ISSN: 2329-8863

Advances in Crop Science and Technology
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  • Research Article   
  • Adv Crop Sci Tech 2022, Vol 10(11): 11
  • DOI: 10.4172/2329-8863.1000542

Estimation of Genetic Variability among Potato (Solanum tuberosum L.) genotypes at Bekoji, Southeastern Ethiopia

Nimona Fufa Hunde*, Dasta Tsagaye Galalcha and Demis Fikre Limeneh
Horticulture Research Program, Ethiopian Institute of Agricultural Research, Kulumsa Agricultural Research Center, P. O. Box: 489, Asella, Ethiopia
*Corresponding Author: Nimona Fufa Hunde, Horticulture Research Program, Ethiopian Institute of Agricultural Research, Kulumsa Agricultural Research Center, P. O. Box: 489, Asella, Ethiopia, Email: nimona.43@gmail.com

Received: 01-Nov-2022 / Manuscript No. acst-22-80215 / Editor assigned: 05-Nov-2022 / PreQC No. acst-22-80215 / Reviewed: 19-Nov-2022 / QC No. acst-22-80215 / Revised: 24-Nov-2022 / Manuscript No. acst-22-80215 / Published Date: 30-Nov-2022 DOI: 10.4172/2329-8863.1000542

Abstract

The experiment was conducted at Kulumsa Agricultural Research Center, Bekoji site during 2020-21. The experiment consisting of a total thirteen potato genotypes following randomized complete block design with three replications for analysis of variance, mean performance were computed. The analysis of genetic variance revealed that the sufficient variability were present in experimental material. The analysis of variance exhibited that most of the genotypes performed significantly (P≤0.05) variable for stem height, days to flowering, days to maturity, stem number, marketable tuber yield, and total tuber yield registering the significant genetic variability among the genotypes evaluated. Genotypic and phenotypic coefficient of variations ranged from 2.59 to 63.58 and 4.49 to 75.14% respectively in first season while, in second season also range from 3.01 to 48.03 and 4.26 to 51.57% respectively. The phenotypic coefficient of variance (PCV) was slightly higher in magnitude than genetic coefficient of variance (GCV) for most of the parameters revealing that influence of seasons in expression of the traits. The heritability estimates recorded to be high for the characters viz. stem number per plant, stem height, emergence day, maturity day, marketable tuber yield and total tuber yield ha-1,while moderate to high heritability values as stem number per plant, total yield and tuber dry matter contents. The highest to moderate genetic advance was recorded for the characters as marketable tuber yield, stem number, total tuber yield, stem height and tuber dry matter content revealed that both the season and genetic variance are operating in these traits. Promising genotypes with desirable traits could be recommended to produce new variety or use as parental lines for future breeding program.

