| Literature DB >> 27397932 |
Yoseph Beyene1, Kassa Semagn1, Stephen Mugo1, Boddupalli M Prasanna1, Amsal Tarekegne2, John Gakunga1, Pierre Sehabiague3, Barbara Meisel4, Sylvester O Oikeh5, Michael Olsen1, Jose Crossa6.
Abstract
A marker-assisted recurrent selection (MARS) program was undertaken in sub-Saharan Africa to improve grain yield under drought-stress in 10 biparental tropical maize populations. The objectives of the present study were to evaluate the performance of C1S2-derived hybrids obtained after three MARS cycles (one cycle of recombination (C1), followed by two generations of selfing (S2), and to study yield stability under both drought-stress (DS) and well-watered (WW) conditions. For each of the 10 populations, we evaluated hybrids developed by crossing 47-74 C1S2 lines advanced through MARS, the best five S5 lines developed through pedigree selection, and the founder parents with a single-cross tester from a complementary heterotic group. The hybrids and five commercial checks were evaluated in Kenya under 1-3 DS and 3-5 WW conditions with two replications. Combined across DS locations, the top 10 C1S2-derived hybrids from each of the 10 biparental populations produced 0.5-46.3 and 11.1-55.1 % higher mean grain yields than hybrids developed using pedigree selection and the commercial checks, respectively. Across WW locations, the best 10 hybrids derived from C1S2 of each population produced 3.4-13.3 and 7.9-36.5 % higher grain yields than hybrids derived using conventional pedigree breeding and the commercial checks, respectively. Mean days to anthesis of the best 10 C1S2 hybrids were comparable to those of hybrids developed using the pedigree method, the founder parents and the commercial checks, with a maximum difference of 3.5 days among the different groups. However, plant height was significantly (P < 0.01) different in most pairwise comparisons. Our results showed the superiority of MARS over pedigree selection for improving diverse tropical maize populations as sources of improved lines for stress-prone environments and thus MARS can be effectively integrated into mainstream maize breeding programs.Entities:
Keywords: Africa; Drought; Molecular breeding; Rapid cycle recombination; SNP; Testcross evaluation
Year: 2015 PMID: 27397932 PMCID: PMC4913958 DOI: 10.1007/s10681-015-1590-1
Source DB: PubMed Journal: Euphytica ISSN: 0014-2336 Impact factor: 1.895
Summary of 10 biparental C1S2 populations evaluated in drought-stress (DS) and well-watered (WW) environments in Kenya
| Population code | Initial cross | No. of C1S2 | Number of WW locations | Number of DS locations | GY under WW (t ha−1) | GY under DS (t ha−1) | AD under WW (days) | AD under DS (days) | PH under WW (cm) | PH under DS (cm) | Heritability for GY under WW (DS) | Heritability for AD under WW (DS) | Heritability for PH under WW (DS) |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1008 | CML540/CML505 | 52 | 4 | 2 | 6.27 | 3.01 | 62.42 | 71.05 | 251.49 | 208.76 | 0.51 (0.25) | 0.80 (0.48) | 0.67 (0.64) |
