Hong-Xun Wang†
*a,
Yang Yi†b,
Jie Sunb,
Olusola Lamikanrab and
Ting Minb
aCollege of Biology & Pharmaceutical Engineering, Wuhan Polytechnic University, Wuhan 430023, PR China. E-mail: wanghongxun7736@163.com; Tel: +86 27 83955611
bCollege of Food Science & Engineering, Wuhan Polytechnic University, Wuhan 430023, PR China. E-mail: yiy86@whpu.edu.cn; qiqijiayuguan@163.com; sola.lamikanra@gmail.com; minting1323@163.com
First published on 4th May 2018
Thirty-nine polysaccharides isolated from different parts of 13 lotus root varieties were characterized with fingerprint and chemometrics analyses to explore their similarity and diversity. The physicochemical features of lotus root polysaccharides (LRPs) were found to be the following: LRPs contained mainly polysaccharides (5.94 kDa) and polysaccharide-protein complexes (11.57 kDa and 5.30 kDa); their carbohydrates were composed of mannose, rhamnose, glucuronic acid, galacturonic acid, glucose, galactose and arabinose approximately in the molar ratio of 0.19:0.14:0.08:0.17:6.49:1.00:0.16; and node LRPs possessed more binding proteins and uronic acids than both flesh and peel LRPs. Their fingerprints based on Fourier-transform infrared spectroscopy, pre-column derivatization high-performance liquid chromatography and high performance size-exclusion chromatography all exhibited relatively high similarities, contributing to the common figerprint models which could be utilized as references for the identification of LPRs. In addition, the fingerprint characteristics associated with the between-group variability of LRPs in the score plots derived from multivariate analytical models might indicate which variety or part of lotus root they were isolated from. Therefore, multi-fingerprinting techniques have the potential to be applied to the identification and quality control of LRPs.
In China, Nelumbo nucifera has been cultivated for the last 2000 years, and more than 200 germplasm collections of lotus root are preserved in the Wuhan National Germplasm Repository for Aquatic Vegetables.12 The genetic diversity assessment of lotus root varieties has attracted much attention for the evolutionary understanding, conservation and improvement of genetic resources.1,13 In contrast, investigations of the physicochemical diversity of characteristic components are rare. A comprehensive understanding of plant polysaccharides' physicochemical similarity and differences among different varieties, locations or tissues is needed for their commercial development.11,14,15 Varietal and tissue variations in plants are known to impact physicochemical properties of their polysaccharides and consequently the nature and intensity of their bioactivities.16,17 Previous work indicated that the in vitro antioxidant activities of polysaccharides from the peel and node of lotus root were significantly stronger than those from the flesh.9 Therefore, for the commercial development of LRPs, it is necessary to define the physicochemical diversity among the different varieties and different parts of the lotus root.
With the continual progress in modern analytical technology and chemometric applications, fingerprint profiling has been internationally proven to be effective and convenient for inspecting the authenticity and quality of herbal materials, as well as their products.14 Fingerprinting techniques have been successfully used for the quality control and standardization of plant polysaccharides, such as Lycium barbarum polysaccharides,14 tea polysaccharides,11 Ganoderma polysaccharides,15 Cordyceps polysaccharides18 and Panax polysaccharides.19 The inconsistent characteristics of LRPs reported is due to of their structural complexity, especially since they may be protein-bound complexes.3,9,20 Unlike the phenolic compounds of lotus root,2 LRPs are difficult to profile using only basic composition determination. Structural characteristics related to functional group, molecular weight distribution and binding protein are also needed for a comprehensive description. Accordingly, multi-fingerprinting analysis models are considered to be necessary for the characterization and discrimination of LRPs. However, any kind of fingerprinting profile of LRPs has been unavailable so far.
In this study, polysaccharides from different parts (flesh, peel and node) of 13 lotus root varieties were isolated and analyzed by multi-techniques including ultraviolet spectroscopy (UV), Fourier-transform infrared spectroscopy (FTIR), pre-column derivatization high-performance liquid chromatography (PCD-HPLC) and high performance size-exclusion chromatography (HPSEC). The resulting data were analyzed to develop fingerprint models that reveal the physicochemical similarities and differences of LRPs from different varieties and parts of the root. Considering the growing demand for lotus root-derived functional products and the increasing literature on their bioactive components, the detailed profiles of LRPs described in the present work will effectively support efforts toward the development and utilization of lotus root.