Keywords

Heritability; Genetic advance; GCV; PCV; Tuber yield

Introduction

Potato (Solanum tuberosum L.) is considered as one of the four major agronomic crops (after wheat, maize and rice) all over the world as a staple food [1]. In Eastern African potato is the high yield potential and plasticity to environmental regimes makes it one of the best crops for food and nutrition security [2]. Nowadays, potato is regarded as the major food security crop mainly because it can provide a high-volume crop produce with high nutritional products per unit input and with a short crop cycle (mostly within less than four months) [3]. Since potato is grown from mid altitudes to very high mountain tops, and from humid to dry areas in the country, improvements in productivity will require the development of varieties best adapted to a wide range of environments and yield advantages [4]. The major objective of potato breeding has been to develop potato cultivars that have maximum yield potential, adaptable to wide agro-ecologies and resistant to late blight that has been the most devastating disease throughout the dominant potato producing highlands of the country [5]. Knowledge on the nature of variability and association of yield with its components is of great impotence for identification of superior parents in any breeding program [6]. Mainly, studying the genetic variability for a given character is a basic precondition for its improvement by systematic breeding [7,8]. Reduction in genetic variability makes the crops increasingly vulnerable to diseases and adverse climatic changes [9]. Genetic variability, which is due to genetic differences among individuals within a population, is the foundation of plant breeding since proper management of diversity can produce a permanent gain in the performance of plants and can safeguard against seasonal fluctuations [10,11]. Moreover, estimation of genetic variability alone does not provide clear cut indication of possible advancement that can be achieved through selection and it should be coupled with heritability and genetic advance [12]. Although, estimates of heritability provide the basis for selection on phenotypic performance, estimates of heritability and genetic advance should be considered simultaneously because high heritability should not always associate with high genetic advance [13]. High heritability coupled with genetic advance is more dependable, while for others, the intensity of selection should be increased; gives an idea of the possible improvement of new populations through the selection and high heritability with low genetic advance indicates the presence of non-additive gene action [14]. Creating genetic variability in tetraploid potato crop through hybridization in the country is limited due to too much dependence on CIP materials [15]. Improving productivity of the crop through hybridization is necessary to develop varieties which are adaptable to a wide range of environments [16]. Hence, most of smallholder farmers are still use local tuber seed and varieties with low genetic variability are the major constraints of low yield in potato. Estimates of heritability based on growing potato genotypes at multiple locations for several years will support potato breeders to decide the breeding strategy that should be followed.

Moreover, knowledge on the degree of genetic variability present among genotypes and the association of quantitative characters with yield is vital for any crop improvement program and also to develop suitable selection strategies [17]. Such information is scanty owing to the limited work done by the Ethiopian potato breeding program within the existing genetic pool in the country. Therefore, the present study was carried to investigate and estimate the nature and extent of variability in yield and agronomic traits among eleven genotypes, one released varieties and one local cultivar.

Materials and Methods

Description of the Study Area

The field experiment was conducted at Bekoji, Southeastern Ethiopia during the rain growing season in 2020 and 2021. Bekoji is located between latitude and longitude of 070 32’ 37’’ N and 390 15’ 21’’ E coordinates. The altitude of Bekoji is 2810 meters above sea level and the annual minimum and maximum temperature of 3.8 and 20.4 0C respectively with annual rain fall 939 mm. The rainy season over the sites extends from June through October and is sufficient for crops with a maturity period of 120–150 day. The soil type of the area was Clay soil (Nitosols) with PH of 5.23 as indicated in Tables 1 and 2.

Altitude Soil physical and chemical properties
Above sea level(m) Soil
pH
Total
N (%)
Available
P (ppm)
Available
K (Cmol+. kg-1)
CEC (Meq per100 g) Organic matter (%) Texture
2810 5.23 0.21 9.72 0.83 23.72 1.89 Nitosols

Data analyzed by the Kulumsa Soil laboratory Research Department center

Table 1: Physicochemical properties of soils of Bekoji experimental sites.

Cropping season Cropping season months Mean monthly Rainfall (mm) Mean air temperature (0C) Relative humidity
(%)
Minimum maximum
2020 May 83.9 6.3 20.6 54
June 155.2 3.8 20.1 70
July 296.3 3.9 18.9 79
August 190.9 4.0 18.7 80
September 109.0 4.2 19.0 72
October 87.2 2.3 20.0 66
2021 May 74.2 3.5 21.0 72
June 82.6 3.1 23.3 78
July 213.0 3.1 23.2 81
August 193.3 3.5 20.8 82
September 100.1 3.2 19.4 77
October 57.5 3.1 20.3 78
   Source: Kulumsa Agricultural Research Meteorology Bekoji station. Table 2: Mean temperature, rainfall, and relative humidity of two seasons at Bekoji     experimental site.

