Rice performance prediction to deficit irrigation using microsatellite alleles and artificial intelligence

Q3 Agricultural and Biological Sciences Acta Biologica Szegediensis Pub Date : 2022-10-28 DOI:10.14232/abs.2022.1.37-46
Bahareh Ghasemi, H. Sabouri, H. H. Moghaddam, A. Biabani, Mohamad Javad Sheikhzadeh
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Abstract

Rice germplasm investigated as completely randomized design under flooding and deficit irrigation conditions. The results of the association analysis indicated that RM29, RM63, and RM53 could be used for rice breeding programs to improve yields under deficit irrigation. The highest accuracy of rice performance prediction was 98.36 for the RFA (RFA) for panicle length, flag leaf length, and width, and the number of primary branches, after that, the MLP algorithm had better prediction power than other algorithms. When a genotypes code was considered as a criterion to classify the genotypes under the drought stress at the reproductive stage, the random forest algorithm (RFA) was the best algorithm based on the predictive accuracy (67.93), kappa value (0.514) and root mean square error (0.293). Based on the artificial intelligence methods, the RFA presented the best results to predict the response of genotypes to deficit irrigation using the microsatellite molecular data.
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利用微卫星等位基因和人工智能预测水稻亏缺灌溉性能
在淹水和亏缺灌溉条件下,以完全随机设计的方式研究水稻种质资源。关联分析结果表明,RM29、RM63和RM53可用于水稻育种项目,以提高亏缺灌溉条件下的产量。穗长、旗叶长、宽度和主枝数的RFA(RFA)对水稻性能的预测准确率最高,为98.36。此后,MLP算法比其他算法具有更好的预测能力。以基因型编码为标准对生育期干旱胁迫下的基因型进行分类时,基于预测精度(67.93)、kappa值(0.514)和均方根误差(0.293),随机森林算法(RFA)是最佳算法,RFA利用微卫星分子数据预测基因型对亏缺灌溉的响应,结果最好。
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来源期刊
Acta Biologica Szegediensis
Acta Biologica Szegediensis Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
CiteScore
1.00
自引率
0.00%
发文量
14
期刊介绍: Acta Biologica Szegediensis (ISSN 1588-385X print form; ISSN 1588-4082 online form), a member of the Acta Universitatis Szegediensis family of scientific journals (ISSN 0563-0592), is published yearly by the University of Szeged. Acta Biologica Szegediensis covers the growth areas of modern biology and publishes original research articles and reviews, involving, but not restricted to, the fields of anatomy, embryology and histology, anthropology, biochemistry, biophysics, biotechnology, botany and plant physiology, all areas of clinical sciences, conservation biology, ecology, genetics, microbiology, molecular biology, neurosciences, paleontology, pharmacology, physiology and pathophysiology, and zoology.
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