research papers
Neutron crystallographic REFMAC5 from the CCP4 suite
withaRandall Centre for Cell and Molecular Biophysics, Faculty of Life Sciences and Medicine, King's College London, London SE1 9RT, United Kingdom, bStructural Studies, MRC Laboratory of Molecular Biology, Francis Crick Avenue, Cambridge CB2 0QH, United Kingdom, and cDepartment of Biomedical Sciences, University of Padova, Via Ugo Bassi 58/B, 35131 Padova, Italy
*Correspondence e-mail: roberto.steiner@kcl.ac.uk, roberto.steiner@unipd.it, garib@mrc-lmb.cam.ac.uk
Hydrogen (H) atoms are abundant in macromolecules and often play critical roles in enzyme catalysis, ligand-recognition processes and protein–protein interactions. However, their direct visualization by diffraction techniques is challenging. Macromolecular X-ray crystallography affords the localization of only the most ordered H atoms at (sub-)atomic resolution (around 1.2 Å or higher). However, many H atoms of biochemical significance remain undetectable by this method. In contrast, neutron diffraction methods enable the visualization of most H atoms, typically in the form of deuterium (2H) atoms, at much more common resolution values (better than 2.5 Å). Thus, neutron crystallography, although technically demanding, is often the method of choice when direct information on protonation states is sought. REFMAC5 from the Collaborative Computational Project No. 4 (CCP4) is a program for the of macromolecular models against X-ray crystallographic and cryo-EM data. This contribution describes its extension to include the of structural models obtained from neutron crystallographic data. Stereochemical restraints with accurate bond distances between H atoms and their parent atom nuclei are now part of the CCP4 Monomer Library, the source of prior chemical information used in the One new feature for neutron data analysis in REFMAC5 is of the protium/deuterium (1H/2H) fraction. This parameter describes the relative 1H/2H contribution to neutron scattering for hydrogen isotopes. The newly developed REFMAC5 algorithms were tested by performing the (re-)refinement of several entries available in the PDB and of one novel structure (FutA) using either (i) neutron data only or (ii) neutron data supplemented by external restraints to a reference X-ray crystallographic structure. Re-refinement with REFMAC5 afforded models characterized by R-factor values that are consistent with, and in some cases better than, the originally deposited values. The use of external reference structure restraints during has been observed to be a valuable strategy, especially for structures at medium–low resolution.
Keywords: neutron macromolecular crystallography; crystallographic refinement; H atoms; REFMAC5; CCP4.
1. Introduction
Knowledge of protonation states and hydrogen (H) atom positions in macromolecules can be critical in helping to formulate functional hypotheses and, generally, in providing a more complete characterization of the biological processes under investigation. H atoms are responsible for the reversible protonation of active site residues involved in enzymatic reactions (Ahmed et al., 2007; Fisher et al., 2012; Wan et al., 2015). They are also necessary for the formation of hydrogen bonds that stabilize macromolecular structures, contributing to the establishment of biological interfaces (Engler et al., 2003; Niimura et al., 2004; Oksanen et al., 2017). Additionally, as H atoms are often involved in determining specificities in protein–ligand recognition processes, their identification and localization may help in the development and design of new therapeutics (Combs et al., 2020; Kovalevsky et al., 2020; Kneller et al., 2022).
The positions of many H atoms in macromolecules can be estimated using the coordinates of their parent atoms (those to which they are covalently bound) and known geometric properties (Sheldrick & Schneider, 1997). This is the case, for example, for amide H atoms in the protein backbone, for those bound to Cα atoms, for those attached to aromatic C atoms etc. However, many H atoms of biochemical interest, for example those on the side chains of histidines, protonated aspartates and glutamates, or those associated with multiple favourable positions (the hydroxyl groups of the amino acids serine, threonine and tyrosine), cannot be located on the basis of simple geometric considerations, but need to be determined experimentally (Fisher et al., 2009; Gardberg et al., 2010).
Although H atoms represent a large fraction of the total atomic content of macromolecules (∼50% and ∼35% of protein and nucleic acid atoms, respectively) their experimental visualization is not straightforward. In X-ray macromolecular crystallography they contribute little to the total scattering, thus even at (sub-)atomic resolution (<1.2 Å) only a fraction of all H atoms are typically observed in electron density maps (Howard et al., 2004; Petrova & Podjarny, 2004). For instance, in the case of the 0.85 Å resolution room-temperature X-ray structure of crambin, less than 50% of all H atoms could be identified (Chen et al., 2012). These tend to be the most ordered ones, which are seldom interesting from a functional viewpoint (Fig. 1a). At comparable resolution, H atoms can be expected to be more visible in cryogenic-sample (cryo-EM) maps than in electron density maps due to the nature of the electrostatic potential (Clabbers & Abrahams, 2018; Maki-Yonekura et al., 2023). Yamashita et al. (2021) analysed H atom density from X-ray crystallographic and cryo-EM single-particle analysis (SPA) data for apoferritin structures deposited in the PDB (Berman et al., 2000) and EMDB (Lawson et al., 2016), highlighting that even at 2.0 Å resolution it is possible to see some H atoms in cryo-EM maps. For extremely well-behaved samples, the recent `resolution revolution' in cryo-EM SPA has allowed atomic resolution to be achieved (Nakane et al., 2020; Yip et al., 2020). In the structure of apoferritin at 1.2 Å resolution, most H atoms (approximately 70%) are easily discernible (Fig. 1b). However, a recent microcrystal electron diffraction (microED) experiment on triclinic lysozyme reported at subatomic resolution only allowed the identification of 35% of H atoms (Clabbers et al., 2022).