Experimental Design and Materials

The experiment was laid out as a Randomized Complete Block Design (RCBD) where each genotype was replicated three times. A total of 13 potato genotypes including one released variety as standard check and one local check were used for the experiment (Table 3). Those 11 genotypes we used for the evaluation were from crossing of Adet Agricultural Research Centre. The gross of each plot were 3 m x 3 m = 9 m2 consisting of four rows, which accommodated 10 plants per row and 40 plants per plot. The net plot size is 1.5 m x 2.4 m=3.6 m2. The spacing between plots and adjacent replications were 1.0 and 1.5 m, respectively. Medium-sized and sprouted potato tubers were planted at the spacing of 75 cm between rows and 30 cm between plants with planting depth was maintained at 5 to 10 cm. The whole recommended rate of 242 kg NPS ha-1 was applied at planting as source of phosphorous and 75 kg Nha-1 in the form of Urea in two splits, half rate after full emergence and half rate at the initiation of tubers. All agronomic practices were applied as per the recommendation made by the Research center for the area.

Data Collection

Data was recorded for phenology and growth parameters; days to 50% flowering, days to maturity, plant height (cm) and average stems number. For yield parameters; total tuber yield (t/ha), and marketable tuber yield (/ha) and tuber quality attributes: as tuber dry matter content (%) and specific gravity. Dry matter percent calculated according to [18].

Dry matter = (weight of sample after drying (g)) / (Initial fresh weight of sample (g) )*100

Specific gravity was calculated according to formula.

Specific gravity = (weight in air)m / (weight in air - weight in water)

Data Analysis

The collected data were subjected to analysis of variance (ANOVA) using the SAS (Statistical Analysis Software) version 9.2 (SAS, 2008). Duncan Multiple Range Test (DMRT) was used to compare the mean performance of genotypes at 5% and 1% level of significant mean squares was subjected to genetic analyses.

Phenotypic and Genotypic Variability

The variability present in the population was estimated by simple measures viz., range, mean, standard error, phenotypic and genotypic variances and coefficient of variations. The phenotypic and genotypic variances and coefficient of variations were estimated according to the following methods suggested by Burton and De vane (1953). = + = Where = Phenotypic variance, = genotypic variance and = environmental variance (error mean square); = mean square of treatment and r = number of replications;

Genotypic coefficient of variation (GCV %) = (√(〖σ2 〗_g ) )/(x ̅ ) *100

Phenotypic coefficient of variation (PCV %) = (√(〖σ2 〗_p ))/(x ̅ ) *100 Where, Vg = Genotypic variance, Vp = Phenotypic variance, x ̅ = Grand mean of the character. PCV and GCV were categorized as following: 0 – 10%: low, 10 - 20%: moderate, 20% and above high [19].

Heritability in the Broad Sense:

In total, 201.71 quintals of EGS of tef were produced from the 2016/17-2021/22 cropping season (Table 2). The highest share of 32.82 quintals of seed was produced from the variety Areka-1 pre-basic in 2018/19, followed by 21 quintals of the variety Cr-37 pre-basic seed in 2019/20. The lowest share of 1.2 quintals of seed was produced from the varieties Cr-37 pre-basic and Boset basic in 2017/18 (Table 2).

No. Genotype Pedigree No. Genotype Pedigree
1 AD515606.16 Belete x Aterababa 8 AD515578.102 Jalene x Aterababa
2 AD515606.44 Belete x Aterababa 9 AD515606.15 Belete x Aterababa
3 AD515578.77 Jalene x Aterababa 10 AD515578.187 Jalene x Aterababa
4 AD515578.49 Jalene x Aterababa 11 AD51645.9 Belete x CIP-396034.263
5 AD515270.96 Gera x Shenkola 12 Belete Standard check
6 AD515606.213 Belete x Aterababa 13 Local check Farmer’s cultivar
7 AD515606.164 Belete x Aterababa      
Source of all genotypes except the local cultivar and Belete was Adet Agricultural research center 
Table 3: List of experimental materials included in the study.

Genetic advance

The Genetic Advance (broad sense) expected under selection assuming the selection intensity of 5% was calculated by the formula suggested by [20, 21]: Gs= (K) (δA) (H) Where, Gs = expected genetic advance, and K = the selection differential (K=2.06 at 5% selection intensity), δA= phenotypic standard deviation, H = heritability. Genetic advance as part of the mean (GA) for each trait was computed as GA = (k) (σp)* (H2)

Genetic advance as percent of means (GAM):

Genetic advance as percent of mean was estimated as follows: GAM = GA/(x ̅ )*100 Where, GA = Genetic advance, X ̅ = Grand mean; Genetic advance as percent of mean was categorized as 0-10% = Low, 10-20% = Moderate, >20% = High as suggested by [19].

