基于放射组学的早期非小细胞肺癌立体定向全身放射治疗(SBRT)后局部复发预测。

IF 5.4
Chioma P Ogbonna, William G Breen, Pierre Le Noach, Srinivasan Rajagopalan, Logan J Hostetter, Fabien Maldonado, Brian J Bartholmai, Kenneth W Merrell, Tobias Peikert
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引用次数: 0

摘要

背景:立体定向全身放射治疗(SBRT)是早期非小细胞肺癌(NSCLC)的有效治疗策略,然而局部和全身复发是持续的挑战。基于计算机断层扫描(CT)放射组学的风险模型可以潜在地用于预测治疗前CT扫描局部复发的风险。方法:该单机构研究包括回顾性病例-对照训练集(20例局部复发患者和40例对照)和独立验证集(198例连续病例),这些患者均接受SBRT治疗。对肿瘤进行半自动分割,提取包括纹理、景观、空间、结节形状和结节表面特征在内的102个定量放射学特征。这些特征被包括在三个独立的多变量模型中,以预测基于sbrt前、sbrt后以及sbrt前和sbrt后扫描之间差异的复发风险(Delta模型)。随后在独立验证集中对预sbrt模型进行了验证。结果:采用Boruta算法为模型选择了13个自变量。sbrt前模型、sbrt后模型和delta模型的敏感性、特异性和曲线下面积(AUC)分别为85%、90%和0.91;85%、92.5%和0.92;85%, 92.5%, 0.94。预sbrt模型在独立验证集中得到验证,AUC为0.89 (CI 0.83-0.92),因为该模型被认为对协助个性化治疗计划最有用。结论:放射组学分析促进了三种预测局部复发的高性能模型的发展,这些模型分别使用sbrt前CT、sbrt后CT或两者之间的变化。我们成功验证了最具临床相关性的模型,pre-SBRT模型。虽然该模型需要进一步验证,但它可能有助于个体化监测,治疗计划和辅助治疗的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radiomics-based Prediction of Local Recurrence after Stereotactic Body Radiation Therapy for Early-Stage Non-Small Cell Lung Cancer.

Rationale: Stereotactic body radiation therapy (SBRT) represents an effective therapeutic strategy for early-stage non-small cell lung cancer (NSCLC); however, local and systemic recurrences represent ongoing challenges. Computed tomography (CT) radiomics-based risk models can potentially be used to predict the risk of local recurrence on pretreatment CT scans. Objective: Development of a radiomics model to predict local recurrence after SBRT in patients with NSCLC. Methods: This single-institution study includes a retrospective case-control training set (20 patients with local recurrence and 40 control subjects) and an independent validation set (198 consecutive cases) of patients with early-stage NSCLC treated with SBRT. Tumors were semiautomatically segmented, and 102 quantitative radiomic features, including texture, landscape, spatial, nodule shape, and nodule surface features, were extracted. These features were included in three separate multivariable models to predict the risk of recurrence on the basis of pre-SBRT, post-SBRT, and the difference between the pre-SBRT and post-SBRT scans (Delta model). The pre-SBRT model was subsequently validated in an independent validation set. Results: Thirteen independent variables were selected for the models using the Boruta algorithm. The sensitivity, specificity, and area under the curve of the pre-SBRT, post-SBRT, and Delta models were 85%, 90%, and 0.91; 85%, 92.5%, and 0.92; and 85%, 92.5%, and 0.94, respectively. The pre-SBRT model was validated in the independent validation set (area under the curve, 0.89; confidence interval, 0.83-0.92), because this model was believed to be the most useful to assist in individualized treatment planning. Conclusions: Radiomic analysis facilitated the development of three high-performing models predicting local recurrence using either pre-SBRT CT, post-SBRT CT, or the change between these two. We successfully validated the most clinically relevant model, the pre-SBRT model. Although this model needs further validation, it may facilitate individualized surveillance, treatment planning, and selection of adjuvant therapy.

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