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Computational insights into the different resistance mechanism of imidacloprid versus dinotefuran in Bemisia tabaci Xiaoqing Meng, Chengchun Zhu, Yue Feng, Weihua Li, Xusheng Shao, Zhiping Xu, Jiagao Cheng, and Zhong Li J. Agric. Food Chem., Just Accepted Manuscript • DOI: 10.1021/acs.jafc.5b05181 • Publication Date (Web): 28 Jan 2016 Downloaded from http://pubs.acs.org on January 28, 2016
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Journal of Agricultural and Food Chemistry
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Computational
2
mechanism of imidacloprid versus dinotefuran in Bemisia
3
tabaci
4
Xiaoqing Meng,† Chengchun Zhu,† Yue Feng,† Weihua Li,‡ Xusheng Shao,† Zhiping
5
Xu,† Jiagao Cheng,*,†,‡ and Zhong Li†, §
6
†
7
New Drug Design, School of Pharmacy, East China University of Science and
8
Technology, Shanghai 200237, China
9
§
10
insights
into
the
different
resistance
Shanghai Key Laboratory of Chemical Biology and ‡Shanghai Key Laboratory of
Shanghai Collaborative Innovation Center for Biomanufacturing Technology, 130
Meilong Road, Shanghai 200237, China
11 12
*Corresponding Author:
13
(J. Cheng) E-mail:
[email protected] 14
Tel: +86-21-64251348
15
Fax: +86-21-64252603
16
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ABSTRACT: Insecticide resistance is a critical problem for pest control and
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management. For Bemisia tabaci, striking high metabolic resistance (generally
19
conferred by CYP6CM1) was observed for imidacloprid (IMI) and most of other
20
neonicotinoid members. However, dinotefuran (DIN) displayed very low resistance
21
factors, which indicated distinct metabolic properties. Here, molecular modeling
22
methods were applied to explore the different resistance features of IMI versus DIN
23
within the Q type of CYP6CM1. It was found that Arg225 played crucial roles in the
24
binding of IMI-CYP6CM1vQ with a cation-π interaction and two stable H-bonds,
25
however, such interactions were all absent in DIN-CYP6CM1vQ system. The stable
26
binding of IMI with CYP6CM1vQ would facilitate the following metabolic reaction,
27
while the weak binding of DIN might disable its potential metabolism, which should
28
be an important factor for their distinct resistance levels. The findings might facilitate
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in future design of the anti-resistance neonicotinoid molecules.
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KEYWORDS: neonicotinoids, insecticides resistance, cytochrome P450, molecular
31
dynamics simulation, B. tabaci
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INTRODUCTION
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Neonicotinoid insecticides that target on insect nicotinic acetylcholine receptors
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(nAChRs)1 are by far the most successful insecticides, which sharing more than 25%
36
sales of the global insecticide market,2,3 due to their favourable safety frofile, wide
37
pest spectrum and multiple application methods.4 The first neonicotinoid
38
commercialized was imidacloprid in 1991, followed by seven other members, viz.,
39
nitenpyram, acetamiprid, thiacloprid, thiamethoxam, clothianidin, dinotefuran, and
40
sulfoxaflor.4,5 Neonicotinoids have been successfully used to control not only
41
hemipteran pest species such as aphids, plant- and leafhoppers, bugs and whiteflies,
42
etc, but also coleopteran and some lepidopteran pest species.4 Currently,
43
neonicotinoids have been used in more than 120 countries and areas,2 however, the
44
superiority of neonicotinoids was deeply challenged by the development of
45
resistance.3 Numerous cases of neonicotinoids resistance have been observed in many
46
pest species such as Bemisia tabaci (B. tabaci), Myzus persicae (M. persicae), Aphis
47
gossypii (A. gossypii), Nilaparvata lugens (N. lugens), etc.3 The resistance to
48
neonicotinoids, sometimes, even results in field failures at recommended insecticidal
49
rates, and the increased dosage may even worsens their side-effects, such as high
50
residue, toxicity on bees, etc.6
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Generally, insecticide resistance is related with two distinct types of mechanism,
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the increased detoxification effects,7 or the point mutation of target site.8 The
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neonicotinoid resistance is deeply correlated with the increased detoxification roles
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commonly conferred by cytochrome P450 monooxygenases.7 For example, the
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over-expression of CYP6G1 conferred imidacloprid resistance in Drosophila.9 In
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housefly, a comparative study of P450 gene expression indicated that CYP6G4 is a
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major insecticide resistance gene involved in neonicotinoid resistance.10 In brown
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planthopper, N. lugens, over-expression of CYP6AY1 and CYP6ER1 were found
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contributing to the imidacloprid resistance across Asia.11,12 On the other hand, the first
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evidence of target-site resistance was the Y151S mutation found in N. lugens,13 yet
