通过数学规划减少生物标记物列表:应用于基因标记来检测癌症中时间依赖性缺氧

Glenn Fung, R. Seigneuric, Sriram Krishnan, R. B. Rao, B. Wouters, P. Lambin
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引用次数: 12

摘要

在生物学和医学领域,高度平行的生物分析引发了一场革命,导致了“组学”时代的出现。降维技术对于分析、解释、验证和利用它们提供的大量高维度数据是必要的。本文基于DNA微阵列研究,提供了缺氧的基因特征。通过Kaplan-Meier生存期、单变量和多变量分析,在一个大型乳腺癌数据集上对这些基因特征进行了测试,以评估其预后能力。我们探索了几种基于数学规划的技术,旨在尽可能地减少基因签名大小,同时保持原始签名的关键特征,更准确地说:签名预后和诊断意义。提出的签名缩减技术具有非常有趣的潜在用途。事实上,通过将相关数据缩小到可管理的规模,人们可以为核心生物标志物组申请专利,并为常规应用(例如,在定制阵列上)创建专用分析(例如,在临床设置中),从而实现个性化医疗能力。我们的实验表明,减少的缺氧特征在定性和定量上与原始特征相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing a Biomarkers List via Mathematical Programming: Application to Gene Signatures to Detect Time-Dependent Hypoxia in Cancer
In biology and medical sciences, highly parallel biological assays spurred a revolution leading to the emergence of the '-omics' era. Dimensionality reduction techniques are necessary to be able to analyze, interpret, validate and take advantage of the tremendous wealth of highly dimensional data they provide. This paper is based on a DNA microarray study providing gene signatures for hypoxia. These gene signatures were tested on a large breast cancer data set for assessing their prognostic power by means of Kaplan-Meier survival, univariate, and multivariate analyses. We explore the use of several mathematical programming-based techniques that aim to reduce the gene signature sizes as much as possible while maintaining the key characteristics of the original signature, more precisely: the signature prognostic and diagnostic significance. The proposed signature reduction techniques have very interesting potential uses. Indeed, by downsizing the relevant data to a manageable size, one can then patent the core set of biomarkers and also create a dedicated assay (e.g.: on a customized array) for routine applications (e.g.: in the clinical set up) leading to individualized medicine capabilities. Our experiments show that the reduced hypoxia signatures reproduced qualitatively and quantitatively in a similar way that of the original ones.
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