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Ecotoxicology and Human Environmental Health
Predicting Relative Protein Affinity of Novel Per- and Polyfluoroalkyl Substances (PFASs) by An Efficient Molecular Dynamics Approach Weixiao Cheng, and Carla Ng Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.8b01268 • Publication Date (Web): 13 Jun 2018 Downloaded from http://pubs.acs.org on June 14, 2018
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Predicting Relative Protein Affinity of Novel Per- and Polyfluoroalkyl
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Substances (PFASs) by An Efficient Molecular Dynamics Approach
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Weixiao Cheng and Carla A. Ng*
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Department of Civil and Environmental Engineering, University of Pittsburgh, Pittsburgh,
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Pennsylvania 15261, USA
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* Address correspondence to: Carla A. Ng, Department of Civil & Environmental Engineering,
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University of Pittsburgh, 3700 O’Hara St, Pittsburgh, PA 15261. Tel.: 412-383-4075. Fax: 412-
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624-0135. E-mail:
[email protected] 9
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ABSTRACT
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With the phasing out of long-chain per- and polyfluoroalkyl substances (PFASs), production of a
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wide variety of alternative PFASs has increased to meet market demand. However, little is
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known about the bioaccumulation potential of these replacement compounds. Here, we
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developed a modeling workflow that combines molecular docking and molecular dynamics
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simulation techniques to estimate the relative binding affinity of a total of 15 legacy and
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replacement PFASs for human and rat liver-type fatty acid binding protein (hLFABP and
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rLFABP). The predicted results were compared with experimental data extracted from three
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different studies. There was good correlation between predicted free energies of binding and
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measured binding affinities, with correlation coefficients of 0.97, 0.79, and 0.96, respectively.
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With respect to replacement PFASs, our results suggest that EEA and ADONA are at least as
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strongly bound to rLFABP as perfluoroheptanoic acid (PFHpA), and as strongly bound to
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hLFABP as perfluorooctanoic acid (PFOA). For F-53 and F-53B, both have similar or stronger
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binding affinities than perfluorooctane sulfonate (PFOS). Given that interactions of PFASs with
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proteins (e.g., LFABPs) are important determinants of bioaccumulation potential in organisms,
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these alternatives could be as bioaccumulative as legacy PFASs, and are therefore not necessarily
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safer alternatives to long-chain PFASs.
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INTRODCUTION
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Per- and polyfluoroalkyl substances (PFASs) are a family of chemicals that have been widely
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used in a variety of industrial and consumer applications, from fire-fighting foams to food
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contact materials to apparel.1-6 It is estimated there are more than 3000 PFASs currently on the
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global market.7, 8 The characteristic carbon-fluorine bonds of PFASs make them extremely
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resistant to chemical and thermal degradation.9 The most commonly used PFASs, such as
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perfluorooctanoic acid (PFOA) and perfluorooctanesulfonic acid (PFOS) have been detected
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ubiquitously in the environment, wildlife and in humans.9-12 Experimental studies have indicated
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that long-chain PFASs (defined as C7 and longer perfluoroalkyl carboxylic acids (PFCAs) and
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C6 and longer perfluoroalkanesulfonic acids (PFSAs)) accumulate in the human body, with
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biological half-lives estimated to be several years.13 Moreover, toxicological studies in animals
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have found long-chain PFAS exposure causes toxic effects on reproduction and development,
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and on the nervous, endocrine, and immune systems.14-21
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The concern about their persistence, bioaccumulation and toxicity has led to a phasing out of the
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production of long-chain PFASs for the majority of uses.22-24 To take their place, manufacturers
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have started using alternatives that include shorter-chain homologues of PFOA and PFOS, as
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well as perfluoroether carboxylic acids (PFECAs) and perfluoroether sulfonic acids (PFESAs).23-
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identified in a recent review paper by Wang et al.23 These alternatives are increasingly detected
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in the environment and appear to accumulate in some aquatic organisms.27-30 However, the
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identity and frequency of use of many other alternative PFASs remains largely unknown, leading
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scientists to employ extensive non-target analytical techniques to puzzle out the structures