Results and Discussion

Analysis of Variance

A homogeneity test was conducted since the experiment was multi-seasonal that needs to be analyzed with combined ANOVA. Homogeneity of error variances assured that the data of both seasons were homogenies; so that separate data analysis were preferred rather than combined analysis over years. The analysis of variance (ANOVA) showed that there was significant difference in potato tuber yield during both cropping seasons. Thus, the mean squares from analysis of variance for all traits of 13 potato genotypes are presented in (Table 4).

Total tuber yield was highly significantly (P<0.05) affected by genotypes in both cropping seasons, The results revealed that the presence of significant differences among potato genotypes for all traits except for days to flower and specific gravity, dry matter content for 2020 and 2021 respectively. As a result most of the genotypes performed significantly (P≤0.05) variable for stem height, days to flowering, days to maturity, stem number, marketable tuber yield, and total tuber yield ha-1 registering the significant genetic variability among the genotypes evaluated. The yield difference between the cropping seasons may be the seasonal environment effect on the genotypes that gave maximum mean values of total tuber yield, marketable tuber yield, stem height, stem number per hill in 2020 and total tuber yield, marketable tuber yield, stem height and days to maturity, this suggesting the presence of genetic variability among the genotypes for the characters studied which shows an ample scope for selection of promising genotype from the present gene pool for increasing tuber yield; while the lowest mean value of these traits was recorded from the local check in second season 2021 (Table 4). The presence of large amount of variability might be due to diverse source of material taken as well as seasonal influence affecting the phenotypes. Many authors also reported the existence of significant variation among potato genotypes for different traits as: [22,23].

Source of variation
Year 2020
    DF
DE
DF
DM
STN
STH
MY
TY
SG
DM
Replications
2
1.64
37.33
4.18
0.28
1.46
1.87
4.66
0.02
0.41
Genotypes
12
15.91**
23.08ns
45.61**
2.50**
252.08**
198.92**
206.21**
0.002**
8.85**
Error
 24
1.73
20.97
7.01
0.59
36.85
38.75
44.58
0.002
4.12
Mean
18.89
70.64
116.28
2.93
60.69
27.45
31.37
1.22
25.13
CV %
6.95
6.48
2.28
26.3
10.00
29.02
21.28
3.99
8.07
R2
0.83
0.42
0.77
0.68
0.78
0.72
0.69
0.33
0.52
Year 2021
DF
DE
DF
DM
STN
STH
MY
TY
SG
DM
Replications
2
16.23
0.54
3.00
3.48
75.00
49.84
107.01
0.001
44.81
Genotypes
12
33.03**
50.31**
59.75**
7.30**
617.06**
445.55**
537.42**
0.001ns
16.86ns
Error
 24
3.93
5.37
10.89
1.58
42.5
64.72
76.58
0.001
11.81
Mean
19.15
67.54
120.31
6.49
82.07
42.98
47.9
1.05
19.82
CV %
10.34
3.43
2.75
19.37
7.94
18.63
18.27
1.13
17.34
R2
0.82
0.84
0.74
0.72
0.88
0.78
0.78
0.37
0.51
 Table4: Mean squares from analysis of variance for agronomic and yield traits of 13 potato genotypes tested for two years at Bekoji.

