15
This paper is published as part of a PCCP themed issue series on biophysics and biophysical chemistry : Biomolecular Structures: From Isolated Molecules to Living Cells Guest Editors: Seong Keun Kim, Jean-Pierre Schermann and Taekjip Ha Editorial Biomolecular Structures: From Isolated Molecules to the Cell Crowded Medium Seong Keun Kim, Jean-Pierre Schermann, Taekjip Ha, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/c004156b Perspectives Theoretical spectroscopy of floppy peptides at room temperature. A DFTMD perspective: gas and aqueous phase Marie-Pierre Gaigeot, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924048a Communications Dynamics of heparan sulfate explored by neutron scattering Marion Jasnin, Lambert van Eijck, Michael Marek Koza, Judith Peters, Cédric Laguri, Hugues Lortat-Jacob and Giuseppe Zaccai, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b923878f Papers Infrared multiple photon dissociation spectroscopy of cationized methionine: effects of alkali-metal cation size on gas-phase conformation Damon R. Carl, Theresa E. Cooper, Jos Oomens, Jeff D. Steill and P. B. Armentrout, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b919039b Structure of the gas-phase glycine tripeptide Dimitrios Toroz and Tanja van Mourik, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b921897a Photodetachment of tryptophan anion: an optical probe of remote electron Isabelle Compagnon, Abdul-Rahman Allouche, Franck Bertorelle, Rodolphe Antoine and Philippe Dugourd, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b922514p A natural missing link between activated and downhill protein folding scenarios Feng Liu, Caroline Maynard, Gregory Scott, Artem Melnykov, Kathleen B. Hall and Martin Gruebele, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b925033f Vibrational signatures of metal-chelated monosaccharide epimers: gas-phase infrared spectroscopy of Rb + -tagged glucuronic and iduronic acid Emilio B. Cagmat, Jan Szczepanski, Wright L. Pearson, David H. Powell, John R. Eyler and Nick C. Polfer, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924027f Stepwise hydration and evaporation of adenosine monophosphate nucleotide anions: a multiscale theoretical study F. Calvo and J. Douady, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b923972c Reference MP2/CBS and CCSD(T) quantum-chemical calculations on stacked adenine dimers. Comparison with DFT-D, MP2.5, SCS(MI)-MP2, M06-2X, CBS(SCS-D) and force field descriptions Claudio A. Morgado, Petr Jure ka, Daniel Svozil, Pavel Hobza and Jiří Šponer, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924461a Photoelectron spectroscopy of homogeneous nucleic acid base dimer anions Yeon Jae Ko, Haopeng Wang, Rui Cao, Dunja Radisic, Soren N. Eustis, Sarah T. Stokes, Svetlana Lyapustina, Shan Xi Tian and Kit H. Bowen, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924950h Sugar–salt and sugar–salt–water complexes: structure and dynamics of glucose–KNO 3 –(H 2 O) n Madeleine Pincu, Brina Brauer, Robert Benny Gerber and Victoria Buch, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b925797g Hydration of nucleic acid bases: a Car–Parrinello molecular dynamics approach Al ona Furmanchuk, Olexandr Isayev, Oleg V. Shishkin, Leonid Gorb and Jerzy Leszczynski, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b923930h Conformations and vibrational spectra of a model tripeptide: change of secondary structure upon micro- solvation Hui Zhu, Martine Blom, Isabel Compagnon, Anouk M. Rijs, Santanu Roy, Gert von Helden and Burkhard Schmidt, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b926413b Peptide fragmentation by keV ion-induced dissociation Sadia Bari, Ronnie Hoekstra and Thomas Schlathölter, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924145k Structural, energetic and dynamical properties of sodiated oligoglycines: relevance of a polarizable force field David Semrouni, Gilles Ohanessian and Carine Clavaguéra, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924317h

This paper is published as part of a PCCP themed issue ...ich.vscht.cz/~svozil/pubs/adim.pdf · themed issue series on biophysics and biophysical chemistry: ... Isabelle Compagnon,

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This paper is published as part of a PCCP themed issue series on biophysics and biophysical chemistry: Biomolecular Structures: From Isolated Molecules to Living Cells Guest Editors: Seong Keun Kim,

Jean-Pierre Schermann and Taekjip Ha

Editorial

Biomolecular Structures: From Isolated Molecules to the Cell Crowded Medium Seong Keun Kim, Jean-Pierre Schermann, Taekjip Ha, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/c004156b

Perspectives

Theoretical spectroscopy of floppy peptides at room temperature. A DFTMD perspective: gas and aqueous phase Marie-Pierre Gaigeot, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924048a

Communications

Dynamics of heparan sulfate explored by neutron scattering Marion Jasnin, Lambert van Eijck, Michael Marek Koza, Judith Peters, Cédric Laguri, Hugues Lortat-Jacob and Giuseppe Zaccai, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b923878f

Papers

Infrared multiple photon dissociation spectroscopy of cationized methionine: effects of alkali-metal cation size on gas-phase conformation Damon R. Carl, Theresa E. Cooper, Jos Oomens, Jeff D. Steill and P. B. Armentrout, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b919039b

Structure of the gas-phase glycine tripeptide Dimitrios Toroz and Tanja van Mourik, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b921897a

Photodetachment of tryptophan anion: an optical probe of remote electron Isabelle Compagnon, Abdul-Rahman Allouche, Franck Bertorelle, Rodolphe Antoine and Philippe Dugourd, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b922514p

A natural missing link between activated and downhill protein folding scenarios Feng Liu, Caroline Maynard, Gregory Scott, Artem Melnykov, Kathleen B. Hall and Martin Gruebele, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b925033f

Vibrational signatures of metal-chelated monosaccharide epimers: gas-phase infrared spectroscopy of Rb+-tagged glucuronic and iduronic acid Emilio B. Cagmat, Jan Szczepanski, Wright L. Pearson, David H. Powell, John R. Eyler and Nick C. Polfer, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924027f

Stepwise hydration and evaporation of adenosine monophosphate nucleotide anions: a multiscale theoretical study F. Calvo and J. Douady, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b923972c

Reference MP2/CBS and CCSD(T) quantum-chemical calculations on stacked adenine dimers. Comparison with DFT-D, MP2.5, SCS(MI)-MP2, M06-2X, CBS(SCS-D) and force field descriptions Claudio A. Morgado, Petr Jure ka, Daniel Svozil, Pavel Hobza and Jiří Šponer, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924461a

Photoelectron spectroscopy of homogeneous nucleic acid base dimer anions Yeon Jae Ko, Haopeng Wang, Rui Cao, Dunja Radisic, Soren N. Eustis, Sarah T. Stokes, Svetlana Lyapustina, Shan Xi Tian and Kit H. Bowen, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924950h

Sugar–salt and sugar–salt–water complexes: structure and dynamics of glucose–KNO3–(H2O)n Madeleine Pincu, Brina Brauer, Robert Benny Gerber and Victoria Buch, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b925797g

Hydration of nucleic acid bases: a Car–Parrinello molecular dynamics approach Al ona Furmanchuk, Olexandr Isayev, Oleg V. Shishkin, Leonid Gorb and Jerzy Leszczynski, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b923930h