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such mutation has not been observed in field-caught insect populations. Another
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R81T mutation detected in M. persicae, could draw direct effects on the resistance to
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neonicotinoids,14,15 though the resistance in M. persicae was also correlated with
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CYP6CY3 over-expression.16
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Of all reported neonicotinoid resistance, most cases concerned whitefly B. tabaci,
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one of the most destructive and invasive sucking crop pests worldwide, with two
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major widespread biotypes, B and Q.3 Striking neonicotinoid resistance has been
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widely reported in both biotypes of B. tabaci from several geographic regions
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particularly against imidacloprid. For example, strains collected in Israel showed up to
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1,000-fold resistance to thiamethoxam,17 and Q biotype populations collected in Crete
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displayed 38- to 1,958-fold resistance to imidacloprid.18 Field populations of both B-
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and Q-biotypes of the B. tabaci collected from southeastern China exhibited 28- to
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1,900-fold resistance to imidacloprid and 29- to 1,200-fold resistance to
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thiamethoxam.19 Molecular biology studies identified that the over-expression
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cytochrome P450 monooxygenase, CYP6CM1, was strongly correlated with the high
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levels of imidacloprid resistance in B. tabaci, as well as their cross-resistance
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potential to other neonicotinoid insecticides.20
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For the two B. tabaci biotypes, the Q biotype has become the dominant species in
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China and other areas.21,22 In vitro expression of Q biotype version of CYP6CM1
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protein (CYP6CM1vQ) could rapidly detoxify imidacloprid and most of other
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neonicotinoid molecules.18 For example, CYP6CM1vQ could catalyze the
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hydroxylation of imidacloprid to its less toxic 5-hydroxy form.23 Of all
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commercialized neonicotinoids, however, dinotefuran showed very low resistance
84
level in B. tabaci as compared with imidacloprid and the other neonicotinoid
85
insecticides.20 Dinotefuran has a non-aromatic ring (tetrahydrofuran) structure, which
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is different from other neonicotinoids (with pyridine or thiazole ring).4 The lack of
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appreciable cross-resistance to dinotefuran is presumably a reflection of the substrate
88
specificity of the CYP6CM1vQ enzyme, and dinotefuran might have a distinct
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binding mode or metabolic mechanism within cytochrome P450 monooxygenase.20
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Considering the development of neonicotinoids resistance, there is a need to
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explore the distinct metabolic features within different neonicotinoids, for better
92
understanding their intrinsic resistance mechanism. Computational simulations are
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very important methods and have been successfully used in the action mechanism
94
studies of many pesticides.9,23-27 In the present study, molecular modeling, including
95
the homology modeling, docking, molecular dynamics (MD) simulations, and
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molecular mechanics-Poisson-Boltzmann surface area (MM-PBSA) calculation, were
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integrated to explore the distinct binding modes of CYP6CM1vQ with imidacloprid
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(IMI) and dinotefuran (DIN). It was found that, in IMI-CYP6CM1vQ system, two
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stable N-H···N H-bonds and a strong cation-π interaction were observed between
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Arg225 and IMI, however in DIN-CYP6CM1vQ system, such interactions were all
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absent. The binding of CYP6CM1vQ with IMI was stable, while with DIN was very
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weak, which was in agreement with the distinct resistance factor (RF) values between
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IMI and DIN. The structure and mechanistic insights obtained from the present study
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might facilitate future design of the anti-resistance insecticides.
