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Cancer research in the era of next-generation sequencing and big data calls for intelligent modeling

机译:下一代测序和大数据时代的癌症研究要求智能建模

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We examine the role of big data and machine learning in cancer research. We describe an example in cancer research where gene-level data from The Cancer Genome Atlas (TCGA) consortium is interpreted using a pathway-level model. As the complexity of computational models increases, their sample requirements grow exponentially. This growth stems from the fact that the number of combinations of variables grows exponentially as the number of variables increases. Thus, a large sample size is needed. The number of variables in a computational model can be reduced by incorporating biological knowledge. One particularly successful way of doing this is by using available gene regulatory, signaling, metabolic, or context-specific pathway information. We conclude that the incorporation of existing biological knowledge is essential for the progress in using big data for cancer research.
机译:我们研究了大数据和机器学习在癌症研究中的作用。我们描述了一个癌症研究中的例子,其中癌症基因组图谱(TCGA)联盟的基因水平数据是使用途径水平模型来解释的。随着计算模型的复杂性增加,其样本需求呈指数增长。这种增长源于以下事实:变量组合的数量随变量数量的增加呈指数增长。因此,需要大的样本量。通过合并生物学知识,可以减少计算模型中变量的数量。实现此目的的一种特别成功的方法是使用可用的基因调节,信号转导,代谢或特定情境的途径信息。我们得出的结论是,将现有的生物学知识整合到使用大数据进行癌症研究的进展中至关重要。

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