Neutron macromolecular crystallography is a powerful technique that allows the direct visualization of H atoms at more conventional resolutions (Blakeley & Podjarny, 2018). In contrast to X-rays, which interact with atomic electron clouds, neutrons are scattered by nuclei (Fermi & Marshall, 1947). Atoms that are abundant in macromolecules typically possess positive neutron scattering lengths (0.665 × 10−12, 0.936 × 10−12 and 0.581 × 10−12 cm for C, N and O, respectively) that contribute favourably to the signal-to-noise (S/N) ratio of Bragg peaks. Although the scattering length of the common protium isotope (1H; note that in this article we use the conventional 1H and 2H notation to indicate protium and deuterium isotopes, respectively, whilst we use H when referring to hydrogen atoms in general) is small and negative (−0.374 × 10−12 cm), its replacement with the heavier deuterium isotope 2H (scattering length 0.667 × 10−12 cm) makes them readily visible in neutron diffraction maps at 2.0–2.5 Å resolution or better (Fig. 1c). Another important advantage of neutron diffraction for is the absence of global and specific radiation-induced damage, which can be a serious limitation when using X-ray or electron sources (Baker & Rubinstein, 2010; Garman, 2010).
Crystallographic ). Various protocols are applied to maximize the agreement between the diffraction data and model parameters, which typically include atomic coordinates, atomic displacement parameters (ADPs) and occupancy values (Shabalin et al., 2018). of macromolecular models using neutron diffraction data can currently be carried out using packages initially developed for X-ray crystallographic and modified to include neutron scattering lengths and the ability to deal with the of individual H atom positions. They include the nCNS patch (Adams et al., 2009), which is an extension of the Crystallography and NMR System (CNS) package (Brünger et al., 1998), and SHELXL2013 (Gruene et al., 2014). SHELXL2013 is the most recent version of the SHELXL program originally developed for small molecules and later adapted to macromolecules (Sheldrick, 2015). Another widely used package for neutron is phenix.refine (Afonine et al., 2012), which is distributed as a part of the Phenix suite (Liebschner et al., 2019). This program also includes the option of performing joint neutron/X-ray a concept first introduced in the field of small-molecule crystallography (Coppens et al., 1981) and later applied to macromolecules with its nCNS implementation. Although effective joint neutron/X-ray ideally requires the two data sets to be collected from the same crystal under the same conditions, it has the great advantage of increasing the available experimental data, thus compensating for the increased number of parameters arising from the explicit addition of H atoms to the model.
is one of the final steps in the process of solving a macromolecular structure by diffraction methods (Tronrud, 2004Here, we describe an extension of the crystallographic REFMAC5 (Murshudov et al., 2011) from the CCP4 suite (Agirre et al., 2023) for the of macromolecular models using neutron crystallographic data. Our implementation introduces a new parameter, dubbed the `deuterium fraction', representing the 1H/2H fraction that is refined during the optimization procedure. It also allows the effective use of stereochemical restraints from high-resolution reference structures, if available. We have tested REFMAC5 (version 5.8.0415) for the of neutron models using 1H/2H fraction parameters for selected or all H atoms together with restraints to a high-resolution known X-ray reference structure. Our evaluation involved the re-refinement of 97 PDB entries and one novel structure (FutA). The results of the process are discussed in this study.
package2. Methodology and results
2.1. Reassessment of X—H restraint distances for macromolecular refinement
Macromolecular crystallographic ; Diamond, 1971; Jack & Levitt, 1978; Konnert & Hendrickson, 1980). Much of the available prior chemical knowledge used in macromolecular crystallographic derives from high-resolution small-molecule X-ray diffraction experiments and the corresponding structures deposited in databases such as the Cambridge Structural Database (CSD; Groom et al., 2016) and the Crystallography Open Database (COD; Gražulis et al., 2012). The values of X—H (where X is a non-H `parent' atom) bond lengths derived from X-ray diffraction experiments reflect the relative positions of the atomic electron clouds. However, the distances between H nuclei and their parent atoms are longer than those between the electron clouds. This is because the valence electron density for H atoms is shifted towards their parent atoms (Coppens, 1997). Thus, to properly model and refine macromolecular models against neutron diffraction data, bond-distance information should take this into account.