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present in complex environmental mixtures of PFAS.31-34 In addition, little is known about the
A number of those fluorinated alternatives used in industrial and consumer products have been
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potential impacts of alternative PFASs on humans and the environment; there is a particular lack
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of information on the bioaccumulation potential and toxicity of PFECAs and PFESAs.23
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Given the large number of PFASs and the scarce knowledge about their potential hazards, a rapid
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and reliable method to predict the behavior of these chemicals in the environment and organisms
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would be of great benefit. In our previous work, we developed mechanistic physiologically based
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pharmacokinetic (PBPK) models that explicitly consider binding with serum albumin, liver-type
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fatty acid binding protein (LFABP), and organic anion transporters to predict the
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bioaccumulation of PFCAs and PFSAs in different tissues of both fish and rat.35, 36 The success
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of our models demonstrated that the interaction of PFASs with proteins plays an essential role in
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determining their bioaccumulation potential in organisms, and thus could be used as a proxy for
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bioaccumulation assessment. However, the protein binding parameters used to build the models
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were limited to a small subset of PFASs (e.g., PFOA and PFOS).37
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To provide insights into the bioaccumulation potential of novel PFASs and generate more
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protein binding parameters for PBPK models, we proposed an in-silico method based on
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molecular dynamics (MD) simulations to predict PFAS-protein interactions. Specifically, we
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employed the molecular mechanics combined with Poisson-Boltzmann surface area (MM-
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PBSA) continuum solvation method to calculate binding affinities between ligands (i.e., PFASs)
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and proteins. As a starting point, we focused on LFABPs in this study because of they have high-
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quality 3-dimensional crystal structures available as well as experimental binding affinity data
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with different PFASs, which can be used for method evaluation. In the MM-PBSA method, the
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free energy of binding, ∆Gbind, for a chemical reaction: P + L = PL (P denotes the protein and L
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the ligand) is calculated from:
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= − −
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where the free energy of a state (i.e., GP, GL, and GPL) is derived from post-processing an
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ensemble of representative protein-ligand snapshots generated from MD simulations38. This
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method is more computationally efficient than rigorous alchemical perturbation methods (e.g.,
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free energy perturbation and thermodynamic integration methods), but more robust compared to
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molecular docking based on scoring functions.39 It is worth noting that MM-PBSA is a
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continuum solvation method and involves several thermodynamic approximations, which makes
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the absolute binding energies unreliable.39 However, many studies have demonstrated that MM-
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PBSA is able to successfully predict the relative binding affinities of ligands.38-43 The primary
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goal of this study is to rank the binding affinities of PFASs for LFABPs. Given the large number
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of PFASs potentially in commerce, an efficient method like MM-PBSA would be of great
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benefit.
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To test the performance of MM-PBSA for LFABP-PFAS interactions, we considered 15 PFASs
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with different functional head groups and fluorinated carbon chain lengths including 10 legacy
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PFASs (7 PFCAs: PFBA, PFPA, PFHxA, PFHpA, PFOA, PFNA, and 2m-PFOA; and 3 PFSAs:
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PFBS, PFHxS, and PFOS) and 5 alternatives (3 PFECAs: ADONA, GenX, and EEA; and 2
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PFESAs: F-53 and F-53B). The 2-dimensional structures of these chemicals are shown in the
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Supporting Information (SI) Figure S1. The binding affinities of these chemicals were evaluated
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for 2 different LFABPs (hLFABP and rLFABP for human and rat LFABP, respectively) which
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have been previously experimentally determined.44-46 For estimation of ∆Gbind, the following
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workflow was developed: the initial structure of the LFABP-PFAS complex was generated from
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molecular docking, a powerful tool to predict the binding mode between a protein and a ligand;47
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based on the complex structure, the MD simulation was then carried out; finally, MM-PBSA was
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used to calculate the ∆Gbind.
