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Article

Development of Extra-Early Provitamin A Quality Protein Maize Inbreds with Resistance/Tolerance to Striga hermonthica and Soil Nitrogen Stress

by
Solomon A. Oyekale
1,2,
Baffour Badu-Apraku
3,*,
Victor O. Adetimirin
4,
Nnanna Unachukwu
3 and
Melaku Gedil
3
1
Pan African University Institute of Life and Earth Sciences (PAULESI), University of Ibadan, Ibadan PMB 5320, Oyo State, Nigeria
2
Department of Crop Production and Soil Science, Ladoke Akintola University of Technology, Ogbomoso PMB 4000, Oyo State, Nigeria
3
International Institute of Tropical Agriculture (IITA), Ibadan PMB 5320, Oyo State, Nigeria
4
Department of Crop and Horticultural Sciences, University of Ibadan, Ibadan PMB 5320, Oyo State, Nigeria
*
Author to whom correspondence should be addressed.
Agronomy 2021, 11(5), 891; https://doi.org/10.3390/agronomy11050891
Submission received: 15 March 2021 / Revised: 20 April 2021 / Accepted: 26 April 2021 / Published: 1 May 2021

Abstract

:
A hemiparasitic plant, Striga hermonthica (Del.) Benth and soil nitrogen stress are the key constraints to maize (Zea mays L.) productivity in sub-Saharan Africa, where commonly cultivated maize is the normal endosperm type that is deficient in provitamin A, tryptophan and lysine (PVATL). Seventy-six extra-early maize inbreds with provitamin A, tryptophan, and lysine qualities (TZEEIORQ) were developed to address these constraints, and four checks were assessed under Striga, low and high nitrogen conditions at three locations in Nigeria. The inbreds were further genotyped with two beta-carotene hydroxylase 1 (crtRB1) markers, and their seeds were quantified for provitamin A content. Significant (p < 0.01) genetic variations were observed for grain yield and other agronomic attributes of the inbreds under varying environmental conditions. Levels of PVATL for the inbreds ranged from 2.21–10.95 µg g−1, 0.04–0.08%, and 0.19–0.39%, respectively. Beta-carotene marker, crtRB1-3′TE, was polymorphic and grouped the inbreds into two. The marker was effective in identifying inbreds with moderate provitamin A content. Inbreds TZEEIORQ 5, TZEEIORQ 52, and TZEEIORQ 55 exhibited resistance to Striga, tolerance to nitrogen stress with moderate levels of PVATL and could be invaluable sources of favorable alleles for breeding nutritionally improved maize varieties with resistance/tolerance to Striga and soil nitrogen stress.

1. Introduction

Maize (Zea mays L.) is one of the major cereal crops in sub-Saharan Africa (SSA). The contribution of maize to human calorific intake is 50%, 30% and 15% for southern, eastern, and West and Central Africa (WCA), respectively [1]. Normal endosperm maize, known to be lacking in provitamin A [2], tryptophan and lysine (PVATL) [3,4], is a major component of the food fed to babies (from two to three-month-old) and children of preschool age; this is usually done with no supplements in many developing countries [5]. In SSA, vitamin A deficiency (VAD) has been reported in about 40% and 15% of children and pregnant women, respectively [6,7]. VAD causes night blindness, increased childhood mortality, delayed growth, and a depressed immune system [8,9]. On the other hand, tryptophan and lysine are important building blocks of protein required by humans and monogastric [10]. Tryptophan deficiency causes a reduction in food intake, reduction in growth rate, impairment of skeletal development, increased pain sensitivity, increased aggression and anxiety [11], while lysine deficiency results in fatigue and reduction in growth rate, among others.
Varieties of maize (in the late, intermediate, early and extra-early maturity groups) that can mitigate the effects of VAD [12,13,14] and protein malnutrition [15,16] have been developed. However, no maize hybrid or variety with adequate provitamin A, tryptophan, and lysine contents with extra-early characteristic (matures around 80–85 days), Striga resistance and tolerance to nitrogen stress is yet to be developed and commercialized in WCA. With a population growth rate greater than 2% for many SSA countries, the need for maize has been predicted to triple by 2050 [17]. The current maize grain yield in farmers’ fields in the subregion is abysmally low to meet the projected demand. The mean maize grain yield in Nigeria is 1.8 t ha−1, while 2.4 t ha−1 has been reported for SSA; these values are lower than the 5.6 t ha−1 mean grain yield of the crop all over the world [18]. The lower yield of maize in the subregion is attributed to a combination of factors, namely: Striga hermonthica parasitism [19], stem borer attacks [20], low and declining soil nitrogen [21], recurrent drought [22], and more recently armyworm invasion [23]. Reduction in grain yield of maize due to nitrogen stress can be as high as 52% [24], while drought can result in 34% yield loss [25]. Striga hermonthica alone can cause about 53.7% [26] to 100% [27] yield losses, armyworms about 47% [28] and stem borers about 21% [29]. The widespread cultivation of maize with normal endosperm features and low grain yield of the crop is expected to exacerbate the nutritional problems in SSA.
Striga hermonthica is widespread in the savannas of WCA, where environmental conditions are considered excellent for maize production. Maize yield losses due to Striga stress varied from 30–90%, and the parasite can cause total crop failure where the infestation is severe, compelling farmers to abandon their fields [19]. Adetimirin and colleagues [26] identified ears per plant as the primary component of yield most severely affected under Striga infestation. Effects of Striga are most severe in the soils with low nutrients, particularly nitrogen, [30] which is a key constraint in major maize-producing areas of WCA [31,32]. Oikeh and colleagues [33] reported that most farmers in WCA grow maize under low nitrogen stress. This is because the soils of the area are inherently low in nitrogen, and many farmers cannot afford inorganic fertilizers to augment the low soil nitrogen [34]. About 50% reduction in maize yield has been reported due to nitrogen deficiency [35]. Therefore, developing improved maize with Striga resistance, tolerance to nitrogen stress, extra-earliness, provitamin A, and quality protein maize traits offers a sustainable and economic strategy to combat Striga and soil nitrogen stresses while improving human nutrition and health in WCA.
Seventy-six maize-inbred lines have been developed by the International Institute of Tropical Agriculture (IITA) with a view to breeding extra-early maize hybrids/varieties that combine improved levels of PVATL and tolerance/resistance to multiple stresses in SSA. However, the reactions of these newly developed inbreds have not been thoroughly investigated under Striga and nitrogen stress. Although the inbreds with appropriate modification of endosperm for tryptophan and lysine were repeatedly selected for using lightbox [16] and kernels with relatively deep orange color were assumed to have increased provitamin A levels, information on the per se PVATL concentration of each of the inbreds is lacking. The information will facilitate selecting suitable inbreds as parents in hybrid breeding programs in the subregion.
The deep orange kernel color in maize, though presumed to correlate with provitamin A levels, has been reported not to be sufficiently indicative of the levels of beta-carotene [2,36]. Safawo and colleagues [2] reported that using high-performance liquid chromatography (HPLC) is very costly in breeding maize with increased provitamin A and proposed that marker-assisted selection could be more efficient than using only maize kernel color for beta-carotene content—A major provitamin A carotenoid. Beta-carotene hydroxylase 1 (crtRB1-3′TE and crtRB1-5′TE) is one of the three major genetic markers, which play an important role during the accumulation of beta-carotene in the endosperm of maize [37]. The crtRB1-3′TE marker is a favorable DNA marker in maize for effecting an increase in the level of beta-carotene from 2 to about 10-fold in the kernels [38,39]. This study, therefore, aimed at developing and identifying Tropical Zea extra-early provitamin A quality protein maize inbred (TZEEIORQ) lines that possess tolerance/resistance to Striga and tolerance to nitrogen stress and determine the usefulness of beta-carotene hydroxylase 1 (crtRB1-3′TE and crtRB1-5′TE) in identifying inbreds with high kernel provitamin A content.

2. Materials and Methods

2.1. Germplasm

In 2007, IITA initiated a breeding program to develop varieties of maize that combine drought tolerance, tolerance to low nitrogen stress, Striga resistance and high PVALT for WCA. A variety of extra-early maize possessing Striga resistance and quality protein traits (with both yellow and orange endosperm color) was crossed to Syn-KU1409/DES/1409 (OR2), a donor of beta-carotene alleles. The resulting cross was backcrossed to multiple stress-resistant varieties, TZEE-Y STR QPM. Following the backcrossing that was aimed at introgressing genes for increased provitamin A content of maize, a total of 76 inbred lines were developed after seven cycles of selfing and selection for agronomically desirable traits.