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MATERIALS AND METHODS
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Homology Modeling. The amino acid sequence of B. tabaci CYP6CM1vQ
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(UniProt ID: B3FQ59) was retrieved from UniProtKB (http://www.uniprot.org/). The
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human P450 enzyme CYP3A4, which accounting for oxidative metabolism of a wide
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variety of xenobiotics,28 displays the highest similarity (32% sequence identity) with
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CYP6CM1vQ among all available structures. Thus, the crystal structures of CYP3A4
111
(PDB entries of 3UA129 at 2.15 Å resolution and 1TQN30 at 2.05 Å resolution) are
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selected as the templates for building the 3D model of CYP6CM1vQ. Considering the
113
templates structures do not contain residues in N-terminal membrane-binding domain,
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the first 32 residues at the N-termini of the CYP6CM1vQ were not included in model
115
construction. The sequence alignment between CYP3A4 and CYP6CM1vQ was
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carried out using the Align Multiple Sequences encoded in the Discovery Studio 3.5
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software package (Accelrys Inc, 2013). The Build Homology Models Module
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encoded in the Discovery Studio 3.5 software package (Accelrys Inc., 2013) was
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applied to generate the CYP6CM1vQ structure. The PROCHECK31 and Profile-3D32
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approaches were utilized for geometric evaluation. After above validation, a model
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was finally chosen for further refinement by 6.0 ns MD simulations performed using
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the AMBER12 package.33 The detailed protocol for the MD simulations was
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described in subsequent section. The optimized model was subjected to quality
124
assessment with respect to its geometry and energy, and then was used for the
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subsequent molecular docking.
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Molecular Docking. The initial 3D structures of IMI and DIN were established by
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Sybyl 7.0 (Tripos Inc) to assign the standard Tripos atom and bond types, then two
128
ligands were minimized and converted into MOL2 format. Docking study between
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ligands and protein was performed by GOLD version 5.134 to obtain the starting
130
geometries of IMI-CYP6CM1vQ and DIN-CYP6CM1vQ complexes for simulation.
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The CYP6CM1vQ protein structure optimized by 6.0 ns MD simulations was used as
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the starting conformation for docking study. The standard Tripos atom and bond types
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were assigned for the protein residues. The Fe atom of the heme group was set as the
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center of the binding site and the binding pocket was defined enclosing the residues
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within 10.0 Å around the center. The ChemScore scoring function parameterized for
136
heme-containing proteins was used to rank and select the docking poses. Fifty outputs
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were generated for each docking run. All the output poses were clustered based on the
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root mean squared deviation (RMSD) values and the poses with lower ChemScore
139
were analyzed in detail in each cluster. Finally, the reasonable binding orientation was
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selected by considering the lower ChemScore and previously published results that
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IMI could be hydroxylated by CYP6CM1vQ to its less toxic 5-hydroxy form23 and
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DIN
would
undergo
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monooxygenase.7
potential
N-demethylation
by
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cytochrome
P450
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Molecular Dynamics Simulation. The initial models of CYP6CM1vQ complexed
145
with IMI and DIN for MD simulations were obtained from the docking results. MD
146
simulations were performed using the AMBER12 package. Geometrical optimization
147
and electrostatic potential calculation of the ligands were performed by the
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B3LYP/6-31G(d,p) method using the Gaussian 09 program (Gaussian, Inc.,
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Wallingford CT, 2009). The RESP35 (Restrained Electrostatic Potential) fitting
150
procedure was utilized to derive the partial atomic charges of IMI and DIN
151
compatible with the standard AMBER force field.
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An all-atom model of CYP6CM1vQ was generated using the leap module in
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AMBER12. The AMBER99SB all atom force field was used for the protein, and the
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general AMBER force field was used as the parameters for ligands. For the force
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constant parameters involving Fe, we adopted the values that were kindly provided by
156
previous work from Dr. Harris.36 The resulted models were then solvated with water
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molecules in a truncated hexahedral periodic box, of which the TIP3P37 water model
158
was used. The distance between the box walls and the protein was set to 10.0 Å. All
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systems for MD simulations were neutralized by adding the corresponding number of
160
counterions. Finally, the CYP6CM1vQ, IMI-CYP6CM1vQ and DIN-CYP6CM1vQ
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systems have 53888, 56315 and 56316 atoms, respectively.
