Data management for plant phenomics

被引:0
|
作者
Song-Lim Kim
Nita Solehati
In-Chan Choi
Kyung-Hwan Kim
Taek-Ryoun Kwon
机构
[1] The National Institute of Agricultural Sciences,
来源
Journal of Plant Biology | 2017年 / 60卷
关键词
Data management; Phenotypic traits; Plant phenomics;
D O I
暂无
中图分类号
学科分类号
摘要
Plant phenomics is an area of biology dealing with the analysis of phenotypic traits in plants. It can be cointegrated with other omics like functional genomics, transcriptomics, and metabolomics etc. Phenotypic traits are generated by images of RGB, hyperspectral, near-infrared, thermal, fluorescence imaging and so on. Characterized phenotypes can be revealed in various morphological and physiological measurements of size, growth pattern, biomass and color in plants. The image-base automated plant phenotyping is described as a high throughput plant facility. Despite its advantages like nondestructive phenotyping it has its own limitations such as plant’s complex architectures and environmental conditions at the time of image capture especially in the field. Phenomics generates a large number of images and metadata through phenotyping instruments, so there is a need for proper data processing and managements. Standardized data storage and sharing is also necessary for meaningful data acquisition along with statistical analysis. Processes of data management are largely consisted of data collection, storage, documentation, along with improvement of data quality. In future, plant phenomics must be developed efficiently to store, analyze, protect and share the acquired data. Modern high throughput plant phenotyping could be used effectively in plant improvement programs.
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页码:285 / 297
页数:12
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