Conformations and vibrational spectra of a model tripeptide: change of secondary structure upon micro-solvation Hui Zhu, Martine Blom, Isabel Compagnon, Anouk M. Rijs, Santanu Roy, Gert von Helden and Burkhard Schmidt, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b926413b

Peptide fragmentation by keV ion-induced dissociation Sadia Bari, Ronnie Hoekstra and Thomas Schlathölter, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924145k

Structural, energetic and dynamical properties of sodiated oligoglycines: relevance of a polarizable force field David Semrouni, Gilles Ohanessian and Carine Clavaguéra, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924317h

Studying the stoichiometries of membrane proteins by mass spectrometry: microbial rhodopsins and a potassium ion channel Jan Hoffmann, Lubica Aslimovska, Christian Bamann, Clemens Glaubitz, Ernst Bamberg and Bernd Brutschy, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924630d

Sub-microsecond photodissociation pathways of gas phase adenosine 5 -monophosphate nucleotide ions G. Aravind, R. Antoine, B. Klærke, J. Lemoine, A. Racaud, D. B. Rahbek, J. Rajput, P. Dugourd and L. H. Andersen, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b921038e

DFT-MD and vibrational anharmonicities of a phosphorylated amino acid. Success and failure Alvaro Cimas and Marie-Pierre Gaigeot, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924025j

Infrared vibrational spectra as a structural probe of gaseous ions formed by caffeine and theophylline Richard A. Marta, Ronghu Wu, Kris R. Eldridge, Jonathan K. Martens and Terry B. McMahon, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b921102k

Laser spectroscopic study on (dibenzo-24-crown-8-ether)–water and –methanol complexes in supersonic jets Satoshi Kokubu, Ryoji Kusaka, Yoshiya Inokuchi, Takeharu Haino and Takayuki Ebata, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924822f

Macromolecular crowding induces polypeptide compaction and decreases folding cooperativity Douglas Tsao and Nikolay V. Dokholyan, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924236h

Electronic coupling between cytosine bases in DNA single strands and i-motifs revealed from synchrotron radiation circular dichroism experiments Anne I. S. Holm, Lisbeth M. Nielsen, Bern Kohler, Søren Vrønning Hoffmann and Steen Brøndsted Nielsen, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924076d

Photoionization of 2-pyridone and 2-hydroxypyridine J. C. Poully, J. P. Schermann, N. Nieuwjaer, F. Lecomte, G. Grégoire, C. Desfrançois, G. A. Garcia, L. Nahon, D. Nandi, L. Poisson and M. Hochlaf, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b923630a

Insulin dimer dissociation and unfolding revealed by amide I two-dimensional infrared spectroscopy Ziad Ganim, Kevin C. Jones and Andrei Tokmakoff, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b923515a

Six conformers of neutral aspartic acid identified in the gas phase M. Eugenia Sanz, Juan C. López and José L. Alonso, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b926520a

Binding a heparin derived disaccharide to defensin inspired peptides: insights to antimicrobial inhibition from gas-phase measurements Bryan J. McCullough, Jason M. Kalapothakis, Wutharath Chin, Karen Taylor, David J. Clarke, Hayden Eastwood, Dominic Campopiano, Derek MacMillan, Julia Dorin and Perdita E. Barran, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b923784d

Guanine–aspartic acid interactions probed with IR–UV resonance spectroscopy Bridgit O. Crews, Ali Abo-Riziq, Kristýna Pluhá ková, Patrina Thompson, Glake Hill, Pavel Hobza and Mattanjah S. de Vries, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b925340h

Investigations of the water clusters of the protected amino acid Ac-Phe-OMe by applying IR/UV double resonance spectroscopy: microsolvation of the backbone Holger Fricke, Kirsten Schwing, Andreas Gerlach, Claus Unterberg and Markus Gerhards, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/c000424c

Probing the specific interactions and structures of gas-phase vancomycin antibiotics with cell-wall precursor through IRMPD spectroscopy Jean Christophe Poully, Frédéric Lecomte, Nicolas Nieuwjaer, Bruno Manil, Jean Pierre Schermann, Charles Desfrançois, Florent Calvo and Gilles Grégoire, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b923787a

Two-dimensional network stability of nucleobases and amino acids on graphite under ambient conditions: adenine, L-serine and L-tyrosine Ilko Bald, Sigrid Weigelt, Xiaojing Ma, Pengyang Xie, Ramesh Subramani, Mingdong Dong, Chen Wang, Wael Mamdouh, Jianguo Wang and Flemming Besenbacher, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924098e

Importance of loop dynamics in the neocarzinostatin chromophore binding and release mechanisms Bing Wang and Kenneth M. Merz Jr., Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/b924951f

Structural diversity of dimers of the Alzheimer Amyloid-(25-35) peptide and polymorphism of the resulting fibrils Joan-Emma Shea, Andrew I. Jewett, Guanghong Wei, Phys. Chem. Chem. Phys., 2010 DOI: 10.1039/c000755m

Reference MP2/CBS and CCSD(T) quantum-chemical calculations

on stacked adenine dimers. Comparison with DFT-D, MP2.5,

SCS(MI)-MP2, M06-2X, CBS(SCS-D) and force field descriptionsw

Claudio A. Morgado,ab

Petr Jurecka,ac

Daniel Svozil,ad

Pavel Hobzaceand

Jirı Sponer*ae

Received 20th November 2009, Accepted 15th January 2010

First published as an Advance Article on the web 12th February 2010

DOI: 10.1039/b924461a

We have performed reference quantum-chemical calculations for about 130 structures of adenine dimers

in stacked conformations, with special attention given to dimers that are either vertically compressed

(parallel structures) or contain close interatomic contacts (non-parallel structures). Such geometries are

sampled during thermal fluctuations of nucleic acids and contribute to the local conformational

variability of these systems. Their theoretical characterization requires a good description of interaction

energies in the short-range repulsion region. The reference calculations have been performed with the

CBS(T) method, i.e., MP2/CBS computations corrected for higher-order electron-correlation effects using

the CCSD(T) method. These benchmark data have been used to examine the performance of the DFT-D,

SCS(MI)-MP2, MP2.5, M06-2X and CBS(SCS-D) quantum-mechanical methods, and of the AMBER

Cornell et al. force field. The present results, as well as those of our previous study on stacked uracil

dimers, confirm that the force field severely exaggerates the repulsion at short intermolecular distances.

This behavior complicates the use of the force field in scans of the stacking-energy dependence on local

conformational parameters in nucleic acids. Compared against the previous results obtained in the uracil

dimer study, the performance of DFT-D to describe stacking at short intermolecular distances has

worsened, showing for the adenine dimers a larger exaggeration of the repulsion, especially for structures

where the monomers are parallel to each other. Despite these deviations, the performance of DFT-D is

still reasonably good and this method provides, for example, a relatively inexpensive way to monitor

stacking energies along molecular dynamics trajectories. The best performers are the MP2.5,

SCS(MI)-MP2, and CBS(SCS-D) methods. In addition, the energy profiles given by the SCS(MI)-MP2

and CBS(SCS-D) methods are the ones that most closely resemble the CBS(T) data. Interestingly, the

performance of the SCS(MI)-MP2 method for stacked adenine dimers is better than for stacked uracil

dimers, indicating that the quality of the description may vary with the nucleobase composition. Even

though the SCS(MI)-MP2 method cannot match the speed of DFT-D, the results so far render it a

promising tool to study intrinsic interactions in systems of moderate size. In general, for most

applications all the QM methods tested here are of sufficient accuracy.

