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Development and validation of a radiomics nomogram for progression-free survival prediction in stage IV EGFR-mutant non-small cell lung cancer

机译:放射组学诺模图的开发和验证,用于IV期EGFR突变非小细胞肺癌的无进展生存期预测

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Accurately predict the risk of disease progression and benefit of tyrosine kinase inhibitors (TKIs) therapy for stage IV non-small cell lung cancer (NSCLC) patients with activing epidermal growth factor receptor (EGFR) mutations by current staging methods are challenge. We postulated that integrating a classifier consisted of multiple computed tomography (CT) phenotypic features, and other clinicopathological risk factors into a single model could improve risk stratification and prediction of progression-free survival (PFS) of EGFR TKIs for these patients. Patients confirmed as stage IV EGFR-mutant NSCLC received EGFR TKIs with no resection; pretreatment contrast enhanced CT performed at approximately 2 weeks before the treatment was enrolled. A six-CT-phenotypic-feature-based classifier constructed by the LASSO Cox regression model, and three clinicopathological factors: pathologic N category, performance status (PS) score, and intrapulmonary metastasis status were used to construct a nomogram in a training set of 115 patients. The prognostic and predictive accuracy of this nomogram was then subjected to an external independent validation of 107 patients. PFS between the training and independent validation set is no statistical difference by Mann-Whitney U test (P = 0.2670). PFS of the patients could be predicted with good consistency compared with the actual survival. C-index of the proposed individualized nomogram in the training set (0.707, 95%CI: 0.643, 0.771) and the independent validation set (0.715, 95%CI: 0.650, 0.780) showed the potential of clinical prognosis to predict PFS of stage IV EGFR-mutant NSCLC from EGFR TKIs. The individualized nomogram might facilitate patient counselling and individualise management of patients with this disease.
机译:准确预测抗酪氨酸激酶抑制剂(TKIS)治疗的疾病进展和受益于IV阶段非小细胞肺癌(NSCLC)患者的致活性表皮生长因子受体(EGFR)突变的患者是挑战。我们假设将由多种计算断层扫描(CT)表型特征组成的分类器组成,以及其他临床病理危险因素进入单一模型可以改善这些患者EGFR TKI的无进展存活(PFS)的风险分层和预测。患者证实阶段IV eGFR-突变体NSCLC接受EGFR TKIS没有切除;预处理对比度增强CT在纳入治疗前约2周进行。由套索Cox回归模型构建的基于六CT-表型特征的分类器,以及三种临床病理因素:病理N类,性能状态(PS)评分和血管内转移状态用于构建培训集中的墨迹图115名患者。然后对该载体的预测和预测准确性进行107例患者的外部独立验证。培训和独立验证集之间的PFS是Mann-Whitney U测试的统计差异(P = 0.2670)。与实际存活率相比,患者的PFS可以预测良好的一致性。培训组中提出个性化载体的C-指数(0.707,95%CI:0.643,0.771)和独立验证组(0.715,95%CI:0.650,0.780)显示临床预后的潜力,以预测阶段的PFS IV EGFR-突变体NSCLC来自EGFR TKIS。个性化的纳米图可能促进这种疾病患者的患者咨询和个性化管理。

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