The Impact of the Natural Grass-Growing Model on the Development of Korla Fragrant Pear Fruit, as Well as Its Influence on Post-Harvest Sugar Metabolism and the Expression of Key Enzyme Genes Involved in Fruit Sugar Synthesis
Abstract
:1. Introduction
2. Materials and Methods
2.1. Test Situation
2.2. Experimental Design
2.3. Determination of Sugar Content
2.3.1. Determination of Glucose Content
- (1)
- Sample processing
- (2)
- Sample Determination
2.3.2. Determination of Fructose Content
- (1)
- Sample Treatment
- (2)
- Sample Determination
2.3.3. Determination of Sucrose Content
- (1)
- Sample processing
- (2)
- Sample Determination
2.3.4. Determination of Sorbitol Content
- (1)
- Sample processing
- (2)
- Sample Determination
2.4. Determination of Enzyme Activities Related to Sugar Metabolism
- (1)
- Crude enzyme solution extraction
- (2)
- Sample Determination
2.5. Extraction of RNA from the Pulp and Peel of Korla Fragrant Pears and Digestion of DNA
2.6. qRT-PCR
2.7. Fuzzy Comprehensive Evaluation Method
- (1)
- Calculate the membership function.
- (2)
- Calculate the weight using the mutation coefficient method (analysis of the degree of correlation with gray theory).
- (3)
- Conduct a comprehensive evaluation of fruit quality based on the weighted coefficients, using Formula (2).
2.8. Modeling Algorithm
2.9. Data Analysis Methods
3. Results
3.1. The Changes in the Fresh Weight of Flesh and Peel Sugar Components of Korla Fragrant Pears During Fruit Development and Storage Under Two Cultivation Patterns
3.2. The Changes in the Enzyme Activities of the Pulp of Korla Fragrant Pears During Fruit Development Under Two Cultivation Modes
3.3. The Changes in the Activity of Enzymes in the Peel of Korla Fragrant Pears During Fruit Development Under Two Cultivation Modes
3.4. Changes in Enzyme Gene Expression in Pulp of Korla Fragrant Pear During Fruit Development Under Two Cultivation Modes
3.5. Changes in Peel Enzyme Gene Expression in Korla Fragrant Pear During Fruit Development Under Two Cultivation Modes
3.6. The Changes in the Enzyme Activity of the Pulp of Korla Fragrant Pears During Storage Under Two Cultivation Modes
3.7. The Changes in the Activity of Enzymes in the Peel of Korla Fragrant Pears During Storage Under Two Cultivation Modes
3.8. Changes in Enzyme Gene Expression in Pulp of Korla Fragrant Pear During Storage Under Two Cultivation Modes
3.9. Changes in Peel Enzyme Gene Expression in Korla Fragrant Pear During Storage Under Two Cultivation Modes
3.10. Screening of Key Factors Affecting Sugar Content in Korla Fragrant Pears
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
GK | Glyceraldehyde kinase |
PFK | Phosphofructokinase |
HK | Hexokinase |
FK | Fructokinase |
RF | Random Forest |
KNN | K-Nearest Neighbor |
SVM | Support Vector Machine |
PSO | Particle Swarm Optimization |
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Name | Sequence (5′-3′) | Tm (°C) | Length (bp) |
---|---|---|---|
GADPH-F | GTGCCCACTGTTGATGTTTCC | 54.79 | 22 |
GADPH-R | CCTTCTGACTCCTCCTTGATAGC | 55.13 | 24 |
GK-F | GGTCTTCCTGTCATCGCATCCTTG | 54.10 | 25 |
GK-R | TTACCGCTCAAACTACCGACAATCC | 54.52 | 26 |
PFK-F | ATGTCCAGGTTCCGCTGCTT | 55.07 | 21 |
PFK-R | ACTGGAACTGCCGTTGGGAA | 54.70 | 21 |
HK-F | GAGCCTGGAGGTAGACGAGACAC | 54.06 | 24 |
Algorithm | |
---|---|
RF | |
SVM | |
KNN |
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Yu, M.; Wang, L.; Chen, Y.; Fan, W.; Wang, H.; Guo, K.; Tao, S.; Gong, X.; Bao, J. The Impact of the Natural Grass-Growing Model on the Development of Korla Fragrant Pear Fruit, as Well as Its Influence on Post-Harvest Sugar Metabolism and the Expression of Key Enzyme Genes Involved in Fruit Sugar Synthesis. Agriculture 2025, 15, 792. https://doi.org/10.3390/agriculture15070792
Yu M, Wang L, Chen Y, Fan W, Wang H, Guo K, Tao S, Gong X, Bao J. The Impact of the Natural Grass-Growing Model on the Development of Korla Fragrant Pear Fruit, as Well as Its Influence on Post-Harvest Sugar Metabolism and the Expression of Key Enzyme Genes Involved in Fruit Sugar Synthesis. Agriculture. 2025; 15(7):792. https://doi.org/10.3390/agriculture15070792
Chicago/Turabian StyleYu, Mingyang, Lanfei Wang, Yan Chen, Weifan Fan, Hao Wang, Kailu Guo, Shutian Tao, Xin Gong, and Jianping Bao. 2025. "The Impact of the Natural Grass-Growing Model on the Development of Korla Fragrant Pear Fruit, as Well as Its Influence on Post-Harvest Sugar Metabolism and the Expression of Key Enzyme Genes Involved in Fruit Sugar Synthesis" Agriculture 15, no. 7: 792. https://doi.org/10.3390/agriculture15070792
APA StyleYu, M., Wang, L., Chen, Y., Fan, W., Wang, H., Guo, K., Tao, S., Gong, X., & Bao, J. (2025). The Impact of the Natural Grass-Growing Model on the Development of Korla Fragrant Pear Fruit, as Well as Its Influence on Post-Harvest Sugar Metabolism and the Expression of Key Enzyme Genes Involved in Fruit Sugar Synthesis. Agriculture, 15(7), 792. https://doi.org/10.3390/agriculture15070792