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ISSN (Print): 2328-3777, ISSN (Online): 2328-3785, ISSN (CD-ROM): 2328-3793
American International Journal of
Research in Formal, Applied
& Natural Sciences
AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 12
Available online at http://www.iasir.net
AIJRFANS is a refereed, indexed, peer-reviewed, multidisciplinary and open access journal published by
International Association of Scientific Innovation and Research (IASIR), USA
(An Association Unifying the Sciences, Engineering, and Applied Research)
Genetic Diversity Analysis in Grape (Vitis vinifera L) Germplasm using
Microsatellite Markers
Venkat Rao1
, P. Narayanaswamy2
and B.N Srinivasa Murthy
3
1
Assistant Professor of Fruit Science, College of Horticulture, Mysore, University of Horticultural
Sciences, Bagalkot, Karnataka, India. E-mail:venkatvpatil@gmail.com
2
Dean (Hort.), College of Horticulture, Hiriyur, Karnataka, India
3
Principal Scientist, Division of Fruit Science, Indian Institute of Horticultural Research, Bangalore,
India
I. Introduction
Grape cultivars (Vitis vinifera L) have a long history of domestication. The world’s vineyards occupy about 8.7
million hectares. More than 9600 grape cultivars exist around the world (Galet, 2000) and almost 16,000 prime
names appear in the Vitis International Variety Catalogue (Maul and Eibach, 2003). Some of these are not easily
distinguishable by morphology and many cultivars appear to be synonyms, having been distributed around the
world and acquiring new names in the process. Moreover, the wide distribution and long history of cultivation
have led to the development of numerous cultivars with many synonyms, resulting in complexity among
germplasm collections (Galet, 1990). Grape in India are reported to have been introduced in 620 BC. (Olmo,
1976) and commercial cultivation was started in the beginning of the 20th century. Presently, grapes are
successfully grown in India over an area of 1,11,000 ha with a production of approximately 1.23 million MT
(Anonymous, 2011), primarily for use as fresh fruit. Grape breeding had mainly relied on selection among
naturally occurring spontaneous crosses for ages and to a lesser extent, due to conventional breeding during the
last century (Adam-Blondon et al., 2004). The varieties currently available are the results of a selection process
by human and ecogeographical conditions (Bisson, 1995). Information on genetic diversity among plant species
is important for efficient utilization of genetic resources. The existence of close genetic relationships among
cultivars grown in the same region or under similar climatic influence could lead to dilution of genetic
resources. Hence, studies on grape have been carried out to characterize the commercially important germplasm
available in India. Morphological characterization has been attempted among several grape cultivars for
identification purposes. However, superiority of molecular markers over morphological characterization in
grape cultivars is well established. The usefulness of molecular testing for grapevine identification is widely
accepted (Bowers et al., 1996; Bowers and Meredith, 1997; Thomas et al., 1994). In the grape germplasm,
characterization of endangered cultivar (Bocccacci et al., 2005), parentage analysis (Sefc et al., 1997),
identification of the clones (Ye et al., 1998), analysis of genetic diversity (Merdinoglu and molecular mapping
(Doligez et al., 2006) is been carried out. Molecular markers like RFLP (BourquĂ­n et al., 1993), RAPD (Grando
et al., 1995; Jean Jaques et al., 1993; Tamhankar et al., 2001; Vidal et al., 1999), microsatellite or SSR (Bowers
et al., 1993, 1999b; Pellerone et al., 2001; Scott et al., 2000; Thomas and Scott, 1993) and AFLP (Cervera et al.,
2000; Labra et al., 1999; Martinez et al., 2003) are successfully used to characterize grape germplasm. In this
Abstract: The grape (Vitis vinifera L), germplasm commonly cultivated in India, shows a wide range of
ripening periods and fruit quality and is an unexploited resource for breeding programs. The main purpose
of this study was to fingerprint these accessions and to construct a molecular database including the
cultivars commonly grown in India. A total of 42 genotypes were analyzed using seven microsatellite simple
sequence repeat (SSR) markers and their main morphological and agronomic characteristics were
compared. A total of 45 alleles in all 42 genotypes were obtained with 7 primers with an average number of
6.4 alleles per locus. The dissimilarity matrix showed that a maximum of 110 units was obtained between
the genotypes “Convent Large Black” and “Arka Hans,” while a minimum dissimilarity of 37 units were
obtained between the genotypes “Anab-e-Shahi” and “Dilkhush.” In the dendrogram the microsatellite
segregated the genotypes into two clusters (A and B) at 476 units with two subclusters each. The subclusters
grouped genotypes predominantly as A1 with seeded fruits, A2 with seedless fruits, B1 with pigmented and
seedless fruits, and B2 with colorless and seeded fruits. The use of seven polymorphic microsatellite markers
and the level of genetic variability detected within Indian grapevine germplasm suggested that this is a
reliable, efficient, and effective marker system that can be used for diversity analysis and subsequently in
crop improvement programs.
Key words: Genetic diversity, Grape, Microsatellites markers, Simple sequence repeat, Vitis vinifera L.
Venkat Rao et al., American International Journal of Research in Formal, Applied & Natural Sciences, 6(1), March-May 2014, pp. 12-18
AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 13
study, a combination of morphological and microsatellite amplification with appropriate statistical analysis has
enabled us to identify the relationships among 42 genotypes. Microsatellite technology has been extensively
used in grapevine biology and genetics. The number of microsatellite loci available has greatly increased in the
last few years largely through the establishment of the International Vitis Microsatellite Consortium, leading to
the discovery of more than 350 new loci. Microsatellite markers, being abundant, multiallelic and highly
polymorphic, provide an efficient and accurate means of detecting genetic polymorphism. Most importantly,
their codominant nature makes them the markers of choice for population genetic analysis to assess genetic
organization in germplasm collections. Microsatellites have been used to determine parent-progeny relationships
in grape (Bowers and Meredith, 1997; Bowers et al., 1999a), to develop a database of DNA profiles for use in
cultivar identification (Bowers et al., 1996; Lamboy and Alpha, 1998), and as markers for mapping genetic
linkage (Riaz et al., 2004) The present study evaluates the genetic diversity, structure and differentiation in a
grape germplasm collection using polymorphisms revealed by seven microsatellite loci. In addition, we
examined the relationships between morphological and molecular characters.