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Energy minimization was conducted in three steps. First, movement was allowed
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only for the solvent and ion molecules with a harmonic constraints applied to the
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complex. Second, the mainchain atoms of CYP6CM1vQ protein were fixed with the
165
same strength as the above and other atoms were allowed to move. Thirdly, all atoms
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were minimized without any restraint. In each procedure, 2500 steps with the steepest
167
descent method followed by 2500 steps with the conjugated gradient method were
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carried out. After the minimization, each system was gradually heated from 0 to 300
169
K over 20 ps under the NVT ensemble condition and equilibrated at 300 K for 20 ps.
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Finally, 12.0 ns unrestrained MD simulations were conducted at 1 atm and 300 K
171
under the NPT ensemble condition. In the energy minimization and MD simulations,
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particle mesh Ewald (PME)38 was employed to treat the long-range electrostatic
173
interactions and the SHAKE algorithm39 was applied to constrain the covalent bonds
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to hydrogen atoms.
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Binding Free Energy Calculations. Based on the equilibrated dynamic trajectory,
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the binding free energy of each complex system was calculated using the (MM-PBSA)
177
calculation method,40-42 according to the following equation:
178
∆Gbinding=∆GMM+∆Gsolv-T∆S
(1)
179
where ∆Gbinding is the binding free energy, ∆GMM is the molecular mechanical energy,
180
∆Gsolv is the solvation energy, and T∆S is the entropy contribution. The molecular
181
mechanical energy is calculated by the following equation:
182
∆GMM=∆Gint+∆Gelec+∆Gvdw
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where ∆Gint, ∆Gelec, and ∆Gvdw represent internal, electrostatic, and van der Waals
184
energy in the gas phase, respectively. The solvation energy is divided into two
185
components:
186
∆Gsolv=∆Gele,sol+∆Gnonpol,sol
(3)
187
where ∆Gele,sol is the electrostatic contribution to solvation energy, and ∆Gnonpol,sol is
188
the nonpolar solvation term. Here, the polar contribution was calculated by solving
189
the Poisson-Boltzmann equation, whereas the latter is determined using,
190
∆Gnonpol,sol=γ(SASA)+b
(4)
191
where γ represents surface tension and b is constant, whereas SASA is the
192
solvent-accessible surface area (Å2).
193
In this study, 100 snapshots from the last 4.0 ns of production stage were extracted
194
for binding free energy calculations. The polar contribution term of solvation energy
195
was calculated using the PBSA program in AMBER12. The interior dielectric
196
constant was set to 1.0, and the outer dielectric constant was set to 80.0. The
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solvent-accessible surface area was determined using the LCPO method.43 The
198
coefficient γ and b were set to 0.0072 kcal/(mol·Å2) and 0 respectively, as in the work
199
of Still and co-workers.44 Normal mode analysis45 was conducted to estimate the
200
entropic changes using the nmode program in AMBER12. Because the current
201
CYP6CM1vQ systems were relatively large (about 8000 atoms excluding water and
202
ions) and very memory demanding in calculation, thus only residues within 8.0 Å of
203
the substrate were included for the normal mode calculations. This treatment has been
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used in many previous studies.36,46,47 The truncated systems were minimized for up to
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100,000 cycles to give an energy gradient of 0.0001 kcal·mol-1·Å-1 using a
206
distance-dependent dielectric constant of ε = 4r. Finally, 100 snapshots of each system
207
were selected for the entropy calculation.
208
To obtain the detailed interactions between the protein residues and the ligands, the
209
binding free energy was decomposed onto each individual residue. The MM-GBSA
210
program with the ICOSA method48 was used for this purpose. Gas-phase energies,
211
desolvation free energies and molecular mechanism were considered in energy
212
decomposition. The parameter settings were similar to the binding free energy
213
analysis.
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RESULTS AND DISCUSSION
215
The Homology Model of B. Tabaci CYP6CM1vQ. A Blastp search revealed that
216
human CYP3A4 structures could serve as the potential template for building the
217
CYP6CM1vQ model, which shares the sequence identity about 32% with
218
CYP6CM1vQ. Considering the crystal resolution values and residue completeness,
219
the crystal structures of CYP3A4 (PDB codes: 3UA1 and 1TQN) were eventually
220
selected as the template structures to construct the CYP6CM1vQ model. The final
221
sequence alignment result between CYP6CM1vQ and CYP3A4 (3UA1 and 1TQN)
222
was depicted in Figure S1a, which was used for generating the initial 3D model of
223
CYP6CM1vQ. In PROCHECK evaluation, more residues in the most favored regions,
224
and less residues in disallowed regions implied a good stereochemical quality of the
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model. For the homology model of CYP6CM1vQ (Figure 1a), 88.3% of the residues
226
were presented in the most favored regions, 10.1% in the additional regions, 1.4% in
227
the generously allowed regions, and only 0.2% in the disallowed regions (Figure 1b).
