Kar Soumyashree, Tanaka Ryokei, Korbu Lijalem Balcha, Kholová Jana, Iwata Hiroyoshi, Durbha Surya S, Adinarayana J, Vadez Vincent
Centre of Studies in Resources Engineering, Indian Institute of Technology Bombay, Mumbai, India 400076.
Laboratory of Biometrics and Bioinformatics, University of Tokyo, Tokyo, Japan.
Plant Methods. 2020 Oct 16;16:140. doi: 10.1186/s13007-020-00680-8. eCollection 2020.
Restricting transpiration under high vapor pressure deficit (VPD) is a promising water-saving trait for drought adaptation. However, it is often measured under controlled conditions and at very low throughput, unsuitable for breeding. A few high-throughput phenotyping (HTP) studies exist, and have considered only maximum transpiration rate in analyzing genotypic differences in this trait. Further, no study has precisely identified the VPD breakpoints where genotypes restrict transpiration under natural conditions. Therefore, outdoors HTP data (15 min frequency) of a chickpea population were used to automate the generation of smooth transpiration profiles, extract informative features of the transpiration response to VPD for optimal genotypic discretization, identify VPD breakpoints, and compare genotypes.
Fifteen biologically relevant features were extracted from the transpiration rate profiles derived from load cells data. Genotypes were clustered (C1, C2, C3) and 6 most important features (with heritability > 0.5) were selected using unsupervised Random Forest. All the wild relatives were found in C1, while C2 and C3 mostly comprised high TE and low TE lines, respectively. Assessment of the distinct p-value groups within each selected feature revealed highest genotypic variation for the feature representing transpiration response to high VPD condition. Sensitivity analysis on a multi-output neural network model (with R of 0.931, 0.944, 0.953 for C1, C2, C3, respectively) found C1 with the highest water saving ability, that restricted transpiration at relatively low VPD levels, 56% (i.e. 3.52 kPa) or 62% (i.e. 3.90 kPa), depending whether the influence of other environmental variables was minimum or maximum. Also, VPD appeared to have the most striking influence on the transpiration response independently of other environment variable, whereas light, temperature, and relative humidity alone had little/no effect.
Through this study, we present a novel approach to identifying genotypes with drought-tolerance potential, which overcomes the challenges in HTP of the water-saving trait. The six selected features served as proxy phenotypes for reliable genotypic discretization. The wild chickpeas were found to limit water-loss faster than the water-profligate cultivated ones. Such an analytic approach can be directly used for prescriptive breeding applications, applied to other traits, and help expedite maximized information extraction from HTP data.
在高蒸汽压亏缺(VPD)条件下限制蒸腾作用是一种很有前景的干旱适应节水性状。然而,该性状通常在受控条件下且以非常低的通量进行测量,不适合用于育种。虽然存在一些高通量表型分析(HTP)研究,但在分析该性状的基因型差异时仅考虑了最大蒸腾速率。此外,尚无研究精确确定基因型在自然条件下限制蒸腾作用的VPD断点。因此,利用鹰嘴豆群体的户外HTP数据(15分钟频率)来自动生成平滑的蒸腾曲线,提取蒸腾作用对VPD响应的信息特征以实现最佳基因型离散化,确定VPD断点并比较基因型。
从称重传感器数据得出的蒸腾速率曲线中提取了15个生物学相关特征。对基因型进行聚类(C1、C2、C3),并使用无监督随机森林选择了6个最重要的特征(遗传力>0.5)。所有野生近缘种都在C1中,而C2和C3大多分别由高蒸腾效率和低蒸腾效率的品系组成。对每个选定特征内不同p值组的评估表明,代表对高VPD条件下蒸腾响应的特征具有最高的基因型变异。对多输出神经网络模型的敏感性分析(C1、C2、C3的R分别为0.931、0.944、0.953)发现,C1具有最高的节水能力,其在相对较低的VPD水平下限制蒸腾作用,分别为56%(即3.52kPa)或62%(即3.90kPa),这取决于其他环境变量的影响是最小还是最大。此外,VPD似乎对蒸腾响应具有最显著的影响,独立于其他环境变量,而单独的光照、温度和相对湿度几乎没有影响。
通过本研究,我们提出了一种鉴定具有耐旱潜力基因型的新方法,该方法克服了节水性状高通量表型分析中的挑战。所选的六个特征作为代理表型用于可靠的基因型离散化。发现野生鹰嘴豆比耗水型栽培鹰嘴豆更快地限制水分流失。这种分析方法可直接用于规定性育种应用,应用于其他性状,并有助于加快从HTP数据中提取最大化信息。