Screening Rice (Oryza sativa L.) Genotypes for Seedling-Stage Drought Tolerance
Abstract
1. Introduction
2. Results and Discussion
2.1. Performance of Rice Genotypes and Interaction with Drought
2.1.1. Descriptive Statistics of Measured Traits
2.1.2. Statistical Analysis of 10 Morphological Traits
- Analysis of variance (ANOVA) for eight morphological traits
- Statistical analysis for seedling vigor and leaf rolling scores
2.1.3. Effect of Drought on Eight Morphological Traits
- Root-to-shoot ratio
- Root traits
- Shoot traits
2.1.4. Morphological Performance of Genotypes Under Drought Treatment
- Number of roots with at least 5 cm length
- Root dry weight
- Root-to-shoot ratio
- Shoot length
- Shoot dry weight
- Seedling biomass
2.2. Correlation of 10 Morphological Traits Under Drought Conditions
2.3. Principal Component Analysis and Cluster Analysis Under Drought Treatment
- Principal component analysis
- Cluster analysis
2.4. Coefficient of Variation, Heritability and Expected Genetic Advance
- Coefficient of variation
- Heritability and expected genetic advance
2.5. Classification of Rice Genotypes Based on Drought Response Indices
3. Materials and Methods
3.1. Plant Materials
3.2. Description of Experimental Site
3.3. Experimental Design and Crop Management
3.4. Drought Treatment
3.5. Data Collection
- Seedling vigor was recorded 14 days after sowing using a scale of 1 to 9: 1 (Extra vigorous), 3 (Vigorous), 5 (Normal), 7 (Weak), and 9 (Very weak).
- Leaf rolling was recorded at 26 days after sowing using a scale of 0 to 9: 0 (healthy), 1 (start to fold), 3 (folding), 5 (fully cupped), 7 (margins touching), 9 (tightly rolled).
- Total number of roots was determined by counting both seminal and nodal roots. Lateral roots were excluded because visual counting is prone to errors.
- Longest root (cm) was recorded as the maximum length of roots.
- Number of roots ≥5 cm was determined by counting all roots measuring at least 5 cm.
- Shoot length (cm) was measured from the seedling base to the tip of the longest leaf.
- Root and shoot dry weight (mg) were determined as the dry weights of roots and shoots, respectively. Samples were oven-dried at 75 °C for 72 h to constant weight using the Memmert 30-1060 UN110 Universal Oven (Memmert GmbH + Co. KG, Schwabach, Germany). The samples were cooled before weighing using an Adam PGW 753e Precision Balance (± 0.001 g; Adam Equipment Co. Ltd., Milton Keynes, United Kingdom) (Supplementary File S2: Figures S1.12 and S1.13).
- Seedling Biomass (mg) was calculated as the sum of root and shoot dry weights.
- Root-to-shoot ratio was expressed as the ratio of root-to-shoot dry weights.
- Heritability and genetic advance were estimated following the procedures by [61].
