Data driven discovery and quantification of hyperspectral leaf reflectance phenotypes across a maize diversity panel

Michael C. Tross, Marcin W. Grzybowski, T. Jubery, Ryleigh J. Grove, Aime Nishimwe, J. V. Torres-Rodríguez, Guangchao Sun, B. Ganapathysubramanian, Yufeng Ge, James c. Schnable
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Abstract

Estimates of plant traits derived from hyperspectral reflectance data have the potential to efficiently substitute for traits, which are time or labor intensive to manually score. Typical workflows for estimating plant traits from hyperspectral reflectance data employ supervised classification models that can require substantial ground truth datasets for training. We explore the potential of an unsupervised approach, autoencoders, to extract meaningful traits from plant hyperspectral reflectance data using measurements of the reflectance of 2151 individual wavelengths of light from the leaves of maize (Zea mays) plants harvested from 1658 field plots in a replicated field trial. A subset of autoencoder‐derived variables exhibited significant repeatability, indicating that a substantial proportion of the total variance in these variables was explained by difference between maize genotypes, while other autoencoder variables appear to capture variation resulting from changes in leaf reflectance between different batches of data collection. Several of the repeatable latent variables were significantly correlated with other traits scored from the same maize field experiment, including one autoencoder‐derived latent variable (LV8) that predicted plant chlorophyll content modestly better than a supervised model trained on the same data. In at least one case, genome‐wide association study hits for variation in autoencoder‐derived variables were proximal to genes with known or plausible links to leaf phenotypes expected to alter hyperspectral reflectance. In aggregate, these results suggest that an unsupervised, autoencoder‐based approach can identify meaningful and genetically controlled variation in high‐dimensional, high‐throughput phenotyping data and link identified variables back to known plant traits of interest.
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数据驱动发现和量化玉米多样性面板中的高光谱叶片反射率表型
从高光谱反射数据中得出的植物性状估计值有可能有效替代人工评分耗时或耗力的性状。从高光谱反射数据估算植物性状的典型工作流程采用的是监督分类模型,需要大量的地面实况数据集进行训练。我们利用在重复田间试验中从 1658 块田地收获的玉米(Zea mays)植株叶片上测量的 2151 个单独波长光的反射率,探索了从植物高光谱反射率数据中提取有意义性状的无监督方法(自动编码器)的潜力。自编码器衍生变量的一个子集表现出显著的可重复性,表明这些变量总变异的很大一部分是由玉米基因型之间的差异解释的,而其他自编码器变量似乎捕捉到了不同数据收集批次之间叶片反射率变化所导致的变异。几个可重复的潜变量与同一玉米田间试验中的其他性状显著相关,包括一个自编码器衍生的潜变量(LV8),它对植物叶绿素含量的预测略优于根据相同数据训练的监督模型。至少在一种情况下,全基因组关联研究发现,自动编码器衍生变量的变异与已知或可能与预期改变高光谱反射率的叶片表型有关的基因很接近。总之,这些结果表明,基于无监督自动编码器的方法可以在高维、高通量表型数据中识别有意义的基因控制变异,并将识别出的变量与已知的植物相关性状联系起来。
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