1.Fast identification of origins and cultivation patterns of Astragali Radix by dimension reduction algorithms of hyperspectral data.
Fei-Xiang ZHOU ; Hong JIANG ; Bao-Lin GUO ; Jiao-Yang LUO ; Cheng PAN ; Mei-Hua YANG ; Ye-Lin LIU
China Journal of Chinese Materia Medica 2024;49(24):6660-6666
This study aims to establish a rapid and non-destructive method for recognizing the origins and cultivation patterns of Astragali Radix. A hyperspectral imaging system(spectral ranges: 400-1 000 nm, 900-1 700 nm; detection time: 15 s) was used to examine the samples of Astragali Radix with different origins and cultivation patterns. The collected hyperspectral datasets were highly correlated and numerous, which required the establishment of stable and reliable dimension reduction and classification models. Firstly, the original spectra were preprocessed by normalization, Gaussian smoothing, and masking. Then, principal component analysis(PCA), partial least squares-discriminant analysis(PLS-DA), and competitive adaptive reweighted sampling(CARS) were performed to reduce the dimension of the hyperspectral data. Finally, support vector machine(SVM), feedforward neural network(FFNN), and convolutional neural network(CNN) were used for data training of the spectral images and spectral curves with dimension reduction. The results showed that applying CARS as a variable selection method before PLS-DA on the hyperspectral data of Astragali Radix achieved the accuracy, precision, and recall of 100% on the CNN test dataset. The F_1-score and area under the curve of ROC(AUC) reached 1. This method is convenient, quick, sample-saving, and non-destructive, providing technical support for rapid identification of the origins and cultivation patterns of Astragali Radix.
Drugs, Chinese Herbal/chemistry*
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Neural Networks, Computer
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Algorithms
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Support Vector Machine
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Principal Component Analysis
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Discriminant Analysis
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Hyperspectral Imaging/methods*
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Least-Squares Analysis
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Astragalus Plant/growth & development*
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Astragalus propinquus/growth & development*
2.Research Progress of Hyperspectral Imaging Technology in Biological Evidence.
Yi GAO ; Tao HUANG ; Jing-Ru HAO ; Yue MA
Journal of Forensic Medicine 2022;38(5):640-649
Hyperspectral imaging technology can obtain the spatial and spectral three-dimensional imaging of substances simultaneously, and obtain the unique continuous characteristic spectrum of substances in a wide spectrum range at a certain spatial resolution, which has outstanding advantages in the fine classification and identification of biological substances. With the development of hyperspectral imaging technology, a large amount of data has been accumulated in the exploration of data acquisition, image processing and material inspection. As a new technology means, hyperspectral imaging technology has its unique advantages and wide application prospects. It can be combined with the common biological physical evidence of blood (stains), saliva, semen, sweat, hair, nails, bones, etc., to achieve rapid separation, inspection and identification of substances. This paper introduces the basic theory of hyperspectral imaging technology and its application in common biological evidence examination research and analyzes the feasibility and development of biological evidence testing and identification, in order to provide a theoretical basis for the development of new technology and promote hyperspectral imaging technology in related biological examination, to better serve the forensic practice.
Spectrum Analysis/methods*
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Hyperspectral Imaging
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Forensic Medicine
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Blood Stains
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Technology

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