Diversity Analysis of Global White Clover (Trifolium repens L.) Germplasm Based on Agronomic and Photosynthetic Traits and SLAF-Seq Technology
Abstract
1. Introduction
2. Results and Analysis
2.1. Analysis of Variation in Morphological Indicators in the Germplasm of White Clover
2.2. Principal Component Analysis of Morphological Traits of White Clover Germplasm
2.3. Correlation Analysis of Morphological Characters of the Tested White Clover Seed
2.4. Cluster Analysis of White Clover Germplasm
2.5. Comprehensive Evaluation
2.6. Analysis of Photosynthetic Variation in Clover Genotypes
2.7. Principal Component Analysis of Photosynthesis in White Clover Germplasm
2.8. Correlation Analysis of Photosynthesis in Experimental White Clover Germplasm
2.9. SLAF-Seq Sequencing for Library Evaluation
2.10. Sequencing Data Statistics
2.11. Development and Identification of SLAF Tags and SNP Markers
2.12. Population Genetic Structure and Genetic Evolution Analysis of White Clover Germplasm
2.12.1. Genetic Structure Analysis
2.12.2. Evolutionary Analysis of Population Systems
2.12.3. Association Between Genetic Groups and Geographic Origin
3. Discussion
3.1. Morphophysiological Diversity and Its Implications for Breeding
3.2. Decoupling of Genetic Structure from Geographical Origin
3.3. High-Throughput SNP Discovery and Robust Genotyping via SLAF-Seq
3.4. Integration of Phenotypic and Genomic Data for Future Breeding
4. Materials and Methods
4.1. Sample Collection and Growth Conditions
4.2. Morphological Indicators
4.3. Photosynthesis-Related Indicators
4.4. DNA Sampling, Extraction, and Quality Testing
4.5. SLAF Library Construction and High-Throughput Sequencing
4.6. Design of Enzymatic Cutting Scheme
4.7. Development of SLAF Tags and SNP Markers
4.8. Data Analysis and Statistical Methods
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Characteristics | Min | Max | Average | Standard Deviation | CV | F |
|---|---|---|---|---|---|---|
| LL | 1.25 | 4.94 | 1.83 | 0.45 | 24.59% | 9.92 |
| LW | 0.98 | 6.9 | 1.79 | 0.72 | 40.22% | 13.1 |
| LA | 0.13 | 28.13 | 2.47 | 2.8 | 113.36% | 12.29 |
| PH | 5.90 | 24.13 | 12.19 | 3.52 | 28.88% | 9.53 |
| PtL | 5.45 | 22.68 | 10.96 | 3.17 | 28.92% | 6.11 |
| PD | 0.75 | 3.21 | 1.48 | 0.41 | 27.70% | 0.08 |
| SL | 0.00 | 150.51 | 25.04 | 26.92 | 107.51% | 280.45 |
| NS | 0.00 | 146.00 | 14.76 | 20.52 | 139.02% | 162.43 |
| SD | 0.00 | 30.00 | 3.80 | 4.43 | 116.58% | 108.18 |
| Characteristic | Overall Contribution Across PC1–PC3 (%) | Cumulative Contribution (%) | Main Associated Component |
|---|---|---|---|
| LA | 12.32 | 12.32 | PC1 |
| LW | 12.22 | 24.54 | PC1 |
| PtL | 12.19 | 36.73 | PC1 |
| LL | 12.18 | 48.91 | PC1 |
| PH | 12.16 | 61.07 | PC1 |
| NS | 11.58 | 72.65 | PC2 |
| SD | 10.79 | 83.44 | PC2 |
| SN | 8.84 | 92.28 | PC2 |
| PD | 7.71 | 99.99 | PC1 |
| Group | LL | LW | LA | PH | PtL | PD | SL | NS | SD |
|---|---|---|---|---|---|---|---|---|---|
| I | 1.95 ± 0.06 | 2.12 ± 0.18 | 3.19 ± 0.83 | 13.69 ± 0.36 | 12.43 ± 0.33 | 1.65 ± 0.05 | 10.69 ± 1.73 | 4.26 ± 0.88 | 1.37 ± 0.27 |
| II | 1.76 ± 0.04 | 1.67 ± 0.04 | 2.01 ± 0.13 | 11.71 ± 0.38 | 10.36 ± 0.31 | 1.29 ± 0.04 | 45.14 ± 3.33 | 29.43 ± 2.92 | 7.24 ± 0.55 |
