research papers
Tackling the crystallographic
of the COP9 signalosomeaFriedrich Miescher Institute for Biomedical Research, Maulbeerstasse 66, 4058 Basel, Switzerland, and bUniversity of Basel, Petersplatz 10, 4003 Basel, Switzerland
*Correspondence e-mail: richard.bunker@fmi.ch
The COP9 signalosome (CSN) is an essential multi-protein complex in eukaryotes. CSN is a master regulator of intracellular protein degradation, controlling the vast family of cullin–RING ubiquitin (E3) ligases (CRLs). Important in many cellular processes, CSN has prominent roles in DNA repair, cell-cycle control and differentiation. The recent et al. (2014), Nature (London), 512, 161–165]. was complicated by low-resolution diffraction from crystals affected by and rotational pseudo-symmetry. Crystal instability and non-isomorphism strongly influenced by flash-cooling, radiation damage and difficulty in obtaining heavy-atom derivatives, were overcome. Many different subunits of the same fold class were distinguished at low resolution aided by combinatorial selenomethionine labelling. As an example of how challenging projects can be approached, the of CSN is described as it unfolded using cluster-compound MIRAS phasing, MR-SAD with electron-density models and cross-crystal averaging exploiting non-isomorphism among unit-cell variants of the same crystal form.
of human CSN provides insight into its exquisite regulation and functionality [LingarajuKeywords: COP9 signalosome; PCI complexes; low-resolution structure determination; cluster-compound phasing.
1. Introduction
One of a triumvirate of PCI (proteasome lid–COP9 signalosome–initiation factor 3) regulatory complexes, the COP9 signalosome (CSN) is evolutionarily related to the 19S proteosome lid and eukaryotic initiation factor 3. CSN functions enzymatically as a highly regulated isopeptidase that acts exclusively on catalytically activated cullin–RING ubiquitin ligases (CRLs). Human CSN is an assembly of eight proteins, denoted CSN1–CSN8 by decreasing molecular mass, with a total molecular mass of ∼350 kDa (Fig. 1).
Little structural information for CSN, its constituents or other PCI complexes was available at the start of our work on the human complex. The subunit composition and fold classes were known: CSN1–CSN4, CSN7 and CSN8 contain PCI domains and CSN5 and CSN6 contain MPN (MPR1/PAD1 amino-terminal) domains. PCI domains have an α-helical fold characterized by an array of irregular helical repeats followed by a winged-helix subdomain. MPN domains have a mixed α/β metalloprotease fold. CSN5 is known to be catalytic and to bind a single Zn2+ ion.
Crystal structures of parts of four CSN proteins became available in the course of the project: Arabidopsis thaliana CSN1 (residues 32–349 of 441; PDB entry 4lct ; Lee et al., 2013), the Homo sapiens CSN5 MPN domain (residues 2–257 of 334; PDB entry 4f7o ; Echalier et al., 2013), the MPN domain core of Drosophila melanogaster CSN6 (residues 51–184 of 341; PDB entry 4e0q ; Zhang et al., 2012) and A. thaliana CSN7 (residues 4–164 of 260; PDB entry 3chm ; Dessau et al., 2008). Crystal structures have been described for paralogues from the 19S proteasome lid (RPN) and initiation factor 3 (elF3) proteins: CSN2 (D. melanogaster RPN6, PDB entry 3txn ; Pathare et al., 2012) and CSN8 (human eIF3k, PDB entry 1rz4 ; Schizosaccharomyces pombe RPN12, PDB entry 4b02 ; Wei et al., 2004; Sarin et al., 2012). There were no crystal structures of CSN3 or CSN4. An existing low-resolution electron-microscopy (EM) structure of CSN in negative stain (EMDB entry 1700; Enchev et al., 2010) proved unhelpful because of substantial differences from the A cryo-EM structure of the CSN–CRL complex in negative stain (EMDB entry 2176; Enchev et al., 2012), reported after much of the crystallography had been completed, enabled analysis of the general interactions of CSN and a substrate.