Estimation of Phenotypic and Genotypic Coefficient of Variation

The phenotypic and genotypic coefficient of variations for first season were ranged between 4.49 to 75.14% and 2.59 to 63.58%, respectively. In the second season the phenotypic and genotypic coefficient of variations were ranged between 4.26 to 51.57 and 3.01 to 48.03%, respectively. Both highest phenotypic and genotypic coefficient of variations were computed for marketable tuber yield and total tubers yield t ha-1 respectively, while the lowest phenotypic and genotypic coefficient of variations were recorded for specific gravity in both season (Table 5). In agreement with this result, [23] reported that highest PCV and GCV was observed for marketable tuber yield t ha-1 (34.84 and 32.59%), total tuber yield t ha-1 (32.26 and 30.40%), while the lowest PCV and GCV were observed in specific gravity. As a result, higher genotypic and phenotypic coefficient of variation were recorded for total tuber yield, marketable tuber yield, stem number per hill, plant height and days to emergence for both season. Similarly, [15,24] also reported high PVC and GCV for marketable yield t ha-1 and total tuber yield t ha-1. The traits which exhibited high estimates of genotypic and phenotypic coefficient of variation have high probability of improvement through selection while the improvement of traits is difficult or virtually impractical through selection which exhibited low estimates for both variability components due to the masking effect of environment on the genotypic effect [25]. Moderate genotypic and phenotypic coefficient of variation value were recorded for tuber dry matter content (10.88% & 13.55%) and days to flowering (10.31% & 10.87%) for first and second production season respectively. This revealed the existence of substantial variability and selection of genotypes would be effective based on this traits for further improvements. However days to flowering (5.68% & 8.62%) during first cropping season, days to maturity (5.66% & 6.10%) and specific gravity (2.59% & 4.49%) had the lowest GCV and PCV values respectively, which revealed low variability. This indicated the presence of seasonal influence on these characters was considerably low for the expression of the traits. The results of the phenotypic variance were in general higher than the genotypic variance for all characters studied. Thus it suggests the substantial influence of environment (season) besides the genetic variation for expression of these traits. The difference between phenotypic and genotypic coefficient of variation was the most pronounced for the traits stem number, average tuber number, average tuber weight, number of leaves per plant, tuber yield. Therefore, we speculated that these traits are substantially influenced by the growing environments.

  Year 2020
Traits Range Mean sg2 sp2 se2 PCV (%) GCV (%) H2 (%) GA GAM (%) 
Max Min
Days to emergence 22.67 16.00  18.89 15.34 17.07 1.73 21.87 20.73 89.87 7.65 40.49
Days to 50% flowering  74.00 64.33 70.64 16.09 37.06 20.97 8.62 5.68 43.42 5.44 7.71
Days to maturity 121.0 107.7  116.28 43.27 50.28 7.01 6.10 5.66 86.06 12.57 10.81
Stem number per hill  5.13 1.73 2.93 2.03 2.62 0.59 55.24 48.63 77.48 2.58 88.17
Steam height (cm)  71.00 42.00 60.69 239.79 276.64 36.85 27.41 25.52 86.68 29.70 48.94
Marketable tuber yield (t/ha)  38.01 11.94 27.45 186.01 224.76 38.75 54.62 49.69 83.76 25.56 93.11
Total tuber yield (t/ha)  48.69 21.63 31.37 191.35 272.31 80.96 52.60 44.10 70.27 23.89 76.15
Specific gravity of tubers (g/cm3)  1.26 1.18 1.22 0.00 0.00 0.002 4.49 2.59 33.00 0.04 3.08
Dry matter content (%)  27.67 22.17 25.13 7.48 11.60 4.12 13.55 10.88 64.48 4.52 18.00
  Year 2021
Days to Emergence 27.67 15.00 19.15 32.32 36.25 3.93 31.44 29.69 89.16 11.06 57.75
Days to 50% flowering 73.33 58.67 67.54 48.52 53.89 5.37 10.87 10.31 90.04 13.62 20.16
Days to maturity 126.33 114.0 120.31 56.12 67.01 10.89 6.80 6.23 83.75 14.12 11.74
Stem number per hill 8.73 3.27 6.49 6.8 8.38 1.58 44.60 40.18 81.15 4.84 74.56
Steam height (cm) 104.33 47.67 82.07 602.9 645.4 42.5 30.95 29.92 93.41 48.89 59.57
Marketable tuber yield (t/ha) 65.93 22.59 42.87 423.98 488.7 64.72 51.57 48.03 86.76 39.51 92.16
Total tuber yield (t/ha) 73.78 25.93 47.9 511.89 588.47 76.58 50.64 47.23 86.99 43.47 90.75
Specific gravity of tubers (g/cm3) 1.06 1.04 1.05 0.001 0.002 0.001 4.26 3.01 50.00 0.05 4.39
Dry matter content (%) 23.40 16.17 19.82 12.92 24.73 11.81 25.09 18.14 52.24 5.35 27.00
Where: d 2p =Phenotypic variance, d 2g =Genotypic variance, PCV = phenotypic coefficient of variance, GCV = Genotypic coefficient of variation, H2 (%) = Heritability in broad sense, GA (5%) = genetic advance at 5% selection intensity, GAM (%) = genetic advance as percent mean.
Table 5: Estimate of variability components for 13 potato genotypes evaluated at Bekoji for two years.