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MATERIALS AND METHODS
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LFABPs and Ligands. The 3-dimensional crystal structures were obtained from the Protein
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Data Bank (PDB, http://www.rcsb.org) for hLFABP (PDB code: 3STM48) and rLFABP (PDB
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code: 1LFO49). These structures were selected because of their high resolution and completeness
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of key residues, as discussed in our previous docking study of LFABP interaction with PFASs.50
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For PFAS ligands, the 3-dimensional structures of PFOA and PFOS were extracted from 5JID
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(PDB code for crystal structure of human transthyretin in complex with PFOA51) and 4E99 (PDB
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code for crystal structure of human serum albumin in complex with PFOS52), respectively. The
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other 3-dimensional structures were constructed from scratch using Avogadro (v1.2.0)53 and
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exported in pdb file format.
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Molecular Docking. All 15 PFAS ligands were docked to both hLFABP and rLFABP with
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Autodock Vina (v1.1.2),54 as described in our previous study.50 Briefly, both protein and ligand
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structures produced above were first preprocessed using AutoDock Tools (v1.5.6),55 the output
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pdbqt files were then used for docking. For each protein, the binding site boundaries were
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determined using the Grid menu in AutoDock Tools. According to the 3-dimensional structure of
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rLFABP, the binding cavity is a flattened rectangular box (roughly 13 × 9 × 4 Å).49 Since there
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are no available dimensions for hLFABP, we assumed it has a similar binding pocket as
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rLFABP. For rLFABP, although there are two ligands in the binding cavity of the experimental
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complex 1LFO, they are not independent of each other. That is, the secondary binding site (for
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the ligand in the solvent-accessible location) would not exist until the primary binding site (for
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the ligand buried inside the pocket) is filled. For hLFABP, only one ligand lies in the binding
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cavity (i.e., the one buried inside the pocket) of 3STM. For simplification, we only considered 7
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the primary binding site for both LFABPs. The ligands docked to the protein were assumed to be
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in their deprotonated forms, given their low pKa.7, 56, 57 The docking experiments output binding
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free energies and docking poses for each ligand-protein complex. The 3 binding modes with
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lowest energies (strongest associations) and distinct conformations were chosen as initial
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structures for MD simulations (Table S2 and S3). As a result, a total of 90 ligand-protein
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structures were generated.
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To assess the success of the docking experiment, we redocked the fatty acid ligands from the
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crystalized complexes (i.e., PDB code 3STM and 1LFO) back into their corresponding receptors
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and measured the root-mean-square deviation (RMSD) between the original crystal structure of
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the complex and the docked ligands using PyMol;58 the results (Table S1) showed that Autodock
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Vina can successfully predict the bound conformations of the ligands and LFABP with
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reasonable accuracy (RMSD < 2.5 Å). In addition, our previous study also demonstrated
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Autodock Vina can redock PFOS to human serum albumin with RMSD smaller than 2 Å.50
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MD Simulations. The system setup and simulation of the 90 ligand-protein complexes were
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performed with the Amber 14 suite.59 For system setup, the ff14SB force field60 was used for
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proteins and the general AMBER force field (GAFF)61 was used for ligands. The atomic partial
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charges of ligands were derived by AM1-BCC (AM1-bond charge correction), which is an
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efficient method to reproduce HF/6-31G* RESP charges.62 The whole complex system was
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explicitly solvated in a cubic box of TIP3P water molecules with a minimal distance of 12 Å
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from solute atoms to box edges. Na+ counterions were added to neutralize the systems. Periodic
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boundary conditions were employed for all simulations. Long-range electrostatic interactions
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were handled by the particle mesh Ewald (PME) method.63 The cutoff for nonbonded
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interactions was set to 8 Å. 8
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The simulation was carried out by the GPU accelerated pmemd module.64 First, the solvent
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molecules were subjected to 2000 steps of energy minimization, while the solute was constrained
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with the harmonic force constant of 500 kcal mol-1 Å-2 to eliminate nonphysical contact between
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solute and solvent. Next, the whole system was minimized without restraint for 1500 cycles.
