A novel hybrid dimension reduction and deep learning-based classification for neuromuscular disorder

Babita Pandey, Devendra Kumar Pandey, Aditya Khamparia, Seema Shukla
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Abstract

Correct classification of neuromuscular disorders is essential to provide accurate diagnosis. Presently, gene microarray technology is a widely accepted technology to monitor the expression level of a large number of genes simultaneously. The gene microarray data are a high dimensional data, which usually contains small samples having a large number of genes. Therefore, dimension reduction is a crucial task for correct classification of diseases. Dimension reduction eliminates those genes which are less expressive and enhances the efficiency of the classification model. In the present paper, we developed a novel hybrid dimension reduction method and a deep learning-based classification model for neuromuscular disorders. The hybrid dimension reduction method is deployed in three phase: in the first phase, the expressive genes are selected using F test method, and the mutual information method and the best one among them are selected for further processing. In second phase, the gene selected by the best model is further transformed to low dimension by PCA. In third phase, the deep learning-based classification model is deployed. For experimentation, two diseased and multi-diseased micro array data sets, which is publicly available, is used. The best accuracy by 50-100-50-25-13 deep learning architecture with hybrid dimension reduction, where 100 genes select by F test and PCA with 50 principal components is 89% for NMD data set. The best accuracy by 50-100-2 deep learning architecture with hybrid dimension reduction, where 100 genes select by F test and PCA with 50 principal components is 97% for FSHD data set. The proposed hybrid method gives better classification accuracy result and reduces the search space and time complexity as well for both two diseased and multi-diseased micro array data sets.

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一种新的基于降维和深度学习的神经肌肉疾病分类方法
神经肌肉疾病的正确分类对于提供准确的诊断至关重要。目前,基因微阵列技术是一种广泛接受的同时监测大量基因表达水平的技术。基因微阵列数据是高维数据,其通常包含具有大量基因的小样本。因此,降维是正确分类疾病的关键任务。降维消除了那些表达能力较差的基因,提高了分类模型的效率。在本文中,我们开发了一种新的混合降维方法和一种基于深度学习的神经肌肉疾病分类模型。混合降维方法分为三个阶段:在第一阶段,使用F检验方法选择表达基因,并选择互信息方法和其中最好的方法进行进一步处理。在第二阶段,通过PCA将最佳模型选择的基因进一步转化为低维。在第三阶段,部署了基于深度学习的分类模型。为了进行实验,使用了公开可用的两个患病和多患病的微阵列数据集。对于NMD数据集,50-100-50-25-13具有混合降维的深度学习架构(其中通过F检验和具有50个主成分的PCA选择100个基因)的最佳准确率为89%。具有混合降维的50-100-2深度学习架构(其中通过F检验和具有50个主成分的PCA选择100个基因)的FSHD数据集的最佳准确率为97%。所提出的混合方法对两个病变和多病变的微阵列数据集都给出了更好的分类精度结果,并降低了搜索空间和时间的复杂性。
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