Fig. 1 The illustrations for pretreating lotus root. The yield (%) of each lotus root part was calculated as a percentage of the wet weight of the whole root. |
Sample code | Lotus root varieties | Root parts | Yield (mg g−1 FW) | Total sugar content (%) | Protein content (%) |
---|---|---|---|---|---|
a Values were expressed as means ± standard deviation (n = 3). Different letters indicate the significant difference (P < 0.05) between values in the same part group. | |||||
1 | Zoumayang | Flesh | 4.37 ± 0.68 | 72.08 ± 1.15 g | 1.01 ± 0.00 abc |
2 | Yingcheng-Bailian | Flesh | 7.87 ± 0.40 | 68.64 ± 0.89 ef | 0.73 ± 0.04 ab |
3 | No. 2 Wuzhi | Flesh | 0.53 ± 0.10 | 97.61 ± 1.74 h | 0.58 ± 0.05 a |
4 | Guixi-Fuou | Flesh | 0.90 ± 0.10 | 41.12 ± 1.05 a | 2.59 ± 0.19 d |
5 | No. 8 elian | Flesh | 14.18 ± 0.37 | 49.95 ± 1.48 b | 1.01 ± 0.18 abc |
6 | No. 7 elian | Flesh | 7.93 ± 0.81 | 66.34 ± 2.92 e | 1.13 ± 0.20 bc |
7 | No. 6 elian | Flesh | 14.06 ± 0.96 | 61.16 ± 1.48 d | 1.16 ± 0.19 bc |
8 | No. 5 elian | Flesh | 24.19 ± 2.89 | 71.31 ± 1.91 fg | 1.04 ± 0.17 abc |
9 | Changzhou-Piaojiang | Flesh | 6.88 ± 0.50 | 43.29 ± 1.65 a | 1.25 ± 0.21 bc |
10 | Bobaiou | Flesh | 15.26 ± 1.76 | 42.34 ± 0.92 a | 0.95 ± 0.19 abc |
11 | Baipaozi | Flesh | 11.37 ± 1.44 | 41.03 ± 0.39 a | 1.34 ± 0.11 c |
12 | Baheou | Flesh | 10.47 ± 1.26 | 41.34 ± 0.12 a | 1.28 ± 0.18 bc |
13 | 8143 | Flesh | 19.89 ± 0.88 | 58.02 ± 1.87 c | 0.76 ± 0.05 ab |
14 | Zoumayang | Peel | 1.77 ± 0.34 | 69.14 ± 2.76 e | 2.81 ± 0.30 de |
15 | Yingcheng-Bailian | Peel | 1.89 ± 0.30 | 63.41 ± 0.89 d | 2.34 ± 0.14 de |
16 | No. 2 Wuzhi | Peel | 0.48 ± 0.08 | 69.53 ± 0.64 e | 0.98 ± 0.22 b |
17 | Guixi-Fuou | Peel | 0.45 ± 0.01 | 64.30 ± 1.32 d | 1.77 ± 0.14 c |
18 | No. 8 elian | Peel | 8.88 ± 0.01 | 77.60 ± 1.59 f | 1.16 ± 0.14 b |
19 | No. 7 elian | Peel | 32.00 ± 0.69 | 65.15 ± 1.71 d | 5.63 ± 0.43 h |
20 | No. 6 elian | Peel | 6.08 ± 0.64 | 47.99 ± 2.21 b | 2.25 ± 0.43 d |
21 | No. 5 elian | Peel | 18.49 ± 2.07 | 50.07 ± 1.41 b | 2.63 ± 0.09 de |
22 | Changzhou-Piaojiang | Peel | 8.06 ± 0.66 | 63.92 ± 1.00 d | 2.92 ± 0.19 e |
23 | Bobaiou | Peel | 6.27 ± 0.50 | 40.25 ± 0.35 a | 8.35 ± 0.52 i |
24 | Baipaozi | Peel | 10.94 ± 1.45 | 51.35 ± 4.19 b | 3.63 ± 0.24 f |
25 | Baheou | Peel | 4.06 ± 0.31 | 55.85 ± 0.57 c | 5.08 ± 0.16 g |
26 | 8143 | Peel | 13.94 ± 0.32 | 66.98 ± 1.55 de | 0.38 ± 0.09 a |
27 | Zoumayang | Node | 1.65 ± 0.24 | 48.54 ± 0.70 e | 6.38 ± 0.13 f |
28 | Yingcheng-Bailian | Node | 0.63 ± 0.09 | 63.11 ± 1.07 i | 5.65 ± 0.19 cd |
29 | No. 2 Wuzhi | Node | 0.44 ± 0.05 | 46.38 ± 0.52 d | 7.68 ± 0.10 h |
30 | Guixi-Fuou | Node | 0.39 ± 0.03 | 41.07 ± 0.52 c | 8.35 ± 0.10 i |
31 | No. 8 elian | Node | 16.85 ± 1.48 | 41.83 ± 1.52 c | 4.82 ± 0.05 b |
32 | No. 7 elian | Node | 2.61 ± 0.44 | 52.66 ± 1.26 f | 9.37 ± 0.05 j |
33 | No. 6 elian | Node | 1.51 ± 0.32 | 59.72 ± 1.09 h | 4.36 ± 0.14 a |
34 | No. 5 elian | Node | 9.14 ± 1.75 | 69.10 ± 0.96 j | 5.46 ± 0.11 c |
35 | Changzhou-Piaojiang | Node | 3.77 ± 0.44 | 55.89 ± 0.13 g | 7.42 ± 0.19 g |