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Then, the system was heated from 0 to 300 K in 20 ps at constant volume; a weak harmonic
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force constant of 10 kcal mol-1 Å-2 was added on the complex. After the heating phase, the
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density of the system was adjusted to 1 g/cm3 at constant pressure (1 bar) for 100 ps with
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restraint (10 kcal mol-1 Å-2) on the complex. Finally, the system was equilibrated at constant
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temperature (300 K) and pressure (1 bar) for 2 ns, the temperature was controlled by Langevin
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dynamics with a collision frequency of 2 ps-1,59 and the pressure was controlled by the isotropic
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position scaling protocol.59 Under the same condition as in the equilibration phase, the
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production run for the complex system was performed for 24 ns. The SHAKE bond length
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constraints were used to allow a larger timestep of 2 fs.65 The trajectories were sampled at a time
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interval of 16 ps to ensure each snapshot is statistically independent.39, 66 All simulations were
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run on an AMBER GPU Certified MD workstation (Exxact Corporation, CA, USA). The
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analysis of trajectories is provided in Figure S2.
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MM-PBSA Calculations. Free energy calculations were conducted using the MMPBSA.py
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program in Amber 14.38 Specifically, ∆Gbind between PFAS ligands and LFABPs were calculated
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as follows:
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= − −
(2)
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where GComplex, GLFABP, and GPFAS are the free energies of complex, LFABPs, and PFAS ligands,
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respectively. The free energy (G) of each state was estimated from the following sum:67-69
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= < + + + + − >
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where the brackets indicate an average over MD trajectories. Inside the brackets, the first three
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terms are molecular mechanical energy terms for bonded, electrostatic and van der Waals (vdw)
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interactions, respectively. Gpolar is the polar solvation free energy, which was calculated using the
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Poisson-Boltzmann (PB) implicit solvent method (which is a differential equation based on the
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Poisson continuum dielectric model and Boltzmann distribution for the ions in the solvent).70
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Gnonp is the nonpolar contribution, which was determined from a linear relation to solvent-
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accessible surface area. The last term is the absolute temperature (T) multiplied by the entropy
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(S), which was estimated by normal-mode analysis using the nmode program in Amber 14.59
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Specifically, the entropy change is calculated based on the change in three types of molecular
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motions (i.e., translational, rotational, and vibrational motion) of the system when a ligand binds
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to the receptor.71 For the thermodynamic variables to control the calculation, the recommended
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values for Amber 14 were employed (e.g., the external and internal dielectric constants are 80.0
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and 1.0, respectively).59 Finally, a single trajectory protocol (STP) approach was used for the free
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energy calculation.38 That is, the calculation of Gcomplex, GLFABP, and GPFAA were based on a
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single MD trajectory of the complex system, rather than on 3 trajectories generated from 3
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separate MD simulations. We employed the STP method based on the following considerations.
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First, since no study is available indicating that the binding of PFASs to LFABPs causes a
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significant conformation change, we assumed the proteins and ligands are comparable in the
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bound and unbound states. Second, all ligands in our study have similar chemical structures (i.e.,
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fluorinated carbon chain and functional head group). Finally, The STP method is less
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computationally expensive, and it also leads to a cancellation of the Ebond term in equation 3,
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which improves the precision of the results tremendously.38, 39
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As described in the MD simulation section, a total of 1500 independent snapshots (24 ns
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production divided by the timestep of 16 ps) were generated for an individual complex system
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(i.e., one of the 90 protein-ligand structures). These MD snapshots were evenly divided into 6
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groups (i.e., the first 4 ns or 250 snapshots is group one, the second 4 ns or 250 snapshots is
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group two and so forth, each group could be considered as an independent simulation phase). In
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each group, the binding free energy was calculated using equations 2 and 3 and then averaged
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over all snapshots; for the entropy calculation, because it is very computationally expensive,38
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only 10 snapshots in each group were considered for normal-mode analysis. Those 10 snapshots
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were collected as a subset of the total of 250 snapshots in each group based on an interval of 25
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snapshots. All MM-PBSA calculations were carried out on Bridges, part of the Pittsburgh
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Supercomputing Center (www.psc.edu).
