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A total of 25 genotypes consisting of 23 accessions collected from the genetic resources unit of the National Horticultural Research Institute (NIHORT), Ibadan, Nigeria, and two traditional varieties used as local checks (Table 1) were evaluated at the Teaching and Research Farm of Ladoke Akintola University of Technology, Ogbomoso (8°10'N, 4°10'E, and altitude 341 m above sea level). Tomato seeds were sown in perforated nursery trays filled with sterilized soil and grown for three weeks in the greenhouse. All plant protection measures and cultural practices were observed during the nursery growth period. Seedlings were later transplanted to the open field in a single row plot (one row per single bed) that was 4 m long with a spacing of 0.5 m between rows and 0.5 m between plants within a row. The beds were 1 m apart. The seedlings were arranged in a 5 × 5 α-lattice design with three replications. The recommended dose of N, P2O5, and K2O, fertilizers in the form of urea (46% N), single super phosphate (16% P2O5), and murate of potash (60% K2O) was applied three weeks after transplanting. The plants were supported with trellises to prevent lodging and reduce the risk of fruit loss due to diseases and pests. Weeding was manually performed every two weeks. To protect the leaves from pests that cause defoliation, plants were treated with the pyrethroid insecticide Cymbush, which contains cypermethrin. The insecticide was applied at 2, 6, and 9 weeks after transplanting, using a knapsack sprayer at a rate of 450 mL of active ingredient per 100 L of water per hectare. Throughout the experiment, no disease infestations were observed. Data collection was conducted on five randomly selected plants per plot for each accession per replicate. Other field management activities, including staking, weeding, and pest protection, were carried out during the crop's growth period.
Table 1. Tomato accessions and local checks evaluated in the study.
S/N Accession Local name Collection source Growth habit 1 NHTO-0199 Dan Biu Maiduguri, Borno state Semi-determinate 2 NHTO-0239 UC Funtua, Katsina state Indeterminate 3 NHTO-0259 Tomato Babura, Jigawa state Indeterminate 4 NHTO-0264 Tomato Babura, Jigawa state Indeterminate 5 NHTO-0340 Tima Kano state Indeterminate 6 NHTO-0342 Tomato Babura, Jigawa state Semi-determinate 7 NHTO-0346 Ex-Babura Babura, Jigawa state Indeterminate 8 NHTO-0350 Tomato Makarfi, Kaduna state Indeterminate 9 NHTO-0351 Dan Batanas Makarfi, Kaduna state Determinate 10 NHTO-0352 Dan India Makarfi, Kaduna state Indeterminate 11 NHTO-0353 Tomato Bauchi State Semi-determinate 12 NHTO-0368 Dan Gombe Dadin kowa, Gombe state Semi-determinate 13 NHTO-0388 Heinz 2274 Kano state Semi-determinate 14 NHTO-0389 Tomato Maiduguri, Borno state Indeterminate 15 NHTO-0390 Girafto Babura, Jigawa state Semi-determinate 16 NHTO-0400 Bakin iri Bomo, Zaria state Indeterminate 17 NHTO-0568 Dan Gombe Dadin kowa, Gombe state Determinate 18 NHTO-0569 Dan Baga Maiduguri, Borno state Indeterminate 19 NHTO-0570 Tomato Makarfi, Kaduna state Determinate 20 NHTO-0571 Tomato Makarfi, Kaduna state Semi-determinate 21 NHTO-0572 Dan Syria Maiduguri, Borno state Semi-determinate 22 NHTO-0573 Dallaji Bauchi state Indeterminate 23 NHTO-0574 Tomato Maiduguri, Borno state Determinate 24 LC CHK-Y Tomato Yoruba Ogbomoso, Oyo State Semi-determinate 25 LC CHK-H Timo Hausa Ogbomoso, Oyo State Semi-determinate NHTO = NIHORT Tomato; LC CHK-H = Local check-Hausa; LC CHK-Y = Local check-Yoruba. Data collection for agronomic traits and physico-chemical assessments
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The International Plant Genetic Resources Institute[10] tomato descriptors were considered in collecting data in the field as well as in the laboratory. Quantitative agronomic data were collected on number of branches (NOB), number of days to flowering (DTF), number of days to maturity (DTM), fruit length (FL), fruit width (FWD), number of flowers per cluster (NFPC), number of fruits per cluster (FPC), plant height (PH), number of days to first harvest (DTH), number of fruits per plot (FPP) and fruit weight per plot (TFW). Days to flowering was recorded as the number of days from sowing to when 50% of the plants in each plot had flowered. Manual branch counting was used to determine the number of branches, days to maturity was recorded from sowing until 50% of plants had at least one ripened fruit. Fruit length and width were measured at physiological maturity. Fruit length was recorded from stem end to blossom end using a meter rule (cm) while fruit width was recorded at the largest diameter of cross-sectioned fruits using a digital calipers-515 (cm). The total number of fruits per plot was determined at physiological maturity and a digital weighing machine was used to obtain the total fruit weight per plot.
