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AI-summarized plant biology research papers from bioRxiv

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Latest 5 Papers

Network Inference Reveals Distinct Transcriptional Regulation in Barley against Drought and Fusarium Head Blight

Authors: Steidele, C. E., Kersting, J., Hoheneder, F., List, M., Hueckelhoven, R.

Date: 2025-12-09 · Version: 1
DOI: 10.64898/2025.12.09.693163

Category: Plant Biology

Model Organism: Hordeum vulgare

AI Summary

The study used Weighted Gene Correlation Network Analysis (WGCNA) and GENIE3 to construct co‑expression modules and gene regulatory networks (GRNs) in barley subjected to Fusarium head blight and drought stress. Integration of these approaches highlighted overlapping regulatory patterns, pinpointing WRKY transcription factors as central to FHB response, while bHLH and NAC family members showed stress‑specific roles. Promoter motif enrichment further validated predicted TF‑target interactions, offering candidate regulators for future functional validation.

Fusarium head blight drought stress Barley transcription factor networks co‑expression analysis

Transcriptome and hormone regulations shape drought stress-dependent Fusarium Head Blight susceptibility in different barley genotypes

Authors: Hoheneder, F., Steidele, C. E., Gigl, M., Dawid, C., Hueckelhoven, R.

Date: 2025-11-25 · Version: 1
DOI: 10.1101/2025.11.23.689882

Category: Plant Biology

Model Organism: Hordeum vulgare

AI Summary

Four barley genotypes were examined under simultaneous Fusarium culmorum infection and drought, revealing genotype-dependent Fusarium Head Blight severity and largely additive transcriptomic responses dominated by drought. Co‑expression and hormone profiling linked ABA and auxin to stress‑specific gene modules, and a multiple linear regression model accurately predicted combined‑stress gene expression from single‑stress data, suggesting modular regulation.

Fusarium Head Blight drought stress barley hormone profiling transcriptome analysis

Barley (Hordeum vulgare) maintains tricarboxylic acid cycle activity without invoking the GABA shunt under salt stress

Authors: Bandehagh, A., Taylor, N. L.

Date: 2025-11-08 · Version: 1
DOI: 10.1101/2025.11.06.687118

Category: Plant Biology

Model Organism: Hordeum vulgare

AI Summary

The study investigated how barley (Hordeum vulgare) adjusts mitochondrial respiration under salinity stress using physiological, biochemical, metabolomic and proteomic approaches. Salt treatment increased respiration and activated the canonical TCA cycle, while the GABA shunt remained largely inactive, contrasting with wheat responses.

salinity stress mitochondrial respiration tricarboxylic acid cycle metabolomics proteomics

Golden Promise-rapid, a fast-cycling barley genotype with high transformation efficiency

Authors: Buchmann, G., Haraldsson, E. B., Schüller, R., Rütjes, T., Walla, A. A., von Korff Schmising, M., Liu, S.

Date: 2025-10-31 · Version: 1
DOI: 10.1101/2025.10.31.685778

Category: Plant Biology

Model Organism: Hordeum vulgare

AI Summary

The authors created a fast‑cycling, isogenic barley line (GP‑rapid) by introgressing the wild‑type Ppd‑H1 allele from Igri into the Golden Promise cultivar and performing two backcrosses to limit the donor genome, achieving a 25% reduction in generation time under speed‑breeding conditions while retaining high transformation efficiency. CRISPR/Cas9‑mediated editing of Ppd‑H1 showed regeneration and transformation rates comparable to the original Golden Promise, establishing GP‑rapid as a rapid platform for transgenic and gene‑edited barley research.

Golden Promise Ppd-H1 speed breeding CRISPR/Cas9 transformation efficiency

Prediction of harvest-related traits in barley using high-throughput phenotyping data and machine learning

Authors: Tietze, H., Abdelhakim, L., Pleskacova, B., Kurtz-Sohn, A., Fridman, E., Nikoloski, Z., Panzarova, K.

Date: 2025-06-02 · Version: 1
DOI: 10.1101/2025.05.29.656856

Category: Plant Biology

Model Organism: Hordeum vulgare

AI Summary

The authors applied time‑resolved high‑throughput phenotyping to six barley (Hordeum vulgare) lines grown under well‑watered and drought conditions, using RGB, thermal infrared, chlorophyll fluorescence, and hyperspectral imaging. Temporal phenomic models accurately classified drought‑stressed plants (R² ≥ 0.97) and predicted harvest‑related traits such as total biomass and spike weight, with early canopy temperature depression and later RGB‑derived plant size identified as key predictors. Pooled‑treatment models outperformed single‑treatment models and remained robust when applied early in the experiment, highlighting the utility of phenomics for rapid selection of drought‑resilient genotypes.

high‑throughput phenotyping drought stress temporal modeling Barley (Hordeum vulgare) RGB imaging