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Free Energy Decomposition. To gain insights into the contributions to the binding free energy,
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energy decomposition on a per-residue basis was performed using the decomp program in Amber
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14.38 The per-residue decomposition scheme can decompose calculated free energies into
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specific residue contributions based on the Poisson-Boltzmann implicit solvent model.72, 73 The
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contribution of each residue in LFABP to the total free energy of the complex system was
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estimated.
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Data Analysis. The final binding free energies estimated by MM-PBSA were averaged over 6
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MD simulation phases and 3 binding modes for each LFABP-PFAS pair. The standard error of
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the mean was then calculated. Finally, the correlation analysis for predicted free energies versus
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carbon chain lengths and predicted free energies versus experimental binding affinities were
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conducted. For comparison and correlation analysis, the experimental data represented as
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equilibrium dissociation constant (Kd) with units of µM were translated into free energy of
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binding (∆Gbind, in kcal/mol) as follows:74, 75
= !"#
$ %&
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where R is gas constant (1.987 cal K-1 mol-1), T is temperature (which is assumed to be 300 K),
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and c0 is the standard state concentration (1 M).
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RESULTS
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Method Evaluation. To evaluate the effectiveness of the method, we conducted correlation
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analysis between the predicted ∆Gbind to the experimental ∆Gbind derived from three different
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studies (Figure 1).44-46 For hLFABP, MM-PBSA performance varied between different
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experimental studies. In comparison with the Sheng et al. study (Figure 1A),46 the correlation
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coefficient was excellent (r = 0.97), while the correlation analysis between computational results
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and the Zhang et al.45 study indicated a coefficient of 0.79 (Figure 1B), which is also acceptable.
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The binding free energies between rLFABP and PFAS ligands from the simulation correlate very
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well with experimental data (Figure 1C, r = 0.96). The results also show that the predicted
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absolute binding energies of PFASs are generally lower than corresponding experimental values.
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However, it should be emphasized that our study is primarily focused on the relative binding
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affinities of PFASs rather than their absolute binding strengths.
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Molecular Docking. The docking experiment was conducted mainly to predict the interaction
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between LFABP and PFAS to find potential binding modes (the binding affinities, which we
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Figure 1. Correlations between the average ∆Gbind calculated by MM-PBSA and the experimental values for (A)
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hLFABP from Sheng et al.,46 (B) hLFABP system from Zhang et al.,45 and (C) rLFABP from Woodcroft et al.,44
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Error bars indicate the standard error for predicted ∆Gbind.
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Figure 2. The interactions between hLFABP and PFAS ligands. The results were generated from molecular docking
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and plotted with Autodock Tools.55
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expected to be less accurate than via MMPBSA based on MD, were also estimated by the
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scoring function, as indicated in Table S1).47 The interaction structures for the best binding mode
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of each LFABP-PFAS complex are indicated in Figure 2, and Figures S3 and S4. As shown, the
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interactions between PFASs and the two LFABPs are substantially different. For hLFABP, the
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residues closely interacting with PFASs include ARG 122, SER 39, SER 124, PHE 50, ILE 109,
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ILE 41, and LEU 91 (a glossary for the residues is shown in Table S2); while for rLFABP, the
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close contact residues consist of ARG 122, TYR 120, MET 74, LEU 28, and TYR 54 (except for
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the rLFABP-PFBS interaction, where the close contact residues are ARG 122, SER 39, and SER
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124). With respect to hydrogen (H) bonding interactions (Table 1), all PFAS ligands formed H
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bonding with hLFABP, and most interactions occurred between ligands and residues of ARG
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122, SER 124, or SER 39. On the other hand, only a few instances of H bonding occurred
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between PFAS ligands and rLFABP, and the major residue participating in H bonding
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interactions is TYR 120.
