Yoshino Kanami, Tanaka Ryokei, Yoshida Saki, Numajiri Yuko, Teramoto Shota, Kitomi Yuka, Uga Yusaku, Kawakatsu Taiji
Institute of Agrobiological Sciences, National Agriculture and Food Research Organization, 3-1-3 Kan-Nondai, Tsukuba, Ibaraki, 305-8604, Japan.
Present Address: Department of Agrobiology and Bioresources, Faculty of Agriculture, Utsunomiya University, 350 Mine, Utsunomiya, Tochigi, 321-8505, Japan.
BMC Plant Biol. 2025 Sep 24;25(1):1216. doi: 10.1186/s12870-025-07175-5.
Drought is a global challenge that severely restricts crop yields and threatens food security. Plants respond to drought stress by modulating gene expression before visible phenotypic changes occur. However, most studies of drought resistance have examined phenotypes after drought treatment, with little emphasis on how severely the plants were perceiving drought-stress conditions before the appearance of stress symptoms. We therefore developed drought-stress biomarkers (DSBMs) to detect drought-stress perception levels based on gene expression profiles by performing time-series transcriptome analysis and phenotypic analysis of rice (Oryza sativa) under drought conditions in the growth chamber.
Time-series RNA-seq of the drought-susceptible rice cultivar IR64 revealed drastic changes in the transcriptome after 4-6 days of drought treatment in plants grown in pot culture mimicking drought conditions in the field, particularly for genes related to photosynthesis. Among the differentially expressed genes, we selected 23 DSBM genes that consistently responded to drought stress. Rehydration immediately reset the changes in expression of these DSBM genes, indicating that their expression changes reflect current drought-stress perception levels, but not stress memories. Responses of DSBM genes tended to be conserved among rice accessions, irrespective of the rice subpopulation (such as indica, aus, and japonica). We developed a machine learning model using the expression levels of DSBM genes trained by the time-series RNA-seq data for IR64. This model successfully predicted the drought-stress perception levels of various rice accessions, representing the probability of exposure to drought treatment, with an accuracy of 75%. Extreme root architecture traits, such as the largest root surface area, narrowest crown root diameter, and largest ratio of deep rooting, influenced the predicted drought-stress perception levels.
We identified DSBM genes and developed a machine learning model as a robust tool for assessing drought-stress perception levels in rice. Monitoring and predicting drought-stress perception levels should contribute to more efficient crop management and breeding schemes. Furthermore, our dataset would serve as a resource for further understanding the mechanisms of drought resistance in rice.
干旱是一项全球性挑战,严重限制作物产量并威胁粮食安全。在可见的表型变化出现之前,植物通过调节基因表达来应对干旱胁迫。然而,大多数抗旱研究都考察了干旱处理后的表型,很少关注在胁迫症状出现之前植物对干旱胁迫条件的感知程度。因此,我们通过对生长箱中干旱条件下的水稻(Oryza sativa)进行时间序列转录组分析和表型分析,基于基因表达谱开发了干旱胁迫生物标志物(DSBMs),以检测干旱胁迫感知水平。
对干旱敏感的水稻品种IR64进行的时间序列RNA测序显示,在模拟田间干旱条件的盆栽中生长的植物,干旱处理4 - 6天后转录组发生了剧烈变化,尤其是与光合作用相关的基因。在差异表达基因中,我们选择了23个对干旱胁迫持续响应的DSBM基因。复水立即重置了这些DSBM基因表达的变化,表明它们的表达变化反映了当前的干旱胁迫感知水平,而非胁迫记忆。无论水稻亚群(如籼稻、澳米和粳稻)如何,DSBM基因的响应在水稻种质中往往是保守的。我们使用IR64的时间序列RNA测序数据训练的DSBM基因表达水平开发了一个机器学习模型。该模型成功预测了各种水稻种质的干旱胁迫感知水平,即遭受干旱处理的概率,准确率达75%。极端的根系结构特征,如最大根表面积、最窄的冠根直径和最大的深根比例,影响了预测的干旱胁迫感知水平。
我们鉴定了DSBM基因,并开发了一个机器学习模型作为评估水稻干旱胁迫感知水平的有力工具。监测和预测干旱胁迫感知水平应有助于更高效的作物管理和育种方案。此外,我们的数据集将作为进一步了解水稻抗旱机制的资源。