For physico-chemical parameters, tomatoes were harvested at red ripe stage on five plants per genotype. Total soluble solids (TSS) content which gives information on the percentage of sugars present in the tomato juice was measured using a digital refractometer (Model, PAL-Tea, ATAGO, Tokyo, Japan), and the results were expressed as °Brix in accordance with the Association of Official Analytical Chemists[11] methods at room temperature. The fruit juice pH was determined using a pH meter and the titratable acidity was determined following the method of AOAC and expressed in percentage. Simple sugars such as ascorbic acid (vitamin C) and carotenoids (β-carotene and lycopene) were also analyzed according to standard laboratory procedures and expressed in mg 100 g−1. All analyses were done in triplicate for each representative fruit sample at the Product Development Laboratory of NIHORT.
Statistical data analysis
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All collected data was entered into Microsoft Excel 2019 before analysis. Analysis of variance (ANOVA) was performed with the General Linear Model (GLM) procedure in Statistical Analysis System (SAS) software version 9.4[12] to examine differences among the accessions. To avoid Type I error rates across multiple comparisons, Tukey's honestly significant difference (HSD) test was applied to determine trait means significant differences among the evaluated accessions at 5% probability level using the R statistical software.
The linear model used in this study was:
, where yij is the observation value of response trait obtained from i-th accession in j-th block, µ is the overall mean, bj is the effect of j-th block, αi is the effect of i-th accession and eij the error associated with yij.$ {y}_{ij}=\mu +{b}_{j}+{\alpha }_{i}+{e}_{ij} $ To examine the proportion of the total variance of a trait that is due to genetic differences among the tomato accessions, repeatability was computed. The GLM procedure of SAS was used to estimate the variances and the repeatability of the traits was computed only for all the agronomic traits measured. The Rank summation index (RSI) of Mulumba & Mock[13] was used to rank the performance of the tomato accessions based on four selected economically important traits (number of fruits per plot, fruit weight per plot, β-carotene, and lycopene). The accessions were ranked for these traits and the rankings were then combined to create an index for each accession. The accession with the lowest RSI value was considered the best, while the one with the highest RSI value had poor performance.[14] Principal Component Analysis (PCA) was performed to determine the traits that account for most of the variations among the accessions using R statistical software (version 4.2.2) and was plotted using the package 'FactoMineR'. The PCs with Eigenvalues > 1 were selected[15] and the first two PCs which explained maximum total variations were plotted on a two-dimensional plot for all the accessions. For the grouping of similar accessions based on agronomic and physico-chemical traits, cluster analysis was computed. Distinct clusters were established using Ward's coefficient of agglomerative hierarchical clustering in R statistical software version 4.2.2[16]. Pearson's correlation analysis was computed to determine associations among all traits measured using the 'metan' package in R[17].
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The tomato leaves and fruits showed a large range of phenotypic variation among the 23 accessions and two traditional varieties used as checks (Fig. 1). In addition to obvious differences in leaf and fruit shapes, results from analysis of variance revealed that the accessions showed significantly (p < 0.001, p < 0.01, and p < 0.05) different mean squares for all the measured agronomic and physico-chemical traits (Table 2). Coefficients of variation (CV) were below 20% for most of the measured traits but appeared excessively high (21%−80%) for numbers of branches, flowers per cluster, fruit per cluster, fruit per plot, plant height, and fruit weight. The low CV observed for most traits implies the precision of the experiment and reliability of the data collection procedure. The magnitude of the coefficient of determination (R2) was high (70%−99%) for all traits measured, indicating the reliability of the statistical analysis to capture variability among the tomato accessions. Repeatability estimates for agronomic traits ranged from 0.39 (fruit length) to 0.66 (number of branches). Only the latter trait showed high magnitude as other traits had moderate estimates which is an indication of the effects of the test environment on the performance of the tomato accessions.
