Summary

HPLC Coupled with Chemical Fingerprinting for Multi-Pattern Recognition for Identifying the Authenticity of Clematidis Armandii Caulis

Published: November 11, 2022
doi:

Summary

Here, we present a protocol to establish high-performance liquid chromatography (HPLC), coupled with chemical fingerprint multi-pattern recognition, which provides a new strategy for effectively identifying the genuine varieties of Clematidis Armandii Caulis and its adulterants.

Abstract

A method for identifying Chinese medicinal materials and their related adulterants was constructed by taking Clematidis Armandii Caulis (Chuanmutong, a universally used traditional Chinese medicine) as an example. Ten batches of genuine Chuanmutong varieties and five batches of related adulterants were analyzed and compared based on the high-performance liquid chromatography (HPLC) fingerprints combined with chemometrics, including cluster analysis (CA), principal component analysis (PCA), and orthogonal partial least-squares discrimination analysis (OPLS-DA). In addition, the content of β-sitosterol was determined. The control chemical fingerprint of Chuanmutong was established, and 12 common peaks were identified. The similarity between the fingerprint of 10 batches of genuine Chuanmutong varieties and the control fingerprint was 0.910-0.989, while the similarity of five batches of adulterants was only 0.133-0.720. Based on the common peaks in the chromatogram, 15 batches of samples were classified into three content levels by PCA, and were aggregated into four categories by CA, achieving a clear distinction between authentic Chuanmutong and adulterants of Chuanmutong. Further, seven differential components that can effectively identify authentic Chuanmutong and adulterants of Chuanmutong were found through OPLS-DA. The β-sitosterol content of 10 batches of genuine Chuanmutong varieties was 97.53-161.56 µg/g, while the β-sitosterol content of the five batches of adulterants varied greatly, among which the β-sitosterol content of Clematis peterae Hand.-Mazz. and Clematis gouriana Roxb. Var. finetii Rehd. et Wils. was significantly lower than that of authentic varieties of Chuanmutong. The HPLC index component content and chemical fingerprint multi-pattern recognition method established in this study provide a new strategy for effectively identifying authentic Chinese medicinal materials and related adulterants.

Introduction

Chuanmutong, dry Caulis of Clematis armandii Franch. or Clematis montana Buch.-Ham., is a traditional Chinese medicine commonly used in clinics1,2,3. It is used for treating urinary problems, edema, sores on the tongue and mouth, decreased milk secretion, joint stiffness, and muscle pain caused by damp heat4. Chuanmutong has always been obtained from wild varieties, mainly distributed in southwest China, especially in Sichuan, where the best quality can be found5,6. It is difficult to distinguish between authentic varieties and their closely related adulterants due to their similar characteristics7,8,9,10. The quality standard of Chuanmutong in the 2020 edition of Chinese Pharmacopoeia only stipulates the properties, microscopic identification, and thin-layer identification without content determination, which cannot effectively identify adulterants, and hence has potential risks. Moreover, there are few reports comparing and identifying Chuanmutong and related plants. Consequently, a quality control method to ensure the authenticity of Chuanmutong is worthy of further study.

The chemical constituents of Chuanmutong are mainly composed of oleanane-type pentacyclic triterpenoids and their glycosides, flavonoids, and organic acids11,12,13,14. Among them, oleanolic acid, β-sitosterol, stigmasterol, and ergosterol have diuretic effects of different intensities, which may be potential pharmacodynamic substances for promoting diuresis and relieving stranguria15,16. Chemical fingerprints are obtained by separating and detecting many chemical components contained in samples by high-performance liquid chromatography (HPLC), gas chromatography (GC), etc. Adopting appropriate statistical analysis methods to analyze the characteristics of Chuanmutong can determine the overall quality control and scientific identification of traditional Chinese medicine17,18,19.

In this study, 10 batches of Chuanmutong authentic varieties and five batches of adulterants were collected. Their quality was compared and analyzed by the HPLC fingerprint method combined with multi-pattern recognition, including cluster analysis (CA), principal component analysis (PCA), orthogonal partial least-squares discrimination analysis (OPLS-CA), and content determination of the pharmacodynamic component. This protocol establishes a method for identifying authentic varieties with high specificity, a new strategy for the scientific identification of authentic varieties and adulterants of Chinese medicinal materials.

