TLC-Based Metabolite Profiling and Bioactivity-Based Scientific Validation for Use of Water Extracts in AYUSH Formulations

We aimed to develop a chromatographic method for scientific validation of water extract of some important Indian traditional plants used in AYUSH-based formulation as immunomodulator and to evaluate their bioactive potential. Fruits of Phyllanthus emblica L. and Piper nigrum L., stem of Tinospora cordifolia (Willd.) Miers, rhizome of Curcuma longa L., leaves of Ocimum sanctum L. and Achillea millefolium L., roots of Withania somnifera L., and stem bark of Azadirachta indica A. Juss. were coarsely powdered and extracted in three different solvents (water, ethanol, and hydroethanol). The antioxidant potential was determined through 1, 1-diphenyl-2-picrylhydrazyl and ferric reducing capacity methods. Thin-layer chromatography (TLC) was carried out for the comparative metabolite profiling of the extracts using toluene, ethyl acetate, and formic acid (5 : 4 : 1, v/v/v) as a solvent system. In vitro immunomodulatory activity of the extracts has been tested on splenocyte proliferation and pinocytic assay. Hydroethanolic extract (HEE) of most of the plant materials has the highest phenolic and flavonoid contents, followed by water extract (WE) and ethanolic extract (EE), whereas the water extracts of most of the plant material showed better antioxidant activity. Almost all extract exhibited splenocyte proliferation and pinocytic activity in a dose-dependent manner. But water extract showed significantly higher splenocyte proliferation and pinocytic activity as compared to the other two extracts. TLC analysis resulted in detection of totally 63 and 56 metabolites at 254 nm and 366 nm, respectively. Through principal component analysis (PCA), it was observed that metabolite pattern of different extracts from same plant materials may be different or similar. This preliminary result can be used for quality evaluation and to develop a synergy-based polyherbal combination of water extracts of selected plant materials.


Introduction
Herbs and plants not only provide nutritional benefit but also help prevent and manage different diseases. According to World Health Organization, about 80% of the world population trust on conventional remedies for some part of primary health care [1]. e majority of India's population uses herbs for basic healthcare needs. India is found to have diverse and a vast collection of medicinal plants. In India, treatment with herbs becomes an alternative way to cure the patients, and since historical times, this approach is in practice [2].
In India, there are six traditional systems (namely Ayurveda, Yoga & Naturopathy, Unani, Siddha, and Homoeopathy) being followed for preventing and managing disease. ese systems are collectively called as AYUSH. It includes various plants with different ethnopharmacological relevance such as immunostimulant, antibacterial, antiviral, anticancer, and adaptogenic. In AYUSH, more than twenty plant materials have been recommended as immunomodulators and most of them have been separately proved for their immune-enhancing impact on humans [2,3]. Some important plants are Phyllanthus emblica, Piper nigrum, Tinospora cordifolia, Curcuma longa, Withania somnifera, Ocimum sanctum, Achillea millefolium, Azadirachta indica, etc. Because herbal formulation is becoming more popular, accurate scientific data are essential to define the quality of these plant materials. Chromatographic fingerprinting has become a significant quality control method for herbal samples and extracts. A plant material's chromatographic fingerprint is a chromatographic pattern of the extract of some similar active compounds with pharmacologically active and/or chemical properties. e WHO has approved fingerprint analysis as a tool for ensuring the quality of herbal samples and extracts [4]. Constituents inside herbal samples that can be utilized to validate their potency or identification are referred to as marker compounds. e marker compounds are frequently referred to as active components that confirm the starting material's identity. Some traditionally used plant materials have unknown active marker compounds, and others have several marker compounds. Identifying accurate marker compounds for all traditionally used plant materials is tremendously difficult. Even if the quantity of active constituents is not precisely the same for different samples, TLC fingerprints can accurately authenticate and identify the plant materials. As a result, obtaining reliable TLC fingerprints that represent the plant materials' bioactive compounds and chemically distinctive components is essential [5][6][7].
TLC fingerprint of plant extracts is becoming a routine analytical method because of its low operational cost, high sample throughput, and minimum sample cleanup. TLC has various advantages, including running multiple samples simultaneously with a little amount of mobile phase and lowered analysis time and cost per sample [8,9].
Our study has screened eight Indian medicinal plant materials for their quality evaluation and immunomodulatory activity. Fruits of P. emblica and P. nigrum, stem of T. cordifolia, rhizome of C. longa, leaves of O. sanctum and A. millefolium, roots of W. somnifera, and stem bark of A. indica were screened. e metabolite profiling was performed using TLC. In addition to metabolite profiling, a new statistical method was employed to build scientific correlations between the metabolites of extracts and plant materials. ese plant materials have been used in several traditional formulations for various types of diseases.