Introduction

It is well established that intermolecular interactions, like

hydrogen bonding and base stacking, contribute substantially

to the structure, dynamics and, ultimately, function of nucleic

acids. Despite years of studies, there are many aspects of these

interactions that are not satisfactorily understood. For example,

the sequence-dependence of the thermodynamics, structure

and dynamics of even small RNA motifs has not been fully

elucidated, a knowledge of which would contribute to the

prediction of RNA secondary and three-dimensional structures.1

In order to tackle such questions, experiments are starting to

be combined with theoretical methods in an effort to better

understand the relative magnitude and nature of the inter-

molecular interactions that take place in these biological

systems.2–5 The theoretical methods used for this purpose

comprise both calculations in the gas phase as well as in the

condensed-phase media.

The study of biologically relevant molecules in isolation is

often criticized due to the neglect of a real chemical environment.

However, studies of complexes of nucleic-acid bases in the gas

phase are important for several reasons. First, it is the only

way to unambiguously evaluate the nature and magnitude of

a Institute of Biophysics, Academy of Sciences of the Czech Republic,Kralovopolska 135, 612 65 Brno, Czech Republic.E-mail: [email protected]

bUniversidad Tecnica Federico Santa Marıa, Departamento deQuımica, Casilla 110-V, Valparaıso, Chile

c Department of Physical Chemistry, Palacky University, tr. Svobody26, 771 46, Olomouc, Czech Republic

d Institute of Chemical Technology, Laboratory of Informatics andChemistry, Technicka 3, 166 28, Prague, Czech Republic

e Institute of Organic Chemistry and Biochemistry, Academy ofSciences of the Czech Republic and Center of Biomolecules andComplex Molecular Systems, Flemingovo nam. 2, 166 10 Prague 6,Czech Republicw Electronic supplementary information (ESI) available: The studiedgeometries (xyz coordinates); additional technical details for thecomputational methods; interaction-energy Tables; plots of energygradients; plots of DFT-SAPT energy contributions. See DOI:10.1039/b924461a

3522 | Phys. Chem. Chem. Phys., 2010, 12, 3522–3534 This journal is �c the Owner Societies 2010

PAPER www.rsc.org/pccp | Physical Chemistry Chemical Physics

the interactions which are due to direct (intrinsic) forces.

Second, this knowledge is indispensable for a proper

parameterization of other theoretical methods such as force

fields, which can be used to study larger systems. Finally, the

description of intrinsic interactions is important for the

discrimination between intrinsic and externally imposed

properties. Experiments do not offer any unambiguous ways

to separate the intrinsic forces from the environmental effects.

The study of complexes of increasing size can then simulate the

transition from the isolated molecule to the condensed

medium, and the analysis of the differences between the gas- and

condensed-phase behavior can help in the identification of the

environmental influences on the building blocks of nucleic-acids.6

Also, gas-phase quantum-mechanical (QM) calculations can

be compared to gas-phase experiments, which allows for a

direct testing and calibration of the theory, thus increasing our

confidence on the latter. Along these lines, we have studied the

potential-energy surface (PES) of the adenine dimer in stacked

conformations with a set of QM and empirical methods.

The stacking of adenine bases can be seen in the majority of

nucleic-acid architectures, and definitely the largest variability of

geometries of adenine stacks can be found in ribosomes.7,8

The only experimental data on the stabilization energy of

nucleic-acid bases in vacuo can be found in the work of

Yanson et al.,9 who employed mass-field spectrometry to

measure the stabilization enthalpy of several complexes of

nucleic-acid bases. At the experimental conditions the partial

pressure of 9-methyladenine was not enough for the formation

of its dimer. Had these authors reported a stabilization

enthalpy for the 9-methyladenine dimer, the experimental

value would have had to be compared against the weighted

average of theoretical stabilization enthalpies of all populated

structures at the experimental conditions.10 Such populated

structures should be determined theoretically, since those

experiments did not reveal any structural information.

On the theoretical side, the stacking interactions between

the building blocks of biomacromolecules have been exten-

sively studied with QMmethods,11–35 and in several studies the

authors have reported interaction energies for stacked con-

formations of the adenine dimer, either as independent dimer

or as structural component of a DNA base-pair step.11–22 The

first electron-correlation characterization of a stacked

adenine dimer was reported by Sponer et al.11 using the

MP236/6-31G*(0.25)37,38 method. The main conclusion of

their study was that the stability of stacking comes from the

dispersion attraction, and that the electrostatic interactions

determine the orientation between the monomers. The study

demonstrated the applicability of the Coulombic term with

atom-center point charges to describe the electrostatic component

of base stacking. Reference calculations extrapolated to the

complete basis set (CBS) limit and including higher-order

electron-correlation effects using the CCSD(T)39,40 method

became available only recently and were reported, e.g., for

base stacking in B-DNA base-pair steps.13 Such calculations

are quantitatively more accurate than the MP2/6-31G*(0.25)

computations, however both methods reveal the same qualitative

picture of stacking. For examples of other relevant work

involving stacked adenine dimers, the reader is referred to

the references given above.

In the present work we report an analysis of interaction

energies in stacked adenine dimers, both in parallel and non-

parallel (tilted) geometries. The reference data are obtained

with the CBS(T)41–43 method and serve as a benchmark for

several other computational techniques: we have primarily

tested the AMBER44 force field, DFT-D,45 SCS(MI)-MP2,46

and the newly developed MP2.547 method. This portfolio of

methods includes the leading force field for nucleic acids, a fast

inexpensive DFT method with a specifically parameterized

empirical dispersion term, and two QM methods that are

assumed to be of almost comparable quality to the CBS(T)

technique. These methods were selected in order to represent a

broad set of techniques with varying computer requirements

and accuracy, to demonstrate the range of options currently

available for stacking calculations. After this initial testing was

completed, we carried out calculations with the M06-2X48 and

CBS(SCS-D) methods. The former represents an advanced

DFT method that does not utilize any empirical dispersion

term, while the latter is based on the SCS-CCSD49 method and

is a possible replacement for the CBS(T) method. Although it

has been shown that the AMBER force field provides a very

good description of stacking,11,13 molecular-mechanics (MM)