Protocol

1. Methods for chemical fingerprint detection

  1. Chromatographic conditions
    1. Prepare the acetonitrile (A)/water (B) mobile phase. Set a gradient program as follows in the HPLC software: 0-20 min, 3%A-10%A; 20-25 min, 10%A-13%A; 25-65 min, 13%A-25%A; 65-75 min, 25%A-40%A; 75-76 min, 40%A-3%A; 76-85 min, 3%A-3%A.
    2. Maintain the flow rate of the mobile phase at 1.0 mL/min.
    3. Conduct the chromatographic separation on a C18 column (250 mm x 4.6 mm, 5 µm) maintained at 30 °C.
    4. Set the injection volume to 10 µL.
    5. Detect the samples at a wavelength of 205 nm.
      NOTE: For the specific settings of chromatographic conditions, refer to the operating procedures of the working software of high-performance liquid chromatography (Table of Materials).
  2. Preparation of the sample solution
    1. Grind the raw materials to uniform particle size by passing them through a nylon mesh with an inner diameter of 850 µm ± 29 µm.
    2. Place 2 g of the ground raw material (accurately weighed) in a 50 mL conical flask with a stopper and add 50 mL of methanol. Place the stopper on the flask and ultrasonicate (600 W, 40 kHz) for 30 min.
    3. Then, cool the flask to room temperature (RT). Weigh the samples again, and make up for the initial weight by replacing the lost extractant.
    4. Pour 4 mL of the methanol solution containing the medicinal extracts into a 10 mL volumetric flask. Add 6 mL of H2O, mix, and allow it to settle for 10 min.
    5. Finally, filter the supernatant through a 0.45 µm filter membrane and place it on standby.
  3. Validation of fingerprint detection methods
    1. Prepare the sample as described above (step 1.2) and subject it to HPLC analysis (step 1.1) six times a day. To evaluate the precision, calculate the relative standard deviation (RSD) of relative retention time and relative peak areas as described in step 1.3.5.
    2. Evaluate the stability of the sample solution by analyzing the same sample solution stored at RT for 0, 2, 4, 6, 8, 12, and 24 h, and calculate the RSD of relative retention time and relative peak areas as described in step 1.3.5.
    3. Take six replicates of the same sample (CMT-4), prepare the sample solution according to the above procedure (step 1.2), and detect its fingerprint in HPLC following step 1.1. Calculate the RSD of relative retention time and relative peak areas, and evaluate its repeatability as described in step 1.3.5.
    4. Then use peak number 10 in Figure 1B as the reference peak and calculate the RSD of the relative retention time and relative peak area of each common peak as described in step 1.3.5.
    5. Use the formulas mentioned below to calculate the relative retention time and relative peak area of each common peak:
      Tre = Tcharacteristic/Treference
      Are = Acharacteristic/Areference

      Where Tre =relative retention time, Tcharacteristic = characteristic peak retention time, Treference = reference peak retention time, Are = relative peak area, Acharacteristic = characteristic peak area, and Areference = reference peak area.
      ​NOTE: The establishment of traditional Chinese medicine fingerprints generally requires selecting a chromatographic peak that is easy to obtain and has high resolution. This is used as a reference peak to identify the fingerprints and examine their stability and reproducibility.

2. Establishment of Chuanmutong fingerprint and similarity analysis

  1. Use 10 batches of authentic samples and five batches of adulterants such as Clematis argentilucida (Levl. et Vant.) W. T. Wang (CC), Clematis apiifolia var. obtusidentata Rehd. et Wils. (DC), Clematis peterae Hand.-Mazz. (DE), Clematis gouriana Roxb. Var. finetii Rehd. et Wils (XS), and Clematis finetiana Levl. et Vaniot. (SMT) as samples for fingerprint analysis.
  2. Prepare the sample solutions as described in step 1.2. Perform fingerprint analysis of all sample solutions by HPLC according to the conditions described under step 1.1.
  3. Import the relevant data into the similarity evaluation system of chromatographic fingerprints of traditional Chinese medicine (SESCF-TCM, 2012 version).The system will designate the peaks with reasonable height and good resolution in the chromatograms of all samples as common peaks.
    NOTE: The SESCF-TCM software can be downloaded after registration on the website of the Chinese Pharmacopoeia Commission (http://114.247.108.158:8888/login).
    1. In the software, click the Set Reference Spectrum button in the menu.
    2. Then in the Parameter Settings window, set the Time Window Width to 0.5 and select Control Spectrum Generation Method as the Median Method.
    3. Click on Multi-point Calibration in the main menu, then select Peak Matching as Full Spectrum Peak Matching.
    4. Finally, click on Generate Control to generate the reference chromatographic fingerprint of the authentic species of Chuanmutong.
  4. Import the retention time and peak area of 10 batches of authentic Chuanmutong samples and five batches of adulterants into SESCF-TCM for analysis. The specific operations are as follows:
    1. In the software, click on the Set Reference Spectrum button in the main menu.
    2. In the Parameter Settings window, set the reference chromatographic fingerprint of the authentic species of Chuanmutong as the reference, select the Control Spectrum Generation Method as the Median Method, and set the Time Window Width to 0.5.
    3. Click on Multi-point Calibration in the main menu, then select Peak Matching as Full Spectrum Peak Matching.
    4. Finally, click on Calculate Similarity to calculate the similarity based on the reference chromatogram fingerprints of Chuanmutong. Finally, calculate the similarity of fingerprints using the Chinese Medicine Chromatographic Fingerprint Evaluation System (2012 version).
      ​NOTE: For the specific operations, refer to the operating specifications for the Chinese Medicine Chromatographic Fingerprint Evaluation System (2012 version).

