Kim S, Dougherty E R, Bittner M L, Chen Y, Sivakumar K, Meltzer P, Trent J M
Texas A&M University, Department of Electrical Engineering, College Station 77843-3128, USA.
J Biomed Opt. 2000 Oct;5(4):411-24. doi: 10.1117/1.1289142.
A cDNA microarray is a complex biochemical-optical system whose purpose is the simultaneous measurement of gene expression for thousands of genes. In this paper we propose a general statistical approach to finding associations between the expression patterns of genes via the coefficient of determination. This coefficient measures the degree to which the transcriptional levels of an observed gene set can be used to improve the prediction of the transcriptional state of a target gene relative to the best possible prediction in the absence of observations. The method allows incorporation of knowledge of other conditions relevant to the prediction, such as the application of particular stimuli or the presence of inactivating gene mutations, as predictive elements affecting the expression level of a given gene. Various aspects of the method are discussed: prediction quantification, unconstrained prediction, constrained prediction using ternary perceptrons, and design of predictors given small numbers of replicated microarrays. The method is applied to a set of genes undergoing genotoxic stress for validation according to the manner in which it points toward previously known and unknown relationships. The entire procedure is supported by software that can be applied to large gene sets, has a number of facilities to simplify data analysis, and provides graphics for visualizing experimental data, multiple gene interaction, and prediction logic.
cDNA微阵列是一种复杂的生化光学系统,其目的是同时测量数千个基因的基因表达。在本文中,我们提出了一种通用的统计方法,通过决定系数来寻找基因表达模式之间的关联。该系数衡量了相对于在没有观测值的情况下的最佳预测,观测基因集的转录水平能够用于改善目标基因转录状态预测的程度。该方法允许纳入与预测相关的其他条件的知识,例如特定刺激的应用或失活基因突变的存在,作为影响给定基因表达水平的预测元素。讨论了该方法的各个方面:预测量化、无约束预测、使用三元感知器的约束预测以及在少量重复微阵列情况下预测器的设计。根据该方法指向先前已知和未知关系的方式,将其应用于一组遭受基因毒性应激的基因进行验证。整个过程由软件支持,该软件可应用于大型基因集,具有许多简化数据分析的功能,并提供用于可视化实验数据、多个基因相互作用和预测逻辑的图形。