丹参
追踪
质量评定
计算机科学
化学
工程类
医学
评价方法
可靠性工程
操作系统
病理
中医药
替代医学
作者
Rao Fu,Chen Peng,Wenhao Dong,Jia Qiao,Haijun Yu,Mingxuan Li,Li Zeng,Chunqin Mao,Tulin Lu,Chenghao Fei
标识
DOI:10.1016/j.microc.2025.113755
摘要
• Applying multimodal recognition strategy to the origin tracing and quality prediction of Salvia miltiorrhiza . • GA-BP algorithm achieves 100 % accuracy of Salvia miltiorrhiza origin tracing. • Comparison of the Applicability of Hyperspectral and FT-NIR in Salvia miltiorrhiza traceability and quality prediction. • The PLSR model combined with multiple optimization methods achieved rapid prediction of quality of Salvia miltiorrhiza . The evaluation of the herbal medicine quality often involves time-consuming and labor-intensive high-precision instrument testing. This study used Salvia miltiorrhiza as a case study, with 120 samples collected from various regions. Hyperspectral data, Fourier Transform Near-Infrared data, heavy metals and harmful elements data, and active ingredient data were systematically gathered. Using multivariate statistical analysis, multimodal information integration, and deep learning algorithms, a geographical origin tracing model was developed, achieving an accuracy rate of 100 %. Additionally, spectral-ingredient prediction models for five heavy metals and harmful elements and four active components were established, allowing the heavy metals and harmful elements and active components of Salvia miltiorrhiza to be rapidly and accurately assessed. This study compared the performance of the hyperspectral and FT-NIR techniques in herbal medicine quality control. The results indicated that hyperspectral demonstrated broader applicability and superior performance in predicting heavy metals and harmful elements contents, whereas FT-NIR was more effective in analyzing chemical constituents. This research provides a scientific basis for Salvia miltiorrhiza origin tracing and quality prediction while also confirming the potential of multidimensional spectra techniques in the quality evaluation.
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