Subscriber access provided by READING UNIV
Article
High-throughput and Rapid Screening of Novel ACE Inhibitory Peptides from Sericin Source and Inhibition Mechanism by Using in Silico and in Vitro Prescriptions Huaju Sun, Qing Chang, Long Liu, Kungang Chai, Guangyan Lin, Qingling Huo, Zhenxia Zhao, and Zhongxing Zhao J. Agric. Food Chem., Just Accepted Manuscript • DOI: 10.1021/acs.jafc.7b04043 • Publication Date (Web): 31 Oct 2017 Downloaded from http://pubs.acs.org on November 1, 2017
Just Accepted “Just Accepted” manuscripts have been peer-reviewed and accepted for publication. They are posted online prior to technical editing, formatting for publication and author proofing. The American Chemical Society provides “Just Accepted” as a free service to the research community to expedite the dissemination of scientific material as soon as possible after acceptance. “Just Accepted” manuscripts appear in full in PDF format accompanied by an HTML abstract. “Just Accepted” manuscripts have been fully peer reviewed, but should not be considered the official version of record. They are accessible to all readers and citable by the Digital Object Identifier (DOI®). “Just Accepted” is an optional service offered to authors. Therefore, the “Just Accepted” Web site may not include all articles that will be published in the journal. After a manuscript is technically edited and formatted, it will be removed from the “Just Accepted” Web site and published as an ASAP article. Note that technical editing may introduce minor changes to the manuscript text and/or graphics which could affect content, and all legal disclaimers and ethical guidelines that apply to the journal pertain. ACS cannot be held responsible for errors or consequences arising from the use of information contained in these “Just Accepted” manuscripts.
Journal of Agricultural and Food Chemistry is published by the American Chemical Society. 1155 Sixteenth Street N.W., Washington, DC 20036 Published by American Chemical Society. Copyright © American Chemical Society. However, no copyright claim is made to original U.S. Government works, or works produced by employees of any Commonwealth realm Crown government in the course of their duties.
Page 1 of 37
Journal of Agricultural and Food Chemistry
High-throughput and Rapid Screening of Novel ACE Inhibitory Peptides from Sericin Source and Inhibition Mechanism by Using in Silico and in Vitro Prescriptions Huaju Sun, Qing Chang, Long Liu, Kungang Chai, Guangyan Lin, Qingling Huo, *
Zhenxia Zhao, Zhongxing Zhao
Guangxi Colleges and Universities Key Laboratory of New Technology and Application in Resource Chemical Engineering, School of Chemistry and Chemical Engineering, Guangxi University, Nanning 530004, China
*
Corresponding Authors Phone: +86-771-3233718; Fax:
[email protected] (Zhongxing Zhao)
+86-771-3233718;
1
ACS Paragon Plus Environment
E-mail:
Journal of Agricultural and Food Chemistry
1
ABSTRACT: Several novel peptides with high ACE-I inhibitory activity were
2
successfully screened from sericin hydrolysate (SH) by coupling in silico and in vitro
3
approaches for the first time. Most screening processes for ACE-I inhibitory peptides
4
were achieved through high-throughput in silico simulation followed by in vitro
5
verification. QSAR models based predicted results indicated that the ACE-I inhibitory
6
activity of these SH peptides, and six chosen peptides exhibited moderate high ACE-I
7
inhibitory activities (LogIC50 values: 1.63 to 2.34). Moreover, two tripeptides among
8
the chosen six peptides were selected for ACE-I inhibition mechanism analysis which
9
based on Lineweaver-Burk plots indicated to behave as competitive ACE-I inhibitor.
10
The C-terminal residues of short-chain peptides that contain more H-bond acceptor
11
groups could easily form hydrogen bonds with ACE-I and have higher ACE-I
12
inhibitory activity. Overall, sericin protein as a strong ACE-I inhibition source could
13
be deemed a promising agent for antihypertension applications.
