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Association of CT-based Imaging Features and Genomic Data in Non-small Cell Lung Cancer

机译:非小细胞肺癌中基于CT的成像特征与基因组数据的关联。

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摘要

Radiogenomics is a recent promising field in cancer research focusing on associating genomic data with radiographic imaging phenotypes. This study is initiated to establish the mapping between quantitative characteristics of CT images and gene expression data, based on publically available dataset that includes 26 non-small cell lung cancer (NSCLC) patients. On one hand, a set of 66 features are extracted to quantify the phenotype of tumors after segmentation. On the other hand, co-expressed genes are clustered and are biologically annotated that are represented by metagenes, namely the first principal component of clusters. Finally, statistical analysis is performed to assess relationship between CT imaging features and metagenes. Furthermore, a predictive model is built to evaluate NSCLC radiogenomics performance. Experiment show that there are 126 significant and reliable pairwise correlations which suggest that CT-based features are minable and can reflect important biological information of NSCLC patients.
机译:放射基因组学是癌症研究中最近有希望的领域,其致力于将基因组数据与放射照相成像表型相关联。基于包括26个非小细胞肺癌(NSCLC)患者的公开可用数据集,本研究旨在启动CT图像定量特征与基因表达数据之间的映射。一方面,提取了一组66个特征以量化分割后肿瘤的表型。另一方面,共表达的基因被聚类并被生物学注释,这些基因由元基因(即聚类的第一个主要成分)表示。最后,进行统计分析以评估CT成像特征与元基因之间的关系。此外,建立了预测模型来评估NSCLC放射基因组学性能。实验表明,存在126个显着且可靠的成对相关性,这表明基于CT的特征是可挖掘的,并且可以反映NSCLC患者的重要生物学信息。

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