Ong Wilson, Lee Aric, Tan Wei Chuan, Fong Kuan Ting Dominic, Lai Daoyong David, Tan Yi Liang, Low Xi Zhen, Ge Shuliang, Makmur Andrew, Ong Shao Jin, Ting Yong Han, Tan Jiong Hao, Kumar Naresh, Hallinan James Thomas Patrick Decourcy
Department of Diagnostic Imaging, National University Hospital, 5 Lower Kent Ridge Rd, Singapore 119074, Singapore.
Department of Diagnostic Radiology, Yong Loo Lin School of Medicine, National University of Singapore, 10 Medical Drive, Singapore 117597, Singapore.
Cancers (Basel). 2024 Aug 28;16(17):2988. doi: 10.3390/cancers16172988.
In spinal oncology, integrating deep learning with computed tomography (CT) imaging has shown promise in enhancing diagnostic accuracy, treatment planning, and patient outcomes. This systematic review synthesizes evidence on artificial intelligence (AI) applications in CT imaging for spinal tumors. A PRISMA-guided search identified 33 studies: 12 (36.4%) focused on detecting spinal malignancies, 11 (33.3%) on classification, 6 (18.2%) on prognostication, 3 (9.1%) on treatment planning, and 1 (3.0%) on both detection and classification. Of the classification studies, 7 (21.2%) used machine learning to distinguish between benign and malignant lesions, 3 (9.1%) evaluated tumor stage or grade, and 2 (6.1%) employed radiomics for biomarker classification. Prognostic studies included three (9.1%) that predicted complications such as pathological fractures and three (9.1%) that predicted treatment outcomes. AI's potential for improving workflow efficiency, aiding decision-making, and reducing complications is discussed, along with its limitations in generalizability, interpretability, and clinical integration. Future directions for AI in spinal oncology are also explored. In conclusion, while AI technologies in CT imaging are promising, further research is necessary to validate their clinical effectiveness and optimize their integration into routine practice.
在脊柱肿瘤学中,将深度学习与计算机断层扫描(CT)成像相结合已显示出在提高诊断准确性、治疗规划和患者预后方面的前景。本系统评价综合了人工智能(AI)在脊柱肿瘤CT成像中的应用证据。一项遵循PRISMA指南的检索共纳入33项研究:12项(36.4%)聚焦于脊柱恶性肿瘤的检测,11项(33.3%)涉及分类,6项(18.2%)关于预后评估,3项(9.1%)涉及治疗规划,1项(3.0%)同时涉及检测和分类。在分类研究中,7项(21.2%)使用机器学习区分良性和恶性病变,3项(9.1%)评估肿瘤分期或分级,2项(6.1%)采用影像组学进行生物标志物分类。预后研究包括3项(9.1%)预测病理性骨折等并发症的研究以及3项(9.1%)预测治疗结果的研究。文中讨论了AI在提高工作流程效率、辅助决策和减少并发症方面的潜力,以及其在可推广性、可解释性和临床整合方面的局限性。还探讨了AI在脊柱肿瘤学中的未来发展方向。总之,虽然CT成像中的AI技术前景广阔,但仍需进一步研究以验证其临床有效性并优化其在常规实践中的整合。