force fields are known to have limitations, and they should

always be subjected to critical evaluation against QM data in

order to establish their applicability. In a study of uracil

dimers in stacked conformations we have recently found that

the non-bonded empirical potential of the AMBER force field

severely exaggerates the repulsion at relatively short inter-

molecular distances, i.e., when close interatomic contacts

occur due to mutual inclination between the bases in the

stack.50 Regions of intermolecular contacts are linked to

interaction energy gradients, and the incorrect description of

these gradients might affect the outcome of molecular

dynamics (MD) simulations and potential energy scans carried

out with the force field. Even though in an MD simulation the

sampling of a large amount of degrees of freedom should ease

the impact of the incorrect description of the forces, some

conformations might be insufficiently populated in certain

cases. With the aim of further evaluating the AMBER non-

bonded potential we now study its performance to compute

stacking energies in adenine dimers, a system where the

monomers have a relatively low dipolar moment and where

the attractive part of the interaction energy is expected to be

dominated by dispersion interactions (included in the Lennard-

Jones term of the force field). In line with our previous work

we have also chosen to test the DFT-D and the SCS(MI)-MP2

methods. These methods gave a very good account of stacking

in uracil dimers albeit, mainly for DFT-D, the performance

for geometries with close interatomic contacts in tilted

geometries was not perfect.50 The recently developed MP2.5

method (not tested in our preceding work on the uracil dimer)

has also been selected for the benchmarking since the method

has been proposed as an accurate and computationally feasible

alternative to CCSD(T) or CBS(T) for the study of non-

covalent systems.47 The accuracy assessment of QM methods

is particularly relevant for studying local conformational

variations51–54 in B-DNA, which are essential for B-DNA

interactions with proteins and ligands. Since local variations

are associated with very subtle energy changes, the study of

This journal is �c the Owner Societies 2010 Phys. Chem. Chem. Phys., 2010, 12, 3522–3534 | 3523

these systems demands a very high level of accuracy in the

computation of interaction energies (mainly the dispersion/

repulsion balance), as well as a proper inclusion of solvation

effects.13 Therefore it would be very useful to have a method

capable of reaching CCSD(T) accuracy in any nucleic-acid

system but at a fraction of its computational cost. This would

allow the increase of the sampling and size of the studied

systems. Equipped with such a method, meticulous analyses of

the PES of nucleic-acid base complexes combined with MD

simulations and other computational techniques would help us

to shed light on the sequence dependence of nucleic-acid

structures.55–63

Local variations are frequently associated with interactions

involving non-parallel bases, where close contacts and local

unstacking can commonly be observed in the base-pair steps,

and such geometries have been deliberately included in the set

of structures studied in this work. Such geometries are typically

not included in reference QM calculations. It should be noted,

when compared to our preceding study on stacked uracil

dimers,50 that stacked adenine dimers show a considerably

larger effect of higher-order electron-correlation contributions

to base stacking (i.e., the correction when passing from the

MP2 to the CCSD(T) level). From this point of view the

present study is a significant extension of the earlier stacking

analysis of uracil dimers. We have also performed DFT-

SAPT64 energy decompositions for all of the structures with

the intention of gaining some insight into the nature of the

interaction.

Computational details

Geometries

The structures have been obtained as follows. First, an adenine

monomer is optimized using the RI-MP265–67 method along

with the cc-pVTZ68 basis set. Then, it is placed in the xy plane

(z = 0) with the center of mass coinciding with the origin. The

N9–H9 bond is parallel to the y-axis and is pointing to the

direction of negative y values, and the amino group is oriented

towards the direction of positive y values (Fig. 1). This first

monomer is always fixed, and the second monomer is initially

superimposed on the first one. Then the relative position of the

second monomer is determined via 6 independent parameters.

Firstly, three angles are set by applying rotational matrices

consecutively and in a counterclockwise manner: rotation

around the x axis (g), rotation around the y axis (a) and

rotation around the z axis (o). Then, the second monomer is

shifted along the x and y axes by the parameters Dx and Dy.Finally, the vertical distance is adjusted by Dz. In what

follows, we define Dz � r for the PES scans. Following this

procedure we obtain structures where r equals the distance

between the center of mass of the second monomer and the

xy plane.

The structures are grouped into two different sets, P and NP

(Fig. 2). The set P contains 9 different adenine dimers

(P1, P2,. . .,P9), in conformations where the planes of the rings

are parallel (P) to each other, whereas the set NP contains

3 different dimers (NP1, NP2, and NP3) in conformations in

which the monomers are not parallel (NP) to each other. The

geometry of these dimers can be described in terms of the

position of the amino group of the second monomer (in white

in Fig. 2) relative to a region in the first monomer (in gray in

Fig. 2). InNP1 the amino group is above the N9–H9 region, in

NP2 the amino group is over the C4–C5 region, and in NP3

the amino group is above the N3 edge. By varying a free

structural parameter while the rest are kept fixed, we have built

a potential-energy curve (PEC) for each dimer. This way we

have generated a subset of structures for each dimer, and these

subsets add up to a total of 131 distinct geometries. With one

exception (P9, for which we have scanned the twist angle in

increments of 301) we have determined the dependence of the

stacking energy on r for a fixed combination of the other

five geometrical parameters, scanning the r parameter in

increments of 0.1 A. For the vertical scans of the parallel

structures r ranges from 2.9 to 4.0 A, whereas for the non-

parallel ones the range goes from 3.6 to 4.5 A, except for NP1

for which r ranges from 3.5 to 4.4 A.

The three non-parallel dimers have been selected by visual

inspection of a number of a, g, o, Dx, and Dy combinations in

order to obtain three vertical scans with diverse close inter-

atomic contacts. There are of course many structures that

would be worthy of study, but given that the high-level

ab initio calculations on these systems are expensive, we have

limited the study of stacking to the structures described above.

The Cartesian coordinates of all structures are given in the

ESI.w

Interaction energies

The interaction energies have been calculated following the

supermolecular approach. According to this approach the

interaction energy DEAB of a stacked dimer is calculated as

the difference in electronic energy between the dimer and the

isolated monomers (see equation below).69,70 We have used

only rigid monomers, and therefore we do not consider the

energies associated with the deformation of the monomers. In

the case of the SCS(MI)-MP2, MP2.5 and CBS(T) methods,

all of the interaction energies have been corrected for the basis

set superposition error (BSSE) using the counterpoise71,72

(CP) technique. This correction is not applied within the

Fig. 1 Orientation of the first adenine monomer in the xy plane.

3524 | Phys. Chem. Chem. Phys., 2010, 12, 3522–3534 This journal is �c the Owner Societies 2010

DFT-D formalism as this method was parameterized against

BSSE-corrected data.45

DEAB = EAB � EA � EB

The supermolecular approach is applied for all of the methods

used in the present work, except for DFT-SAPT, where

the interaction energy is expressed as the sum of selected

perturbation contributions. In an intermolecular perturbation

theory like DFT-SAPT the BSSE occurs only in the dHF term.

Methods

The theoretical methods used in the present study are

described in the following. Additional technical details are

provided in the ESI.w

Fig. 2 Top and side views of the parallel and non-parallel structures of the adenine dimer, respectively. The first adenine monomer is shown in

gray. Some atoms have been labeled in order to aid in the visualization. The description of the structures is as follows: P1: untwisted undisplaced;

P2, P3: untwisted displaced; P4: antiparallel undisplaced; P5, P6, P7, P8: antiparallel displaced; P9: variation of twist at r = 3.3 A.

