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Theoretical evaluation on potential cytotoxicity of graphene quantum dots Lijun Liang, Zhe Kong, Zhengzhong Kang, Hongbo Wang, Li Zhang, and Jia-Wei Shen ACS Biomater. Sci. Eng., Just Accepted Manuscript • DOI: 10.1021/acsbiomaterials.6b00390 • Publication Date (Web): 20 Sep 2016 Downloaded from http://pubs.acs.org on September 25, 2016
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ACS Biomaterials Science & Engineering
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Theoretical evaluation on potential cytotoxicity of graphene
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quantum dots
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Lijun Liang1 *, Zhe Kong2, Zhengzhong Kang3 4, Hongbo Wang5,Li Zhang6, Jia-Wei
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Shen7,*
,
,
5
1
6
University, No. 1, 2nd Street, Jianggan District, Hangzhou, 310018, People's Republic
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of China
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2
9
Hangzhou, No. 1, 2nd Street, Jianggan District, Hangzhou, 310018, People’s Republic
College of Life Information Science and Instrument Engineering, Hangzhou Dianzi
College of Materials and Environmental Engineering, Hangzhou Dianzi University,
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of China
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3
12
People’s Republic of China
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4
14
Royal Institute of Technology, SE-10691 Stockholm, Sweden
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5
16
District, Hangzhou 310018, People’s Republic of China
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6
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District, Hangzhou, 310012, People’s Republic of China
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7
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District, Hangzhou 310016, People’s Republic of China
Department of Chemistry, Zhejiang University, Zheda Road 38, Hangzhou, 310028,
Division of Theoretical Chemistry and Biology, School of Biotechnology, KTH
College of Automation, Hangzhou Dianzi University, No. 1, 2nd Street, Jianggan
Department of Chemistry, Zhejiang Sci-Tech University, No. 2, 2nd Street, Jianggan
School of Medicine, Hangzhou Normal University, Xuelin
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Email address:
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[email protected] (L. Liang)
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[email protected] (J.-W. Shen)
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Abstract
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Owing to unique morphology, ultra-small lateral sizes and exceptional properties,
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graphene quantum dots (GQDs) hold great potential in many applications, especially
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in the field of electrochemical biosensors, bioimaging, drug delivery etc. Its biosafety
5
and potential cytotoxicity to human and animal cells is a growing concern in recent
6
years. In this work, the potential cytotoxicity of GQDs was evaluated by molecular
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dynamics simulations. Our simulation demonstrates that small size GQDs could easily
8
permeate into lipid membrane in a vertical way. It is relatively difficult to permeate
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into lipid membrane for GQDs that larger than GQD61 in ns time-scale. The thickness
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of POPC membrane could even be affected by small size of GQDs. Free energy
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calculations revealed that the free energy barrier of GQDs permeation through lipid
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membrane could greatly change with the change of GQDs size. Under high GQDs
13
concentration, the GQDs molecules could rapidly aggregate in water but disaggregate
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after entering into the membrane interior. Moreover, high concentrations of GQDs
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could induce changes in the structure properties and diffusion properties of the lipid
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bilayer, and it may affect the cell signal transduction. However, GQDs with relative
17
small size are not large enough to mechanically damage the lipid membrane. Our
18
results suggest that the cytotoxicity of GQDs with small size is low and may be
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appropriate for biomedical application.
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Key words: Molecular dynamics simulations, graphene quantum dots, cytotoxicity,
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lipid membrane, membrane disruption.
