Liu Wenjun, Wang Jin, Lei Yiting, Liu Peng, Han Zhenghan, Wang Shichu, Liu Bo
Department of Orthopedics, First Affiliated Hospital, Chongqing Medical University, Chongqing, People's Republic of China.
College of Medical Informatics, Chongqing Medical University, Chongqing, People's Republic of China.
Infect Drug Resist. 2025 Jan 3;18:31-42. doi: 10.2147/IDR.S482584. eCollection 2025.
Early differentiation between spinal tuberculosis (STB) and acute osteoporotic vertebral compression fracture (OVCF) is crucial for determining the appropriate clinical management and treatment pathway, thereby significantly impacting patient outcomes.
To evaluate the efficacy of deep learning (DL) models using reconstructed sagittal CT images in the differentiation of early STB from acute OVCF, with the aim of enhancing diagnostic precision, reducing reliance on MRI and biopsies, and minimizing the risks of misdiagnosis.
Data were collected from 373 patients, with 302 patients recruited from a university-affiliated hospital serving as the training and internal validation sets, and an additional 71 patients from another university-affiliated hospital serving as the external validation set. MVITV2, Efficient-Net-B5, ResNet101, and ResNet50 were used as the backbone networks for DL model development, training, and validation. Model evaluation was based on accuracy, precision, sensitivity, F1 score, and area under the curve (AUC). The performance of the DL models was compared with the diagnostic accuracy of two spine surgeons who performed a blinded review.
The MVITV2 model outperformed other architectures in the internal validation set, achieving accuracy of 98.98%, precision of 100%, sensitivity of 97.97%, F1 score of 98.98%, and AUC of 0.997. The performance of the DL models notably exceeded that of the spine surgeons, who achieved accuracy rates of 77.38% and 93.56%. The external validation confirmed the models' robustness and generalizability.
The DL models significantly improved the differentiation between STB and OVCF, surpassing experienced spine surgeons in diagnostic accuracy. These models offer a promising alternative to traditional imaging and invasive procedures, potentially promoting early and accurate diagnosis, reducing healthcare costs, and improving patient outcomes. The findings underscore the potential of artificial intelligence for revolutionizing spinal disease diagnostics, and have substantial clinical implications.
脊柱结核(STB)与急性骨质疏松性椎体压缩骨折(OVCF)的早期鉴别对于确定适当的临床管理和治疗途径至关重要,从而对患者预后产生重大影响。
评估使用重建矢状面CT图像的深度学习(DL)模型在早期STB与急性OVCF鉴别中的疗效,以提高诊断准确性,减少对MRI和活检的依赖,并将误诊风险降至最低。
收集了373例患者的数据,其中302例患者来自一家大学附属医院,作为训练集和内部验证集,另外71例患者来自另一家大学附属医院,作为外部验证集。MVITV2、Efficient-Net-B5、ResNet101和ResNet50被用作DL模型开发、训练和验证的骨干网络。模型评估基于准确性、精确性、敏感性、F1分数和曲线下面积(AUC)。将DL模型的性能与两位进行盲法评估的脊柱外科医生的诊断准确性进行比较。
MVITV2模型在内部验证集中的表现优于其他架构,准确率达到98.98%,精确率为100%,敏感性为97.97%,F1分数为98.98%,AUC为0.997。DL模型的性能明显超过脊柱外科医生,他们的准确率分别为77.38%和93.56%。外部验证证实了模型的稳健性和通用性。
DL模型显著改善了STB与OVCF之间的鉴别,在诊断准确性方面超过了经验丰富的脊柱外科医生。这些模型为传统成像和侵入性程序提供了一种有前景的替代方案,有可能促进早期准确诊断,降低医疗成本,并改善患者预后。研究结果强调了人工智能在脊柱疾病诊断变革中的潜力,具有重大的临床意义。