Estimates of Heritability and Genetic Advance

The estimated values of heritability and genetic advance as percent of mean for first growing season were ranged from 33.00% (specific gravity) to 89.87% (days to emergence) and 3.08% (specific gravity) to 93.11% (tuber marketable yield), respectively. While, during second (2021) cropping season the moderate to highest genetic advance for tested genotypes expressed as percentage of the mean (GAM) showed for all traits ranging from 4.39 to 92.16% except for specific gravity of tubers (Table 5). Most of the traits had high heritability values as days to emergence, days to maturity, stem height, marketable tuber yield and moderate to high heritability values as stem number per plant, total yield and dry matter contents respectively. A similar result reported by [15,21] reported for plant height, average stem number, total tuber yield and marketable tuber yield both high heritability (> 60%) and genetic advance (> 20%) as a percent of the mean. Traits which showed high values of genetic advance might be due to additive gene action. Mishra et al., 2006 noticed that high heritability associated with high genetic advance would be used as a clue in most selection programs and these characters were predominantly governed by additive gene action and can be improved through simple selection [25]. But high heritability followed by low genetic advance indicates that the high heritability is expressed probably due to the favorable influence of environment rather than genotype and selection for such traits may not be rewarding. However, [19] suggested that heritability estimates along with genetic advance would be more useful in predicting yield under phenotypic selection than heritability estimate alone. As a result days to flowering and specific gravity was recorded medium to low heritability value respectively. Similarly, specific gravity and dry matter content percentage coupled with low heritability and low to medium genetic advance was reported by [23].

Mean Performance of Genotypes

Thirteen potato genotypes exhibited a wide range of mean values for all traits with both season. The first season 2020 the genotypes of total tuber yield and marketable tuber yield were ranged from 21.63 to 48.69 and 11.94 to 38.01 t ha-1 with the overall mean total tuber yield of 31.37 t ha-1, whereas the second year 2021 the total tuber yields and marketable yields were ranged from 25.93 to 73.78 and 22.59 to 65.93 t ha-1, respectively (Table 6). Total tuber yield was significantly (P<0.05) affected by genotypes in both cropping seasons. Since there were no interaction effect between genotypes and year, tuber yield was put in the form of one way table. Tuber yield (t ha−1) was significantly (P < 0.05) affected by cropping season.