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1. Introduction
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Owing to unique electrical and mechanical properties, graphene has been extensively
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studied in past few years [1-4]. Although sharing with the same single atomic layered
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motifs as that of graphene and graphene oxide, the lateral dimension of graphene
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quantum dots (GQDs) is less than 100 nm [5]. Originating from graphene and
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graphene oxide, GQDs inherit many unique electrical and mechanical properties of
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graphene [6-8]. More interestingly, GQDs showed numerous novel physical
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properties different from graphene due to abundant surface functionality, the quantum
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confinement and edge effects [9]. It makes GQDs hold great promise for potential
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applications especially in electrochemical biosensors, bioimaging, drug delivery
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system etc [10-13]. As a promising material in biomedical field, GQDs have been
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extensively studied in recent years. Zhu et al pointed out that GQDs could serve as an
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excellent bioimaging agents [14]. Chen reported that GQDs could be used for targeted
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cancer fluorescent imaging, tracking and monitoring of drug delivery [15].
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Remarkably, comparing with graphene and graphene oxide, GQDs exhibited huge
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advantages in bioimaging and bio-labeling both in vivo and in vitro [16-20].
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To realize the application of GQDs in biomedical fields, the prerequisites of
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evaluation and understanding of biosafety and cytotoxicity of GQDs is necessary and
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essential. The cytotoxicity of graphene has been extensively evaluated by both
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theoretical and experimental studies in past few years [21-25]. The toxicity of
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graphene and graphene-oxide (GO) nanowalls against bacterial was firstly reported
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from Akhavan’s group [26]. They found that GO nanowalls reduced by hydrazine
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were more toxic to the bacteria than the unreduced graphene oxide nanowalls [26].
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Fan et al. pointed out that GO is incubated with FBS due to the extremely high protein
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adsorption ability of GO [27]. Liao et al found that graphene sheets are more
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damaging to mammalian fibroblasts than the less densely packed graphene oxide. The
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toxicity of graphene depends on the exposure environment (i.e., whether or not
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aggregation occurs) and mode of interaction with cells (i.e., suspension versus
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adherent cell types) [22]. Recent studies also reveal the anti-bacterial activity of 3
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graphene and GO with severe cytotoxicity to bacteria such as Escherichia coli. [28].
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In addition, due to different oxidization extent and surface chemistry of GO sheets,
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GO shows low cytotoxicity in some experiments but high cytotoxicity in others [29,
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30]. These studies greatly enhanced our understanding on the cytotoxicity of graphene
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and GO. However, it is worth noting that in most work graphene and GO were
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modified by polyethylene glycol (PEG), proteins or other materials for cytotoxicity
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and other biological effects evaluations [31-34]. The research of cellular uptake of
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pristine graphene and GO is still very limited. In addition, Akhavan et al pointed out
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that the genotoxicity of graphene in human stem cells depended on the size of
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graphene [35], and the cytotoxicity of GO is also dose-dependent through the test of
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GO on reproduction capability of mammals [36]. Thus, the cytotoxicity of GQDs is
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different from that of graphene and GO, and it is necessary and crucial to evaluate the
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cytotoxicity of pristine GQD. From Zhang’s report, the cytotoxicity of GQDs is lower
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than that of the micrometer-sized GO, and GQDs is considered appropriate for
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utilization in biomedical fields [37]. However, the mechanism of cell uptake of GQDs
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at molecular level is still unclear, which greatly limit the understanding of GQDs
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biosafety and real applications of GQDs in biomedical fields. Moreover, the effect of
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size and the concentration of GQDs on the translocation of GQDs through lipid
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membrane are obscure.
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Molecular dynamics (MD) simulations have been widely applied to investigate
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complicated problems in the field of bio-nanotechnology in recent years [38-41]. MD
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simulation could provide atomistic details of nanoparticle translocation through lipid
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membrane, and it has been successfully used to investigate the cytotoxicity of
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graphene from other groups [42-45]. Wei et al found that graphene could disrupt the
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structures and functions of proteins through exceptionally strong molecular
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interactions [46]. The process of graphene nanosheet insertion and lipid extraction
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from Escherichia coli membrane were uncovered by Tu et al.[43]. Yan et al
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investigated the wrapping process of dendrimer-like nanoparticle and the permeation
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of two-dimensional nanomaterials by lipid membrane [47-49], and they found that the 4
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graphene sheets experienced the unique self-rotation during membrane wrapping. In
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this study, a series of simulations were performed to investigate the translocation
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process of GQDs through lipid membrane. The details of all simulations performed
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were listed in Table-1.
