Author/Authors :
Alavi Majd، Hamid نويسنده Department of Biostatistics, Faculty of Paramedical Sciences, ShahidBeheshti University of Medical Sciences, Tehran, Iran , , Khalili ، Mahdieh نويسنده Department of Biostatistics, Faculty of Paramedical Sciences, ShahidBeheshti University of Medical Sciences, Tehran, Iran , , Khodakarim ، Soheila نويسنده Department of Biostatistics, Faculty of Paramedical Sciences, ShahidBeheshti University of Medical Sciences, Tehran, Iran , , Ahadi، Batool نويسنده Department of Psychology, Faculty of Litearature and Humam Sciences, Mohaghegh Ardabili University, Ardabil, Iran Ahadi, Batool , Hamidpour ، Mohsen نويسنده Department of Hematology, Faculty of Paramedical Sciences, ShahidBeheshti University of Medical Sciences, Tehran, Iran ,
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.