II. Materials and methods
Plant Materials
Plant material from 42 grape genotypes was collected from Department of Horticulture, University of
Agricultural Sciences, Bangalore and Indian Institute of Horticultural Research, Bangalore. Approximately, 50 g
of recently matured leaves (15–20 d old) were collected, washed using distilled water, wiped with 70% (v/v)
ethanol, then air dried prior to storage in sealed plastic bags at 4°C.
Morphological Data
Morphological characterization of each genotype with respect to their vegetative and reproductive
characters was done in triplicate plants according to IPGRI (International Plant Genetic Resources Institute,
Rome) descriptors for grape (Anonymous, 1995). The dendrogram was constructed based on the 95 descriptors
value for all genotypes using SPSS for windows, version 11.5.0 (Anonymous 2002).
DNA Isolation
DNA was extracted from the stored leaves of grapevine using acetyl trimethyl ammonium bromide
(CTAB) method (Simon et al., 2007). 2 g of leaf sample were powdered in liquid nitrogen to extract the DNA.
The powder was mixed with 10 ml extraction buffer, preheated to 65°C, containing 100 mM Tris-HCl, pH 8.0,
20 mM EDTA, 1.4 M NaCl, 3% (w/v) CTAB, 2% polyvinylpyrrolidone and 1% (v/v) ¾β-mercaptoethanol, then
incubated at 65°C for 90 min. The mixture was cooled to room temperature, 10 ml cold 24:1 (v/v)
chloroform:isoamylalcohol was added, and the contents were mixed well. After centrifugation at 6,000 Ă— g for
10 min at 4°C, the supernatant was transferred to a fresh tube and the chloroform:isoamylalcohol step was
repeated until a clear supernatant was obtained. 5 M NaCl was added to the supernatant [0.5 (v/v)] and mixed
gently, followed by addition of 2 volume of cold isopropanol to precipitate the DNA. The mixture was
incubated overnight at 4°C, then centrifuged at 10,000 × g for 5 min. The resulting pellet was washed with 75%
(v/v) ethanol, air-dried, and dissolved in TE buffer (10 mM Tris-HCl, 1 mM EDTA, pH 8.0). 10 ÎĽg RNase
(bovine pancreatic ribonuclease; Bangalore Genei, Bangalore, India) was added to each sample which was
incubated for 30 min at 37°C, mixed with an equal volume of phenol, and centrifuged at 6,000 × g for 20 min at
room temperature. This step was followed by washing with an equal volume of 1:1 (v/v) phenol:chloroform,
then with chloroform alone. The DNA was precipitated overnight at 4°C with 0.5 (v/v) 5 M NaCl and 1 volume
of cold isopropanol. The resulting pellet obtained after centrifugation was dissolved in TE buffer, analyzed in an
agarose gel and quantified using a spectrophotometer (NanoDrop Technologies, Wilmington, DE, USA).
Microsatellite Analyses
A total of twelve SSR primers characterized in previous studies were used. The primers were VVS1,
VVS2, VVS29, VVMD 7, VVMD 14, VVMD 25, VVMD 27, VVMD28, VVMD31, VVMD32, VVMD 36 and
VMC7b1 (Bowers et al., 1996 and 1999b) These microsatellites were selected as they were the same core set in
the screening programme used to access the target grapevine collections. Primer pairs were synthesized from
MWG Biotech, Bangalore, India based on their published gene sequence. PCR was performed in 96-well plates
in MJ Research PTC100 thermocyclers (Bio-Rad Laboratories, Bangalore, India).
PCR reactions were carried out in 25 ÎĽl reactions containing 50 ng of DNA, 5 pmoles of each primer,
10x of Taq polymerase buffer (50 mM KCl, 10 mM Tris-HCl, pH 9.0, 0.05% (v/v) NP40, and 0.05% (v/v)
Triton X-100), 1.5 mM of MgCl2, 0.5 mM of dNTPs (Finzymes Pvt. Ltd., India), and 1 U of Taq polymerase
(Sigma-Aldrich Pvt. Ltd., India). The final volume was adjusted with sterile distilled water. The PCR
amplifications were carried out with respect to the protocols for primer sets published in Bowers et al., 1996 and
1999b; Pellerone et al., 2001; and Thomas and Scott, 1993. Amplification was confirmed with agarose gels, and
alleles were separated by running on 6% polyacrilamide denaturing gels and electrophoresed in 1 Ă— TBE at 55
W for 2 h. The amplified products were visualized with silver staining previously described (Bowers et al.,
1996).
Statistical Analysis
Venkat Rao et al., American International Journal of Research in Formal, Applied & Natural Sciences, 6(1), March-May 2014, pp. 12-18
AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 14
Amplified fragments from each SSR primer set were scored manually for their presence (1) or absence
(0). The profiles of 42 accessions of grapevine using 12 primer pairs were assembled for statistical analysis. The
sizes of the fragments were estimated using 50 bp standard DNA markers (Bangalore Genei Pvt. Ltd., India),
coelectrophoresized with the amplified products. A genetic dissimilarity matrix was developed using Euclidean
Distances, which estimates all pairwise differences in the amplification products (Sokal and Sneath, 1973). A
cluster analysis was based on Ward’s method using a minimum variance algorithm (Ward, 1963). Principle
Component Analysis was used to make a multivariate statistical analysis of the binary data (Sokal and Sneath,
1973). Identity 1.0 software (Wagner and Sefc, 1999) was used to calculate expected and observed
heterozygosity, null allele frequency, and the probability of finding 2 identical genotypes (probability of
identity). The expected heterozygosity (HE) was calculated as HE = 1 – Σ pi2 (Nei, 1973), where Pi represents
the frequency of allele i among the varietal set. The observed heterozygosity (HO) was obtained by direct
calculation. The null allele frequency was calculated as r = (HE – HO)/(1 + HE) (Brookfield 1996). The
probability of identity was calculated as PI = 1 ÎŁ pi4 + ÎŁÎŁ (2pipj)2 (Paetkau et al., 1995), where Pi and Pj
represent the frequency of alleles i and j, respectively.