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2. Computational details.
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2.1 System setup
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For clarity and simplicity, all GQDs were constructed from pristine graphene based on
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the reference [5], and GQDs derived from GO were not considered in this study. The
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graphene sheet was set in the x-y plane, as described in our previous work [50, 51].
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One carbon atom as center atom with the Cartesian coordinates (0, 0, 0). Other carbon
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atoms with x2 + y2 < R2 were rendered as the carbon atoms in GQDs, and R is the
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radius of GQDs. To keep the integrity of benzene rings, R varies from 0.375 nm,
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0.618 nm, 1.08 nm, 1.65 nm to 2.05 nm. As shown in Figure 1, all the geometry of
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GQDs in this study were circle, and the definition of GQDs were based on the number
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of fused benzene rings. More specifically, they are GQD7 (a), GQD19 (b), GQD61
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(c), GQD151 (d) to GQD275 (e) in Figure 1. The edges of GQDs with different size
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were firstly saturated by hydrogen atoms. After that, the structures of all GQDs were
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optimized by Gaussian 03 [52]. Then the optimized structures were used as the initial
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structure of GQDs in MD simulation. In all MD simulations, 256 POPC lipids were
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used with 128 lipids in each layer. POPC lipids membrane was equilibrated by 20 ns
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MD simulation in NPT ensemble and the equilibrated structure were used as the
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initial structure for the simulation of GQDs translocation. After that, GQDs were
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placed on top of the POPC membrane with the distance of 4.5 nm (from the center of
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mass of GQDs to the center of mass of POPC membrane in z direction). All systems
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were then solvated in TIP3P water with water boxes size of 10.0 nm × 10.0 nm ×
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12.0nm to eliminate any potential periodic boundary effects.
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2.2 MD Simulation
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Carbon atoms away from the edge were assigned neutral charge as our previous 5
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work, while the partial charges of hydrogen atoms and the linked carbon atoms in
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GQDs is +0.115 e and -0.115e, as described in reference [53]. Keeping partial charges
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fixed does not allow for electric charge rearrangement and polarization effects in the
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MD simulations. The parameters of GQDs including harmonic bond potentials for the
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C-H and C-C bonds, harmonic angles for the C-C-H and C-C-C angles, harmonic
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dihedral potentials as well as Lennard-Jones (LJ) parameters were taken from the
7
reference [53]. The parameters for POPC lipid membrane was derived from
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CHARMM27 force field [54]. The water molecules were represented by TIP3P model
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[55], which is considered to be suitable for the CHARMM27 force field.
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GROMACS-5.0.4 were used to perform all MD simulations with time step of 2 fs
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[56]. All systems were experienced energy minimization and equilibration. The NpT
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ensemble was used in the simulation with constant temperature of 310K imposed by
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Berensdsen thermostat and 1 bar pressure controlled by a semi-isotropic
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Parrinello-Rahman barostat. The cutoff for the non-bonded van der Waals interaction
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was set by a switching function starting at 1.0 nm and reaching zero at 1.2 nm. The
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long range electrostatic interaction was calculated by particle mesh Ewald (PME)
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summation, with a cutoff of 1.2 nm for the separation of the direct and reciprocal
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space summation. All bond lengths and all angles involving hydrogen atoms were
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constrained using LINCS algorithm during simulation. Data were analyzed by
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GROMACS tools and home scripts.
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2.3 PMF calculations
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Based on the results of unbiased MD simulations, the translocation free energy
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profiles of GQDs with different size (GQD7, GQD19, and GQD61) through lipids
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membrane were calculated. It was determined by using umbrella samplings method
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with the reaction coordinate starting from -3.5 nm to 0.5 nm along the z axis [57].