14
KEYWORDS: sericin hydrolysis, in silico prediction, LC-MS, ACE-I inhibitory
15
peptides, molecular docking, inhibitory mechanism
16
2
ACS Paragon Plus Environment
Page 2 of 37
Page 3 of 37
Journal of Agricultural and Food Chemistry
17
■ INTRODUCTION
18
Hypertension is a major risk factor for developing cardiovascular diseases, and has
19
become a serious threat to human health and quality of life recently. According to
20
incomplete statistic from the World Health Organization (WHO), this chronic disease
21
will increase up to 29 % of the world’s adult population till 2025.1 It has been
22
reported that angiotensin-I-converting enzyme (ACE-I, EC 3.4.23.15) plays a key role
23
in blood pressure control in renin-angiotensin-aldosterone system, which alternatively
24
can monitor and attenuate hypertension.2 Recently, search for new ACE-I inhibitor
25
peptides with high bioactivity from natural sources has attracted greater attention for
26
hypertension treatment attributed to their minimal side-effects.3
27
Up till now, more than 700 types of ACE-I inhibitory peptides have been reported
28
in BIOPEP database (http://www.uwm.edu.pl/biochemia/index.php/en/biopep). Most
29
potent peptides were directly screened from enzymatic hydrolysates of traditionally
30
edible proteins, such as milk proteins,4,5 marine organisms,6-11 meat,12,13 and plant
31
proteins.14,15 However, purification process like gel chromatography, ion exchange
32
chromatography and reverse phase high-performance liquid chromatography are
33
hindered by complicated and time-consuming nature. Furthermore, the low
34
purification efficiency and high cost of these approaches have seriously restricted
35
their applications in industrial development. Moreover, screening for ACE-I
36
inhibitory peptides is usually estimated from in vitro ACE-I inhibitory activity of
37
hydrolysates, where the fraction with highest activity is chosen for further separation.
38
However, among other problem associated with conventional extraction strategies,
39
there exist a chance of missing some peptides with high activity.16 Thus, high
40
throughput and rapid screening of novel peptides with high ACE-I inhibitory activity 3
ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Page 4 of 37
41
from natural sources has become a center of rich research area among scientific
42
community dealing in separation and purification of peptides.
43
With the development of sequencing technology and biomolecular simulation, an
44
increasing number of researches are booming for predicting activity of peptides
45
binding with ACE-I by using computer simulation. Compared to traditional methods,
46
in silico analysis is considered as a high-throughput and rapid technique to
47
preliminarily select bioactive peptides from known protein sequences. Based on some
48
typical enzymes with known cleavage specificities, in silico approach has been used
49
to predict bioactive peptides from natural proteins sources, such as prolyl
50
endopeptidase inhibitory peptides,17 peptidase-IV inhibitory peptides and ACE-I
51
inhibitory peptides from edible sources including meat by-products and milk
52
proteins.18,19. However, not many reports are available about screening of novel and
53
highly-active peptides from natural source with the assistance of in silico method.
54
Sericin, as a major component of silkworm cocoon, has been reported to have great
55
potential
for
many
biomedical
and
biological
56
antibiotic-antibacterial activity,20 antioxidant behavior,21 anti-tyrosinase activity22 and
57
anti-carcinogenic effects.23 To the best of our knowledge, its potential activity for
58
ACE-I inhibitory property has not been reported so far. Thus, in this work, several
59
novel peptides were successfully screened from sericin hydrolysate (SH) for ACE-I
60
inhibition by coupling in silico and in vitro approaches. In silico was used to screen
61
hydrolysate enzyme (PeptideCutter) for sericin protein, predict ACE-I inhibitory
62
activity in terms of Quantitative structure activity relationship (QSAR), analyze
63
toxicity and anti-digestion activity (ToxinPred and PeptideCutter) of the obtained
64
peptides from virtual SH source using liquid chromatography – mass spectrometry
65
(LC-MS) technique. The selected peptides with theoretically high ACE-I inhibitory 4
ACS Paragon Plus Environment
applications,
such
as
Page 5 of 37
Journal of Agricultural and Food Chemistry
66
activity were synthesized and verified in vitro studies. Moreover, ACE-I inhibition
67
pattern and ACE-I inhibition mechanism of the selected peptides were also
68
systematically studied from classic Lineweaver-Burk model and molecular docking
69
simulation.