2.2. Research Locations, Experimental Design, and Field Management

Evaluation of the 76 inbreds and the four extra-early normal endosperm checks (Supplementary Materials Table S1) was carried out under artificial Striga environment at Abuja (9°15′ N, 7°20′ E, 1700 mm annual precipitation, 300 m altitude) in 2016 and Mokwa (9°18′ N, 5°4′ E, 1100 mm annual precipitation, 457 m altitude) in 2017; the two locations are found in the southern Guinea savanna agroecological zone of Nigeria. Ethylene gas was injected into the soil following land preparation—To rid the soil of Striga seeds native to it. The gas was applied 12 cm deep into the soil. This activity was repeated at intervals of 100 cm to ensure good coverage of the field with the gas. Seeds of Striga obtained from the fields previously planted to sorghum were used for artificial infestation, following the procedure described by [31]. Well-sieved sand and the Striga seeds were mixed carefully by weight in the ratio 99:1. Before planting maize seeds per hill, each hill was infested with Striga seed-sand mixture (8.5 g containing about 5000 germinable seeds of Striga hermonthica). At four weeks after planting, NPK fertilizer (NPK 15–15–15) was applied at the rate of 30 kg ha−1 of K2O, P2O5 and N to the established plants. All other unwanted plants, apart from Striga, were controlled by hand-pulling.
In addition, the 76 inbreds and the four checks were evaluated in adjacent blocks in high and low soil nitrogen environments both at Ile-Ife (7°28′ N, 4°33′ E, 1350 mm annual precipitation, 244 m altitude) in the rainforest agroecological zone in 2016 and Mokwa in 2017. The soils at Mokwa and Ile-Ife are Luvisol and Alfisol, respectively [40]. Depletion of N from the low-N fields at Mokwa and Ile-Ife was achieved through regular planting of maize for many years and removing the stover following every harvest. At both locations, soil samples obtained (with a soil auger) before land preparation from zero to fifteen-centimeter depth were subjected to analysis. The total potassium (K), phosphorus (P) and nitrogen (N) contents of the soils were determined by Kjeldahl digestion and colorimetric method [41]. The soil analyses at Ile-Ife and Mokwa used in this study are the same as reported by [42]. Following the soil test, the total N available in the high- and low-N plots were augmented with urea to 90 and 30 kg N ha−1, respectively. Nitrogen fertilizer was applied, in two equal splits, under nitrogen experiments at 2 and 4 weeks after planting (WAP). In addition, 60 kg K ha−1 as muriate of potash (K2O) and 60 kg P ha−1 as single superphosphate (P2O5) were applied to the two N treatments at 2 WAP.
A 10 × 8 alpha lattice design, replicated two times, was used for all evaluations in the Striga, high- and low-N trials. Single row plots, 3 m long, were used under the Striga experiment. Within-row spacing was 0.40 m, while between-row spacing was 0.75 m. However, in 2016, single -ow plots 4 m long were used during evaluations in high- and low nitrogen fields. Three maize kernels were sown per hill, and the seedlings thinned to two per hill at 2 WAP. In low- and high-N fields, weeds were controlled by applying atrazine and gramoxone, supplemented with hand weeding. Fall armyworms (Spodoptera frugiperda) were controlled by using ampligo at 300 mL ha−1. Ampligo contained 100 g per liter of chlorantraniliprole and 50 g per liter of lambda-cyhalothrin.

2.3. Collection of Data on Various Characters

Data collection was carried out on plants per plot. The traits measured include days to 50% anthesis (DA) and 50% silking (DS), respectively determined as the total number of days from sowing to the time 50% of the plants had shed pollen and showed silk extrusion. Anthesis-silking interval (ASI) was calculated by subtracting DA from DS. Plant height (PLHT) represented the distance from the first tassel branch to the base of the plant, while ear height (EHT) was recorded as the distance from the node bearing the topmost ear (in prolific lines) to the base of the maize ear. In addition, stalk lodging (SLPER) was recorded as the proportion of plants with the broken stalk at (or below) the node bearing the uppermost ear. Ear aspect (EASP) was determined on a scale of 1–9, where 1 = uniform, large, clean and well-filled ears, and 9 = variable, small, rough and poorly filled ears [43]. Husk cover was assessed on a scale of 1–9, where 1 = tightly arranged husks extending beyond the tip of the ear and 9 = husks loosely arranged with ear tip exposed. The number of ears per plant (EPP) was calculated as the ratio of the total number of harvested ears for each plot to the number of harvested plants in the plot. For the high nitrogen and Striga environments, grain yield was calculated from ear weight, on the assumption of 80% shelling percentage, adjusted to 15% moisture content.
Plant aspect (PASP), assessed only under low- and high-nitrogen conditions, was scored on a scale of 1–9 using plant type and overall appeal, where 1 = excellent plant type and 9 = poor plant type. Stay-green characteristic (STGR) was determined under low soil nitrogen alone on a scale of 1–9, where 1 = nearly all foliage were lush green, and 9 = practically all foliage were dead. Determination of grain yield under low-N involved shelling of harvested ears per plot, weighing of the kernels and measuring of grain moisture content. Afterward, grain yield was calculated, per plot, using grain weight adjusted to 15% moisture content.
Additional data collected under Striga infestation were: host plant damage (by Striga) syndrome rating at 8 and 10 WAP, an indication of Striga tolerance [27,40] and the number of emerged Striga plants, which is indicative of resistance to Striga. Host plant damage was scored per plot on a scale of 1–9, where 1 = no visible damage, suggesting plant with normal growth and high tolerance to Striga, and 9 = severe damage or total collapse of the plant, indicating high susceptibility to Striga [19,44].

2.4. Identification of Beta-Carotene Rich Inbreds Using Allele-Specific Beta-Carotene Markers-crtRB1-3′TE and crtRB1-5′TE.

Leaf samples for each of the inbred genotypes were accumulated from seven to eight plants at 3 WAP. Thereafter, the samples were lyophilized using Free Zone 18 liter console dry system (Labconco Inc., Missouri, USA). Genomic DNA was extracted from the lyophilized samples using a DNA extraction protocol, modified cetyl trimethyl ammonium bromide (CTAB), described by [45]. The following markers, according to [37], were used to identify crtRB1-3′TE: (i) the forward primer (F) (5′ACACCACATGGACAAGTTCG 3′), (ii) the first reverse primer (R1) (5′ACACTCTGGCCCATGAACAC 3′) and (iii) the second reverse primer (R2) (5′ACAAGCAATACAGGGGACCAG3′). In addition, crtRB1-5′TE was identified with: (i) the forward primer (F) (5′TTAGAGCCTCGACCCTCTGTG 3′) and (ii) the reverse primer (R) (5′AATCCCTTTCCATGTTACGA 3′). A polymerase chain reaction (PCR) was conducted in 25 µL volume for each of the functional markers. The quantity of genomic DNA, beta-carotene DNA markers and other reaction mixtures used are, as shown in Table 1. The thermocycler standard cycling conditions provided by [37] were used for the PCR. Resolution of amplicons was carried out on 2% agarose gel. DNA bands were viewed on a UV Transilluminator.
Photographs of the bands were taken and then scored for absence or presence of the favorable allele of crtRB1-3′TE gene (allele 1) and favorable allele of crtRB1-5′TE gene (allele 2) [39].

2.5. Generation and Processing of Seed Samples of Inbreds for Carotenoid, Tryptophan, and Lysine Analyses

The first two and last two plants in each plot, under high nitrogen conditions at Mokwa and Ile-Ife in 2016, were self-pollinated to develop seed samples of S8 lines that were used for carotenoids [46] tryptophan and lysine analyses. The ears were harvested at each location, dried, processed and stored at 4 °C [12]. Thereafter, two samples, each containing 60 kernels, were prepared for analyses; the first sample was used for carotenoids analysis, while the second was used for lysine and tryptophan analyses. Analyses for carotenoids, lysine and tryptophan were carried out at CIMMYT, Mexico. Samples of 20–30 maize kernels of each inbred were frozen at −80 °C until when required for analysis, at which time they were ground to (0.5 µm) powder. Carotenoids analysis was carried out using ultra-high-performance liquid chromatography (UPLC) (Waters, Milford, MA, USA) Apex Track. It involved extraction, separation, and quantification by UPLC using protocols described by [47]. Beta-carotene (13-cis, all-trans and 9-cis isomers), beta-cryptoxanthin, zeaxanthin and lutein were measured. Overall, provitamin A content of each inbred line was calculated thus: beta-carotene (13-cis + all-trans + 9-cis) + 0.5 (beta-cryptoxanthin) [46]. The amount of lysine and tryptophan in whole grains of the inbred lines were determined as reported by [47]; briefly, Kjeldahl apparatus was used to grind and de-fat whole grain sample for each inbred line, followed by the addition of papain to hydrolyze the protein. A purple coloration was induced with the addition of a combination of glacial acetic acid and H2SO4. The deepness/concentration of the induced color was quantified using a spectrophotometer at 560 nm. The percent tryptophan content of each inbred line was then obtained from the reading of the spectrophotometer converted to percent tryptophan. Two measurements were taken for each inbred line.

2.6. Statistical Analysis

Prior to statistical analyses, log transformation was carried out to achieve homogeneity of variances for data collected on Striga (hostplant) damage rating and the number of emerged Striga plants. Year–location–treatment combination was considered a test environment [48]. Analysis of variance (ANOVA) was first carried out for each research condition (Striga, low and high soil nitrogen). Thereafter, a combined ANOVA was carried out across the six environments for yield and other characters. The performance of the inbreds was determined under Striga, low nitrogen and across all research environments using the following base indices:
(i)
Striga base index = (2YLI + EPPSDR1SDR2 − 0.5ESP1 − 0.5ESP2).
where YLI = yield of maize in Striga-infested plots (kg ha−1), EPP = number of ears per plant, SDR1 and SDR2 = Striga damage ratings at 8 and 10 WAP, ESP1 and ESP2 = number of emerged Striga plants at 8 and 10 WAP [49];
(ii)
Low nitrogen base index = (2YLDL + EPP − (PASP + ASI + EASP + STGREN)).
where YLDL = yield of low nitrogen plots (kg ha−1), EPP = ears per plant, PASP = plant aspect, ASI = anthesis-silking interval, EASP = ear aspect, STGREN = stay-green characteristic [50].
(iii)
Multiple-character—base-index = (2YLD + EPP − 0.5ESP1 − 0.5ESP2SD1SD2 − (PASP + EASP + STGREN)) [5]
where YLD = yield across six research environments, EPP = number of ears per plant across research environments, ESP1 = number of emerged Striga plants at 8 WAP under Striga-infested environment, ESP2 = number of emerged Striga plants at 10 WAP under Striga-infested environment, SD1 = Striga damage rating at 8 WAP under Striga-infested environment, SD2 = Striga damage rating at 10 WAP under Striga-infested environment, PASP = plant aspect across high- and low nitrogen environments, EASP = ear aspect across six research environments, STGREN = stay-green characteristic under low nitrogen environment [5].
Adjusted means for each character of each genotype were standardized to minimize the effects of the different scales used to measure them. In each case, a positive base index value suggested that the inbred was tolerant to that stress, whereas negative values were indicative of the susceptibility of the inbreds to the stress [5]. Chi-squared analysis was carried out to determine if the groups formed from the results of the molecular screening were associated with the amount of provitamin A in the inbreds determined by HPLC. In addition, stepwise regression of total provitamin A on provitamin A carotenoids was carried out.