2. Crystallization, data collection and processing
Initial microcrystals of full-length human CSN were obtained by hanging-drop vapour diffusion. These were improved to diffraction quality by screening many alternative protein constructs, some of which were identified by
after limited proteolysis. Crystals of one CSN variant containing the canonical isoforms of CSN2–CSN8 and CSN1 isoform 2 (as defined by UniProt) with truncations to the N-termini of CSN1 (51 residues) and CSN5 (11 residues) and the C-terminus of CSN7 (59 residues) formed rhombohedral crystals of 0.1–0.2 µm in diameter that were suitable for X-ray diffraction studies. All crystals analysed were of this construct.Despite extensive screening, stabilizing conditions for crystals soaking and cryoprotection were not found. Adequate cryoprotection was achieved by transferring each harvested crystal in two steps from 15 to 30%(v/v) ethylene glycol in a solution formulated to match the crystal-growth solution as closely as possible (artificial mother liquor) before flash-cooling in liquid nitrogen. Soaking experiments with compounds other than tantalum bromide were carried out in artificial mother liquor. Heavy-atom-treated crystals were backsoaked in artificial mother liquor with 15%(v/v) ethylene glycol for 1–5 min before continuing the cryoprotection protocol as for other crystals.
X-ray diffraction data were collected on beamline X06DA or X10SA at the Swiss Light Source with a Pilatus 2M or 6M detector (Dectris). Diffraction was typically measured with an intense X-ray beam using single-axis rotations (200–360°) with fine slicing (Δφ = 0.05–0.25°) from multiple positions on the crystal. Because the diffraction properties varied substantially from different volumes of the same crystal as well as across crystals, more elaborate data-collection strategies combining multiple data sets were rarely useful. Promising exploration of low X-ray dose high-multiplicity data collection was limited by crystal quality and was not used for analysis. It was only possible to improve the quality of the final data by merging multiple sweeps for the best selenomethionine (SeMet) derivative and a 4 Å resolution data set (crystal c337 mentioned below). Both of these data sets had ∼25-fold average overall multiplicity. Other useful data sets were measured across a single 200–360° rotation.
Diffraction images were processed with XDS (Kabsch, 2010) in multiple passes with geometry parameter recycling. Shadowed regions of the detector were ignored and only the geometrical parameters that refined smoothly to reasonable values across the data set were optimized. Without careful data reduction, small anomalous differences were lost and data-quality issues were exacerbated. Two primary indicators from XDS were used to estimate anomalous signal: a mean correlation (Pearson) between two random subsets of anomalous differences (CCanom) of ≳0.3 and the mean anomalous difference in units of estimated standard deviation (SigAno) of ≳1.2 for much of the low-resolution range. Crystals containing heavy atoms were sensitive to radiation damage, as indicated by processing statistics suggesting substantial anomalous signal but for which searches failed. Anomalous Patterson maps for damaged crystals were unexpectedly flat.
Several scaling protocols using XDS/XSCALE and AIMLESS (Evans & Murshudov, 2013) from the CCP4 suite (Winn et al., 2011) were tested with each data set or combination of data sets. After initial phasing, the best as judged by the height and number of log-likelihood gradient (LLG) map peaks found by MR-SAD with Phaser (McCoy et al., 2007) using a common starting model were further analysed. The most successful scaling protocol for the weak anomalous data obtained from SeMet-substituted crystals was to supplement scaling with the CORRECT step of XDS with scaling with AIMLESS using its secondary-beam model without B-factor correction. Averaged intensities were converted to structure-factor amplitudes by TRUNCATE (French & Wilson, 1978) for derivative data sets and XDSCONV for the data sets, applying a flat prior distribution to twinned data. Rfree sets of reflections were created with and pseudo-symmetry considered using the PHENIX suite (Adams et al., 2010) (also the default in CCP4 v.6.4 or newer). Processed diffraction data were analysed with POINTLESS (Evans & Murshudov, 2013) and phenix.xtriage from the PHENIX suite.
3. Crystal characterization
In early X-ray testing few crystals diffracted and data to only ∼7 Å resolution were obtained. The unit-cell parameters differed considerably; the length of the c axis by 27 Å and that of the a and b axes by 5 Å (Fig. 2a). The crystals were clearly trigonal and the pattern of indicated a threefold screw axis. Data from most crystals merged best in the enantiomeric space groups P31 or P32 and had signs of in the L-test (Padilla & Yeates, 2003). Some, however, merged in the higher symmetry space groups P3121 or P3221, indicated by an Rmeas of 0.06 or lower below ∼10 Å resolution. Cell-content analysis suggested that two or three complexes in the of the crystal were likely in P31 or P32 (solvent content of ∼66% or ∼50%, respectively) and one complex in the in P3121 or P3221 (∼66% solvent content).
