Saravi Babak, Zink Alisia, Ülkümen Sara, Couillard-Despres Sebastien, Wollborn Jakob, Lang Gernot, Hassel Frank
Department of Orthopedics and Trauma Surgery, Medical Center-University of Freiburg, Faculty of Medicine, University of Freiburg, 79106 Freiburg, Germany.
Department of Spine Surgery, Loretto Hospital, 79100 Freiburg, Germany.
Bioengineering (Basel). 2023 Sep 10;10(9):1072. doi: 10.3390/bioengineering10091072.
Lumbar spine magnetic resonance imaging (MRI) is a critical diagnostic tool for the assessment of various spinal pathologies, including degenerative disc disease, spinal stenosis, and spondylolisthesis. The accurate identification and quantification of the dural sack cross-sectional area are essential for the evaluation of these conditions. Current manual measurement methods are time-consuming and prone to inter-observer variability. Our study developed and validated deep learning models, specifically U-Net, Attention U-Net, and MultiResUNet, for the automated detection and measurement of the dural sack area in lumbar spine MRI, using a dataset of 515 patients with symptomatic back pain and externally validating the results based on 50 patient scans. The U-Net model achieved an accuracy of 0.9990 and 0.9987 on the initial and external validation datasets, respectively. The Attention U-Net model reported an accuracy of 0.9992 and 0.9989, while the MultiResUNet model displayed a remarkable accuracy of 0.9996 and 0.9995, respectively. All models showed promising precision, recall, and F1-score metrics, along with reduced mean absolute errors compared to the ground truth manual method. In conclusion, our study demonstrates the potential of these deep learning models for the automated detection and measurement of the dural sack cross-sectional area in lumbar spine MRI. The proposed models achieve high-performance metrics in both the initial and external validation datasets, indicating their potential utility as valuable clinical tools for the evaluation of lumbar spine pathologies. Future studies with larger sample sizes and multicenter data are warranted to validate the generalizability of the model further and to explore the potential integration of this approach into routine clinical practice.
腰椎磁共振成像(MRI)是评估各种脊柱病变的关键诊断工具,包括椎间盘退变疾病、椎管狭窄和椎体滑脱。准确识别和量化硬脊膜囊横截面积对于评估这些病症至关重要。目前的手动测量方法既耗时又容易出现观察者间的差异。我们的研究开发并验证了深度学习模型,特别是U-Net、注意力U-Net和多分辨率U-Net,用于在腰椎MRI中自动检测和测量硬脊膜囊面积,使用了515例有症状背痛患者的数据集,并基于50例患者扫描结果对结果进行了外部验证。U-Net模型在初始和外部验证数据集上的准确率分别达到了0.9990和0.9987。注意力U-Net模型报告的准确率为0.9992和0.9989,而多分辨率U-Net模型的准确率分别为0.9996和0.9995。与地面真值手动方法相比,所有模型都显示出了良好的精度、召回率和F1分数指标,同时平均绝对误差也有所降低。总之,我们的研究证明了这些深度学习模型在腰椎MRI中自动检测和测量硬脊膜囊横截面积的潜力。所提出的模型在初始和外部验证数据集中均实现了高性能指标,表明它们作为评估腰椎病变的有价值临床工具的潜在效用。有必要进行更大样本量和多中心数据的未来研究,以进一步验证模型的通用性,并探索将这种方法整合到常规临床实践中的潜力。