Integration of Genomics with Crop Modeling for Predicting Rice Days to Flowering: A Multi-Model Analysis

Archive ouverte

Yang, Yubin | Wilson, Lloyd | Li, Tao | Paleari, Livia | Confalonieri, Roberto | Zhu, Yan | Tang, Liang | Qiu, Xiaolei | Tao, Fulu | Chen, Yi | Hoogenboom, Gerrit | Boote, Kenneth | Gao, Yujing | Onogi, Akio | Nakagawa, Hiroshi | Yoshida, Hiroe | Yabe, Shiori | Dingkuhn, Michael | Lafarge, Tanguy | Hasegawa, Toshihiro | Wang, Jing

Edité par CCSD ; Elsevier -

International audience. The ability of crop models to decompose complex traits and integrate the underlying processes enables them to capture genotype-environment interactions in diverse environments. Integrating genomics with biophysical crop models represents a potential breakthrough technology for improving our understanding of genotypeenvironment interactions across the biological organization. We present the results of a multi-model analysis on integrating crop modeling with genomic prediction. Seven rice models were evaluated on their ability to predict days to flowering in ten environments from parameters estimated through genome-wide association and genomic prediction, using a 13-fold cross-validation scheme. Phenotypic data were based on a rice diversity panel of 169 accessions with 700k markers. Significant associations with known flowering genes were identified for several model parameters. Although high accuracy was achieved for genomic prediction of model parameters in calibration, prediction accuracy was low for untested genotypes. We observed divergent model performance using genomic-predicted model parameters, which was attributed to photoperiod and temperature response curves, and number of calibrated model parameters. Several areas were identified for further research that could lead to better understanding the genetic control of complex trait formation and improved integration of genomics with crop modeling.

Consulter en ligne

Suggestions

Du même auteur

A taxonomy-based approach to shed light on the babel of mathematical models for rice simulation

Archive ouverte | Confalonieri, Roberto | CCSD

International audience. For most biophysical domains, differences in model structures are seldom quantified. Here, we used a taxonomy-based approach to characterise thirteen rice models. Classification keys and bina...

Uncertainties in predicting rice yield by current crop models under a wide range of climatic conditions

Archive ouverte | Li, Tao | CCSD

Predicting rice ([i]Oryza sativa[/i]) productivity under future climates is important for global food security. Ecophysiological crop models in combination with climate model outputs are commonly used in yield prediction, but unce...

Comparison of three calibration methods for modeling rice phenology

Archive ouverte | Gao, Yujing | CCSD

International audience. Calibration is an essential step for all crop modeling studies. The goal of this study was to compare three commonly-used calibration methods including Ordinary Least Square (OLS), Markov cha...

Chargement des enrichissements...