228
The Verify score by Profile-3D for the CYP6CM1vQ structure was 192.59, which
229
was close to the top score 221.54. Moreover, most residues were reasonable with
230
positive score values, and only few residues that far away from the binding site
231
regions showed small negative profile-3D values (Figure S1b). The above results
232
indicated that the homology model of CYP6CM1vQ was reliable.
233
The modeled CYP6CM1vQ protein was then subjected to exhaustive 6.0 ns MD
234
simulations to examine the stability of the homology model, which was monitored by
235
measuring the RMSD of the protein backbone atoms with respect to the starting
236
structure. Figure 1c showed the RMSD value variation with respect to the simulation
237
time, which converged to about 2.9 Å after 2.0 ns. The results indicated that the built
238
3D models were stable during the MD simulation. The average structure obtained
239
from the last 2.0 ns of equilibration state was used for the further docking analysis.
240
Docking Results. Docking studies were performed to explore the potential
241
different binding modes of CYP6CM1vQ with IMI and DIN. For each ligand, fifty
242
docking outputs were analyzed in details. The final docking poses were obtained by
243
considering the ChemScore values and analyzing the binding modes, which was
244
depicted in Figure S2. The 5-methylene of IMI points to the heme Fe atom (Figure
245
S2a). The binding is consolidated by O-HO hydrogen bonds with residues Arg225
246
and Ser388 similar to the findings by Karunker I.,23 as well as a π-π interaction
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between the pyridine ring and benzene ring of Phe130 (Figure S2a). It was in
248
agreement with the reports that IMI could be hydroxylated by CYP6CM1vQ to its less
249
toxic 5-hydroxy form.23
250
Comparing with IMI, DIN displayed similar orientation but different binding mode,
251
in which the methyl group of DIN faces to the Fe atom, and the furanyl moiety of
252
DIN is located between the Arg225 and Ser321, with an O-HO hydrogen-bond with
253
Ser321 (Figure S2b). It is consistent with the previous reports that DIN would
254
undergo potential N-demethylation by cytochrome P450 monooxygenase.7 From the
255
docking pose and binding mode analyses, IMI might be of stronger interactions with
256
CYP6CM1vQ than DIN, which was also consistent with their ChemScore values (IMI
257
-30.24, and DIN -25.87).
258
Molecular Dynamics Simulation. MD simulations were performed on each
259
complex, not only to refine the ligands binding modes because the docking does not
260
take into account the flexibility of proteins, but to explore the dynamic behavior of the
261
enzyme and the ligands during the long-time MD simulations.
262
Root Mean Square Deviation. A stable MD trajectory is crucial for further
263
analyses. The dynamic flexibility of the MD systems was assessed by measuring the
264
RMSD values of Cα atoms throughout the whole process of simulation. The RMSD
265
values varied with respect to the simulation time were depicted in Figure 2. The
266
RMSD values of two systems displayed a large fluctuation during the first 6.0 ns and
267
reached stability after 6.0 ns. The protein atoms do not undergo significant structural
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changes with the RMSD values of both systems converged to about 2.8 Å, a relative
269
small deviation from the minimized structure. Meanwhile, the RMSD values of ligand
270
atoms were also calculated and depicted in Figure 2. The data indicated that two
271
systems reached equilibrium states after a small fluctuation in the initial period of the
272
simulation. The magnitude of fluctuations for ligand, together with the backbone of
273
protein, leaded to a conclusion that the simulation produced stable trajectories and
274
provided a reliable basis for further analysis.