Relatively, higher yield was recorded during 2021 cropping season compared to 2020 cropping season because of may be the heavy rainfall and relative humidity condition during 2020 cause favorable environment to high pressure of late blight severity. In 2020 cropping season, significantly the highest total tuber yield (48.69 t ha−1) was recorded from genotype AD51645.9 followed by AD515606.164 genotype (44.49 t ha−1) and Belete variety (37.48 t ha−1) which was statistically similar, while the lowest total tuber yield (21.63 t ha−1) was recorded from genotype AD515578.77 followed by 22.53 and 24.74 t ha−1 were recorded from the genotypes of AD515578.102 and AD515578.187 respectively. In 2021 cropping season significantly, the highest total tuber yield (73.78 t ha−1) was recorded from standard check Belete variety followed by AD515606.164 genotype (60.00 t ha−1) were recorded, while the lowest total tuber yield (25.93 t ha−1) was recorded from the local check followed by 28.74 and 34.96 t ha−1 were recorded from the genotypes of AD515606.44 and AD515578.102 respectively (Table 6). In a similar kind of study, [26] state that potato genotypes (offsprings) produced from Belete cross with Ater Ababa manifested highest mean for marketable tuber yield and total tuber yield. This may be due to over dominance of maternal effect which Belete (female parent) is high yielder variety in the country. Tuber yield variation results were reported on potato genotypes by different scholars in Ethiopia In addition to the genetic makeup of the genotype, differences in other factors could have contributed to the observed yield variations among varieties and environments [27]. Generally, the genotype AD51645.9 and AD515606.164 recorded maximum mean performance among the genotypes for number of characters but, no significant with standard check variety in season [28,29].

Genotypes   Year 2020
DE DF DM STN STH MY TY SG DMC
AD515606.16 19.33cd 73.00 120.67ab 2.33cde 50.67ef 21.56cd 30.58cd 1.23 25.00
AD515606.44 22.67a 74.00 114.67cde 2.00de 42.00f 17.78cd 29.47cd 1.26 26.67
AD515578.77 17.67de 69.67 114.00de 2.93bcde 57.67bcde 11.94d 21.63d 1.22 23.00
AD515578.49 16.67e 74.00 118.67abc 3.27bcd 67.33ab 25.69bc 36.05bc 1.22 26.50
AD515270.96 17.67de 72.67 112.67e 2.93bcde 69.33a 17.78cd 27.47cd 1.24 22.17
AD515606.213 17.67de 71.33 116.33bcde 2.60bcde 53.00de 14.31d 23.99d 1.26 24.50
AD515606.164 19.00cd 68.33 121.00a 3.47bc 71.00a 34.76ab 44.49ab 1.18 26.17
AD515578.102 21.67ab 72.00 118.67abc 2.00de 53.67cde 12.84d 22.53d 1.20 25.50
AD515606.15 18.00de 69.33 112.00ef 2.53bcde 63.67abc 21.48cd 31.17cd 1.22 24.67
AD515578.187 16.33e 64.33 107.67f 3.80b 61.33abcd 15.05d 24.74d 1.18 22.67
AD51645.9 16.00e 70.33 119.33ab 5.13a 70.33a 38.01a 48.69a 1.19 25.17
Belete (St. Check) 22.67a 67.67 118.67abc 1.73e 71.00a 27.79abc 37.48abc 1.20 27.67
Local (check) 20.33bc 71.67 117.33abcd 3.40bc 58.00bcde 19.84cd 29.53cd 1.22 27.00
Mean 18.89 70.64 116.28 2.93 60.69 21.45 31.37 1.22 25.13
LSD (5%) 2.213 Ns 4.4626 1.3001 10.23 10.491 11.252 ns ns
CV (5%) 6.95 6.48 2.27 26.31 10.001 29.02 21.28 3.99 8.07
Year 2021
AD515606.16 15.67de 71.00a 125.00a 5.8cd 78.33de 50.15bcd 53.85bcde 1.04 19.78
AD515606.44 27.67a 73.33a 121.67ab 3.27e 47.67f 24.15fg 28.74gh 1.05 20.73
AD515578.77 18.00cde 58.67e 117.67bcd 6.07cd 87.67bcd 46.52bcde 51.33bcde 1.04 18.40
AD515578.49 20.67bc 71.67a 126.33a 6.33bcd 80.33cde 52.74abc 57.85bc 1.05 22.53
AD515270.96 20.33bc 64.0d 117.67bcd 8.73a 91.00bc 43.04cde 50.67bcde 1.05 17.27
AD515606.213 18.00cde 66.67bcd 117.00bcd 6.27bcd 80.33cde 37.48def 44.67cdef 1.05 18.70
AD515606.164 16.67de 64.33d 125.33a 6.33bcd 87.67bcd 57.63ab 60.00ab 1.05 23.40
AD515578.102 21.67b 71.33a 121.00abc 5.00de 72.33e 33.48efg 34.96fgh 1.06 19.83
AD515606.15 16.67de 69.67abc 114.33d 8.33ab 77.33de 40.89cde 41.71efg 1.04 16.17
AD515578.187 21.33bc 66.00cd 115.67cd 7.87abc 92.67b 37.26def 42.29defg 1.04 17.43
AD51645.9 18.67bcd 70.00ab 123.33a 7.07abcd 97.67ab 45.56bcde 56.96bcd 1.04 21.78
Belete (St. Check) 15.00e 66.67bcd 125.00a 5.07de 104.33a 65.93a 73.78a 1.04 23.25
Local (check) 18.67bcd 64.67d 114.00d 8.27ab 69.67e 22.59g 25.93h 1.04 18.42
Mean 3.3387 3.9057 5.5608 2.1195 10.986 42.877 14.747 ns ns
LSD (5%) 19.15 67.54 120.31 6.49 32.07 13.459 47.9.3 1.05 19.82
CV (5%)   10.34 3.43 2.74 19.37 7.94 18.63 18.27 1.13 17.34
Means with similar letter(s) in a column are not significantly different, LSD (5%), least significant difference, ns= non-significant difference,  CV (5%) = coefficient of variation in percent, DE=Days to emergence, DF= Days to flower, DM=Days to maturity, STN=steam number per plant, STH=Plant height (cm), MY(t ha-1) = marketable tuber yield, TY(t ha-1) = total tuber yield tons per hectare, SG= specific gravity  DM (%) = tuber dry matter content Table 6: Mean performances of 13 potato genotypes for tuber yield and other traits evaluated at Bekoji for two seasons 2020 & 2021.

