Predictive analytics of selections of russet potatoes

IF 2 3区 农林科学 Q2 AGRONOMY
Crop Science Pub Date : 2024-12-28 DOI:10.1002/csc2.21432
Fabiana Ferracina, Bala Krishnamoorthy, Mahantesh Halappanavar, Shengwei Hu, Vidyasagar Sathuvalli
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引用次数: 0

Abstract

We explore the application of machine learning algorithms specifically to enhance the selection process of Russet potato (Solanum tuberosum L.) clones in breeding trials by predicting their suitability for advancement. This study addresses the challenge of efficiently identifying high-yield, disease-resistant, and climate-resilient potato varieties that meet processing industry standards. Leveraging manually collected data from trials in the state of Oregon, we investigate the potential of a wide variety of state-of-the-art binary classification models. The dataset includes 1086 clones, with data on 38 attributes recorded for each clone, focusing on yield, size, appearance, and frying characteristics, with several control varieties planted consistently across four Oregon regions from 2013 to 2021. We conduct a comprehensive analysis of the dataset that includes preprocessing, feature engineering, and imputation to address missing values. We focus on several key metrics such as accuracy, F1-score, and Matthews correlation coefficient (MCC) for model evaluation. The top-performing models, namely a feedforward neural network classifier (Neural Net), a histogram-based gradient boosting classifier (HGBC), and a support vector machine classifier (SVM), demonstrate consistent and significant results. To further validate our findings, we conducted a simulation study using the aims, data-generating mechanisms, estimands, methods, and performance measures (ADEMP) framework, simulating different data-generating scenarios to assess model robustness and performance through true positive, true negative, false positive, and false negative distributions, area under the receiver operating characteristic curve (AUC-ROC) and MCC. The simulation results highlight that non-linear models like SVM and HGBC consistently show higher AUC-ROC and MCC than logistic regression, thus outperforming the traditional linear model across various distributions, and emphasizing the importance of model selection and tuning in agricultural trials. Variable selection further enhances model performance and identifies influential features in predicting trial outcomes. The findings emphasize the potential of machine learning in streamlining the selection process for potato varieties, offering benefits such as increased efficiency, substantial cost savings, and judicious resource utilization. Our study contributes insights into precision agriculture and showcases the relevance of advanced technologies for informed decision-making in breeding programs.

Abstract Image

赤褐色马铃薯选育的预测分析
我们探索了机器学习算法在育种试验中的应用,通过预测赤褐色马铃薯(Solanum tuberosum L.)无性系的进化适宜性来增强其选择过程。本研究解决了有效识别符合加工行业标准的高产、抗病和气候适应型马铃薯品种的挑战。利用俄勒冈州人工收集的试验数据,我们研究了各种最先进的二元分类模型的潜力。该数据集包括1086个无性系,每个无性系记录了38个属性的数据,重点是产量、大小、外观和油炸特性,并在2013年至2021年期间在俄勒冈州的四个地区持续种植了几个对照品种。我们对数据集进行了全面的分析,包括预处理、特征工程和输入,以解决缺失值。我们专注于模型评估的几个关键指标,如准确性、F1得分和马修斯相关系数(MCC)。表现最好的模型,即前馈神经网络分类器(neural Net),基于直方图的梯度增强分类器(HGBC)和支持向量机分类器(SVM),显示出一致和显著的结果。为了进一步验证我们的发现,我们使用目标、数据生成机制、估计、方法和性能测量(ADEMP)框架进行了一项模拟研究,模拟不同的数据生成场景,通过真阳性、真阴性、假阳性和假阴性分布、接收者工作特征曲线下面积(AUC‐ROC)和MCC来评估模型的稳健性和性能。仿真结果表明,SVM和HGBC等非线性模型的AUC - ROC和MCC均高于逻辑回归模型,从而在各种分布中优于传统的线性模型,并强调了模型选择和调整在农业试验中的重要性。变量选择进一步提高了模型的性能,并确定了预测试验结果的有影响的特征。研究结果强调了机器学习在简化马铃薯品种选择过程中的潜力,提供了诸如提高效率、大幅节省成本和明智利用资源等好处。我们的研究为精准农业提供了见解,并展示了先进技术与育种计划中知情决策的相关性。
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来源期刊
Crop Science
Crop Science 农林科学-农艺学
CiteScore
4.50
自引率
8.70%
发文量
197
审稿时长
3 months
期刊介绍: Articles in Crop Science are of interest to researchers, policy makers, educators, and practitioners. The scope of articles in Crop Science includes crop breeding and genetics; crop physiology and metabolism; crop ecology, production, and management; seed physiology, production, and technology; turfgrass science; forage and grazing land ecology and management; genomics, molecular genetics, and biotechnology; germplasm collections and their use; and biomedical, health beneficial, and nutritionally enhanced plants. Crop Science publishes thematic collections of articles across its scope and includes topical Review and Interpretation, and Perspectives articles.
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