3. Multi-pattern recognition analysis of Chuanmutong fingerprint

  1. Cluster analysis (CA)
    1. Use the peak areas of 12 common peaks in the fingerprints of 10 batches of authentic Chuanmutong samples and their five batches of adulterants as variables, and input them into statistical analysis software for systematic cluster analysis (CA).
    2. Choose the Between-Groups method and use the Pearson correlation coefficient as the classification basis to draw a cluster analysis diagram of Chuanmutong and its adulterants. The specific operations are as follows:
      1. In the statistical analysis software, click on File to import data.
      2. Click on Analysis in the menu and then click on System Clustering de Classification.
      3. Select the common peak area as a variable, and set the number of clusters to four.
      4. Click on Method, select the clustering method as Inter-Group Connection, select the measurement interval as Pearson Correlation, and click on OK to draw the CA map.
  2. Principal component analysis (PCA)
    1. Import the relative common peak area of the authentic varieties and their adulterants into the analysis software for PCA analysis, and use the PCA score map to evaluate the score matrix map of sample differences. The specific operations are as follows:
      1. Open the data analysis software, click on File on the menu and create a new regular project. Import the peak area of 12 common peaks in a spreadsheet (e.g., excel format) from the HPLC system. Then click on Finish to complete the data import.
      2. Click on Nouveau to create a new model to set the model type with PCA. Click on Autofit and Add to fit the data, then click on Scores to get the PCA score map.
  3. Orthogonal partial least-squares discrimination analysis (OPLS-DA)
    1. Use the Orthogonal partial least-squares discrimination analysis method with supervision mode to further analyze the relative common peak area peaks of the authentic Chuanmutong varieties and adulterants and draw an OPLS-DA classification score map of all samples. The specific operations are as follows:
      1. In data analysis software, click on File in the menu to import a file and create a new regular project. Import the peak area of 12 common peaks in a spreadsheet from the HPLC system, then click on Finish to complete the data import.
      2. Click on Nouveau to create a new model to set the model type with PCA. Click on Autofit and Add to fit the data. Then click on Scores to get the PCA score map.
      3. Click on Nouveau and choose New as Model One to set the model type with OPLS-DA.
      4. Click on Scale and set type with Par for All. Click on Autofit first and then click on Scores to get the OPLS-DA score map.
    2. In order to determine the influence of each common peak in Chuanmutong on its classification results and the difference between authentic Chuanmutong materials and related adulterants, use the variable importance in the projection (VIP) for analysis.
    3. Draw the VIP map of the different components of Chuanmutong. Use the resulting VIP map to assess the impact of each variable on the classification and to screen out components that contribute significantly to the differences between groups. The specific operations are as follows:
      1. In the data analysis software, click on Analyse in the menu and click on Permutations, set the number of permutations to 200, and get the R2 and Q2 of the OPLS-DA score map.
      2. Click on VIP and choose VIP Predictive to get the VIP map.

