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Masatoshi Nei was born in 1931 Japan, and his lifelong interest in biology and genetics may have its roots in his upbringing on a farm, in a family of farmers. [1] After completing his undergraduate and doctorate degrees in Japan, Nei emigrated to the United States in 1969. [ 1 ]
In bioinformatics, neighbor joining is a bottom-up (agglomerative) clustering method for the creation of phylogenetic trees, created by Naruya Saitou and Masatoshi Nei in 1987. [1] Usually based on DNA or protein sequence data, the algorithm requires knowledge of the distance between each pair of taxa (e.g., species or sequences) to create the ...
Nei's D A distance was created by Masatoshi Nei, a Japanese-American biologist in 1983. This distance assumes that genetic differences arise due to mutation and genetic drift , but this distance measure is known to give more reliable population trees than other distances particularly for microsatellite DNA data.
Minimum evolution is a distance method employed in phylogenetics modeling. ... Saito and Nei's 1987 NJ algorithm far predates the BME criterion of 2000. For two ...
MEGA offers several approaches for testing substitution pattern homogeneity, such as composition distance, disparity index, and Monte Carlo tests. These methods are used to determine if different genetic regions evolved under the same selective pressure. Computation distance measures the variation in nucleotide composition between two sequences.
Nucleotide diversity is a measure of genetic variation. It is usually associated with other statistical measures of population diversity, and is similar to expected heterozygosity . This statistic may be used to monitor diversity within or between ecological populations, to examine the genetic variation in crops and related species, [ 3 ] or to ...
The distance matrix can come from a number of different sources, including measured distance (for example from immunological studies) or morphometric analysis, various pairwise distance formulae (such as euclidean distance) applied to discrete morphological characters, or genetic distance from sequence, restriction fragment, or allozyme data.
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