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Big knowledge from big data in functional genomics

机译:从功能基因组学中的大数据中获取大量知识

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摘要

With so much genomics data being produced, it might be wise to pause and consider what purpose this data can or should serve. Some improve annotations, others predict molecular interactions, but few add directly to existing knowledge. This is because sequence annotations do not always implicate function, and molecular interactions are often irrelevant to a cell's or organism's survival or propagation. Merely correlative relationships found in big data fail to provide answers to the questions of human biology. Instead, those answers are expected from methods that causally link DNA changes to downstream effects without being confounded by reverse causation. These approaches require the controlled measurement of the consequences of DNA variants, for example, either those introduced in single cells using CRISPR/Cas9 genome editing or that are already present across the human population. Inferred causal relationships between genetic variation and cellular phenotypes or disease show promise to rapidly grow and underpin our knowledge base.
机译:由于产生了如此多的基因组学数据,因此暂停并考虑该数据可以或应达到的目的可能是明智的。一些改进了注释,另一些预测了分子相互作用,但很少能直接增加现有知识。这是因为序列注释并不总是暗示功能,并且分子相互作用通常与细胞或生物的存活或繁殖无关。大数据中仅存在的相关关系无法提供人类生物学问题的答案。取而代之的是,这些答案是通过将DNA变化与下游效应相关联而不会被反向因果关系混淆的方法所期望的。这些方法需要对DNA变异的后果进行可控的测量,例如使用CRISPR / Cas9基因组编辑将这些变异引入单个细胞中或已经存在于整个人类群体中。推断的遗传变异与细胞表型或疾病之间的因果关系表明有望迅速发展并巩固我们的知识基础。

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