takes advantage of prior chemical knowledge. Information on `ideal' bond lengths, bond angles and other chemical properties are incorporated into the target function and used in as subsidiary conditions to improve the model parameters (Waser, 1963In addition to X-ray crystallographic structures, the CSD also contains a limited set of small-molecule structures determined by neutron crystallography. Neutron entries in the CSD have almost doubled in recent years, from 1213 in 2009 to 2362 (1452 organic and 910 metal–organic compounds) in 2021. An analysis of X—H bond lengths using the 2009 CSD neutron database was reported by Allen & Bruno (2010) that reassessed information derived from the limited earlier data of the late 1980s and early 1990s (Allen et al., 1987, 1992; Orpen et al., 1989). We took advantage of the recent enrichment in neutron structures in the CSD and re-evaluated X—H bond-length values. We employed the same approach as Allen & Bruno (2010) by selecting nonpolymeric organic compounds without disorder and with R factors ≤ 0.075 (647 entries). Entries derived from powder diffraction data were excluded. Neutron entries were retrieved using ConQuest (Bruno et al., 2002) and mean, median and standard deviation values for the X—H bond-length distributions were estimated using Mercury (Macrae et al., 2020). O—H and N—H bond lengths were estimated by removing groups involved in very short hydrogen bonds, as reported by Allen & Bruno (2010).
In an orthogonal approach, we also derived X—H nuclear distances from quantum-mechanics (QM) calculations. Initially, the stereochemical restraints generator AceDRG (Long et al., 2017) was employed to provide initial coordinates for 2652 molecules constituted of twenty or fewer atoms selected from DrugBank (Wishart et al., 2018). The cutoff value on atom numbers was chosen to ensure computational efficiency while providing a pool size comparable to that of CSD entries. For geometry optimization, density functional theory (DFT) calculations were carried out with the self-consistent field wavefunction of restricted Hartree–Fock type as implemented in GAMESS-US (Schmidt et al., 1993). The hybrid generalized gradient approximation functional, B3LYP, was used with the (6-311++G**) basis set that includes both polarization and diffuse functions. The solvent effect was calculated using the polarizable continuum model with water as solvent. More than 70% of the calculations ran successfully, producing optimized coordinates for 1874 out of 2652 molecules. We did not perform a detailed analysis of calculations that ended prematurely.
Table 1 summarizes nuclear bond distances for the most common X—H bond classes. It also provides the values as reported by Allen & Bruno (2010) for reference. Overall, the recent nuclear bond distances derived from the CSD in 2021 are fully consistent with those previously derived in 2009. Nuclear distances obtained from theoretical calculations are also consistent with the experimentally derived values. The AceDRG data table has been updated to use the median (m) and standard deviation (σ) values for all X—H nuclear distances from the CSD 2021 data (Fig. 2a).
2.2. Inclusion of X—H nuclear distances in the CCP4 Monomer Library (CCP4-ML)
The CCP4-ML, also referred to as the REFMAC5 dictionary (Vagin et al., 2004), currently contains close to 35 300 entries for all standard and most nonstandard amino acids, and various ligands. Each entry, identified as a monomer, possesses a unique code and provides stereochemical information about the constituent atoms, bond distances, bond angles and torsion angles as well as stereochemical centres and planes. Statistics for these geometric parameters have been generated by AceDRG using data from the COD. In addition, the CCP4-ML also contains more than 100 descriptors that specify covalent linkages between monomers and associated chemical modifications. The latter define all of the chemical and geometric changes that occur to monomers following chemical reactions (for example removal of one of the O atoms in peptide-link formation). Covalent links refer to covalent interactions between monomers (for example, peptide links, sugar-peptide links, DNA/RNA links; Nicholls, Joosten et al., 2021; Nicholls, Wojdyr et al., 2021).
The CCP4-ML has recently been updated to contain X—H nuclear distances (orange in Fig. 2b) as _chem_comp_bond.value_dist_nucleus and _chem_comp_bond.value_dist_nucleus_esd in addition to the distances between electron clouds (light blue in Fig. 2b) (Nicholls, Wojdyr et al., 2021). X—H nuclear distances can now also be used to refine models from electron-derived experiments (cryo-EM SPA and microED), as both H atom `positions' (electron and nucleus) contribute to the scattering.
2.3. CCP4 implementation of neutron macromolecular crystallographic refinement
2.3.1. `Deuterium fraction' parametrization
Neutron crystallographic experiments on macromolecules are typically carried out on 1H/2H-exchanged crystals to maximize the S/N ratio (Kossiakoff, 1984). This can be performed by replacing exchangeable 1H atoms with 2H by soaking macromolecular crystals in deuterated media (Niimura & Podjarny, 2011). Alternatively, perdeuteration, which replaces all H atoms with 2H, can be carried out at the protein-production stage by overexpressing the protein(s) of interest in Escherichia coli or yeast strains in heavy water-based medium supplied with a perdeuterated carbon source such as glycerol. Protein perdeuteration is a more effective method of improving the S/N ratio as it dramatically lowers the incoherent background while enhancing the coherent scattering signal (Shu et al., 2000; Fisher et al., 2014). In addition, it avoids map-cancellation issues due to the negative scattering length of protium (Blakeley & Podjarny, 2018; Logan, 2020). Currently, most neutron entries in the PDB (157 out of 213) reflect experiments carried out on partially deuterated samples, as 1H/2H exchange is simpler and less expensive than perdeuteration. However, the establishment of dedicated deuteration facilities and advanced experimental protocols have made perdeuteration more accessible to users (Meilleur et al., 2009; Budayova-Spano et al., 2020; Pierce et al., 2020).
