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LUNG CANCER SURVIVAL PREDICTION FROM PATHOLOGICAL IMAGES AND GENETIC DATA - AN INTEGRATION STUDY

机译:病理图像和遗传数据的肺癌生存预测 - 整合研究

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In this paper, we have proposed a framework for lung cancer survival prediction by integrating genetic data and pathological images. Since molecular profiles and pathological images reveal complementary information on tumor characteristics, the integration will benefit the survival analysis. The gene expression signatures are processed using Model-Based Background Correction method. A robust cell detection and segmentation method is applied to segment each individual cell from pathological images to extract the image features. Based on the cell detection results, a set of extensive features are extracted using efficient geometry and texture descriptors. The supervised principal component regression model is fitted to evaluate the proposed framework. Experimental results demonstrate strong prediction power of the statistical model built from the integration of genetic data and pathological images compared with using only one of the two types of data alone.
机译:在本文中,我们提出了通过整合遗传数据和病理图像来肺癌存活预测框架。 由于分子谱和病理图像显示有关肿瘤特征的互补信息,因此整合将有益于生存分析。 使用基于模型的背景校正方法处理基因表达签名。 施加鲁棒的小区检测和分割方法以将每个单独的小区分段从病理图像分段以提取图像特征。 基于细胞检测结果,使用有效的几何和纹理描述符来提取一组广泛的特征。 监督的主要成分回归模型适用于评估所提出的框架。 实验结果表明,与单独的两种类型的数据中的仅使用中的一种相比,从遗传数据和病理图像的集成而建立的统计模型的强预测力。

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