Universiti Teknologi Malaysia Institutional Repository

Classification of sars-cov-2 and non-sars-cov-2 using machine learning algorithms

Singh, O. P. and Vallejo, M. and Badawy, I. M. L. and Aysha, A. and Madhanagopal, J. and Mohd. Faudzi, A. A. (2021) Classification of sars-cov-2 and non-sars-cov-2 using machine learning algorithms. Computers in Biology and Medicine, 136 . ISSN 0010-4825

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Official URL: http://dx.doi.org/10.1016/j.compbiomed.2021.104650

Abstract

Due to the continued evolution of the SARS-CoV-2 pandemic, researchers worldwide are working to mitigate, suppress its spread, and better understand it by deploying digital signal processing (DSP) and machine learning approaches. This study presents an alignment-free approach to classify the SARS-CoV-2 using complementary DNA, which is DNA synthesized from the single-stranded RNA virus. Herein, a total of 1582 samples, with different lengths of genome sequences from different regions, were collected from various data sources and divided into a SARS-CoV-2 and a non-SARS-CoV-2 group. We extracted eight biomarkers based on three-base periodicity, using DSP techniques, and ranked those based on a filter-based feature selection. The ranked biomarkers were fed into k-nearest neighbor, support vector machines, decision trees, and random forest classifiers for the classification of SARS-CoV-2 from other coronaviruses. The training dataset was used to test the performance of the classifiers based on accuracy and F-measure via 10-fold cross-validation. Kappa-scores were estimated to check the influence of unbalanced data. Further, 10 × 10 cross-validation paired t-test was utilized to test the best model with unseen data. Random forest was elected as the best model, differentiating the SARS-CoV-2 coronavirus from other coronaviruses and a control a group with an accuracy of 97.4 %, sensitivity of 96.2 %, and specificity of 98.2 %, when tested with unseen samples. Moreover, the proposed algorithm was computationally efficient, taking only 0.31 s to compute the genome biomarkers, outperforming previous studies.

Item Type:Article
Uncontrolled Keywords:machine learning, signal processing, biomarker
Subjects:T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions:Electrical Engineering
ID Code:95161
Deposited By: Narimah Nawil
Deposited On:29 Apr 2022 22:02
Last Modified:29 Apr 2022 22:02

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