Generalizable model to predict new or progressing compression fractures in tumor-infiltrated thoracolumbar vertebrae in an all-comer population.

IF 2.9 2区 医学 Q2 CLINICAL NEUROLOGY
Alex Flores, Vijay Nitturi, Arman Kavoussi, Max Feygin, Romulo A Andrade de Almeida, Esteban Ramirez Ferrer, Adrish Anand, Shervin Nouri, Anthony K Allam, Ashley Ricciardelli, Gabriel Reyes, Sandy Reddy, Ihika Rampalli, Laurence Rhines, Claudio E Tatsui, Robert Y North, Amol Ghia, Jeffrey H Siewerdsen, Alexander E Ropper, Christopher Alvarez-Breckenridge
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引用次数: 0

Abstract

Objective: Neurosurgical evaluation is required in the setting of spinal metastases at high risk for leading to a vertebral body fracture. Both irradiated and nonirradiated vertebrae are affected. Understanding fracture risk is critical in determining management, including follow-up timing and prophylactic interventions. Herein, the authors report the results of a machine learning model that predicts the development or progression of a pathological vertebral compression fracture (VCF) in metastatic tumor-infiltrated thoracolumbar vertebrae in an all-comer population.

Methods: A multi-institutional all-comer cohort of patients with tumor containing vertebral levels spanning T1 through L5 and at least 1 year of follow-up was included in the study. Clinical features of the patients, diseases, and treatments were collected. CT radiomic features of the vertebral bodies were extracted from tumor-infiltrated vertebrae that did or did not subsequently fracture or progress. Recursive feature elimination (RFE) of both radiomic and clinical features was performed. The resulting features were used to create a purely clinical model, purely radiomic model, and combined clinical-radiomic model. A Spine Instability Neoplastic Score (SINS) model was created for a baseline performance comparison. Model performance was assessed using the area under the receiver operating characteristic curve (AUROC), sensitivity, and specificity (with 95% confidence intervals) with tenfold cross-validation.

Results: Within 1 year from initial CT, 123 of 977 vertebrae developed VCF. Selected clinical features included SINS, SINS component for < 50% vertebral body collapse, SINS component for "none of the prior 3" (i.e., "none of the above" on the SINS component for vertebral body involvement), histology, age, and BMI. Of the 2015 radiomic features, RFE selected 19 to be used in the pure radiomic model and the combined clinical-radiomic model. The best performing model was a random forest classifier using both clinical and radiomic features, demonstrating an AUROC of 0.86 (95% CI 0.82-0.9), sensitivity of 0.78 (95% CI 0.70-0.84), and specificity of 0.80 (95% CI 0.77-0.82). This performance was significantly higher than the best SINS-alone model (AUROC 0.75, 95% CI 0.70-0.80) and outperformed the clinical-only model but not in a statistically significant manner (AUROC 0.82, 95% CI 0.77-0.87).

Conclusions: The authors developed a clinically generalizable machine learning model to predict the risk of a new or progressing VCF in an all-comer population. This model addresses limitations from prior work and was trained on the largest cohort of patients and vertebrae published to date. If validated, the model could lead to more consistent and systematic identification of high-risk vertebrae, resulting in faster, more accurate triage of patients for optimal management.

预测肿瘤浸润胸腰椎新发或进展性压缩性骨折的通用模型。
目的:神经外科评估是脊柱转移导致椎体骨折高风险的必要条件。受辐照和未受辐照的椎骨都受到影响。了解骨折风险对于确定治疗方法至关重要,包括随访时间和预防性干预措施。在此,作者报告了一种机器学习模型的结果,该模型预测了所有角落人群中转移性肿瘤浸润胸腰椎病理性椎体压缩性骨折(VCF)的发生或进展。方法:本研究纳入了一个多机构的、所有患者的队列,这些患者的肿瘤包含从T1到L5的椎体水平,随访至少1年。收集患者的临床特征、疾病及治疗方法。从肿瘤浸润的椎体中提取椎体的CT放射学特征,这些椎体随后发生或未发生骨折或进展。对放射学和临床特征进行递归特征消除(RFE)。将得到的特征用于创建纯临床模型、纯放射组学模型和临床-放射组学联合模型。建立脊柱不稳定性肿瘤评分(SINS)模型进行基线性能比较。通过十倍交叉验证,采用受试者工作特征曲线下面积(AUROC)、敏感性和特异性(95%置信区间)来评估模型的性能。结果:977例椎骨中123例发生VCF。选定的临床特征包括SINS、< 50%椎体塌陷的SINS分量、“前3项均无”的SINS分量(即椎体受累的SINS分量“以上均无”)、组织学、年龄和BMI。在2015个放射组学特征中,RFE选择了19个用于纯放射组学模型和临床-放射组学联合模型。表现最好的模型是使用临床和放射学特征的随机森林分类器,AUROC为0.86 (95% CI 0.82-0.9),灵敏度为0.78 (95% CI 0.70-0.84),特异性为0.80 (95% CI 0.77-0.82)。该性能显著高于最佳的sins单独模型(AUROC 0.75, 95% CI 0.70-0.80),优于仅临床模型,但无统计学意义(AUROC 0.82, 95% CI 0.77-0.87)。结论:作者开发了一种临床通用的机器学习模型来预测所有人群中新发或进展性VCF的风险。该模型解决了先前工作的局限性,并在迄今为止发表的最大的患者和椎骨队列中进行了训练。如果得到验证,该模型可以更一致、更系统地识别高危椎骨,从而更快、更准确地对患者进行分类,以实现最佳管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of neurosurgery. Spine
Journal of neurosurgery. Spine 医学-临床神经学
CiteScore
5.10
自引率
10.70%
发文量
396
审稿时长
6 months
期刊介绍: Primarily publish original works in neurosurgery but also include studies in clinical neurophysiology, organic neurology, ophthalmology, radiology, pathology, and molecular biology.
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