Tianjin University, Tianjin, China.
Tianjin Hospital, Tianjin University, Tianjin, China.
BMC Med Imaging. 2023 Mar 28;23(1):45. doi: 10.1186/s12880-023-01003-8.
Lumbago is a global disease that affects more than 500 million people worldwide. Bone marrow oedema is one of the main causes of the condition and clinical diagnosis is mainly made by radiologists manually reviewing MRI images to determine whether oedema is present. However, the number of patients with Lumbago has risen dramatically in recent years, which has brought a huge workload to radiologists. In order to improve the efficiency of diagnosis, this paper is devoted to developing and evaluating a neural network for detecting bone marrow edema in MRI images.
Inspired by the development of deep learning and image processing techniques, we design a deep learning detection algorithm specifically for the detection of bone marrow oedema from lumbar MRI images. We introduce deformable convolution, feature pyramid networks and neural architecture search modules, and redesign the existing neural networks. We explain in detail the construction of the network and illustrate the setting of the network hyperparameters.
The detection accuracy of our algorithm is excellent. And its accuracy of detecting bone marrow oedema reached up to 90.6[Formula: see text], an improvement of 5.7[Formula: see text] compared to the original. The recall of our neural network is 95.1[Formula: see text], and the F1-measure also reaches 92.8[Formula: see text]. And our algorithm is fast in detecting it, taking only 0.144 s per image.
Extensive experiments have demonstrated that deformable convolution and aggregated feature pyramid structures are conducive for the detection of bone marrow oedema. Our algorithm has better detection accuracy and good detection speed compared to other algorithms.
腰痛是一种全球性疾病,影响着全球超过 5 亿人。骨髓水肿是腰痛的主要原因之一,临床诊断主要由放射科医生手动审查 MRI 图像来确定是否存在水肿。然而,近年来腰痛患者数量急剧增加,这给放射科医生带来了巨大的工作量。为了提高诊断效率,本文致力于开发和评估一种用于检测 MRI 图像中骨髓水肿的神经网络。
受深度学习和图像处理技术发展的启发,我们设计了一种专门用于从腰椎 MRI 图像中检测骨髓水肿的深度学习检测算法。我们引入了可变形卷积、特征金字塔网络和神经架构搜索模块,并重新设计了现有的神经网络。我们详细解释了网络的构建,并说明了网络超参数的设置。
我们的算法检测准确率非常高。其检测骨髓水肿的准确率高达 90.6%,比原始算法提高了 5.7%。我们的神经网络的召回率为 95.1%,F1 分数也达到了 92.8%。并且我们的算法检测速度很快,每张图像仅需 0.144 秒。
大量实验表明,可变形卷积和聚合特征金字塔结构有助于骨髓水肿的检测。与其他算法相比,我们的算法具有更好的检测准确率和良好的检测速度。