| III | 1.56 ± 0.053 | 1.45 ± 0.05 | 1.28 ± 0.17 | 8.37 ± 0.4 | 7.61 ± 0.43 | 1.44 ± 0.06 | 14.39 ± 3.13 | 7.13 ± 1.66 | 1.91 ± 0.43 |
| Comprehensive Evaluation | Group | F Value | Ranking |
|---|---|---|---|
| CF051269 | I | 9.143 | 1 |
| CF050015 | I | 7.878 | 2 |
| CF022385 | I | 4.943 | 3 |
| HB2017018 | II | 4.702 | 4 |
| CF002737 | II | 4.364 | 5 |
| CF022367 | I | 4.005 | 6 |
| XJ2016-93 | I | 3.981 | 7 |
| CF032210 | III | 3.925 | 8 |
| HB2017020 | II | 3.391 | 9 |
| CF022388 | II | 2.528 | 10 |
| Characteristics | Min | Max | Average | Standard Deviation | CV |
|---|---|---|---|---|---|
| Pn | 4.01 | 18.46 | 8.76 | 2.33 | 26.60% |
| Gs | 0.22 | 1.40 | 0.59 | 0.24 | 40.68% |
| Ci | 253.94 | 346.51 | 297.09 | 14.39 | 4.84% |
| Tr | 2.06 | 9.08 | 5.25 | 1.19 | 22.67% |
| Fv/Fm | 0.53 | 0.75 | 0.70 | 0.03 | 4.29% |
| Chla | 1.00 | 5.61 | 3.84 | 1.24 | 32.29% |
| Chlb | 0.80 | 5.72 | 3.30 | 1.28 | 38.79% |
| ChlT | 1.84 | 10.86 | 7.13 | 2.44 | 34.22% |
| Cx.c | 0.01 | 0.46 | 0.14 | 0.11 | 78.57% |
| Characteristic | Overall Contribution Across PC1–PC3 (%) | Cumulative Contribution (%) | Main Associated Component |
|---|---|---|---|
| ChlT | 14.08 | 14.08 | PC1 |
| Chla | 13.51 | 27.59 | PC1 |
| Chlb | 12.94 | 40.53 | PC1 |
| Ci | 12.67 | 53.2 | PC3 |
| Gs | 12.2 | 65.4 | PC2/PC3 |
| Tr | 10.06 | 75.46 | PC2 |
| Fv/Fm | 9.34 | 84.8 | PC4 |
| Pn | 8.87 | 93.67 | PC2 |
| Cx.c | 6.32 | 99.99 | PC4 |
| Sample | Total Read Number (Mb) | Q30 Percentage | GC Percentage |
|---|---|---|---|
| 174 accessions of T. repens | 2329.40 | 93.11 | 40.96 |
| Trifolium pratense | 158.80 | 95.92 | 34.21 |
| No. | Genotypes | Sampling Site | No. | Genotypes | Sampling Site |
| 1 | CF000052 | North America, Canada | 26 | CF022382 | Europe, Hungary |
| 2 | CF000053 | Oceania, Australia | 27 | CF022383 | Europe, Hungary |
| 3 | CF000056 | Asia, Guizhou, China | 28 | CF022384 | Europe, Italy |
| 4 | CF000108 | Oceania, New Zealand | 29 | CF022385 | Europe, Italy |
| 5 | CF000807 | Europe, Denmark | 30 | CF022386 | Europe, Romania |
| 6 | CF001320 | Europe, Netherlands | 31 | CF022387 | Europe, Lithuania |
| 7 | CF002737 | North America, United States | 32 | CF022388 | Europe, Lithuania |
| 8 | CF005832 | Europe, Netherlands | 33 | CF022389 | Europe, Lithuania |
| 9 | CF005835 | Oceania, New Zealand | 34 | CF022390 | North America, United States |
| 10 | CF005838 | Oceania, New Zealand | 35 | CF022394 | Europe, Italy |
| 11 | CF005842 | Oceania, New Zealand | 36 | CF022398 | Europe, France |
| 12 | CF005851 | Oceania, New Zealand | 37 | CF022399 | Europe, Greece |
| 13 | CF006886 | Asia, Yunnan, China | 38 | CF022405 | North America, United States |
| 14 | CF006887 | Asia, Qinghai, China | 39 | CF022408 | Europe, Italy |
| 15 | CF006900 | Asia, Xinjiang, China | 40 | CF022409 | Europe, France |
| 16 | CF008053 | Oceania, Australia | 41 | CF022410 | Europe, Greece |
| 17 | CF022345 | Europe, Denmark | 42 | CF022412 | Oceania, Australia |
| 18 | CF022347 | Europe, Denmark | 43 | CF022413 | North America, Canada |
| 19 | CF022350 | Asia, Chongqing, China | 44 | CF022417 | Asia, Beijing, China |