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Each window with different reaction coordination was extracted from the trajectory of
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steered molecular dynamics simulation. In each system, 100 equidistant windows with
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width of 0.04 nm were set and a harmonic force constant of 1000 kJ·mol-1·nm-2 was
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used to position restrain the ion in each window. 5 ns simulation was performed in 6
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each window, and last 3 ns was used for analysis. The biased distributions were
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recombined, and the PMF were calculated by weighted histogram analysis method
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(WHAM) [58].
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Table-1. Details of all simulations performed in this study. System
Size GQD
of Concentration
Method
Number of Atoms
Simulation time (ns)
(GQD:POPC)
GQD7
GQD7
1:256
MD
129,311
100
GQD19
GQD19
1:256
MD
128,045
100
GQD61
GQD61
1:256
MD
129,266
100
GQD151
GQD151
1:256
MD
129,206
100
GQD275
GQD275
1:256
MD
129,116
100
GQD7-SMD
GQD7
1:256
SMD
129,311
20
GQD19-SMD
GQD19
1:256
SMD
128,045
20
GQD61-SMD
GQD61
1:256
SMD
129,266
20
GQD151-SMD
GQD151
1:256
SMD
129,206
20
GQD275-SMD
GQD275
1:256
SMD
129,116
20
GQD7-PMF
GQD7
1:256
NEMD
129,311
5*120
GQD19-PMF
GQD19
1:256
NEMD
128,045
5*120
GQD61-PMF
GQD61
1:256
NEMD
129,266
5*120
GQD151-PMF
GQD151
1:256
NEMD
129,206
5*100
GQD7-H1
GQD7
12:256
MD
127,862
100
GQD7-H2
GQD7
24:256
MD
127,649
100
GQD7-H3
GQD7
36:256
MD
127,412
200
GQD7-H4
GQD7
48:256
MD
127,193
100
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Figure 1. Graphene quantum dots with different size: (a) GQD7, (b) GQD19, (c)
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GQD61, (d) GQD151 and (e) GQD275.
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3. Results and discussion
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3.1 Permeation of GQDs with different sizes
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The absorption process of single GQDs with different size was observed in our
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simulation. As shown in Figure 2, the distance between the center of mass of GQDs
8
and the center of mass of the POPC lipid membrane were measured. In the systems of
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relative small size (GQD7 and GQD61), GQDs transported into the cell membrane.
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GQD7 and GQD61 entered into the POPC lipid membrane after about 2.5 ns. It is
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worth noting that GQDs with small size tends to stay at the position of 1.0 nm away
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from the middle of lipid membrane but not in the middle of the lipid membrane
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GQD151 and GQD275 could also absorb in the lipid membrane after about 2.5 ns.
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Although the absorption time onto the lipid membrane are almost same for different
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GQDs, the entering process of GQDs with different size is distinctly different. As seen
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in Figure 2, GQD151 and GQD275 kept the adsorbed state and diffuse on top of the
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lipid membrane until the end of 100 ns simulation. It implies that the permeation
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processes of GQD151 and GQD275 are much longer than that of GQD7 and GQD19.
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These results show that the size of GQDs has little effect on the absorption time of
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GQDs onto the membrane surface, however, the size of GQDs could greatly affect the
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permeation process of GQDs through lipid membrane. More interestingly, as
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displayed in Figure 3a and 3b, GQD7 and GQD61 tend to vertically permeate lipid
23
membrane. In this way, they could pass through the lipid membrane with less
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disruption of the structure of lipid membrane. Meanwhile, the hydrophobic interaction
25
between GQD7/GQD61 and hydrophobic tail of lipid could be maximized in this 8
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manner. To better interpret this phenomenon, the angle between the plane of GQDs
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and lipid membrane were calculated and displayed in Figure 3e. Herein, the angle was
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defined between the x-y plane of lipid membrane and the surface of GQDs. In the
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initial state, angles between GQDs and lipid membrane are 0° in all systems. During
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the simulation, GQDs with small size (GQD7 and GQD61) could permeate into the
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POPC membrane, and the angles between GQD7/GQD61 and lipid membrane mainly
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range from 45º to 70º. In the way of vertical translocation through the lipid membrane,
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the benzene ring of GQDs could interact with –CH2- group in the hydrophobic tail of
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lipid membrane much stronger. It could greatly enhance the interaction between
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GQDs and POPC lipid membrane. However, the GQDs with big size (GQD151 and
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GQD275) could only absorb on the lipid membrane surface, and the angles between
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these GQDs and lipid membrane is in the range of 0º to 10º.