III. Results and discussion
The objective of this study was to estimate the extent of the genetic diversity among Indian grapevine
lines using SSR markers. Information on genetic diversity in crop plant species is important for efficient
utilization of plant genetic resources. The traditional method of identifying species by morphological characters
is now accompanied by DNA profiling that is more reliable on proteins, largely because of several limitations of
their morphological data (Nayak et al., 2003). Therefore, when investigating organisms with a high tendency for
morphological differentiation, studies considering both molecular and morphological characters are highly
relevant (Bartish et al., 2000). A constructed dendrogram based on 27 morphological characters clustered the
grape genotypes into two major clusters (I and II) at 96 units (Fig. 1). Cluster I consisted of 23 genotypes
grouped into two subclusters (A and B) linked at a distance of 33 units. Subcluster A clustered at a distance of
21 units and consisted of 8 genotypes. The seedless genotypes “Thompson Seedless” and “Flame Seedless”
were clustered together, but both differed with compact and elongated bunches and pale and red-colored berries,
respectively. The genotypes “Arka Chitra,” “Arka Hans,” “Arka Shweta,” and “Arka Soma” showed seeded
berries with greenish yellow color, but varied with their bunch characters. The genotypes “Arka Vathi” and
“Arka Neelamani” clustered together showed large and elongated bunches, but contained green and black-
colored berries respectively. Subcluster B consisted of 15 genotypes and clustered into two groups at 23 linkage
distances. Group 1 clustered 10 genotypes predominantly characterized by large bunches and dark berry types.
The genotype “Angur Kalan” showed golden yellow berries with pinkish tinge, genotype “Sharad Seedless”
evidenced a crispy pulp, and genotype E-29/7 had spherical berries. Group II consisted of 5 genotypes clustering
at 15 units. All genotypes of the group showed medium to large bunches with dark colored berries. The
genotypes E-18/12 and “Arka Trishna” were distinctly characterized by cylindrical-bunch and oval-shaped
berries, respectively.
Figure 1: Dendrogram showing the clustering patterns of 42 Indian grapevine genotypes based
on morphological characters
Tree Diagram for 42 Variables
Ward`s method
Squared Euclidean distances
Linkage Distance
Cheema Sahebi
Kali Sahebi
Queen of Vine Yard
E-7/12
E-31/5
E-29/5
F-26/8
Arka Kanchan
Pusa Navrang
Arka Majestic
Anab-e-Shahi
Centennial Seedless
E-29/6
Convent Large Black
Black Champa
Dilkhush
Sonaka
Red Globe
Crimson Seedless
Arka Trishna
E-30/14
E-29/3
E-18/12
E-18/10
E-29/7
Cordinal
Angur Kalan
Gulabi
Arka Krishna
Bangalore Purple
Bangalore Blue
Superior Seedless
Pusa Urvashi
Sharad Seedless
Arka Neelmani
Arka Vati
Arka Soma
Arka Shw eta
Arka Hans
Arka Chitra
Flame Seedless
Thompson Seedless
0 20 40 60 80 100
A
B
I
II
C
D
Venkat Rao et al., American International Journal of Research in Formal, Applied & Natural Sciences, 6(1), March-May 2014, pp. 12-18
AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 15
Cluster II consisted of 19 genotypes forming into two subclusters (C and D) at 43 linkage distance in
the dendrogram. Subcluster C was comprised of 7 genotypes at 23 distances. All the genotypes under this
subcluster showed colored berries and were seeded, except the genotypes “Sonaka” and “Dilkhush,” which had
a pale greenish color, and genotypes “Crimson Seedless” and E-29/6 with a seedless nature. The genotypes
“Crimson Seedless” and “Red Globe” clustered together, respectively showing light-red and wine-red colored
berries. Genotypes “Black Champa” and “Convent Large Black” both had spherical berries. The subcluster D
with 12 genotypes was clustered at 32 units. The genotypes were predominantly characterized by greenish
golden yellow color and seeded berries with the exception of genotypes “Arka Majestic,” “Pusa Navrang,” and
“Arka Kanchan” which evidenced a dark color. The remaining genotypes “Centennial Seedless,” “Arka
Kanchan,” and E-29/5 produced seeded berries. The genotypes “Pusa Navrang” and “Kali Sahebi” were
characterized by berries with reddish pulp, while genotypes “Queen of Vine Yards,” “Kali Sahebi,” and
“Cheema Sahebi” were clustered together and characterized by obovate-shaped berries.
The genetic variability of this germplasm (Table 1) was evaluated on the basis of the number of alleles
(mean: 6.3), genetic diversity (GD: 0.68), observed heterozigosity (Ho: 0.82), and probability of identity (PI:
0.13). These data indicated the presence of a lower genetic variability in the Indian grapevine germplasm,
comparable to the variability found in the Algeria and Mediterranean basin and similar to Spanish grape
germplasm (Martin et al., 2003). The most informative locus was VVMD 28 (13 alleles per locus) and the least
informative were VVS29, VVMD7 and VVMD14 (4 alleles per locus) (Table 1). The most informative primers
VVMD 28 and VVMD 32 were good candidates to be used for paternity testing due to the high direct count
heterozygosity, high number of alleles, and even distribution of allelic frequencies. Moreover, in the populations
studied, the observed heterozygosity was very similar to the expected heterozygosity at each nuclear SSR locus,
suggesting no excess of homozygosity in populations. Since the analysis did not display null alleles hence, the
marker should be suitable for a genetic population study among wild relatives and parentage studies (Wagner et
al., 2006). Such an absence of null alleles is probably due to the choice of nuclear SSR loci which have revealed
very low deviation in the observed heterozygosity from the expected heterozygosity (Bandelj et al., 2004;
Khadari et al., 2003). Hence, a choice criterion should be used to avoid loci displaying null alleles being
included.