275
Position and Orientation Changes of IMI and DIN during Simulation. To
276
determine the mobility of each ligand in the MD simulation, the distance between the
277
heme Fe atom and the carbon atom C16 (Figure S2a, the 5-hydroxyl site of IMI) was
278
monitored during the MD simulation, as well as the distance with the carbon atom
279
C11 of DIN (Figure S2b, potential N-demethylation site). The average distances
280
maintained at 4.2Å and 4.0 Å (Figure S3), respectively for IMI-CYP6CM1vQ and
281
DIN-CYP6CM1vQ systems, which might facilitate their potential hydroxylation23 and
282
N-demethylation reactions catalyzed by cytochrome P450 monooxygenases.7
283
To clarify the conformational variations of the two ligands in the binding pockets
284
during MD simulations, the structures of two complexes were extracted and analyzed
285
from the snapshots at 0, 4, 8 12 ns, respectively. Figure S4 displayed the superposition
286
of IMI and DIN in the snapshots at 0, 4, 8, 12 ns in MD trajectory from the
287
IMI-CYP6CM1vQ and DIN-CYP6CM1vQ systems, respectively. During the entire
288
simulation, IMI displayed small conformation changes (Figure 3a and Figure S4a),
289
indicated that the binding of IMI is very stable, which might facilitate the
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hydroxylation reaction catalyzed by CYP6CM1vQ.23 However, DIN showed
291
significant conformation variation during the whole simulation (Figure 3b and Figure
292
S4b), accompanied with large conformation changes of guanidine motif, the rotation
293
of the nitro group, and the rotation of tetrahydrofuran ring. Although DIN displayed
294
stable position of CH3 group and short interaction distance (about 4.0 Å) with the
295
heme Fe as compared with IMI (about 4.2 Å), The large conformation variation
296
indicated that DIN is difficult to find a stable binding mode with CYP6CM1vQ
297
during the whole simulation. It might draw detrimental effects on the potential
298
metabolic activity of CYP6CM1vQ with DIN, as compared with IMI.
299
Binding
Free
Energy
Analysis.
The
binding
free
energy
values
of
300
IMI-CYP6CM1vQ and DIN-CYP6CM1vQ system were calculated and analyzed
301
using the MM-PBSA method, which has high accuracy and good computational
302
efficiency in calculating the binding affinities of ligands with their targets. Table 1
303
lists the calculated energies, including the total binding energies and the individual
304
energy components. The CYP6CM1vQ displayed potent interaction with IMI (-13.12
305
kcal/mol), but weak interaction with DIN (-2.97 kcal/mol). It was consistent with their
306
distinct RF values. A recent study reported that the RF value of IMI in the Q biotype
307
strains of B. tabaci (up to 244-fold resistance) was higher than that of DIN (6-fold
308
resistance).20 A detailed binding energy decomposition analysis uncovered that the
309
sum of the electrostatic interaction energies and the van der Waals of
310
IMI-CYP6CM1vQ system (-58.75 kcal/mol and -40.28 kcal/mol, respectively) were
311
more favorable for the ligand binding than that of DIN-CYP6CM1vQ (-24.26
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kcal/mol and -35.16 kcal/mol, respectively). The distinct electrostatic interaction
313
values contributed most to the significant binding energy difference between IMI and
314
DIN. It might be one of the accounts for the distinct resistance levels between IMI and
315
DIN in B. tabaci.
316
Key Residues Involved in Ligands Binding were Identified by Energy
317
Decomposition. In order to gain a detailed picture of protein-ligand interactions and
318
the contribution of each residue, the binding energies in two complexes were
319
decomposed on per residue located within 5 Å around the ligands by using the
320
MM-GBSA method encoded in the AMBER12 program. The residue-based energy
321
decomposition results characterized the key residues in ligand binding and identified
322
the contributions of different non-bonding interaction forces (the van der Waals and
323
the electrostatic interactions), which was helpful in the understanding of binding
324
mechanism of ligands. The residues with most favorable contributions (more than -1.0
325
kcal/mol) to the binding free energy were displayed in Figure 4a and Table S1. It was
326
found that Arg114, His128, Phe130, Arg225, Ser321, Ala322, Glu325, Ser388, Ile390,
327
and heme played key roles for the binding of IMI with CYP6CM1vQ, whereas
328
Phe130, Arg225, Phe226, Ser321, Ala322, Pro326, Ser388, and heme contributed to
329
the interaction between DIN and CYP6CM1vQ.
