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利用多环境试验育种数据优化特定基因型参数来评估木薯作物生长模型。

Evaluating a cassava crop growth model by optimizing genotype-specifc parameters using multienvironment trial breeding data.

作者信息

Okoma Pamelas M, Kayondo Siraj Ismail, Rabbi Ismail Y, Moreno-Cadena Patricia L, Hoogenboom Gerrit, Jannink Jean-Luc

机构信息

Plant Breeding and Genetics Section, School of Integrative Plant Science, College of Agriculture and Life Sciences, Cornell University, Ithaca, NY, United States.

Cassava Breeding Program, International Institute of Tropical Agriculture (IITA), Ibadan, Nigeria.

出版信息

Front Plant Sci. 2025 Jun 13;16:1535058. doi: 10.3389/fpls.2025.1535058. eCollection 2025.

Abstract

Cassava ( Crantz) is a critical food security crop for sub-Saharan Africa. Efforts to improve cassava through breeding have expanded over the past decade. Crop growth models (CGM) are becoming common place in breeding efforts to expand the inference of evaluations of breeding germplasm to environments that have not been tested and to prepare for breeding for adaptation to future climates. We parameterized a CGM, the CROPGRO-MANIHOT-Cassava model in the DSSAT family of models, using data on 67 clones from the International Institute of Tropical Agriculture cassava breeding program evaluated from 2017 to 2020 and over eight locations in Nigeria using trial and error parameter adjustments and the General Likelihood Uncertainty Estimation method. Our objectives were to assess the feasibility of this large-scale calibration in the context of a cassava breeding program and to identify systematic biases of the model. For each cultivar we calculated the Pearson correlation between model prediction and observation across the environments, as well as root mean squared error and d statistics. As a result of calibration, the correlation coefficient increased from -0.03 to +0.08, the RMSE dropped from 21 t ha to 5 t ha while d increased from 0.23 to 0.44. We found that the model underestimated root yield in dry environments (low precipitation and high temperature) and overestimated root yield in wet environments (high precipitation and low temperature). Our experience suggests both that CGM calibration could become a routine component of the cassava breeding data analysis cycle and that there are opportunities for model improvement.

摘要

木薯(Crantz)是撒哈拉以南非洲地区至关重要的粮食安全作物。在过去十年中,通过育种改良木薯的工作不断扩展。作物生长模型(CGM)在育种工作中日益普遍,用于将育种种质评价的推断扩展到未测试的环境,并为适应未来气候的育种做准备。我们使用国际热带农业研究所木薯育种项目中67个无性系的数据,通过反复试验参数调整和通用似然不确定性估计方法,对DSSAT模型家族中的CROPGRO-MANIHOT-木薯模型这一CGM进行了参数化。这些数据是在2017年至2020年期间于尼日利亚的八个地点对这些无性系进行评估得到的。我们的目标是评估在木薯育种项目背景下进行这种大规模校准的可行性,并识别模型的系统偏差。对于每个品种,我们计算了模型预测与各环境下观测值之间的皮尔逊相关性,以及均方根误差和d统计量。校准的结果是,相关系数从 -0.03增加到 +0.08,均方根误差从21吨/公顷降至5吨/公顷,而d从0.23增加到0.44。我们发现该模型在干旱环境(低降水量和高温)中低估了块根产量,而在湿润环境(高降水量和低温)中高估了块根产量。我们的经验表明,CGM校准可以成为木薯育种数据分析周期的常规组成部分,并且模型还有改进的空间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2dd3/12202349/a03e0c961c88/fpls-16-1535058-g001.jpg

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