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Figure 2. The distance between the center of mass of different GQDs and the center of
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mass of lipid membrane as a function of simulation time. The dashed green line
16
represents the location of upper end of POPC membrane.
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Figure 3. GQDs with different size on the membrane after 100 ns MD simulation: (a)
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GQD7 (b) GQD61; (c) GQD151; (d) GQD275. The GQDs are shown by VDW model
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with VMD. N atoms (blue) and P atoms (yellow) in the membrane are also shown in
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VDW model. (e) The angles between different GQDs and x-y plane of lipid membrane
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as a function of simulation time.
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3.2 Free energy calculation of translocation of GQDs
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To further interpret the translocation mechanism of GQDs through lipid membrane,
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the free energy profile was estimated by PMF calculations, as shown in Figure 4. In
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all systems (GQD7, GQD19 and GQD61), the free energy of GQDs decreases from
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the water phase into lipid membrane. It implicated that GQDs preferred to enter into
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lipid membrane, and it could explain that GQDs tended to adsorb on the membrane.
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In all systems, the free energy for GQDs in the center of lipid membrane is defined as
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zero point. The free energy difference between the lowest point to the GQDs in the
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water phase is -56.3kJ/mol, -55.2kJ/mol and -56.1kJ/mol for GQD7, GQD19 and
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GQD61. It shows that the free energy difference for these GQDs permeating from
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water phase into lipid membrane is almost same. The position corresponding to
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lowest free energy in z direction is -1.10 nm and 0.98 nm for GQD7 and GQD19.
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However, the position corresponding to lowest free energy in z direction increased to
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1.75 nm for GQD61. It implies that the location of lowest free energy in z direction is
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far away from the middle of lipid membrane with increase of GQDs size from
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GQD19 to GQD61. It also showed that the location of lowest free energy for GQDs is 10
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not in the middle of the lipid membrane and translocation of GQDs in the middle of
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lipid membrane is one of the transition states for GQDs permeating through
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membrane. The free energy barrier increases from 35.1 kJ·mol-1 to 96.2 kJ·mol-1 with
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the increase of GQDs size from GQD19 to GQD61. Based on the free energy barrier
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in Figure 4, the translocation rate ratio of two GQDs with different size can be
6
roughly estimated by equation 1:
7
∆G ( GQD 7) −∆G ( GQD 61) k (GQD7) RT ∝e k (GQD61)
(1)
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The reaction rate of GQD7 passing through the middle of POPC membrane was about
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9 orders of magnitude of that of GQD61. It implicated that the size of GQDs could
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greatly affect the translocation process. The free energy barrier for GQDs passing
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through the lipid membrane is much higher with the increase of size of GQDs. The
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relative small GQDs (GQD7 and GQD19) could enter into the membrane, and they
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could stay in the lowest free energy point. For the case of GQD61, the dimeter of
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GQD61 is 2.16 nm, and it is close to the thickness of one layer of POPC membrane.