3. Results

3.1. Mean Squares of Inbreds Evaluated in Striga-Infested, Low- and High Nitrogen Conditions

Results of ANOVA across six research conditions (two environments each of Striga infestation, low and high nitrogen) showed significant (p < 0.01) environment, inbred and inbred × environment variance for all traits except inbred × environment interaction mean square for EPP (Table 2). ANOVA under Striga-infested environments indicated significant (p < 0.01) environment, inbred and inbred × environment interaction variance for grain yield and other traits (Table 3). Similarly, the ANOVA under low nitrogen revealed significant (p < 0.01) environment, inbred and inbred × environment interaction variance for all characters, except environment variance for STGR (Table 3). ANOVA under high nitrogen environments indicated significant (p < 0.01) environment, inbred, and inbred × environment interaction mean squares for all traits, except environment mean squares for EPP and PASP, and inbred × environment interaction variance for PLHT, EHT and EPP (Table 3).

3.2. Performance of Inbreds for Grain Yield and Other Agronomic Traits and Identification of Striga-Resistant/Tolerant and Nitrogen Stress-Tolerant Inbreds

Out of the 80 inbreds evaluated under Striga, 34 were resistant/tolerant to Striga based on their positive Striga base index values (Table 4). Eighteen of the 34 lines had higher Striga base index values than the best check-TZEEI 73. The index values for the top ranking 15 lines ranged from 3.97 to 11.34 compared to 3.38 obtained for TZEEI 73 (Table 4). A total of 41 lines were identified as low nitrogen tolerant based on their low nitrogen base index values (Table 5). Of these lines, 12 had higher low nitrogen base index values (4.93–9.28) than TZEEI 73 (4.87)—The best Striga and low nitrogen tolerant checks were: TZEEIORQ 57, TZEEIORQ 21, TZEEIORQ 64, TZEEIORQ 53, TZEEIORQ 43, TZEEIORQ 55, TZEEIORQ 63, TZEEIORQ 20, TZEEIORQ 51, TZEEIORQ 42, TZEEIORQ 52, and TZEEIORQ 14 (Table 5).
Averaged over inbred lines, grain yield was 1064 kg ha−1 under Striga-infested environment, 1257 kg ha−1 under low nitrogen and 2120 kg ha−1 under high nitrogen; thus, compared to high nitrogen plots, grain yield reduction due to Striga and low nitrogen averaged 49.8% and 40.7%, respectively (Table 6). The number of ears per plant for these environments was 0.7, 0.7, and 0.8, respectively. Grain yield across the environments ranged from 658 kg ha−1 for TZEEIORQ 16 to 2337 kg ha−1 for TZEEIORQ 63 with an average of 1492 kg ha−1, while ears per plant ranged from 0.3 for TZEEIORQ 16 to 1.3 for TZEEIORQ 57 with a mean of 0.7. Ear aspect was lowest for TZEEIORQ 62 and TZEEIORQ 64 (3.2) and highest for TZEEIORQ16 (6.9) (Table 7). There were no significant differences in grain yield among the top five ranking inbreds (TZEEIORQ 57, TZEEIORQ 63, TZEEIORQ 42, TZEEIORQ 55, and TZEEIORQ 64), identified as resistant/tolerant to both Striga and nitrogen stresses based on the multiple character base index, and the best check TZEEI 73 (Table 6). Inbred TZEEIORQ 57 had the highest mean value (1.3) for ears per plant across research environments, but it had the lowest mean values for stay-green characteristic (1.7) under low nitrogen stress and Striga (host–plant) damage rating at 8 WAP (2.7) under Striga condition. The expression of these desirable attributes by the inbred contributed to its excellent performance across research environments.

3.3. Molecular Screening and Biochemical Analyses of Inbreds Derived from Tropical Zea Extra-Early Striga-Resistant Maize Population Improved for Provitamin A and Quality Protein Maize Properties

Of the two allele-specific provitamin A markers used, only crtRB1-3′TE was polymorphic among the inbred lines (Figure 1 and Figure 2). The polymorphic marker differentiated the 76 biofortified lines into two groups (Table 7). The first group comprised 16 inbred lines with the favorable allele of crtRB1-3′TE, while the second group of 60 inbred lines was without the favorable provitamin A allele. HPLC did not detect beta carotene and provitamin A in two of the 16 samples possessing the favorable allele of crtRB1-3′TE (Table 7). Levels of provitamin A in all the inbred lines analyzed ranged from 2.21 µg g−1 for TZEEIORQ 27 to 10.95 µg g−1 for TZEEIORQ 54 with an average of 6.18 µg g−1. A total of 12 of the 16 inbreds with the favorable allele of crtRB1-3′TE marker had provitamin A levels greater than the mean provitamin A value (Table 7). Two inbred lines (TZEIORQ 64 and TZEEIORQ 73) with the favorable provitamin A allele had lower levels of provitamin A than the average provitamin A value for the inbred lines analyzed (Table 7). Chi-squared analysis showed a significant association (p < 0.01) between the desirable provitamin A marker allele and the provitamin A content of the inbred lines (Table 8). Stepwise regression of provitamin A carotenoids (beta-carotene and beta-cryptoxanthin) on the overall provitamin A in the inbreds showed significant contributions, of 81.9% and 18.3% for beta-carotene and beta-cryptoxanthin, respectively, to the levels of total provitamin A in the inbreds studied (Table 9). Tryptophan content varied from 0.04% in TZEEIORQ 53 to 0.08% in TZEEIORQ 72 with an average of 0.05%, while lysine content ranged from 0.19% in TZEEIORQ 50 to 0.39% in TZEEIORQ 74 with a mean of 0.27% (Table 10). In all, 39 inbred lines had provitamin A levels above 6.18 µg g−1; these inbred lines showed different combinations of Striga tolerance/resistance, low nitrogen stress tolerance, provitamin A, tryptophan and lysine contents (Table 7 and Table 10). Three lines viz. TZEEIORQ 55, TZEEIORQ 5 and TZEEIORQ 52 combined high provitamin A content (>10.0 µg g−1), tolerance/resistance to Striga and low nitrogen stress with improved tryptophan and lysine contents—Not lower than the average values of 0.05 and 0.27%, respectively (Table 7 and Table 10). An inbred line with a positive base index value was identified as resistant/tolerant to the stress, while a negative base index value indicated susceptibility to the stress.