70 71
■ MATERIALS AND METHODS
72
Materials. The silkworm cocoon waste was provided by Maoyuan silk cocoon Co.,
73
Ltd. (Yizhou, China). Trypsin (EC 3.4.21.4, 250 U/mg) was purchased from Biodee
74
Biotechnology Co. Ltd. (Beijing, China), while proteinase K (EC 3.4.21.64, 40 U/mg)
75
and pepsin (pH>2) (EC 3.4.23.1, 2500 U/mg) were purchased from Solarbio Science
76
& Technology Co., Ltd. (Beijing, China). The hippuryl-L-histidyl-L-leucine (HHL)
77
and ACE-I (from rabbit lung) was supplied by Sigma-Aldrich Chemical Co. (St. Louis,
78
MO, USA). The identified peptides were synthesized (98% purity) by GL. Biochem.
79
Co., Ltd. Methanol for HPLC analysis was supplied by Thermo Fisher Scientific Co.,
80
Ltd. (USA). All other chemicals and reagents used were of analytical grade without
81
further treatment.
82
Selection of proteases for hydrolysis using PeptideCutter analysis. Sericin was 24,25
83
mainly composed of three proteins (Ser1, Ser2 and Ser3) as reported previously
84
Among which, Ser1 contributed 90% of the total weight of cocoon proteins in the last
85
larval instar. Therefore, we extracted the sequence of Ser1 from protein data
86
UniProtKB (http://www.uniprot.org/) and protein database of the National Center for
87
Biotechnology Information (NCBI) (http://www.ncbi.nlm.nih.gov/protein).15 Then,
88
Ser1 was consequently subjected to in silico hydrolysis using the program of
89
PeptideCutter (http://web.expasy.org/peptide_cutter/) to identify the most appropriate
5
ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
90
proteases for sericin hydrolysis (SH). The top three proteases with the largest cleavage
91
sites were chosen for sericin hydrolysis in vitro.
92
Preparation of sericin hydrolysis in vitro. Sericin was extracted from silkworm
93
cocoon waste autoclaving at 121 °C and 0.2 MPa (mention autoclave environment)
94
for 2 h.26 Its ratio of solid to liquid was adjusted to 1:30 (W/V). After filtration, the
95
extraction solution was lyophilized and stored under 5.0 °C. The extraction ratio of
96
sericin was approximately 260-300 g/kg from silkworm cocoon. The hydrolyzed
97
using the determined three proteases of pepsin (P), trypsin (T), proteinase K (K) and
98
their bienzyme T+K system under hydrolysis conditions as shown in Table 1. In this
99
work, both of single protease and bienzyme were used to hydrolyze sericin, which
100
were named as one-stage and two-stage enzymatic hydrolysis, respectively. Finally,
101
four SHs were obtained by using different protease systems. The ACE-I inhibitory
102
activity of different SHs was tested, and the one with highest ACE-I inhibitory
103
activity was further studied.
104
Measurement of ACE-I inhibitory activity. The assay of ACE-I inhibitory activity
105
in vitro was measured by Cushman’s method 27 with slight modifications. It is mainly
106
based on the liberation of hippuric acid from hippuryl-L-histidyl-L-leucine
107
(Hip-His-Leu) catalyzed by ACE-I. The IC50 value is defined as the concentration of
108
peptides (µM) required to inhibit 50% of ACE-I activity.28 Each assay was performed
109
in triplicate of independent determinations. The IC50 value of each SH was used to
110
screen protease and resource of ACE-I inhibitory peptide (hydrolysate).
