• 中国科技期刊卓越行动计划项目资助期刊
  • 中国精品科技期刊
  • 首都科技期刊卓越行动计划
  • EI
  • Scopus
  • CAB Abstracts
  • Global Health
  • 北大核心期刊
  • DOAJ
  • EBSCO
  • 中国核心学术期刊RCCSE A+
  • 中国科技核心期刊CSTPCD
  • JST China
  • FSTA
  • 中国农林核心期刊
  • 中国开放获取期刊数据库COAJ
  • CA
  • WJCI
  • 食品科学与工程领域高质量科技期刊分级目录第一方阵T1
中国精品科技期刊2020
李文峰,夏意雯,杨蕊,等. 色泽测定结合机器学习预测胭脂萝卜中花色苷的含量J. 食品工业科技,2026,47(11):1−9. doi: 10.13386/j.issn1002-0306.2025060181.
引用本文: 李文峰,夏意雯,杨蕊,等. 色泽测定结合机器学习预测胭脂萝卜中花色苷的含量J. 食品工业科技,2026,47(11):1−9. doi: 10.13386/j.issn1002-0306.2025060181.
LI Wenfeng, XIA Yiwen, YANG Rui, et al. Prediction of Anthocyanin Content in Red Radish Using Colorimetry and Machine LearningJ. Science and Technology of Food Industry, 2026, 47(11): 1−9. (in Chinese with English abstract). doi: 10.13386/j.issn1002-0306.2025060181.
Citation: LI Wenfeng, XIA Yiwen, YANG Rui, et al. Prediction of Anthocyanin Content in Red Radish Using Colorimetry and Machine LearningJ. Science and Technology of Food Industry, 2026, 47(11): 1−9. (in Chinese with English abstract). doi: 10.13386/j.issn1002-0306.2025060181.

色泽测定结合机器学习预测胭脂萝卜中花色苷的含量

Prediction of Anthocyanin Content in Red Radish Using Colorimetry and Machine Learning

  • 摘要: 为了实现胭脂萝卜花色苷含量的快速测定,以提高胭脂萝卜色素生产时原材料的筛选效率。利用色差仪测定了萝卜剖面不同位置的L*a*b*C*H*颜色参数。采用超高效液相色谱-质谱联用仪分析了胭脂萝卜中单体花色苷的含量。结果表明a*值与花色苷含量呈正相关,据此建立的a*值与单体花色苷和总花色苷含量的线性回归模型,对总花色苷含量预测准确率为68.4%,对主要单体花色苷含量的预测准确率为28.9%~52.6%。利用8个机器学习算法优化了基于颜色参数构建的花色苷含量预测模型。Lasso回归模型能用于预测总花色苷含量,预测准确率达87.5%。Decision Tree回归模型能用于预测天竺葵素-3-(阿魏酰)二葡萄糖苷-5-(丙二酰)葡萄糖苷和天竺葵素-3-(咖啡酰)二葡萄糖苷-5-葡萄糖苷含量,预测准确率均为75%。这些结果表明色泽测定结合机器学习能快速预测胭脂萝卜的花色苷含量,可用于胭脂萝卜色素生产中原材料筛选。

     

    Abstract: To rapidly determine anthocyanin content in red radish (Raphanus sativus L.) and improve raw material screening efficiency for pigment production, color parameters (L*, a*, b*, C*, and H*) were measured at different positions on red radish using a colorimeter. Ultra-performance liquid chromatography-mass spectrometry was employed to analyze content of individual anthocyanin. A significant positive correlation was observed between a* values and anthocyanin contents. Linear regression models based on a* values achieved a 68% prediction accuracy for total anthocyanin content and from 28.9% to 52.6% for major individual anthocyanins. Eight machine learning algorithms were employed to optimize the color parameter-based prediction model of anthocyanin content. The Lasso regression model demonstrated strong predictive performance for total anthocyanin content, achieving a prediction accuracy of 87.5%. The Decision Tree regression model achieved prediction accuracies of 75% for both pelargonidin-3-(feruloyl)diglucoside-5-(malonyl)glucoside and pelargonidin-3-(caffeoyl)diglucoside-5-glucoside, indicating its effectiveness in estimating specific anthocyanin compounds. Collectively, these findings indicate that combining colorimetric measurement with machine learning enables rapid prediction of anthocyanin content, which is conducive to raw material selection in red radish pigment production.

     

/

返回文章
返回