phenotyping experiment
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2021 ◽  
Vol 13 (24) ◽  
pp. 4997
Author(s):  
Thuan Ha ◽  
Hema Duddu ◽  
Kirstin Bett ◽  
Steve J. Shirtliffe

Plant breeding experiments typically contain a large number of plots, and obtaining phenotypic data is an integral part of most studies. Image-based plot-level measurements may not always produce adequate precision and will require sub-plot measurements. To perform image analysis on individual sub-plots, they must be segmented from plots, other sub-plots, and surrounding soil or vegetation. This study aims to introduce a semi-automatic workflow to segment irregularly aligned plots and sub-plots in breeding populations. Imagery from a replicated lentil diversity panel phenotyping experiment with 324 populations was used for this study. Image-based techniques using a convolution filter on an excess green index (ExG) were used to enhance and highlight plot rows and, thus, locate the plot center. Multi-threshold and watershed segmentation were then combined to separate plants, ground, and sub-plot within plots. Algorithms of local maxima and pixel resizing with surface tension parameters were used to detect the centers of sub-plots. A total of 3489 reference data points was collected on 30 random plots for accuracy assessment. It was found that all plots and sub-plots were successfully extracted with an overall plot extraction accuracy of 92%. Our methodology addressed some common issues related to plot segmentation, such as plot alignment and overlapping canopies in the field experiments. The ability to segment and extract phenometric information at the sub-plot level provides opportunities to improve the precision of image-based phenotypic measurements at field-scale.


2020 ◽  
Vol 3 ◽  
Author(s):  
Kasper Johansen ◽  
Mitchell J. L. Morton ◽  
Yoann Malbeteau ◽  
Bruno Aragon ◽  
Samer Al-Mashharawi ◽  
...  

2019 ◽  
Author(s):  
Jiaping Wang ◽  
Yu Liu ◽  
Guangxian Zhao ◽  
Jianyi Gao ◽  
Junlian Liu ◽  
...  

Abstract Background Candida albicans is an opportunistic pathogenic yeast, which could become pathogenic in various stressful environmental factors including the spaceflight environment. In this study, we aim to explore the phenotypic changes and possible mechanisms of Candida albicans after exposure to spaceflight conditions.Results The effect of Candida albicans after carried on the "SJ-10" satellite for 12 days was evaluated by proliferation, morphogenic, environmental resistance and virulence experiment. The result showed that the proliferation rate, biofilm formation, antioxidant capacity, cytotoxicity and filamentous morphology of Candida albicans were increased in the spaceflight group compared to the control group. Proteomics and metabolomics technologies were used to analyze the profiles of proteins and metabolites in Candida albicans under spaceflight conditions. Proteomic analysis identified 564 up-regulated proteins involved in ribosome, DNA replication, base excision repair and sulfur metabolism in the spaceflight group. And 345 down-regulated proteins related to metabolic processes were observed. The metabolomic analysis found 5 different expressed metabolites. The combined analysis of proteomic and metabolomic revealed the accumulation of cysteine and methionine in Candida albicans after spaceflight.Conclusions Mechanisms that could explain the results in the phenotyping experiment of Candida albicans were found through proteomic and metabolomic analysis. And our data provide an important basis for the assessment of the risk that Candida albicans could cause under spaceflight environment.


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