Figure 1.
Tomato accession diversity of leaf and fruit morphology within each distinct cluster. Each accession's leaf and fruit are accompanied by the accession name.
Table 2. Mean squares of agronomic and physico-chemical traits of the tomato accessions evaluated.
Source df No. of branches No. of
days to
flowering (d)No. of
days to
maturity (d)Fruit length (cm) Fruit
width
(cm)No. of
flowers
per
clusterNo. of
fruits
per clusterPlant height (cm) No. of days
to first
harvest (d)No. of
fruits
per plotFruit weight
per plot (kg)Vitamin C (mg
100 g−1)β-carotene (mg 100 g−1) Lycopene (mg
100 g−1)Titratable acidity (%) Fruit juice pH Total soluble solids (°Brix) Replication (Rep) 2 39.52** 24.16 86.44 0.82 0.67* 0.65 2.28 116.76 10.33 9,268.93 1.42 0.44 0.02** 2.22*** 0.03 0.01*** 0.00 Block (Rep) 12 10.66 38.87 47.36 0.10 0.09 1.57 1.96 353.90* 28.50 4,766.78 3.65 0.32 0.01 0.18 0.02 0.00 0.03*** Accession 24 12.42* 106.19*** 223.06** 3.55*** 1.11*** 3.72*** 3.58*** 651.85*** 154.51*** 36,185.35*** 8.73*** 13.67*** 1.10*** 297.40*** 0.36*** 0.22*** 0.06*** Error 36 6.01 28.29 73.73 0.30 0.17 1.33 1.40 166.38 46.2 5,525.12 1.80 0.31 0.01 0.23 0.02 0.00 0.01 CV (%) 31.27 13.49 11.44 18.42 14.53 28.64 21.95 21.05 9.03 80.10 54.04 5.33 4.06 3.09 6.25 0.59 1.53 R2 (%) 75 78 73 91 85 73 70 78 76 84 79 97 99 99 94 99 95 Repeatability 0.66 0.51 0.55 0.39 0.44 0.57 0.59 0.50 0.53 0.44 0.47 − − − − − − *, **, *** significant at 0.05, 0.01 and 0.001 probability levels, respectively. CV = coefficient of variation, R2 = coefficient of determination. The significant differences among accessions for all measured traits enabled grouping into different classes and the identification of outstanding accessions. The Tukey's HSD separated the trait means into two classes for the numbers of branches, days to maturity, flowers per cluster, plant height, and number of days to first harvest (Supplemental Table S1). The other measured agronomic and nutritional traits were separated into three or more classes and the means having 'a' were considered the best. The greatest magnitude of variation was observed in the number of fruits per plot which varied from 10 (NHTO-0568) to 476 (NHTO-0259), followed by plant height in the range of 34.3 (NHTO-0568) to 93.7 cm (NHTO-0259). The number of branches varied from 4 (NHTO-0351) to 13 (NHTO-0572), number of days to flowering ranged from 30 (NHTO-0389) to 55 d (NHTO-0569), number of days to maturity was between 65 (NHTO-0350) to 98 d (NHTO-0574), fruit length varied from 1.2 (NHTO-0572) to 5.8 cm (NHTO-0368), fruit width ranged from 1.3 (NHTO-0572) to 4.1 cm (NHTO-0568), number of flowers per cluster was between 2 (NHTO-0570) and 7 (NHTO-0259), the number of fruits per cluster was between 4 (LC CHK-H) and 8 (NHTO-0572), number of days to first harvest ranged from 68 (NHTO-0350) to 97 d (NHTO-0569) and fruit weight per plot varied from 0.3 (NHTO-0569) to 6.5 kg (NHTO-0199). The grand mean values were 7.8 for number of branches, 39 d for number of days to flowering, 75 d for number of days to maturity, 3.0 cm for fruit length, 2.8 cm for fruit width, 4.0 for number of flowers per cluster, 5.4 for number of fruits per cluster, 61.3 cm for plant height, 75 d for number of days to first harvest, 92.8 for number of fruits per plot and 2.5 kg for fruit weight per plot.