| 20 | CF022351 | Asia, Sichuan, China | 45 | CF022418 | Asia, Beijing, China |
| 21 | CF022365 | Asia, Xinjiang, China | 46 | CF022419 | Asia, Gansu, China |
| 22 | CF022367 | Asia, Xinjiang, China | 47 | CF022428 | Europe, Russia |
| 23 | CF022368 | Europe, Czech Republic | 48 | CF022441 | Asia, Beijing, China |
| 24 | CF022374 | Europe, Czech Republic | 49 | CF022444 | South America, Argentina |
| 25 | CF022379 | Europe, United Kingdom | 50 | CF022448 | North America, United States |
| No. | Genotypes | Sampling Site | No. | Genotypes | Sampling Site |
| 51 | CF022461 | Europe, Russia | 78 | CF032120 | Asia, Tajikistan |
| 52 | CF022480 | Europe, Ukraine | 79 | CF032123 | Asia, Tajikistan |
| 53 | CF022489 | Europe, Russia | 80 | CF032126 | Asia, Tajikistan |
| 54 | CF022510 | Europe, Sweden | 81 | CF032128 | Europe, Jexloval |
| 55 | CF022513 | South America, Ulayao | 82 | CF032132 | Asia, Kyrgyzstan |
| 56 | CF022514 | South America, Brazil | 83 | CF032133 | Asia, Azerbaijan |
| 57 | CF022519 | Europe, Russia | 84 | CF032134 | Asia, Armenia |
| 58 | CF022520 | Europe, Russia | 85 | CF032143 | North America, United States |
| 59 | CF022526 | Europe, Russia | 86 | CF032144 | South America, Brazil |
| 60 | CF022531 | Europe, Russia | 87 | CF032145 | South America, Peru |
| 61 | CF022533 | Europe, Poland | 88 | CF032147 | Europe, France |
| 62 | CF022551 | Europe, Georgia | 89 | CF032149 | Asia, Armenia |
| 63 | CF022559 | Europe, United Kingdom | 90 | CF032150 | Asia, Armenia |
| 64 | CF022562 | Europe, Russia | 91 | CF032151 | Europe, Georgia |
| 65 | CF022563 | Europe, Russia | 92 | CF032154 | Europe, Georgia |
| 66 | CF022565 | Europe, Hungary | 93 | CF032156 | Asia, Azerbaijan |
| 67 | CF022572 | Europe, Latvia | 94 | CF032168 | Asia, Kazakhstan |
| 68 | CF022573 | Europe, Estonia | 95 | CF032171 | Asia, Ukraine |
| 69 | CF022579 | Europe, Spain | 96 | CF032172 | Europe, Norway |
| 70 | CF022580 | Europe, Spain | 97 | CF032173 | Europe, Norway |
| 71 | CF022582 | Asia, Kazakhstan | 98 | CF032174 | Asia, Kyrgyzstan |
| 72 | CF022592 | Europe, Russia | 99 | CF032176 | Asia, Uzbekistan |
| 73 | CF025845 | Asia, Sichuan, China | 100 | CF032181 | Europe, United Kingdom |
| 74 | CF025851 | Asia, Jilin, China | 101 | CF032187 | Europe, Portugal |
| 75 | CF031027 | Asia, China | 102 | CF032188 | Europe, Portugal |
| 76 | CF031030 | Asia, Jilin, China | 103 | CF032189 | Europe, Portugal |
| 77 | CF031032 | Europe, Netherlands | 104 | CF032193 | Asia, Azerbaijan |
| No. | Genotypes | Sampling Site | No. | Genotypes | Sampling Site |
| 105 | CF032196 | South America, Peru | 132 | CF040846 | Europe, Sweden |
| 106 | CF032200 | Europe, Serbia | 133 | CF040855 | Asia, Hubei, China |
| 107 | CF032202 | Europe, Russia | 134 | CF046128 | Oceania, Australia |
| 108 | CF032204 | Europe, Russia | 135 | CF046321 | Asia, Jilin, China |
| 109 | CF032206 | Europe, Kazakhstan | 136 | CF048084 | Asia, Jilin, China |
| 110 | CF032207 | Europe, Kyrgyzstan | 137 | CF048223 | South America, Argentina |
| 111 | CF032209 | Europe, Spain | 138 | CF048240 | Asia, Xinjiang, China |
| 112 | CF032210 | Europe, Latvia | 139 | CF048260 | Asia, Nanjing, China |
| 113 | CF032211 | Europe, Latvia | 140 | CF048271 | Kunming, China, Asia |