Self-rotation function analysis showed a twofold rotational axis perpendicular to the crystallographic threefold screw axis for data in space groups P31 or P32 (Fig. 2c). Before untwinned data were obtained, we were unable to distinguish whether this twofold rotation was (i) a crystallographic generating crystals belonging to P3121 or P3221, (ii) a pseudo-crystallographic (NCS) rotation (rotational pseudo-symmetry; RPS), (iii) hemihedral (with k, h, −l) or (iv) a combination of these. All crystals were later established to belong to P31 with two CSNs in the (∼66% solvent) and to be affected variably by RPS and The effects of RPS with compounded by the limited data resolution contributed to the initial uncertainty in the correct space-group assignment.
RPS and h, k, l is approximately equal to k, h, −l, producing an Rmerge of at most ∼0.43 (crystal c318 mentioned below and deposited as PDB entry 4d18 ) between these reflections. Because the NCS mates are not completely independent, there is limited alternative sampling of the molecular transform that can be exploited for phase improvement (Kleywegt & Read, 1997). This was especially notable at low resolution, where the NCS appeared to be crystallographic (Fig. 2c). Retrospective evaluation with ∼4 Å resolution untwinned data with negligible RPS (crystal c318; PDB entry 4d18 ), the best quality data for CSN, showed that NCS averaging was beneficial: prime-and-switch density modification of the electron density from of an early model (CC to final map of 0.66) with RESOLVE (Terwilliger, 2000) resulted in a CC of 0.81 with NCS averaging with optimized groups compared with a CC of 0.71 without NCS averaging to the final map.
introduced different challenges to RPS reduced the power of NCS averaging for phase improvement. Reflections related by the twofold NCS axis perpendicular to the threefold crystallographic axis were correlated by RPS such that the magnitude of a givenTwinning introduced more serious problems than RPS into 4d10 show a twin fraction of 0.36 (twin law k, h, −l), as in the real data, and reduced the mean anomalous difference Fourier peak height for the active-site Zn2+ ions by 17%. Despite this, the CSN5 active-site Zn2+ ions are found for crystal c343 at 9.5 and 8.5 r.m.s in an anomalous LLG map calculated by Phaser (theoretical f″ = 2.54 e− at 1.0 Å), demonstrating that anomalous data from twinned CSN crystals could be useful for identification. also complicated the crystallographic analysis by obscuring the electron density for a conformationally variable subunit (CSN4) and adding a source of non-isomorphism by convoluting the intensity of reflection with a twin that varied across data sets [typically with a twin fraction (α) of between 0.35 and 0.45]. Applying a consistent indexing scheme to highly twinned data was also problematic. Crystallization in a trigonal with RPS explains why the crystals formed hemihedral twins with the twin and NCS axes nearly coincident (Lebedev et al., 2006; Fig. 2b). was only modelled in the of c343 by REFMAC and was ignored for other procedures and for other data sets.
and most notably encountered when we had difficultly obtaining anomalous data. Unlike in CSN crystals, their RPS does not affect anomalous differences because it does not correlate Bijvoet pairs. Tests with 3.8 Å resolution error-free synthetic data calculated for crystal c343 mentioned below and deposited as PDB entryThe finding that et al., 2012) adapted to CSN conditions. Beyond its importance for overcoming seeding was the only technique that consistently improved the diffraction quality of the crystals, eventually allowing data to be collected to ∼4 Å resolution. Cross-seeding from native crystals was needed to grow SeMet-substituted crystals.