In comparison to the traditional varieties used as checks, the two checks (LC CHK-Y and LC CHK-H) evaluated in this study were comparable with the tomato accessions for most traits. Only one accession (NHTO-0568) with a fruit width of 4.1 cm was significantly (p < 0.05) different from the checks (Supplemental Table S1). NHTO-0569 took significantly longer days (97 d) to harvesting. The number of fruits per plot of NHTO-0259 and NHTO-0572 were significantly (p < 0.05) different from the checks. The fruit weight of NHTO-0199 surpasses that of the LC CHK-H significantly (p < 0.05) and out-yielded the best check (LC CHK-Y) by 59%.
Furthermore, the potential of the fruit quality determines their utilization in value addition industries. Considering the nutritional profile of the evaluated tomato accessions, a higher value in total soluble solids content (5.4 °Brix) was found in NHTO-0332 (Supplemental Table S2). The lowest value was recorded in NHTO-0368 (4.5 °Brix). Higher value in titratable acidity (3.0%) which surpasses the checks significantly (p < 0.05) was observed in NHTO-0199 while the lowest value (1.6%) was recorded in NHTO-0353. The pH showed the ideal range, ranging from 2.4 (NHTO-0389) to 4.1 (NHTO-0573). Three accessions (NHTO-0573, NHTO-0574 and NHTO-0569) had significant (p < 0.05) higher pH values than the checks. The lycopene content varied from 5 mg 100 g−1 (NHTO-0389) to 38 mg 100 g−1 (NHTO-0568). Only NHTO-0568 and NHTO-0351 were higher in lycopene (the compound providing the red color to the fruits) than the superior check (LC CHK-H) which has 32.4 mg 100 g−1 lycopene content. A higher value in β-carotene content (3.4 mg 100 g−1) was found in NHTO-0350. The lowest value was recorded in NHTO-0390 (0.8 mg 100 g−1). About 30% of the accessions notably; NHTO-0350, NHTO-0400, NHTO-0352, NHTO-0571, NHTO-0340, NHTO-0346 and NHTO-0388 had significantly (p < 0.05) higher β-carotene content (precursor of vitamin A) than the checks. The vitamin C content varied from 7.7 mg 100 g−1 (NHTO-0346) to 14.0 mg 100 g−1 (NHTO-0353) and was at par with the checks. The grand mean values were 10.4 mg 100 g−1 for vitamin C, 1.8 mg 100 g−1 for β-carotene, 15.4 mg 100 g−1 for lycopene, 2.2% for titratable acidity, 3.4 for fruit juice pH and 5.0 °Brix for total soluble solids.
Additionally, the tomato accessions performance was ranked based on four economic traits namely: number of fruits per plot, fruit weight, β-carotene, and lycopene content of the tomato fruits. The accessions were ranked for each of these traits and the ranks for each trait were summed up to obtain an index for each accession. The best accession had the least RSI value (20), whereas the worst one had the highest RSI value (93). The top five accessions with high fruit yield and quality were NHTO-0352, NHTO-0350, NHTO-0199, NHTO-0351, and NHTO-0346 (Table 3). However, NHTO-0353 ranked first based on the number of desirable 'a's it had across all agronomic andphysico-chemical traits, according to Tukey's HSD ranking. NHTO-0199, NHTO-0346, NHTO-0350, and NHTO-0352 identi-fied as superior by RSI, ranked second, as well as NHTO-0259, NHTO-0340, NHTO-0353, NHTO-0400, and NHTO-0573 indicating adaptability to the test environment.
Table 3. Fruit yield and quality of top and bottom five tomato accessions based on Rank Summation Index.
