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GWAS. The GLM doesn’t take the populace structure are not taken
in GLA model. Henceforth, GLM was utilized in populaces which
didn’t have the populace structure in faba bean, Viciafaba L. (Sallam
& Maure, 2016) and rice (Bandillo et al., 2013). The MLM, then
again, thinks about the populace structure in its model. At last, the
phenotypic and genotypic information are joined utilizing proper
programming (TASSEL) by which alleles related with a specific
characteristic can be recognized after the GWAS model was chosen.
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Stage III: Phenotyping is strongly recommendable to be led prior
to genotyping, particularly for those populaces with no earlier data.
For instance, if a populace comprised of 400 genotypes which were
gathered from various locales and the objective is to test them in a
specific climate. It is conceivable that numerous genotypes could be
lost because of helpless variation to the phenotyping climate. Along
these lines, time, and currency (for genotyping) can be saved by
testing the phenotypic variety of that populace first.
10.4 NEXT GENERATION SEQUENCING (NGS)
Initial attempts to obtain genetic sequences necessitated significant human
and financial resources. However, the development and implementation of
next-generation sequencing (NGS) technology has substantially aided the
capacity to produce genome sequences for an increasing number of plant
species. This has opened up a slew of possibilities for finding stress-related
genes and pathways that can serve as the foundation for future research or
for the purpose of crop improvement NGS technology, for example, can be
combined with high-throughput transcriptome profiling to explore transcrip
tome-wide changes in response to stress (Molina et al., 2011). Inexpensive
technology of sequencing, often it is known as next generation sequencing
(NGS) technologies, its main feature is that at once it constructs millions of
sequencing reads (Church, 2006). NGS is a rapid technology which works in
a very cost-effective way for constructing large quantity of sequence data. In
addition, it is useful in many fields that are in comparative genomics where
we compare between genomes of species, data through NGS have higher
capability in identifying the loci under selection. The new terminologies
which define NGS are (high throughput sequencing, massively parallel
sequencing, and deep sequencing). It’s the advanced and modern technology
which came in existence last decade. NGS technologies bring a huge change