was suppressed in crystals grown from seeds enabled untwinned data to be collected. All untwinned data were obtained from seeded crystals. Repeated generations of streak-seeding with a cat whisker were carried out as described previously (BunkerBecause the phase improvement by NCS averaging was small, we exploited crystal non-isomorphism for phase improvement by cross-crystal averaging, which proved to be crucial for structure solution. We suspected that crystal variability was strongly influenced by handling, but had yet to find a method to control non-isomorphism. Seeking to understand the changes that the crystals underwent before cryogenic data collection (100 K) and to deliberately induce non-isomorphism, room-temperature (RT) diffraction and dehydration experiments using the humidity-control device (HC1; Sanchez-Weatherby et al., 2009) were carried out at the Diamond Light Source, UK. The unit-cell dimensions at RT were a = b = ∼152, c = ∼344 Å, which are the largest measured for CSN. Dehydration reduced the unit-cell volume, replicating the type of variation found for cryocooled crystals. Although weak, the Bragg peaks at RT were much sharper than at 100 K, suggesting that flash-cooling was detrimental to diffraction. Unfortunately, radiation damage at RT was severe and we were unable to flash-cool dehydrated crystals to enable the collection of sufficient data for analysis.
Returning to the laboratory, we successfully dehydrated crystals in the hanging-drop vapour-diffusion conditions by replacing the well solution with 20% PEG 6000 and equilibrating overnight. This yielded one crystal with a c axis of 318 Å (crystal c318; PDB entry 4d18 ) that diffracted to 4.1 Å resolution. Additive screening yielded a crystal with a c axis of 343 Å (c343), which grew spontaneously in a condition supplemented with 10 mM urea. Crystal c343, which was partially twinned (twin law k, h, −l; α = 0.36) with RPS, diffracted to 3.8 Å resolution, the highest attained for CSN and provided the other finalized structure (PDB entry 4d10 ). The extreme unit-cell variants, c318 and c344, were complemented by crystal c337 (with a c axis of 337 Å), providing high-multiplicity data to 4 Å resolution. These three non-isomorphous data sets (c318, c337 and c343) became the focus of and model building.
Problems of crystal instability, non-isomorphism and
were never completely resolved. Circumventing these issues by screening many crystals, some 1400 crystals were analysed, of which five native crystals, four heavy-atom-soaked derivatives and a redundant set of eight SeMet-substituted derivatives contributed to the two finalized models.4. CSN4
Having only obtained diffraction data for CSN to ∼4 Å resolution, we expected that model building would be challenging. In parallel, structures of individual subunits to aid the interpretation of the complex were also sought. These attempts produced the structure of human CSN4 on its own with its C-terminal helices truncated and the N-terminal Strep-tag II affinity tag retained (PDB entry 4d0p ). The diffraction data for initial phasing were collected in-house with a rotating-anode X-ray generator. Structure solution by SIRAS with a mercury derivative and at 1.6 Å resolution was straightforward. Obtaining a high-quality model of CSN4 was fortuitous because the electron density for the N-terminal region of CSN4, the most mobile part of CSN, lacked sufficient detail to model without external structural information.
5. Derivatives
Crystals treated with simple heavy-atom salts did not diffract in early screening or were underivatized. Considering that heavy-atom treatment would be likely to impair the diffraction quality of the crystals and that the
was predicted to contain ∼700 kDa of protein, preparing cluster-compound derivatives was prioritized.After an extensive search, a heavy-atom derivative was produced by incubating a crystal in its original drop for one week with a few grains of tantalum bromide. A single-wavelength anomalous diffraction (SAD) data set was collected for this crystal to 9.5 Å resolution that was not isomorphous to other crystals. Strong anomalous signal was indicated by the processing statistics (overall CCanom of 0.69). Anomalous Patterson analysis revealed a single tantalum bromide position, an unfortunate scenario for SAD phasing (Fig. 3a). A single-site heavy-atom derivative in a polar such as P31 or P32 is centrosymmetric, which complicates SAD phasing by convoluting the electron density for the crystal with nonrandom `noise' rather than the random `noise' component with a noncentrosymmetric (McCoy & Read, 2010). Requiring density modification to identify the correct solution and extract electron density for the crystal, this proved fatal and did not advance structure solution.