111
Construction of QSAR model for rapid screening peptides with high ACE-I
112
inhibitory activity. QSAR models of peptides with ACE-I inhibitory activity were
113
constructed according to the method of Wei Qi 29 with slight modifications. Firstly, a 6
ACS Paragon Plus Environment
Page 6 of 37
Page 7 of 37
Journal of Agricultural and Food Chemistry
114
total of 122 ACE-I inhibitory peptides (from di- to hexa- peptide) with known ACE-I
115
inhibitory activity were retrieved from both the BIOPEP database and published
116
literature.30 These peptides were classified into three data sets (train sets and test sets)
117
according
118
tetra/penta/hexa/peptides. Then, the most active peptide of each data set was chosen
119
as the template, and the rest 119 peptides were aligned on template to form three
120
common structures using Sybyl X-2.1.1 (Tripos Inc., St. Louis, MO, USA).
to
peptide
length,
including
dipeptides,
tripeptides
and
121
Next, CoMFA and CoMSIA descriptor fields (steric, electrostatic, hydrophobic,
122
donor and acceptor) were used to analyze three training sets, and the best QSAR
123
model was identified by the partial least squares (PLS) methodology analysis with the
124
leave-one-out (LOO) cross-validation procedure. The cross-validated coefficient (Q2)
125
and standard deviation of error prediction (R2) were calculated according to Eq. (1)
126
and Eq. (2):31 ∑( − ) =1− ∑( − )
= 1 −
∑( − ) ∑( − )
Eq. (1)
Eq. (2)
127
where Ymean is average activity of the entire data set, while Yobs, Ypred and YCVpred
128
represent the observed, predicted and cross-validated activity values, respectively.
129
LC-MS analysis for Sericin hydrolysate. SH with highest ACE-I inhibitory activity
130
was used for peptide sequence identification by a nanoLC LTQ Orbitrap MS (Thermo
131
Scientific, USA), following the stepwise method as: (1) SH was separated with a
132
Hypersil C18 column (250×4.6 mm, particle size 5 µm); (2) the adsorbed components
133
were eluted with a two solvent system: (A) 0.1% formic acid and 2.0% acetonitrile in
134
water and (B) 0.1% formic acid and 2.0% water in acetonitrile with a gradient from 7
ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Page 8 of 37
135
2.0% solvent B to 15.0% solvent B over 5.0 min, to 35.0% over 20 min, to 98.0%
136
over 5 min, maintained for 10 min at a constant flow rate of 250 nL/min; (3)
137
ionization was performed by nanolockspray ionization source in positive ion mode
138
(capillary voltage 3.80 kV and a source temperature of 280 °C; (4) an MS full-scan
139
was performed for each sample with an acquisition range m/z of 50-800 Da.
140
ACE-I inhibitory activity prediction and validation. The constructed QSAR model
141
was used to predict ACE-I inhibitory activity of identified peptides from SH
142
hydrolysate by the combination of T and K. Nine peptides with various ACE-I
143
inhibitory activities from QSAR prediction were chosen, and their toxicity and
144
digestive
145
ToxinPred(http://www.imtech.res.in/raghava/toxinpred/)32
146
Finally, eight peptides with nontoxicity and anti-digestion activity were synthesized
147
by GL. Biochem. Co., Ltd. (Shanghai, China) using conventional solid-phase
148
chemistry and validated their activities in vitro.
