RhizoChamber-Monitor: a robotic platform and software enabling characterization of root growth

In order to efficiently determine genotypic differences in rooting patterns of crops, novel hardware and software are needed simultaneously to characterize dynamics of root development. We describe a prototype robotic monitoring platform-the RhizoChamber-Monitor for analyzing growth patterns of plan...

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Veröffentlicht in:Plant methods 2018-06, Vol.14 (1), p.44-44, Article 44
Hauptverfasser: Wu, Jie, Wu, Qian, Pagès, Loïc, Yuan, Yeqing, Zhang, Xiaolei, Du, Mingwei, Tian, Xiaoli, Li, Zhaohu
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Sprache:eng
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Zusammenfassung:In order to efficiently determine genotypic differences in rooting patterns of crops, novel hardware and software are needed simultaneously to characterize dynamics of root development. We describe a prototype robotic monitoring platform-the RhizoChamber-Monitor for analyzing growth patterns of plant roots automatically. The RhizoChamber-Monitor comprises an automatic imaging system for acquiring sequential images of roots which grow on a cloth substrate in custom rhizoboxes, an automatic irrigation system and a flexible shading arrangement. A customized image processing software was developed to analyze the spatio-temporal dynamics of root growth from time-course images of multiple plants. This software can quantify overall growth of roots and extract detailed growth traits (e.g. dynamics of length and diameter) of primary roots and of individual lateral roots automatically. It can also identify local growth traits of lateral roots (pseudo-mean-length and pseudo-maximum-length) semi-automatically. Two cotton genotypes were used to test both the physical platform and the analysis software. The combination of hardware and software is expected to facilitate quantification of root geometry and its spatio-temporal growth patterns, and therefore to provide opportunities for high-throughput root phenotyping in support of crop breeding to optimize root architecture.
ISSN:1746-4811
1746-4811
DOI:10.1186/s13007-018-0316-5