Accession Fruit weight per plot (kg) Number of fruits per plot β-carotene (mg
100 g−1)Lycopene (mg
100 g−1)Rank Summation Index Top 5 NHTO-0352 4.2 80.5 2.8 30.3 20 NHTO-0350 3.3 65.7 3.4 9.2 32 NHTO-0199 6.5 92.0 1.5 8.6 35 NHTO-0351 2.3 71.1 1.8 34.7 35 NHTO-0346 2.8 159.8 2.2 8.4 37 Mean of Top 5 3.8 93.8 2.3 18.2 Grand mean 2.5 92.8 1.8 15.4 Selection differential (%) 53.3 1.1 31.5 18.2 Bottom 5 NHTO-0342 1.8 38.2 1.6 5.5 69 NHTO-0389 0.7 91.3 1.3 4.9 74 NHTO-0569 0.3 14.8 1.6 9.4 74 NHTO-0573 0.5 11.9 1.6 6.6 77 NHTO-0574 0.3 15.0 0.9 5.3 93 Mean of bottom 5 0.7 34.3 1.4 6.3 Grand mean 2.5 92.8 1.8 15.4 Selection differential (%) −71.8 −63.1 −21.8 −58.9 Multivariate analysis of tomato accessions
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The correlogram illustrates the strength and direction of the linear relationships between pairs of traits (Fig. 2). The number of fruits per cluster had a linear positive strong and significant (p < 0.01) relationships with number of flowers per cluster (r = 0.55) and number of fruits per plot (r = 0.72). Similarly, the number of branches had a linear positive strong and significant (p < 0.01) relationships with number of flowers per cluster (r = 0.60), number of fruits per plot (r = 0.64) and plant height (r = 0.60). The number of fruits per cluster and the number of fruits per plot have a statistically significant linear relationship (r = 0.74, p < 0.001), but a negative correlation with fruit width (r = −0.64). The number of fruits per plot had a strong positive and significant correlations with fruit width (r = 0.71) and plant height (r = 0.52). Plant height had a negative and significant correlations with fruit width (r = −0.63), number of days to first harvest (r = −0.57), number of days to maturity (r = −0.69), number of days to flowering (r = −0.60) and fruit juice pH (r = −0.65). On the other hand, plant height and total fruit weight per plot have a positive significant linear relationship (r = 0.54, p < 0.01). Total fruit weight per plot had a negative and significant correlations with number of days to first harvest (r = −0.60) and number of days to maturity (r = −0.64). The number of days to flowering had a strong positive and significant association with the number of days to maturity (r = 0.84) and number of days to first harvest (r = 0.79). The number of days to maturity and number of days to first harvest have a statistically strong significant linear relationship (r = 0.93, p < 0.001). Total fruit weight per plot was negatively correlated with number of days to first harvest (r = −0.48). Similarly, the number of days to first harvest has a negative and significant association with number of fruits per plot (r = −0.29). Considering the physico-chemical properties measured, vitamin C had a positive association with fruit length (r = 0.59, p < 0.01) and lycopene (r = 0.60, p < 0.01). Fruit juice pH had a positive and significant (p < 0.001) association with number of days to flowering (r = 0.70), number of days to maturity (r = 0.68) and number of days to first harvest (r = 0.64). The number of fruits per plot had a negative and significant association with vitamin C (r = −0.36). Vitamin C had a positive and significant correlation with lycopene (r = 0.57) but a negative correlation with β-carotene (r = −0.27). β-carotene showed a negative and significant association with titratable acidity (r = −0.33).
Figure 2.
Correlogram showing the relationship between average values of agronomic and physico-chemical traits of tomato accessions. Dark blue denotes a high negative correlation, whereas dark red represents a high positive correlation. The cell value denotes correlation coefficient (r) values. NOB = number of branches, DTF = number of days to flowering (d), DTM = number of days to maturity (d), FL = fruit length (cm), FWD = fruit width (cm), FPC = number of fruits per cluster, NFPC = number of flowers per cluster, PLTHT = plant height (cm), TFW = total fruit weight per plot (kg), DTH = number of days to first harvest (d), FPP = number of fruits per plot, VITC = vitamin C (mg 100 g−1), BETAC = β-carotene (mg 100 g−1), LCOP = lycopene (mg 100 g−1), TTA = titratable acidity (%), TSS = total soluble solid (°Brix), pH = fruit juice pH. *,**,*** significant at 0.05, 0.01 and 0.001 probability levels, respectively. ns = nonsignificant.