4. Discussion

In the moist savanna of WCA, where maize is considered to have great potential, Striga hermonthica [19], soil nitrogen stress [21], and recurrent drought [22] limit maize production and productivity. In the present study, Striga hermonthica reduced grain yield by 49.8%, while the average yield loss due to nitrogen stress was 40.7%. These stresses present unique, challenging conditions as evidenced by the significant variations obtained for grain yield and the majority of the research environments’ characteristics. Abiotic and biotic stresses in the WCA savanna often occur simultaneously in farmers’ fields [31], resulting in geometric losses in yield. In an earlier study, [26] reported a 53.7% reduction in maize grain yield due to Striga stress alone and 85% yield loss when in combination with drought stress. Although the grain yield reduction obtained under Striga infestation in this study is lower than the 68% yield reduction reported by [51], it is higher than the 39% reported by [49]. In addition, the 40.7% yield reduction under low nitrogen stress in this study is higher than the 35% reduction in yield reported by [32]. The differences in yield reduction observed in this study and those earlier reported could be attributed to the dissimilarities in the genotypes evaluated, severity and uniformity of the stresses and other management practices.
Of the nutrient elements in tropical soils, nitrogen is the most restraining [21,32]. Low soil nitrogen is widespread in WCA, where average fertilizer application is 6.11 kg ha−1, an amount lower than the 8.89 kg ha−1 average fertilizer consumption in SSA [52], a consequence of non-availability and/or non-affordability by the predominant resource-limited farmers in the area [34]. The cultivation of extra-early maize varieties is one of the strategies for mitigating end-of-season drought. Consequently, developing extra-early maturing maize germplasm, which combines tolerance/resistance to Striga and nitrogen stress, is an important approach for improving maize productivity under the biotic and abiotic stresses of low nitrogen, Striga and drought in WCA. The incidence of Striga in farmlands is erratic and often influenced by environmental factors. Maize cultivars developed for the savanna of WCA, therefore—in addition to showing resistance/tolerance to these stresses—must also demonstrate capability for high-performance in nonstress environments.
In the current study, the inbreds TZEEIORQ 55, TZEEIORQ 52 and TZEEIORQ 5 were among the thirteen most promising extra-early provitamin A quality protein maize inbreds identified across the research environments (evidenced by their relatively high and positive multiple-character base index values). Coupled with their performance under each of the stresses, these inbreds showed tolerance/resistance to Striga, tolerance to low nitrogen, and better performance in stress-free environments. The inbreds also had moderate to relatively high levels of tryptophan and lysine. The consistently higher base index values of TZEEIORQ 55 than those of TZEEI 73, in each and across environments, indicated the outstanding performance of the inbred across the research conditions. The different base indices used in this study integrated several important traits under the respective stresses. For example, under Striga, high yield, reduced host–plant damage (tolerance index), and reduced number of emerged Striga plants (resistance index) were important for sustainability. While tolerance ensured high yield and low host damage, resistance reduced the number of emerged parasites and buildup of the seeds of Striga in the soil [44,52].
The significant genotype × environment interaction obtained in the current study indicated that the genotypes varied in their response patterns to each of the stresses and nonstress conditions. In effect, performance under the conditions in any of the research environments cannot be used to extrapolate performance in other environments. These results justified our approach of developing a considerable number of lines from the source population and screening the lines for their responses under the different stresses and in stress-free environments, thus allowing identifying lines that possessed alleles for both tolerance/resistance to the stresses and good performance under nonstress conditions. Ifie [53] reported significant genotype × environment interaction for yield and other traits of 100 early-maturing maize inbreds studied under Striga and low nitrogen environments. Similarly, Akaogu and colleagues [49] observed significant genotype × environment interaction for many characters of 90 extra-early yellow maize inbreds in Striga-free and Striga-infested environments. The similarity in the results of this study and those of the previous authors suggests that the environments where the maize genotypes were evaluated might be similar.
While breeding for improved levels of provitamin A in maize, several workers have identified and used different molecular markers linked to provitamin A carotenoids [37,39]. Of the two provitamins A markers used in the present study, only crtRB1-3′TE was polymorphic among the inbreds. In a previous study, [12] reported polymorphism for both markers. The variation in the results of this study and that of [12] might be attributed to differences in the genetic materials used for the studies. The allele 1 of crtRB1-3′TE has been reported to bring about a 2 to 10-fold favorable increase in kernel beta-carotene in maize [38,39]. The range of provitamin A levels (2.21–10.95 µg g−1) and the average beta-cryptoxanthin (5.25 µg g−1) observed in the present study are comparable to values (provitamin A levels = 3.01–11.90 µg g−1; average beta-cryptoxanthin = 4.23 µg g−1) obtained by [54]. The similarity in our results is suggestive of the fact that the inbreds used in this study may be genetically related, concerning provitamin A, to those studied by [54]. The significant chi-squared value obtained between the results of the molecular markers and provitamin A content of the inbred lines indicates that the marker was associated with the levels of provitamin A in the inbreds. This suggests that the marker was effective in identifying inbreds with increased levels of provitamin A.
All the inbreds used in the current study, with or without the favorable marker alleles, had lower provitamin A content than the HarvestPlus target of 15 µg g−1 [55]. The lines with relatively high content of provitamin A in this study (7.50–10.25 µg g−1) can, therefore, be regarded as being moderate in provitamin A. Of the 60 inbred lines without the favorable marker allele, seven had provitamin A content in the range 7.50–10.25 µg g−1. This suggests the involvement and effectiveness, in some of the inbred lines, of other provitamin A carotenoid(s) apart from the one linked to the favorable allele of the crtRB1-3′TE. The results of the stepwise regression analyses of the provitamin A carotenoids on the total provitamin A levels in the inbreds revealed that β-cryptoxanthin (with half the vitamin A activity of β-carotene) also contributed significantly to the increased levels of total provitamin A in the inbred lines with or without the favorable allele of crtRB1-3′TE. Similar to our result is the finding of [54], who observed a strong positive relationship between β-cryptoxanthin and provitamin A concentration in maize.
Inbreds TZEEIORQ 55, TZEEIORQ 72 and TZEEIORQ 74 had relatively high levels of tryptophan and lysine, indicating that they possess quality protein properties. Kostadinovic [56] reported a similar range of 0.06–0.08% tryptophan for 13 maize lines. In general, inbreds TZEEIORQ 58, TZEEIORQ 55, TZEEIORQ 5, TZEEIORQ 52, TZEEIORQ 57, TZEEIORQ 62, TZEEIORQ 72, TZEEIORQ 59 and TZEEIORQ 54 had the highest levels of PVATL.
The lines developed in the present study, which are the first set of extra-early maize lines with combined resistance/tolerance to Striga and tolerance to nitrogen stress and moderate levels of PVATL, showed exploitable genetic variation for these traits. In addition to their use in developing open-pollinated maize varieties/hybrids for increasing maize productivity in WCA, the lines offer promise for addressing the prevalent problems of VAD and protein deficiency in the subregion. Opportunities exist to further improve the levels of these nutrients in the inbreds through selection.

5. Conclusions

Exploitable genetic variability exists for grain yield and other agronomic characters of the TZEEIORQ lines studied under Striga, low- and high-nitrogen soil conditions. The beta-carotene marker, crtRB1-3′TE, was polymorphic and grouped the inbreds into two. The marker was effective in identifying inbreds with moderate provitamin A content. Inbred lines TZEEIORQ 55, TZEEIORQ 52 and TZEEIORQ 5 combined resistance/tolerance to Striga and nitrogen stress with improved performance under high nitrogen conditions. These inbreds are invaluable pools of favorable alleles in breeding for extra-earliness, Striga resistance, nitrogen stress tolerance, and PVATL.

Supplementary Materials

The following are available online at https://www.mdpi.com/article/10.3390/agronomy11050891/s1, Table S1. Pedigree of 76 extra-early maturing provitamin A quality protein maize inbreds derived from a tropical Zea Striga resistant provitamin A quality protein maize population along with four checks used in this study.

Author Contributions

Conceptualization, data curation, formal analysis, funding acquisition, investigation, methodology, software, original draft, review & editing, S.A.O.; conceptualization, data curation, investigation, methodology, funding acquisition, project administration, resources, supervision, validation, review & editing, B.B.-A.; supervision, validation, review and editing, V.O.A.; data curation, formal analysis, methodology, investigation, review and editing, N.U.; Conceptualization, funding acquisition, methodology, resources, review and editing, M.G. All authors contributed to manuscript revision, as well as read and approved the submitted version. All authors have read and agreed to the published version of the manuscript.

Funding

The information presented in this article is a part of the PhD research of the first author funded by the Pan African University Institute of Life and Earth Sciences (Including Health and Agriculture), University of Ibadan, Ibadan, Nigeria and the Drought Tolerant Maize for Africa Project of the Bill and Melinda Gates Project (OPP1134248), IITA, Ibadan, Nigeria. The funding bodies did not participate in the design, collection, analysis, interpretation of data, and writing the manuscript.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The datasets used/or analyzed during the current study, as well as the materials used, are available from the corresponding author on reasonable request.

Acknowledgments

The authors, especially the first author, are grateful to the organizations that funded the PhD research. The technical supports by the staff of the Maize Improvement Program and Bioscience Center of IITA, in the field and laboratory, respectively, are appreciated.

Conflicts of Interest

The authors declare that they have no competing interests.