stability
were
subsequently
simulated and
by
PeptideCutter.18
149
Kinetics of ACE-I Inhibition. Among the six selected peptides with the highest
150
ACE-I inhibitory activity, the highest and lowest ACE-I inhibitory active ones (named
151
A and B) were inspected for the inhibition kinetics by Lineweaver-Burk plot.33
152
Briefly, ACE-I inhibition tests were conducted in the presence of different
153
concentrations of HHL and peptides solution. The varying concentration of the
154
enzyme substrate HHL (0.62, 1.10, 1.64 and 1.97 mM) was reacted with ACE-I in the
155
absence and presence of two different concentrations of inhibitory peptide A (108.89
156
µM and 163.34 µM) and peptide B (93.77 µM and 140.65 µM).34,35
157
Molecular docking of the selected peptides with ACE-I. Molecular docking was
158
performed to investigate conformation between ACE-I active sites and inhibitors 8
ACS Paragon Plus Environment
Page 9 of 37
Journal of Agricultural and Food Chemistry
159
using the flexible docking tool of Sybyl X-2.1.1 program package, and the structure
160
was energy minimized using the Powell conjugate gradient optimization algorithm
161
with the Tripos force field.36 The three-dimensional crystal structure of
162
ACE-I-lisinopril complex was obtained from the Protein Data Bank (PDB: 1O86,
163
http://www.rcsb.org/pdb/home/home.do) by only removing the inhibitor lisinopril and
164
water molecule. Then the protein structure was pre-analyzed and prepared for the
165
docking runs using biopolymer structure preparation tool with default settings and the
166
protocol was created automatically. The Surflex-Dock program was used for docking
167
studies. The receptor-ligand interactions of the ligand were evaluated by the software
168
in terms of Total Score and expressed as LogKd, where Kd is binding constant, where
169
high value of Total Score represents good protein-ligand binding and vice versa. The
170
conformations of ranked No. 1 (the highest Total Score) was selected and the
171
interaction model between the ACE-I residues and peptides was shown by PyMOL
172
v1.8.6 (http://www.pymol.org/).
173
Statistical analysis. All assays of ACE-I inhibitory activity were conducted in
174
triplicates. Data were presented as mean ± standard deviation. The statistical analysis
175
was performed using SPSS 10.0 software (SPSS Inc., Chicago, IL, USA). Significant
176
difference in means between the samples was determined at a 5% confidence level (p
177
< 0.05).
178 179
■ RESULTS AND DISCUSSION
180
Amino acid composition of Ser1 and screening enzymes for sericin hydrolysis.
181
Figure S1(A) shows the sequence of Ser1, obtained from protein data UniProtKB and 9
ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
182
protein database of NCBI. Its amino acid (AA) composition was counted using
183
ProtParam (http://web.expasy.org/protparam/), and the results are shown in Figure 1
184
(A). It can be seen that sericin possesses the most abundant AA in Ser1 protein,
185
holding a minimum 32 % of Ser1. Hydrophobic AAs (red columns) account for 30.0%
186
of Ser1 except serine, which could count for high activity of ACE-I inhibitors due to
187
the presence of more hydrophobic AAs in the protein.37
188
Ser1 protein was consequently subjected to in silico hydrolysis using PeptideCutter
189
to determine the most suitable proteases for in vitro sericin hydrolysis. In this work,
190
about 38 available enzymes and chemicals (Table S1) supplied from this program,
191
were all chosen for theoretic hydrolysis simulation. The top five proteases with largest
192
cleavage sites are shown in Table S2. The order of cleavage site number was:
193
proteinase K > pepsin (pH>2) > trypsin > clostripain > pepsin (pH 1.3). Next,
194
proteases of proteinase K (K), trypsin (T), and pepsin (pH>2) (P) were chosen for
195
sericin hydrolysis in experiment due to its possessing most cleavage sites which
196
possibly release most ACE-I inhibitory peptides from protein.38
197
After being hydrolyzed with different proteases in vitro, four hydrolysates were
198
prepared and their ACE-I inhibitory activities were tested. Figure 1B shows their
199
LogIC50 values corresponding to different hydrolysis conditions with single protease
200
and biprotease. In one-stage hydrolysis with single protease, hydrolysates show the
201
ACE-I inhibitory activity in the following order of preference: K > T > P. In the next
202
experiment, proteinase K and trypsin (K+T) were used to hydrolyze sericin in
203
two-stage hydrolysis. As expected, its hydrolysate shows the highest ACE-I inhibition
204
activity. About, 137 peptides in its hydrolysate were obtained and their sequence
205
distribution is shown in Figure S1(B). Consistent with that observed by simulation 10
ACS Paragon Plus Environment
Page 10 of 37
Page 11 of 37
Journal of Agricultural and Food Chemistry
206
(Table S2), more cleavage sites may have contributed towards the higher ACE-I
207
inhibition activity.