Collection of Plant
Material. Fruits of P. emblica and P. nigrum, leaves of O. sanctum and A. millefolium, stem of T. cordifolia, roots of W. somnifera, rhizomes of C. longa, and stem bark of A. indica were purchased from Universal Biotech (Delhi, India). ese purchased plant materials were further authenticated through phytochemical and physiochemical evaluation as per protocol mentioned in Indian Pharmacopoeia [10], Ayurvedic Pharmacopoeia of India [11]. A voucher specimen of each plant material has been deposited in our laboratory depository for future reference. Samples were coarsely powdered, covered with aluminum foil (to avoid further exposure of light and moisture), and stored until experimental use.

Extract Preparation.
e course powder of each plant materials was divided into three equal parts. Each part was macerated for 24 h using water, ethanol, and 50% ethanol (hydroethanol) separately. After maceration, ethanolic extract (EE) and hydroethanolic extract (HEE) was further refluxed for 3 h but not for water extract (WE). All these three extracts were filtered, and the filtrate was evaporated to dryness under reduced pressure. e percentage yields of different extracts were calculated, and dried extracts were stored at 4°C for further analysis.

Estimation of Total Phenolic and Flavonoid Contents.
Total phenolic content (TPC) and total flavonoid content (TFC) in the extract were determined as previously reported protocol [12]. For TPC determination, 500 μL of the extract (5 mg/mL) was mixed thoroughly with 2.5 mL of Folin-Ciocalteu reagent and 2.5 mL of sodium carbonate (75 g/L) followed by incubation in the dark for 30 min. After incubation, optical density was recorded at 760 nm against a blank. TPC was expressed as milligram of gallic acid equivalent per gram dry weight of the extract.
For the determination of TFC, 500 μL of the extract (5 mg/mL) was added in 0.1 mL of aluminum chloride (10% w/v) and 0.1 mL potassium acetate (0.1 mM). e resulting mixture solution made up to 10 mL with distilled water, the mixture was kept at room temperature for 30 min, and absorbance was recorded at 415 nm. TFC was expressed as milligram of quercetin equivalent per gram dry weight of the extract.

Antioxidant Activity of the Extracts.
e antioxidant activity of each extract was expressed as DPPH scavenging potential (DPPH) and ferric reducing capacity. For the DPPH scavenging assay, 1 mL of freshly prepared DPPH solution (0.3 mM in methanol) was mixed with 1 mL of extract (10-500 μg/mL) and tubes were allowed to stand for 25 min. e reaction control was prepared as above without having any extract. After incubation, the absorbance was measured at 515 nm. e half-maximal inhibitory concentration (IC 50 ) was used to measure radical scavenging activity. e ability of the sample to scavenge the DPPH radicals was calculated using the following formula: (1) e absorbance of the DPPH solution without extract is A control , and the absorbance of the sample with the DPPH solution is A sample .
To determine the ferric reducing capacity, the extract of varying concentrations (10-500 μg/mL) was taken in 2.5 mL of phosphate buffer (pH 6.6) in a test tube, and 2.5 mL of potassium ferricyanide solution (1% w/v) was added. e mixture was then incubated in a water bath at 50°C for 30 min. After the incubation, 2.5 mL of trichloroacetic acid (10% w/v) was added and centrifuged. e supernatant (2.5 mL) was diluted with an equal amount of distilled water, and freshly prepared 0.5 mL ferric chloride (0.1% w/v) was added.
en, the mixture was mixed thoroughly, and its absorbance was measured at 700 nm.

