Frontiers in Plant Science (Oct 2023)

Non-destructive prediction of isoflavone and starch by hyperspectral imaging and deep learning in Puerariae Thomsonii Radix

  • Huiqiang Hu,
  • Huiqiang Hu,
  • Tingting Wang,
  • Yunpeng Wei,
  • Zhenyu Xu,
  • Shiyu Cao,
  • Ling Fu,
  • Huaxing Xu,
  • Xiaobo Mao,
  • Xiaobo Mao,
  • Luqi Huang,
  • Luqi Huang,
  • Luqi Huang

DOI
https://doi.org/10.3389/fpls.2023.1271320
Journal volume & issue
Vol. 14

Abstract

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Accurate assessment of isoflavone and starch content in Puerariae Thomsonii Radix (PTR) is crucial for ensuring its quality. However, conventional measurement methods often suffer from time-consuming and labor-intensive procedures. In this study, we propose an innovative and efficient approach that harnesses hyperspectral imaging (HSI) technology and deep learning (DL) to predict the content of isoflavones (puerarin, puerarin apioside, daidzin, daidzein) and starch in PTR. Specifically, we develop a one-dimensional convolutional neural network (1DCNN) model and compare its predictive performance with traditional methods, including partial least squares regression (PLSR), support vector regression (SVR), and CatBoost. To optimize the prediction process, we employ various spectral preprocessing techniques and wavelength selection algorithms. Experimental results unequivocally demonstrate the superior performance of the DL model, achieving exceptional performance with mean coefficient of determination (R2) values surpassing 0.9 for all components. This research underscores the potential of integrating HSI technology with DL methods, thereby establishing the feasibility of HSI as an efficient and non-destructive tool for predicting the content of isoflavones and starch in PTR. Moreover, this methodology holds great promise for enhancing efficiency in quality control within the food industry.

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