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Biomarker discovery in microarray gene expression data with Gaussian processes

机译:高斯过程在微阵列基因表达数据中的生物标志物发现

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Motivation: In clinical practice, pathological phenotypes are often labelled with ordinal scales rather than binary, e.g. the Gleason grading system for tumour cell differentiation. However, in the literature of microarray analysis, these ordinal labels have been rarely treated in a principled way This paper describes a gene selection algorithm based on Gaussian processes to discover consistent gene expression patterns associated with ordinal clinical phenotypes. The technique of automatic relevancedetermination is applied to represent the significance level of the genes in a Bayesian inference framework. Results: The usefulness of the proposed algorithm for ordinal labels is demonstrated by the gene expression signature associated with the Gleasonscore for prostate cancer data. Our results demonstrate how multi-gene markers that may be initially developed with a diagnostic or prognostic application in mind are also useful as an investigative tool to reveal associations between specific molecular and cellular events and features of tumour physiology. Our algorithm can also be applied to microarray data with binary labels with results comparable to other methods in the literature.
机译:动机:在临床实践中,病理表型通常用序数标度而不是二进制标度。用于肿瘤细胞分化的格里森分级系统。然而,在微阵列分析的文献中,很少用原则性的方式处理这些顺序标签。本文描述了一种基于高斯过程的基因选择算法,以发现与顺序临床表型相关的一致基因表达模式。应用自动相关性确定技术在贝叶斯推理框架中表示基因的显着性水平。结果:针对前列腺癌数据的Gleasonscore相关基因表达签名证明了所提出算法用于序号标记的有效性。我们的结果表明,最初可能在诊断或预后应用中开发出来的多基因标记物还可以用作揭示特定分子和细胞事件与肿瘤生理学特征之间关联的研究工具。我们的算法也可以应用于带有二进制标签的微阵列数据,其结果可与文献中的其他方法相比。

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