| 1015 | CZL04003/CML540 | 47 | 5 | 2 | 6.36 | 2.14 | 63.85 | 68.97 | 254.39 | 229.72 | 0.75 (0.10) | 0.84 (0.58) | 0.88 (0.46) |
| 1016 | CML540/CZL99017 | 51 | 4 | 3 | 7.23 | 2.69 | 65.27 | 67.61 | 249.86 | 240.71 | 0.58 (0.00) | 0.67 (0.73) | 0.83 (0.70) |
| 1017 | CML540/CML539 | 47 | 4 | 3 | 7.91 | 2.93 | 63.49 | 66.75 | 257.68 | 243.58 | 0.68 (0.44) | 0.82 (0.73) | 0.80 (0.75) |
| 1018 | CML505/CZL99017 | 61 | 4 | 1 | 6.03 | 2.06 | 64.66 | 70.09 | 256.47 | 228.88 | 0.61 (0.44) | 0.85 (0.34) | 0.88 (0.70) |
| 1019 | CZL04008/CZL0719 | 68 | 3 | 2 | 6.24 | 2.85 | 62.18 | 60.15 | 220.16 | 197.16 | 0.72 (0.07) | 0.88 (0.77) | 0.83 (0.66) |
| 1020 | CML542/CZL0724 | 65 | 4 | 2 | 5.77 | 2.83 | 65.55 | 62.68 | 223.61 | 197.09 | 0.57 (0.20) | 0.87 (0.64) | 0.82 (0.50) |
| 1021 | CML542/CZL0719 | 63 | 5 | 1 | 6.69 | 2.69 | 65.49 | 68.14 | 222.30 | 196.38 | 0.57 (0.46) | 0.87 (0.61) | 0.87 (0.51) |
| 1023 | CZL0618/VL062655 | 74 | 5 | 1 | 6.79 | 2.16 | 68.22 | 70.72 | 233.90 | 210.64 | 0.62 (0.49) | 0.85 (0.62) | 0.87 (0.57) |
| 1028 | CZL074/VL062645 | 65 | 5 | 1 | 6.73 | 2.71 | 69.93 | 71.19 | 235.89 | 221.39 | 0.32 (0.40) | 0.79 (0.22) | 0.82 (0.49) |
The numbers in parenthesis represent heritability estimates under DS conditions
Fig. 1Comparison of mean grain yield of testcross of all C1S2 lines, the best 10 C1S2 lines, five lines from conventional pedigree selection, founder parents and five commercial checks evaluated in managed drought-stress and well-watered conditions in Kenya
Fig. 2Comparison of mean anthesis date of testcrosses from all C1S2 lines, the best 10 C1S2 lines, five lines from conventional pedigree selection, founder parents and five commercial checks evaluated under managed drought-stress and well-watered conditions in Kenya
Fig. 3Comparison of mean plant height of testcrosses from all C1S2 lines, the best 10 C1S2 lines, five lines from conventional pedigree selection, founder parents and five commercial checks evaluated in managed drought-stress and well-watered conditions in Kenya
Fig. 4Biplot of the site regression model (SREG) for two biparental populations evaluated in three managed drought-stressed sites (Kiboko, Kiri and Mbee) in Kenya. Each population is represented by the best 10 hybrids derived from C1S2 (black numbers) (other entries from the C1S2 are represented by a black dot), commercial checks (abbreviated as Ck in green color), the 5 hybrids derived from the pedigree method (F6 in red) and founder parents P1 and P2 (light blue). (Color figure online)
Fig. 5Biplot of the site regression model (SREG) for four biparental populations evaluated in five well-watered sites in Kenya. Each population is represented by the best 10 hybrids derived from C1S2 (black numbers) other C1S2 entries are represented by a black dot, commercial checks (abbreviated as Ck and given in green color), the 5 hybrids derived from the pedigree method (F6 in red) and founder parents P1 and P2 (light blue). (Color figure online)
Entry code of the best 10 C1S2 derived hybrids and their grain yield (GY) (t ha−1) in water-stress and well-watered locations for each of the ten biparental populations