15
Thus, it could still enter into one layer of POPC membrane in a vertical way, and it
16
can still stay in the lowest free energy point. However, the GQDs could not permeate
17
into the lipid membrane with the vertical way when the diameter of GQDs is larger
18
than 2.5 nm (GQD161). In this case, the diameter of GQDs is larger than the thickness
19
of one layer of POPC membrane. Thus, GQDs with large size need to pass through
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the middle of lipid membrane if GQD permeate the lipid membrane with a vertical
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manner. It is not energy favorable since the middle of lipid membrane is one transition
22
state for GQDs to pass. Especially, the free energy gap between lowest free energy
23
point to transition state is much larger with the increase of size of GQDs, as seen in
24
Figure S1 (shown in Supporting Information) for GQD151 passing though the lipid
25
membrane. This indicates that it needs more time for large GQDs entering into the
26
membrane. It is in accordance with the Alexey’s coarse-grain model simulation [59],
27
the permeation process of larger graphene is in the ms scale.
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Figure 4. Potential of mean force (PMF) of GQDs with different size translocating
3
through POPC membrane. (a) GQD7; (b) GQD19; (c) GQD61. Two green dashed
4
lines represent the location of two ends of POPC membrane.
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To investigate the effect of GQDs size on the structure disrupting of membrane, the
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thickness and diffusion coefficients of POPC membrane in x-y plane in different
7
systems were calculated. Herein, the distance between the positions of P atoms with
8
highest density was considered as the thickness of lipid bilayer. With the permeation
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of GQD7, the thickness of POPC membrane is 3.94 nm, while it is 3.84 nm with the
10
permeation of GQD19. Especially, the structure of POPC membrane could be greatly
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affected by the permeation of large GQDs. With bigger size of GQD151, the thickness
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of POPC membrane is around 4.02 nm, and it is 4.13 nm in the system of GQD275. It
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implicated that the thickness of POPC membrane could be slightly affected by the
14
permeation of GQDs. In these two systems with relative large GQDs (GQD151 and
15
GQD275), GQDs could not permeate the lipid membrane within 100 ns simulation.
16
GQD with big size is difficult to permeate the lipid bilayer, and the absorption of
17
GQD on the lipid bilayer almost has little effect on the thickness of lipid membrane.
18
However, it intrigued the asymmetrical distribution of lipid membrane, as seen in
19
Figure 5c and 5d. It showed that the permeation of GQD into lipid membrane could
20
affect the structure of POPC lipid bilayer, even the size of GQD is very small. The
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diffusion coefficient of lipids are considered to relate to the signal transduction
22
[60-62]. As see in Figure 6, the diffusion coefficients of lipids in different systems are
23
different. The MSD of different system in parallel simulations could be found in
24
Figure S2 (see Supporting Information). However, there is no obvious decrease of
25
diffusion coefficients from the system of GQD7 to GQD151. It suggests that the size 12
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(from GQD7 to GQD275 in this work) of GQDs could not obviously change the
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mobility of lipids.
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3.3 Permeation of GQDs at high concentration
4
To better understand the cytotoxicity of GQDs, the translocation process of GQD7
5
with different concentrations were simulated and analyzed (the number of GQD7 in
6
these simulations could be found in Table-1). The initial structure of GQDs on the top
7
of POPC membrane was shown in Figure S3 (see Supporting Information). As seen in
8
Figure 7, the final structures and distribution of GQDs in the lipid membrane at
9
different concentration after 100 ns simulation were displayed. In all systems, GQDs
10
dispersed in the POPC membrane after permeation of GQDs. Most of them
11
mono-dispersed to the two sides of lipid membrane after permeation, as shown in
12
Figure 7. It is in consistence with the results of PMF calculations of the translocation
13
process of GQD7. As displayed in Figure 4a, the free energy minimums almost have b 120
120
GQD19
GQD7 100
3
Density of P atoms (kg/m )
Density of P atoms (kg/m3)
a
80 60 40 20
100 80 60 40 20 0
0
0
2
4
14 c 120
6 Z (nm)
8
10
0
12
2
4
d 120
GQD151
Density of P atoms (kg/m3)
Density of P atoms (kg/m3)
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100 80 60 40 20 0
6 Z (nm)
8
10
12
8
10
12
GQD275
100 80 60 40 20 0
0
2
4
6 Z (nm)
8
10
12
0
2
4
6 Z (nm)
15 16
Figure 5. The density of P atoms of lipid bilayer along the z direction. The distance
17
between two highest points was considered as the thickness of lipid bilayer. (a) GQD7;
18
(b) GQD19; (C) GQD151; (d) GQD275. 13
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MSD (nm2)
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
1 GQD7 GQD19 GQD151 GQD275
0.1
0.01 50 1
55
60
65
70
75
Time /ns
2
Figure 6. The MSD (mean squared displacement) of lipid membrane in x-y plane as a
3
function of simulation time in different systems: GQD7 (black line), GQD19 (red
4
line), GQD151 (pink line) and GQD275 (blue line).