- The Combined Drought Stress Response Index (CDSRI) was determined by adding the standardized individual drought stress response indices (IDSRI) of a genotype. The IDSRI was calculated as the ratio using the formula described by [13]
3.6. Data Analysis
4. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| SV | Seedling vigor |
| LR | Leaf rolling |
| NR | Number of roots |
| LRoot | Longest root |
| NR5 | Number of roots ≥ 5 cm |
| SL | Shoot length |
| RDW | Root dry weight |
| SDW | Shoot dry weight |
| SB | Seedling biomass |
| RS | Root-to-shoot ratio |
| DAS | Days after sowing |
| CDSRI | Combined Drought Stress Response Index |
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| Water | Statistic | NR | LRoot | NR5 | SL | RDW | SDW | SB | RS |
|---|---|---|---|---|---|---|---|---|---|
| Control | Mean | 14 | 11.1 | 5 | 38.9 | 42.7 | 129 | 171 | 0.34 |
| Minimum | 5 | 5.4 | 1 | 23.4 | 12.5 | 25.2 | 40 | 0.2 | |
| Maximum | 22.5 | 20.9 | 12 | 57.8 | 85.5 | 248 | 323 | 0.7 | |
| Drought | Mean | 8.5 | 9.8 | 3.2 | 30.5 | 21.1 | 61.2 | 82.3 | 0.35 |
| Minimum | 3.5 | 4 | 0 | 19.5 | 5 | 22 | 27 | 0.1 | |
| Maximum | 15.5 | 22.9 | 10.5 | 42.5 | 78.5 | 116 | 160 | 1 |
| Trait | Water | Median | Minimum | Maximum |
|---|---|---|---|---|
| Seedling vigor | Control | 3 | 3 | 5 |
| Drought | 5 | 3 | 5 | |
| Leaf rolling | Control | 0 | 0 | 0 |
| Drought | 3 | 1 | 5 |
| Source | NR | LRoot | NR5 | SL | RDW | SDW | SB | RS | SV | LR |
|---|---|---|---|---|---|---|---|---|---|---|
| Water | 220.72 ** | 21.44 NS | 1.99 * | 3.39 *** | 3.7 ** | 4.81 ** | 4.08 ** | 0.01 NS | NS | - |
| Genotype | 17.35 *** | 13.15 * | 0.27 ** | 0.1 *** | 0.4 *** | 0.31 *** | 0.31 *** | 0.15 ** | - | NS |
| Water × Genotype | 6.64 NS | 11.95 NS | 0.16 NS | 0.02 NS | 0.16 NS | 0.09 NS | 0.07 NS | 0.17 ** | - | - |
| CV % | 22.57 | 28.24 | 37.36 | 10.23 | 32.16 | 23.63 | 23.51 | 26.48 | - | - |
| Trait | Water | Estimated Means | % Reduction | p-Value |
|---|---|---|---|---|
| Number of roots | Control | 14 | 39.3 | 0.004 |
| Drought | 8.5 | |||
| Longest root | Control | 11.1 | 11.7 | 0.19 |
| Drought | 9.8 | |||
| Number of roots with ≥5 cm length | Control | 4.6 | 37 | 0.02 |
| Drought | 2.9 | |||
| Shoot length | Control | 38.3 | 21.1 | p < 0.001 |
| Drought | 30.2 | |||
| Root dry weight | Control | 39.6 | 52.8 | 0.006 |
| Drought | 18.7 | |||
| Shoot dry weight | Control | 120.5 | 51.6 | 0.002 |
| Drought | 58.3 | |||
| Seedling biomass | Control | 161 | 51.5 | 0.002 |
| Drought | 78.1 | |||
| Root to shoot ratio | Control | 0.33 | 3 | 0.77 |
| Drought | 0.32 |
| Trait | NR | LRoot | NR5 | SL | ||||