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In addition, for both LFABPs, the predicted binding modes were similar among ligands with
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different functional head groups (i.e., carboxyl and sulfonate groups). The binding of alternative
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PFASs (which contain ether groups in their structures) and legacy PFASs (which contain no
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ether group) to LFABPs show little difference in terms of conformations. The only notable
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differences were observed for 2m-PFOA and GenX, both of which have branched structures. As
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indicated in Figure 2, the carboxyl group in 2m-PFOA and GenX mainly interacted with THR
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102 and SER 100, not ARG 122, SER 124 and SER 39, which were the major residues
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interacting with the head group of other PFASs.
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MM-PBSA. The average ∆Gbind calculated based on MM-PBSA and five energy components
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Table 1. The protein residues interacting with the PFAS ligands through H-bond and those having dominant energy
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contributions to ∆Gbind of each LFABP-PFAS complex (“-” indicates no H-bond).
Ligands PFBA PFPA PFHxA PFHpA PFOA PFNA PFBS PFHxS PFOS EEA GenX ADONA 2m-PFOA F-53 F-53B
H-bond interaction ARG 122, SER 124 ARG 122, SER 124 ARG 122, SER 124 ARG 122, SER 124 ARG 122, SER 124 ARG 122, SER 124 ARG 122, SER 39 ARG 122 ARG 122, SER 124 ARG 122, SER 39 THR 102 ARG 122, SER 124 SER 100 ARG 122, SER 124 ARG 122, SER 124
hLFABP Largest energy contribution ARG 122, SER 39, ILE 52 ARG 122, VAL 83, PHE 50 ARG 122, SER 39, SER 124 ARG 122, SER 39, ILE 52 ARG 122, SER 39, ILE 52 ARG 122, SER 39, ILE 52 ARG 122, SER 124, LEU 9 ARG 122, SER 124, SER 39 ARG 122, SER 124, ILE 52 ARG 122, SER 39, ASN 111 ARG 122, ASN 111, THR 73 ARG 122, SER 39, SER 124 ARG 122, SER 100, ASN 111 ARG 122, PHE 50, SER 39 ARG 122, SER 124, SER 39
H-bond interaction TYR 120 ARG 122, SER 39 TYR 120 TYR 120 TYR 120
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rLFABP Largest energy contribution SER 57, LYS 58, LYS 32 ARG 122, TYR 55, ILE 53 ARG 122, ILE 53, LYS 58 ARG 122, ILE 60, MET 74 ARG 122, TYR 55, ILE 60 ARG 122, ILE 60, ILE 53 ARG 122, SER 100, LEU 71 ARG 122, ASN 111, LEU 51 ARG 122, ILE 60, ILE 53 ARG 122, MET 74, ILE 60 ARG 122, MET 74, ILE 53 ARG 122, MET 74, TYR 55 ARG 122, TYR 120, ILE 60 ARG 122, SER 124, ILE 53 ARG 122, TYR 55, ILE 60
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PFAS pair are present in Tables S5 and S6. As indicated, the predicted free energies of ligands
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interacting with hLFABP and rLFABP range from -15.76 to -2.21 kcal/mol and from -11.26 to -
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3.74 kcal/mol, respectively. For each ligand, the predicted binding affinities with hLFABP are
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generally higher than that of rLFABP. For both LFABPs, the most significant contribution to the
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binding affinity is the electrostatic interaction, but this large change of electrostatic interaction
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upon binding is compensated by the polar solvation energy. The nonpolar solvation energies are
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very small and show a minor variation among ligands, thus having insignificant contribution to
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the ∆Gbind.
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Figure 3 shows the distribution of vdw, the sum of electrostatic and polar solvation energy, and
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entropy changes for each ligand-protein system. The sum of electrostatic and polar solvation
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energy is shown instead of the separate contributions, because both energy terms are strongly
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anti-correlated (r = -0.96). An obvious pattern was observed between vdw and carbon chain
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length: as carbon chain length increases, the vdw interaction energy decreases. The entropy term
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also indicated a similar trend, but the relationship is not as strong as vdw. With respect to
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electrostatic and polar solvation energy, wild fluctuations were observed in both LFABP
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systems. In particular, the sum of electrostatic and polar solvation energy for PFHxA bound to
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hLFABP is much lower compared with other ligands.