Table 1: Descriptive statistics and Genetic Diversity of Indian Grape genotypes at Twelve Microsatellite
Loci
Loci Allele
Number
Allele
size
range
(bp)
Expected
Hetezygosity
(He)
Observed
Heterozygosity
(Ho)
Probability
of Identity
(PI)
Probability
of null
alleles
(r)
Genetic
diversity
(GD)
Discrimination
power (d)
VVS 1 6 180-
230
7.93 7.90 0.09 -0.017 0.61 0.79
VVS 2 7 140-
210
8.12 8.33 0.13 -0.035 0.67 0.82
VVS 29 4 150-
175
8.35 8.14 0.16 -0.130 0.74 0.80
VVMD 7 4 140-
170
8.16 8.83 0.06 -0.036 0.41 0.86
VVMD
14
4 140-
165
7.69 7.65 0.08 0.011 0.53 0.47
VVMD
25
5 135-
165
7.81 7.93 0.10 0.064 0.60 0.61
VVMD
27
7 135-
175
8.40 8.16 0.13 -0.026 0.64 0.73
VVMD
28
13 140-
200
8.66 9.21 0.15 -0.045 0.85 0.81
VVMD
31
6 130-
165
8.10 9.47 0.11 -0.016 0.79 0.84
VVMD
32
9 130-
205
8.20 8.16 0.19 -0.024 0.77 0.89
VVMD
36
5 180-
205
8.56 8.94 0.16 -0.019 0.78 0.86
VMC
7b1
5 150-
205
8.64 8.09 0.20 -0.015 0.80 0.84
Mean 6.3 146-
189
8.10 8.20 0.13 -0.021 0.68 0.77
Pairwise comparisons were made between all genotypes included in this study and the average
dissimilarity values were calculated based on microsatellite data. A maximum dissimilarity of 110 units was
obtained between the genotypes “Convent Large Black” and “Arka Hans” where the former genotype was
characterized by spherical bluish black seeded berries and the later genotype with colorless seeded berries; while
a minimum dissimilarity of 37 units were obtained between the genotypes “Anab-e-Shahi” and “Dilkhush,”
Venkat Rao et al., American International Journal of Research in Formal, Applied & Natural Sciences, 6(1), March-May 2014, pp. 12-18
AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 16
where both the genotypes were characterized by palegreenish colored seeded berries. The dendrogram presented
demonstrates clearly the ability of microsatellites to detect a large amount of genetic variation in genetically
closely related genotypes of grapevine and to identify groups with different levels of genetic distance. The
markers segregated the genotypes into two major clusters (I and II) at 476 linkage distance (Fig. 2). Major
cluster I consisted of 30 genotypes grouped into two subclusters (A and B) at 223 linkage distance. Subcluster A
with 17 genotypes was grouped into two groups (A1 and A2) with 12 and 5 genotypes, respectively. The
genotypes “Anab-e-Shahi” and “Dilkhush” were closely linked in group A1 by 31 linkage distance with both the
genotypes showing greenish seeded berries. The genotypes “Pusa Urvasi” and “Cordinal” were closely linked at
39 units and grouped with “Pusa Navrang” at 59 units where “Cordinal” and “Pusa Navrang” were producing
pigmented berries. The genotypes “Centenal Seedless” and “Superior Seedless” were linked together at 35 units,
both with colorless berries. These genotypes were grouped with “Sharad Seedless” (pigmented berries) at 52
units and linked with cultivars “Sonaka” and “Gulabi” at 73 units. The genotypes “Thompson Seedless” and
“Flame Seedless” were grouped together at 45 units and differentiated with colorless and red berries,
respectively. The five genotypes of group A2 were linked at 71 units, of which “Black Champa” and “Red
Globe” were closely linked at 41 units with both pigmented and seeded berries. The “Convert Large Black”
(pigmented and seeded berries) was grouped with “Queen of Vineyards” (golden yellow colored and seeded
berries) at 56 units. The genotype “Crimson Seedless” (red colored berries) stood separate and linked to the
group at 71 units. The subcluster B consisted of 13 genotypes segregated into two groups (B1 and B2) at 145
units in the dendrogram. The group B1 with eight genotypes was clustered at 81 units, of which “Arka
Neelamani” and “Arka Shweta” were closely linked at 31 units both were seedless. The large bunches with
colored genotypes, namely, “Angur Kalan” (pinkish) and “Bangalore Blue” (purple) were linked at 33 units.
“Bangalore Purple” (purple) and “Kali Sahebi” (reddish pulp) were linked at 63 units. The genotypes “Cheema
Sahebi” and “Arkavathi” both with pyramidal shaped and tightly packed bunches were clustered together at 45
units. The group B2 consisted of five genotypes linked at 65 units and divided into two minor clusters. The first
minor cluster consists of three colorless and seedless genotypes E-29/5, E-31/5, and E-29/7, which are linked at
55 units. The second minor cluster with two genotypes, E-29/6 and E-7/12, is linked at 52 units and both
genotypes showed medium-sized bunches and seedless berries. The characteristic feature of cluster I
predominantly shows subcluster A with more seeded genotypes and subcluster B with seedless genotypes.
Figure 2: Dendrogram showing the clustering patterns of 42 Indian grapevine genotypes based
on microsatellite markers
Tree Diagram for 46 Genotypes
Ward`s method
Squared Euclidean distances
Linkage Distance
F-26/8
Arka Soma
Arka Kanchan
Arka Trishna
Arka Hans
Arka Majestic
St. George
1613
Salt Creek
Dog Ridge
Arka Chitra
E-30/14
E-29/3
Arka Krishna
E-18/12
E-18/10
E-7/12
E-29/6
E-29/7
E-31/5
E-29/5
Arka Shweta
Arka Neelamani
Arka Vati
Cheema Sahebi
Kali Sahebi
Bangalore Purple
Bangalore Blue
Angur Kalan
Queen of Vineyard
Convent Large Black
Red Globe
Black Champa
Crimson seedless
Dilkhush
Anab-e-Shahi
Pusa Navrang
Cordinal
Pusa Urvashi
Gulabi
Sonaka
Centennial Seedless
Superior Seedless
Sharad Seedless
Flame Seedless
Thompson Seedless
0 100 200 300 400 500
A
B
D
C
I
II
Venkat Rao et al., American International Journal of Research in Formal, Applied & Natural Sciences, 6(1), March-May 2014, pp. 12-18
AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 17
Cluster II consisted of 2 subclusters, C and D, linked at 129 linkage distance with six genotypes in each group.
The pigmented genotypes E-18/12 and “Arka Krishna” are closely linked at subcluster C at 40 linkage distance
and are linked to E-29/3 at 45 units. The genotypes E-30/14 and “Arka Chitra” are grouped together at 39 units
and shared attractive golden-yellow berries. The genotype E-18/10 was clustered separately in the subcluster,
characterised by small bunches and pigmented seeded berries. Subcluster D was segregated into two groups (D1
and D2) at 77 linkage distance. Group D1 consisted of three seeded genotypes, “Arka Majestic,” “Arka Hans,”
and “Arka Trishna” with seeded fruits and linked at 51 units. The colorless and seeded genotypes “Arka
Kanchan” and “Arka Soma” were clustered together in group D2 at 39 units and with E-26/8 at 58 units. The
characteristic feature of cluster II predominantly revealed subcluster C with colored and seedless fruits, and
subcluster D with colorless and seeded fruits.