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Figure 1. Gel image of crtRB1-3′TE PCR product resolved on a 2% agarose gel indicating polymorphism of the marker for beta carotene allele.
Figure 1. Gel image of crtRB1-3′TE PCR product resolved on a 2% agarose gel indicating polymorphism of the marker for beta carotene allele.
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Figure 2. Gel image of crtRB1-5′TE PCR product resolved on a 2% agarose gel indicating monomorphism of the marker for beta carotene allele.
Figure 2. Gel image of crtRB1-5′TE PCR product resolved on a 2% agarose gel indicating monomorphism of the marker for beta carotene allele.
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Table 1. Cocktail and reaction mix used for polymerase chain reaction. a Primer 3 R was not used under crtRB1-5′TE.
Table 1. Cocktail and reaction mix used for polymerase chain reaction. a Primer 3 R was not used under crtRB1-5′TE.
ReagentVolume per Reaction (in µL)
crtRB1-3′TEcrtRB1-5′TE
Nuclease-free H2O15.7515.65
10 × PCR buffer2.502.50
50 mM MgCl21.001.50
25 mM dNTP0.200.20
Primer1 R0.801.00
Primer2 F0.801.00
Primer3 R0.80- a
DMSO1.001.00
Taq0.150.15
Template DNA2.002.00
Total volume25.0025.00
Table 2. Mean squares for grain yield and other agronomic traits of extra-early provitamin A quality protein maize inbreds evaluated across six (low-N, Striga-infested and high-N) environments at Ile-Ife, Mokwa and Abuja in Nigeria in 2016 and 2017.
Table 2. Mean squares for grain yield and other agronomic traits of extra-early provitamin A quality protein maize inbreds evaluated across six (low-N, Striga-infested and high-N) environments at Ile-Ife, Mokwa and Abuja in Nigeria in 2016 and 2017.
SOURCEDFYIELDDSDAEASPEPPPLHTEHTHUSKSLPERDF PASP
(kg/ha)(Days)(Days)(1–9) (cm)(cm)(1–5)(%) (1–9)
Env569,659,566.00 ***1062.74 ***574.96 ***46.70 ***1.87 ***91,895.65 ***17,831.99 ***388.06 ***3995.50 ***39.86 ***
Rep (Env)64,190,018.80 ***20.33 ***10.89 ***4.44 ***0.26 **1837.52 ***394.56 ***5.33 ***291.70 ***40.98 *
Blk (Env × Rep)845,66,701.80 ***7.84 ***5.90 ***2.15 ***0.12 **241.79 **148.87 ***0.81 **111.00 **560.78 ***
Inbred791,519,243.80 ***53.64 ***54.35 ***6.41 ***0.20 ***1112.78 ***242.04 ***1.72 ***154.54 ***793.19 ***
Inbred × Env382526,858.80 ***7.50 ***5.98 ***1.87 ***0.10 ns367.82 ***118.31 ***1.02 ***118.04 ***2300.69 ***
Error368263,908.73.852.370.890.08147.2977.260.573.662530.35
*, **, *** = significant at p < 0.05, p < 0.01 and p < 0.001, respectively; ns = not significant; DF = degrees of freedom; YIELD = grain yield; DS = days to 50% silking; DA = days to 50% anthesis; EASP = ear aspect (rated on a scale of 1–9); EPP = number of ears per plant; PLHT = plant height; EHT = ear height; HUSK = husk cover (rated on a scale of 1–5); SLPER = percent stalk lodging; PASP = plant aspect evaluated across four (two low-N and two high-N) environments (on a scale of 1–9). DF of sources were adjusted for missing plots.
Table 3. Mean squares for grain yield and other agronomic traits of extra-early provitamin A quality protein maize inbreds evaluated under Striga, low-N and high-N environments at Abuja, Mokwa and Ile-Ife in Nigeria in 2016 and 2017.
Table 3. Mean squares for grain yield and other agronomic traits of extra-early provitamin A quality protein maize inbreds evaluated under Striga, low-N and high-N environments at Abuja, Mokwa and Ile-Ife in Nigeria in 2016 and 2017.
SOURCEDFYIELDDADSPLHTEASPEHTHUSKEPPSLPERSDR1SDR2ESP1ESP2
(kg/ha)(Days)(Days)(cm)(1–9)(cm)(1–5)(1–9)(%)(1–9)(1–9)
Under Striga
Env110,156,972.90 ***878.01 ***1218.51 ***32,041.36 ***32.92 ***281.01 **55.82 ***1.12 ***958.53 **54.01 ***19.48 ***2612.84 ***8870.10 ***
Rep (Env)2338,039.56 ns4.27 ns19.79 ns31.02 ns1.50 ns29.64 ns13.37 ***0.04 ns105.15 ns2.32 *10.13 ***184.77 ***334.88 ***
Blk (Env × Rep)28741,044.44 ***11.12 ***16.49 **173.04 ns2.46 **86.09 ***1.09 ns0.10 *189.54 ns0.75 ns1.20 ns16.75 *78.23 ***
Inbred79515,964.45 ***27.79 ***30.28 ***244.47 ***2.92 ***63.14 **1.18 **0.08 *238.71 ***0.79 *1.38 **16.83 **39.36 *
Inbred × Env79424,495.41 **8.73 ***13.38 **262.15 ***2.40 ***85.60 ***1.42 ***0.08 *205.80 **0.97 **1.58 **16.54 *37.57 *
Error126233,057.43.327.44114.11.1437.330.720.06125.680.520.8610.6426.13
Under Low N PASP (1–9)STGR (1–9)
Env189,123,724.10 ***91.58 ***58.54 ***7271.70 ***6.25 **790.48 **631.34 **4.41 ***346.42 **4.89 ***0.75 ns--
Rep (Env)21,130,174.13 **17.56 ***23.88 ***4418.27 ***1.29 ns334.82 **0.12 ns0.19 **445.44 ***0.05 ns0.85 ns--
Blk (Env × Rep)28546,090.83 ***3.80 **3.04 *302.02 ***2.58 **196.97 **0.70 **0.07 *68.10 *1.04 ***1.06 ***--
Inbred79671,288.80 ***20.72 ***19.50 ***564.46 ***3.89 ***149.64 **1.00 ***0.080 **69.13 ***1.72 ***1.63 ***--
Inbred × Env79429,192.31 ***6.23 ***6.24 ***508.70 ***2.48 ***130.68 **1.07 ***0.05 **52.03 *0.75 ***0.93 ***--
Error124227,697.21.861.87101.620.7870.010.370.0337.250.320.34--
Under high-N
Env157,477,304.10 ***141.26 ***50.11 ***85,728.41 ***55.53 ***38,050.66 **546.69 ***0.15 ns346.42 **0.03 ns---
Rep (Env)211,386,215.00 ***10.83 **17.31 ***1063.26 **10.55 ***819.21 **2.51 **0.40 **445.44 ***1.91**---
Blk (Env × Rep)28421,403.70 ns2.77 ns3.98 *250.29 ns1.42 **163.55 ns0.65 *0.06 ns68.10 *0.52 ns---
Inbred791,338,936.80 ***15.11 ***16.14 ***1059.55 ***2.78 ***290.17 ***1.07 ***0.10 **69.13 ***2.04 ***---
Inbred × Env74772,242.00 ***5.24 ***5.74 ***291.96 ns1.39 **112.02ns1.11 ***0.05 ns52.03 *0.81 ***---
Error119332,792.101.922.24226.330.74125.130.410.0637.250.38---
*, **, *** = Significant at p < 0.05, p < 0.01 and p < 0.001, respectively; ns = Not significant; DF = degrees of freedom; YIELD = grain yield; DA = days to 50% anthesis; DS = days to 50% silking; PLHT = plant height; EASP = ear aspect (rated on a scale of 1–9); EHT = ear height; HUSK = husk cover (rated on a scale of 1–5); EPP = number of ears per plant; SLPER = percent stalk lodging; SDR1 = Striga damage rating at 8 WAP (rated on a scale of 1–9); SDR2 = Striga damage rating at 10 WAP (rated on a scale of 1–9); ESP1 = number of emerged Striga plant at 8 WAP; ESP2 = number of emerged Striga plant at 10 WAP. DF of sources adjusted for missing plots; PASP = plant aspect (scored on a scale of 1–9); STGR = stay green characteristic (scored on a scale of 1–9).
Table 4. Grain yield and other agronomic traits of 76 extra-early provitamin A quality protein maize inbreds with four checks evaluated under Striga-infested environments at Abuja and Mokwa in Nigeria in 2016 and 2017.
Table 4. Grain yield and other agronomic traits of 76 extra-early provitamin A quality protein maize inbreds with four checks evaluated under Striga-infested environments at Abuja and Mokwa in Nigeria in 2016 and 2017.
LINEYIELDEPPDSPLHTEASPHUSKSDR1SDR2ESP1ESP2STR-BI
(kg/ha) (Days)(cm)(1–9)(1–5)(1–9)(1–9)
TZEEIORQ 6219380.9571152.73.72.74.01111.34
TZEEIORQ 4615471.163924.44.13.64.2128.24
TZEEIORQ 6320320.8571143.14.33.34.6657.20
TZEEIORQ 7216210.9591003.94.13.04.5476.67
TZEEIORQ 6911810.8591094.83.92.94.0216.38