5
equal distance to the membrane surface and middle of lipid (z = -1.12 nm and 1.12
6
nm). Moreover, the simulation of system GQD7-H3 (36 GQD7 molecules with 256
7
POPC lipids) were extended to 200 ns. As shown in Figure 8a, multiple GQDs were
8
aggregated before the translocation of GQDs into lipid membrane during first 10 ns,
9
which is similar to the permeation of fullerene into POPC membrane [63]. After that,
10
the aggregates permeated into POPC membrane at 20 ns, as shown in Figure 8b. In
11
Figure 8c, one could found that most of GQDs were still aggregated with one big
12
cluster. It could be confirmed from the cluster analysis of GQDs, as plotted in Figure
13
9. However, different from the aggregates at 10 ns, most of GQDs in the aggregates at
14
110 ns tends to be parallel to the lipid membrane surface. It could be confirmed from
15
the analysis of angles between GQDs surface and x-y plane of lipid membrane, as
16
shown in Figure 10. From the data of Figure 10, the averaged angles are in the range
17
of 45º to 60º. Considering that the model of GQD7 is not rigid in our simulation, the
18
GQD7 tends to be parallel to the main chain of POPC molecules. At the same time,
19
with simulation extended, the size of biggest aggregate in system GQD7-H3
20
decreased from 33 at 50 ns to 10 at 200 ns. It indicates that after the permeation into 14
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lipid membrane, the aggregate of GQD7 tends to dissociate and disperse to the
2
position of energy minimum in both sides of POPC membrane. It could expect that all
3
GQD7 molecules would mono-dispersed in the POPC membrane with long enough
4
simulation time. These results reveal that high concentration GQD7 tends to permeate
5
into membrane by aggregates but mono-disperse in the membrane after permeation.
6
On the basis of the analysis of density of P atoms in the systems of GQD7-H3 and
7
GQD7-H4, as shown in Figure S4 (see Supporting Information), one could find that
8
the thickness of POPC membrane is about 3.84 nm in the system with 36 GQD7
9
molecules, and it is around 3.60 nm in the system with 48 GQD7 molecules. It
10
implicated that the structure of POPC membrane could be greatly affected by the
11
permeation of high concentration of GQDs. Our simulation results also demonstrated
12
that the diffusion coefficient of lipid membrane in x-y plane could also be affected by
13
high concentration of GQDs. As shown in Figure S5 (see Supporting Information), the
14
diffusion coefficient decreased from 8.2×10
15
molecules to 2.6×10 -7 cm2·s-1 in the system with 48 GQD7 molecules. It is similar to
16
the finding that the diffusion coefficient of lipid membrane could be affected by high
17
concentration membrane protein on lipid membrane [64].
-7
cm2·s-1 in the system with 36 GQD7
18 19
Figure 7. The final structures and distribution of GQDs in the lipid membrane at
20
different concentration after 100 ns simulation: (a) GQD7-H1; (b) GQD7-H2; (c)
21
GQD7-H3; (d) GQD7-H4. GQDs were represented by yellow vdW model, POPC
22
membrane were represented by line model, and the P atoms in membrane were 15
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represented by blue vdW model. Water molecules were not shown for clarity.