This journal is �c the Owner Societies 2010 Phys. Chem. Chem. Phys., 2010, 12, 3522–3534 | 3525

MP2/CBS calculations corrected by the CCSD(T) method

with a small basis set (abbreviated as CBS(T)). The MP2/CBS

and CCSD(T) calculations have been performed with the

Molpro73 2006.1 software package, applying the frozen-core

approximation. In the case of MP2, we have also applied the

density-fitting74,75 approximation. The Helgaker et al.76,77

extrapolation scheme has been used to extrapolate the

Hartree–Fock (HF) and the correlation energies. Herein we

have used the aug-cc-pVDZ - aug-cc-pVTZ extrapolation.

The correction for higher-order electron-correlation effects

(DCCSD(T)) has been computed with the cc-pVDZ basis set.

AMBER non-bonded empirical potential. The empirical-

potential calculations have been performed with a local code,

employing the van der Waals (vdW) and Coulombic terms of

the AMBER force field.44 The atom-centered point charges

were obtained by an electrostatic potential (ESP) fitting at the

MP2/aug-cc-pVDZ68,78 level of theory using the Merz–

Kollman79,80 approach as implemented in the Gaussian81 03

software package. The reasons why this level of theory has

been chosen for the derivation of point charges can be found

in the literature.50

DFT augmented with an empirical dispersion term (DFT-D).

The DFT-D calculations have been performed with the

TurboMole82 5.8 software package in combination with a

local code that computes the empirical dispersion correction,

following the approach developed by Jurecka et al.,45 who

parameterized the method by a fitting procedure against the

CCSD(T) interaction-energy data for the S2283 training set.

For the DFT part of the calculation we have used the

TPSS84/6-311++G(3df,3pd)37 level of theory and the RI

approximation,85–88 also known as density fitting. This level

of theory augmented with the dispersion correction will

hereafter be referred to as DFT-D. When discussing the

performance of the DFT-D method we refer exclusively to the

approach of Jurecka et al.,45 without claiming that the results

are valid for other methods that also combine DFT with an

empirical correction for dispersion interactions.12,17,89–97

SCS-MP2 for molecular interactions (SCS(MI)-MP2). The

SCS(MI)-MP246 calculations have been performed with the

Molpro73 2006.1 software package, applying the frozen-core

and density-fitting74,75 approximations. This method has also

been parameterized by a fitting procedure against the

CCSD(T) interaction-energy data for the S2283 training set.

Here we calculate the SCS(MI)-MP2 interaction energies using

the cc-pVDZ - cc-pVTZ extrapolation scheme.

DFT-symmetry adapted perturbation theory (DFT-SAPT).

The DFT-SAPT98–101 calculations have been performed with

the Molpro73 2006.1 software package. The decomposition has

been carried out using the LPBE0AC101 XC potential with the

pure ALDA kernel for both the static and dynamic response,

in combination with the aug-cc-pVDZ basis set. The

density-fitting101 approximation has also been used. The

ionization potential (IP) of the monomer and the energy of

the highest occupied molecular orbital (HOMO) have been

calculated at the PBE0102/aug-cc-pVDZ level of theory with

the Gaussian81 03 software package.

MP2/CBS plus MP3 corrections (MP2.5). The MP2/CBS

calculations have been performed with the Molpro73

2006.1 software package, applying the frozen-core and the

density-fitting74,75 approximations, whereas the calculations

needed for the third-order correction have been performed

with a recently developed module103 of the MOLCAS104

7 software package, taking advantage of the Cholesky

decomposition of the two-electron integrals.105 This correction

has been computed with the aug-cc-pVDZ basis set, and has

been damped by 50%.

Data analysis

The data have been analyzed in terms of root-mean-squared

(RMS) errors, maximum absolute deviations (MAX), and xy

plots. In the case of the plots we have plotted not only the

interaction energies but also their gradients. RMS errors are

calculated using the standard formula. For the calculation of

the MAX values we have defined a deviation as the difference

between the value obtained with a given method (AMBER,

DFT-D, SCS(MI)-MP2, or MP2.5) and the value obtained

with CBS(T), and the MAX value for a given dimer merely

corresponds to the absolute value of the largest deviation. We

have not included the DFT-SAPT method in this analysis

because of the relatively small basis set used in the energy

decompositions, which leads to underestimation of the

strength of the interaction in all cases. However, the basis

set used is enough to obtain qualitatively correct information

about the relative magnitude of the energy components. With

a larger basis set the DFT-SAPT method was shown to

provide very accurate total interaction energies in good

agreement with CCSD(T) data.101 All of the plots have

been generated with the Matplotlib106 graphics package in

combination with the SciPy107 and NumPy108 packages. The

interaction-energy data and the plots of interaction-energy

gradients and of DFT-SAPT energy decompositions are given

in the ESI.w

Results and discussion

Interaction energies and interaction-energy gradients for the

AMBER, DFT-D, SCS(MI)-MP2 and MP2.5 methods

The vertical scans of the parallel structures (P1–P8) show that

in general the QM methods systematically underestimate the

strength of the interaction, except for SCS(MI)-MP2, which

slightly overestimates it for the P2, P6 and P8 dimers. For all

of the tested QM methods the differences with respect to

the reference data increase as the intermolecular distance

decreases, and given the resolution used in the scans (0.1 A)

all of the methods predict the same optimal intermonomer

distance as CBS(T) does, except for DFT-D that overestimates

this parameter for P5 (see Fig. 3). Overall, the performance of

the QM methods is very good, as can be seen from Fig. 3 and

the RMS errors and MAX values reported in Table 1. The

SCS(MI)-MP2 method clearly stands out, producing inter-

action-energy curves with shapes that closely resemble those of

the corresponding CBS(T) ones, making this method the one

providing the most reliable energy gradients. Furthermore,

this method exhibits RMSD andMAX values of only 0.19 and

3526 | Phys. Chem. Chem. Phys., 2010, 12, 3522–3534 This journal is �c the Owner Societies 2010

0.65 kcal mol�1, respectively. MP2.5 also performs very

well, with RMSD values somewhat larger than those of

SCS(MI)-MP2 and energy profiles that deviate from the

CBS(T) ones to some degree. Among the QM methods

DFT-D exhibits the largest RMS errors (Table 1) and the

PECs generated with this method reveal that the interaction

energies at short intermolecular distances are being under-

estimated to a greater extent. Such underestimation could be

the consequence of short-range correlation effects that are

neither completely described by the density functional used,

nor compensated for by the empirical correction. However,

the RMS error of DFT-D for the parallel structures is

0.99 kcal mol�1, which is a reasonably good result. Note also

that DFT-D, among the tested QM methods, is definitely the

most economical one, being the only method that would be

applicable to really routine massive scans of potential-energy

surfaces of base stacking in B-DNA. Contrary to the good

performance shown by the QM methods, the AMBER force

field shows substantial deviations from the CBS(T) data,

giving PECs that overestimate the strength of the interaction

at long distances and underestimate it at short ones, with the

exception of P1, for which the method overestimates the

strength of the interaction energy in a wide range of inter-

molecular distances (3.2–4.0 A). The AMBER curves exhibit

an excessively steep slope in the short-range repulsion region,

overestimating the optimal intermonomer distance by about

0.1 A in several cases. The little overestimated stabilization at

larger distances does not pose any problem in computations

of base stacking. However, the substantially exaggerated

repulsion for short interatomic distances is significant and may

affect studies of local conformational variations significantly.

