Abstract
Medicinal plants have a variety of values and are an important source of new drugs and their lead compounds. They have played an important role in the treatment of cancer, AIDS, COVID-19 and other major and unconquered diseases. However, there are problems such as uneven quality and adulteration. Therefore, it is of great significance to find comprehensive, efficient and modern technology for its identification and evaluation to ensure quality and efficacy. In this study, deep learning, which is superior to conventional identification techniques, was extended to the identification of the part and region of the medicinal plant Paris polyphylla var. yunnanensis from the perspective of spectroscopy. Two pattern recognition models, partial least squares discriminant analysis (PLS-DA) and support vector machine (SVM), were established, and the overall discrimination performance of the three types of models was compared. In addition, we also compared the effects of different sample sizes on the discriminant performance of the models for the first time to explore whether the three models had sample size dependence. The results showed that the deep learning model had absolute superiority in the identification of medicinal plant. It was almost unaffected by factors such as data type and sample size. The overall identification ability was significantly better than the PLS-DA and SVM models. This study verified the superiority of the deep learning from examples, and provided a practical reference for related research on other medicinal plants.
Highlights
Medicinal plants are a kind of highly exploitable plants with various values such as medicinal edible ecology
The partial least squares discriminant analysis (PLS-DA) models for the parts and regions of polyphylla var. yunnanensis (PPY) based on different sample size data sets were, respectively, established
In order to assess whether the PLS-DA model has an over-fitting problem, a permutation test was performed on all models
Summary
Medicinal plants are a kind of highly exploitable plants with various values such as medicinal edible ecology. Their research has become the latest source for the emergence of new drugs (Newman and Cragg, 2015). The development potential of the international market for the utilization of medicinal plants is huge, and countries all over the world generally attach importance to its research in order to better transform and utilize medicinal plants, solve the problem of human survival resource. Medicinal plants have a wide range of sources. Many factors have different degrees of influence on the quality of medicinal plants. The use of comprehensive, efficient, and modern technical means to clarify the region and part of medicinal plants has far-reaching significance for quality and efficacy
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