4.7 Article

Temporal Vegetation Indices and Plant Height from Remotely Sensed Imagery Can Predict Grain Yield and Flowering Time Breeding Value in Maize via Machine Learning Regression

Journal

REMOTE SENSING
Volume 13, Issue 11, Pages -

Publisher

MDPI
DOI: 10.3390/rs13112141

Keywords

high throughput phenotyping; unoccupied aerial system; temporal vegetation indices; nested design; machine learning regression; phenomic prediction and selection

Funding

  1. USDA-NIFA-AFRI [2017-67013-26185, 2020-68013-32371, 202167013-33915]
  2. USDA-NIFA Hatch funds
  3. Texas A&M AgriLife Research
  4. Texas Corn Producers Board
  5. Eugene Butler Endowed Chair in Biotechnology

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Utilizing UAS imagery, this study successfully predicted grain yield and flowering time in elite hybrid maize breeding trials, demonstrating significant improvements in prediction accuracy and reduction in error compared to traditional linear regression methods. Machine learning-based regressions, particularly ridge regression, showed promise in predicting these key traits.
Unoccupied aerial system (UAS; i.e., drone equipped with sensors) field-based high-throughput phenotyping (HTP) platforms are used to collect high quality images of plant nurseries to screen genetic materials (e.g., hybrids and inbreds) throughout plant growth at relatively low cost. In this study, a set of 100 advanced breeding maize (Zea mays L.) hybrids were planted at optimal (OHOT trial) and delayed planting dates (DHOT trial). Twelve UAS surveys were conducted over the trials throughout the growing season. Fifteen vegetative indices (VIs) and the 99th percentile canopy height measurement (CHMs) were extracted from processed UAS imagery (orthomosaics and point clouds) which were used to predict plot-level grain yield, days to anthesis (DTA), and silking (DTS). A novel statistical approach utilizing a nested design was fit to predict temporal best linear unbiased predictors (TBLUP) for the combined temporal UAS data. Our results demonstrated machine learning-based regressions (ridge, lasso, and elastic net) had from 4- to 9-fold increases in the prediction accuracies and from 13- to 73-fold reductions in root mean squared error (RMSE) compared to classical linear regression in prediction of grain yield or flowering time. Ridge regression performed best in predicting grain yield (prediction accuracy = similar to 0.6), while lasso and elastic net regressions performed best in predicting DTA and DTS (prediction accuracy = similar to 0.8) consistently in both trials. We demonstrated that predictor variable importance descended towards the terminal stages of growth, signifying the importance of phenotype collection beyond classical terminal growth stages. This study is among the first to demonstrate an ability to predict yield in elite hybrid maize breeding trials using temporal UAS image-based phenotypes and supports the potential benefit of phenomic selection approaches in estimating breeding values before harvest.

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