In the REFMAC5, we have introduced a new quantity that represents the deuterium fraction for individual H atoms. This method is similar to the `deuterium saturation' implemented in SHELXL (Gruene et al., 2014). In this parametrization, protium 1H and deuterium 2H isotopes at each H position are not considered as separate entities. Instead, H atoms are represented by a unique set of coordinates that are associated with their isotope fraction, which is optimized during the minimization of the target function. The scattering factor for the 1H/2H mixture is calculated using
procedure implemented inwhere fi(s) is the total contribution of protium and deuterium isotopes to the scattering factor of the ith H atom, s is the Fourier space vector, mi is the deuterium fraction parameter, which is an adjustable parameter, and bH and bD are the neutron scattering lengths of the 1H and 2H isotopes, respectively. Neutron scattering lengths are tabulated in the CCP4 atomsf_neutron library, retrieved from https://www.ncnr.nist.gov/resources/n-lengths/list.html (Sears, 1992). The refined output model in mmCIF format contains only H atoms (no 1H/2H or 2H sites) and a new _atom_site.ccp4_deuterium_fraction column representing the value of the deuterium fraction for each of the H atoms in the model. Users have the option to refine deuterium fraction parameters for either only polar or all H atoms. This method simplifies the model output as there is no 1H/2H duplication for the same set of coordinates, for example, when alternative conformations are introduced into the structure (Figs. 3a and 3b). The presence of only `generalized' H atoms with their corresponding deuterium fraction parameter also reduces the risk of bookkeeping errors. In the deuterium fraction representation, all 2H atoms are converted to H atoms and their presence is indicated by their corresponding deuterium fractions (Figs. 3c and 3d). We note that this new item can only be added to mmCIF files, which is now the model deposition standard. For PDB files that have fixed-column format, 1H and 2H are present at each H position and the deuterium fraction is indicated in the occupancy column.
2.3.2. Reference structure restraints
Neutron macromolecular crystallographic data often suffer from limited completeness and high resolution is not always achievable. Therefore, a useful strategy to increase the data-to-parameter ratio in nCNS and is available within phenix.refine in the Phenix suite, has been employed for the of several macromolecular structures (Liebschner et al., 2018).
is that of joint neutron/X-ray provided that an isomorphous X-ray data set is available. This approach, which was originally implemented inNeutron diffraction data sets are often of poorer quality compared with X-ray data. The low
of available neutron beams requires either large crystals or very long exposure times for smaller crystals to obtain measurable diffraction data. Consequently, neutron data sets often have low completeness due to the limited data-collection time available on neutron crystallographic instruments. Additionally, the of H atoms can lead to low S/N ratios.Combining two sources of information, X-ray and neutron, can potentially mitigate some of the challenges when refining models against neutron data alone. The current joint et al., 2010; Liebschner et al., 2020). To satisfy the of the target function, the X-ray and neutron crystals should be isomorphous and ideally the data should be collected under the same conditions. This, however, cannot always be accomplished.
method uses a combined target function to optimize a single atomic model simultaneously against two data sets (X-ray and neutron; AfonineAny differences in the underlying structures of macromolecules analysed using different experimental methods can cause problems and require special consideration. This has been observed, for example, in the joint et al., 2018). Joint can be useful in identifying discrepancies between structures obtained under different experimental conditions. However, if attempting to achieve a single model, it is important to ensure that any approach involving the co-utilization of data from different experimental sources does not suffer from excessive bias due to fundamental structural differences. Therefore, there is a preference to avoid joint in cases where other strategies to stabilize neutron exist.
of macromolecular models against X-ray and NMR data (KovalevskiyOne such strategy is to utilize structural information from homologous X-ray models via the use of external restraints. Such restraints have been useful in the et al., 2012; Nicholls et al., 2012; Smart et al., 2012; Schröder et al., 2014; Sheldrick, 2015; van Beusekom et al., 2018) and cryo-EM (Afonine et al., 2018; Nicholls et al., 2018) structures. This approach is robust to structural differences between the target and reference models by employing an anharmonic penalty function, which avoids pulling the model into conformations that are not supported by the data.