330
The interactions of residues Arg114, His128, Arg225, Glu325, Ser388 and Ile390
331
with IMI were evidently more favorable than with DIN, while residues Phe226,
332
Ala322 and Pro326 showed better interactions with DIN than IMI. By detailed energy
333
decomposition analysis, the interaction energy of Arg225 with IMI was up to -13.2
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kcal/mol, whereas with DIN was only -5.21 kcal/mol. The large interaction energy
335
difference of Arg225 was predominantly originated from the electrostatic interaction,
336
which are -11.35 kcal/mol and -3.56 kcal/mol in IMI-CYP6CM1vQ and
337
DIN-CYP6CM1vQ systems, respectively. As a result, it also indicated that IMI and
338
DIN might be of distinct binding modes with Arg225 when complexed with
339
CYP6CM1vQ.
340
The Binding Modes of CYP6CM1vQ with IMI and DIN. The average structures
341
of the two ligand-enzyme complexes during the last 4.0 ns of the equilibrium phase
342
were extracted and examined to better elucidate the potential difference within the
343
binding modes of IMI and DIN. As depicted in Figure 4(b-c), residue Arg225 plays
344
key roles for the binding of IMI with CYP6CM1vQ. Two N-H···N H-bonds were
345
observed between the positive charged guanidium N-H groups of Arg225 and IMI.
346
Moreover, a total of 2000 snapshots during the equilibrium phase of MD simulations
347
were extracted and analyzed to see whether they were stable in the MD simulations.
348
The monitored H-bond distances were showed in figure S5 and the calculated H-bond
349
occupancy rates were listed in table 2. The two above mentioned N-H···N H-bonds
350
are very stable as revealed by the short H···N distances around 2.0 Å and 2.2 Å
351
(Figure S5a-b), respectively, as well as the high occupancy rate up to 99.80% and
352
97.15% (Table 2), respectively. Apart from the N-H···N H-bonds, a cation-π
353
interaction could be also observed between the guanidium group of Arg225 and the
354
pyridine ring of IMI during the equilibrium state of MD simulations.
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On the other hand, a stable N-H···O H-bond was observed between the imidazole
356
N-H bond of IMI and the hydroxyl group of Ser388, with H···O distance around 2.0 Å
357
(Figure S5c) and a high H-bond occupancy rate at 98.55% (Table 2). Meanwhile, a
358
weak N-H···N H-bond was detected between the imidazole N-H of His128 and the
359
pyridine N atom of IMI, with the H···N distance about 2.5 Å (Figure S5d) and an
360
occupancy rate approximately at 50.45% (Table 2). Comparing with the docking
361
results, the previous revealed π-π stacking interaction with Phe130 was disappeared
362
during the MD simulation. One of the reasons might be the orientation changes
363
induced by the strong cation-π interaction with Arg225. The H-bonds with Arg225,
364
Ser388, His128, and the cation-π interaction with Arg225 guided and consolidated the
365
binding of IMI with CYP6CM1vQ, which could well facilitate the metabolic reaction
366
of IMI.
367
For DIN-CYP6CM1vQ system (Figure 4d-e), only a short N-H···O H-bond with
368
H···O distance at 1.9 Å was found between the CH3N-H of DIN and the carbonyl O
369
atom of Ala322 (Figure S6a), which was stable during the equilibrium state of MD
370
simulation with H-bond occupancy rates at 99.70% (Table 2). Moreover, a weak
371
N-H···O H-bond was detected between the O atom of the furanyl moiety of DIN and
372
main chain N-H of Phe226 (Figure 4d-e), with H···O distance about 2.5 Å (Figure S6b)
373
and an occupancy rate approximately at 62.05% (Table 2). No other evident H-bonds
374
could be observed, and also DIN could not form a cation-π interaction with Arg225
375
due to the lack of aromatic ring structure. As compared with IMI, DIN displayed
376
weak binding with CYP6CM1vQ, which is in accordance with the above noted
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binding energy difference and the distinct RF values observed in China between IMI
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and DIN (244-fold and 6-fold, respectively).20 Thus, the weak binding of DIN with
379
CYP6CM1vQ might lead to a weak metabolic activity of DIN, which on the other
380
hand conferred its low resistance level in Q biotype B. tabaci.