208
QSAR model for prediction of peptide ACE-I inhibitory activity. Amino acids at
209
C-terminal end usually contribute significantly to ACE-I inhibitory activity.39,40 The
210
C-terminal residues of 137 peptides from Ser1 hydrolysates (K+T) using in silico
211
were analyzed and shown in Table S3, where most were composed of hydrophobic
212
AA (50-60 % of the total), basic AA and acidic AA. Based on these results, some
213
peptides with known ACE-I inhibitory activity
214
useful peptides as the training and test sets for QSAR model construction were chosen.
215
These 122 peptides possessing the same C-terminal residues, which composed of 38
216
dipeptides, 39 tripeptides and 45 peptides length between 4 and 6, are listed in Table
217
S4. Peptides of 13th (LogIC50=0.21), 57th (LogIC50=0.36) and 96th (LogIC50=0.18)
218
have the highest activity of ACE-I inhibition for each training set. Thus, these three
219
peptides were selected as the template, and the rest of peptides in each training set
220
were aligned onto templates (peptide 13th, 57th and 96th) to form three
221
superimpositions. Based on three common structures, 122 peptides were analyzed by
222
CoMFA and CoMSIA, respectively.
30
were collected, among which 122
223
Subsequently, the stepwise development of CoMFA and CoMSIA models using
224
five descriptor fields i.e. steric, electrostatic, hydrophobic, acceptor and donor fields,
225
41,42
226
tetra/penta/hexapeptides, respectively, while the statistical parameters for the best
227
QSAR CoMFA/CoMSIA models of each data set are shown in Table 2. As seen in
228
QSAR
229
tetra/penta/hexa-peptides were corresponding to CoMSIA, CoMFA and CoMSIA
is
presented
analysis,
in
the
Table
best
S5-S7
for
predictions
dipeptides,
for
11
ACS Paragon Plus Environment
tripeptides,
dipeptides,
and
tripeptides,
Journal of Agricultural and Food Chemistry
230
models, respectively. The optimum model for each data set showed all high statistical
231
significances (Q2 >0.73 and R2 >0.99), indicating a proof of high predictive ability of
232
the constructed model.43
233
Moreover, the contributions of five descriptor fields for each data set are also
234
shown in Table 2. Clearly, the contribution of each field to peptide ACE-I inhibitory
235
activity was different for each data set. Dipeptide set was contributed by the steric,
236
electrostatic and acceptor fields prominently; tripeptide set was completely controlled
237
by steric field; while tetra/penta/hexapeptide set was mainly influenced by
238
electrostatic, hydrophobic and donor fields. The scatter plots of observed against
239
predicted LogIC50 values for the best QSAR model were displayed in Figure
240
2(A-C).44,45 This analysis showed that the obtained data points were uniformly
241
distributed along the regression line with small prediction errors ( 2), trypsin and chymotrypsin,
303
among which, only SSY could be cleaved during simulation of GI digestion. Thus, the
304
remaining eight stable peptides (SSR, SSK, GSR, SGR, NPR, SSSNSV, SSDA and 14
ACS Paragon Plus Environment
Page 14 of 37
Page 15 of 37
Journal of Agricultural and Food Chemistry
305
DE) were further synthesized and validated for their ACE-I inhibitory activities in
306
vitro (Table 4). It can be seen that all the synthesized peptides exhibited similar tested
307
LogIC50 value to predicted one with small prediction errors (