of low-resolution X-ray (HeaddThe purpose of external restraints is twofold. Firstly, to inject prior structural information: the target (neutron) model is pulled towards the conformation adopted by the reference (X-ray) structure, which helps to improve the model stereochemistry/geometry. Secondly, to increase the effective data-to-parameter ratio, thus stabilizing
and helping to avoid overfitting. The importance of the latter should not be underappreciated, especially given that neutron data are typically limited and noisy. This approach can be applied if a high-resolution model related to the target structure to be refined is available. Fortunately, when performing neutron crystallographic studies of macromolecules, the corresponding high-resolution X-ray models are invariably determined first and thus are generally available. Given that X-ray models provide significantly more accurate coordinates for all non-H atoms than their neutron counterparts, their use as a source of prior structural information appears to be a reasonable approach towards improving neutron refinement.The CCP4 program ProSMART (Nicholls et al., 2014) generates such external restraints by distilling the local structure of a known reference model. Here, we used ProSMART to identify matching atoms by aligning the target model and an X-ray reference model before generating interatomic distance restraints between proximal non-H atoms within a given distance threshold (default 4.2 Å), which should be long enough to capture information about secondary structure whilst being short enough to allow differences in global conformation. The resulting external restraints were subsequently used by REFMAC5 during of the target neutron model.
2.4. Performance analysis by re-refinement of PDB entries
To test our current implementation, we re-refined 97 of the available neutron PDB entries (45.5% of the total) using REFMAC5. Of these, 55 are structures that were originally refined against neutron data only and 42 are entries deposited following a joint neutron/X-ray protocol. We selected our test pool based on the availability of experimental data (including complete cross-validation sets) and a wide resolution range (upper limit 1.05–2.75 Å).
For each entry, coordinate files (in PDB and mmCIF format) and crystallographic data (mmCIF format) were downloaded from the PDB. Each mmCIF reflection file was then converted into MTZ format, which serves as the standard format used by CCP4 programs (Agirre et al., 2023). For the `neutron-only' entries, the CCP4 program CIF2MTZ was utilized to convert mmCIF to MTZ format. For entries refined using a joint X-ray/neutron protocol, their mmCIF reflection files should contain two distinct data blocks: one for X-ray diffraction and one for neutron diffraction. However, a few entries have been erroneously deposited with a single data set. Since the process within REFMAC5 was only performed against neutron reflections, those were extracted and converted to MTZ format using GEMMI (Wojdyr, 2022). In cases where only intensities were available, they were converted into amplitudes using the Servalcat `fw' function (Yamashita et al., 2021), which implements the French–Wilson procedure (French & Wilson, 1978).
To compare 1H and 2H atoms present in the models were retained without regeneration. REFMAC5 is able to read 1H/2H sites and 2H atoms using the Servalcat REFMAC5 controller (`refmacat'), which uses GEMMI for restraint generation (Yamashita et al., 2023). 2H atoms are converted to H atoms with deuterium fraction parameters by GEMMI, and their distances are adjusted using nuclear values from the CCP4-ML. In cases such as PDB entry 5ksc, where the original model does not contain any 1H (or 2H) atoms except for water molecules, GEMMI was employed to add them at riding positions.
with those reported in the PDB, allIf H atoms are generated, it is necessary to initialize their deuterium fraction prior to 2H atoms, the initialization process sets the deuterium fraction parameter to 1 for all H atoms. In the case of 1H/2H-exchanged structures, the deuterium fraction is only set to 1 for H atoms exchanged with 2H. Subsequently, the process is performed to optimize the deuterium fraction. Initialization was not used for the of most of the entries containing 1H/2H or 2H sites, while it was necessary for a few entries, such as PDB entries 1c57, 1cq2, 5ksc and 1xqn, where only 1H atoms were present in the models.
Users can choose to initialize all H atoms or only polar H atoms. For perdeuterated structures, in which all H atoms are replaced byOur standard 1H/2H-exchanged samples only polar H atoms had this parameter included in the optimization. H atom positions have been refined individually with all available restraints (bond lengths, angles, planarity and torsion angles) to ensure proper geometry. We found that this procedure allows deuterium fraction parameters to converge as the models had previously been refined by the original depositors.
protocol consisted of five cycles of restrained positional and individual ADP using the data in the published resolution range. Three cycles of deuterium fraction were performed after each cycle of individual atomic For perdeuterated samples we allowed of the deuterium fraction for all H atoms, whilst for2.4.1. Re-refinement of PDB entries originally refined against neutron data only
Using the protocol described earlier, we used REFMAC5 to re-refine 55 PDB entries that were originally refined using neutron data only. Entries were chosen over a wide resolution range from medium–low resolution (2.7 Å, PDB entry 2efa) to subatomic resolution (1.05 Å, PDB entry 4ar3). R-factor statistics for all 55 re-refined models are given in Table 2.
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For some entries (for example PDB entries 1wq2, 3rz6, 4c3q, 4fc1, 5a90, 5gx9 and 7kkw in Table 2), we observe that the initial Rwork and Rfree values are higher than those reported in the PDB. In the case of PDB entry 1wq2, the PDB header reports values of 22.9% and 28.9% for Rwork and Rfree, respectively, while the paper indicates values of 28.2% and 30.1% (Chatake et al., 2003). The latter values are similar to the initial R factors from REFMAC5 (28.6% and 32.1% for Rwork and Rfree, respectively). Following the Rwork and Rfree values from REFMAC5 become comparable to the deposited values, suggesting convergence of the procedure (Table 2).
