Generative Adversarial Networks in Precision Oncology

Leandro von Werra, Marcel Schöngens, E. Uzun, Carsten Eickhoff
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引用次数: 4

Abstract

Precision medicine strives to deliver improved care based on genetic patient information. Towards this end, it is crucial to find effective data representations on which to perform matching and inference operations. We develop and evaluate a generative adversarial neural network (GAN) approach to representation learning with the goal of patient-centric literature retrieval and treatment recommendation in precision oncology. Several large-scale corpora including the COSMIC Cancer Gene Census, COSMIC Mutation Data, Genomic Data Commons (GDC) and 26M MEDLINE abstracts are used to train GANs for synthesizing genetic mutation patterns that likely correspond to patient properties such as their demographics or cancer type. The introduction of GANs into the literature retrieval and treatment recommendation process results in significant improvements in performance by increasing the recall of a range of methods at stable precision. Finally, we propose a method to discover novel gene-gene interaction hypotheses to guide future research.
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精准肿瘤学中的生成对抗网络
精准医学致力于根据患者的遗传信息提供更好的护理。为此,找到有效的数据表示来执行匹配和推理操作至关重要。我们开发和评估了一种生成对抗神经网络(GAN)方法来表示学习,目标是在精确肿瘤学中以患者为中心的文献检索和治疗推荐。包括COSMIC癌症基因普查、COSMIC突变数据、基因组数据共享(GDC)和26M MEDLINE摘要在内的几个大型语料被用于训练gan,以合成可能与患者特征(如人口统计学或癌症类型)相对应的基因突变模式。将gan引入文献检索和治疗推荐过程中,通过在稳定精度下增加一系列方法的召回率,显著提高了性能。最后,我们提出了一种发现新的基因-基因相互作用假设的方法,以指导未来的研究。
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