Continuing the search, a promising derivative was prepared by soaking crystals with deca-ammonium paratungsate (W12; Jena Bioscience), a markedly ellipsoidal W12 cluster compound. Sites were found with phenix.hyss (Adams et al., 2010) using anomalous data to 9.2 Å resolution after testing a range of low-resolution cutoffs. Finding that the number of W12 cluster sites could be manipulated by changes in the crystal-soaking protocol, which is an ineffective approach with tantalum bromide, two derivative crystals suitable for phasing were generated. Two well occupied W12 sites were found in a crystal soaked overnight with 0.25 mM W12 using data collected at the W LIII absorption peak (W12-I; f′ = −16, f′′ = 24). Four sites, two equivalent to W12-I and two unique at ∼20% of the occupancy of the first pair, were found for a crystal soaked overnight with 1 mM W12 using data collected at the inflection point of the LIII (W12-II; f′ = −28, f′′ = 15). Both W12-derivative crystals diffracted to ∼6.6 Å resolution with a mean I/σ(I) cutoff of 2. W12-I had a CCanom of 0.85 and a SigAno of 2.46 and W12-II had a CCanom of 0.84 and a SigAno of 2.50 from the low-resolution limit to 9.2 Å, beyond which CCanom dropped precipitously below 0.3.
The two W12 positions in each derivative were NCS equivalents wedged between the N-terminal arm of CSN2 and CSN8 in a neighbouring The two weaker sites in W12-II were NCS equivalents nestled beside CSN3, although neither NCS relationship was recognized until the election density improved after initial phasing (Fig. 3b).
Substructures were unable to be found for many data sets from heavy-atom-soaked crystals. These were revisited as the structure improved with MR-SAD using Phaser and only one, a mercury derivative prepared with p-chloromercurybenzoic acid, yielded a heavy-atom This derivative, which diffracted to 7.5 Å resolution, confirmed the location of 21 cysteine residues in the model (Fig. 4).
6. Initial phasing
Combinations of native and derivative data sets were evaluated for their potential for phasing using the analysis steps of autoSHARP (Vonrhein et al., 2005) guided by criteria outlined previously (Rudenko et al., 2003).
The two W12-cluster derivatives were combined with an isomorphous, untwinned native data set for MIRAS phasing. After scaling, W12-I and W12-II had unweighted cross-crystal R factors on amplitudes to the native data set of 0.183 and 0.173, respectively, and an R factor of 0.135 to each other (in the full resolution range 50–6.6 Å). The cross-crystal weighted R factor to the native data set was larger than the R factor across the resolution range 50–8.7 Å for both derivatives. Phasing was initiated with SHARP (Bricogne et al., 2003) with one of the two sites found for W12-I, using LLG map peaks for its second site to confirm the validity of both. The heavy-atom model was completed for both derivatives by iterative interpretation of the LLG maps first as single atoms and then as spherically averaged descriptions of W12. The global non-isomorphism parameters (NISO_BGLO and NANO_BGLO in SHARP) were unrefined in cycles with an incomplete heavy-atom model. To avoid correlated non-isomorphism in SHARP encountered here with two similar derivative crystals, which can lead to overestimated phase quality, the better of the two derivatives, W12-II, was set as the reference for phasing.
The peaks in the LLG maps for the major sites were ellipsoidal, suggesting that the cluster had a 12 sites by placing two or three sites closely together in the LLG map peaks, reducing the radius of the cluster for spherical averaging or fitting the W12 framework of the cluster as a rigid body were of little benefit. The best phases to 9 Å resolution were obtained from a single spherically averaged W12 at each position with a slightly smaller radius (4.5 Å) than expected from its (∼4.75 Å).
for binding. Approaches aimed at extending the phased resolution beyond ∼9 Å by modelling the fine features of the WAfter density modification by solvent flipping using SOLOMON (Abrahams & Leslie, 1996) operated through its interface in SHARP, the correct hand of the was readily discriminated by the presence of bundles of tubular density, indicative of α-helices, in P31 and fragmented electron density for P32 (Fig. 3).
Although little phase information was derived by NCS averaging, it was still undertaken. The NCS twofold operator was identified in the SOLOMON map with phenix.find_ncs_from_density (Terwilliger, 2013) and averaged with RESOLVE. Density modification with SOLOMON and averaging with RESOLVE generated phases to 6.6 Å resolution.