In summary, this study, using microsatellite markers on Indian grape vine genotypes, showed
considerable genetic diversity existing among the population. This is most likely due to different conditions
under which the populations are grown and conserved (Song et al., 2003). The clustering of the genotypes was
predominantly based on the pigment and seed characters in fruits. These groupings can be used in selecting
diverse parents in breeding improved cultivars and in maintaining variation in the germplasm. Evaluation of
genetic diversity among germplasm, particularly of crops, is crucial in utilizing genetic potential to improve
traits needed for adaptation to various stress conditions (Amer et al., 2001). To our knowledge, this study is the
first attempt in using molecular markers for assessing genetic diversity in Indian grape vine germplasm, and the
outcome of this work could be useful for future characterization and exploitation of that germplasm.
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Aijrfans14 209

  • 1. ISSN (Print): 2328-3777, ISSN (Online): 2328-3785, ISSN (CD-ROM): 2328-3793 American International Journal of Research in Formal, Applied & Natural Sciences AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 12 Available online at http://www.iasir.net AIJRFANS is a refereed, indexed, peer-reviewed, multidisciplinary and open access journal published by International Association of Scientific Innovation and Research (IASIR), USA (An Association Unifying the Sciences, Engineering, and Applied Research) Genetic Diversity Analysis in Grape (Vitis vinifera L) Germplasm using Microsatellite Markers Venkat Rao1 , P. Narayanaswamy2 and B.N Srinivasa Murthy 3 1 Assistant Professor of Fruit Science, College of Horticulture, Mysore, University of Horticultural Sciences, Bagalkot, Karnataka, India. E-mail:venkatvpatil@gmail.com 2 Dean (Hort.), College of Horticulture, Hiriyur, Karnataka, India 3 Principal Scientist, Division of Fruit Science, Indian Institute of Horticultural Research, Bangalore, India I. Introduction Grape cultivars (Vitis vinifera L) have a long history of domestication. The world’s vineyards occupy about 8.7 million hectares. More than 9600 grape cultivars exist around the world (Galet, 2000) and almost 16,000 prime names appear in the Vitis International Variety Catalogue (Maul and Eibach, 2003). Some of these are not easily distinguishable by morphology and many cultivars appear to be synonyms, having been distributed around the world and acquiring new names in the process. Moreover, the wide distribution and long history of cultivation have led to the development of numerous cultivars with many synonyms, resulting in complexity among germplasm collections (Galet, 1990). Grape in India are reported to have been introduced in 620 BC. (Olmo, 1976) and commercial cultivation was started in the beginning of the 20th century. Presently, grapes are successfully grown in India over an area of 1,11,000 ha with a production of approximately 1.23 million MT (Anonymous, 2011), primarily for use as fresh fruit. Grape breeding had mainly relied on selection among naturally occurring spontaneous crosses for ages and to a lesser extent, due to conventional breeding during the last century (Adam-Blondon et al., 2004). The varieties currently available are the results of a selection process by human and ecogeographical conditions (Bisson, 1995). Information on genetic diversity among plant species is important for efficient utilization of genetic resources. The existence of close genetic relationships among cultivars grown in the same region or under similar climatic influence could lead to dilution of genetic resources. Hence, studies on grape have been carried out to characterize the commercially important germplasm available in India. Morphological characterization has been attempted among several grape cultivars for identification purposes. However, superiority of molecular markers over morphological characterization in grape cultivars is well established. The usefulness of molecular testing for grapevine identification is widely accepted (Bowers et al., 1996; Bowers and Meredith, 1997; Thomas et al., 1994). In the grape germplasm, characterization of endangered cultivar (Bocccacci et al., 2005), parentage analysis (Sefc et al., 1997), identification of the clones (Ye et al., 1998), analysis of genetic diversity (Merdinoglu and molecular mapping (Doligez et al., 2006) is been carried out. Molecular markers like RFLP (BourquĂ­n et al., 1993), RAPD (Grando et al., 1995; Jean Jaques et al., 1993; Tamhankar et al., 2001; Vidal et al., 1999), microsatellite or SSR (Bowers et al., 1993, 1999b; Pellerone et al., 2001; Scott et al., 2000; Thomas and Scott, 1993) and AFLP (Cervera et al., 2000; Labra et al., 1999; Martinez et al., 2003) are successfully used to characterize grape germplasm. In this Abstract: The grape (Vitis vinifera L), germplasm commonly cultivated in India, shows a wide range of ripening periods and fruit quality and is an unexploited resource for breeding programs. The main purpose of this study was to fingerprint these accessions and to construct a molecular database including the cultivars commonly grown in India. A total of 42 genotypes were analyzed using seven microsatellite simple sequence repeat (SSR) markers and their main morphological and agronomic characteristics were compared. A total of 45 alleles in all 42 genotypes were obtained with 7 primers with an average number of 6.4 alleles per locus. The dissimilarity matrix showed that a maximum of 110 units was obtained between the genotypes “Convent Large Black” and “Arka Hans,” while a minimum dissimilarity of 37 units were obtained between the genotypes “Anab-e-Shahi” and “Dilkhush.” In the dendrogram the microsatellite segregated the genotypes into two clusters (A and B) at 476 units with two subclusters each. The subclusters grouped genotypes predominantly as A1 with seeded fruits, A2 with seedless fruits, B1 with pigmented and seedless fruits, and B2 with colorless and seeded fruits. The use of seven polymorphic microsatellite markers and the level of genetic variability detected within Indian grapevine germplasm suggested that this is a reliable, efficient, and effective marker system that can be used for diversity analysis and subsequently in crop improvement programs. Key words: Genetic diversity, Grape, Microsatellites markers, Simple sequence repeat, Vitis vinifera L.