The most stable structure is P4 (antiparallel undisplaced) at

r= 3.3 A, with a CBS(T) stacking energy of�8.29 kcal mol�1.

The highest stability of this structure can easily be explained

by the large dispersion overlap combined with favorable

electrostatics, which is typical for antiparallel stacks.

The dependence of the stacking energy on twist at r= 3.3 A

(P9) is shown in Fig. 4. The DFT-D and MP2.5 methods

underestimate the interaction energy (the stabilization) across

the entire range of twist angles, whereas SCS(MI)-MP2

slightly underestimates it for angles approximately between

01 and 551. All of the QM methods show PECs with shapes

that more or less match that of the CBS(T) curve. Among

these methods SCS(MI)-MP2 is again the best performer, with

RMSD and MAX values of 0.10 and 0.20 kcal mol�1,

respectively. The AMBER force field mostly underestimates

the strength of the interaction, and the shape of its PEC

somewhat deviates from the shape of the CBS(T) one. On

the contrary, the twist-dependence of the stacking energy in

the uracil dimer shows that the force field is more stabilizing

than CBS(T),50 indicating that the force field does not perform

evenly across different nucleic-acid base complexes. However,

the effect is not dramatic. For the twist dependencies that do

not lead to close atomic contacts, the force field performance

is, considering its simplicity, quite amazing. It again justifies

the use of the ESP atom-centered point-charge model in the

description of base stacking and supports suggestions that

base stacking is the best approximated contribution in classical

nucleic-acid simulations.109,110 For the non-parallel structures

the situation is a little bit different from what has been found

for the parallel ones (Fig. 5). The SCS(MI)-MP2 and MP2.5

methods underestimate the strength of the interaction energy

for all of the dimers in this group, although the underestimation

is not very significant. These methods show a similar

performance in terms of RMS errors, and both give PECs

similar to the reference curve. DFT-D shows deviations from

the reference data that in average are larger than the deviations

seen for the other two QM methods. For the NP2 and NP3

dimers DFT-D overestimates the strength of the interaction at

long intermolecular distances and underestimates it at short

ones, and exaggerates the short-range repulsion to some

extent. Although not as good as in the case of the parallel

dimers, the performance of the SCS(MI)-MP2 method for the

non-parallel structures is still remarkable, with RMSD and

MAX values of 0.32 and 0.59 kcal mol�1, respectively. On the

force-field side the AMBER method exhibits the same

behavior previously seen for the parallel dimers, that is, the

method overestimates the strength of the interaction at long

intermolecular distances and underestimates it in the short-

range repulsion region, with energy gradients in the latter

region whose magnitudes are larger than those produced by

the CBS(T) reference method. Both the AMBER and the

tested QM methods agree with CBS(T) when predicting

the optimal intermolecular separation of the monomers, with

the only exception of DFT-D, which overestimates this

distance for NP2.

The dashed curves in Fig. 3–5 represent the stacking-energy

profiles calculated at the MP2/CBS level of theory. The

adenine dimer stacking stabilization energy would be seriously

overestimated without the inclusion of the DCCSD(T) correction.

Evidently, higher-order electron-correlation effects cannot be

neglected for aromatic stacking. Note that, contrary to the

previously analyzed uracil dimer,50 the adenine dimer is a

system with a very large DCCSD(T) correction. Thus, the close

match between the tested methods and the CBS(T) data is very

satisfactory and demonstrates that even the force field is better

suited for the description of stacking than pure MP2/CBS

computations. For the most stable antiparallel undisplaced

adenine dimer, the DCCSD(T) correction amounts to

3.01 kcal mol�1, while the correction was 1.14 kcal mol�1

for the most stable uracil dimer structure studied in our

previous work.

Very good performance is obtained with the SCS(MI)-MP2

method when calculating interaction-energy gradients. Look-

ing at the shapes of the PECs in Fig. 3 and 5 one can see that

the SCS(MI)-MP2 method is clearly the best performer, when

compared with the reference CBS(T) data. Thus, the method

should produce reliable interaction-energy differences for

studies of stacked conformations of adenine monomers. In

addition, this method has also been shown to give interaction-

energy gradients in good agreement with CBS(T) data for

several uracil dimers in stacked conformations, which makes

one believe that a similar performance might be observed

if different nucleic-acid base systems are studied with this

method. In the case of the AMBER force field the greatest

disagreements with the reference data occur at short inter-

molecular distances, where the force field exaggerates the

short-range repulsion. An example of this is given in Fig. 6,

This journal is �c the Owner Societies 2010 Phys. Chem. Chem. Phys., 2010, 12, 3522–3534 | 3527

where it can be seen that at r = 3.1 A (only 0.2 A away from

the CBS(T) minimum) the magnitude of the force-field energy

gradient is approximately three times larger than the CBS(T)

one. Note that for this distance the CBS(T) energy is about

�7.4 kcal mol�1, and the associated structure is indeed

accessible on the CBS(T) PEC. As we have explained in our

uracil dimer study, such geometries would be penalized when

performing a force-field calculation.50

The AMBER force field has also been used in the past to

study the potential and free energy surfaces of base pairs in the

gas phase, in order to estimate the populations of distinct

structures in eventual gas-phase experiments.111,112 Our study

Fig. 3 Potential energy curves for P1 through P8, calculated with the AMBER, DFT-D, SCS(MI)-MP2, MP2.5 and CBS(T) methods

(the MP2/CBS curve is also given).

3528 | Phys. Chem. Chem. Phys., 2010, 12, 3522–3534 This journal is �c the Owner Societies 2010

indicates that the force field is rather well suited for this

purpose, and we would recommend using its variant with

gas-phase atom-centered point charges, as used in the present

paper. (Note that condensed-phase simulations utilize HF

charges which overestimate the polarity of the monomers.)

On the other hand we have to exercise caution, because the

evaluation of populations of co-existing structures may be

very sensitive to even small errors in the energy description and

it is unlikely that the force field achieves a true quantitative

accuracy, especially in the case of co-existence of H-bonded,

T-shaped and stacked structures. It would be thus advisable to

combine force-field calculations with highest-quality QM

calculations for the key structures in their respective local

and global minima. It is usually assumed that the most

accurate contemporary gas-phase benchmark calculations

may have an accuracy of around 0.5 kcal mol�1 for the

individual structures. The force field certainly cannot achieve

such accuracy.

Performance of the M06-2X and CBS(SCS-D) methods

Obviously, the above-examined DFT-D, MP2.5 and

SCS(MI)-MP2 methods represent only a fraction of the

recently introduced techniques capable to describe well base

stacking. During the review process we finished testing two

additional techniques: M06-2X and CBS(SCS-D). The former

method is a hybrid meta exchange–correlation density

functional that does not require an additional empirical

dispersion term, and the latter method makes use of the

SCS-CCSD method to evaluate a DSCS-CCSD difference

(DSCS-CCSD=DEMP2 � DESCS-CCSD), which is then added

to the MP2/CBS energy. The CBS(SCS-D) method therefore

aims to offer a viable alternative for accurate calculations of

large systems when the CBS(T) method is already inapplicable.