Comparative Metabolite Profiling of the Extracts by TLC.
Ten milligrams of each extract was dissolved in one milliliter of HPLC grade methanol separately to obtain 10 mg/mL working stock solutions. Stock solutions were then filtered, and 5 μL of each extract solution was separately applied on silica gel 60 F254 precoated TLC plates, 20 × 10 cm (Merck, Germany) with the help of Camag Linomat V (Camag, Switzerland) applicator. e sample solution was applied to a 6 mm wide band using Camag Linomat V automated TLC applicator with the nitrogen flow providing a delivery speed of 120 nL/s from the syringe. Applied plates were presaturated with the mobile phase for 30 min in a Camag twin through glass tank and allowed to move the analytes in Camag horizontal developing chamber (20 × 10) at a room temperature (25°C) using solvent system toluene: ethyl acetate: formic acid (5 : 4 : 1, v/v/v). After the solvent run up to 80% of total height, the plate was air-dried. Some phenolic UV compounds showed absorption maxima at long-wave UV [13]. To get the optimum intensity of each compound, developed TLC plates were scanned at both 254 nm (shortwave UV) and 366 nm (long-wave UV) by a Camag TLC scanner III using the WinCATS software.

Metabolite Comparison of TLC Detected Compounds.
Compounds detected through TLC of each extract were further processed for metabolite comparison. e presence (area of detected compound in TLC plate) or absence (Value 0) of the compound in different extracts was used to normalize the data. For multivariate data analysis and principal component analysis (PCA), the normalized data were further processed through XLSTAT 2014.5.03. e extended statistics (XS) module of the XLSTAT program was used for orthogonal projections to latent structures discriminant analysis (OPLS-DA) of metabolic data collected from the TLC dataset. To select major constituents, OPLS-DA with Pareto scaling was used to find metabolite variations that are responsible for separation among the different extracts. e heatmap was implemented using the MetaboAnalyst program for unsupervised clustering based on the major metabolites collected with OPLS-DA. We separated the different extracts for eight different plant materials using a MetaboAnalyst data annotation methodology. e network intersection was determined to conduct a comparative study based on constituent patterns in different extracts of eight different plant materials. e Ward distance algorithm was used to calculate the distance between the different generated clusters for hierarchical cluster study (HCA) analysis [12,14].