As the primary source of structural information, an effort was made to generate the best possible electron-density map for subsequent structure-determination steps. Throughout initial phasing, different phase sets were assessed by comparing the peak height in anomalous difference Fourier maps calculated for the tantalum bromide derivative. This gave an indication of the phase error independent of the figure of merit (FOM) and other internal estimates phase of quality. Theoretically, FOM is the mean cosine of the phase error, but in practice the FOM calculated from phase probabilities generally underestimates their error and can be unreliable for ranking phase quality (Pannu et al., 2003).
7. Subunit identification and selenomethionine phasing
Owing to the similarity within the two subunit families (the six PCI subunits and two MPN subunits), the splayed structure of CSN and its crystal-packing interactions, it was not possible to define the two biologically relevant complexes in the
from the initial low-resolution electron density.We produced CSN recombinantly in insect cells using separate viruses for each subunit. To identify the individual subunits we exploited the remarkable permissibility of CSN assembly, which allowed purification of the complete complex from complementary subassemblies combined at lysis. Several selectively substituted SeMet derivatives were prepared and the Se sites found for these crystals were used to define its subunit arrangement. This was coupled with attempts to generate phase information to improve the electron density; hence, we also performed combinatorial labelling of subunits in an effort to provide adequate signal for phasing. Crystals of four derivatives with single SeMet protein substitutions (CSN1, CSN2, CSN3 and CSN8) and four combinatorial derivatives (CSN1 and CSN4, CSN2 and CSN4, CSN2, CSN3, CSN5 and CSN8, and CSN2, CSN3, CSN5, CSN6, CSN7 and CSN8) were obtained.
A sphere of electron density containing the approximate volume of an phenix.cutout_density. The electron density was distributed to the SeMet-derivative crystals by MR or rigid-body optimization with Phaser. Protocols detailing the use of density maps as search models in MR with Phaser are given in Jackson et al. (2015). The positioned electron density was used to initiate an anomalous search using the MR-SAD phasing procedure in Phaser. The electron density was improved by cross-crystal averaging with phenix.multi_crystal_average combining the current best Se-SAD phases and MIRAS phases with two non-isomorphous native data sets. The process was then repeated starting with the improved electron-density map.
was extracted from the map from initial phasing and prepared as a search model withLLG map peaks higher than 6 r.m.s.d. (root-mean-square deviations above the mean) were assigned as a heavy atoms automatically by Phaser. It was also beneficial to inspect the LLG maps manually and designate peaks above ∼4 r.m.s.d. as heavy atoms if they were found for multiple crystals. Two Zn2+ ions, one for each CSN5, were located in the derivatives and confirmed by analysing native data. After three iterations this process converged, having found 82 of the 176 Se sites expected from the number of methionine residues in the crystallized construct.
Most selenium positions were found with derivatives of all subunits except CSN1 and CSN4 labelled with Se, mostly from one exceptional crystal that diffracted to 4.8 Å resolution (providing phases to ∼8.0 Å resolution based on a 0.3 FOM cutoff). The other derivatives were substantially poorer quality but were crucial for identifying the subunits. From these sites each subunit was identified and the biologically relevant
was defined.8. Initial model building
An initial polyalanine model was built interactively with Coot (Emsley et al., 2010) into the best electron-density map after subunit identification and selenomethionine phasing (6 Å resolution). Portions of the models of human CSN4 and CSN5, structures of the CSN1, CSN6 and CSN7 orthologues, and homology models of CSN2 and CSN8 were docked into the density manually guided by the ensemble of Se sites and secondary-structure predictions from PSIPRED (Buchan et al., 2013). Homology models were prepared with Phyre2 (Kelley et al., 2015) and I-TASSER (Zhang, 2007). Ideal α-helices were placed in tubular electron density not described by model fragments.
At this stage, many autoBUSTER (Bricogne et al., 2011) against the 4 Å resolution untwinned data from crystal c337 and subsequent RESOLVE prime-and-switch density modification with NCS averaging. Initially, the major fragments were optimized as rigid bodies. Missing-atom modelling was enabled using the cross-crystal averaged phases from subunit identification in and to define the distribution of unmodelled atoms. In later cycles the experimental phases were abandoned and it became advantageous to include positional with local structure-similarity restraints (LSSR) (Smart et al., 2012) between NCS mates and to the high-resolution models of human CSN4 and CSN5 (PDB entry 4f7o ).
and density-modification approaches were trialled in an attempt to improve the interpretability of the electron density. The strategy that emerged as being successful was to repeatedly extend and rebuild the unrefined model into electron density from withModel building was continued in Coot, with tight restraints on geometry, Ramachandran plot and appropriate secondary structure. This procedure plateaued with a fragmented model that was approximately 50% complete and was unable to provide sufficient phase information to enable its completion.