4. Determination of β-sitosterol in Chuanmutong by HPLC

  1. Chromatographic conditions (refer to step 1.1)
    1. Prepare the mobile phase: methanol-water (97:3).
    2. Set the flow rate of the mobile phase to 1.0 mL/min.
    3. Conduct the chromatographic separation on a C18 column (250 mm x 4.6 mm, 5 µm) maintained at 30 °C.
    4. Set the injection volume to 10 µL.
    5. Detect the component at a wavelength of 204 nm.
  2. Preparation of the sample solution
    1. Prepare the stock standard solution of β-sitosterol (0.1 mg/mL) by dissolving an accurately weighed quantity of the corresponding reference standard in methanol.
    2. Grind the analysis sample of the raw material to uniform particle size by passing the sample through the nylon mesh with an inner diameter of 180 µm ± 7.6 µm.
    3. Place 2 g of the ground raw material (accurately weighed) in a round-bottomed flask and add 50 mL of chloroform to it.
    4. Connect the flask to a reflux condenser and heat it in a boiling water bath (moderate boiling) for 60 min. Filter the extraction solution with a 15-20 µm filter paper.
    5. Evaporate the filtrate to near dryness on a boiling water bath (moderate boiling) for about 10 min.
    6. Dissolve the residue and make up the volume to 5 mL using methanol. Finally, pass the supernatant through a 0.45 µm filter membrane, and place it on standby.
  3. Method validation
    1. Take the stock solution of β-sitosterol prepared in sub-step 4.2.1, dilute it with 100% methanol, and prepare solutions with 100 µg/mL, 80 µg/mL, 60 µg/mL, 50 µg/mL, 40 µg/mL, 30 µg/mL, and 20 µg/mL concentrations.
    2. Inject the samples under the chromatographic conditions described in step 4.1 to determine the peak area, perform regression analysis with the peak area to the injection volume, and obtain the regression equation and correlation coefficient to evaluate its linearity.
    3. Prepare the samples as described above (step 4.2) and subject them to HPLC analysis (step 4.1) six times on the same day. Then calculate the RSD of peak areas to evaluate the precision.
    4. Evaluate the stability of the sample solution by analyzing the same sample solutions stored at RT for 0, 2, 4, 6, 8, 12, and 24 h, as described in step 4.1. Then calculate the RSD of peak areas as described in step 1.3.5.
    5. Examine the repeatability by dissolving the same sample (CMT-4) in sextuplicate, prepared as described in step 4.2, and subjecting them to HPLC analysis as described in step 4.1. Then calculate the RSD of β-sitosterol content in six samples.
    6. Assess the method's accuracy by employing the standard addition method. For this, add β-sitosterol reference solutions to the samples at 80%, 100%, and 120% of the β-sitosterol content and repeat each condition three times as described in step 4.1. Evaluate the method's accuracy by calculating the average recovery and RSD.
      NOTE: The calculation formula of the rate of recovery (RR) is as follows:
      RR % = [(MtM0) / Ms] × 100
      Where Mt = the quality of β-sitosterol after adding the standard, M0 = the quality of the sample solution, and Ms = the quality of β-sitosterol added.
  4. Determination of β-sitosterol content of samples
    1. Take 10 batches of authentic Chinese medicinal materials and five batches of related adulterants to prepare sample solutions according to step 4.2.
    2. Then inject each sample solution and β-sitosterol reference solution to determine the peak area under the conditions described in step 4.1, and calculate the β-sitosterol content of each sample by using the external standard one-point method.

Representative Results

Chromatographic fingerprint of Chuanmutong and similarity analysis (SA)
The RSD values of the relative retention time of precision, repeatability, and stability were below 0.46%, 1.65%, and 0.53%, respectively; the RSD values of the relative peak area were below 4.23%, 3.56%, and 3.96%, respectively. As shown in Figures 1A,B, there were 12 distinct common peaks (from peak 1 to peak 12) in the HPLC fingerprints in the 10 authentic Chuanmutong samples. Since the peak area of No. 10 was relatively large, the resolution was good; as it was a component present in each sample, it was used as a reference peak to investigate the stability and reproducibility of the fingerprint. Then, peak No. 10 was taken as the reference peak (S), and the relative retention time of the remaining 11 peaks was calculated.

In similarity analysis, the closer the correlation coefficient is to 1, the higher the similarity between the samples. As shown in Table 1, the similarity degrees of 10 batches of Chuanmutong were 0.910-0.989. These results showed that the 10 batches of Chuanmutong had high similarity and good consistency, which can be used to evaluate the overall quality of Chuanmutong. As shown in Figure 1C, the fingerprints of five batches of its adulterants were obtained. The similarity between the fingerprints of five batches of adulterants and the control fingerprints of Chuanmutong was only 0.133-0.720 (Table 1), indicating that there are obvious differences between the authentic samples and the related adulterants. The differences were mainly concentrated in the chromatographic peak numbers on the chromatogram at 28-55 min. Thus, the control fingerprints of Chuanmutong can effectively distinguish the authentic samples from the related adulterants.

