Targeted unsupervised features learning for gene expression data analysis to predict cancer stage

Imene Zenbout, Abdelkrim Bouramoul, S. Meshoul
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Abstract

The intensive explosion in the generation of large scale cancer gene expression data brought several computational challenges, yet opened great opportunities in exploring different pathways in order to improve cancer prognosis, diagnosis and treatment. In this paper, we propose a targeted unsupervised learning model, based on deep autoencoders (TAE) to learn significant cancer representation based on the gene expression omnibus(GEO) integrated expO data set, for the ultimate goal of constructing an accurate cancer stage predictive model. Where, the trained model was tested on two gene expression cancer data sets namely, lung cancer for clinical stage and intensive breast cancer (IBC) for pathological stage. In which, the model extracted new features space for the two cancer type based on the knowledge built from the expO data set. The generated features were used to train classifiers to predict the cancer stage of each sample. We evaluated the effectiveness of our proposal by comparison to the principal component analysis (PCA) unsupervised dimensionality reduction, as well as to the supervised univariate features selection method. The experimental results, show a promising performance of our analysis model to build a collaborative knowledge from different cancer type to enhance the prediction rate of different cancer stage.
靶向无监督特征学习用于基因表达数据分析预测癌症分期
大规模癌症基因表达数据产生的密集爆炸带来了一些计算挑战,但也为探索不同途径以改善癌症预后、诊断和治疗提供了巨大的机会。在本文中,我们提出了一种基于深度自编码器(TAE)的目标无监督学习模型,以学习基于基因表达综合(GEO)集成的expO数据集的重要癌症表征,最终目的是构建准确的癌症分期预测模型。其中,训练后的模型在两个基因表达癌数据集上进行测试,即肺癌临床分期和强化乳腺癌(IBC)病理分期。其中,该模型基于从expO数据集中构建的知识提取两种癌症类型的新特征空间。生成的特征被用来训练分类器来预测每个样本的癌症阶段。我们通过与主成分分析(PCA)无监督降维以及监督单变量特征选择方法的比较来评估我们的建议的有效性。实验结果表明,我们的分析模型在构建不同癌症类型的协同知识以提高不同癌症分期的预测率方面具有良好的性能。
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