A deep learning and genetic algorithm based feature selection processes on Leukemia Data

R. Francese, M. Frasca, M. Risi, G. Tortora
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Abstract

Acute Leukemia is classified in terms of two distinct classes: Acute Lymphoblastic Leukemia (ALL) and Acute Myeloid Leukemia (AML). This paper aims at defining a feature selection analysis process mainly based on Deep Learning for classifying the acute leukemia type. The considered dataset consists in data of patients affected by both the leukemia types. Both the leukemia types are characterized by a list of identical genes for all the patients. The analysis exploits feature selection techniques for reducing the consistent number of variables (genes). To this aim, we use linear models for differential expression for microarray data, and an autoencoder based unsupervised deep learning model to simplify and speed up the classification. Then, classification models have been implemented with the use of a deep neural network (DNN), obtaining an accuracy of approximately 92%. Moreover, the results have been compared with the ones provided by an approach based on support vector machines (SVM), giving an accuracy of 87,39%. Another feature selection approach based on genetic algorithms has been experimented, with worse performances. We also conducted a gene enrichment analysis based on the functional annotation of the differentially expressed genes. As a result, a differentially expressed pathway between the two pathologies has been detected.
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基于深度学习和遗传算法的白血病数据特征选择处理
急性白血病分为两类:急性淋巴母细胞白血病(ALL)和急性髓系白血病(AML)。本文旨在定义一种基于深度学习的特征选择分析过程,用于急性白血病类型的分类。考虑的数据集包括受两种白血病类型影响的患者的数据。这两种白血病的特点是所有患者都有一组相同的基因。该分析利用特征选择技术来减少变量(基因)的一致数量。为此,我们使用线性模型对微阵列数据进行差分表达,并使用基于自编码器的无监督深度学习模型来简化和加速分类。然后,使用深度神经网络(DNN)实现分类模型,获得约92%的准确率。此外,将结果与基于支持向量机(SVM)的方法进行了比较,准确率为87,39%。另一种基于遗传算法的特征选择方法也进行了实验,但性能较差。我们还根据差异表达基因的功能注释进行了基因富集分析。因此,两种病理之间的差异表达途径已经被发现。
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