SPSS 26 statistical software was used for CA analysis in this experiment (Figure 2A); 15 batches of samples were divided into two categories when the classification distance was 20. The first category was 10 batches of Chuanmutong and its habitual adulterants (CC). The second category was the adulterants of Chuanmutong, including DC, DE, XS, and SMT. When the classification distance was four, all samples were divided into four categories. The first category was 10 batches of Chuanmutong, the second category was CC, the third category was SMT and XS, and the fourth category was DC and DE. The classification results showed that the quality of the authentic varieties of Chuanmutong was basically the same, and there were obvious differences with all the adulterants. At the same time, compared with other adulterants, CC was closer to the authentic variety of Chuanmutong, but it can still be distinguished when the classification distance is narrowed.

The common peak areas of the 15 batches of samples were imported into data analysis software for PCA analysis, and the score matrix (R2x = 0.994, Q2 = 0.961) (Figure 2B) showed that the clustering effect of the 15 batches of samples was pronounced. On the right side of the Y-axis were 10 batches of Chuanmutong and CC. Among them, CC was located in the first quadrant, which is different from the authentic varieties of Chuanmutong. The left side of the Y-axis was the adulterants, including SMT, XS, DE, and DC. Among them, SMT and XS were located in the second quadrant, and DE and DC were located in the third quadrant. While comparing the authentic varieties of Chuanmutong and the conventional adulterants, the difference between CC and authentic varieties is relatively small, while the difference between the authentic and other adulterants is obvious.

The common peak area of Chuanmutong and its adulterants was used as a variable, imported into the data analysis software for OPLS-DA, and then the score matrix was drawn (Figure 3A). The R2x [1] of the OPLS-DA model was 0.695, and the R2x [2] was 0.605, both of which are greater than 0.5, indicating that the model is stable and reliable and can be used to distinguish authentic samples from adulterants.

It can be seen from Figure 3A that the sample points of the authentic and other adulterants were completely separated, and there was no intersection between the sample points. All samples were divided into three parts. The authentic varieties of Chuanmutong and CC were similar. The samples of XS, DC, and DE were grouped into one class, and the sample of SMT was the last class. Further, the judgment method of variable importance in the projection (VIP) (Figure 3B) was used to screen the peaks of different components in the fingerprint of each sample. VIP > 1.0 was taken as the standard to screen out seveb variables contributing greatly to the classification between the sample groups. According to the screening results, the main marker components that caused the difference in composition between authentic samples and the adulterants were peaks No. 9, No. 5, No. 7, No. 6, No. 10, No. 3, and No. 2. The VIP value of the remaining peaks was less than 1, which had little effect on the discrimination of samples.

The linear relationship between the β-sitosterol peak area and its solution concentration was found using regression analysis. This dependence obeyed an equation Y = 5.4918 X-4.5563, where Y is the β-sitosterol peak area and X is the β-sitosterol content in µg/mL. Simultaneously, the correlation coefficient r = 0.9995, which meets the requirements. The RSD of the precision test, the stability test, and the repeatability test were 1.76%, 4.22%, and 3.85%, respectively. The results show that the determination method of β-sitosterol content had good linearity, precision, and repeatability, and the sample solution was stable within 24 h. The mean percentage recovery at three levels was 101.50 %, 101.90 %, and 100.72%; the corresponding RSD was 2.56%, 1.56%, and 1.68%, respectively. Good agreements between theoretical and actual determined values confirmed the accuracy and applicability of the method for analysis. The liquid chromatogram of β-sitosterol is shown in Figure 4, and the content of β-sitosterol in 15 batches of samples was determined (Table 2). The results showed that the concentration of β-sitosterol in 10 batches of authentic samples was in the range of 97.53-161.56 µg/g (relatively stable). This component was detected in all five batches of adulterants, but the content varied greatly.