In the present work the DSCS-CCSD difference has been

calculated with the cc-pVDZ basis set. The results of the

M06-2X and CBS(SCS-D) calculations are summarized in

Fig. S24–S35 in the ESI.w Both methods perform well, but

the latter is a much better performer. For the parallel

structures the RMS error and MAX value obtained with

CBS(SCS-D) are 0.31 and 0.68 kcal mol�1, respectively while

for the non-parallel structures these quantities amount to 0.20

and 0.41 kcal mol�1, respectively. In terms of RMS errors, for

the parallel structures the performance of SCS(MI)-MP2 is

better than that of CBS(SCS-D), but the converse is true in the

case of the non-parallel ones. Nevertheless, we would rank

both methods as highly accurate and entirely comparable to

each other. On the DFT side and also taking as performance

parameter the RMS error, DFT-D is better than M06-2X in

both cases. Fig. S24–S32 show that for the parallel structures

the shapes of the CBS(SCS-D) PECs would ensure very good

gradients at all intermolecular distances, whereas M06-2X

tends to produce good gradients at short and long inter-

molecular distances, while showing deviations from the CBS(T)

PECs when approaching the minimum. The M06-2X method

considerably underestimates the strength of the interaction at

long distances, and predicts in most cases a location of the

Table 1 Root-mean-squared deviations (RMSD, kcal mol�1) and maximum absolute deviations (MAX, kcal mol�1) of the AMBER, DFT-D,SCS(MI)-MP2, and MP2.5 interaction energies with respect to the CBS(T) reference dataa

Dimer

AMBER DFT-D SCS(MI)-MP2 MP2.5

RMSD MAX RMSD MAX RMSD MAX RMSD MAX

P1 1.82 5.34 0.92 2.14 0.27 0.65 0.52 0.85P2 2.31 6.67 1.03 2.49 0.07 0.16 0.46 0.71P3 2.69 7.63 0.88 2.07 0.10 0.13 0.60 0.98P4 3.97 11.07 1.20 2.64 0.04 0.06 0.65 1.06P5 2.42 7.05 1.21 2.61 0.21 0.30 0.70 1.20P6 1.70 4.72 0.94 2.06 0.17 0.37 0.44 0.68P7 2.16 6.28 0.79 1.68 0.32 0.53 0.61 1.01P8 2.35 6.86 0.83 1.96 0.12 0.21 0.42 0.76P9 0.65 1.22 0.69 0.92 0.10 0.20 0.61 0.69All Pb 2.51 11.07 0.99 2.64 0.19 0.65 0.56 1.20NP1 1.73 4.79 0.56 1.26 0.39 0.57 0.54 0.81NP2 2.02 5.66 0.64 1.40 0.19 0.25 0.26 0.34NP3 1.69 4.62 0.51 1.23 0.36 0.59 0.31 0.46All NP 1.82 5.66 0.58 1.40 0.32 0.59 0.39 0.81

a Some extreme MAX values are not visualized in the figures because they are out of the range of intermolecular distances in those figures. b ,P9

not included in the calculation of RMSD and MAX values, i.e., the values in this row correspond to the group of dimers for which vertical scans

have been performed.

Fig. 4 Potential energy curves for P9, calculated with the AMBER,

DFT-D, SCS(MI)-MP2, MP2.5 and CBS(T) methods (the MP2/CBS

curve is also given). The vertical separation between the monomers is

3.3 A.

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minimum that is 0.1 A too short when compared to the

CBS(T) data.

DFT-SAPT interaction-energy decompositions

The plots of the DFT-SAPT interaction-energy terms of all

dimers are given in Fig. S11–S23 in the ESI.w In all of the

structures the dispersion term is the most important stabilizing

contribution, followed by the electrostatic term, and in none of

them is the magnitude of the electrostatic interaction close to

that of the dispersion term, which can be explained in terms

of the lower polarity of adenine when compared to other

nucleic-acid bases. On the contrary, for dimers of more polar

bases like uracil there exist conformations for which the

difference between the magnitudes of the dispersion and

electrostatic terms is not as large, with the latter term also

providing a very significant part of the binding. The contributions

of the induction and dHF terms are also stabilizing in all cases,

but not as significant as the contributions of the dispersion and

electrostatic terms. The fact that the induction term is not

significant in this case should not be interpreted as polarization

effects not being important for nucleic-acid systems. Such

effects are relevant for macromolecular simulations in condensed

media, and many efforts are currently being devoted to the

development of polarizable force fields in order to perform

more realistic MD simulations.113 As is usual for vdW

complexes, the dispersion and exchange terms tend to cancel

each other in the region around the minimum.

Similar to what has been found for different stacked

conformations of the uracil dimer, in the case of stacked

adenine dimers the AMBER electrostatic component is in

many cases repulsive, and the magnitude of the repulsion

increases as the intermolecular distance decreases. This

description is physically incorrect and is in disagreement with

DFT-SAPT calculations which show that the electrostatic

component becomes more stabilizing at short intermolecular

separations (see for instance the electrostatic component of P1

in Fig. 7). This penetration effect is not taken into account in

the AMBER electrostatic term, but it is implicitly (effectively)

included in the vdW part of the force field,50 at least to some

extent. This is sufficient for overall reasonable balance of the

force field. For some structures like P6 one can see that the

force field is sometimes able to produce electrostatic-energy

profiles that show that the contribution is more stabilizing at

short intermolecular separations, but the distance dependence

of the AMBER electrostatic term is weak when compared

against the DFT-SAPT method. This of course does not mean

that the force field is able to capture penetration effects in

some situations. It is well known that most of the force fields

neglect such effects, but several approaches have been explored

in order to take them into account.114

One interesting feature of P1 is the behavior of its

DFT-SAPT electrostatic term, being the most repulsive, except

at very short intermolecular distances where this term becomes

Fig. 5 Potential energy curves for NP1, NP2 and NP3, calculated

with the AMBER, DFT-D, SCS(MI)-MP2, MP2.5 and CBS(T)

methods (the MP2/CBS curve is also given).

Fig. 6 Estimate of the interaction-energy gradient for P4, calculated

with the AMBER and CBS(T) methods.

3530 | Phys. Chem. Chem. Phys., 2010, 12, 3522–3534 This journal is �c the Owner Societies 2010

more stabilizing than in the case of P2 and P3 (see Fig. S23 in

the ESIw). This indicates that electrostatic penetration effects

are more favorable for the P1 geometry at very short

distances, compared to the other two geometries.

For the angular variations of the electrostatic energy one

can see for P9 in Fig. 7 that the AMBER energy profile

basically matches the DFT-SAPT one, giving in this case a

correct physical description. The horizontal twist scan of P9

shows that the electrostatic and exchange terms clearly depend

on the twist angle o, and that the dispersion term is basically

constant across the entire range of twist angles.

