基因表达谱判别的离散贝叶斯网络框架

N. Balov
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引用次数: 1

摘要

使用基因表达谱来预测由细胞特化或疾病引起的表型差异提出了一个重要的统计问题。贝叶斯网络等图形统计模型可以通过识别实验条件下基因调控的变化来提高预测的准确性。我们考虑一个离散贝叶斯网络模型,该模型通过共享共同图结构但具有不同概率表的网络来表示对实验类。我们应用基于分数的网络估计程序,最大化类概率之间的kl -散度。该方法采用隐式模型选择,不涉及额外的复杂度惩罚参数。基因谱的分类是通过比较估计的类网络的可能性来进行的。我们评估了新模型与支持向量机,惩罚线性回归和线性高斯网络的性能。这些分类器通过来自乳腺癌和肺癌研究的9个独立数据集的预测准确性进行比较。该方法具有较强的抗竞争性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A discrete Bayesian network framework for discrimination of gene expression profiles
Using gene expression profiles for predicting phenotypic differences that result from cell specializations or diseases poses an important statistical problem. Graphical statistical models such as Bayesian networks may improve the prediction accuracy by identifying alternations in gene regulations due to the experimental conditions. We consider a discrete Bayesian network model that represents pairs of experimental classes by networks that share a common graph structure but have distinct probability tables. We apply a score-based network estimation procedure that maximizes the KL-divergence between class probabilities. The proposed method performs an implicit model selection and does not involve additional complexity penalization parameters. Classification of gene profiles is performed by comparing the likelihood of the estimated class networks. We evaluate the performance of the new model against support vector machine, penalized linear regression and linear Gaussian networks. The classifiers are compared by prediction accuracy across 9 independent data sets from breast and lung cancer studies. The proposed method demonstrates a strong performance against the competitors.
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