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Computer-Aided Nodule Assessment and Risk Yield (CANARY) may facilitate non-invasive prediction of EGFR mutation status in lung adenocarcinomas

机译:计算机辅助结节评估和风险收益率(CANARY)可能有助于非侵入性预测肺腺癌中EGFR突变状态

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Computer-Aided Nodule Assessment and Risk Yield (CANARY) is quantitative imaging analysis software that predicts the histopathological classification and post-treatment disease-free survival of patients with adenocarcinoma of the lung. CANARY characterizes nodules by the distribution of nine color-coded texture-based exemplars. We hypothesize that quantitative computed tomography (CT) analysis of the tumor and tumor-free surrounding lung facilitates non-invasive identification of clinically-relevant mutations in lung adenocarcinoma. Comprehensive analysis of targetable mutations (50-gene-panel) and CANARY analysis of the preoperative (≤3 months) high resolution CT (HRCT) was performed for 118 pulmonary nodules of the adenocarcinoma spectrum surgically resected between 2006–2010. Logistic regression with stepwise variable selection was used to determine predictors of mutations. We identified 140 mutations in 106 of 118 nodules. TP53 (n?=?48), KRAS (n?=?47) and EGFR (n?=?15) were the most prevalent. The combination of Y (Yellow) and G (Green) exemplars, fibrosis within the surrounding lung and smoking status were the best discriminators for an EGFR mutation (AUC 0.77 and 0.87, respectively). None of the EGFR mutants expressing TP53 (n?=?5) had a good prognosis based on CANARY features. No quantitative features were significantly associated with KRAS mutations. Our exploratory analysis indicates that quantitative CT analysis of a nodule and surrounding lung may noninvasively predict the presence of EGFR mutations in pulmonary nodules of the adenocarcinoma spectrum.
机译:计算机辅助结节评估和风险收益率(CANARY)是定量成像分析软件,可预测肺腺癌患者的组织病理学分类和治疗后无病生存。 CANARY通过分布九种基于颜色编码的基于纹理的样本来表征结节。我们假设对肿瘤和周围无肿瘤的肺部进行定量计算机断层扫描(CT)分析有助于肺腺癌临床相关突变的非侵入性鉴定。对2006–2010年间手术切除的118例腺癌频谱的肺结节进行了靶点突变(50基因面板)的综合分析和术前(≤3个月)高分辨率CT(HRCT)的CANARY分析。具有逐步变量选择的逻辑回归用于确定突变的预测因子。我们在118个结节中的106个中鉴定了140个突变。 TP53(n≥48),KRAS(n≥47)和EGFR(n≥15)是最普遍的。 Y(黄色)和G(绿色)示例,周围肺内的纤维化和吸烟状态的组合是EGFR突变的最佳判别因子(AUC分别为0.77和0.87)。根据CANARY特征,没有一种表达TP53的EGFR突变体(n≥5)具有良好的预后。没有定量特征与KRAS突变显着相关。我们的探索性分析表明,对结节和周围肺的定量CT分析可能无创地预测腺癌频谱的肺结节中EGFR突变的存在。

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