Prediction therapy outcomes of HCV patients treated with interferon/ribavirin

Publication date: August 2018 Source:Biomedical Signal Processing and Control, Volume 45 Author(s): Zeinab Ebrahimi, Niloofar Gharesi, Mohammad Mehdi Arefi, Ali Akbar Safavi, Mehrdad Hosseini Zadeh Hepatitis C is a kind of an infectious disease that mainly has an impact on the liver and also disrupts its activities. As an approximation, 130∼170 millions of people around the world have been suffering from hepatitis C virus. Until now, a combination of interferon-alpha (IFN-Alpha) and ribavirin (RBV) is employed as a therapy to those who infected with hepatitis C virus (HCV). This paper presents powerful and novel methods to predict and classify therapy outcomes based on two techniques and two classifiers. Here, discrete wavelet transform (DWT) is invoked for decomposing the initial datasets up several levels. The datasets that used in the procedure of prediction and classification are the full-length nucleotide sequences of HCV subtypes 1a and 1b. Next, the reduction of data dimension as well as correlation amongst the datasets are carried out by exerting linear discriminant analysis (LDA). After acquiring the most significant and vital features from the full-length nucleotide sequences of HCV subtypes 1a and 1b, two effective and powerful methods are presented for classifying and identifying genetic determinatives of treatment consequence. Thus, wavelet neural network (Wave-Net) and support vector machine (SVM) with various parameters and wavelets are used to classif...
Source: Biomedical Signal Processing and Control - Category: Biomedical Science Source Type: research