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A correlation analysis was conducted between predicted ∆Gbind and carbon chain length. As
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shown in Figure 4, for both LFABP systems, the ∆Gbind indicates negative relationships with
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carbon chain length. A strong correlation is observed for PFCAs versus rLFABP, and PFSAs
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versus both hLFABP and rLFABP, with correlation coefficients of -0.93, -1.0, and -0.72,
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respectively. The correlation for PFCAs versus hLFABP is relatively weak (r = -0.41), and the
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Figure 3. The distributions of the energy components of ∆Gbind including the sum of electrostatic interactions and
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polar solvation free energy (ELE + PB), van der Waals energy (vdw), and entropy changes upon binding. Pink
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represents the hLFABP system, while blue is the rLFABP system.
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Figure 4. The distribution of ∆Gbind (mean ± standard error) for different LFABP-PFAS complexes and the
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correlation analysis between ∆Gbind and carbon chain length. Pink represents hLFABP, and blue is rLFABP.
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major reason for this is due to the much lower predicted ∆Gbind for PFHxA, which can be further
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attributed to the much more favorable electrostatic interaction and polar solvation energy
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between PFHxA and hLFABP (Figure 3). In terms of predicted ∆Gbind for novel PFASs, 2
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PFESAs exhibit comparable or stronger binding affinities than PFOS for both LFABPs. The
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∆Gbind of EEA and ADONA are similar with PFNA when bound to hLFABP, and similar with
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PFHpA when bound to rLFABP, while the ∆Gbind of GenX is weaker compared to that of
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PFHxA, which has the same carbon number as GenX. Finally, 2m-PFOA has a comparable
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binding affinity with PFOA for both LFABPs.
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Free Energy Decomposition. The contribution of each residue in the LFABPs to the binding
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free energy was determined based on a per-residue decomposition scheme. For each residue, all
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free energy components in Equation 3 except entropy and nonpolar solvation energy (the
309
calculation of both terms were not available in the decomp program in Amber 14) were
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calculated (Tables S7 and S8). In each LFABP-PFAS complex system, the residues contributing
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most to the total free energy were determined (they account for 44 % to 85 % contribution
312
among all protein residues). As shown in Table 1, for hLFABP the residues such as ARG 122,
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SER 39, SER 124, and ILE 52 contribute significantly to ∆Gbind among all ligands, while for the
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rLFABP system, the residues showing strong contributions include ARG 122, ILE 60, ILE 53,
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TYR 55, and MET 74.
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DISCUSSION
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In this study, we developed a workflow combining molecular docking and MM-PBSA based on
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MD simulation techniques to predict the binding affinity of legacy and replacement PFASs for
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LFABPs. Experimental data from three different studies44-46 were used to evaluate this approach,
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and the performance is excellent for predicting PFAS binding affinity to rLFABP (r = 0.96). For
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hLFABP, predictions are different between Zhang et al.45 (r = 0.79) and Sheng et al.46 (r = 0.97).
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Both studies used fluorescence displacement assays to measure the dissociation constant.
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However, the binding affinity results (expressed as Kd values in unit of µM) of Sheng et al. were
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3 to 8 times higher than those of Zhang et al., which reveals the variation among different
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experimental studies. Given that available experimental datasets for LFABP-PFAS complex are
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very limited, we call for a broadening of experimental work on protein-PFAS interactions, which
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will make validation of the predicted results more reasonable. The available data in those three
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studies cover most traditional PFASs and two novel PFASs (i.e., GenX and F-53B). The
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satisfactory performance of the MM-PBSA method we used demonstrates its ability to rank the
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binding affinity of both legacy and alternative PFASs.
