Phylogenetic Analysis to Detect COVID Superspreaders

John R. Jungck *

15 Innovation Way, Delaware Biotechnology Institute, University of Delaware, Newark, DE 19716, USA.

Hajae Ko

15 Innovation Way, Delaware Biotechnology Institute, University of Delaware, Newark, DE 19716, USA.

*Author to whom correspondence should be addressed.


Abstract

Aims: Detection of superspreading events by phylogenetic analysis of nucleotide sequences from a population of individuals collected from a narrow time interval.

Study Design: Retrieve nucleic acid sequences, construct multiple sequence alignments, and build phylogenetic networks to determine sources of infection.

Place and Duration of Study: This study was performed at the Delaware Biotechnology Institute of the University of Delaware over the period: June-August, 2022. The data used were from the GIS AID database.

Methodology: Sequences for analysis were sampled from the GISAID initiative’s open-access SARS-CoV-2 genome database. We selected high-quality nucleotide sequences submitted by Delaware labs between March 18 and April 14, 2021, an important period of 4 weeks which saw the Alpha variant spread rapidly in the Delaware population.

Results: Four sources accounted for 215 of the 401 sequences. In other words, 54% of all cases were rooted in just five sources.

Conclusion: Thus, superspreading seems to have a major impact on the proportion of individuals in a population affected with COVID.

Keywords: COVID, superspreaders, phylogenetic networks


How to Cite

Jungck , John R., and Hajae Ko. 2023. “Phylogenetic Analysis to Detect COVID Superspreaders”. Microbiology Research Journal International 33 (8):36-43. https://doi.org/10.9734/mrji/2023/v33i81400.

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