Principal component analysis (PCA) was based on the measured agronomic and physico-chemical traits (Supplemental Table S3). The first four principal components (PCs) with eigenvalues > 1 accounted for approximately 73% of the total variation among the accessions. The first and second PCs explained 37% and 16% of the total variation among the accessions, respectively. The proportion of variance explained by the third PC was 12% and the fourth PC accounted for 8% of the total variation. The PCs loading visualized by the PCA biplot shows the contributions of the measured traits to PC1 and PC2 (Fig. 3). The vectors of fruit width, fruit juice pH, total soluble solid, titratable acidity number of days to first harvest, flowering, and maturity points in the direction of PC1. The strength of vectors of these traits denotes a strong positive influence on PC1. Conversely, the vectors of number of branches, plant height, number of fruits per plot and fruits per cluster points to the negative side of PC1, indicating a strong negative influence on PC1. Vitamin C, fruit length, total fruit weight per plot, β-carotene, and lycopene had a strong influence on PC2. Besides, the color gradient shows the contribution of each trait to the PCs. The traits with vector of lighter blue color indicates higher contributions to the PCA model while the traits with a vector of darker blue color indicates lower contributions. In agreement with Pearson's correlation coefficients illustrated in Fig. 2, vectors of numbers of days to flowering, maturity, first harvest, and fruit juice pH pointing in the same direction with acute angles indicate a positive correlation among them. Likewise, the clustering of the vectors of numbers of branches, fruits per cluster, flowers per cluster and fruits per plot suggest a positive correlation among them. On the other hand, the vector of fruit width pointing in the opposite directions of the numbers of branches, fruits per cluster, flowers per cluster, and fruits per plot with obtuse angles suggest negative correlations. Superimposing the accessions on the trait plots (Fig. 3, biplot on the left) showed that NHTO-0569 is unique for late flowering and harvesting combination while NHTO-0259 was superior in numbers of fruits per cluster and fruits per plot. Similarly, NHTO-0572 is unique for numbers of branches and flowers per cluster in agreement with Supplemental Table S1.
Figure 3.
A two-dimensional principal component analysis (PCA) showing the relationships among the 17 agronomic and physico-chemical traits and the 25 tomato accessions and checks evaluated. The first two components, PC1 (37%) and PC2 (16%) explaining the highest variance were plotted on the x-axis and y-axis, respectively. The arrows indicate traits contributing to the respective PCs and the correlation between traits can be determined by the close arrow proximity. NOB = number of branches, DTF = number of days to flowering (d), DTM = number of days to maturity (d), FL = fruit length (cm), FWD = fruit width (cm), FPC = number of fruits per cluster, NFPC = number of flowers per cluster, PHT = plant height (cm), TFW = total fruit weight per plot (kg), DTH = number of days to first harvest (d), FPP = number of fruits per plot, VITC = vitamin C (mg 100 g−1), BETAC = β-carotene (mg 100 g−1), LCOP = lycopene (mg 100 g−1), TTA = titratable acidity (%), TSS = total soluble solid (°Brix), PH = fruit juice pH.
The heatmap and dendrogram provided additional support to the PCA by arranging the measured traits into distinct clusters based on their correlation. The dendrogram represents similarity in the performance of the accessions based on the selected traits, showing diversity among the tomato accessions. The tomato accessions were classified into two main groups. Cluster I consisted of four accessions and cluster II had 21 accessions which was further divided into two sub-clusters (II 'a' and II 'b'). The first sub-cluster (II 'a') had 10 accessions including the accessions identified by RSI as superior for the number of fruits per plot, fruit weight, lycopene, and β-carotene while Cluster II 'b' comprises 11 accessions including the checks. Accessions that were tall with high numbers of fruits per cluster, flowers per cluster, fruits per plot, and branches clustered together (Figs 1 & 4). The four accessions in cluster I, had traits associated with fruit yield in common (number of fruits per plot). The accessions in cluster II 'a' and II 'b' had few traits in common and differed for other traits. Traits of the accessions in cluster II 'a' were a high count of branches, tall plants, high fruit weight per plot, and considerable physico-chemical traits. The accessions in this cluster strike a balance between agronomic traits and tomato fruit nutritional quality. The accessions in cluster II 'b' were either elongated or round, late flowering, late maturing and late harvesting with a substantial amount of lycopene and vitamin C content.
