| Literature DB >> 25904970 |
Jan F Humplík1, Dušan Lazár2, Alexandra Husičková2, Lukáš Spíchal1.
Abstract
Current methods of in-house plant phenotyping are providing a powerful new tool for plant biology studies. The self-constructed and commercial platforms established in the last few years, employ non-destructive methods and measurements on a large and high-throughput scale. The platforms offer to certain extent, automated measurements, using either simple single sensor analysis, or advanced integrative simultaneous analysis by multiple sensors. However, due to the complexity of the approaches used, it is not always clear what such forms of plant phenotyping can offer the potential end-user, i.e. plant biologist. This review focuses on imaging methods used in the phenotyping of plant shoots including a brief survey of the sensors used. To open up this topic to a broader audience, we provide here a simple introduction to the principles of automated non-destructive analysis, namely RGB, chlorophyll fluorescence, thermal and hyperspectral imaging. We further on present an overview on how and to which extent, the automated integrative in-house phenotyping platforms have been used recently to study the responses of plants to various changing environments.Entities:
Keywords: Biomass production; Chlorophyll fluorescence imaging; Hyperspectral imaging; Plant phenotyping; RGB digital imaging; Shoot growth; Thermal imaging
Year: 2015 PMID: 25904970 PMCID: PMC4406171 DOI: 10.1186/s13007-015-0072-8
Source DB: PubMed Journal: Plant Methods ISSN: 1746-4811 Impact factor: 4.993
List of selected works describing automated high-throughput analysis to study plant stress responses
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| Granier et al. 2006; [ |
| drought-stress | methodology | RGB (top view) | PHENOPSIS |
| Skirycz et al. 2011; [ |
| drought-stress | applied | RGB (top view) | WIWAM |
| Clauw et al. 2015; [ |
| drought-stress | applied | RGB (top view) | WIWAM |
| Tisné et al. 2013; [ |
| drought-stress | applied | RGB (top view) | PHENOSCOPE |
| Neumann et al. 2015; [ | barley | drought-stress | methodology | RGB (multiple views) | LemnaTec |
| Pereyra-Irujo et al. 2012; [ | soybean | drought-stress | methodology | RGB (two-views) | GlyPh (self-construction) |
| Honsdorf et al. 2014; [ | barley, (wild species) | drought-stress | applied | RGB (multiple views) | LemnaTec |
| Coupel-Ledru et al. 2014; [ | grapevine | drought-stress | applied | RGB (multiple views) | LemnaTec |
| Petrozza et al. 2014; [ | tomato | drought-stress | applied | RGB (multiple views), hyperspectral NIR, SLCFIM | LemnaTec |
| Harshavardhan et al. 2014; [ |
| drought-stress | applied | RGB (top view), hyperspectral NIR | LemnaTec |
| Bresson et al. 2013; [ |
| drought-stress | applied | RGB (top view) | PHENOPSIS |
| Bresson et al. 2014; [ |
| drought-stress | applied | RGB (top view), TLCFIM | PHENOPSIS |
| Chen et al. 2014; [ | barley | drought-stress | methodology | RGB (multiple-views), hyperspectral NIR, SLCFIM | LemnaTec |
| Fehér-Juhász et al. 2014; [ | wheat | drought-stress | applied | RGB (multiple views), thermoimaging | self-construction, semi-automated |
| Cseri et al. 2013; [ | barley | drought-stress | methodology | RGB (multiple views), thermoimaging | self-construction, semi-automated |
| Vasseur et al. 2014 [ |
| heat-stress, drought-stress | applied | RGB (top view) | PHENOPSIS |
| Rajendran et al. 2009; [ | wheat | salt-stress | applied | RGB (multiple views) | LemnaTec |
| Harris et al. 2010; [ | wheat, barley | salt-stress | applied | RGB (multiple views) | LemnaTec |
| Golzarian et al. 2011; [ | barley | salt-stress | methodology | RGB (multiple views) | LemnaTec |
| Schilling et al. 2014; [ | barley | salt-stress | applied | RGB (multiple views) | LemnaTec |
| Hairmansis et al. 2014; [ | rice | salt-stress | applied | RGB (multiple views) SLCFIM | LemnaTec |
| Chaerle et al. 2006; [ | tobacco | biotic-stress | methodology | thermoimaging, TLCFIM | self-construction |
| Poiré et al. 2014; [ |
| nutrient-deficiency | methodology | RGB (multiple views ) | LemnaTec |
| Neilson et al. 2015; [ |
| nutrient-deficiency | methodology | RGB (multiple views ), hyperspectral NIR | LemnaTec |
| Chaerle et al. 2007; [ | bean | nutrient-deficiency, biotic-stress | methodology | RGB (top view), thermoimaging, TLCFIM | self-construction |
| Jansen et al. 2009; [ |
| drought-stress, chilling-stress | methodology | RGB (top view), KCFIM | GROWSCREEN (self-construction) |
| Humplík et al. 2015; [ | pea, field cultivars | cold-stress | methodology | RGB (multiple views), KCFIM | PlantScreen |
Figure 1Scheme of the grow chamber-based automated high-throughput phenotyping platform PlantScreen™ (Photons Systems Instruments, Brno, Czech Republic), installed at Palacký University in Olomouc, Czech Republic [20]. The system is located in a growth chamber with white LED illumination (max. 1000 μmol photons m−2 s−1) and controlled environment (10 – 40°C, 30 – 99% relative humidity). The growth area with roller conveyer has capacity of up to 640 Arabidopsis, cereals and other crops grown in standardized pots. The measuring cabinet contains acclimation chamber for dark adaptation of plants coupled with an automated weighting and watering area. The cabinet is equipped with KCFIM and RGB imaging (top and 2 side views), thermoimaging (IR) to measure stomata openness and SWIR hyperspectral imaging to determine water content. The platform can be controlled either from the place or via remote control software. The operating software enables automatic data evaluation.
Figure 2The illustrative figure presenting outcome of simultaneous analysis of control and salt-stressed Arabidopsis plants, using RGB, hyperspectral and Chl fluorescence imaging. The 18 DAG old soil-grown Arabidospis plants were treated with 250 mM NaCl (salt-stressed) and water (control) and after 48 hours were analysed by different sensors for comparison in: morphology (top-view RGB imaging can be used for computation of rosette area or shape parameters), spatial distribution of vegetation index reflecting changes in the chlorophyll content (NDVI) provided by VIS/NIR hyperspectral camera, and the changes in maximal quantum yield of PSII photochemistry for a dark-adapted state (ΦPo, also referred as FV/FM) reflecting the photosynthetic activity of the plants obtained from KCFIM.