Non-invasive phenotyping for water and nitrogen uptake by deep roots explored using machine learning

被引:2
|
作者
Changdar, Satyasaran [1 ,2 ]
Popovic, Olga [2 ]
Wacker, Tomke Susanne [2 ]
Markussen, Bo [3 ]
Dam, Erik Bjornager [1 ]
Thorup-Kristensen, Kristian [2 ]
机构
[1] Univ Copenhagen, Fac Sci, Dept Comp Sci, Copenhagen, Denmark
[2] Univ Copenhagen, Fac Sci, Dept Plant & Environm Sci, Copenhagen, Denmark
[3] Univ Copenhagen, Fac Sci, Dept Math Sci, Copenhagen, Denmark
关键词
Machine learning; Deep rooting; Deep resource uptake; Random forest; 13C; 15N; NEURAL-NETWORKS; WHEAT; IMPACT;
D O I
10.1007/s11104-023-06253-7
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Background and aimsRoot distribution over the soil profile is important for crop resource uptake. Using machine learning (ML), this study investigated whether measured square root of planar root length density (Sqrt_pRLD) at different soil depths were related to uptake of isotope tracer (15N) and drought stress indicator (13C) in wheat, to reveal root function.MethodsIn the RadiMax semi-field root-screening facility 95 winter wheat genotypes were phenotyped for root growth in 2018 and 120 genotypes in 2019. Using the minirhizotron technique, root images were acquired across a depth range from 80 to 250 cm in May, June, and July and RL was extracted using a convolutional neural network. We developed ML models to explore whether the Sqrt_pRLD estimates at different soil depths were predictive of the uptake of deep soil nitrogen - using deep placement of 15N tracer as well as natural abundance of 13C isotope. We analyzed the correlations to tracer levels to both a parametrized root depth estimation and an ML approach. We further analyzed the genotypic effects on root function using mediation analysis.ResultsBoth parametrized and ML models demonstrated clear correlations between Sqrt_pRLD distribution and resource uptake. Further, both models demonstrated that deep roots at approx. 150 to 170 cm depth were most important for explaining the plant content of 15N and 13C isotopes. The correlations were higher in 2018.ConclusionsThe results demonstrated that, parametrized models and ML-based analysis provided complementary insight into the importance of deep rooting for water and nitrogen uptake.
引用
收藏
页码:603 / 616
页数:14
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