  • 2. Venkat Rao et al., American International Journal of Research in Formal, Applied & Natural Sciences, 6(1), March-May 2014, pp. 12-18 AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 13 study, a combination of morphological and microsatellite amplification with appropriate statistical analysis has enabled us to identify the relationships among 42 genotypes. Microsatellite technology has been extensively used in grapevine biology and genetics. The number of microsatellite loci available has greatly increased in the last few years largely through the establishment of the International Vitis Microsatellite Consortium, leading to the discovery of more than 350 new loci. Microsatellite markers, being abundant, multiallelic and highly polymorphic, provide an efficient and accurate means of detecting genetic polymorphism. Most importantly, their codominant nature makes them the markers of choice for population genetic analysis to assess genetic organization in germplasm collections. Microsatellites have been used to determine parent-progeny relationships in grape (Bowers and Meredith, 1997; Bowers et al., 1999a), to develop a database of DNA profiles for use in cultivar identification (Bowers et al., 1996; Lamboy and Alpha, 1998), and as markers for mapping genetic linkage (Riaz et al., 2004) The present study evaluates the genetic diversity, structure and differentiation in a grape germplasm collection using polymorphisms revealed by seven microsatellite loci. In addition, we examined the relationships between morphological and molecular characters. II. Materials and methods Plant Materials Plant material from 42 grape genotypes was collected from Department of Horticulture, University of Agricultural Sciences, Bangalore and Indian Institute of Horticultural Research, Bangalore. Approximately, 50 g of recently matured leaves (15–20 d old) were collected, washed using distilled water, wiped with 70% (v/v) ethanol, then air dried prior to storage in sealed plastic bags at 4°C. Morphological Data Morphological characterization of each genotype with respect to their vegetative and reproductive characters was done in triplicate plants according to IPGRI (International Plant Genetic Resources Institute, Rome) descriptors for grape (Anonymous, 1995). The dendrogram was constructed based on the 95 descriptors value for all genotypes using SPSS for windows, version 11.5.0 (Anonymous 2002). DNA Isolation DNA was extracted from the stored leaves of grapevine using acetyl trimethyl ammonium bromide (CTAB) method (Simon et al., 2007). 2 g of leaf sample were powdered in liquid nitrogen to extract the DNA. The powder was mixed with 10 ml extraction buffer, preheated to 65°C, containing 100 mM Tris-HCl, pH 8.0, 20 mM EDTA, 1.4 M NaCl, 3% (w/v) CTAB, 2% polyvinylpyrrolidone and 1% (v/v) ¾β-mercaptoethanol, then incubated at 65°C for 90 min. The mixture was cooled to room temperature, 10 ml cold 24:1 (v/v) chloroform:isoamylalcohol was added, and the contents were mixed well. After centrifugation at 6,000 Ă— g for 10 min at 4°C, the supernatant was transferred to a fresh tube and the chloroform:isoamylalcohol step was repeated until a clear supernatant was obtained. 5 M NaCl was added to the supernatant [0.5 (v/v)] and mixed gently, followed by addition of 2 volume of cold isopropanol to precipitate the DNA. The mixture was incubated overnight at 4°C, then centrifuged at 10,000 Ă— g for 5 min. The resulting pellet was washed with 75% (v/v) ethanol, air-dried, and dissolved in TE buffer (10 mM Tris-HCl, 1 mM EDTA, pH 8.0). 10 ÎĽg RNase (bovine pancreatic ribonuclease; Bangalore Genei, Bangalore, India) was added to each sample which was incubated for 30 min at 37°C, mixed with an equal volume of phenol, and centrifuged at 6,000 Ă— g for 20 min at room temperature. This step was followed by washing with an equal volume of 1:1 (v/v) phenol:chloroform, then with chloroform alone. The DNA was precipitated overnight at 4°C with 0.5 (v/v) 5 M NaCl and 1 volume of cold isopropanol. The resulting pellet obtained after centrifugation was dissolved in TE buffer, analyzed in an agarose gel and quantified using a spectrophotometer (NanoDrop Technologies, Wilmington, DE, USA). Microsatellite Analyses A total of twelve SSR primers characterized in previous studies were used. The primers were VVS1, VVS2, VVS29, VVMD 7, VVMD 14, VVMD 25, VVMD 27, VVMD28, VVMD31, VVMD32, VVMD 36 and VMC7b1 (Bowers et al., 1996 and 1999b) These microsatellites were selected as they were the same core set in the screening programme used to access the target grapevine collections. Primer pairs were synthesized from MWG Biotech, Bangalore, India based on their published gene sequence. PCR was performed in 96-well plates in MJ Research PTC100 thermocyclers (Bio-Rad Laboratories, Bangalore, India). PCR reactions were carried out in 25 ÎĽl reactions containing 50 ng of DNA, 5 pmoles of each primer, 10x of Taq polymerase buffer (50 mM KCl, 10 mM Tris-HCl, pH 9.0, 0.05% (v/v) NP40, and 0.05% (v/v) Triton X-100), 1.5 mM of MgCl2, 0.5 mM of dNTPs (Finzymes Pvt. Ltd., India), and 1 U of Taq polymerase (Sigma-Aldrich Pvt. Ltd., India). The final volume was adjusted with sterile distilled water. The PCR amplifications were carried out with respect to the protocols for primer sets published in Bowers et al., 1996 and 1999b; Pellerone et al., 2001; and Thomas and Scott, 1993. Amplification was confirmed with agarose gels, and alleles were separated by running on 6% polyacrilamide denaturing gels and electrophoresed in 1 Ă— TBE at 55 W for 2 h. The amplified products were visualized with silver staining previously described (Bowers et al., 1996). Statistical Analysis
  • 3. Venkat Rao et al., American International Journal of Research in Formal, Applied & Natural Sciences, 6(1), March-May 2014, pp. 12-18 AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 14 Amplified fragments from each SSR primer set were scored manually for their presence (1) or absence (0). The profiles of 42 accessions of grapevine using 12 primer pairs were assembled for statistical analysis. The sizes of the fragments were estimated using 50 bp standard DNA markers (Bangalore Genei Pvt. Ltd., India), coelectrophoresized with the amplified products. A genetic dissimilarity matrix was developed using Euclidean Distances, which estimates all pairwise differences in the amplification products (Sokal and Sneath, 1973). A cluster analysis was based on Ward’s method using a minimum variance algorithm (Ward, 1963). Principle Component Analysis was used to make a multivariate statistical analysis of the binary data (Sokal and Sneath, 1973). Identity 1.0 software (Wagner and Sefc, 1999) was used to calculate expected and observed heterozygosity, null allele frequency, and the probability of finding 2 