|---|---|---|---|---|---|---|---|---|
| Genotype | Control | Drought | Control | Drought | Control | Drought | Control | Drought |
| Agulha | 14 ab | 5.3 a | 9.6 a | 12.3 a | 2.6 a | 1.7 abc | 34.3 abcd | 27.7 abcd |
| Angelo | 14.7 ab | 7.5 a | 12.5 a | 14.9 a | 6.4 a | 3.5 abc | 36.5 abcde | 28.2 abcd |
| Aviao Branco | 14.8 ab | 7.2 a | 8.9 a | 8.8 a | 4.5 a | 2.2 abc | 31.2 abc | 28.3 abcd |
| B1P01 | 15.7 b | 6 a | 8.8 a | 6 a | 4.6 a | 1 ab | 31.2 abc | 29.3 abcd |
| B1P02 | 18.2 b | 7 a | 11.8 a | 9.7 a | 6.5 a | 2.5 abc | 32.9 abc | 28.7 abcd |
| B1P11 | 15 ab | 10.3 a | 9.6 a | 6.9 a | 5.1 a | 2.7 abc | 31.7 abc | 27.6 abcd |
| B1P15 | 10.2 ab | 8.5 a | 8.9 a | 10.3 a | 2.6 a | 3.7 abc | 30.8 ab | 25.3 abcd |
| Balachao | 16.2 b | 11.5 a | 12.7 a | 10.7 a | 6.6 a | 3 abc | 33.4 abc | 24.6 abc |
| Bridhan P-14 | 14 ab | 8.2 a | 11.1 a | 9.5 a | 6.8 a | 2.8 abc | 42.3 abcde | 35.8 cd |
| Canduacafri | 14.2 ab | 7.3 a | 14.4 a | 8.1 a | 5.8 a | 1.9 abc | 44.4 abcde | 30.8 abcd |
| Carrungo | 16.7 b | 10.3 a | 9.5 a | 10.2 a | 5.3 a | 1.6 abc | 53.4 e | 32.8 abcd |
| Chinchurica | 14 ab | 7.7 a | 11.2 a | 11.9 a | 4.3 a | 3.5 abc | 39.3 abcde | 29.2 abcd |
| Chupa | 14.8 ab | 12.8 a | 13.2 a | 11.1 a | 4.2 a | 5.9 c | 45.4 bcde | 36.3 cd |
| Ercidji | 7 a | 5.3 a | 10.1 a | 7.4 a | 2.5 a | 1.5 abc | 30.4 a | 22.7 a |
| Fardamento | 14.3 ab | 8.3 a | 12.2 a | 7.9 a | 5.1 a | 3.2 abc | 35.4 abcd | 27.5 abcd |
| Indamula | 15.3 b | 10 a | 13.2 a | 10.6 a | 8.3 a | 4.7 abc | 49.7 de | 37.1 d |
| IRB1P21 | 18.2 b | 12.2 a | 9.8 a | 11.9 a | 5.5 a | 4.1 abc | 33.9 abcd | 30 abcd |
| IRB1P26 | 13.8 ab | 9.5 a | 10.1 a | 7.3 a | 3.7 a | 1.9 abc | 37.2 abcde | 26.6 abcd |
| Mamima | 16.2 b | 9 a | 7.3 a | 11.8 a | 2.7 a | 5.3 bc | 38.4 abcde | 31.3 abcd |
| Mexoeira | 12 ab | 7.5 a | 12.3 a | 8.8 a | 4.7 a | 4.5 abc | 37.1 abcde | 23.8 a |
| Mpulo | 12.8 ab | 8.7 a | 10.3 a | 10.3 a | 4 a | 3.6 abc | 32 abc | 28.3 abcd |
| Mucabo | 11.3 ab | 9.2 a | 9.1 a | 9.8 a | 3.3 a | 2.3 abc | 38 abcde | 37.2 d |
| Mucamba | 12.2 ab | 8.7 a | 14.9 a | 8 a | 3.8 a | 1.2 abc | 42.1 abcde | 32.8 abcd |
| Mucandra | 14.2 ab | 9 a | 12.2 a | 8.6 a | 5.9 a | 4.1 abc | 40.7 abcde | 33.4 abcd |
| Muindeia | 14 ab | 9.3 a | 10.8 a | 9.7 a | 3.8 a | 3.1 abc | 46.2 cde | 32.2 abcd |
| Muluabo | 12.8 ab | 8.7 a | 11.2 a | 8.8 a | 5.6 a | 3.3 abc | 40.6 abcde | 31.5 abcd |
| Mutanzania | 14.2 ab | 9.7 a | 8.6 a | 12.3 a | 4.7 a | 3.6 abc | 39.3 abcde | 33.3 abcd |
| Mwenhe | 11.7 ab | 6.5 a | 10.7 a | 9.8 a | 4.3 a | 3.3 abc | 36.1 abcde | 24.1 ab |
