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Copy number variation in plasma as a tool for lung cancer prediction using Extreme Gradient Boosting (XGBoost) classifier

机译:使用极端梯度升压(XGBoost)分类器复制等离子体中的数量变化作为肺癌预测的工具

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BACKGROUND:The main cause of cancer death is lung cancer (LC) which usually presents at an advanced stage, but its early detection would increase the benefits of treatment. Blood is particularly favored in clinical research given the possibility of using it for relatively noninvasive analyses. Copy number variation (CNV) is a common genetic change in tumor genomes, and many studies have indicated that CNV-derived cell-free DNA (cfDNA) from plasma could be feasible as a biomarker for cancer diagnosis.METHODS:In this study, we determined the possibility of using chromosomal arm-level CNV from cfDNA as a biomarker for lung cancer diagnosis in a small cohort of 40 patients and 41 healthy controls. Arm-level CNV distributions were analyzed based on z score, and the machine-learning algorithm Extreme Gradient Boosting (XGBoost) was applied for cancer prediction.RESULTS:The results showed that amplifications tended to emerge on chromosomes 3q, 8q, 12p, and 7q. Deletions were frequently detected on chromosomes 22q, 3p, 5q, 16q, 10q, and 15q. Upon applying a trained XGBoost classifier, specificity and sensitivity of 100% were finally achieved in the test group (12 patients and 13 healthy controls). In addition, five-fold cross-validation proved the stability of the model. Finally, our results suggested that the integration of four arm-level CNVs and the concentration of cfDNA into the trained XGBoost classifier provides a potential method for detecting lung cancer.CONCLUSION:Our results suggested that the integration of four arm-level CNVs and the concentration from of cfDNA integrated withinto the trained XGBoost classifier could become provides a potentially method for detecting lung cancer detection.? 2019 The Authors. Thoracic Cancer published by China Lung Oncology Group and John Wiley & Sons Australia, Ltd.
机译:背景:癌症死因的主要原因是肺癌(LC),通常在晚期阶段呈现,但其早期检测将增加治疗的益处。血液在临床研究中特别赞成,鉴于使用它相对非侵入性分析的可能性。拷贝数变异(CNV)是肿瘤基因组的常见遗传变化,许多研究表明,来自血浆的CNV衍生的无细胞DNA(CFDNA)可以作为癌症诊断的生物标志物是可行的。方法:在这项研究中,我们确定使用CFDNA的染色体臂水平CNV的可能性作为肺癌诊断的40例患者和41个健康对照组的生物标志物。基于Z分数分析ARM级CNV分布,并且对癌症预测施用了机器学习算法极端梯度升压(XGBoost)。结果表明,结果表明,染色体3Q,8Q,12P和7Q出现的扩增趋于趋于趋于。在染色体22Q,3P,5Q,16Q,10Q和15Q上经常检测到缺失。在应用训练的XGBoost分类器后,最终在试验组(12名患者和13例健康对照)中实现了100%的特异性和敏感性。此外,五倍的交叉验证证明了模型的稳定性。最后,我们的结果表明,四个臂级CNV的整合和CFDNA浓度进入训练有素的XGBoost分类器,提供了检测肺癌的潜在方法。结论:我们的结果表明四个臂级CNV的整合和浓度从CFDNA集成的CFDNA,训练的XGBoost分类器可以成为检测肺癌检测的可能方法。 2019年的作者。中国肺部肿瘤集团和约翰瓦里和儿子澳大利亚发表的胸癌

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