School of Machinery and Automation, Wuhan University of Science and Technology, Wuhan, 430081, China.
Institute of Medical Innovation and Transformation, Puren Hospital Affiliated to Wuhan University of Science and Technology, Wuhan, 430081, China.
Med Biol Eng Comput. 2024 Dec;62(12):3709-3719. doi: 10.1007/s11517-024-03161-5. Epub 2024 Jul 5.
Lumbar disc herniation is one of the most prevalent orthopedic issues in clinical practice. The lumbar spine is a crucial joint for movement and weight-bearing, so back pain can significantly impact the everyday lives of patients and is prone to recurring. The pathogenesis of lumbar disc herniation is complex and diverse, making it difficult to identify and assess after it has occurred. Magnetic resonance imaging (MRI) is the most effective method for detecting injuries, requiring continuous examination by medical experts to determine the extent of the injury. However, the continuous examination process is time-consuming and susceptible to errors. This study proposes an enhanced model, BE-YOLOv5, for hierarchical detection of lumbar disc herniation from MRI images. To tailor the training of the model to the job requirements, a specialized dataset was created. The data was cleaned and improved before the final calibration. A final training set of 2083 data points and a test set of 100 data points were obtained. The YOLOv5 model was enhanced by integrating the attention mechanism module, ECAnet, with a 3 × 3 convolutional kernel size, substituting its feature extraction network with a BiFPN, and implementing structural system pruning. The model achieved an 89.7% mean average precision (mAP) and 48.7 frames per second (FPS) on the test set. In comparison to Faster R-CNN, original YOLOv5, and the latest YOLOv8, this model performs better in terms of both accuracy and speed for the detection and grading of lumbar disc herniation from MRI, validating the effectiveness of multiple enhancement methods. The proposed model is expected to be used for diagnosing lumbar disc herniation from MRI images and to demonstrate efficient and high-precision performance.
腰椎间盘突出症是临床实践中最常见的骨科问题之一。腰椎是运动和承重的关键关节,因此腰痛会严重影响患者的日常生活,并容易反复发作。腰椎间盘突出症的发病机制复杂多样,难以在发生后进行识别和评估。磁共振成像(MRI)是检测损伤最有效的方法,需要医学专家不断检查以确定损伤的程度。然而,这种连续的检查过程既耗时又容易出错。本研究提出了一种增强型模型 BE-YOLOv5,用于从 MRI 图像中对腰椎间盘突出症进行分层检测。为了使模型的训练符合工作要求,创建了一个专门的数据集。在最终校准之前,对数据进行了清理和改进。最终获得了 2083 个数据点的训练集和 100 个数据点的测试集。通过将注意力机制模块 ECAnet 与 3×3 卷积核大小集成到 YOLOv5 模型中,用 BiFPN 替换其特征提取网络,并实现结构系统剪枝,对模型进行了增强。该模型在测试集上的平均精度(mAP)为 89.7%,每秒帧数(FPS)为 48.7。与 Faster R-CNN、原始 YOLOv5 和最新的 YOLOv8 相比,该模型在从 MRI 检测和分级诊断腰椎间盘突出症方面具有更高的准确性和速度,验证了多种增强方法的有效性。预计该模型将用于从 MRI 图像诊断腰椎间盘突出症,并展示高效和高精度的性能。