Quantitative Analysis of Polyphenolic Compounds from
Water Extracts. Gallic acid, quercetin, and ferulic acid were selected as common polyphenolic marker compounds for all plant materials. ese markers were quantified using highperformance thin-layer chromatography. Twenty milligrams of each extract were dissolved separately in HPLC grade methanol to get 20 mg/mL solutions. e stock solutions of standard gallic acid, quercetin, and ferulic acid (Sigma-Aldrich) were prepared in HPLC grade methanol to get a concentration of 1000 μg/mL. Mix all the stock solution, and get a concentration of 333.33 μg/mL. e prepared samples were filtered using a 0.2 μm PTFE membrane filter before analysis.
e prepared extracts and standards were separately applied on silica gel 60 F254 precoated TLC plates, 20 × 10 cm (Merck, Germany) with the help of Camag Linomat (Camag, Switzerland) applicator with nitrogen flow providing a delivery speed of 120 nL/s from the syringe. Toluene: ethyl acetate: formic acid (5 : 4 : 1; v/v/v) were used as developing solvents for gallic acid, quercetin, and ferulic acid. Plates were developed horizontally in a Camag twin trough glass chamber (20 × 10 cm), presaturated with the mobile phase for 30 min. e developed plates were air-dried and scanned at 254 nm by Camag TLC densitometric scanner III operated by WinCATS software.
Piperine, berberine, withaferin A, and curcumin were selected as specific marker compounds for fruits of P. nigrum, stem of T. cordifolia, roots of W. somnifera, and rhizome of Curcuma longa, respectively. Ten milligrams of the each water extract was dissolved separately in HPLC grade methanol to get 10 mg/mL solutions. e stock solutions of standard piperine, berberine, withaferin A, and curcumin (Sigma-Aldrich) were prepared in HPLC grade methanol to get a concentration of 500 μg/mL. e prepared samples were filtered using a 0.2 μm PTFE membrane filter before analysis. e extracts and standards were separately applied on silica gel 60 F254 precoated TLC plates, 10 × 10 cm (Merck, Germany) with the help of Camag Linomat (Camag, Switzerland) applicator with nitrogen flow providing a delivery speed of 120 nL/s from the syringe. Toluene: ethyl acetate: formic acid (5 : 4:1; v/v/v) were used as developing solvents for piperine, withaferin A, and curcumin, while n-butanol: water: acetic acid (4 : 5:1; v/v/v) were used for berberine. Plates were developed horizontally in a Camag twin trough glass chamber, presaturated with the mobile phase for 30 min. e developed plates were air-dried Evidence-Based Complementary and Alternative Medicine and scanned by Camag TLC densitometric scanner III operated by WinCATS software. Piperine was scanned at 254 nm, while berberine was scanned at 366 nm. In comparison, curcumin was scanned at 420 nm. e air-dried plate was derivatized in a 5% anisaldehyde sulfuric acid solution and scanned at 540 nm for quantitative analysis of withaferin A.
2.9. In vitro Immunomodulatory Activity. In vitro immunomodulatory activity of each extract was determined through splenocyte proliferation and pinocytic activity assay. Spleen cell and pinocytes were collected from adult BALB/c mice (6 weeks old, 25 ± 5 g). Mice were obtained from Central Animal House Facility of Jamia Hamdard (Registration No 173/GO/RE/S/2000/CPCSEA). Before initiation of the experiment, all experimental protocols were approved by the Institutional Animal Ethics Committee, and experiments were strictly performed according to the guidelines of the CPCSEA, New Delhi, India (Animal Approval Number 1551).

Spleen Cell Proliferation Assay.
Mice were placed into a chamber filled with the vapor of the isoflurane (anesthetic), and after 2 minutes, respiration of mice was ceased. e spleen of mice was removed, cut into small pieces, and homogenized with phosphate buffer solution (PBS) to obtain a suspension of spleen cells. It was then centrifuged, and cells were separated. Four milliliters of Tris-HCl-NH 4 Cl (pH 7.2) was added to 500 μL of red spleen cells. e cell suspension was diluted fivefold with RPMI medium (RPMI-1640, Millipore Sigma, India) and centrifuged, and the cell pellet was resuspended in RPMI medium to get four million cells/ mL. An aliquot of 100 μL of cell suspension and 25 μL of mitogen Con A was added to a 96-well plate. Each extract of 25 μL was added to the above cells in the presence of Con A and incubated at 37°C in a CO 2 incubator for 72 h. After incubation, 20 μL of tetrazolium dye MTT 3-(4, 5-dimethylthiazol-2-yl)-2, 5-diphenyltetrazolium bromide was added to each plate and incubated for another 6 h. In a microplate reader, the optical density was measured at 490 nm [15]. e extract was treated only by RPMI medium for the negative control and results were expressed compared to the negative control.