TZEEIORQ 4212750.8641114.14.03.24.5045.56
TZEEIORQ 4111730.8591104.53.93.34.2015.54
TZEEIORQ 6118360.8581123.54.63.44.9485.49
TZEEIORQ 6814770.7621103.94.43.24.7125.41
TZEEIORQ 62B17430.7621076.34.33.64.9135.35
TZEEIORQ 814690.9591144.04.33.44.8294.58
TZEEIORQ 1712350.958994.24.73.35.0044.55
TZEEIORQ 5315920.7611284.04.73.54.7264.52
TZEEIORQ 515401.0581073.34.53.54.87114.28
TZEEIORQ 5513810.7591284.94.33.24.8333.97
TZEEIORQ 1514030.7621045.74.13.54.6253.93
TZEEIORQ 2213460.8621035.04.33.84.9243.77
TZEEIORQ 1810570.7591104.04.13.34.4043.65
TZEEIORQ 4311280.8621015.14.33.84.5223.38
TZEEI 7314230.757995.04.33.24.7493.38
TZEEIORQ 6417920.7601144.14.44.24.8673.24
TZEEIORQ 5216780.7581283.94.43.85.3363.19
TZEEIORQ 5716330.7591184.15.03.55.3763.17
TZEEIORQ 2510990.8641164.64.53.54.6243.00
TZEEIORQ 5814050.7591064.44.53.94.9152.82
TZEEIORQ 339980.659975.54.53.04.8232.66
TZEEIORQ 7311540.9601194.64.93.55.4352.37
TZEEIORQ 79640.8601014.24.23.14.5592.00
TZEEIORQ 2910450.9621114.54.63.64.83101.85
TZEEIORQ 457880.7641045.04.53.24.9241.02
TZEEIORQ 310530.5601124.94.13.05.4260.88
TZEEIORQ 7510820.8621044.24.33.64.66100.77
TZEEIORQ 7710600.765755.24.83.95.2130.73
TZEEIORQ 410180.7601065.34.83.45.1490.12
TZEEIORQ 5612080.6611215.14.84.15.333−0.12
TZEEIORQ 669020.6601095.24.23.85.015−0.23
TZEEIORQ 19840.7571105.04.83.55.3411−0.48
TZEEIORQ 498780.6621015.54.43.85.221−0.48
TZEEIORQ 199920.8591034.25.54.05.736−0.55
TZEEI 7613410.756934.75.24.15.4710−0.58
TZEEI 947980.757975.24.53.75.228−0.77
TZEEIORQ 6013000.7571044.95.54.35.836−0.86
TZEEIORQ 29340.759945.75.53.86.023−0.88
TZEEIORQ 2610150.7621115.45.33.45.5710−0.89
TZEEIORQ 658590.6591085.04.83.84.944−0.92
TZEEI 757650.755934.94.53.85.135−1.05
TZEEIORQ 7011370.6641075.05.13.85.737−1.05
TZEEIORQ 1011300.8571064.05.44.25.675−1.18
TZEEIORQ 911170.857964.25.13.95.4715−1.55
TZEEIORQ 748440.7591114.95.03.65.2511−1.56
TZEEIORQ 289420.663985.75.13.65.549−1.62
TZEEIORQ 768540.6641025.15.04.55.320−1.81
TZEEIORQ 347680.5641105.55.14.25.113−1.93
TZEEIORQ 1410610.8601114.64.73.95.7911−2.05
TZEEIORQ 328860.7591025.15.74.16.035−2.14
TZEEIORQ 116850.6571005.24.93.85.245−2.18
TZEEIORQ 487230.5641146.94.83.35.239−2.41
TZEEIORQ 5010350.7601074.95.24.55.748−2.51
TZEEIORQ 5111660.5631095.35.54.25.856−2.84
TZEEIORQ 167060.4641016.34.83.75.804−3.12
TZEEIORQ 476300.4651005.84.13.84.936−3.22
TZEEIORQ 278980.6651065.04.94.26.139−3.53
TZEEIORQ 247240.5651155.65.83.76.133−3.57
TZEEIORQ 718280.6621005.75.23.95.4416−3.68
TZEEIORQ 406690.4681006.54.94.05.435−4.00
TZEEIORQ 67320.6591025.95.33.55.7810−4.12
TZEEIORQ 446660.467946.44.84.25.625−4.91
TZEEIORQ 134310.4601036.94.94.15.437−5.66
TZEEIORQ 394830.5661065.44.94.66.013−5.69
TZEEIORQ 596060.7611066.45.84.66.167−6.28
TZEEIORQ 218980.6601035.15.74.96.4511−6.48
TZEEIORQ 232500.364986.95.03.95.626−7.03
TZEEIORQ 305350.2.1177.75.14.56.233−8.03
TZEEIORQ 545290.4611136.05.94.66.467−8.53
TZEEIORQ 50B4910.366987.06.04.97.067−11.17
TZEEIORQ 123330.4661016.36.95.17.3912−13.37
Mean10640.7611065.04.83.85.236
Max20321.1681287.76.95.17.3916
Min2500.255752.73.72.74.000
LSD (0.05)9660.55212.11.71.41.9710
YIELD = grain yield; EPP = number of ears per plant; DS = days to 50% silking; PLHT = plant height; EASP = ear aspect (rated on a scale of 1–9); HUSK = husk cover (rated on a scale of 1–5); SDR1 = Striga damage rating at 8 WAP (rated on a scale of 1–9); SDR2 = Striga damage rating at 10 WAP (rated on a scale of 1–9); ESP1 = number of emerged Striga plant at 8 WAP; ESP2 = number of emerged Striga plant at 10 WAP; STR-BI = Striga base index.
Table 5. Grain yield and other agronomic traits of 76 extra-early provitamin A/QPM inbreds with four checks evaluated across low-N environments at Ile-Ife and Mokwa between 2016 and 2017 in Nigeria.
Table 5. Grain yield and other agronomic traits of 76 extra-early provitamin A/QPM inbreds with four checks evaluated across low-N environments at Ile-Ife and Mokwa between 2016 and 2017 in Nigeria.
LINEYIELDPASPEASPSTGRHUSKEPPDSDAPLHTEHTLN-BI
(kg/ha)(1–9)(1–9)(1–9)(1–5) (Days)(Days)(cm)(cm)
TZEEIORQ 5720173.53.11.72.90.85657164649.28
TZEEIORQ 2122823.92.53.52.60.95555140648.46
TZEEIORQ 6417493.53.02.11.90.85657152607.88
TZEEIORQ 5316853.43.12.32.50.75858175706.55
TZEEIORQ 4315343.54.22.22.50.85757138615.96
TZEEIORQ 5517293.63.82.23.10.85858166615.76
TZEEIORQ 6317083.74.01.92.20.75556161605.69
TZEEIORQ 2022274.23.83.72.40.85756147585.61
TZEEIORQ 5117924.23.23.03.00.85656146645.58
TZEEIORQ 4215204.04.52.42.51.06060151665.57
TZEEIORQ 5217494.13.72.53.10.85454154585.25
TZEEIORQ 1418504.74.23.03.21.05554154694.93
TZEEI 7319774.14.52.72.90.75453147604.87
TZEEIORQ 7513753.53.22.52.20.76060135524.83
TZEEIORQ 7616973.83.52.92.70.75959149534.49
TZEEIORQ 117134.33.92.82.50.85454137564.15
TZEEIORQ 714534.54.13.03.31.05656131554.12
TZEEIORQ 515154.53.23.42.80.95656153644.06
TZEEIORQ 5015724.83.82.43.10.85656138624.01
TZEEIORQ 7416504.24.13.03.30.85556151483.99
TZEEIORQ 4113593.93.82.92.60.85758159643.77
TZEEI 7616234.93.43.32.90.85656145433.35
TZEEIORQ 2616314.54.12.53.10.65959143553.26
TZEEIORQ 6918304.94.13.43.10.85756153642.93
TZEEIORQ 6116584.63.73.03.00.85554155542.67
TZEEIORQ 34B7625.24.92.33.30.5-63143602.54
TZEEIORQ 4813323.75.22.82.20.86060149662.53
TZEEIORQ 5917454.74.42.82.90.65556155582.39
TZEEIORQ 777554.85.53.33.40.76363151602.14
TZEEIORQ 2516934.34.93.02.60.66059151701.92
TZEEIORQ 912945.04.42.63.90.85455131511.74
TZEEIORQ 5413064.53.92.32.90.65757151651.61
TZEEIORQ 2713304.54.63.43.00.86060146611.41
TZEEIORQ 2915244.44.22.63.00.65958145581.25
TZEEIORQ 6010724.44.32.73.40.75555150530.88
TZEEIORQ 1013914.93.83.63.30.75555144590.53
TZEEIORQ 312684.94.72.85.00.75858138610.48
TZEEIORQ 569853.64.72.73.50.65858174660.35
TZEEIORQ 4410994.74.02.72.60.66161139620.15
TZEEIORQ 4714304.85.82.83.20.76060154680.10
TZEEI 7511825.34.32.33.30.75656138530.06
TZEEIORQ 337294.74.72.32.80.7575713964−0.14
TZEEIORQ 2810104.74.91.83.30.6595815366−0.35
TZEEIORQ 1715195.14.54.13.30.7555614165−0.46
TZEEIORQ 2410104.94.72.82.90.8626114162−0.54
TZEEIORQ 217814.95.74.03.50.7575615970−0.58
TZEEIORQ 1814625.44.33.73.70.7565614564−1.23
TZEEIORQ 4910304.85.32.43.40.6616214151−1.59
TZEEIORQ 50B9715.04.82.33.20.6575714156−1.63
TZEEIORQ 4610534.55.33.32.60.6616013260−1.94
TZEEIORQ 226115.15.32.12.90.7595914666−2.04
TZEEIORQ 7111745.85.03.03.70.6585714260−2.36
TZEEIORQ 4510634.85.13.23.30.6616015058−2.49
TZEEIORQ 3113245.36.32.73.50.6606015060−2.57
TZEEIORQ 6211885.54.14.33.30.7565514652−2.87
TZEEIORQ 408914.25.82.92.60.5616115368−2.88
TZEEIORQ 128295.64.23.43.40.7585713859−2.91
TZEEIORQ 709285.05.42.73.20.5575614980−3.51
TZEEIORQ 587365.15.53.03.60.6595915567−3.54
TZEEI 9410565.14.63.63.40.5545413554−3.61
TZEEIORQ 62B10934.25.74.13.80.5626215876−3.65
TZEEIORQ 689345.55.32.62.80.6616013353−3.65
TZEEIORQ 1912215.55.64.13.90.6555513456−4.13
TZEEIORQ 659395.55.53.24.10.6595916054−4.33
TZEEIORQ 348615.35.43.13.20.6606014667−4.53
TZEEIORQ 155225.15.92.83.80.7626213155−4.67
TZEEIORQ 396374.65.73.03.00.5616013761−5.07
