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The dark green coloration of bunching onion leaf blades is a key determinant of market value, nutritional quality, and visual appeal. This trait is regulated by a complex network of pigment interactions, which not only determine coloration but also serve as critical indicators of plant growth dynamics and stress responses. This study aimed to elucidate the mechanisms regulating the dark green trait and develop a predictive model for accurately assessing pigment composition. These advancements enable the efficient selection of dark green varieties and facilitate the establishment of optimal growth environments through plant growth monitoring. Seven varieties and lines of heat-tolerant bunching onions were analyzed, including two commercial F1 cultivars, along with two purebred varieties and three F1 hybrid lines bred in Yamaguchi Prefecture. The analysis was conducted on visible spectral reflectance data (400-700 nm at 20 nm intervals) and pigment compounds (chlorophyll , chlorophyll and pheophytin , lutein, and β-carotene), whereas primary and secondary metabolites were assessed by using widely targeted metabolomics. In addition, a random forest regression model was constructed by using spectral reflectance data and pigment compound contents. Principal component analysis based on spectral reflectance data and the comparative profiling of 186 metabolites revealed characteristic metabolite accumulation associated with each green color pattern. The "green" group showed greater accumulation of sugars, the "gray green" group was characterized by the accumulation of phenolic compounds, and the "dark green" group exhibited accumulation of cyanidins. These metabolites are suggested to accumulate in response to environmental stress, and these differences are likely to influence green coloration traits. Furthermore, among the regression models for estimating pigment compound contents, the one for chlorophyll content achieved high accuracy, with an R2 value of 0.88 in the test dataset and 0.78 in Leave-One-Out Cross-Validation, demonstrating its potential for practical application in trait evaluation. However, since the regression model developed in this study is based on data obtained from greenhouse conditions, it is necessary to incorporate field trial results and reconstruct the model to enhance its adaptability. This study revealed that cyanidin is involved in the characteristics of dark green varieties. Additionally, it was demonstrated that chlorophyll can be predicted using visible spectral reflectance. These findings suggest the potential for developing markers for the dark green trait, selecting high-pigment-accumulating varieties, and facilitating the simple real-time diagnosis of plant growth conditions and stress status, thereby enabling the establishment of optimal environmental conditions. Future studies will aim to elucidate the genetic factors regulating pigment accumulation, facilitating the breeding of dark green varieties with enhanced coloration traits for summer cultivation.
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http://dx.doi.org/10.3390/metabo15040226 | DOI Listing |
J Food Sci
September 2025
Faculty of Computing, Federal University of Uberlandia, Uberlândia, Brazil.
The coffee roasting process is a critical factor in determining the final quality of the beverage, influencing its flavour, aroma, and acidity. Traditionally, roast-level classification has relied on manual inspection, which is time-consuming, subjective, and prone to inconsistencies. However, advancements in machine learning (ML) and computer vision, particularly convolutional neural networks (CNNs), have shown great promise in automating and improving the accuracy of this process.
View Article and Find Full Text PDFFood Res Int
November 2025
Shaanxi Engineering Laboratory for Food Green Processing and Safety Control, and Shaanxi Key Laboratory for Hazard Factors Assessment in Processing and Storage of Agricultural Products, College of Food Engineering and Nutritional Science, Shaanxi Normal University, Xi'an 710119, China. Electronic ad
In this study, we produced instant dark tea (IDT) by liquid-state fermentation of Ziyang selenium-enriched summer-autumn tea leaves utilizing Eurotium cristatum. Then, the novel mechanism of IDT against obesity was investigated. Our results for the first time revealed that IDT could alleviate obesity by regulating the gut microbiota and promoting adipose thermogenesis.
View Article and Find Full Text PDFFish Shellfish Immunol
September 2025
Jiangsu Province Engineering Research Center for Marine Bio-resources Sustainable Utilization, College of Oceanography, Hohai University, Nanjing 210098, China. Electronic address:
Cyanophages are widely distributed viruses that specifically infect blue-green algae and play a critical role as biological control agents in aquatic ecosystems. Despite their ecological importance, the effects of light on cyanophage-host interactions are not fully understood. This study aimed to investigate the role of host photosynthesis in different stages of MaMV-DH01 infection, a novel muscle-tailed cyanophage isolated from Donghu Lake that targets Microcystis aeruginosa FACHB524.
View Article and Find Full Text PDFAntonie Van Leeuwenhoek
September 2025
Department of Clinical Laboratories Sciences, College of Applied Medical Sciences, Taif University, P.O. Box 11099, 21944, Taif, Saudi Arabia.
Synthetic dyes, such as methylene blue (MB), are increasingly becoming sources of water pollution and require better treatment strategies. This study describes an eco-friendly method for methylene blue degradation using green synthesized iron oxide nanoparticles form Ureibacillus chungkukjangi. This bacterium was isolated from clinical samples and identified using 16S rRNA gene amplification and sequenced using Sanger sequencing technology.
View Article and Find Full Text PDFEcol Evol
September 2025
Institute of Plant Protection, Hebei Academy of Agricultural and Forestry Sciences Key Laboratory of IPM on Crops in Northern Region of North China, Ministry of Agriculture and Rural Affairs of China Baoding Hebei China.
The light spectrum is a critical visual feature influencing insect behavior. The crepuscular moth (Busck), a significant pest of stone and pome fruits worldwide, has been shown to discriminate variations in brightness/intensity under dim-light conditions. However, the behavioral responses of females to various light spectra remain unknown.
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