Figure 1
Figure 1: Fingerprints of Chuanmutong and their adulterants. (A) Fingerprints of 10 batches of authentic Chuanmutong samples (S1: CMT-1, S2: CMT-2, S3: CMT-3, S4: CMT-4, S5: CMT-5, S6: CMT-6, S7: CMT-7, S8: CMT-8, S9: CMT-9, S10: CMT-10). (B) The reference chromatogram fingerprints of authentic Chuanmutong samples; relative retention times were 0.18 (Peak No.1), 0.22 (Peak No. 2), 0.29 (Peak No. 3), 0.72 (Peak No. 4), 0.75 (Peak No. 5), 0.82 (Peak No. 6), 0.86 (Peak No. 7), 0.92 (Peak No. 8), 0.96 (Peak No. 9), 1.00 (Peak No. 10), 1.02 (Peak No. 11), 1.37 (Peak No. 12). (C) Fingerprints of five batches of Chuanmutong adulterants (S1: CC, S2: DC, S3: DE, S4: XS, S5: SMT). (D) Comparison between reference chromatogram fingerprints of authentic Chuanmutong samples and the five batches of their adulterants (S1: reference chromatogram fingerprints, S2: CC, S3: DC, S4: DE, S5: XS, S6: SMT). Please click here to view a larger version of this figure.

Figure 2
Figure 2: CA and PCA analysis of 10 batches of authentic Chuanmutong samples and five batches of adulterants. (A) CA analysis. (B) PCA analysis. Please click here to view a larger version of this figure.

Figure 3
Figure 3: OPLS-DA score map and VIP score map of 10 batches of authentic Chuanmutong samples and five batches of adulterants. (A) OPLS-DA score map. (B) VIP score map. Please click here to view a larger version of this figure.

Figure 4
Figure 4: The liquid chromatogram of β-sitosterol. S1: β-sitosterol, S2: CMT-4, S3: XS, S4: DC, S5: SMT, S6: CC, S7: DE. Please click here to view a larger version of this figure.

Samples Name Similarity
the genuine varieties of Chuanmutong  CMT-1 0.947
CMT-2 0.910
CMT-3 0.989
CMT-4 0.937
CMT-5 0.989
CMT-6 0.988
CMT-7 0.956
CMT-8 0.959
CMT-9 0.939
CMT-10 0.966
adulterants CC 0.599
DC 0.720
DE 0.133
XS 0.694
SMT 0.180

Table 1: Results of similarity of 10 batches of authentic Chuanmutong samples and their adulterants. By importing the relevant data into the Chinese Medicine Chromatographic Fingerprint Evaluation System, the similarity of 10 batches of authentic Chuanmutong samples and five batches of adulterants were calculated.

Samples Name Content (μg/g)
the genuine varieties of Chuanmutong  CMT-1 103.5
CMT-2 124.6
CMT-3 131
CMT-4 121.1
CMT-5 97.5
CMT-6 113.8
CMT-7 105.6
CMT-8 161.6
CMT-9 118
CMT-10 123.5
        adulterants CC 157.4
DC 165.6
DE 32.9
XS 69.7
SMT 192.2

Table 2: Determination results of β-sitosterol content in the authentic Chuanmutong samples and their adulterants.

Supplementary Figure 1: Liquid chromatography under different sample preparation conditions and different chromatographic conditions. (A) The mobile phase systems (S1: acetonitrile-0.1% formic acid solution, S2: acetonitrile-0.5% acetic acid solution, S3: acetonitrile-pure water, S4: acetonitrile-0.05% phosphoric acid solution, S5: methanol-pure water). (B) The detection wavelengths (S1: 205 nm, S2: 230 nm, S3: 250 nm, S4: 300 nm). (C) The column temperatures (S1: 20 °C, S2: 30 °C, S3: 40 °C). (D) The flow rates (S1: 0.8 mL/min, S2: 0.9 mL/min, S3: 1.0 mL/min). (E) The extraction methods (S1: ultrasonic extraction, S2: reflux extraction). (F) The extraction solvents (S1: ethyl acetate, S2: ethanol, S3: chloroform, S4: n-butanol, S5: methanol). (G) The extraction time (S1: 15 min, S2: 30 min, S3: 60 min). Please click here to download this File.

Supplementary Figure 2: The liquid chromatogram of ergosterol, stigmasterol, and authentic Chuanmutong. S1: stigmasterol, S2: ergosterol, S3: CMT-4. Please click here to download this File.

Discussion

The sample collection for research is the first key step to constructing multi-pattern recognition in identifying the authenticity of Chinese medicinal materials. Through market research, we found that Sichuan Ya'an, Liangshan, and Leshan are the main production areas of wild resources of Chuanmutong. The related varieties of the same genus also have the same geographical distribution6,20; CC, DC, DE, XS, and SMT are often misused as Chuangmutong16,21; therefore, in this study, 10 batches of authentic Chuanmutong and five batches of mixed samples were collected in the above-mentioned places of origin, and the accuracy of the varieties was confirmed.

