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Pan-Cancer Prognosis Prediction Using Multimodal Deep Learning

机译:使用多模式深度学习进行全癌预后预测

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In the age of precision medicine, cancer prognosis assessment from high-dimensional multimodal data requires powerful computational methods. We present an end-to-end multimodal Deep Learning method, named MultiSurv, for automatic patient risk prediction for a large group of 33 cancer types. The method leverages histophatology microscopy slides combined with tabular clinical information and different types of high-throughput sequencing and microarray molecular data. MultiSurv has high predictive performance over all cancer types after training on different combinations of input data modalities and it can handle missing data seamlessly. MultiSurv thus has the potential to integrate the wide variety of available patient data and assist physicians with cancer patient prognosis.
机译:在精密医学时代,根据高维多模态数据进行的癌症预后评估需要强大的计算方法。我们提出了一种名为MultiSurv的端到端多模式深度学习方法,用于对33种癌症类型的大群患者进行自动风险预测。该方法利用组织病理学显微镜幻灯片与表格临床信息以及不同类型的高通量测序和微阵列分子数据相结合。经过对输入数据模式的不同组合进行训练后,MultiSurv对所有癌症类型均具有较高的预测性能,并且可以无缝处理丢失的数据。因此,MultiSurv有潜力整合各种可用的患者数据,并协助医生进行癌症患者的预后。

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