Figure 4.
Hierarchical clustering and heatmap of tomato accessions and checks based on the scaled values of the measured traits. Each row represents an accessions, and each column indicates a measured trait. Accessions are clustered based on their measured traits, and the traits groups are clustered based on their correlation. The traits that are clustered together have a high positive correlation. Cells with red and blue colours have high and low relative appearances, respectively. NOB = number of branches, DTF = number of days to flowering (d), DTM = number of days to maturity (d), FL = fruit length (cm), FWD = fruit width (cm), FPC = number of fruits per cluster, NFPC = number of flowers per cluster, PHT = plant height (cm), TFW = total fruit weight per plot (kg), DTH = number of days to first harvest (d), FPP = number of fruits per plot, VITC = vitamin C (mg 100 g−1), BETAC = β-carotene (mg 100 g−1), LCOP = lycopene (mg 100 g−1), TTA = titratable acidity (%), TSS = total soluble solid (°Brix), pH = fruit juice pH.
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We appreciate the genetic resources unit of National Horticultural Research Institute, (NIHORT) Ibadan, Nigeria for providing the tomato accessions used in this study. We are grateful to the students of the Department of Crop Production and Soil Science, Faculty of Agricultural Sciences, Ladoke Akintola University of Technology, Ogbomoso, Nigeria, for their technical assistance.
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About this article
Cite this article
Olayinka AO, lbitoye DO, Aderibigbe OR. 2024. Unveiling phenotypic diversity among tomato (Solanum lycopersicum L.) accessions: a comprehensive analysis of agronomic and physico-chemical traits. Technology in Horticulture 4: e021 doi: 10.48130/tihort-0024-0018
Unveiling phenotypic diversity among tomato (Solanum lycopersicum L.) accessions: a comprehensive analysis of agronomic and physico-chemical traits
- Received: 14 May 2024
- Revised: 10 August 2024
- Accepted: 22 August 2024
- Published online: 12 September 2024
Abstract: The rising significance of tomato (Solanum lycopersicum L.) in human diet necessitates the continuous search for genotypes with favorable alleles for agronomic and nutritional properties from untapped genetic diversity. In this study, the phenotypic diversity of tomato accessions was assessed for agronomic and physico-chemical traits to identify accessions with potential horticultural traits that can be utilized in tomato improvement programs. A set of 23 accessions collected from the National Horticultural Research Institute (NIHORT), Ibadan, Nigeria, and two traditional varieties used as checks were evaluated in a 5 × 5 α-lattice design with three replicates at the Teaching and Research Farm of Ladoke Akintola University of Technology, Ogbomoso, Nigeria in the main cropping season of 2021. Data collected includes six physico-chemical parameters and 11 agronomic traits. Analysis of variance showed that accessions varied significantly (p < 0.001) for all of the traits measured. Wide variations were observed for some traits suggesting a considerable level of diversity among the accessions. Accession NHTO-0199, with the highest fruit weight, had a 59% yield advantage over the best traditional variety. The first two principal components accounted for 53% of the total variation among the tomato accessions. The patterns of variation were described by the phenological stages of flowering, fructifying, fruit maturation, plant height, fruit yield components, lycopene, and vitamin C content of the fruits. The cluster analysis delineated the accessions into three distinct clusters and hybridization between clusters may generate desired allelic combinations useful for developing unique variety. The following top five accessions: NHTO-0352, NHTO-0350, NHTO-0199, NHTO-0351, and NHTO-0346 had outstanding performances for fruit yield and physico-chemical traits based on Rank Summation Index. These superior accessions can be advanced for further improvement and may be used as sources of traits in crosses to develop new breeding lines.
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Key words:
- Characterization /
- Horticulture /
- Germplasm /
- Variation /
- Breeding /
- Nutritional composition