TZEEIORQ 66145.84.72.84.20.6565512548−5.14
TZEEIORQ 238194.96.82.63.40.4605915665−6.22
TZEEIORQ 678815.86.43.43.40.562617948−7.03
TZEEIORQ 668735.37.13.63.20.4595816556−8.23
TZEEIORQ 114945.76.82.93.70.4555413355−8.77
TZEEIORQ 734946.05.24.73.80.5545414057−9.28
TZEEIORQ 327116.25.35.33.80.5565613554−10.26
TZEEIORQ 134515.86.94.03.50.4565512754−11.43
TZEEIORQ 165956.37.14.93.90.3606013760−13.48
Mean12574.74.73.03.20.7585814560
Max22826.37.15.35.01.0636317580
Min4513.42.51.71.90.354537943
LSD (0.05)9541.11.81.21.20.4332017
YIELD = grain yield; DA = days to 50% anthesis; DS = days to 50% silking; PLHT = plant height; EHT = ear height; EASP = ear aspect (rated on a scale of 1–9); STGR = stay-green characteristic (rated on a scale of 1–9); PASP = plant aspect (rated on a scale of 1–9); HUSK = husk cover (rated on a scale of 1–5); EPP = number of ears per plant; LN-BI = low-N base index.
Table 6. Grain yield and other agronomic traits of 20 best and 5 worst extra-early maturing provitamin A quality protein maize inbreds evaluated under Striga-infested, low-N and high-N environments.
Table 6. Grain yield and other agronomic traits of 20 best and 5 worst extra-early maturing provitamin A quality protein maize inbreds evaluated under Striga-infested, low-N and high-N environments.
LineGrain YieldEars per PlantEar Aspect Plant Aspect§ STGR
Striga(kg/ha) LNHNAcrsStrigaLNHNAcrsStrigaLN (1–9) HNAcrsLN(1–9) HNAcrs(1–9) LNþ SDR1(1–9)SDR2(1–9)đ ESP1ESP2Ħ MI
Best
TZEEIORQ 5716322017307422410.70.80.81.34.13.12.93.33.53.33.41.72.74.01113.10
TZEEIORQ 6320321708327023370.80.70.90.83.14.02.53.23.73.23.53.53.64.21211.50
TZEEIORQ 4212751520324120120.81.01.11.04.14.53.64.14.03.13.62.13.34.66511.20
TZEEIORQ 5513811729305620550.70.70.80.84.93.83.64.13.63.93.72.33.04.5478.97
TZEEIORQ 6417921749314822300.70.80.80.84.13.02.43.23.52.93.22.22.94.0218.70
TZEEI 731423494314121840.70.51.00.85.05.23.54.36.03.53.83.73.24.5047.85
TZEEIORQ 5315921684232318630.70.70.80.73.93.13.93.73.44.13.82.23.34.2016.80
TZEEIORQ 5216781749272420460.70.81.00.83.93.73.03.54.13.84.01.93.44.9486.58
TZEEIORQ 4311281534244716990.80.80.80.85.04.24.54.63.53.63.52.53.24.7126.18
TZEEIORQ 6219381188167215990.90.70.90.82.74.13.83.55.54.95.22.43.64.9135.48
TZEEIORQ 2510991693279418620.80.60.90.74.64.93.54.34.34.04.22.73.44.8295.44
TZEEIORQ 6118361658201918410.80.80.70.83.53.73.63.64.63.74.23.03.35.0045.31
TZEEIORQ 515401515250618541.00.91.10.93.33.23.93.54.53.84.12.93.54.7264.98
TZEEIORQ 4111731359149113410.80.80.60.74.53.85.04.43.94.14.03.03.54.87114.75
TZEEIORQ 79641453242616140.81.00.80.94.24.13.74.04.54.54.52.53.24.8334.53
TZEEIORQ 4615471053204515491.10.60.90.94.45.34.44.74.53.94.22.83.54.6254.44
TZEEIORQ 6911811830153715120.80.80.60.84.84.04.64.54.95.15.03.03.84.9244.03
TZEEIORQ 1810571462263617180.70.70.80.84.04.34.04.15.44.85.12.43.34.4043.50
TZEEIORQ 748441650293418090.70.81.10.94.94.13.74.24.23.84.03.43.84.5223.32
TZEEIORQ 768541697272417590.60.70.90.85.13.53.13.93.84.13.93.03.24.7493.14
Worst
TZEEIORQ 2325081910387020.30.40.50.46.96.85.56.44.94.74.82.93.95.626−9.53
TZEEIORQ 32886711161510700.70.50.80.75.15.34.14.86.25.05.64.74.56.233−9.70
TZEEIORQ 1343145112977300.40.40.60.46.96.96.06.65.85.65.75.34.66.467−13.30
TZEEIORQ 1233382911097570.40.70.70.66.34.24.95.25.64.85.24.04.97.067−15.10
TZEEIORQ 167065956726580.40.30.20.36.37.17.26.96.36.56.44.95.17.3912−15.90
Grand mean10641257212014920.70.70.80.75.04.74.14.64.74.34.53.03.85.236
LSD (0.05)966954115410270.50.40.50.62.11.81.71.91.11.21.21.21.41.9710
*, ** and *** = significant at p < 0.05, p < 0.01 and p < 0.001, respectively; Striga = Striga-infested environment; LN = low-N environment; HN = high-N environment; Acrs = across research environments; § STGR = stay-green characteristic; Plant aspect = estimated across low-N and high-N environments þ SDR1 and SDR2 = Striga damage rating at 8 and 10 WAP, respectively; đ ESP1 and ESP2 = number of emerged Striga plant at 8 and 10 WAP, respectively; (1–9) = rated on a scale of 1–9; Ħ MI = multiple-trait base index; LSD (0.05) = least significant difference at 5% probability level.
Table 7. Tropical Zea extra-early maturing provitamin A quality protein maize inbreds with and without favorable allele for provitamin A marker crtRB1-3′TE and corresponding levels of beta carotene and total provitamin A as determined by high-performance liquid chromatography.
Table 7. Tropical Zea extra-early maturing provitamin A quality protein maize inbreds with and without favorable allele for provitamin A marker crtRB1-3′TE and corresponding levels of beta carotene and total provitamin A as determined by high-performance liquid chromatography.
S/NLinePresence/Absence of crtRB1-3′TE Alleleβ-Carotene Level (µg/g)Total Provitamin A (µg/g)
1TZEEIORQ 4914.067.25
2TZEEIORQ 5014.707.75
3TZEEIORQ 5115.508.25
4TZEEIORQ 5216.4010.01
5TZEEIORQ 5314.337.36
6TZEEIORQ 5416.4310.95
7TZEEIORQ 5515.9710.61
8TZEEIORQ 5715.759.99
9TZEEIORQ 5816.0510.68
10TZEEIORQ 6015.197.95
11TZEEIORQ 6215.779.22
12TZEEIORQ 6314.136.68
13TZEEIORQ 6413.415.83
14TZEEIORQ 50B1--
15TZEEIORQ 7312.834.35
16TZEEIORQ 34B1--
17TZEEIORQ 103.566.89
18TZEEIORQ 201.852.74
19TZEEIORQ 302.736.37
20TZEEIORQ 402.924.65
21TZEEIORQ 505.7510.25
22TZEEIORQ 603.787.48
23TZEEIORQ 703.367.46
24TZEEIORQ 803.867.92
25TZEEIORQ 903.406.89
26TZEEIORQ 1003.786.34
27TZEEIORQ 1102.404.44
28TZEEIORQ 1203.564.82
29TZEEIORQ 1302.443.72
30TZEEIORQ 1402.913.95
31TZEEIORQ 1502.604.96
32TZEEIORQ 1603.746.47
33TZEEIORQ 1702.503.47
34TZEEIORQ 1802.353.04
35TZEEIORQ 1902.543.30
36TZEEIORQ 2002.433.21
37TZEEIORQ 2102.243.16
38TZEEIORQ 2203.455.58
39TZEEIORQ 2302.513.77
40TZEEIORQ 2402.863.96
41TZEEIORQ 2502.283.68
42TZEEIORQ 2602.153.90
43TZEEIORQ 2701.482.21
44TZEEIORQ 2801.883.93
45TZEEIORQ 2902.093.78
46TZEEIORQ 3002.474.62
47TZEEIORQ 3102.384.51
48TZEEIORQ 3202.383.94
49TZEEIORQ 3302.936.40
50TZEEIORQ 3402.807.24
51TZEEIORQ 3502.796.50
52TZEEIORQ 8204.827.55
53TZEEIORQ 3702.916.49
54TZEEIORQ 3802.756.00
55TZEEIORQ 3903.055.29
56TZEEIORQ 4002.506.58
57TZEEIORQ 4102.365.63
58TZEEIORQ 4203.757.65
59TZEEIORQ 4303.827.44
60TZEEIORQ 4404.078.40
61TZEEIORQ 4503.046.20
62TZEEIORQ 4603.977.46
63TZEEIORQ 4703.767.35
64TZEEIORQ 4803.436.11
65TZEEIORQ 5604.076.63
66TZEEIORQ 6103.315.90
67TZEEIORQ 6503.945.37
68TZEEIORQ 6704.116.39
69TZEEIORQ 4503.635.12
70TZEEIORQ 6902.955.12
71TZEEIORQ 7002.144.51
72TZEEIORQ 3503.885.29
73TZEEIORQ 7205.578.89
74TZEEIORQ 7503.595.75
75TZEEIORQ 7604.366.86
76TZEEIORQ 59-5.868.82
Mean 3.536.18
1 = presence of crtRB1-3′TE; 0 = absence of crtRB1-3′TE; - = missing sample during molecular analysis.
Table 8. Presence or absence of desirable allele of beta-carotene hydroxylase gene (crtRB1-3′TE) in the 76 extra-early provitamin A quality protein maize inbreds and provitamin A content of the inbred lines determined by high-performance liquid chromatography.
Table 8. Presence or absence of desirable allele of beta-carotene hydroxylase gene (crtRB1-3′TE) in the 76 extra-early provitamin A quality protein maize inbreds and provitamin A content of the inbred lines determined by high-performance liquid chromatography.
