| Literature DB >> 35479454 |
Guohui Wei1,2, Xianjun Fu1, Xueying He2, Peng Qiu2, Lu Yue2, Rong Rong1, Zhenguo Wang1.
Abstract
The theory of cold-hot nature of Chinese herbal medicines (CHMs) is the core theory of CHM. It has been found that the volatile oil ingredients in CHMs are closely related to their cold-hot nature. Guided by the scientific hypothesis that "CHMs with similar component substances should have similar medicinal natures", exploration of the intelligent identification of the cold-hot nature of CHMs based on the similarity of their volatile oil ingredients has become a research focus. Gas chromatography (GC) chemical fingerprints have been widely used in the separation of volatile oil ingredients to analyze the cold-hot nature of CHMs. To verify the above hypothesis, in this work, we study the quantification of the similarity of the volatile oil ingredients of CHMs to their fingerprint similarity and explore the relationship between the volatile oil ingredients of CHMs and their cold-hot nature. In this study, we utilize GC technology to analyze the chemical ingredients of 61 CHMs that have a clear cold-hot nature (including 30 'cold' CHMs and 31 'hot' CHMs). Using the constructed fingerprint dataset of CHMs, a distance metric learning algorithm is applied to measure the similarity of the GC fingerprints. Furthermore, an improved k-nearest neighbor (kNN) algorithm is proposed to build a predictive identification model to identify the cold-hot nature of CHMs. The experimental results prove our inference that CHMs with similar component substances should have similar medicinal natures. Compared with existing classical models, the proposed identification scheme has better predictive performance. The proposed prediction model is proved to be effective and feasible. This journal is © The Royal Society of Chemistry.Entities:
Year: 2021 PMID: 35479454 PMCID: PMC9037174 DOI: 10.1039/d1ra04189d
Source DB: PubMed Journal: RSC Adv ISSN: 2046-2069 Impact factor: 4.036
Fig. 1GC fingerprints of cortex Cinnamomi (a) and rhizoma Anemarrhenae (b).
Fig. 2A kNN scheme for identification of the nature of CHMs.
Fig. 3Curves of the AUC and ACC values for the nature classification.
Fig. 4Curves of AUC and ACC values with different λ.
Fig. 5Curves of AUC and ACC values with different k.
Comparison of extrapolation evaluation
| Classifier | AUC | ACC |
|---|---|---|
| ITML | 0.872 | 0.823 |
| LMNN | 0.855 | 0.786 |
| ELM | 0.587 | 0.525 |
| RS | 0.882 | 0.824 |
| PCC | 0.834 | 0.754 |
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Comparison of stability evaluation
| Classifier | AUC | ACC |
|---|---|---|
| ITML | 0.896 | 0.869 |
| LMNN | 0.894 | 0.869 |
| ELM | 0.683 | 0.623 |
| RS | 0.872 | 0.820 |
| PCC | 0.603 | 0.557 |
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Nature identification examples. The top k = 7 similar CHMs are arranged in the order of monotonically increasing Mahalanobis distance. Cold/hot nature labels are denoted in brackets
| Prediction example | CHMs with a cold nature | CHMs with a hot nature |
|---|---|---|
| Query CHM |
| Euodiae fructus (hot) |
| Similar reference CHMs | Phellodendri chinensis cortex (cold) | Notopterygii rhizoma et radix (hot) |
| Isatidis folium (cold) | Corydalis rhizoma (hot) | |
| Lophatheri herba (cold) | Aconiti lateralis radix praeparata (hot) | |
| Stephaniae tetrandrae radix (cold) | Alpiniae katsumadai semen (hot) | |
| Puerariae lobatae radix (cold) | Psoraleae fructus (hot) | |
| Gardeniae fructus (cold) | Nardostachyos radix et rhizoma (hot) | |
| Notopterygii rhizoma et radix (hot) | Aucklandiae radix (hot) |
Confusion matrix of the 61 CHMs
| Ground truth | Identification | |
|---|---|---|
| Cold | Hot | |
| Cold | 26 | 4 |
| Hot | 4 | 27 |
Recall, precision and F-score of the 61 CHMs
| Cold | Hot | |
|---|---|---|
| Recall | 86.7% | 87.1% |
| Precision | 86.7% | 87.1% |
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| 86.7% | 87.1% |
Fig. 6ROC curve of cold–hot nature identification.