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This approach also provides mechanistic understanding of how the molecular structures of
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PFASs influence their protein binding behavior. For legacy PFASs (i.e., PFCAs and PFSAs), as
334
carbon chain length increases, the binding affinity also increases. Further analysis for each
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energy component of ∆Gbind showed that the strong relationship between carbon chain length and
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binding affinity was mainly caused by the vdw interaction energy and entropy change upon
337
binding, both of which indicate a close correlation with carbon chain length (Figure 3). The sum
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of electrostatic interaction and polar solvation energy terms, on the other hand, seem to fluctuate
339
around a certain value; the extremely low value for PFHxA bound to hLFABP may be because
340
the simulation time is not long enough for the hLFABP-PFHxA complex system. For most
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alternative PFASs, the addition of ether groups actually increased their binding affinities to
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LFABPs in comparison with their perfluoroalkyl counterparts with same carbon numbers.
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Binding free energy component analysis indicated that the largest influence of the “novel” PFAS
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composition is that introducing oxygen in their backbone increases their chain length. A longer
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chain length leads to greater vdw interactions with the proteins and more favorable entropy
346
changes (a larger molecule has greater molecular motions and thus higher entropy).71 Therefore,
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the introduction of ether groups in PFASs of a given initial chain length could lead to a stronger
348
binding free energy (Figure 4). It is interesting to note that distinct from other novel PFASs,
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GenX has a branched structure similar to 2m-PFOA, which imparts some special behavior. Due
350
to its structure, GenX (and 2m-PFOA) showed a significantly different binding mode from linear
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PFASs; instead of interacting with ARG or SER residues, the head group of GenX mainly
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interacted with THR residue through H-bonding (Figure 2). Furthermore, although inserting an
353
oxygen atom, the binding affinity of GenX was comparable with or even a little weaker than
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PFHxA (which has the same number of carbons as GenX). This implies that the binding affinity
355
is closely related to the backbone chain length, not the total carbon number including branches.
356
Our results suggest that EEA and ADONA bind at least as strongly to rLFABP as PFHpA, and to
357
hLFABP at least as strongly as PFOA. For F-53 and F-53B, both have similar or stronger
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binding affinities than PFOS. Based on our toxicokinetics model, these alternatives could be as
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bioaccumulative as legacy PFASs. In addition, toxicological studies of F-53B have shown a
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similar or stronger toxicity compared with PFOS.26, 46 The toxic effects (e.g., hepatotoxicity,
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genotoxicity, and developmental toxicity) of other alternatives were also reported and
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summarized by Wang et al.24 Taken together these bioaccumulation and toxicity results indicate
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that those substances are not necessarily safer alternatives to legacy PFASs, particularly when
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the backbone chain length is greater than 6.
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Implications for risk assessment of PFASs. Given the vast number of PFASs (more than 3000)
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potentially on the market and our limited resources (e.g., time and cost), it is not feasible to
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evaluate all PFASs individually through experiments.7 Therefore, in-silico methods based on
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computational biology hold great promise for the hazard and risk assessment of non-tested
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PFASs. The MM-PBSA approach based on MD simulation we illustrate here provides reliable
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relative protein binding affinity prediction for legacy and alternative PFASs, and thus can be
371
used for large-scale screening of protein-PFAS interactions. In addition, the binding affinities
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generated from this approach can be further used as parameters for our previous PBPK models,
373
which were developed by considering the interactions between PFASs and proteins including
374
serum albumin, LFABPs, and membrane transporters.35, 36 The combination of MD simulation
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and PBPK modeling will provide a flexible framework that can be used to evaluate the
376
bioaccumulation behaviors of non-tested PFASs and support their risk assessment.
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AUTHOR INFORMATION
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Corresponding Author
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*Address: 3700 O’Hara St, Pittsburgh, PA 15261 USA. Tel: 412-383-4075; Fax: 412-624-0135;
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E-mail:
[email protected].
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Notes
383
The authors declare no competing financial interest.
384
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ACKNOWLEDGMENTS
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The authors gratefully acknowledge the use of Bridges of the Pittsburgh Supercomputing Center
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in the completion of this work.
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