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Analysis of SARS-CoV-2 RNA-Sequences by Interpretable Machine Learning Models
[article]
2020
bioRxiv
pre-print
We present an approach to investigate SARS-CoV-2 virus sequences based on alignment-free methods for RNA sequence comparison. In particular, we verify a given clustering result for the GISAID data set, which was obtained analyzing the molecular differences in coronavirus populations by phylogenetic trees. For this purpose, we use alignment-free dissimilarity measures for sequences and combine them with learning vector quantization classifiers for virus type discriminant analysis and
doi:10.1101/2020.05.15.097741
fatcat:y5p7kvtslzedhkehxl73h3f7hy