9. Model completion
A polyserine version of the model from initial building was distributed to two non-isomorphous native crystals (c318 and c343) by rigid-body autoBUSTER. Because large-scale domain movements within CSN accompanying the unit-cell changes placed the models beyond the radius of convergence of conventional the electron density from rigid-body fitting or subsequent attempts was uninformative. Good-quality electron density revealing the conformational differences in c318 and c343 was, however, generated by following rigid-body fitting with deformable inelastic network (DEN) with CNS (Schröder et al., 2010). DEN was performed with restraints to the input model using tight NCS restraints and parameter optimization as recommended in Schröder et al. (2014). The conformation of CSN4 was shown by DEN to vary considerably across crystals and between NCS mates and enabled a more effective rigid-body decomposition to be defined for electron-density averaging and Rigid domains were identified manually or with DynDom3D (Poornam et al., 2009). However, the DEN models were highly distorted and were therefore replaced with earlier models before proceeding.
with one group per subunit usingThe model was then extended and refined iteratively across the three non-isomorphous unit-cell variants (c318, c337 and c343). The untwinned structures, c318 and c337, were refined using autoBUSTER with reference-model restraints applied as LSSR. The twinned structure, c343, was refined by REFMAC (Murshudov et al., 2011) with reference-model restraints generated by PROSMART (Nicholls et al., 2012). Co-refinement was carried out using reference-model restraints generated across crystals, typically between crystals c318 and c337 and between crystals c337 and c343, to parts of the model lacking restraints to high-resolution CSN4 and CSN5 models. Reference model restraints were applied loosely (setting `-target_weight' to 0.5 for autoBUSTER and `external weight scale' to 10 for REFMAC) from the second round of This straightforward strategy allowed the three structures to be compared readily and facilitated cross-crystal averaging. It also stabilized by improving the observation-to-parameter ratio, as judged by a narrowing of the Rfree–Rwork gap, and prevented unwarranted divergence among the models. By allowing comparison with the untwinned forms, co-refinement provided an internal control for model bias in twin of c343.
Maximum-likelihood twin REFMAC proved to provide the most interpretable electron density for model building. Modelling the twin only subtly improved the quality of the electron-density maps, most obviously suppressing peaks in solvent regions but crucially also increasing the clarity of some side chains.
of c343 byApplying the rigid bodies identified by DEN earlier, NCS-averaged prime-and-switch density-modified versions of the maps from RESOLVE. These maps were averaged across crystals again with NCS averaging using phenix.multi_crystal_average (or RESOLVE directly) and DMMULTI from the CCP4 suite and were used for model building with the electron density from The final averaging procedure was performed among the three non-isomorphous data sets and the high-resolution CSN4 structure with CSN partitioned into 12 domains (Fig. 5). B-factor sharpening of the structure-factor amplitudes before density modification and map coefficients from was crucial to enhance the electron density for side chains.
were generated withSupplemental restraints to preserve the geometry of the CSN5 active-site Zn2+ ion and secondary structure, including intermolecular hydrogen bonds across the β-sheet formed by the PCI subunits, were defined manually for autoBUSTER and REFMAC. TLS was applied with the same rigid bodies as NCS averaging.
Near the completion of c343, PDB_REDO (Joosten et al., 2012) locally modified to include external structural restraints and suitable TLS, jelly-body and twin-refinement parameters was used to derive optimized weights for positional and B-factor solvent-masking parameters and to carry out paired (Karplus & Diederichs, 2012), establishing a high-resolution limit of 3.8 Å.
