Department of orthopedics, Beijing Tongren Hospital, Capital Medical University, Beijing, China.
School of Life Sciences, Tsinghua University, Beijing, China; Institute of Biomedical and Health Engineering (iBHE), Tsinghua Shenzhen International Graduate School, Shenzhen, China; Department of Biomedical Engineering, School of Medicine, Tsinghua University, Beijing, China; Longwood Valley Medical Technology Co Ltd, Beijing, China.
World Neurosurg. 2024 Jun;186:e652-e661. doi: 10.1016/j.wneu.2024.04.025. Epub 2024 Apr 10.
Diagnosing early lumbar spondylolisthesis is challenging for many doctors because of the lack of obvious symptoms. Using deep learning (DL) models to improve the accuracy of X-ray diagnoses can effectively reduce missed and misdiagnoses in clinical practice. This study aimed to use a two-stage deep learning model, the Res-SE-Net model with the YOLOv8 algorithm, to facilitate efficient and reliable diagnosis of early lumbar spondylolisthesis based on lateral X-ray image identification.
A total of 2424 lumbar lateral radiographs of patients treated in the Beijing Tongren Hospital between January 2021 and September 2023 were obtained. The data were labeled and mutually identified by 3 orthopedic surgeons after reshuffling in a random order and divided into a training set, validation set, and test set in a ratio of 7:2:1. We trained 2 models for automatic detection of spondylolisthesis. YOLOv8 model was used to detect the position of lumbar spondylolisthesis, and the Res-SE-Net classification method was designed to classify the clipped area and determine whether it was lumbar spondylolisthesis. The model performance was evaluated using a test set and an external dataset from Beijing Haidian Hospital. Finally, we compared model validation results with professional clinicians' evaluation.
The model achieved promising results, with a high diagnostic accuracy of 92.3%, precision of 93.5%, and recall of 93.1% for spondylolisthesis detection on the test set, the area under the curve (AUC) value was 0.934.
Our two-stage deep learning model provides doctors with a reference basis for the better diagnosis and treatment of early lumbar spondylolisthesis.
由于缺乏明显的症状,许多医生在诊断早期腰椎滑脱症时都面临挑战。使用深度学习 (DL) 模型来提高 X 射线诊断的准确性可以有效地减少临床实践中的漏诊和误诊。本研究旨在使用两阶段深度学习模型,即具有 YOLOv8 算法的 Res-SE-Net 模型,通过对侧位 X 射线图像识别来促进早期腰椎滑脱症的高效、可靠诊断。
共获取了 2021 年 1 月至 2023 年 9 月期间在北京同仁医院治疗的 2424 例腰椎侧位 X 射线图像。对这些数据进行重新排序并进行了三位骨科医生的标签标注和相互确认,然后将其按照 7:2:1 的比例分为训练集、验证集和测试集。我们训练了两个模型用于自动检测滑脱症。YOLOv8 模型用于检测腰椎滑脱症的位置,而 Res-SE-Net 分类方法用于对裁剪区域进行分类并确定其是否为腰椎滑脱症。使用测试集和来自北京海淀医院的外部数据集评估模型性能。最后,我们将模型验证结果与专业临床医生的评估进行了比较。
该模型取得了令人满意的结果,在测试集上对滑脱症的检测准确率、精确率和召回率分别为 92.3%、93.5%和 93.1%,曲线下面积(AUC)值为 0.934。
我们的两阶段深度学习模型为医生提供了一个参考基础,以更好地诊断和治疗早期腰椎滑脱症。