Conclusion and Recommendations

The present study revealed that there exists an adequate amount of variability in the genotypes studied in almost all traits. The estimates of phenotypic coefficients of variation was slightly higher than the estimates of genotypic coefficients of variation for all traits under study implying that besides genetic factors some seasonal factors are having their role in expression of characters. The genetic parameters revealed that moderate to high GCV, PCV coupled with high heritability and high genetic advance as percent of mean were observed for all traits expect specific gravity and days to 50% flowering in first season. These results indicate the operation of additive gene action in the inheritance of these traits and improvement of these traits are possible through simple selection. In second season all traits shows high to moderate GCV, PCV and genetic advance as percent of mean, while specific gravity and days to maturity shows low. In the present investigation, the genotype AD51645.9 and AD515606.164 recorded maximum mean performance among the genotypes for more number of characters i.e. days to emergence, days to maturity, stem number per hill, stem height, marketable tubers and total tuber yield which also exhibiting high PCV to moderate GCV along with high heritability with high genetic advance. Further the genotypes, AD51645.9, AD515606.164, AD515578.49, AD515606.16 and AD515578.77 are identified as promising varieties for utilization in hybridization programme aimed at developing varieties with high yield and quality traits of potato to the area. Average tuber number, average tuber weight, specific gravity of tubers, dry matter content and total starch content, are major traits used during selection for tuber yield and quality attributes. Generally, the present findings revealed adequate existence of variability for most of the traits in the studied genotypes which need to be exploited in future potato breeding programs for the study area.

Acknowledgement

I am grateful to the Ethiopian Institute Agricultural Research (EIAR) and Kulumsa Agricultural Research Centre (KARC) for financial support and providing all necessary facilities.

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Citation: Hunde NF, Galalcha DT, Limeneh DF (2022) Estimation of Genetic Variability among Potato (Solanum tuberosum L.) genotypes at Bekoji, Southeastern Ethiopia. Adv Crop Sci Tech 10: 542. DOI: 10.4172/2329-8863.1000542

Copyright: © 2022 Hunde NF, et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

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