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A Novel Pathological Images and Genomic Data Fusion Framework for Breast Cancer Survival Prediction

机译:乳腺癌生存预测的新型病理图像和基因组数据融合框架

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Survival analysis is a valid solution for cancer treatments and outcome evaluations. Due to the wide application of medical imaging and genome technology, computer-aided survival analysis has become a popular and promising area, from which we can get relatively satisfactory results. Although there are already some impressive technologies in this field, most of them make some recommendations using single-source medical data and have not combined multi-level and multi-source data efficiently. In this paper, we propose a novel pathological images and gene expression data fusion framework to perform the survival prediction. Different from previous methods, our framework can extract correlated multi-scale deep features from whole slide images (WSIs) and dimensionality reduced gene expression data respectively for jointly survival analysis. The experiment results demonstrate that the integrated multi-level image and genome features can achieve higher prediction accuracy compared with single-source features.
机译:生存分析是癌症治疗和结果评估的有效解决方案。由于医学成像和基因组技术的广泛应用,计算机辅助生存分析已成为一个流行而有希望的领域,从中我们可以获得相对满意的结果。尽管该领域已经有了一些令人印象深刻的技术,但是大多数技术都使用单源医疗数据提出了一些建议,并且没有有效地组合多级和多源数据。在本文中,我们提出了一种新颖的病理图像和基因表达数据融合框架来进行生存预测。与以前的方法不同,我们的框架可以分别从整个幻灯片图像(WSI)和降维的基因表达数据中提取相关的多尺度深度特征,以进行联合生存分析。实验结果表明,与单源特征相比,集成的多级图像和基因组特征可以实现更高的预测精度。

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