36 | Bobaiou | Node | 3.05 ± 0.01 | 33.85 ± 0.84 b | 9.37 ± 0.05 j |
37 | Baipaozi | Node | 3.55 ± 0.68 | 44.89 ± 1.91 d | 6.07 ± 0.10 e |
38 | Baheou | Node | 3.43 ± 0.31 | 53.85 ± 0.84 f | 5.89 ± 0.19 de |
39 | 8143 | Node | 6.87 ± 0.47 | 30.19 ± 0.70 a | 5.71 ± 0.05 cd |
The common FTIR models were established on the average vector of selected FTIR fingerprints, in particular, the models of flesh LRPs, peel LRPs and node LRPs were formed as representative references (Fig. 3B–D). The node model had a higher intensity ratio of 1630 cm−1 trough to 1076 cm−1 trough and a unique trough at 1360 cm−1, which was consistent with UV detection findings that node LRPs generally held more amino groups and carbonyl groups than peel LRPs and flesh LRPs. The FTIR fingerprint information of LRPs were mostly concentrated in the range of 1800–400 cm−1. Therefore, the similarity of the sample FTIR fingerprint to the total common model (Fig. 3E) was evaluated with correlation coefficient (R) and cosine (cosθ) values in this range (data not shown). The average R value and minimum R value were 0.89 and 0.80, and the average cosθ value and minimum cosθ value were 1.00 and 0.98, respectively. In light of the high similarity of 39 FTIR fingerprints, their total common model could be used as a standard fingerprint for differentiating LRPs from other plant polysaccharides, such as longan pulp polysaccharides,23 Lycium barbarum polysaccharides14 and tea polysaccharides.11 The most commonly used multivariate analytical methods, unsupervised PCA and supervised PLS-DA complement each other in providing visualizable representations of information-rich fingerprinting data by means of dimensionality reduction.24 Based on the separations observed between groups, the resultant two- or three-dimensional score plots can effectively identify the fingerprint features of polysaccharides contributing to between-group variability.14,15,19 These features are generally typical evidences for the quality control of polysaccharides. Therefore, the PCA and PLS-DA score plots derived from the data matrix of FTIR fingerprints were established (Fig. 3F and G). The PCA model with two components explained 96.50% of the total variance between the samples (PC1 captured 94.13%), and the PLS model with two latent variables explained 95.70% of the total variance (LV1 captured 94.11%). In the plots, peel LRPs were relatively centralized and could be separated from node LRPs. It was found that PLS-DA provided better discriminability than PCA. Accordingly, plots consisting of 362 variables within 1800–400 cm−1 were built to explore the effect of these variables on sample separation (data not shown). The variables in the range of 1650–1600 cm−1 contributed negatively to PC1 and positively to LV1, while the variables in the range of 1105–1140 cm−1 contributed positively to PC2 and negatively to LV2. They mainly contributed to the separation between the groups of peel LRPs and node LRPs. Specifically, the differences of samples 27–31 from others could be attributed to their strong absorptions at about 1650 cm−1, 1410 cm−1 and 1075 cm−1.