| Namapupa | 17 b | 8.8 a | 9.7 a | 11.9 a | 5.6 a | 3.5 abc | 46 cde | 36.5 d |
| Namurawani | 15.2 ab | 8.2 a | 13.8 a | 8.9 a | 5.2 a | 2.9 abc | 45.1 bcde | 35.4 bcd |
| Nasaia | 17 b | 10.3 a | 12.8 a | 14.6 a | 5.4 a | 4.8 abc | 40 abcde | 31.7 abcd |
| Nasoco | 11.8 ab | 7.3 a | 10.5 a | 10 a | 4.7 a | 2.7 abc | 37 abcde | 29.5 abcd |
| Nene | 15.7 b | 9.7 a | 13.9 a | 11.9 a | 4.2 a | 4 abc | 43.1 abcde | 35.5 bcd |
| Nhacungo | 14.3 ab | 9.7 a | 9.8 a | 12.8 a | 4.9 a | 3.3 abc | 46.1 cde | 32.2 abcd |
| Paulo | 16 b | 8.2 a | 10.5 a | 8.8 a | 5.2 a | 1.9 abc | 37.3 abcde | 32.5 abcd |
| Sabuadigae | 13.2 ab | 7 a | 12 a | 9.7 a | 6.2 a | 2.9 abc | 43.3 abcde | 30.7 abcd |
| Simao | 13.2 ab | 10 a | 9.5 a | 8.3 a | 3.8 a | 2.7 abc | 38.7 abcde | 31.4 abcd |
| Sinabibi | 10.8 ab | 8.2 a | 12.6 a | 8.2 a | 3.3 a | 3 abc | 31.8 abc | 27.1 abcd |
| Tacabina | 12 ab | 5.5 a | 16.8 a | 9.7 a | 5.4 a | 2.6 abc | 42.7 abcde | 31.6 abcd |
| Vitinho | 12.3 ab | 6.7 a | 8.6 a | 6 a | 2.9 a | 0.9 a | 32.1 abc | 26.6 abcd |
| Trait | RDW | SDW | SB | RS | ||||
| Genotype | Control | Drought | Control | Drought | Control | Drought | Control | Drought |
| Agulha | 29.2 a | 10.9 a | 92.6 abc | 47.2 ab | 122.5 ab | 58.3 ab | 0.32 a | 0.23 abcd |
| Angelo | 40.3 a | 21.1 abc | 160.4 bc | 44.6 ab | 200.8 b | 67.4 ab | 0.25 a | 0.47 cd |
| Aviao Branco | 43.6 a | 14.3 abc | 123.6 abc | 71.5 b | 168 ab | 86.1 ab | 0.35 a | 0.2 abc |
| B1P01 | 35.7 a | 10.6 a | 81.9 abc | 41.4 ab | 117.7 ab | 52.1 ab | 0.44 a | 0.25 abcd |
| B1P02 | 51.4 a | 26.6 abc | 139.3 abc | 69.1 ab | 191.4 ab | 96.6 b | 0.37 a | 0.38 abcd |
| B1P11 | 47 a | 26.8 abc | 112.1 abc | 56.3 ab | 159.2 ab | 83.5 ab | 0.42 a | 0.47 cd |
| B1P15 | 27.4 a | 22.5 abc | 95.8 abc | 47.9 ab | 123.7 ab | 72.2 ab | 0.29 a | 0.47 cd |
| Balachao | 58.9 a | 24.9 abc | 148.2 bc | 57.4 ab | 207.2 b | 82.8 ab | 0.4 a | 0.43 bcd |
| Bridhan P-14 | 48.8 a | 18.1 abc | 171.3 bc | 67.1 ab | 220.5 b | 85.3 ab | 0.29 a | 0.27 abcd |
| Canduacafri | 51.6 a | 13 ab | 171.5 bc | 65.3 ab | 223.1 b | 78.4 ab | 0.3 a | 0.2 abc |
| Carrungo | 51.7 a | 15 abc | 186.9 bc | 45.1 ab | 238.7 b | 61.6 ab | 0.28 a | 0.34 abcd |
| Chinchurica | 45.3 a | 20.2 abc | 117.2 abc | 49.1 ab | 165.5 ab | 69.5 ab | 0.39 a | 0.41 abcd |
| Chupa | 52.5 a | 42.2 c | 150.1 bc | 76.6 b | 204.5 b | 120.8 b | 0.35 a | 0.55 d |
| Ercidji | 21.9 a | 9.5 a | 56.3 a | 28.6 a | 79 a | 38.5 a | 0.39 a | 0.34 abcd |
| Fardamento | 28.7 a | 13.6 abc | 80.4 ab | 45.5 ab | 109.1 ab | 59.6 ab | 0.36 a | 0.3 abcd |
| Indamula | 65.2 a | 26.8 abc | 202 c | 81.5 b | 267.4 b | 109 b | 0.32 a | 0.33 abcd |