The second key step is to screen the detection conditions of the HPLC fingerprint, which can display as much information as possible about the chemical components. In this study, as shown in Supplementary Figure 1, the number and area of chromatographic peaks were obtained under different preparation conditions, including the extraction methods, extraction solvents, and extraction time. The optimal preparation method of the Chuanmutong sample solution was determined. On the other hand, the number and resolution of chromatographic peaks of the samples under different chromatographic conditions were compared. The mobile phase systems, such as acetonitrile-0.1% formic acid solution, acetonitrile-0.5% acetic acid solution, acetonitrile-pure water, acetonitrile-0.05% phosphoric acid solution, and methanol-pure water, the detection wavelengths, such as 205 nm, 230 nm, 250 nm, and 300 nm, the column temperatures, such as 20 °C, 30 °C, and 40 °C, and the flow rates, such as 0.8-1.0 mL/min, were investigated. The optimal chromatographic conditions for analyzing the samples of Chuanmutong were determined. Further, its feasibility was confirmed by methodological validation, and the detection method of the HPLC fingerprint of Chuanmutong was successfully constructed.

The third key step is to analyze and find the information different in the fingerprints of authentic Chinese medicine and its adulterants. In this study, firstly, the similarity of fingerprints was analyzed using SESCF-TCM (2012 version). It was found that the similarity between the fingerprints of 10 batches of authentic Chuanmutong samples and the control characteristic fingerprint was very high. In comparison, the similarity between the fingerprints of five batches of adulterants and the control characteristic fingerprint was significantly lower than that of authentic samples. CA, PCA, and OPLS-DA were then further introduced to analyze the common peak information of the chemical fingerprints. Both CA and PCA results show that the commonly used adulterant CC among different adulterants is relatively closer to the authentic one, which is difficult to distinguish. However, when the classification distance of CA is modified to four, the effective identification between the authentic and the adulterant can be achieved. Based on the 12 common peaks of authentic materials, the contribution values of differential peaks of adulterants were quantitatively evaluated by OPLS-DA, and obtained seven differential chromatographic peaks, namely peak No.9, peak No.5, peak No.7, peak No.6, peak No.10, peak No.3 and peak No.2. These can be used to effectively identify the authentic and fake materials of Chuanmutong, which are the main marked components of the difference between the authentic and the adulterant.

The latest edition of Chinese Pharmacopoeia has not yet included the content determination of the effective components of Chuanmutong. In order to improve its quality control, this study investigated content determination methods of active components such as β-sitosterol, ergosterol, sitosterol, and oleanolic acid related to the diuretic action in previous reports22,23,24,25,26. As shown in Supplementary Figure 2, ergosterol was not detected in authentic Chuanmutong, and stigmasterol was difficult to be separated in the chromatogram and could not be accurately quantified. Finally, the content determination method of β-sitosterol was established; the detection results showed that β-sitosterol was found in 10 batches of authentic Chuanmutong samples and five batches of adulterants. Therefore, β-sitosterol was not unique to genuine medicinal materials.Although some information about the quality of Chuanmutong can be provided, it is still necessary to further analyze the differential chromatographic peaks in the fingerprints in the future to see whether the specific components related to the efficacy of Chuanmutong can be found.

At present, traditional Chinese medicines are often identified by the similarity of the chemical fingerprint spectrum. However, this indicator is a parameter based on the overall information of the sample chromatographic peaks, which cannot provide more information about the identification and the main differences of different samples. Therefore, this study further used CA, PCA, and OPLS-DA to identify the common peak information of chemical fingerprints, found the main differential chromatographic peaks between authentic and adulterated samples of Chuanmutong, and successfully identified them. Finally, HPLC-coupled chemical fingerprinting for multi-pattern recognition was constructed.

As it is not uncommon to mix authentic Chinese medicinal materials and their adulterants, such as Fritillaria thunbergii, Herba Asari, and Lonicera japonica, this method will provide a new strategy for clear and scientific identification of authentic Chinese medicinal materials and their adulterants. This strategy will be of great significance for ensuring the quality of Chinese medicinal materials in clinical application.

Divulgations

The authors have nothing to disclose.

Acknowledgements

This work was supported by the Project of Sichuan Traditional Chinese Medicine Administration (no. 2020JC0088, no. 2021MS203).

