Prediction and Classification of Phenol Contents in Cnidium officinale Makino Using a Stacking Ensemble Model in Climate Change Scenarios

Agronomy Pub Date : 2024-08-12 DOI:10.3390/agronomy14081766
Hyunjo Lee, Hyun Jung Koo, Kyeong Cheol Lee, Yoojin Song, Won-Kyun Joo, Cheol-Joo Chae
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Abstract

Recent studies have focused on using big-data-based machine learning to address the effects of climate change scenarios on the production and quality of medicinal plants. Challenges relating to data collection can hinder the analysis of key feature variables that affect the quality of medicinal plants. In the study presented herein, we analyzed feature variables that affect the phenolic content of Korean Cnidium officinale Makino (C. officinale Makino) under different climate change scenarios. We applied different climate change scenarios based on environmental information obtained from Yeongju city, Gyeongsangbuk-do, Republic of Korea, and cultivated C. officinale Makino to collect data. The collected data included 3237, 75, and 45 records, and data augmentation was performed to address this data imbalance. We designed a function based on the DPPH value to set the phenolic content grade in C. officinale Makino and proposed a stacking ensemble model for predicting the total phenol contents and classifying the phenolic content grades. The regression model in the performance evaluation presented an improvement of 6.23–7.72% in terms of the MAPE; in comparison, the classification model demonstrated a 2.48–3.34% better performance in terms of accuracy. The classification accuracy was >0.825 when classifying phenol content grades using the predicted total phenol content values from the regression model, and the area under the curve values of the model indicated high model fitness (0.987–0.981). We plan to identify the key feature variables for the optimal cultivation of C. officinale Makino and explore the relationships among these feature variables.
利用堆叠集合模型预测气候变化情景下 Makino 蛇尾草中的酚含量并对其进行分类
最近的研究侧重于利用基于大数据的机器学习来解决气候变化情景对药用植物生产和质量的影响。与数据收集有关的挑战可能会阻碍对影响药用植物质量的关键特征变量的分析。在本文介绍的研究中,我们分析了在不同气候变化情景下影响韩国蛇床子(C. officinale Makino)酚含量的特征变量。我们根据从大韩民国庆尚北道荣州市获得的环境信息,应用了不同的气候变化情景,并对栽培的 C. officinale Makino 进行了数据收集。收集到的数据包括 3237 条记录、75 条记录和 45 条记录,为解决数据不平衡问题,我们进行了数据扩充。我们设计了一个基于 DPPH 值的函数来设定牧野甘蓝的酚含量等级,并提出了一个用于预测总酚含量和划分酚含量等级的堆叠集合模型。在性能评估中,回归模型的 MAPE 提高了 6.23-7.72%;相比之下,分类模型的准确度提高了 2.48-3.34%。利用回归模型预测的总酚含量值进行酚含量等级分类时,分类准确度大于 0.825,模型的曲线下面积值表明模型适配性很高(0.987-0.981)。我们计划确定牧野甘蓝最佳栽培的关键特征变量,并探索这些特征变量之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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