| IRB1P21 | 45.5 a | 21.6 abc | 132.9 abc | 70.8 ab | 180.1 ab | 93.3 ab | 0.34 a | 0.3 abcd |
| IRB1P26 | 45.3 a | 17.1 abc | 153.8 bc | 68.7 ab | 199.9 b | 86.7 ab | 0.29 a | 0.25 abcd |
| Mamima | 43.2 a | 15.7 abc | 137 abc | 58 ab | 180.7 ab | 74.4 ab | 0.32 a | 0.27 abcd |
| Mexoeira | 34.3 a | 16.9 abc | 118.2 abc | 37.1 ab | 152.5 ab | 54.1 ab | 0.29 a | 0.46 cd |
| Mpulo | 27.7 a | 20.6 abc | 92.1 abc | 58.6 ab | 120.6 ab | 80 ab | 0.3 a | 0.35 abcd |
| Mucabo | 32.2 a | 16.3 abc | 94.2 abc | 67.5 ab | 127.2 ab | 83.9 ab | 0.34 a | 0.24 abcd |
| Mucamba | 36.2 a | 11.4 ab | 106.1 abc | 54.3 ab | 142.4 ab | 65.9 ab | 0.34 a | 0.21 abc |
| Mucandra | 38.7 a | 25.5 abc | 115.2 abc | 64.1 ab | 154.2 ab | 89.7 ab | 0.34 a | 0.4 abcd |
| Muindeia | 44.9 a | 20 abc | 158.4 bc | 57.2 ab | 204.7 b | 77.2 ab | 0.28 a | 0.35 abcd |
| Muluabo | 29.3 a | 15.8 abc | 83.5 abc | 58.9 ab | 112.9 ab | 75 ab | 0.35 a | 0.27 abcd |
| Mutanzania | 43.9 a | 25.4 abc | 136.7 abc | 71.8 b | 180.7 ab | 98.2 b | 0.32 a | 0.35 abcd |
| Mwenhe | 29.5 a | 19.1 abc | 109.1 abc | 43.8 ab | 138.7 ab | 63.2 ab | 0.27 a | 0.44 bcd |
| Namapupa | 54.5 a | 24.4 abc | 152.7 bc | 74.8 b | 208.6 b | 99.6 b | 0.36 a | 0.32 abcd |
| Namurawani | 37.3 a | 20.7 abc | 141.3 bc | 69.5 ab | 178.9 ab | 90.3 ab | 0.26 a | 0.3 abcd |
| Nasaia | 50.3 a | 27.6 abc | 155.8 bc | 73.3 b | 207.4 b | 101.4 b | 0.32 a | 0.38 abcd |
| Nasoco | 30.6 a | 25 abc | 96.1 abc | 62 ab | 127.2 ab | 87.4 ab | 0.32 a | 0.41 abcd |
| Nene | 51.6 a | 36.9 bc | 138.8 abc | 76.8 b | 191 ab | 116.9 b | 0.37 a | 0.48 cd |
| Nhacungo | 29.8 a | 16.6 abc | 109.4 abc | 49.6 ab | 139.9 ab | 66.7 ab | 0.27 a | 0.34 abcd |
| Paulo | 35.6 a | 14.5 abc | 117.5 abc | 88.7 b | 153.6 ab | 104.5 b | 0.3 a | 0.16 a |
| Sabuadigae | 37.8 a | 15.4 abc | 95.7 abc | 59.3 ab | 134.3 ab | 75.1 ab | 0.4 a | 0.26 abcd |
| Simao | 47.4 a | 25.6 abc | 142.1 bc | 73.9 b | 192.3 ab | 99.7 b | 0.33 a | 0.34 abcd |
| Sinabibi | 29.4 a | 18.1 abc | 82 abc | 46.6 ab | 111.6 ab | 64.8 ab | 0.36 a | 0.38 abcd |
| Tacabina | 56.7 a | 10.9 a | 149.1 bc | 62.8 ab | 208.1 b | 74.1 ab | 0.38 a | 0.17 ab |
| Vitinho | 27.5 a | 13.8 abc | 87.8 abc | 50.7 ab | 116.1 ab | 64.9 ab | 0.31 a | 0.27 abcd |
| Trait | Water | σ2g | σ2e | σ2p | GCV (%) | PCV (%) | H2 (%) | GA | GAM (%) |
|---|---|---|---|---|---|---|---|---|---|
| Number of roots | Control | 1.95 | 9.1 | 4.98 | 9.97 | 15.94 | 39.1 | 1.8 | 12.84 |
| Drought | 1.74 | 3.83 | 3.01 | 15.46 | 20.38 | 57.6 | 2.06 | 24.18 | |
| Longest root | Control | 1.66 | 7.34 | 4.11 | 11.62 | 18.26 | 40.5 | 1.69 | 15.23 |