For several structures, including the low-resolution PDB entries 1c57, 1wq2, 1xqn, 2gve and 2yz4, the medium-resolution PDB entries 3fhp, 3u2j, 4bd1 and 6h1m and the high-resolution PDB entries 2zoi, 2zwb, 3a1r, 4ar3, 4ar4, 4fc1 and 4q49, the Rwork and Rfree values obtained from REFMAC5 are lower compared with the deposited values, often improving by ∼2–3 percentage points. However, for a few other entries the final R-factor values obtained from REFMAC5 are slightly higher. One explanation is that in this study the models have been re-refined without any additional strategy that could significantly improve the For example, the application of TLS (Winn et al., 2001, 2003), as well as the use of anisotropic ADP for high-resolution structures and jelly-body restraints, could potentially improve the refined model. One general point of consideration, however, is that the calculation of scaling factors used in the R-factor equation is different among packages and this can lead to differences in R factors. Although overall R values are not the only metrics to consider when evaluating the quality of a structural model, which cannot be properly assessed without careful map analysis, the values obtained from this test set indicate that our implementation for neutron crystallographic performs satisfactorily.
2.4.2. Re-refinement of PDB entries originally refined using a joint neutron/X-ray strategy
We also tested the presents all joint neutron/X-ray models featuring neutron data from lowest to highest resolution that were selected for re-refinement within REFMAC5. The table compares the R-factor statistics published for these selected entries with the R factors obtained through their re-refinement using REFMAC5.
of 42 models previously obtained through joint neutron/X-ray utilizing solely neutron data and incorporating the deuterium fraction parameterization. Table 3
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The Rwork and Rfree values obtained from REFMAC5 [Table 3; Final R values (work/free) column] by refining joint models using only neutron data were found to be similar to those obtained from joint neutron/X-ray [Table 3; Published R values (work/free) column]. For some entries, the R factors are slightly improved compared with the published values. It is widely acknowledged that solely using neutron data may lead to overfitting due to the explicit of H atom parameters. However, the gap observed between the Rwork and Rfree values obtained from REFMAC5 is not substantial (the mean ΔR is ∼6%). Thus, this strategy can be a viable alternative when joint is not feasible.
2.4.3. Re-refinement using external restraints
To improve the quality of neutron atomic models, especially at low resolution, re-refinement was performed by incorporating X-ray reference structure restraints. A subset of models obtained by neutron 1c57, 2efa, 2yz4 and 2zpp), the corresponding X-ray reference structures were chosen from the PDB based on their high structural similarity to the neutron refined structures. The `Find Similar Assemblies' option in the PDB uses Structure Similarity Search (Guzenko et al., 2020) to assess global 3D shape similarity, providing a Structure Match Score indicating the probability as a percentage that the structure match is similar to the query. The X-ray structures chosen reported the highest Structure Match Score. If a suitable X-ray reference model is not known, we recommend running a BLAST search (Altschul et al., 1997) over the whole PDB by inputting the FASTA sequence of the target neutron model.
only and by joint neutron/X-ray featuring neutron data at low resolution and a few at high resolution, were selected for this analysis. For the `neutron-only' entries (PDB entriesFor the joint neutron/X-ray structures selected a different protocol was applied. Firstly, these models were subjected to REFMAC5, with a total of ten cycles. The output model obtained from this process was subsequently employed as a reference model.
against their corresponding X-ray data usingProSMART (Nicholls et al., 2014) takes as input the neutron target model and X-ray reference structure model in PDB or mmCIF format and generates interatomic distance restraints between proximal non-H atoms reported in a restraint file. The was performed by simultaneously refining non-H atoms of the model by using restraints generated by ProSMART and by using the deuterium fraction parametrization for H atoms (twenty cycles interleaved with three deuterium fraction refinements1). PDB information for the neutron and X-ray models selected, as well as the published and those obtained by REFMAC5, are shown in Table 4.
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The incorporation of external restraints has been observed to improve both the Rwork and Rfree values for low-resolution neutron structures. Specifically, the R factors are improved by ∼2–3 percentage points in certain cases (PDB entries 1c57, 2efa, 2yz4 and 4cvi; Table 4, Neutron with external restraints) compared with both the published values and those obtained using deuterium fraction only. Moreover, certain high-resolution structures (PDB entries 3x2o and 3x2p) also demonstrate improved R factors, which indicate that these restraints can improve the quality of neutron models regardless of the resolution.
2.5. Selected examples of neutron crystallographic refinement
2.5.1. Re-refinement of the neutron structure of chloride-free urate oxidase in complex with its inhibitor 8-azaxanthine
Our re-refinement runs reported in previous sections mainly looked at global 7a0l; McGregor et al., 2021).
