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Development and Validation of a Predictive Radiomics Model for Clinical Outcomes in Stage I Non-small Cell Lung Cancer

机译:阶段I阶段临床结果预测辐射瘤模型的开发与验证

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PurposeTo develop and validate a radiomics signature that can predict the clinical outcomes for patients with stage I non-small cell lung cancer (NSCLC). Methods and MaterialsWe retrospectively analyzed contrast-enhanced computed tomography images of patients from a training cohort (n = 147) treated with surgery and an independent validation cohort (n = 295) treated with stereotactic ablative radiation therapy. Twelve radiomics features with established strategies for filtering and preprocessing were extracted. The random survival forests (RSF) method was used to build models from subsets of the 12 candidate features based on their survival relevance and generate a mortality risk index for each observation in the training set. An optimal model was selected, and its ability to predict clinical outcomes was evaluated in the validation set using predicted mortality risk indexes. ResultsThe optimal RSF model, consisting of 2 predictive features, kurtosis and the gray level co-occurrence matrix feature homogeneity2, allowed for significant risk stratification (log-rankP< .0001) and remained an independent predictor of overall survival after adjusting for age, tumor volume and histologic type, and Karnofsky performance status (hazard ratio [HR] 1.27;P< 2e-16) in the training set. The resultant mortality risk indexes were significantly associated with overall survival in the validation set (log-rankP= .0173; HR 1.02,P= .0438). They were also significant for distant metastasis (log-rankP< .05; HR 1.04,P= .0407) and were borderline significant for regional recurrence on univariate analysis (log-rankP< .05; HR 1.04,P= .0617). ConclusionsOur radiomics model accurately predicted several clinical outcomes and allowed pretreatment risk stratification in stage I NSCLC, allowing the choice of treatment to be tailored to each patient's individual risk profile.
机译:Purposeto开发并验证了辐射瘤签名,可以预测患有阶段的IS非小细胞肺癌(NSCLC)的临床结果。方法和素材在用手术治疗的训练队列(n = 147)和用立体定向烧蚀治疗处理的独立验证队列(n = 295)的培训队列(n = 147)的对比度分析的对比度增强计算断层扫描图像。提取十二个射频特征,具有既定的过滤和预处理策略。随机生存森林(RSF)方法用于根据其存活相关性从12个候选特征的子集构建模型,并为训练集中的每个观察产生死亡率风险指数。选择了最佳模型,并在使用预测的死亡率风险指标的验证集中评估了预测临床结果的能力。结果,由2个预测特征,峰度和灰度共发生矩阵组成的最佳RSF模型,允许大量风险分层2(Log-RankP <.0001),并仍然是调整年龄,肿瘤后整体存活的独立预测因子体积和组织学类型,以及Karnofsky性能状态(训练集中的危险比[HR] 1.27; P <2E-16)。所得到的死亡率风险指标与验证集中的总生存率显着相关(Log-Rankp = .0173; HR 1.02,P = .0438)。它们对于远处转移也很重要(Log-RankP <.05; HR 1.04,P = .0407),并且对于单变量分析的区域复发是重大意义(Log-RankP <.05; HR 1.04,P = .0617)。结论Cours RadioMics模型准确地预测了阶段INSCLC中的几种临床结果,允许预处理风险分层,允许选择治疗,以适应每个患者的个体风险概况。

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    Department of Radiation Oncology The University of Texas MD Anderson Cancer Center;

    Department of Radiation Oncology The University of Texas MD Anderson Cancer Center;

    Department of Biostatistics The University of Texas MD Anderson Cancer Center;

    Department of Biostatistics The University of Texas MD Anderson Cancer Center;

    Department of Radiation Oncology The University of Texas MD Anderson Cancer Center;

    Department of Translational and Molecular Pathology The University of Texas MD Anderson Cancer;

    Department of Thoracic and Cardiovascular Surgery The University of Texas MD Anderson Cancer Center;

    Department of Thoracic/Head and Neck Medical Oncology The University of Texas MD Anderson Cancer;

    Department of Translational and Molecular Pathology The University of Texas MD Anderson Cancer;

    Department of Translational and Molecular Pathology The University of Texas MD Anderson Cancer;

    Department of Diagnostic Radiology The University of Texas MD Anderson Cancer Center;

    Department of Radiation Physics The University of Texas MD Anderson Cancer Center;

    Department of Radiation Oncology The University of Texas MD Anderson Cancer Center;

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  • 正文语种 eng
  • 中图分类 放射医学;
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