| Drought | 0.86 | 10.2 | 4.26 | 9.42 | 20.97 | 20.2 | 0.86 | 8.71 | |
| Number of roots ≥ 5 cm | Control | 0.01 | 0.13 | 0.05 | 5.89 | 13.53 | 19 | 0.09 | 5.28 |
| Drought | 0.04 | 0.15 | 0.09 | 15.24 | 22.32 | 46.6 | 0.29 | 21.44 | |
| Shoot length | Control | 0.01 | 0.02 | 0.02 | 3.33 | 4 | 68.9 | 0.21 | 5.69 |
| Drought | 0.01 | 0.01 | 0.02 | 3.38 | 3.76 | 80.5 | 0.21 | 6.24 | |
| Root dry weight | Control | 0.02 | 0.13 | 0.07 | 4.29 | 7.17 | 35.8 | 0.19 | 5.29 |
| Drought | 0.07 | 0.13 | 0.12 | 9.29 | 11.68 | 63.2 | 0.45 | 15.21 | |
| Shoot dry weight | Control | 0.04 | 0.1 | 0.08 | 4.32 | 5.78 | 55.8 | 0.32 | 6.65 |
| Drought | 0.04 | 0.06 | 0.06 | 4.76 | 5.86 | 66 | 0.32 | 7.97 | |
| Seedling biomass | Control | 0.04 | 0.1 | 0.07 | 3.88 | 5.27 | 54.3 | 0.3 | 5.89 |
| Drought | 0.04 | 0.06 | 0.06 | 4.41 | 5.44 | 65.7 | 0.32 | 7.36 | |
| Root to shoot ratio | Control | 0 | 0.06 | 0.02 | 0 | ND | 0 | 0 | 0 |
| Drought | 0.05 | 0.11 | 0.09 | ND | ND | 59.4 | 0.37 | ND |
| Group I (Tolerant) | Group II (Moderately Tolerant) | Group III (Moderately Sensitive) | Group IV (Sensitive) | ||||
|---|---|---|---|---|---|---|---|
| Genotype | CDSRI | Genotype | CDSRI | Genotype | CDSRI | Genotype | CDSRI |
| B1P15 | 10.19 | Sinabibi | 4.23 | Namapupa | −0.35 | Mucamba | −4.70 |
| Chupa | 9.17 | Mamima | 3.61 | Namurawani | −0.91 | B1P01 | −5.56 |
| Mucabo | 7.48 | Muluabo | 2.96 | Aviao Branco | −1.25 | Carrungo | −7.34 |
| Mpulo | 6.73 | IRB1P21 | 2.81 | B1P02 | −1.64 | Canduacafri | −9.52 |
| Nasoco | 5.41 | Mucandra | 2.31 | Agulha | −1.93 | Tacabina | −9.84 |
| Nene | 5.25 | B1P11 | 1.96 | Chinchurica | −2.00 | ||
| Mutanzania | 5.18 | Simao | 1.85 | Vitinho | −2.10 | ||
| Nasaia | 1.79 | Fardamento | −2.21 | ||||
| Mwenhe | 1.11 | Sabuadigae | −2.59 | ||||
| Nhacungo | 0.88 | Balachao | −2.80 | ||||
| Paulo | 0.73 | Mexoeira | −2.87 | ||||
| Angelo | 0.36 | Indamula | −2.88 | ||||
| Muindeia | −3.02 | ||||||
| IRB1P26 | −3.18 | ||||||
| Bridhan P-14 | −3.66 | ||||||
| Ercidji | −3.69 | ||||||
| Genotype Name | Origin | Type | Notes |
|---|---|---|---|
| Agulha | IIAM | Landrace | Rainfed lowland |
| Angelo | IIAM | Landrace | Rainfed lowland |
| Aviao Branco | IIAM | Landrace | Rainfed lowland |
| Balachao | IIAM | Landrace | Rainfed lowland |
| Bridhan P-14 | IIAM | Landrace | Rainfed lowland |
| Canduacafri | IIAM | Landrace | Rainfed lowland |
| Carrungo | IIAM | Landrace | Rainfed lowland |
| Chinchurica | IIAM | Landrace | Rainfed lowland |
| Chupa | IIAM | Landrace | Rainfed lowland |
| Ercidji | IIAM | Landrace | Rainfed lowland |
