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LDA-SVM-Based EGFR Mutation Model for NSCLC Brain Metastases

机译:基于LDA-SVM的NSCLC脑转移的EGFR突变模型

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摘要

Epidermal growth factor receptor (EGFR) activating mutations are a predictor of tyrosine kinase inhibitor effectiveness in the treatment of non–small-cell lung cancer (NSCLC). The objective of this study is to build a model for predicting the EGFR mutation status of brain metastasis in patients with NSCLC.Observation and model set-up.This study was conducted between January 2003 and December 2011 in 6 medical centers in Southwest China.The study included 31 NSCLC patients with brain metastases.Eligibility requirements were histological proof of NSCLC, as well as sufficient quantity of paraffin-embedded lung and brain metastases specimens for EGFR mutation detection. The linear discriminant analysis (LDA) method was used for analyzing the dimensional reduction of clinical features, and a support vector machine (SVM) algorithm was employed to generate an EGFR mutation model for NSCLC brain metastases. Training-testing-validation (3 : 1 : 1) processes were applied to find the best fit in 12 patients (validation test set) with NSCLC and brain metastases treated with a tyrosine kinase inhibitor and whole-brain radiotherapy.Primary and secondary outcome measures: EGFR mutation analysis in patients with NSCLC and brain metastases and the development of a LDA-SVM-based EGFR mutation model for NSCLC brain metastases patients.EGFR mutation discordance between the primary lung tumor and brain metastases was found in 5 patients. Using LDA, 13 clinical features were transformed into 9 characteristics, and 3 were selected as primary vectors. The EGFR mutation model constructed with SVM algorithms had an accuracy, sensitivity, and specificity for determining the mutation status of brain metastases of 0.879, 0.886, and 0.875, respectively. Furthermore, the replicability of our model was confirmed by testing 100 random combinations of input values.The LDA-SVM-based model developed in this study could predict the EGFR status of brain metastases in this small cohort of patients with NSCLC. Further studies with larger cohorts should be carried out to validate our findings in the clinical setting.
机译:表皮生长因子受体(EGFR)激活突变是酪氨酸激酶抑制剂在非小细胞肺癌(NSCLC)治疗中有效性的预测指标。本研究的目的是建立一个预测NSCLC患者脑转移的EGFR突变状态的模型。观察和模型建立。该研究于2003年1月至2011年12月在西南6个医疗中心进行。该研究纳入了31例患有脑转移的NSCLC患者,其入选条件为NSCLC的组织学证明,以及足够量的石蜡包埋的肺和脑转移标本以进行EGFR突变检测。线性判别分析(LDA)方法用于分析临床特征的降维,支持向量机(SVM)算法用于生成NSCLC脑转移的EGFR突变模型。应用训练-检验-验证(3:1:1)流程,以找到最适合12例NSCLC并经酪氨酸激酶抑制剂和全脑放疗治疗的脑转移瘤患者(验证测试集)。 :NSCLC和脑转移患者的EGFR突变分析以及基于LDA-SVM的NSCLC脑转移患者的EGFR突变模型的建立.5例患者发现原发性肺肿瘤与脑转移之间存在EGFR突变不一致。使用LDA,将13种临床特征转化为9种特征,并选择3种作为主要载体。用SVM算法构建的EGFR突变模型具有确定脑转移突变状态的准确性,敏感性和特异性,分别为0.879、0.886和0.875。此外,我们的模型的可复制性通过测试100个输入值的随机组合得到了证实。本研究开发的基于LDA-SVM的模型可以预测这一小群NSCLC患者脑转移的EGFR状态。应当对更大的人群进行进一步的研究,以验证我们在临床环境中的发现。

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