Department of Radiology, Kansai Medical University, 2-5-1 Shinmachi, Hirakata, Osaka, 573-1010, Japan.
Int J Comput Assist Radiol Surg. 2023 Oct;18(10):1867-1874. doi: 10.1007/s11548-023-02880-8. Epub 2023 Mar 29.
Spinal bone metastases directly affect quality of life, and patients with lytic-dominant lesions are at high risk for neurological symptoms and fractures. To detect and classify lytic spinal bone metastasis using routine computed tomography (CT) scans, we developed a deep learning (DL)-based computer-aided detection (CAD) system.
We retrospectively analyzed 2125 diagnostic and radiotherapeutic CT images of 79 patients. Images annotated as tumor (positive) or not (negative) were randomized into training (1782 images) and test (343 images) datasets. YOLOv5m architecture was used to detect vertebra on whole CT scans. InceptionV3 architecture with the transfer-learning technique was used to classify the presence/absence of lytic lesions on CT images showing the presence of vertebra. The DL models were evaluated via fivefold cross-validation. For vertebra detection, bounding box accuracy was estimated using intersection over union (IoU). We evaluated the area under the curve (AUC) of a receiver operating characteristic curve to classify lesions. Moreover, we determined the accuracy, precision, recall, and F1 score. We used the gradient-weighted class activation mapping (Grad-CAM) technique for visual interpretation.
The computation time was 0.44 s per image. The average IoU value of the predicted vertebra was 0.923 ± 0.052 (0.684-1.000) for test datasets. In the binary classification task, the accuracy, precision, recall, F1-score, and AUC value for test datasets were 0.872, 0.948, 0.741, 0.832, and 0.941, respectively. Heat maps constructed using the Grad-CAM technique were consistent with the location of lytic lesions.
Our artificial intelligence-aided CAD system using two DL models could rapidly identify vertebra bone from whole CT images and detect lytic spinal bone metastasis, although further evaluation of diagnostic accuracy is required with a larger sample size.
脊柱骨转移直接影响生活质量,溶骨性病变为主的患者有发生神经症状和骨折的高风险。为了在常规 CT 扫描中检测和分类溶骨性脊柱骨转移,我们开发了一种基于深度学习(DL)的计算机辅助检测(CAD)系统。
我们回顾性分析了 79 名患者的 2125 份诊断性和放射性治疗 CT 图像。将标注为肿瘤(阳性)或非肿瘤(阴性)的图像随机分为训练(1782 幅图像)和测试(343 幅图像)数据集。使用 YOLOv5m 架构在全 CT 扫描中检测椎体。使用具有迁移学习技术的 InceptionV3 架构对显示存在椎体的 CT 图像中溶骨性病变的存在/缺失进行分类。通过五重交叉验证评估 DL 模型。对于椎体检测,使用交并比(IoU)估计边界框的准确性。我们评估了受试者工作特征曲线(ROC)的曲线下面积(AUC)以分类病变。此外,我们确定了准确性、精密度、召回率和 F1 分数。我们使用梯度加权类激活映射(Grad-CAM)技术进行可视化解释。
每张图像的计算时间为 0.44 秒。对于测试数据集,预测椎体的平均 IoU 值为 0.923±0.052(0.684-1.000)。在二元分类任务中,测试数据集的准确率、精密度、召回率、F1 评分和 AUC 值分别为 0.872、0.948、0.741、0.832 和 0.941。使用 Grad-CAM 技术构建的热图与溶骨性病变的位置一致。
我们使用两个 DL 模型的人工智能辅助 CAD 系统可以从全 CT 图像中快速识别椎体骨骼,并检测溶骨性脊柱骨转移,尽管需要进一步评估更大样本量的诊断准确性。