| Fardamento | IIAM | Landrace | Rainfed lowland |
| Indamula | IIAM | Landrace | Rainfed lowland |
| Mamima | IIAM | Landrace | Rainfed lowland |
| Mexoeira | IIAM | Landrace | Rainfed lowland |
| Mpulo | IIAM | Landrace | Rainfed lowland |
| Mucabo | IIAM | Landrace | Rainfed lowland |
| Mucamba | IIAM | Landrace | Rainfed lowland |
| Mucandra | IIAM | Landrace | Rainfed lowland |
| Muindeia | IIAM | Landrace | Rainfed lowland |
| Muluabo | IIAM | Landrace | Rainfed lowland |
| Mutanzania | IIAM | Landrace | Rainfed lowland |
| Mwenhe | IIAM | Landrace | Rainfed lowland |
| Namapupa | IIAM | Landrace | Rainfed lowland |
| Namurawani | IIAM | Landrace | Rainfed lowland |
| Nasaia | IIAM | Landrace | Rainfed lowland |
| Nasoco | IIAM | Landrace | Rainfed lowland |
| Nene | IIAM | Landrace | Rainfed lowland |
| Nhacungo | IIAM | Landrace | Rainfed lowland |
| Paulo | IIAM | Landrace | Rainfed lowland |
| Sabuadigae | IIAM | Landrace | Rainfed lowland |
| Simao | IIAM | Landrace | Rainfed lowland |
| Sinabibi | IIAM | Landrace | Rainfed lowland |
| Tacabina | IIAM | Landrace | Rainfed lowland |
| Vitinho | IIAM | Landrace | Rainfed lowland |
| B1P01 | Africa rice | Line | Rainfed lowland |
| B1P02 | Africa rice | Line | Rainfed lowland |
| B1P11 | Africa rice | Line | Rainfed lowland |
| B1P15 | Africa rice | Line | Rainfed lowland |
| IRB1P21 | IRRI | Line | Rainfed lowland |
| IRB1P26 | IRRI | Line | Rainfed lowland |
| Month | Temperature °C | Relative Humidity% | Total Rainfall (mm) | Ep (mm/d) | ||
|---|---|---|---|---|---|---|
| Min | Max | Min | Max | |||
| June | 18.6 | 28.1 | 68 | 98 | 35.5 | 3.8 |
| July | 16.5 | 26.9 | 59 | 98 | 25.3 | 2.7 |
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© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
Share and Cite
Warioba, K.G.; Macandza, C.M.; Moiana, L.D. Screening Rice (Oryza sativa L.) Genotypes for Seedling-Stage Drought Tolerance. Stresses 2026, 6, 13. https://doi.org/10.3390/stresses6010013
Warioba KG, Macandza CM, Moiana LD. Screening Rice (Oryza sativa L.) Genotypes for Seedling-Stage Drought Tolerance. Stresses. 2026; 6(1):13. https://doi.org/10.3390/stresses6010013
Chicago/Turabian StyleWarioba, Kajale George, Celsa Mondlane Macandza, and Leonel Domingos Moiana. 2026. "Screening Rice (Oryza sativa L.) Genotypes for Seedling-Stage Drought Tolerance" Stresses 6, no. 1: 13. https://doi.org/10.3390/stresses6010013
APA StyleWarioba, K. G., Macandza, C. M., & Moiana, L. D. (2026). Screening Rice (Oryza sativa L.) Genotypes for Seedling-Stage Drought Tolerance. Stresses, 6(1), 13. https://doi.org/10.3390/stresses6010013