Pinocytic Activity Assay.
ioglycolate (3 mL of 1 mg/ mL in PBS) was injected intraperitoneally into mice three days before sterile peritoneal lavage.
rough peritoneal lavage with 10 mL of PBS, peritoneal macrophages were collected. e isolated cells were seeded and cultured in an RPMI medium containing 10% FBS. e collected cells (200 μL) were transferred into 96-well plates and incubated for 4 h to adhere to the wall of the plate. e pinocytic activity was measured by neutral red uptake. Each extract of 25 μL was added and incubated for 48 h. After incubation, 100 μL of neutral red solution (0.1% in 10 mM PBS) was added and incubated for another 2 h. Discard supernatant with PBS to remove neutral red. en, 100 μL of neutral red detainer (ethanol and acetic acid (0.1% in water) in a ratio of 1 : 1, v/v) was added. e optical density was measured at 540 nm [15]. For negative control, RPMI medium was used in place of an extract, and results were expressed compared to the negative control.

Results
e authenticated plant material was extracted in three different solvents (water, ethanol, and hydroethanol) by overnight maceration and followed by reflux. e percentage yield of all extracts was calculated and is shown in Table 1.

Phenolic and Flavonoid Contents of the Extracts.
Phenolic compounds are the secondary metabolites that plants might produce in response to foreign materials. ese metabolites can neutralize the free radicals by their multifunctional properties by hydrogen donating, reducing, and singlet oxygen quenching properties. In our study, TPC in hydroethanolic extract (HEE) was highest, followed by water (WE) and ethanolic extract (EE  Table 2. e flavonoids are a large group of naturally occurring phenylchromones found in different parts of plant materials. TFC was found highest in HEE, similar to TPC. Among all three extracts of plant materials, the highest flavonoid content was found in P. emblica (20.15 ± 1.22%) followed by W. somnifera (19.58 ± 1.58%), O. sanctum (18.08 ± 2.62%), A. indica (17.64 ± 1.15%), T. cordifolia (14.85 ± 1.88%), C. longa (13.77 ± 1.30%), P. nigrum (11.56 ± 1.49%), and A. millefolium (10.24 ± 0.81%). e percentage of TFC of all other extracts of different plant materials is shown in Table 2.

Antioxidant Potential of the Extracts.
e antioxidant potential of the extracts of plant materials is shown in Table 3. In the DPPH method, the degree of discoloration indicates the scavenging activity of an antioxidant compound.
e best DPPH radical scavenging potential was found in water extracts of all plant material except the A. millefolium. e IC 50 of DPPH free radical scavenging ability of all plant material is shown in Table 3, and data were compared with the antioxidant activity of ascorbic acid. e IC 50 of a compound is inversely proportional to its antioxidant activity. e best DPPH radical scavenging potential was found for water extract of W. somnifera (IC 50 Table 3. In W. somnifera and P. emblica, all three extracts showed potent free radical scavenging activity.
Reducing power of the extract from ferricyanide into ferrocyanide was conducted on all the plant extracts to confirm its antioxidant potential. e reducing power of the different extracts of plant material is shown in Table 3. e highest reducing power potential was found similar in the WE of W. somnifera and P. emblica at 100 μg/mL, equivalent to 80 μg/mL of ascorbic acid. Reducing power studies suggested that almost the WE of all plant material possessed good reducing power compared to all the other extracts of plant material. e reducing power potential of plant material was linearly proportionate to the radical scavenging activity of DPPH.

Comparative Metabolite Profiling of the Extracts.
in-layer chromatography was used to separate the metabolites of various extracts of eight different plant materials.   , and 09 metabolites were detected under 366 nm for the above-said extract, respectively. TLC fingerprint analysis of WE, EE, and HEE of C. longa showed 08, 06, and 08 prominent spots at 254 nm, respectively, while under 366 nm 05, 04, and 05 prominent spots were detected for the above-said extract, respectively. e TLC fingerprint analysis of O. sanctum extracts separated 11, 12, and 13 metabolites in WE, EE, and HEE, respectively. While scanning at 366 nm, ten metabolites were recorded for each extract of O. sanctum. e TLC fingerprint of A. millefolium extracts showed the presence of 03, 08, and 08 metabolites for WE, EE, and HEE, respectively, at 254 nm. At the same time, A. millefolium at 366 nm showed 02, 09, and 08 metabolites in WE, EE, and HEE, respectively. e plates scanned at 254 and 366 nm with respective areas at different R f values and chromatogram of each extract are summarized in supportive information (Table S1 and Figures S1-S3).