Provitamin A Content (µg g−1)
Desirable Marker AlleleLow
(<7.49)
Moderate
(7.50–8.49)
High
(>8.49)
Chi-Squared Value
Present5.003.006.0019.10 **
Absent52.005.003.00
**, significant at p < 0.01.
Table 9. Regression of provitamin A carotenoids on total provitamin A content of extra-early provitamin A quality protein maize inbreds analyzed using high-performance liquid chromatography.
Table 9. Regression of provitamin A carotenoids on total provitamin A content of extra-early provitamin A quality protein maize inbreds analyzed using high-performance liquid chromatography.
Provitamin A CarotenoidsPartial R-Squared
Beta cryptoxanthin0.1834 ***
All-trans beta carotene0.8192 ***
9-cis-beta carotene0.0069 ***
13-cis-beta carotene0.0005 ***
***, significant at p < 0.001.
Table 10. Levels of tryptophan and lysine in the extra-early provitamin A quality protein maize inbreds with the most stable check and their responses to Striga and low-N, determined by Striga and low-N base index values.
Table 10. Levels of tryptophan and lysine in the extra-early provitamin A quality protein maize inbreds with the most stable check and their responses to Striga and low-N, determined by Striga and low-N base index values.
LineTryptophan (%)lysine (%)Reaction to StrigaReaction to Low N
TZEEIORQ 540.06 ± 0.0050.31 ± 0.008SusceptibleTolerant
TZEEIORQ 580.06 ± 0.0010.29 ± 0.013TolerantSusceptible
TZEEIORQ 550.07 ± 0.0030.36 ± 0.018TolerantTolerant
TZEEIORQ 50.05 ± 0.0010.30 ± 0.012TolerantTolerant
TZEEIORQ 520.05 ± 0.0010.27 ± 0.003TolerantTolerant
TZEEIORQ 570.04 ± 0.0020.24 ± 0.011TolerantTolerant
TZEEIORQ 620.05 ± 0.0010.28 ± 0.004TolerantSusceptible
TZEEIORQ 720.08 ± 0.0060.35 ± 0.010TolerantSusceptible
TZEEIORQ 590.04 ± 0.0020.22 ± 0.011SusceptibleTolerant
TZEEIORQ 440.05 ± 0.0040.27 ± 0.003SusceptibleTolerant
TZEEIORQ 510.04 ± 0.0050.25 ± 0.029SusceptibleTolerant
TZEEIORQ 600.05 ± 0.0030.28 ± 0.032SusceptibleTolerant
TZEEIORQ 80.05 ± 0.0020.25 ± 0.005TolerantSusceptible
TZEEIORQ 500.04 ± 0.0040.23 ± 0.009SusceptibleTolerant
TZEEIORQ 740.08 ± 0.0010.39 ± 0.028SusceptibleTolerant
TZEEIORQ 420.05 ± 0.0010.32 ± 0.007TolerantTolerant
TZEEIORQ 50B0.04 ± 0.0010.19 ± 0.008SusceptibleSusceptible
TZEEIORQ 60.05 ± 0.0020.24 ± 0.005SusceptibleSusceptible
TZEEIORQ 70.05 ± 0.0000.25 ± 0.006TolerantTolerant
TZEEIORQ 460.05 ± 0.0050.30 ± 0.013TolerantSusceptible
TZEEIORQ 430.05 ± 0.0040.27 ± 0.005TolerantTolerant
TZEEIORQ 530.04 ± 0.0010.26 ± 0.015TolerantTolerant
TZEEIORQ 470.05 ± 0.0040.30 ± 0.007SusceptibleTolerant
TZEEIORQ 490.06 ± 0.0020.33 ± 0.015SusceptibleSusceptible
TZEEIORQ 34B0.06 ± 0.0010.26 ± 0.001SusceptibleSusceptible
TZEEIORQ 10.05 ± 0.0010.28 ± 0.007SusceptibleTolerant
TZEEIORQ 90.05 ± 0.0060.26 ± 0.003SusceptibleTolerant
TZEEI 760.05 ± 0.0020.23 ± 0.015SusceptibleTolerant
TZEEIORQ 760.04 ± 0.0010.24 ± 0.005SusceptibleTolerant
TZEEIORQ 630.06 ± 0.0010.28 ± 0.004TolerantTolerant
TZEEIORQ 560.05 ± 0.0060.25 ± 0.001SusceptibleTolerant
TZEEIORQ 660.04 ± 0.0020.28 ± 0.010SusceptibleSusceptible
TZEEIORQ 400.06 ± 0.0010.31 ± 0.010SusceptibleSusceptible
TZEEIORQ 350.06 ± 0.0000.27 ± 0.013SusceptibleTolerant
TZEEIORQ 62B0.06 ± 0.0010.26 ± 0.001TolerantSusceptible
TZEEIORQ 160.06 ± 0.0000.30 ± 0.005SusceptibleSusceptible
TZEEIORQ 330.06 ± 0.0000.26 ± 0.014TolerantSusceptible
TZEEIORQ 670.05 ± 0.0010.26 ± 0.004SusceptibleSusceptible
TZEEIORQ 30.04 ± 0.0010.23 ± 0.002TolerantTolerant
TZEEIORQ 100.05 ± 0.0020.29 ± 0.001SusceptibleTolerant
TZEEIORQ 450.05 ± 0.0020.29 ± 0.013TolerantSusceptible
TZEEIORQ 480.05 ± 0.0030.27 ± 0.022SusceptibleTolerant
TZEEIORQ 380.05 ± 0.0020.29 ± 0.021SusceptibleSusceptible
TZEEIORQ 610.05 ± 0.0030.27 ± 0.023TolerantTolerant
TZEEIORQ 640.05 ± 0.0000.29 ± 0.004TolerantTolerant
TZEEIORQ 750.04 ± 0.0030.23 ± 0.006TolerantTolerant
TZEEIORQ 410.06 ± 0.0020.30 ± 0.005TolerantTolerant
TZEEIORQ 220.07 ± 0.0050.36 ± 0.006TolerantSusceptible
TZEEIORQ 650.04 ± 0.0010.24 ± 0.002SusceptibleSusceptible
TZEEIORQ 710.06 ± 0.0020.27 ± 0.003SusceptibleSusceptible
TZEEIORQ 390.06 ± 0.0060.30 ± 0.001SusceptibleSusceptible
TZEEIORQ 690.06 ± 0.0040.30 ± 0.003TolerantTolerant
TZEEIORQ 680.05 ± 0.0070.22 ± 0.004TolerantSusceptible
TZEEIORQ 150.05 ± 0.0030.23 ± 0.003TolerantSusceptible
TZEEIORQ 120.04 ± 0.0020.22 ± 0.002SusceptibleSusceptible
TZEEIORQ 40.04 ± 0.0030.22 ± 0.003TolerantSusceptible
TZEEIORQ 300.06 ± 0.0040.30 ± 0.008SusceptibleSusceptible
TZEEIORQ 310.06 ± 0.0020.28 ± 0.001SusceptibleSusceptible
TZEEIORQ 700.06 ± 0.0010.25 ± 0.008SusceptibleSusceptible
TZEEIORQ 110.06 ± 0.0060.26 ± 0.003SusceptibleSusceptible
TZEEIORQ 730.06 ± 0.0020.28 ± 0.004TolerantSusceptible
TZEEIORQ 240.06 ± 0.0010.27 ± 0.001SusceptibleSusceptible
TZEEIORQ 140.05 ± 0.0020.20 ± 0.001SusceptibleTolerant
TZEEIORQ 320.05 ± 0.0020.28 ± 0.001SusceptibleSusceptible
TZEEIORQ 280.06 ± 0.0000.30 ± 0.002SusceptibleSusceptible
TZEEIORQ 260.06 ± 0.0010.28 ± 0.005SusceptibleTolerant
TZEEIORQ 290.05 ± 0.0010.30 ± 0.003TolerantTolerant
TZEEIORQ 230.05 ± 0.0020.27 ± 0.001SusceptibleSusceptible
TZEEIORQ 130.06 ± 0.0010.22 ± 0.001SusceptibleSusceptible
TZEEIORQ 250.05 ± 0.0050.24 ± 0.002TolerantTolerant
TZEEIORQ 170.05 ± 0.0020.28 ± 0.001TolerantSusceptible
TZEEIORQ 190.05 ± 0.0010.30 ± 0.000SusceptibleSusceptible
TZEEIORQ 200.05 ± 0.0010.26 ± 0.010SusceptibleTolerant
TZEEIORQ 210.07 ± 0.0020.33 ± 0.007SusceptibleTolerant
TZEEIORQ 180.05 ± 0.0040.31 ± 0.002TolerantSusceptible
TZEEIORQ 20.05 ± 0.0030.24 ± 0.010SusceptibleSusceptible
TZEEIORQ 270.06 ± 0.0030.29 ± 0.004SusceptibleTolerant
MEAN0.050.27
CV (%)15.1813.38
SE ±0.0010.004
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Oyekale, S.A.; Badu-Apraku, B.; Adetimirin, V.O.; Unachukwu, N.; Gedil, M. Development of Extra-Early Provitamin A Quality Protein Maize Inbreds with Resistance/Tolerance to Striga hermonthica and Soil Nitrogen Stress. Agronomy 2021, 11, 891. https://doi.org/10.3390/agronomy11050891

AMA Style

Oyekale SA, Badu-Apraku B, Adetimirin VO, Unachukwu N, Gedil M. Development of Extra-Early Provitamin A Quality Protein Maize Inbreds with Resistance/Tolerance to Striga hermonthica and Soil Nitrogen Stress. Agronomy. 2021; 11(5):891. https://doi.org/10.3390/agronomy11050891

Chicago/Turabian Style

Oyekale, Solomon A., Baffour Badu-Apraku, Victor O. Adetimirin, Nnanna Unachukwu, and Melaku Gedil. 2021. "Development of Extra-Early Provitamin A Quality Protein Maize Inbreds with Resistance/Tolerance to Striga hermonthica and Soil Nitrogen Stress" Agronomy 11, no. 5: 891. https://doi.org/10.3390/agronomy11050891

APA Style

Oyekale, S. A., Badu-Apraku, B., Adetimirin, V. O., Unachukwu, N., & Gedil, M. (2021). Development of Extra-Early Provitamin A Quality Protein Maize Inbreds with Resistance/Tolerance to Striga hermonthica and Soil Nitrogen Stress. Agronomy, 11(5), 891. https://doi.org/10.3390/agronomy11050891

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