381
All data above revealed that CYP6CM1vQ displayed a quite different binding
382
potency with IMI (-13.12 kcal/mol) versus DIN (-2.97 kcal/mol), which was primarily
383
resulted from the distinct electrostatic contributions. Further energy decomposition
384
analysis revealed that Arg225 conferred the largest binding energy difference between
385
IMI-CYP6CM1vQ and DIN-CYP6CM1vQ systems. Detailed binding mode analysis
386
revealed that Arg225 played a crucial role in the binding of IMI-CYP6CM1vQ, of
387
which a cation-π interaction and two stable N-H···N H-bonds were observed between
388
Arg225 and IMI. However, no cation-π interaction and H-bonds were detected in the
389
binding of DIN with Arg225 in CYP6CM1vQ. It indicated that IMI forms stable and
390
potent binding with CYP6CM1vQ, which might well facilitate the following
391
metabolic reaction, in contrast, the binding between DIN and CYP6CM1vQ was very
392
weak, which might disable the potential metabolism of DIN. The different binding
393
potency and binding modes of IMI versus DIN within CYP6CM1vQ might be an
394
important factor contributing to their distinct resistance levels. It could also be
395
hypothesized that Arg225 contributed most to the distinct resistant features between
396
IMI and DIN in Q biotype of B. tabaci. The findings from the present study might be
397
helpful to future design of the anti-resistance neonicotinoid insecticides.
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ASSOCIATED CONTENT
399
Supporting Information
400
Figures S1-S6 and Table S1. This information is available free of charge via the
401
Internet at http://pubs.acs.org.
402
Funding
403
This work was financial supported by the National Natural Science Foundation of
404
China (21172070, 21572059), National High Technology Research Development
405
Program of China (2011AA10A207) and the Fundamental Research Funds for the
406
Central Universities.
407
Notes
408
The authors declare no competing financial interest.
409
ABBREVIATIONS USED
410
B. tabaci, Bemisia tabaci; nAChRs, nicotinic acetylcholine receptors; IMI,
411
imidacloprid; DIN, dinotefuran; MD, molecular dynamics; RF, resistance factor;
412
MM-PBSA, molecular mechanics-Poisson-Boltzmann surface area; NCBI, National
413
Center for Biotechnology Information; RESP, Restrained Electrostatic Potential; PME,
414
particle-mesh Ewald; RMSD, root mean square deviation.
415
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Figure Captions
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Figure 1. (a) Homology model of B. tabaci CYP6CM1vQ. (b) The Ramachandran plots of
555
CYP6CM1vQ structure. (c) RMSD of the backbone of modeled CYP6CM1vQ protein.
556
Figure 2. RMSD plots for the backbone of IMI-CYP6CM1vQ and DIN-CYP6CM1vQ during MD
557
simulation.
558
Figure 3. Binding conformations IMI (a) and DIN (b) at 0, 4, 8, 12 ns of MD simulation.
559
Figure 4. (a) Ligands-residue interaction spectrum of IMI-CYP6CM1vQ and DIN-CYP6CM1vQ
560
complexes (only residues located within 5 Å of ligand were calculated); (b-c) The
561
binding mode of IMI with CYP6CM1vQ; (d-e) The binding mode of DIN with
562
CYP6CM1vQ. The 3D Ligand interaction images were created by PyMol (DeLano
563
Scientific), and the 2D ligand interaction diagrams were generated with MOE.
564
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Table 1. The Binding Free Energies (kcal/mol) of IMI, DIN with CYP6CM1vQ
CYP6CM1vQ
∆ Gele
∆ Gvdw
∆ Gnonp,sol
∆ Gele,sol
-T∆ S
∆ Gbinding
IMI
-58.75
-40.28
-4.53
75.06
15.38
-13.12
DIN
-24.26
-35.16
-4.16
41.74
18.88
-2.97
566
567
Table 2. H-bonds with Occupancy Rates > 50% within the Two Systems During the Equilibrium
568
Phase of MD Simulations. Only H-bond
ligands
H-bond donor
H-bond acceptor
Occupancy rate (%)
IMI
IMI: H12
Ser388:OG
98.55
His128: HE2
IMI: N25
50.45
Arg225: HH12
IMI: N7
99.80
Arg225: HH22
IMI: N7
97.15
DIN: H20
Ala322: O
99.70
Phe226: H
DIN: O2
62.05
DIN
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IMI DIN IMI_CYP6CM1vQ DIN_CYP6CM1vQ
4
RMSD (Angstrom)
3
2
1
0 0
4
Time (ns)
8
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