Statistical Correlation to Determine the Metabolite Profiling of ese Extracts.
PCA was applied to identify metabolites of all three extracts of eight different Indian medicinal plants.
e multidimensional dataset was reduced, and 119 (63 and 56) variables were categorized into two principal components (PCs), i.e., PC1 on the X-axis and PC2 on the Y-axis. e variables of the analyzed data were centered and transferred into unit variance. Using these two PCs, a total of 28.57% of the variance was enlightened, in which 16.24% was the first principal component (Dim.1/PC1) and 12.32% was the second principal component (Dim.2/PC2). Metabolites of HEE of A. indica are considered as a control closely clustered with another sample in the PCA score plot (Figure 3(a)).  Table S2). e eigenvalues, percentage variance, and percentage cumulative details are in supportive information (Table S3). We can determine the major abundant metabolites that generated significant variations between the samples using metabolomic analysis. As a result, the metabolomic approach may be beneficial for standardizing plant materials based on metabolite patterns in various samples [16]. e discovery of pharmacological compounds from natural sources can benefit from the metabolomic analysis [12]. Similar metabolite patterns were found in P. A heatmap was constructed based on the metabolites present in the sample using the MetaboAnalyst tool, which is used for unsupervised clustering. Metabolites were extracted using OPLS-DA. PCA was used to assess the general interrelationship between all samples of eight different plant materials in general. We provided a novel approach to analyzing the analytical data of major abundant metabolites. Heatmaps, on the other hand, are commonly employed for unsupervised clustering. Based on the abundance of their specific metabolites, the heatmaps revealed a significant separation among the samples. As a result, this approach might be utilized to identify metabolites that differentiate between eight different plant materials. e higher the abundance, the red the color, and the lesser the abundance, the green the color. e intensity of the color was proportional to the amount of metabolites present (Figure 3(b)).

Splenocyte Proliferation Assay.
e immunomodulatory effect of the plant materials was investigated on isolated spleen cells. ree different concentrations of all plant extract were tested for splenocyte proliferation assay. e results in Figure 4 showed that P. emblica stimulates spleen cell proliferation in a dose-dependent manner in all three extracts. WE of P. emblica showed significantly higher proliferation, up to 97%, as compared to EE and HEE. A similar result showed all three doses of HEE of P. nigrum exhibited higher proliferation than other extracts. At 200 μg/mL of HEE of P. nigrum showed a maximum of 65% spleen cell proliferation. WE of T. cordifolia stimulates the splenocyte proliferation, and a maximum of 71% growth was observed at 40 μg/mL; after the increment of dose 200 μg/mL, the results showed no significant increase in the splenocyte proliferation. WE of W. somnifera showed a maximum of 65% splenocyte proliferation at 40 μg/mL, and it was significantly higher than other extracts. WE and EE of C. longa showed splenocyte proliferation in a dose-dependent manner, but HEE stimulates maximum growth at 200 μg/mL. WE of A. indica also stimulates splenocyte proliferation in a dose-dependent manner, and maximum growth was observed at 200 μg/mL. All three extracts of O. sanctum and A. millefolium stimulate splenocyte proliferation, but they did not in a dosedependent manner. IMMU-21 is an Ayurvedic polyherbal formulation containing extracts of P. emblica, O. sanctum, W. somnifera, and T. cordifolia reported to have splenocyte proliferation activity [17]. e effect of different extracts of plant material on splenocyte proliferation has been shown in Figure 4.

