Department of Radiology, the Second Affiliated Hospital of Nanchang University, No. 1Minde Road, Nanchang, Jiangxi, 330006, China.
Department of Radiology, Xinjian County People's Hospital, Nanchang, 330103, China.
BMC Musculoskelet Disord. 2023 Oct 17;24(1):819. doi: 10.1186/s12891-023-06939-0.
To develop and evaluate the performance of radiomics-based computed tomography (CT) combined with machine learning algorithms in detecting occult vertebral fractures (OVFs).
128 vertebrae including 64 with OVF confirmed by magnetic resonance imaging and 64 corresponding control vertebrae from 57 patients who underwent chest/abdominal CT scans, were included. The CT radiomics features on mid-axial and mid-sagittal plane of each vertebra were extracted. The fractured and normal vertebrae were randomly divided into training set and validation set at a ratio of 8:2. Pearson correlation analyses and least absolute shrinkage and selection operator were used for selecting sagittal and axial features, respectively. Three machine-learning algorithms were used to construct the radiomics models based on the residual features. Receiver operating characteristic (ROC) analysis was used to verify the performance of model.
For mid-axial CT imaging, 6 radiomics parameters were obtained and used for building the models. The logistic regression (LR) algorithm showed the best performance with area under the ROC curves (AUC) of training and validation sets of 0.682 and 0.775. For mid-sagittal CT imaging, 5 parameters were selected, and LR algorithms showed the best performance with AUC of training and validation sets of 0.832 and 0.882. The LR model based on sagittal CT yielded the best performance, with an accuracy of 0.846, sensitivity of 0.846, and specificity of 0.846.
Machine learning based on CT radiomics features allows for the detection of OVFs, especially the LR model based on the radiomics of sagittal imaging, which indicates it is promising to further combine with deep learning to achieve automatic recognition of OVFs to reduce the associated secondary injury.
开发并评估基于 CT 影像组学和机器学习算法检测隐匿性椎体骨折(OVF)的性能。
共纳入 57 例患者的 128 个椎体,其中 64 个椎体经 MRI 证实存在 OVF,64 个相应的正常椎体。在每个椎体的中轴位和中矢状位 CT 图像上提取影像组学特征。将骨折椎体和正常椎体随机分为训练集和验证集,比例为 8:2。使用 Pearson 相关分析和最小绝对收缩和选择算子(LASSO)分别对矢状位和轴向特征进行选择。使用三种机器学习算法基于剩余特征构建影像组学模型。使用受试者工作特征(ROC)分析验证模型的性能。
对于中轴位 CT 图像,获得了 6 个影像组学参数,并用于构建模型。逻辑回归(LR)算法的表现最佳,其在训练集和验证集的 ROC 曲线下面积(AUC)分别为 0.682 和 0.775。对于中矢状位 CT 图像,选择了 5 个参数,LR 算法的表现最佳,其在训练集和验证集的 AUC 分别为 0.832 和 0.882。基于矢状位 CT 的 LR 模型表现最佳,其准确率、敏感度和特异度均为 0.846。
基于 CT 影像组学特征的机器学习可用于检测 OVF,特别是基于矢状位影像组学的 LR 模型,这表明其有望与深度学习进一步结合,实现 OVF 的自动识别,以减少相关的二次损伤。