The common model of PCD-HPLC fingerprints was formed under the minimum common peak area percentage of 1%. The models of LRPs from different parts were similar (Fig. 4B–D). All the LRPs were mainly composed of Glc, Gal, Ara, Man and GalA, as seen in Fig. 5. Particularly, samples 4, 23 and 36 with lower molar percentage of Glc presented obvious differences in monosaccharide composition from others. The total common model of PCD-HPLC fingerprints contained 7 common peaks, which were respectively identified as Man, Rha, GlcA, GalA, Glc, Gal and Ara with the molar ratio of 0.19:0.14:0.08:0.17:6.49:1.00:0.16. Glc and Gal accounted for 91.81% of the total peak area. The similarity of the sample fingerprint to the total common model was calculated. The R values ranged from 0.51 to 1.00 with an average value of 0.98 and a variation coefficient of 8.19%. The cosθ values ranged from 0.64 to 1.00 with an average value of 0.98 and a variation coefficient of 6.25%. The PCD-HPLC fingerprint characteristics of LRPs were highly similar and could be used for the identification of LRPs.
The data matrix from PCD-HPLC fingerprints were constructed with PCA and PLS-DA. The corresponding score plots are shown in Fig. 4F and G. The PCA model containing two components explained 99.85% of the total variance, and the PLS model containing two latent variables also explained 99.84% of the total variance. LRPs from different parts could not be differentiated in the plots. As seen in the loading plots, Glc contributed positively to PC1 and negatively to LV1, and Gal contributed negatively to PC2 and positively to LV2. They were the main variables contributing to the deviation of certain samples from most of the others. In the PCA score plot, samples with a high molar ratio of Glc to Gal were distributed on the top right corner, and those with a low molar ratio were distributed on the bottom left corner. The distribution was opposite in the PLS-DA score plot.
The HPSEC-RI fingerprints contributed to a comprehensive understanding of the molecular weight distributions of LRPs (Fig. 6A). The fingerprints all had more than 5 peaks in the retention time range of 12.96–16.80 min. Their common models were established under the minimum common peak area of 5% for investigation of between-group variability (Fig. 6B–D). The models corresponding to LRPs from different parts all had the common peaks of 18.54 kDa (13.00 min), 11.57 kDa (13.82 min), 9.18 kDa (14.30 min), 5.94 kDa (15.47 min) and 5.30 kDa (15.90 min). However, their peak area ratios were significantly different: the flesh model was 4.63:27.10:3.03:35.04:27.16; the peel model was 4.18:34.49:7.05:24.19:25.55; and the node model was 2.83:24.23:3.38:44.34:14.43. In addition, node LRPs contained more fractions with low molecular weight (<5.0 kDa). Seven common peaks in the total HPSEC-RI fingerprint model (Fig. 6E) accounted for more than 90% of the total peak area. The HPSEC-RI fingerprint similarities of samples to the total common model were acceptable: the average R value was 0.81 with a variation coefficient of 25.67%; the average cosθ value was 0.90 with a variation coefficient of 12.33%. In particular, samples 4, 20, 23 and 36 remarkably differed from others.
PCA and PLS-DA were performed to build the score plot and loading plot to explore the potential factions responsible for the between-group variability of LRPs (Fig. 6F and G). The PCA score plot was established with three principal components explaining 88.16% of the total variance. LRPs from fleshes and peels could not be differentiated in the PCA model, but most of node LRPs were visually separated from them. The main factors contributing to the separation were variable 2 (peak 2T), variable 5 (peak 5T) and variable 6 (peak 6T): variable 2 and 5 primarily contributed to PC1 and PC3, while variable 5 and 6 primarily contributed to PC2. Obviously, samples no. 4, 23 and 36 clustered off center, possibly due to their common characteristics (the larger peak areas of peak 1T and 2T relative to peak 5T). The PLS-DA score plot was established with three latent variables explaining 82.97% of the total variance. The variables 5–7 contributed mainly to the dispersion of samples. Variable 6 and 7 contributed positively to LV 1, LV2 and LV3, while variable 5 contributed negatively to LV1 and LV2. Therefore, it was suggested that 5.94 kDa and 5.30 kDa fractions were mainly associated with the variation of molecular weight distribution of LRPs.