Pinocytic Activity Assay.
To demonstrate the immunomodulatory effects of these plant materials, we used neutral red which is readily uptaken by macrophages. e enhancement of pinocytic activity was expressed as an increment in neutral red concentration in cells treated with external stimuli compared to untreated cells. e results in Figure 5 showed that the extracts' enhancement of the activity was examined at different concentrations (4 μg/mL, 40 μg/mL, and 200 μg/mL). WE of T. cordifolia exhibited a dose-dependent pinocytic activity, and a maximum of 77% activity was observed at the highest test dose, 200 μg/mL. At the same time, its EE and HEE showed almost steady pinocytic activity, but it was less than the activity exhibited in water extract. Literature also supports the dose-dependent pinocytic activity of the water extract of T. cordifolia [18]. WE of P. emblica showed a maximum of 91% pinocytic activity at 4 μg/mL, and the activity was decreased upon concentration increment. Similarly, WE of P. nigrum showed maximum pinocytic activity at 4 μg/mL, and the activity decreased upon the dose increment in all three extracts. WE and HEE of C. longa showed almost steady pinocytic activity of all three doses. W. somnifera did not show any significant differences among the three different extracts. All three extracts of A. millefolium showed a significant reduction in pinocytic activity upon dose increment. WE of O. sanctum at 40 μg/mL showed the highest pinocytic activity, but after the dose increment, the activity was decreased.

