Identification and validation of a radiomic signature for predicting survival outcomes in non-small-cell lung cancer treated with radiation therapy

Jin Li, Yixin Liu, Jingquan Wu
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Abstract

Radiomics is a novel tool which extracts quantitative features from medical imaging, and combines key features into an image-based radiomic signature for cancer diagnostics. We aimed to develop a quantitative radiomic signature for predicting survival outcomes in non-small-cell lung cancer (NSCLC) patients treated with radiation therapy. Based on computed tomography (CT) imaging of NSCLC, we applied a forward selection procedure for the establishment of a radiomic signature in a cohort with 107 NSCLC patients treated with radiation therapy, and validated it in a dataset with 88 patients. The radiomics signatures were significantly associated with NSCLC patients’ survival time. In a Testing dataset, the predicted high risk patients had significantly shorter overall survival than the predicted low risk patients (log-rank $P=$ 0.0004, HR $=$ 2.75, 95% CIs: 1.58–4.80, C-index $=$ 0.64). Further, the novel proposed radiomic nomogram combining the radiomic signature and clinicopathological factors improved the prognostic performance. The CT-based radiomic signature exhibited a good performance for noninvasively identifying patients with NSCLC who should receive postoperative radiation therapy. These results provide a more precise reference for the accurate diagnosis and treatment of NSCLC in clinical.
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非小细胞肺癌放射治疗生存预后预测的放射学特征的鉴定和验证
放射组学是一种新的工具,它从医学成像中提取定量特征,并将关键特征组合成基于图像的放射组学特征,用于癌症诊断。我们的目的是开发一种定量的放射学特征来预测接受放射治疗的非小细胞肺癌(NSCLC)患者的生存结果。基于非小细胞肺癌的计算机断层扫描(CT)成像,我们应用正向选择程序建立了107例接受放射治疗的非小细胞肺癌患者的放射学特征,并在88例患者的数据集中验证了它。放射组学特征与NSCLC患者的生存时间显著相关。在一个Testing数据集中,预测的高风险患者的总生存期明显短于预测的低风险患者(log-rank $P= 0.0004, HR $= 2.75, 95% ci: 1.58-4.80, C-index $= 0.64)。此外,新提出的结合放射组学特征和临床病理因素的放射组学形态图改善了预后表现。基于ct的放射学特征在无创识别非小细胞肺癌患者是否应该接受术后放射治疗方面表现良好。这些结果为临床对非小细胞肺癌的准确诊断和治疗提供了更为精确的参考。
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