Proposal of Parvimonas gen. nov. and Quatrionicoccus gen. nov. as replacements for the illegitimate, prokaryotic, generic names Micromonas Murdoch and Shah 2000 and Quadricoccus Maszenan et al. 2002, respectively.

Int J Syst Evol Microbiol

Société de Bactériologie Systématique et Vétérinaire (SBSV) and école Nationale Vétérinaire de Toulouse (ENVT), 23 Chemin des Capelles, BP 87614, 31076 Toulouse Cedex 3, France.

Published: November 2006

The prokaryotic, generic names Micromonas Murdoch and Shah 2000 and Quadricoccus Maszenan et al. 2002 are illegitimate* because they are later homonyms of the names Micromonas Manton and Parke 1960 (alga) and Quadricoccus Fott 1948 (alga). [Principle 2, Rule 51b(4) of the Bacteriological Code (1990 Revision)]. Such names have no claim to be correct names (Principle 6) and, therefore, replacement generic names must be proposed (Rule 54).

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http://dx.doi.org/10.1099/ijs.0.64338-0DOI Listing

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