Molecular characterization of using CO1 mitochondrial gene to validate phenotypic taxonomical evaluation.

J Parasit Dis

Malappuram, Kerala India Centre for Research in Emerging Tropical Diseases (CRET-D), Department of Zoology, University of Calicut.

Published: June 2023

Animal ectoparasites are linked to the spread of serious medical and veterinary important pathogens. Our research intends to close the knowledge gap concerning the numerous ectoparasites that inhabit animals in Wayanad. Ectoparasites in animals brought to the veterinary dispensaries in Wayanad were retrieved and identified morphologically and molecularly. Using a high-quality stereomicroscope, the taxonomic features of the four following species were examined and identified, , and . The important disease vector was reported for the first time in Kerala. The important phenotypic characters of the highlighted species are the edge of the basis capituli is circular without cornua, and the hypostomal dental formula is 2/2. The taxonomically identified four species were subjected to CO1 gene sequence analysis. The evolutionary relationship was inspected through the neighbour-joining method, and the phylogenetic tree was built through the Maximum Likelihood method The present study has also estimated the diversity index of , , , and . Among them, 0.36638 have reported with the maximum diversity index score. The significance of the study is the presence of Lyme disease vector , in the Wayanad District of Kerala, and it is the first report of the species from where an outbreak of Lyme disease occurred in 2013.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10088647PMC
http://dx.doi.org/10.1007/s12639-023-01582-xDOI Listing

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