Prediction of the Thromboembolic Syndrome: an Application of Artificial Neural Networks in Gene Expression Data Analysis

Mahdi Khalili, H. Majd, S. Khodakarim, B. Ahadi, M. Hamidpour
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引用次数: 13

Abstract

The aim of this study was to propose a method for improving the power of recognition and classification of thromboembolic syndrome based on the analysis of ‎ gene expression data using artificial neural networks. The studied method was performed on a dataset which contained data about 117 patients admitted to a hospital in Durham in 2009. Of all the studied patients, 66 patients were suffering from thromboembolic syndrome and 51 people were enrolled in the study as the control group. The gene expression level of 22277 was measured for all the samples and was entered into the model as the main variable. Due to the high number of variables, principal components analysis and auto-encoder neural network methods were used in order to reduce the dimension of data. The results showed that when using auto-encoder networks, the classification accuracy was 93.12. When using the PCA method to reduce the size of the data, the obtained accuracy was 78.26, and hence a significant difference in the accuracy of classification was observed. If auto-encoder network method is used, the sensitivity and specificity will be 92.58 and 93.68 and when PCA method is used, they will be 0.77 and 0.78 respectively. The results suggested that auto-encoder networks, compared with the PCA method, had a higher level of accuracy for the classification of thromboembolic syndrome status.
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预测血栓栓塞综合征:人工神经网络在基因表达数据分析中的应用
本研究的目的是提出一种基于人工神经网络基因表达数据分析的方法来提高对血栓栓塞综合征的识别和分类能力。研究方法是在一个数据集上进行的,该数据集包含2009年在达勒姆一家医院入院的117名患者的数据。在所有研究的患者中,66名患者患有血栓栓塞综合征,51人被纳入研究作为对照组。所有样品均检测22277基因表达水平,并作为主变量输入模型。由于变量数量较多,采用了主成分分析和自编码器神经网络方法来降低数据维数。结果表明,使用自编码器网络时,分类准确率为93.12。当使用PCA方法对数据进行缩减时,得到的准确率为78.26,因此分类的准确率有显著差异。采用自编码器网络方法时,灵敏度为92.58,特异度为93.68;采用主成分分析法时,灵敏度为0.77,特异度为0.78。结果表明,与PCA方法相比,自编码器网络对血栓栓塞综合征状态的分类具有更高的准确性。
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