Gui Chengcheng, Chen Xuguang, Sheikh Khadija, Mathews Liza, Lo Sheng-Fu L, Lee Junghoon, Khan Majid A, Sciubba Daniel M, Redmond Kristin J
1Department of Radiation Oncology and Molecular Radiation Sciences, Johns Hopkins University School of Medicine, Baltimore.
2Department of Neurosurgery, Johns Hopkins University School of Medicine, Baltimore; and.
J Neurosurg Spine. 2021 Sep 24;36(2):294-302. doi: 10.3171/2021.3.SPINE201534. Print 2022 Feb 1.
In the treatment of spinal metastases with stereotactic body radiation therapy (SBRT), vertebral compression fracture (VCF) is a common and potentially morbid complication. Better methods to identify patients at high risk of radiation-induced VCF are needed to evaluate prophylactic measures. Radiomic features from pretreatment imaging may be employed to more accurately predict VCF. The objective of this study was to develop and evaluate a machine learning model based on clinical characteristics and radiomic features from pretreatment imaging to predict the risk of VCF after SBRT for spinal metastases.
Vertebral levels C2 through L5 containing metastases treated with SBRT were included if they were naive to prior surgery or radiation therapy, target delineation was based on consensus guidelines, and 1-year follow-up data were available. Clinical features, including characteristics of the patient, disease, and treatment, were obtained from chart review. Radiomic features were extracted from the planning target volume (PTV) on pretreatment CT and T1-weighted MRI. Clinical and radiomic features selected by least absolute shrinkage and selection operator (LASSO) regression were included in random forest classification models, which were trained to predict VCF within 1 year after SBRT. Model performance was assessed with leave-one-out cross-validation.
Within 1 year after SBRT, 15 of 95 vertebral levels included in the analysis demonstrated new or progressive VCF. Selected clinical features included BMI, performance status, total prescription dose, dose to 99% of the PTV, lumbar location, and 2 components of the Spine Instability Neoplastic Score (SINS): lytic tumor character and spinal misalignment. Selected radiomic features included 5 features from CT and 3 features from MRI. The best-performing classification model, derived from a combination of selected clinical and radiomic features, demonstrated a sensitivity of 0.844, specificity of 0.800, and area under the receiver operating characteristic (ROC) curve (AUC) of 0.878. This model was significantly more accurate than alternative models derived from only selected clinical features (AUC = 0.795, p = 0.048) or only components of the SINS (AUC = 0.579, p < 0.0001).
In the treatment of spinal metastases with SBRT, a machine learning model incorporating both clinical features and radiomic features from pretreatment imaging predicted VCF at 1 year after SBRT with excellent sensitivity and specificity, outperforming models developed from clinical features or components of the SINS alone. If validated, these findings may allow more judicious selection of patients for prophylactic interventions.
在立体定向体部放射治疗(SBRT)治疗脊柱转移瘤中,椎体压缩骨折(VCF)是一种常见且可能导致病态的并发症。需要更好的方法来识别有放射诱导性VCF高风险的患者,以评估预防措施。治疗前成像的放射组学特征可用于更准确地预测VCF。本研究的目的是开发并评估一种基于临床特征和治疗前成像的放射组学特征的机器学习模型,以预测SBRT治疗脊柱转移瘤后发生VCF的风险。
纳入接受SBRT治疗且椎体转移灶位于C2至L5节段、未接受过先前手术或放射治疗、靶区勾画基于共识指南且有1年随访数据的患者。通过病历审查获取临床特征,包括患者、疾病和治疗的特征。从治疗前CT和T1加权MRI上的计划靶区(PTV)提取放射组学特征。通过最小绝对收缩和选择算子(LASSO)回归选择的临床和放射组学特征被纳入随机森林分类模型,该模型经训练用于预测SBRT后1年内的VCF。采用留一法交叉验证评估模型性能。
在SBRT后1年内,分析纳入的95个椎体节段中有15个出现新的或进展性VCF。选择的临床特征包括体重指数、体能状态、总处方剂量、PTV的99%所接受的剂量、腰椎位置以及脊柱不稳定肿瘤评分(SINS)的2个组成部分:溶骨性肿瘤特征和脊柱排列不齐。选择的放射组学特征包括来自CT的5个特征和来自MRI的3个特征。由选择的临床和放射组学特征组合得出的最佳分类模型,其敏感性为0.844,特异性为0.800,受试者操作特征(ROC)曲线下面积(AUC)为0.878。该模型比仅基于选择的临床特征得出的替代模型(AUC = 0.795,p = 0.048)或仅基于SINS组成部分的替代模型(AUC = 0.579,p < 0.0001)显著更准确。
在SBRT治疗脊柱转移瘤中,一种结合临床特征和治疗前成像放射组学特征的机器学习模型,能以优异的敏感性和特异性预测SBRT后1年的VCF,优于仅由临床特征或SINS组成部分开发的模型。如果得到验证,这些发现可能有助于更明智地选择患者进行预防性干预。