As a selected example that involved a more detailed inspection of neutron maps, we carried out a re-refinement of the joint neutron/X-ray structure of perdeuterated urate oxidase (UOX) in complex with its 8-azaxanthine (8AZA) inhibitor (PDB entryIn many organisms, the degradation of uric acid (UA) to 5-hydroxyisourate (5-HIU) is catalysed by cofactor-independent UOX (Kahn et al., 1997). In a two-step reaction, UA first reacts with O2 to yield dehydroisourate (DHU) via a 5-peroxoisourate intermediate (Bui et al., 2014). This is then followed by a hydration step, in which DHU is hydroxylated to 5-HIU (Kahn, 1999; Wei et al., 2017). The joint structure of perdeuterated UOX in complex with its 8AZA inhibitor, relevant to the hydration step, has recently been determined using X-ray and neutron data at 1.33 and 2.10 Å resolution, respectively (McGregor et al., 2021). Joint was carried out with phenix.refine (Afonine et al., 2010). It showed that the catalytic water molecule (W1) is present in the peroxo hole as neutral H2O (D2O), oriented at 45° with respect to the organic ligand. It is stabilized by Thr57 and Asn254 on different UOX protomers as well as by an O—H⋯π interaction with 8AZA. The active site Lys10–Thr57 dyad features a charged Lys10–NH3+ side chain engaged in a strong hydrogen bond with Thr57OG1, while the Thr57OG1–HG1 bond is oriented toward the π system of the ligand, on average.
Re-refinement of the UOX:8AZA complex with REFMAC5 was performed against neutron data alone using deuterium fraction parameterization and external restraints. 1H and 2H atoms on previously modelled residues and water molecules were maintained at their positions and were not regenerated. Deuterium fraction parameters were refined for all H atoms. H atom positions were refined individually. External restraints were generated using ProSMART by first re-refining the model against its X-ray data (ten cycles) and using the output model as a reference structure. Data-collection and are given in Supplementary Table S1.
8AZA is bound as a monoanion deprotonated at N3 and omit neutron maps confirm that W1 is neutral (Fig. 4a). This is supported by the presence of positive peaks for two 2H atoms whose deuterium fraction values refine to 0.77 (H1) and 0.84 (H2). The protonation state of the Lys10–Thr57 active site dyad has also been investigated. Omit neutron maps for Lys10 show that the residue is positively charged due to the presence of a `tri-lobe' density distribution around NZ (Fig. 4b). All H atoms bound to Lys10 refine with a high deuterium fraction parameter value (>0.80). The direction of the OG1–HG1 bond in Thr57 was not easily identified in the original work (McGregor et al., 2021). Here, omit maps reveal positive density for Thr57HG1 at the 2.5σ level (Fig. 4b). We refined the orientation of the OG1–HG1 bond using the REFMAC5 `hydrogen refine rpolar' (rotatable polar) option, resulting in an optimal fit to the density. The deuterium fraction parameter for HG1 refined to 0.81. The orientation of the OG1–HG1 bond suggests the formation of another O—H⋯π interaction with N7 of 8AZA at 2.56 Å and a hydrogen bond is also formed between Lys10HZ1 and Thr57OG1 at a distance of 1.87 Å (Fig. 4b). Overall, our results are fully consistent with those from the previous study (McGregor et al., 2021), and mechanistic considerations can be found therein.
2.5.2. of the neutron structure of the Prochlorococcus iron-binding protein FutA
Finally, we employed REFMAC5 for the of a novel neutron structure. The marine cyanobacterium Prochlorococcus plays a significant role in global photosynthesis (Huston & Wolverton, 2009). However, its growth and productivity are constrained by the limited availability of iron. Prochlorococcus encodes the FutA protein that can accommodate the binding of iron in either its ferric (Fe3+) or ferrous (Fe2+) state. The structure of FutA has recently been determined using a combination of structural biology techniques at room temperature, revealing the redox switch that allows the binding of both iron oxidation states (Bolton et al., 2023).
The X-ray structure of FutA, determined at a resolution of 1.7 Å, shows that the iron-binding site involves four tyrosine side chains (Tyr13, Tyr143, Tyr199 and Tyr200) and a solvent molecule, forming a trigonal bipyramidal coordination. The presence of Arg203 in the second coordination shell suggested the possibility of X-ray-induced 2+) binding state. To investigate the protonation of active site residues surrounding the iron, the neutron structure of FutA was determined at 2.1 Å resolution using 1H/2H-exchanged crystals, taking advantage of deuterium fraction (Bolton et al., 2023). The final model is characterized by Rwork and Rfree values of 18.2% and 25.0%, respectively. Data-collection and are given in Supplementary Table S2. The neutron structure reveals that the side chain of Arg103 is protonated and thus carries a positive charge, with all of its exchangeable H atoms refining with deuterium fraction parameter values of >0.50 (Fig. 5). Neutron maps suggest that the iron-coordinating residues Tyr13, Tyr143, Tyr199 and Tyr200 exist as tyrosinates. The H-omit map for the water molecule (W1) confirms its presence as neutral H2O, supported by the presence of positive peaks for two H atoms whose deuterium fraction values refine to 0.84 (H1) and 1.0 (H2) (Fig. 5). In contrast to the room-temperature X-ray structure, Arg203 is not involved in any interactions and does not contribute to the second coordination shell. Consequently, the iron-binding site is composed of four negatively charged tyrosinates, a positively charged arginine in the second shell and a neutral water (W1), suggesting that this coordination cages neutralized ferric iron. This was further confirmed by the serial femtosecond X-ray structure and (EPR) measurements. Coordinates and structure factors of the neutron FutA structure have been deposited in the PDB as entry 8oen. This represents the first neutron structure to be refined using REFMAC5 and deposited within the PDB. Further mechanistic information on FutA is discussed in a separate publication (Bolton et al., 2023).
