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The properties of high-dimensional data spaces: implications for exploring gene and protein expression data.

机译:高维数据空间的特性:探索基因和蛋白质表达数据的意义。

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High-throughput genomic and proteomic technologies are widely used in cancer research to build better predictive models of diagnosis, prognosis and therapy, to identify and characterize key signalling networks and to find new targets for drug development. These technologies present investigators with the task of extracting meaningful statistical and biological information from high-dimensional data spaces, wherein each sample is defined by hundreds or thousands of measurements, usually concurrently obtained. The properties of high dimensionality are often poorly understood or overlooked in data modelling and analysis. From the perspective of translational science, this Review discusses the properties of high-dimensional data spaces that arise in genomic and proteomic studies and the challenges they can pose for data analysis and interpretation.
机译:高通量基因组和蛋白质组学技术广泛用于癌症研究,以建立更好的诊断,预后和治疗预测模型,识别和表征关键的信号网络,并找到药物开发的新目标。这些技术为研究人员提供了从高维数据空间中提取有意义的统计信息和生物学信息的任务,其中每个样本是由通常同时获得的数百或数千个测量值定义的。在数据建模和分析中,常常很难理解或忽略高维的属性。从翻译科学的角度出发,本综述讨论了基因组和蛋白质组学研究中出现的高维数据空间的特性,以及它们可能对数据分析和解释提出的挑战。

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