyung Jun Park,Sungwon Ham,Euddeum Shim,Dong Hun Suh,Jae Gyoon Kim
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引用次数: 0

摘要

背景:半月板斜坡病变会影响膝关节的稳定性,尤其是与前交叉韧带(ACL)损伤相关时。虽然磁共振成像(MRI)是主要的诊断工具,但其诊断准确性仍然不够理想。我们的目的是确定深度学习技术是否可以增强基于mri的斜坡病变检测。方法我们回顾了236例接受关节镜手术的患者的记录,记录了前交叉韧带损伤和内侧半月板后角的状态。利用MRI数据建立了一个深度学习模型,用于斜坡病变检测。使用逻辑回归、极端梯度增强(XGBoost)和随机森林模型分析ACL重建患者的斜坡病变危险因素,并使用Swin Transformer Large架构将其整合到最终的预测模型中。结果基于MRI数据的深度学习模型的整体诊断性能优于临床医生的评估(准确率为73.3%比68.1%,特异性为78.0%比62.9%,敏感性为64.7%比76.4%)。纳入危险因素(年龄、胫骨后内侧骨髓水肿和外侧半月板撕裂)后,该模型的准确率提高至80.7%,敏感性为81.8%,特异性为80.9%。结论将深度学习与MRI数据和危险因素相结合,可显著提高斜坡病变的诊断准确性,超过了单独使用MRI模型和临床医生的诊断准确性。这项研究强调了人工智能的潜力,它可以为临床医生提供更准确的诊断工具来检测斜坡病变,从而潜在地提高治疗效果和患者预后。证据等级:诊断性三级。有关证据水平的完整描述,请参见作者说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Detection, Using Deep Learning Technology, of Medial Meniscal Posterior Horn Ramp Lesions in Patients with ACL Injury.
BACKGROUND Meniscal ramp lesions can impact knee stability, particularly when associated with anterior cruciate ligament (ACL) injuries. Although magnetic resonance imaging (MRI) is the primary diagnostic tool, its diagnostic accuracy remains suboptimal. We aimed to determine whether deep learning technology could enhance MRI-based ramp lesion detection. METHODS We reviewed the records of 236 patients who underwent arthroscopic procedures documenting ACL injuries and the status of the medial meniscal posterior horn. A deep learning model was developed using MRI data for ramp lesion detection. Ramp lesion risk factors among patients who underwent ACL reconstruction were analyzed using logistic regression, extreme gradient boosting (XGBoost), and random forest models and were integrated into a final prediction model using Swin Transformer Large architecture. RESULTS The deep learning model using MRI data demonstrated superior overall diagnostic performance to the clinicians' assessment (accuracy of 73.3% compared with 68.1%, specificity of 78.0% compared with 62.9%, and sensitivity of 64.7% compared with 76.4%). Incorporating risk factors (age, posteromedial tibial bone marrow edema, and lateral meniscal tears) improved the model's accuracy to 80.7%, with a sensitivity of 81.8% and a specificity of 80.9%. CONCLUSIONS Integrating deep learning with MRI data and risk factors significantly enhanced diagnostic accuracy for ramp lesions, surpassing that of the model using MRI alone and that of clinicians. This study highlights the potential of artificial intelligence to provide clinicians with more accurate diagnostic tools for detecting ramp lesions, potentially enhancing treatment and patient outcomes. LEVEL OF EVIDENCE Diagnostic Level III. See Instructions for Authors for a complete description of levels of evidence.
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