identical genotypes (probability of identity). The expected heterozygosity (HE) was calculated as HE = 1 – ÎŁ pi2 (Nei, 1973), where Pi represents the frequency of allele i among the varietal set. The observed heterozygosity (HO) was obtained by direct calculation. The null allele frequency was calculated as r = (HE – HO)/(1 + HE) (Brookfield 1996). The probability of identity was calculated as PI = 1 ÎŁ pi4 + ÎŁÎŁ (2pipj)2 (Paetkau et al., 1995), where Pi and Pj represent the frequency of alleles i and j, respectively. III. Results and discussion The objective of this study was to estimate the extent of the genetic diversity among Indian grapevine lines using SSR markers. Information on genetic diversity in crop plant species is important for efficient utilization of plant genetic resources. The traditional method of identifying species by morphological characters is now accompanied by DNA profiling that is more reliable on proteins, largely because of several limitations of their morphological data (Nayak et al., 2003). Therefore, when investigating organisms with a high tendency for morphological differentiation, studies considering both molecular and morphological characters are highly relevant (Bartish et al., 2000). A constructed dendrogram based on 27 morphological characters clustered the grape genotypes into two major clusters (I and II) at 96 units (Fig. 1). Cluster I consisted of 23 genotypes grouped into two subclusters (A and B) linked at a distance of 33 units. Subcluster A clustered at a distance of 21 units and consisted of 8 genotypes. The seedless genotypes “Thompson Seedless” and “Flame Seedless” were clustered together, but both differed with compact and elongated bunches and pale and red-colored berries, respectively. The genotypes “Arka Chitra,” “Arka Hans,” “Arka Shweta,” and “Arka Soma” showed seeded berries with greenish yellow color, but varied with their bunch characters. The genotypes “Arka Vathi” and “Arka Neelamani” clustered together showed large and elongated bunches, but contained green and black- colored berries respectively. Subcluster B consisted of 15 genotypes and clustered into two groups at 23 linkage distances. Group 1 clustered 10 genotypes predominantly characterized by large bunches and dark berry types. The genotype “Angur Kalan” showed golden yellow berries with pinkish tinge, genotype “Sharad Seedless” evidenced a crispy pulp, and genotype E-29/7 had spherical berries. Group II consisted of 5 genotypes clustering at 15 units. All genotypes of the group showed medium to large bunches with dark colored berries. The genotypes E-18/12 and “Arka Trishna” were distinctly characterized by cylindrical-bunch and oval-shaped berries, respectively. Figure 1: Dendrogram showing the clustering patterns of 42 Indian grapevine genotypes based on morphological characters Tree Diagram for 42 Variables Ward`s method Squared Euclidean distances Linkage Distance Cheema Sahebi Kali Sahebi Queen of Vine Yard E-7/12 E-31/5 E-29/5 F-26/8 Arka Kanchan Pusa Navrang Arka Majestic Anab-e-Shahi Centennial Seedless E-29/6 Convent Large Black Black Champa Dilkhush Sonaka Red Globe Crimson Seedless Arka Trishna E-30/14 E-29/3 E-18/12 E-18/10 E-29/7 Cordinal Angur Kalan Gulabi Arka Krishna Bangalore Purple Bangalore Blue Superior Seedless Pusa Urvashi Sharad Seedless Arka Neelmani Arka Vati Arka Soma Arka Shw eta Arka Hans Arka Chitra Flame Seedless Thompson Seedless 0 20 40 60 80 100 A B I II C D
  • 4. Venkat Rao et al., American International Journal of Research in Formal, Applied & Natural Sciences, 6(1), March-May 2014, pp. 12-18 AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 15 Cluster II consisted of 19 genotypes forming into two subclusters (C and D) at 43 linkage distance in the dendrogram. Subcluster C was comprised of 7 genotypes at 23 distances. All the genotypes under this subcluster showed colored berries and were seeded, except the genotypes “Sonaka” and “Dilkhush,” which had a pale greenish color, and genotypes “Crimson Seedless” and E-29/6 with a seedless nature. The genotypes “Crimson Seedless” and “Red Globe” clustered together, respectively showing light-red and wine-red colored berries. Genotypes “Black Champa” and “Convent Large Black” both had spherical berries. The subcluster D with 12 genotypes was clustered at 32 units. The genotypes were predominantly characterized by greenish golden yellow color and seeded berries with the exception of genotypes “Arka Majestic,” “Pusa Navrang,” and “Arka Kanchan” which evidenced a dark color. The remaining genotypes “Centennial Seedless,” “Arka Kanchan,” and E-29/5 produced seeded berries. The genotypes “Pusa Navrang” and “Kali Sahebi” were characterized by berries with reddish pulp, while genotypes “Queen of Vine Yards,” “Kali Sahebi,” and “Cheema Sahebi” were clustered together and characterized by obovate-shaped berries. The genetic variability of this germplasm (Table 1) was evaluated on the basis of the number of alleles (mean: 6.3), genetic diversity (GD: 0.68), observed heterozigosity (Ho: 0.82), and probability of identity (PI: 0.13). These data indicated the presence of a lower genetic variability in the Indian grapevine germplasm, comparable to the variability found in the Algeria and Mediterranean basin and similar to Spanish grape germplasm (Martin et al., 2003). The most informative locus was VVMD 28 (13 alleles per locus) and the least informative were VVS29, VVMD7 and VVMD14 (4 alleles per locus) (Table 1). The most informative primers VVMD 28 and VVMD 32 were good candidates to be used for paternity testing due to the high direct count heterozygosity, high number of alleles, and even distribution of allelic frequencies. Moreover, in the populations studied, the observed heterozygosity was very similar to the expected heterozygosity at each nuclear SSR locus, suggesting no excess of homozygosity in populations. Since the analysis did not display null alleles hence, the marker should be suitable for a genetic population study among wild relatives and parentage studies (Wagner et al., 2006). Such an absence of null alleles is probably due to the choice of nuclear SSR loci which have revealed very low deviation in the observed heterozygosity from the expected heterozygosity (Bandelj et al., 2004; Khadari et al., 2003). Hence, a choice criterion should be used to avoid loci displaying null alleles being included. Table 1: Descriptive statistics and Genetic Diversity of Indian Grape genotypes at Twelve Microsatellite Loci Loci Allele Number Allele size range (bp) Expected Hetezygosity (He) Observed Heterozygosity (Ho) Probability of Identity (PI) Probability of null alleles (r) Genetic diversity (GD) Discrimination power (d) VVS 1 6 180- 230 7.93 7.90 0.09 -0.017 0.61 0.79 VVS 2 7 140- 210 8.12 8.33 0.13 -0.035 0.67 