Summary and conclusions

We have studied about 130 structures of adenine dimers in

stacked conformations in order to assess the performance of

the AMBER force field and the DFT-D, SCS(MI)-MP2, and

MP2.5 QM methods against CBS(T) data. The PECs reported

herein can also serve as reference data for the examination

or parameterization of other theoretical methods. Specific

attention was paid to structures where short-range repulsion

is important, either due to vertical compression of the dimers

or the presence of close interatomic contacts due to mutual

tilting of the bases. Note that these geometries are not pure

artificial constructs, but they appear e.g. in time-averaged

nucleic-acid structures (mainly those with tilted bases) or are

commonly sampled due to thermal fluctuations. Such structures

are not included very often in reference datasets. The present

study thus brings a considerable extension of the currently

available reference data for base stacking.

Similar to what has been found in the study of stacked uracil

dimers,50 large differences between the CBS(T) method and

the AMBER force field can be seen in the PECs for geometries

where the dimers are either vertically compressed or contain

close interatomic contacts. The description of such geometries

suffers clearly from a sharply exaggerated repulsion by the

force field.

The reported differences in the interaction energies are large

enough to influence the description of the fine structure of

nucleic acids, like local conformational variations in B-DNA.

Perhaps, this exaggerated repulsion should not affect MD

simulations dramatically, since the sampling of all the other

degrees of freedom should effectively alleviate the effects of the

excessive repulsion. Nevertheless, thermal fluctuations of

stacked systems could be influenced to certain extent. On the

other hand, there are likely to be major artifacts in calculations

where the empirical force field is used for scanning the

dependence of stacking energy on local conformational

parameters that can lead to steric clashes, such as propeller

twist and base-pair roll. Note that such contacts are supposed

to be one of the very driving forces for the sequence dependence

of B-DNA geometry.51,53,115 The exaggerated repulsion of the

Fig. 7 Comparison between DFT-SAPT and AMBER electrostatic energies for P1, P3, P6, and P9.

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force field upon compression and formation of interatomic

contacts is primarily due to the simplicity of the van der Waals

Lennard-Jones part of the force field. Its repulsive r�12 term

may be too hard and could be eventually replaced by some

softer term, such as an exponential function.

Compared to previous results on stacked uracil dimers,50

the agreement between CBS(T) and DFT-D at short inter-

molecular distances has worsened. For the adenine dimers the

amplification of the repulsion shown by DFT-D is larger than

in the case of the uracil dimers. The largest deviations of the

DFT-D interaction energies occur for the parallel structures at

intermolecular distances below the optimum. Despite the

deviations of the DFT-D interaction-energy profile in the

short-range repulsion region the performance of the method

is still satisfactory (considering also the speed of DFT-D), with

RMS errors of 0.99 and 0.58 kcal mol�1 for the parallel and

non-parallel dimers, respectively. Given the reasonably good

performance of the method to describe stacking profiles in

different conformations of uracil and adenine dimers, we

believe that DFT-D could also perform well for other

nucleic-acid base complexes, in line with other tests

available in the literature. Since DFT-D calculations are not

computationally expensive, they could even be used for the

monitoring of stacking interactions along MD simulation

trajectories, which involves the computation of stacking

energies for massive amounts of structures.

The best results, as compared to the reference CBS(T)

calculations, were obtained with the MP2.5 and SCS(MI)-MP2

methods. Both methods yield RMS errors basically lower than

0.5 kcal mol�1 and the shape of their interaction-energy

profiles are more similar to the CBS(T) ones. The performance

of SCS(MI)-MP2 is remarkable, with RMS errors of 0.19 and

0.32 kcal mol�1 for the parallel and non-parallel dimers,

respectively. The MAX values did not exceed 0.65 kcal mol�1

and they were below 0.30 kcal mol�1 for many scans. In

addition, this method is the one providing the profiles that

most closely match the CBS(T) ones, which means that the

SCS(MI)-MP2 would also outperform the rest of the methods

when calculating differences of interaction energies. Interestingly,

however, the SCS(MI)-MP2 method was a little less satisfactory

for the stacked uracil dimers than for the stacked adenine

dimers. This indicates that the performance of the methods for

base stacking canmodestly vary with the nucleobase composition.

Thus, additional studies of some carefully chosen stacked

systems would improve our understanding of this phenomenon

(work in progress). Nevertheless, even the SCS(MI)-MP2

performance achieved earlier for the uracil dimer would be

excellent for the majority of possible applications. It should be

mentioned here that the SCS(MI)-MP2 method was para-

meterized against the interaction-energy data of the S22

dataset, which does not contain adenine dimers. The

SCS(MI)-MP2 method is more economical than MP2.5, at

least with the method, setup, codes and computers used in our

study. However, neither method is sufficiently fast for massive

computations and, therefore, they cannot compete with the

speed of DFT-D or the force field.

Considering all the results, the CBS(T) method will continue

to be the gold standard for QM calculations on nucleic-acid

systems. However, having an accurate method that would

allow routine calculations on base-pair steps is highly desirable.

It seems that the SCS(MI)-MP2 method would perform very

well in cases where more geometries and larger systems need to

be studied. Regarding SCS(MI)-MP2 and CBS(T) there is still

room for accuracy improvements because larger extrapolation

schemes can be used. For the former method we have used the

cc-pVDZ - cc-pVTZ extrapolation, while the use of the

cc-pVTZ - cc-pVQZ extrapolation could still bring some

quantitative changes. In the case of CBS(T), the performance

of the method can be improved by using larger basis sets for

the DCCSD(T) correction. For most applications, however,

the expected improvement would be insignificant. Concerning the

need for massive QM computations on stacking systems, the

DFT-D method seems to be suitable for the task. Finally,

although having several limitations, the force field remains a

choice for the qualitative description of base stacking forces.

Nevertheless, when assessing base stacking in nucleic acids all

QM methods have one disadvantage, which is not easy to

overcome. They include full gas-phase electrostatics and

do not allow its exclusion. Due to the presence of solvent

screening effects in nucleic acids, the energy contribution of

gas-phase electrostatics to the stacking stability is known to be

overwhelmingly suppressed.116 For example, a recent QM

investigation of twist-dependence of stacking in B-DNA

predicts optimal helical-twist values that are far away from

the observed range for most base-pair steps, scattered in a

wide range of values between less than 201 and almost 501.117

Thus, unless the studied system is appropriately solvated,

calculations with the pure vdW term of the force field (retaining

the dispersion overlap of the stacked bases and their steric

shape while switching off the electrostatics) may achieve better

relevance to assess the stability of experimental stacks than

calculations with full inclusion of electrostatics.

Acknowledgements

This work was supported by the Grant Agency of the

Academy of Sciences of the Czech Republic (grant

IAA400040802), Grant Agency of the Czech Republic

(203/09/1476), Ministry of Education of the Czech Republic

(LC06030, LC512, MSM6198959216 and MSM0021622413)

and Academy of Sciences of the Czech Republic

(AV0Z50040507, AV0Z50040702 and Z40550506). A portion

of the research described in this paper was carried out on the

high-performance computer system of the Environmental

Molecular Sciences Laboratory (EMSL), a scientific user

facility at the Pacific Northwest National Laboratory. The

support of Praemium Academiae, Academy of Sciences of the

Czech Republic, awarded to PH in 2007 is also acknowledged.

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