of the iron centre, leading to a ferrous (Fe3. Conclusions and availability
Neutron crystallography offers a unique advantage in the determination of H atom positions, enabling the investigation of many biological processes. Despite its great potential in structural biology, the number of biological structures deposited in the PDB to date (25 July 2023) using neutron-only data (or joint neutron/X-ray) is extremely small (213) compared with those solved by X-ray crystallography (176 935), nuclear magnetic resonance (NMR; 14 034) and
(EM; 16 239). This is due to technical limitations such as low neutron beam long data-collection times and limited access to neutron beamlines. Nonetheless, recent advances in instrumentation, experimental protocols and computational tools have significantly advanced the field. As a result, the number of neutron structures deposited in the PDB has significantly increased in the last few years. The period 2015–2022 alone has seen the deposition of more than half of the total neutron structures (130 out of 213) and this is likely to further accelerate in the coming years.The CCP4 suite now provides tools for the of macromolecular models using neutron diffraction data. Recent developments include the extension of the CCP4 Monomer Library by incorporating H atom nucleus distances. These restraints are required to ensure the correct H atom positions in neutron crystallographic Moreover, the inclusion of H nucleus positions holds potential for the further of H atoms of cryo-EM models, as both H atom positions (electron and nucleus) contribute to the scattering. New features and strategies have been implemented in REFMAC5 for the of neutron models: specifically, the introduction of the deuterium fraction parameter for H atoms. One of the benefits of this approach is that it generates models containing only H atoms, without any 1H/2H or 2H sites. For each H atom, the models incorporate a deuterium fraction parameter that indicates the level of deuteration in the sample. This results in clearer and more easily interpretable models, minimizing the bookkeeping errors that may arise when alternative conformations are present in the models. Re-refinement of neutron structures using REFMAC5 has yielded R-factor values that are in line with the originally deposited values, including those obtained previously through joint neutron/X-ray techniques. Additionally, for certain neutron entries the process has led to improvements in model quality. Another valuable strategy is the use of external reference structure restraints during the of models obtained by neutron diffraction. Incorporating restraints from X-ray reference structures has demonstrated an enhancement in the accuracy and reliability of neutron models, particularly in low-resolution cases.
The ability to perform neutron crystallographic REFMAC5 will be available in CCP4i2 (Potterton et al., 2018) and CCP4 Cloud (Krissinel et al., 2022) in an upcoming version of CCP4 that uses Refmacat instead of REFMAC5. This option can be enabled by selecting the appropriate diffraction experiment type (X-ray, Electron or Neutron) in the `Advanced' tab of the task interface, in which case the appropriate form factors and relevant default behaviours are used during model In Neutron mode, the graphical interface provides the ability to choose whether to refine all, only polar or only rotatable polar H atom positions, to use H atom torsion-angle restraints, to refine the 1H/2H fraction for all H atoms (for perdeuterated crystals) or just polar H atoms (for 1H/2H exchanged samples), and the choice of whether to reinitialize 1H/2H fractions prior to Relevant keywords and documentation for neutron crystallographic will be available in the documentation section of the CCP4 website (https://www.ccp4.ac.uk/).
usingSupporting information
Supplementary Tables. DOI: https://doi.org/10.1107/S2059798323008793/qe5005sup1.pdf
Footnotes
1As a rule, when external restraints or jelly-body are used, more cycles are needed to achieve convergence.
Acknowledgements
The authors would like to thank Jake Grimmett, Toby Darling and Ivan Clayson for scientific computing resources. Paul Emsley is thanked for his assistance in preparing some of the figures. Rachel Bolton and Ivo Tews are thanked for useful conversations on the FutA structure. Stuart McNicholas and Maria Fando are thanked for work on the CCP4i2 and CCP4 Cloud interfaces.
Funding information
LC is supported by an STFC/CCP4 PhD studentship (agreement No. 7920 S2 2020 007) under the supervision of RAS and GNM. Part of this work was also supported by BBSRC grant No. BB/P000169/1 awarded to RAS. KY, FL and GNM are supported by MRC grant No. MC_UP_A025_1012. RAN is supported by BBSRC grant No. BB/S007083/1.
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