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Agronomy

Agronomy is an international, peer-reviewed, open access journal on agronomy and agroecology published monthly online by MDPI. 
The Spanish Society of Plant Biology (SEBP) is affiliated with Agronomy and their members receive discounts on the article processing charges.
Quartile Ranking JCR - Q1 (Agronomy | Plant Sciences)

All Articles (18,334)

Inadequate livestock production among smallholder farmers is mostly linked to insufficient supply and poor feed quality. To enhance livestock production, improving both the quantity and quality of feed supplements is important. Therefore, alternative fodder resources, such as Cannabis sativa, should be evaluated as a feed supplement for ruminants such as Dorper sheep. Cannabis sativa is an herbaceous crop commonly grown for industrial and medicinal purposes. This plant is reported to have an excellent nutritional profile and biomass production. The current study aimed to determine the agronomic parameters and biomass production of C. sativa. The experiment was conducted at the Towoomba Research Station, in Bela-Bela Municipality, Limpopo province, South Africa. The trial’s experimental design was a split-plot within a Randomized Complete Block Design (RCBD), and it was replicated three times. The findings of the study showed a significant difference (p < 0.05) between the agronomic parameters during the early (December 2023–April 2024) and late planting seasons (April 2024–July 2024). Plant height (77.3 cm), number of leaves (144 leaves), leaf area (60.18 cm2), canopy cover (31.65 cm), number of branches (25), and biomass production (5, 48 t h−1) were higher at maturity in the early planting season whilst chlorophyll content was higher (38.62 nm) during early planting season at flowering stage. The study suggests that smallholder farmers should plant C. sativa during the early planting season to ensure high biomass production.

11 December 2025

The locality map of Towoomba Research Station [17].

Plant-parasitic nematodes (PPN) remain one of the major constraints to global agricultural productivity, affecting numerous crops and contributing to substantial yield losses [...]

11 December 2025

Heavy metals in livestock and poultry manure cause significant contamination; however, there is currently a lack of scenario analysis research on soil pollution risks under the influence of manure application. This study integrated multiple methods, including multi-source data fusion, heavy metal emission accounting, and ecological risk assessment, to investigate regional soil heavy metal pollution risks under baseline and improved scenarios of manure application, using Hunan Province, China, as a case study. The results indicate that pig manure (49.5%) and cattle manure (47.6%) are the primary sources of heavy metal emissions from livestock and poultry manure. The heavy metal loads on cropland (g/ha) were as follows: Cd (0.51), Hg (0.027), As (0.87), Pb (4.69), Cr (5.38), Cu (93.10), Zn (131.05), and Ni (5.07). Among the eight heavy metals, Cd poses the most prominent soil pollution risk. Under the baseline scenario (100% manure application), the study area exhibited an overall moderate ecological hazard level after 37 years of continuous application, with 71.93% of the cropland classified as Risk Level II and 7.04% as Risk Level III. After 184 years, a strong ecological hazard level was reached, with 54.93% of the cropland classified as Risk Level III and 19.64% as Risk Level IV. Under improved scenarios (75%, 50%, and 25% manure application), the overall moderate ecological hazard level was reached after 49, 74, and 147 years of continuous application, respectively. This study provides a theoretical and methodological basis for regional soil heavy metal pollution control and source analysis.

11 December 2025

Low temperature exerts severe adverse effects on maize growth, particularly during the seedling stage. Screening for cold-tolerant maize genotypes is highly significant for identifying genes associated with cold tolerance and enhancing maize performance under low, suboptimal temperature conditions. The identification of representative cold tolerance-related genes is of great significance for the breeding of cold-resistant maize varieties. In this study, a diversity panel of 205 materials was evaluated and classified for cold tolerance at the seedling stage. The coefficients of variation of all materials ranged from 14.53% to 35.71%, reflecting considerable genetic diversity within the panel. The correlation coefficients for each phenotypic trait between the cold-treated (CT) and control (CK) maize materials ranged from 0.60 to 0.90, further indicating that all traits displayed varying degrees of sensitivity to cold stress. A comprehensive evaluation of cold tolerance using the D value was conducted. The D values of all materials ranged from 0.355 to 0.863, with a mean value of 0.64. A hierarchical clustering analysis was performed to classify all materials into five categories based on their cold tolerance. Further, 17 SNPs were identified using GWAS analysis, and 12 candidate genes were located within the regions related to the SNPs. Some candidate genes were closely associated with cold tolerance, such as genes encoding MYB and GRAS transcription factors, leucine-rich repeat (LRR) proteins, and protein kinases. Validation by qRT-PCR confirmed that the expression of some genes was induced under cold stress conditions. These findings lay a crucial foundation for breeding cold-tolerant maize varieties and for further exploration of genes associated with cold tolerance.

11 December 2025

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Agronomy - ISSN 2073-4395