Materials

Acetic acid Zhiyuan Chemical Reagent Co., Ltd., Tianjin, China 2017381038
Acetonitrile Sigma-Aldrich  Trading Co., Ltd., Shanghai, China WXBD5243V
β-Sitosterol Meisai Biological Technology Co., Ltd., Chongqing, China 20210201
 C18 column Yuexu Material Technology Co., Ltd., Shanghai, China Welch Ultimate LP
Chuanmutong Guoqiang Chinese Herbal Pieces Co., Ltd., Sichuan, China  19020103 CMT-1
Chuanmutong Hongya Wawushan Pharmaceutical Co., Ltd., Sichuan, China  200701 CMT-2
Chuanmutong Hongpu Pharmaceutical Co., Ltd., Sichuan, China  200701 CMT-3
Chuanmutong Hongpu Pharmaceutical Co., Ltd., Sichuan, China  200901 CMT-4
Chuanmutong Xinrentai Pharmaceutical Co., Ltd., Sichuan, China  210701 CMT-5
Chuanmutong Haobo Pharmaceutical Co., Ltd., Sichuan, China  210401 CMT-6
Chuanmutong Xinrentai Pharmaceutical Co., Ltd., Sichuan, China  200901 CMT-7
Chuanmutong Wusheng Pharmaceutical Group Co., Ltd., Sichuan, China  201201 CMT-8
Chuanmutong Limin Chinese Herbal Pieces Co., Ltd., Sichuan, China  201001 CMT-9
Chuanmutong Yuhetang Pharmaceutical Co., Ltd., Sichuan, China 210501 CMT-10
Clematis argentilucida (Levl. et Vant.) W. T. Wang Madzi Bridge, Sanlang Township, Tianquan County, Sichuan, China  CC
Clematis apiifolia var. obtusidentata Rehd. et Wils. Heilin Village, Qiliping Township, Hongya County, Sichuan, China  DC
Clematis peterae Hand.-Mazz. Huangmu Village, Huangmu Township, Hanyuan County, Sichuan, China  DE
Clematis gouriana Roxb. Var. finetii Rehd. et Wils Mixedang Mountain, Huangwan Township, Emei County, Sichuan, China  XS
Clematis finetiana Levl. et Vaniot. Wannian Village, Huangwan Township, Emei County, Sichuan, China  SMT
Electronic balance Haozhuang Hengping Scientific Instrument Co., Ltd., Shanghai,  China  FA1204
Ergosterol Meisai Biological Technology Co., Ltd, Chongqing, China 20210201
Ethanol Kelon Chemical Co., Ltd., Chengdu, China 2021112602
Ethyl acetate Zhiyuan Chemical Reagent Co., Ltd., Tianjin, China 2017042043
Formic acid Kelon Chemical Co., Ltd., Chengdu, China 2016062901
High performance liquid chromatography Agilent, USA. 1260
IBM SPSS Statistics version 26.0 International Business Machines Corporation, USA
Methanol Sigma-Aldrich  Trading Co., Ltd., Shanghai, China WXBD6409V
Methanol Kelon Chemical Co., Ltd., Chengdu, China 202010302
n-butyl alcohol Zhiyuan Chemical Reagent Co., Ltd., Tianjin, China 2020071047
Petroleum ether Zhiyuan Chemical Reagent Co., Ltd., Tianjin, China 2020090125
Phosphoric acid Comeo Chemical Reagent Co., Ltd., Tianjin, China 20200110
SESCF-TCM version 2012 National Pharmacopoeia Commission, China http://114.247.108.158:8888/login
Stigmasterol Meisai Biological Technology Co., Ltd., Chongqing, China 20210201
Trichloromethane Sinopharm Group Chemical Reagent Co., Ltd., Shanghai, China 20200214
Umetrics SIMCA version 14.1.0.2047 Umetrics, Sweden https://www.sartorius.com/en/products/process-analytical-technology/data-analytics-software/mvda-software/simca/simca-free-trial-download
Ultrapure water machine Youpu Ultrapure Technology Co., Ltd., Sichuan, China UPH-II-10T
Ultrasonic cleaner Kunshan Hechuang Ultrasound Instrument Co., Ltd., Jiangsu, China KH3200E

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Wang, F., Qian, Z., Liao, G., Zeng, J., Huang, D., Liu, Q., Xie, X. HPLC Coupled with Chemical Fingerprinting for Multi-Pattern Recognition for Identifying the Authenticity of Clematidis Armandii Caulis. J. Vis. Exp. (189), e64690, doi:10.3791/64690 (2022).

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