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Pathway activity inference for multiclass disease classification through a mathematical programming optimisation framework

机译:通过数学程序优化框架进行多类疾病分类的途径活动推断

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摘要

BackgroundApplying machine learning methods on microarray gene expression profiles for disease classification problems is a popular method to derive biomarkers, i.e. sets of genes that can predict disease state or outcome. Traditional approaches where expression of genes were treated independently suffer from low prediction accuracy and difficulty of biological interpretation. Current research efforts focus on integrating information on protein interactions through biochemical pathway datasets with expression profiles to propose pathway-based classifiers that can enhance disease diagnosis and prognosis. As most of the pathway activity inference methods in literature are either unsupervised or applied on two-class datasets, there is good scope to address such limitations by proposing novel methodologies.
机译:背景技术在微阵列基因表达谱上应用机器学习方法来解决疾病分类问题是一种流行的方法来获得生物标记,即可以预测疾病状态或结果的基因集。独立处理基因表达的传统方法具有较低的预测准确性和生物学解释的难度。当前的研究工作集中于通过生化途径数据集与表达谱整合蛋白质相互作用的信息,以提出可增强疾病诊断和预后的基于途径的分类器。由于文献中大多数通路活动推断方法都是无监督的或应用于两类数据集,因此有很大的空间通过提出新颖的方法来解决此类局限性。

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