2 3
Figure 8. The aggregated structures and distribution of GQD7-H3 during the
4
simulation: (a) 10 ns; (b) 20 ns; (c) 60 ns; (d) 110 ns; (e) 150ns and (f) 200 ns. GQDs
5
were represented by yellow vdW model, POPC membrane were represented by line
6
model, and the P atoms in membrane were represented by blue vdW model. Water
7
molecules were not shown for clarity.
8 9 10
Figure 9. The number of cluster and the maxsize of cluster in GQD7-H3 as a function of simulation time.
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Averaged angle /º
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GQD7-H3
15 0 0
40
80 120 Time /ns
160
200
1 2 3
Figure 10. The angle distribution of GQDs in the lipid membrane during the simulation.
4
It is worth noting that the oxygen-containing functional groups of GQDs could
5
have different behaviors from pristine GQDs. Although they could not induce any
6
damage to the cell membrane, the oxygen-containing GQDs could result in
7
aggregation on surface of the organism and lead to its inactivation due to probable
8
deoxygenation by the media [65] or connection of the microorganisms onto the
9
oxygen groups [66]. Moreover, reactive oxygen species (ROS) generation plays an
10
important role in cytotoxicity issue. However, in classical MD simulation of
11
biological system, it is very difficult to simulate the forming and breaking of chemical
12
bonds, and this is due to the limitation of molecular mechanics based methods.
13
Therefore, the effect of ROS generation is not major concern in this study. In this
14
work we mainly focus on the structure, free energy and dynamics etc. of pristine
15
GQDs translating through membrane by MD simulation, trying to understand the
16
fundamental problems of pristine GQDs translating mechanism at the molecular level.
17
Nevertheless, we would focus on the mechanism of cellular uptake of GO in future
18
work, and try to understand the effect of ROS generation by utilization of both MD
19
simulation and quantum mechanics calculation.
20
4.
21
In summary, the potential cytotoxicity of GQDs was evaluated based on the size and
Conclusions
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concentration of GQDs by molecular dynamics simulations. In the 100 ns scale
2
simulation, GQDs with relative small size (GQD7, GQD19 and GQD61) could
3
permeate into the POPC membrane. The permeation of GQDs could affect the
4
thickness of POPC membrane, even the size of GQD is very small (GQD7). However,
5
the mechanical damage of POPC membrane was not observed in the permeation of
6
small size GQDs and absorption of GQDs with bigger size. The free energy
7
calculations further revealed that the free energy barrier could greatly change with the
8
change of size of GQDs. Under high concentration of GQD7 molecules, the GQDs
9
molecules rapidly aggregate in water but disaggregate after entering the membrane
10
interior. All of them tend to mono-disperse in the two side of POPC membrane but not
11
in the center of POPC membrane. High concentrations of GQDs induce changes in the
12
structure properties and diffusion properties of the lipid bilayer, and it may affect the
13
cell signal transduction. However, GQDs with small size are not large enough to
14
mechanically damage the membrane. Our results suggest that the cytotoxicity of
15
GQDs with small size is low and could be appropriate for biomedical application.
16
Acknowledgement
17
We acknowledge financial support by the National Natural Science Foundation of
18
China (Grant Nos. 21503186, 21403049, 21674032, 61602142), Zhejiang Provincial
19
Natural Science Foundation of China (Grant Nos. LY13F040006, LY14B030008,
20
LY15E030009), The Science and Technology Project of Zhejiang Province (No.
21
2014C33220).
22
Supporting Information Available
23
The potential of mean force of GQD151 translocating through POPC membrane,
24
MSD (mean squared displacement) of lipid membrane in x-y plane as a function of
25
simulation time in different systems in seven parallel simulations, the initial structure
26
of multiple GQDs on top of POPC membrane, the thickness and the MSD of lipid
27
membrane in two systems of GQD7-H3 and GQD7-H4. This material is available free
28
of charge via the internet at htpp://pubs.acs.org. 18
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Notes
2
The authors declare no competing financial interest.
3
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