Discussion
Traditional medicinal plants have a long history and are still used as primary healthcare options, particularly among indigenous peoples. Traditional medicinal plants are becoming increasingly popular as medical alternatives in developed and developing countries to treat various disorders, including immune disease [19].
Several medicinal plants have been used for immunological problems in Ayurveda and Unani, either individually or in polyherbal formulations [2,3]. e fruits of P. emblica and P. nigrum, stem of T. cordifolia, rhizome of C. longa, leaves of O. sanctum and A. millefolium, roots of W. somnifera, and stem bark of A. indica were screened for the studies based on the literature. ese plant materials were extracted in three different solvents (water, ethanol, and hydroethanol). We obtained a higher yield of WE as compared to others in the conventional extraction process. However, the HEE extractive values of some plants were higher than WE and EE extractive values.
Phenolic and flavonoids are well-known antioxidants that have long been attention due to their health-promoting, disease-curing, and disease prevention properties. Many phenolic and flavonoid compounds have been reported to have antioxidants and immune-boosting properties [20]. e antioxidant capacity of all three extracts of each plant material was expressed as equivalent of ascorbic acid. Table 3 shows the DPPH radical scavenging potential and reducing power capacity of the plant extracts. Most of the WE of plant materials shows strong antioxidant potential due to the contents of the secondary metabolites. e extraction of phenolics from plant material with strong antioxidant activity is affected by a number of factors. Among them, extraction method and choice of solvent are the most significant. A mixture of water organic solvents is the most suitable for extraction of TPC from plant material [21]. Hydroxyl group present in the flavonoids mediate their antioxidant activity by scavenging free radicals and by 8 Evidence-Based Complementary and Alternative Medicine chelating metal ions. Flavonoids contain a wide range of chemical and biological activities including antioxidant and free radical scavenging properties. Flavonoids have increased interest as they show beneficial health properties due to their potential antioxidant, anti-inflammatory, and anticancer activities.
One of the major problems for herbal-based products is their quality control analysis. TLC profiling is commonly used to obtain metabolite patterns from any extract of the plant materials. If any plant materials or their extract has the same TLC pattern, it must have the same biological activity. e developed method was reproducible, and their separated metabolite pattern is shown in Figures 1 and 2 at 254 and 366 nm, respectively. e TLC profiling of the plant materials can be used for quality control and regulatory bodies to ensure the product quality and safety [22].
In PCA, two principal components might explain a total of 28.57% of the variance. ere was a significant variance in the precise clustering of metabolites detected in extracts of plant materials at varying R f value. e PCA score plot shows that some extract contained comparable types of metabolites. e 119 (63 and 56 metabolites) variables in the multidimensional datasets were transformed into two principal components, which were designated as x-axis (PCI) and y-axis (PC2) in the study. e variables were centered and scaled to unit variance in the data that was studied. e first principal component (PC1) accounted for 16.24% of the variation in the data, whereas the second principal component (PC2) accounted for 12.32%. PCA score plot also suggests the correlation of the extracts does not depend on their type of the extract. e heatmap, which is often used for unsupervised clustering, was generated using OPLS-DA analysis to identify possible candidates of importance. e difference between extracts of plant materials was separated significantly using heatmap analysis [12]. With the metabolomics platform, we were able to develop a heatmap visualization that could be used in computational systems approach to determine the similarity and dissimilarity of metabolites in the samples. Only metabolites with a higher proportion of contribution  Immunopharmacology is a comparatively new and emerging division of pharmacology that goals to discover new immunomodulators. Plant and its extracts are extensively explored in different parts of the world for their promising immunomodulatory properties. e immunomodulatory effect of the plant materials was investigated on spleen cells and peritoneal macrophages, isolated from mice. e results prove that P. emblica stimulates spleen cell proliferation in a dose-dependent manner in all three extracts but WE showed significantly higher cell proliferation up to 97% as compared to other extract. P. emblica is an essential medicinal plant in AYUSH system of medicine specially in Ayurveda and Unani and is also used as a dietary supplement. It possesses various properties such as anticancer and immune deficiency [23]. P. emblica has significant immunostimulatory effects on cellular immune response [24]. e result of WE of P. emblica, T. cordifolia, W. somnifera, and A. indica showed highest proliferation. e root extract of W. somnifera significantly enhances splenocyte proliferation [25]. is result suggests that the metabolites present in WE may stimulate T lymphocyte proliferation, supposedly inhibiting the cellular immune response [26]. ough HEE of P. nigrum stimulates spleen cell proliferation in a dose-dependent manner, the literature also supports its spleen cell proliferation [27]. O. sanctum and A. millefolium extracts also stimulate spleen cell proliferation; these results supported the previous finding [28]. e immunomodulator effect of the plant extract also investigated on thioglycolate-elicited peritoneal macrophages from mice. Because of their high adhesion capacity, peritoneal macrophages can be enhanced from peritoneal lavage fluid. As a result, the macrophage population is significantly isolated from the other cells in the peritoneal cavity (B cells, dendritic cells, neutrophils, T cells, NK cells, etc.) [29]. Only WE of T. cordifolia exhibited a dose-dependent pinocytic activity and modulated the immune system; its water extract is superior to alcoholic extract [30]; however WE of P. emblica and P. nigrum showed maximum pinocytic activity at lowest dose. P. nigrum showed immunomodulatory potential through macrophage proliferation as well as splenocyte proliferation [31]. W. somnifera did not show any significant differences among three different extracts. It stimulates the phagocytosis of macrophages, as seen from the increased pigmented macrophages [32]. WE and HEE of C. longa showed the dose-dependent pinocytic activity but did not show any significant difference.

Conclusion
In this study, some important plant materials used in AYUSH were explored for their antioxidant and immunomodulatory activity. Selected plant materials were characterized through their metabolic content, quantification of some specific and common markers. In spite of having low phenolic and flavonoid contents in water extract as compared to other extract, it showed better immunomodulatory and antioxidant activity.
rough PCA, it also revealed different extracts of one plant materials having either similar metabolite pattern or different metabolite patterns. From the above study, the traditional use of water extract in AYUSH system may be justifiable. Further, use of water extract in Indian population since long may warrant for its safety, whereas other extracts may need toxicity profiling before they explore in human subjects.
is study provides a confidential support to the AYUSH system of medicine in which water extract is recommended as major in their formulations. e developed TLC method can be used for quality control analysis of plant materials having similar metabolic profile.

Data Availability
e data used to support the findings of this study are available from the corresponding author upon request.

Conflicts of Interest
e authors declare that there are no conflicts of interest associated with this publication.