Background
For thousands of years, Traditional Chinese Medicine (TCM) has been clinically proven, and doctors have highly valued the differences in utility between different species.
Objective
This study aims to replace the complex methods traditionally used for empirical identification by compensating for the information loss of a single sensor through data fusion. The research object of the study is Coptidis Rhizome (CR).
Methods
Using spectral optimization and data fusion technology, Near Infrared (NIR) and Mid-Infrared (MIR) spectra were collected for CR. PLS-DA (n = 134) and PLSR (n = 63) models were established to identify the medicinal materials and determine the moisture content in the medicinal materials.
Results
For the identification of the three species of CR, the mid-level fusion model performed better than the single-spectrum model. The sensitivity and specificity of the prediction set coefficients for NIR, MIR, and data fusion qualitative models were all higher than 0.95, with an AUC value of 1. The NIR data model was superior to the MIR data model. The results of low-level fusion were similar to those of the NIR optimization model. The RPD of the test set of NIR and low-level fusion model was 3.6420 and 3.4216, respectively, indicating good prediction ability of the model.
Conclusion
Data fusion technology using NIR and MIR can be applied to identify CR species and determine the moisture content of CR. It provides technical support for the rapid determination of moisture content, with fast analysis speed and without the need for complex pretreatment methods.
Highlights
This study is the first to introduce spectral data fusion technology to identify CR species. Data fusion technology is feasible for multivariable calibration model performance and reduces the cost of manual identification. The moisture content of CR can be quickly evaluated, reducing the difficulty of traditional methods.