A High-Throughput Gravimetric Phenotyping Platform for Real-Time Physiological Screening of Plant–Environment Dynamic Responses
暂无分享,去创建一个
Menachem Moshelion | Rony Wallach | Ahan Dalal | Itamar Shenhar | Ronny Bourstein | Amir Mayo | Yael Grunwald | Nir Averbuch | Ziv Attia | R. Wallach | M. Moshelion | Itamar Shenhar | Ziv Attia | Ahan Dalal | Yael Grunwald | Amir M. Mayo | Ronny Bourstein | Nir Averbuch
[1] L. G. Lacerda,et al. Black rice (Oryza sativa L.): A review of its historical aspects, chemical composition, nutritional and functional properties, and applications and processing technologies. , 2019, Food chemistry.
[2] Menachem Moshelion,et al. Quantitative and comparative analysis of whole-plant performance for functional physiological traits phenotyping: New tools to support pre-breeding and plant stress physiology studies. , 2019, Plant science : an international journal of experimental plant biology.
[3] R. Wallach,et al. High‐throughput physiological phenotyping and screening system for the characterization of plant–environment interactions , 2017, The Plant journal : for cell and molecular biology.
[4] C. Klukas,et al. Dissecting the Phenotypic Components of Crop Plant Growth and Drought Responses Based on High-Throughput Image Analysis[W][OPEN] , 2014, Plant Cell.
[5] M. Zaman-Allah,et al. Translating High-Throughput Phenotyping into Genetic Gain , 2018, Trends in plant science.
[6] T. Pridmore,et al. Plant Phenomics, From Sensors to Knowledge , 2017, Current Biology.
[7] B. Miflin,et al. Crop improvement in the 21st century. , 2000, Journal of experimental botany.
[8] Emine İkikat Tümer,et al. Analysis of the factors affecting the instrument and machinery assets in enterprises that deal with agricultural production: The case of Erzurum Province , 2010 .
[9] T. Sinclair,et al. Pot binding as a variable confounding plant phenotype: theoretical derivation and experimental observations , 2017, Planta.
[10] Ashutosh Kumar Singh,et al. Machine Learning for High-Throughput Stress Phenotyping in Plants. , 2016, Trends in plant science.
[11] F. Cellini,et al. Can High Throughput Phenotyping Help Food Security in the Mediterranean Area? , 2019, Front. Plant Sci..
[12] Qin Zhang,et al. A Review of Imaging Techniques for Plant Phenotyping , 2014, Sensors.
[13] Menachem Moshelion,et al. The advantages of functional phenotyping in pre-field screening for drought-tolerant crops. , 2016, Functional plant biology : FPB.
[14] O. Dhankher,et al. Climate resilient crops for improving global food security and safety. , 2018, Plant, cell & environment.
[15] S. Omholt,et al. Phenomics: the next challenge , 2010, Nature Reviews Genetics.
[16] Ulrich Schurr,et al. Future scenarios for plant phenotyping. , 2013, Annual review of plant biology.
[17] Menachem Moshelion,et al. Dynamic Physiological Phenotyping of Drought-Stressed Pepper Plants Treated With “Productivity-Enhancing” and “Survivability-Enhancing” Biostimulants , 2019, Front. Plant Sci..
[18] J. Foley,et al. Yield Trends Are Insufficient to Double Global Crop Production by 2050 , 2013, PloS one.
[19] M. Moshelion,et al. Current challenges and future perspectives of plant and agricultural biotechnology. , 2015, Trends in biotechnology.
[20] T. Sinclair,et al. Physiological phenotyping of plants for crop improvement. , 2015, Trends in plant science.
[21] Ian Stavness,et al. Deep Plant Phenomics: A Deep Learning Platform for Complex Plant Phenotyping Tasks , 2017, Front. Plant Sci..