| 114 | CF032213 | Europe, Smolensk | 141 | CF049863 | Europe, Russia |
| 115 | CF032216 | Europe, Russia | 142 | CF049908 | Europe, Sweden |
| 116 | CF032218 | North America, Canada | 143 | CF049972 | Europe, Russia |
| 117 | CF032222 | Asia, Gansu, China | 144 | CF049984 | Europe, Russia |
| 118 | CF032226 | Asia, Anhui, China | 145 | CF050515 | Asia, Shandong, China |
| 119 | CF032228 | Europe, Germany | 146 | CF051265 | Europe, Romania |
| 120 | CF032230 | Europe, Germany | 147 | CF051266 | Europe, Belgium |
| 121 | CF032232 | Europe, Germany | 148 | CF051267 | Europe, Belgium |
| 122 | CF037467 | Asia, Heilongjiang, China | 149 | CF051268 | Europe, Belgium |
| 123 | CF038677 | Asia, Xinjiang, China | 150 | CF051269 | Europe, Greece |
| 124 | CF038686 | Asia, Xinjiang, China | 151 | EZWC025 | Asia, Heilongjiang, China |
| 125 | CF038724 | Asia, Xinjiang, China | 152 | EZWC065 | Asia, Heilongjiang, China |
| 126 | CF038444 | Asia, Liaoning, China | 153 | EZWC066 | Asia, Heilongjiang, China |
| 127 | CF040329 | Asia, Sichuan, China | 154 | EZWC067 | Asia, Heilongjiang, China |
| 128 | CF040330 | Asia, Sichuan, China | 155 | EZWC068 | Asia, Heilongjiang, China |
| 129 | CF040839 | Europe, Ukraine | 156 | HB2017018 | Asia, Heilongjiang, China |
| 130 | CF040841 | Europe, Estonia | 157 | HB2017019 | Asia, Hubei, China |
| 131 | CF040842 | Europe, Poland | 158 | HB2017020 | Nanyang, China, Asia |
| No. | Genotypes | Sampling Site | No. | Genotypes | Sampling Site |
| 159 | HB2017036 | Asia, Hubei, China | 167 | JL17-086 | Asia, Heilongjiang, China |
| 160 | HB2017043 | Asia, Hubei, China | 168 | JL17-087 | Asia, China |
| 161 | HB2017063 | Asia, Nanyang, China | 169 | JL17-088 | Asia, China |
| 162 | HB2018022 | Asia, Nanyang, China | 170 | JL18-076 | Asia, China |
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Sang, R.; Noor, M.; Feng, G.; Han, M.; Feng, Y.; Mao, P.; Yan, X.; Meng, L. Diversity Analysis of Global White Clover (Trifolium repens L.) Germplasm Based on Agronomic and Photosynthetic Traits and SLAF-Seq Technology. Int. J. Mol. Sci. 2026, 27, 4882. https://doi.org/10.3390/ijms27114882
Sang R, Noor M, Feng G, Han M, Feng Y, Mao P, Yan X, Meng L. Diversity Analysis of Global White Clover (Trifolium repens L.) Germplasm Based on Agronomic and Photosynthetic Traits and SLAF-Seq Technology. International Journal of Molecular Sciences. 2026; 27(11):4882. https://doi.org/10.3390/ijms27114882
Chicago/Turabian StyleSang, Ruxue, Maryam Noor, Guilan Feng, Mengli Han, Yuxi Feng, Peichun Mao, Xuebing Yan, and Lin Meng. 2026. "Diversity Analysis of Global White Clover (Trifolium repens L.) Germplasm Based on Agronomic and Photosynthetic Traits and SLAF-Seq Technology" International Journal of Molecular Sciences 27, no. 11: 4882. https://doi.org/10.3390/ijms27114882
APA StyleSang, R., Noor, M., Feng, G., Han, M., Feng, Y., Mao, P., Yan, X., & Meng, L. (2026). Diversity Analysis of Global White Clover (Trifolium repens L.) Germplasm Based on Agronomic and Photosynthetic Traits and SLAF-Seq Technology. International Journal of Molecular Sciences, 27(11), 4882. https://doi.org/10.3390/ijms27114882