Previous studies indicated that lotus root polysaccharides were partly protein-bound complexes.3,9 LRPs all had small amounts of protein. Therefore, the HPSEC-PDA fingerprints complemented to the HPSEC-RI fingerprints were established to explore the molecular weight distribution of proteins in LRPs and to investigate the existence form of proteins (Fig. 7A). The HPSEC-PDA fingerprint characteristics distributed in the retention time range of 12.55–15.43 min, in which the 17.56 kDa (12.55 min) and 8.52 kDa (13.84 min) peaks were the common features indicating that the molecular weights of protein related fractions in LRPs from different parts were mostly close (Fig. 7B–D).
The total common model of HPSEC-PDA fingerprints was similar to the peel model, except for peak 5P′ which disappeared (Fig. 7E). Considering the gap between the signals of PDA and RI in HPSEC detection, the first common peak of the two total models was suggested to be same polysaccharide-protein complexes, with molecular weight close to that of the previous report.3 Likewise, the peaks 2T, 4T and 5T in the HPSEC-PDA total model respectively corresponded to the peaks 2T′, 3T′ and 6T′ in the HPSEC-RI total model could be also judged as polysaccharide-protein complexes.
The HPSEC-PDA fingerprint similarities of samples to total model was acceptable: the average R value was 0.88 with a variation coefficient of 24.75%; the average cosθ value was 0.92 with a variation coefficient of 15.10%. Particularly, samples 4, 23 and 36, in which the 17.56 kDa fraction contained most of the proteins, but not the 8.52 kDa fraction, were markedly different from others. The score plots of HPSEC-PDA fingerprints-based PCA and PLS-DA were built in order to visually differentiate samples between groups (Fig. 7F and G). The PCA score plot was formed by three principal components, explaining 90.27% of the total variance. Of these, PC1 and PC2 accounted for 64.38% and 17.74% of the variance, respectively. Most of the samples clustered together in the PCA model. Noticeably, samples 30, 31, 33 and 34 clustered together off center, and samples 4, 23 and 36 were dispersed away from the others. According to the loading plot derived from PCA model, the main factors leading to their separation were peaks 1T′ and 2T′. The principal contributors to PC1 were variables 1 and 4, those to PC2 were variables 2 and 3, and the ones to PC3 were variables 2 and 4. The PLS-DA score plot contained three latent variables explaining 90.25% of the total variance and showed a similar performance to the PCA score plot. The main contributors promoting the separation were variables 1–3. Therefore, the proteins existed in the fractions with molecular weight larger than 8.52 kDa should be mainly taken into account for exploring the diversity of LRPs.
In this work, the multiple fingerprints of LRPs were systematically investigated using the methods of FTIR, PCD-HPLC and HPSE-RI-PDA, which complemented each other. Although LPRs overall showed relatively high similarity in the four kinds of fingerprint, slight differences among those from different lotus root parts were found by comparing their common models with each other. The main factors contributing to the differences were further identified by the methods of PCA and PLS-DA, which deserved great attentions include: (1) the intensity ratio of absorption at 1650 cm−1 to that at 1075 cm−1 in the FTIR spectrum; (2) the molar ratio of Glc to Gal; (3) the peak area ratio of 5.94 kDa fraction to 5.30 kDa fraction in the HPSEC-RI chromatogram; (4) the peak area ratio of 17.56 kDa fraction to 8.52 kDa fraction in the HPSEC-PDA chromatogram. These factors can be the key to the quality control of LRPs or tracing back to their sources. In addition, the total common fingerprint models can be served as standard fingerprints for indentifying the authenticity of LPRs. However, the fingerprint methods established in the present work remain some limitations. In particular, the methods fail to effectively confirm the authenticity of some highly purified fractions of LRPs (data not shown). The unique structural features and chemical composition of polysaccharide resulted in a different fingerprinting profile are quite important for authentication.14 More efforts may be in urgent need of illuminating the fine structures of LRPs.
Moreover, some fingerprint features of polysaccharides may be associated with their specific functions.26 Fingerprint-based multivariate statistical analysis of LRPs has been applied to explore the crucial characteristics contributing to their antioxidant, cancer cell growth inhibitory and immunostimulatory activities, providing new insights in the structure–activity relationship of polysaccharides.27 Those characteristics are probably regarded as a guarantee of effective activities.
Footnote |
† These authors contributed equally to this work. |
This journal is © The Royal Society of Chemistry 2018 |