0.82 VVS 29 4 150- 175 8.35 8.14 0.16 -0.130 0.74 0.80 VVMD 7 4 140- 170 8.16 8.83 0.06 -0.036 0.41 0.86 VVMD 14 4 140- 165 7.69 7.65 0.08 0.011 0.53 0.47 VVMD 25 5 135- 165 7.81 7.93 0.10 0.064 0.60 0.61 VVMD 27 7 135- 175 8.40 8.16 0.13 -0.026 0.64 0.73 VVMD 28 13 140- 200 8.66 9.21 0.15 -0.045 0.85 0.81 VVMD 31 6 130- 165 8.10 9.47 0.11 -0.016 0.79 0.84 VVMD 32 9 130- 205 8.20 8.16 0.19 -0.024 0.77 0.89 VVMD 36 5 180- 205 8.56 8.94 0.16 -0.019 0.78 0.86 VMC 7b1 5 150- 205 8.64 8.09 0.20 -0.015 0.80 0.84 Mean 6.3 146- 189 8.10 8.20 0.13 -0.021 0.68 0.77 Pairwise comparisons were made between all genotypes included in this study and the average dissimilarity values were calculated based on microsatellite data. A maximum dissimilarity of 110 units was obtained between the genotypes “Convent Large Black” and “Arka Hans” where the former genotype was characterized by spherical bluish black seeded berries and the later genotype with colorless seeded berries; while a minimum dissimilarity of 37 units were obtained between the genotypes “Anab-e-Shahi” and “Dilkhush,”
  • 5. Venkat Rao et al., American International Journal of Research in Formal, Applied & Natural Sciences, 6(1), March-May 2014, pp. 12-18 AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 16 where both the genotypes were characterized by palegreenish colored seeded berries. The dendrogram presented demonstrates clearly the ability of microsatellites to detect a large amount of genetic variation in genetically closely related genotypes of grapevine and to identify groups with different levels of genetic distance. The markers segregated the genotypes into two major clusters (I and II) at 476 linkage distance (Fig. 2). Major cluster I consisted of 30 genotypes grouped into two subclusters (A and B) at 223 linkage distance. Subcluster A with 17 genotypes was grouped into two groups (A1 and A2) with 12 and 5 genotypes, respectively. The genotypes “Anab-e-Shahi” and “Dilkhush” were closely linked in group A1 by 31 linkage distance with both the genotypes showing greenish seeded berries. The genotypes “Pusa Urvasi” and “Cordinal” were closely linked at 39 units and grouped with “Pusa Navrang” at 59 units where “Cordinal” and “Pusa Navrang” were producing pigmented berries. The genotypes “Centenal Seedless” and “Superior Seedless” were linked together at 35 units, both with colorless berries. These genotypes were grouped with “Sharad Seedless” (pigmented berries) at 52 units and linked with cultivars “Sonaka” and “Gulabi” at 73 units. The genotypes “Thompson Seedless” and “Flame Seedless” were grouped together at 45 units and differentiated with colorless and red berries, respectively. The five genotypes of group A2 were linked at 71 units, of which “Black Champa” and “Red Globe” were closely linked at 41 units with both pigmented and seeded berries. The “Convert Large Black” (pigmented and seeded berries) was grouped with “Queen of Vineyards” (golden yellow colored and seeded berries) at 56 units. The genotype “Crimson Seedless” (red colored berries) stood separate and linked to the group at 71 units. The subcluster B consisted of 13 genotypes segregated into two groups (B1 and B2) at 145 units in the dendrogram. The group B1 with eight genotypes was clustered at 81 units, of which “Arka Neelamani” and “Arka Shweta” were closely linked at 31 units both were seedless. The large bunches with colored genotypes, namely, “Angur Kalan” (pinkish) and “Bangalore Blue” (purple) were linked at 33 units. “Bangalore Purple” (purple) and “Kali Sahebi” (reddish pulp) were linked at 63 units. The genotypes “Cheema Sahebi” and “Arkavathi” both with pyramidal shaped and tightly packed bunches were clustered together at 45 units. The group B2 consisted of five genotypes linked at 65 units and divided into two minor clusters. The first minor cluster consists of three colorless and seedless genotypes E-29/5, E-31/5, and E-29/7, which are linked at 55 units. The second minor cluster with two genotypes, E-29/6 and E-7/12, is linked at 52 units and both genotypes showed medium-sized bunches and seedless berries. The characteristic feature of cluster I predominantly shows subcluster A with more seeded genotypes and subcluster B with seedless genotypes. Figure 2: Dendrogram showing the clustering patterns of 42 Indian grapevine genotypes based on microsatellite markers Tree Diagram for 46 Genotypes Ward`s method Squared Euclidean distances Linkage Distance F-26/8 Arka Soma Arka Kanchan Arka Trishna Arka Hans Arka Majestic St. George 1613 Salt Creek Dog Ridge Arka Chitra E-30/14 E-29/3 Arka Krishna E-18/12 E-18/10 E-7/12 E-29/6 E-29/7 E-31/5 E-29/5 Arka Shweta Arka Neelamani Arka Vati Cheema Sahebi Kali Sahebi Bangalore Purple Bangalore Blue Angur Kalan Queen of Vineyard Convent Large Black Red Globe Black Champa Crimson seedless Dilkhush Anab-e-Shahi Pusa Navrang Cordinal Pusa Urvashi Gulabi Sonaka Centennial Seedless Superior Seedless Sharad Seedless Flame Seedless Thompson Seedless 0 100 200 300 400 500 A B D C I II
  • 6. Venkat Rao et al., American International Journal of Research in Formal, Applied & Natural Sciences, 6(1), March-May 2014, pp. 12-18 AIJRFANS 14-209; © 2014, AIJRFANS All Rights Reserved Page 17 Cluster II consisted of 2 subclusters, C and D, linked at 129 linkage distance with six genotypes in each group. The pigmented genotypes E-18/12 and “Arka Krishna” are closely linked at subcluster C at 40 linkage distance and are linked to E-29/3 at 45 units. The genotypes E-30/14 and “Arka Chitra” are grouped together at 39 units and shared attractive golden-yellow berries. The genotype E-18/10 was clustered separately in the subcluster, characterised by small bunches and pigmented seeded berries. Subcluster D was segregated into two groups (D1 and D2) at 77 linkage distance. Group D1 consisted of three seeded genotypes, “Arka Majestic,” “Arka Hans,” and “Arka Trishna” with seeded fruits and linked at 51 units. The colorless and seeded genotypes “Arka Kanchan” and “Arka Soma” were clustered together in group D2 at 39 units and with E-26/8 at 58 units. The characteristic feature of cluster II predominantly revealed subcluster C with colored and seedless fruits, and subcluster D with colorless and seeded fruits. In summary, this study, using microsatellite markers on Indian grape vine genotypes, showed considerable genetic diversity existing among the population. This is most likely due to different conditions under which the populations are grown and conserved (Song et al., 2003). The clustering of the genotypes was predominantly based on the pigment and seed characters in fruits. These groupings can be used in selecting diverse parents in breeding improved cultivars and in maintaining variation in the germplasm. 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