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深度学习风险评估模型预测 48 个月随访期间放射学内侧关节间隙丢失的进展。

Deep learning risk assessment models for predicting progression of radiographic medial joint space loss over a 48-MONTH follow-up period.

机构信息

Department of Radiology, University of Wisconsin-Madison, Madison, WI, USA; Department of Electrical and Computer Engineering, University of Wisconsin-Madison, Madison, WI, USA.

Department of Radiology, Massachusetts General Hospital, Harvard University, Boston, MA, USA.

出版信息

Osteoarthritis Cartilage. 2020 Apr;28(4):428-437. doi: 10.1016/j.joca.2020.01.010. Epub 2020 Feb 6.

Abstract

OBJECTIVE

To develop and evaluate deep learning (DL) risk assessment models for predicting the progression of radiographic medial joint space loss using baseline knee X-rays.

METHODS

Knees from the Osteoarthritis Initiative without and with progression of radiographic joint space loss (defined as ≥ 0.7 mm decrease in medial joint space width measurement between baseline and 48-month follow-up X-rays) were randomly stratified into training (1400 knees) and hold-out testing (400 knees) datasets. A DL network was trained to predict the progression of radiographic joint space loss using the baseline knee X-rays. An artificial neural network was used to develop a traditional model for predicting progression utilizing demographic and radiographic risk factors. A combined joint training model was developed using a DL network to extract information from baseline knee X-rays as a feature vector, which was further concatenated with the risk factor data vector. Area under the curve (AUC) analysis was performed using the hold-out test dataset to evaluate model performance.

RESULTS

The traditional model had an AUC of 0.660 (61.5% sensitivity and 64.0% specificity) for predicting progression. The DL model had an AUC of 0.799 (78.0% sensitivity and 75.5% specificity), which was significantly higher (P < 0.001) than the traditional model. The combined model had an AUC of 0.863 (80.5% sensitivity and specificity), which was significantly higher than the DL (P = 0.015) and traditional (P < 0.001) models.

CONCLUSION

DL models using baseline knee X-rays had higher diagnostic performance for predicting the progression of radiographic joint space loss than the traditional model using demographic and radiographic risk factors.

摘要

目的

利用基线膝关节 X 射线开发和评估深度学习(DL)风险评估模型,以预测放射学内侧关节间隙损失的进展。

方法

将没有和有放射学关节间隙损失进展(定义为基线和 48 个月随访 X 射线之间内侧关节间隙宽度测量值下降≥0.7mm)的 Osteoarthritis Initiative 膝关节随机分层为训练(1400 个膝关节)和保留测试(400 个膝关节)数据集。使用基线膝关节 X 射线训练 DL 网络以预测放射学关节间隙损失的进展。使用人工神经网络开发了一种传统模型,利用人口统计学和放射学危险因素预测进展。使用 DL 网络从基线膝关节 X 射线中提取信息作为特征向量,进一步与危险因素数据向量串联,开发联合关节训练模型。使用保留测试数据集进行曲线下面积(AUC)分析以评估模型性能。

结果

传统模型预测进展的 AUC 为 0.660(61.5%敏感性和 64.0%特异性)。DL 模型的 AUC 为 0.799(78.0%敏感性和 75.5%特异性),明显高于传统模型(P<0.001)。联合模型的 AUC 为 0.863(80.5%敏感性和特异性),明显高于 DL(P=0.015)和传统模型(P<0.001)。

结论

与使用人口统计学和放射学危险因素的传统模型相比,使用基线膝关节 X 射线的 DL 模型在预测放射学关节间隙损失进展方面具有更高的诊断性能。

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