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Unsupervised machine learning framework for discriminating major variants of concern during COVID-19.
Chandra, Rohitash; Bansal, Chaarvi; Kang, Mingyue; Blau, Tom; Agarwal, Vinti; Singh, Pranjal; Wilson, Laurence O W; Vasan, Seshadri.
  • Chandra R; Transitional Artificial Intelligence Research Group, School of Mathematics and Statistics, UNSW Sydney, Sydney, Australia.
  • Bansal C; Transitional Artificial Intelligence Research Group, School of Mathematics and Statistics, UNSW Sydney, Sydney, Australia.
  • Kang M; Department of Computer Science and Information Systems, Birla Institute of Technology and Science Pilani, Rajasthan, India.
  • Blau T; Transitional Artificial Intelligence Research Group, School of Mathematics and Statistics, UNSW Sydney, Sydney, Australia.
  • Agarwal V; Data 61, CSIRO, Sydney, Australia.
  • Singh P; Department of Computer Science and Information Systems, Birla Institute of Technology and Science Pilani, Rajasthan, India.
  • Wilson LOW; Department of Computer Science and Engineering, Indian Institute of Technology Guwathi, Assam, India.
  • Vasan S; Australian e-Health Research Centre, Commonwealth Scientific and Industrial Research Organisation, North Ryde, Australia.
PLoS One ; 18(5): e0285719, 2023.
Article in English | MEDLINE | ID: covidwho-2322343
ABSTRACT
Due to the high mutation rate of the virus, the COVID-19 pandemic evolved rapidly. Certain variants of the virus, such as Delta and Omicron emerged with altered viral properties leading to severe transmission and death rates. These variants burdened the medical systems worldwide with a major impact to travel, productivity, and the world economy. Unsupervised machine learning methods have the ability to compress, characterize, and visualize unlabelled data. This paper presents a framework that utilizes unsupervised machine learning methods to discriminate and visualize the associations between major COVID-19 variants based on their genome sequences. These methods comprise a combination of selected dimensionality reduction and clustering techniques. The framework processes the RNA sequences by performing a k-mer analysis on the data and further visualises and compares the results using selected dimensionality reduction methods that include principal component analysis (PCA), t-distributed stochastic neighbour embedding (t-SNE), and uniform manifold approximation projection (UMAP). Our framework also employs agglomerative hierarchical clustering to visualize the mutational differences among major variants of concern and country-wise mutational differences for selected variants (Delta and Omicron) using dendrograms. We also provide country-wise mutational differences for selected variants via dendrograms. We find that the proposed framework can effectively distinguish between the major variants and has the potential to identify emerging variants in the future.
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Full text: Available Collection: International databases Database: MEDLINE Main subject: Unsupervised Machine Learning / COVID-19 Type of study: Observational study Topics: Variants Limits: Humans Language: English Journal: PLoS One Journal subject: Science / Medicine Year: 2023 Document Type: Article Affiliation country: Journal.pone.0285719

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Full text: Available Collection: International databases Database: MEDLINE Main subject: Unsupervised Machine Learning / COVID-19 Type of study: Observational study Topics: Variants Limits: Humans Language: English Journal: PLoS One Journal subject: Science / Medicine Year: 2023 Document Type: Article Affiliation country: Journal.pone.0285719