Abstract

The main objectives of this study were to evaluate the prediction performance of genomic and near-infrared spectroscopy (NIR) data and whether the integration of genomic and NIR predictor variables can increase the prediction accuracy of two feedstock quality traits (fiber and sucrose content) in a sugarcane population (Saccharum spp.). The following three modeling strategies were compared: M1 (genome-based prediction), M2 (NIR-based prediction), and M3 (integration of genomics and NIR wavenumbers). Data were collected from a commercial population comprised of three hundred and eighty-five individuals, genotyped for single nucleotide polymorphisms and screened using NIR spectroscopy. We compared partial least squares (PLS) and BayesB regression methods to estimate marker and wavenumber effects. In order to assess model performance, we employed random sub-sampling cross-validation to calculate the mean Pearson correlation coefficient between observed and predicted values. Our results showed that models fitted using BayesB were more predictive than PLS models. We found that NIR (M2) provided the highest prediction accuracy, whereas genomics (M1) presented the lowest predictive ability, regardless of the measured traits and regression methods used. The integration of predictors derived from NIR spectroscopy and genomics into a single model (M3) did not significantly improve the prediction accuracy for the two traits evaluated. These findings suggest that NIR-based prediction can be an effective strategy for predicting the genetic merit of sugarcane clones.

Highlights

  • The strides achieved with improved instruments, laboratory techniques, and bioinformatics tools have allowed the emergence of next-generation sequencing technologies [1]

  • We fitted a bivariate GBLUP to estimate genetic correlation between the two traits; we found similar results compared to the correlation using univariate best linear unbiased predictors (BLUPs)

  • Near-infrared spectroscopy and genomic models for prediction not demonstrate significant improvements in accuracy to predict FIB and PC, when compared to the models solely based on near-infrared spectroscopy (NIR) wavenumbers

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Summary

Objectives

The main objectives of this study were to evaluate the prediction performance of genomic and near-infrared spectroscopy (NIR) data and whether the integration of genomic and NIR predictor variables can increase the prediction accuracy of two feedstock quality traits in a sugarcane population (Saccharum spp.). The main goal of this study was to investigate the performance of the integration of HTP and genomic datasets aiming to increase the accuracy of prediction for two important. The M3 modelling strategy we evaluated in this study aimed to increase accuracies by combining NIR wavenumbers and SNP markers to predict sugarcane clones’ phenotypes for possible release as cultivars

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