| Drought-stress | Well-watered | Drought-stress | Well-watered | ||||
|---|---|---|---|---|---|---|---|
| Entry | GY | Entry | GY | Entry | GY | Entry | GY |
| Population 1008 | Population 1015 | ||||||
| 43 | 4.008 |
| 7.997 | 47 | 3.196 | 20 | 7.089 |
| 46 | 3.891 | 48 | 7.909 | 2 | 3.119 | 31 | 7.059 |
| 6 | 3.801 | 41 | 7.713 | 10 | 2.614 | 3 | 7.037 |
| 17 | 3.722 | 42 | 7.669 | 19 | 2.490 | 14 | 6.932 |
|
| 3.622 | 5 | 7.608 | 22 | 2.415 | 27 | 6.867 |
| 49 | 3.556 | 35 | 7.576 | 38 | 2.375 | 29 | 6.840 |
| 13 | 3.551 | 18 | 7.550 | 42 | 2.371 | 15 | 6.825 |
|
| 3.545 | 1 | 7.550 | 25 | 2.365 | 4 | 6.797 |
| 27 | 3.541 | 7 | 7.541 | 44 | 2.359 | 39 | 6.795 |
| 21 | 3.502 |
| 7.468 | 46 | 2.353 | 41 | 6.767 |
| Population 1016 | Population 1017 | ||||||
|
| 3.068 |
| 8.672 | 42 | 4.352 | 25 | 8.905 |
| 47 | 3.024 | 31 | 8.473 | 10 | 4.300 | 24 | 8.672 |
| 48 | 3.021 | 30 | 8.239 |
| 4.268 |
| 8.653 |
|
| 2.994 |
| 8.167 | 20 | 4.246 | 11 | 8.581 |
| 24 | 2.952 |
| 8.129 | 17 | 4.069 | 40 | 8.560 |
| 10 | 2.914 | 35 | 8.057 | 16 | 4.060 | 28 | 8.555 |
|
| 2.913 | 26 | 8.008 | 31 | 4.015 | 34 | 8.492 |
| 25 | 2.903 | 44 | 7.963 | 19 | 4.014 |
| 8.487 |
| 34 | 2.877 | 34 | 7.937 |
| 3.943 | 26 | 8.464 |
| 31 | 2.863 | 32 | 7.923 | 5 | 3.935 | 4 | 8.463 |
| Population 1018 | Population 1019 | ||||||
|
| 2.831 |
| 7.038 |
| 2.890 | 2 | 7.370 |
| 52 | 2.651 |
| 6.939 | 56 | 2.881 | 1 | 7.121 |
|
| 2.647 | 44 | 6.858 | 41 | 2.822 | 12 | 7.069 |
| 4 | 2.639 | 42 | 6.616 | 42 | 2.790 | 3 | 7.046 |
| 36 | 2.574 | 10 | 6.603 | 1 | 2.786 | 50 | 6.821 |
| 35 | 2.542 | 38 | 6.586 |
| 2.712 | 23 | 6.748 |
| 46 | 2.462 | 53 | 6.565 | 9 | 2.640 |
| 6.643 |
| 14 | 2.455 | 7 | 6.543 | 55 | 2.624 | 51 | 6.634 |
| 41 | 2.427 | 22 | 6.542 | 11 | 2.605 |
| 6.617 |
| 32 | 2.420 | 30 | 6.488 | 22 | 2.527 | 10 | 6.604 |
| Population 1020 | Population 1021 | ||||||
| 42 | 3.181 | 5 | 6.374 | 54 | 3.231 | 44 | 7.415 |
| 63 | 2.960 |
| 6.368 | 63 | 3.223 | 55 | 7.412 |
|
| 2.914 | 12 | 6.257 | 57 | 3.218 | 33 | 7.368 |
| 36 | 2.726 | 29 | 6.180 | 14 | 3.153 | 12 | 7.309 |
| 62 | 2.676 | 62 | 6.169 | 51 | 3.086 | 57 | 7.189 |
| 45 | 2.642 | 28 | 6.164 | 27 | 3.066 | 36 | 7.178 |
|
| 2.620 |
| 6.149 | 7 | 3.053 | 14 | 7.149 |
| 53 | 2.578 | 57 | 6.132 | 39 | 3.019 | 52 | 7.137 |
| 50 | 2.511 | 63 | 6.128 | 40 | 2.997 | 58 | 7.121 |
| 19 | 2.507 | 4 | 6.105 | 6 | 2.993 | 47 | 7.115 |
| Population 1023 | Population 1028 | ||||||
| 51 | 3.944 | 12 | 7.583 | 19 | 3.561 | 33 | 7.602 |
| 72 | 2.919 |
| 7.574 | 16 | 3.489 | 24 | 7.511 |
|
| 2.849 | 52 | 7.388 | 59 | 3.363 | 57 | 7.363 |
| 41 | 2.722 | 70 | 7.300 | 60 | 3.362 | 51 | 7.326 |
|
| 2.713 | 60 | 7.288 | 7 | 3.183 | 5 | 7.323 |
| 35 | 2.682 |
| 7.218 | 18 | 3.180 | 4 | 7.265 |
| 17 | 2.678 | 22 | 7.207 | 54 | 3.103 | 42 | 7.242 |
| 23 | 2.610 | 11 | 7.154 | 12 | 3.085 | 6 | 7.208 |
| 14 | 2.609 | 46 | 7.152 | 11 | 3.062 | 11 | 7.199 |
| 25 | 2.605 | 24 | 7.142 | 61 | 3.059 | 58 | 7.176 |
Bolditalic indicates the entry number of hybrids that performed well both under WW and DS conditions