For the final cycles of autoBUSTER an optimal X-ray weight, which was poorly determined with low-resolution data with NCS and had been fixed earlier, B-factor scheme and through-bond B-factor correlation weight were selected after testing a range of values in and assessing the results by R factor, LLGfree and geometric validation with MolProbity (Chen et al., 2010). Paired of c318 was carried out by autoBUSTER with R factors calculated using REFMAC, establishing a high-resolution limit of 4.08 Å.
of c318 withThe resolution cutoffs for the 1/2 of ∼0.3 in a 0.1 Å wide outermost shell for the data sets. This is roughly 0.2 Å beyond the resolution at which I/σ(I) drops to 2, a suggested starting point for revising the high-resolution limit from former standards (Luo et al., 2014).
structures correspond to a CCThe models were finalized for c318 and c343, the two most extreme unit-cell variants. et al., 2014).
and data processing statistics for these structures, CSN4, data-processing statistics for c337 and the MIRAS phasing data sets, and phasing statistics have been published elsewhere (Lingaraju10. Conclusions
The
of CSN was difficult, lacking a major breakthrough to propel it to rapid completion. Progress was incremental, with regular sanity checks required to convince us that we were moving forward. Structure solution began to look feasible after the collection of the three non-isomorphous native data sets of substantially better quality than the others, diffracting to the bounds of interpretable resolution (∼4 Å). Initial phasing and the searches were re-initiated several times using an electron-density map or a coordinate model as the prior distribution. Model building and was conservative, repeatedly returning to unrefined structures to limit model bias until a successful strategy was developed to enable completion. The final structure, however, rewarded the effort by providing substantial insight into the regulation and activity of CSN and the architecture of PCI complexes.Difficulties in crystallographic analysis can be traced to the dramatic conformational variation of CSN4. CSN4 only forms crystal contacts in the small
of crystal c318. This variation broke the symmetry that would have made the NCS crystallographic. Had the NCS been crystallographic the crystals would not have been able to twin in the same manner. Crystal contacts stabilizing CSN4 would have potentially increased the diffraction resolution, removed unit-cell variability and enabled derivatives to be found more easily. Crucially, however, the conformational variability of CSN4, which is involved in the substrate recognition and catalytic activation of CSN, is functionally important. Avoiding these crystallographic issues by pursuing the structure of CSN with an N-terminally truncated CSN4 would have been less meaningful and our functional insight would potentially have been more limited.The strengths of the CCP4, CNS, Global Phasing and PHENIX crystallographic software packages were harnessed for which would not have been possible without the combination of methods. At several points in structure solution we encountered deficiencies in the current methods for experimental phasing, particularly in the treatment of cluster-compound derivatives. The co-refinement approach used here was inspired by an implementation in MAIN (Turk, 2013). Proposed methods extending this to simultaneous cross-crystal with electron-density averaging (Brunger, 2005; Nicholls et al., 2012) would have been beneficial for CSN and likely other challenging structures.
Acknowledgements
The COP9 signalosome BUSTER development group, Randy Read, Tom Terwilliger, Rob Nicholls, Richard Kingston and Kay Diederichs, for technical advice. The staff of the Swiss Light Source and the Diamond Light Source that enabled this work are thankfully acknowledged. This project was supported by the Novartis Research Foundation, the Swiss National Science Foundation (31003A_144020) and the European Research Council (MoBa-CS #260481).
was determined in collaboration with Lingaraju G. Manjappa in the laboratory of Nicolas H. Thomä, both of whom are gratefully acknowledged. I thank Airlie McCoy for reviewing the manuscript prior to submission and for helpful discussion, and Clemens Vonrhein and theReferences
Abrahams, J. P. & Leslie, A. G. W. (1996). Acta Cryst. D52, 30–42. CrossRef CAS Web of Science IUCr Journals Google Scholar
Adams, P. D. et al. (2010). Acta Cryst. D66, 213–221. Web of Science CrossRef CAS IUCr Journals Google Scholar
Bricogne, G., Blanc, E., Brandl, M., Flensburg, C., Keller, P., Paciorek, W., Roversi, P., Sharff, A., Smart, O. S., Vonrhein, C. & Womack, T. O. (2011). AutoBUSTER. Cambridge: Global Phasing Ltd. Google Scholar
Bricogne, G., Vonrhein, C., Flensburg, C., Schiltz, M. & Paciorek, W. (2003). Acta Cryst. D59, 2023–2030. Web of Science CrossRef CAS IUCr Journals Google Scholar
Brunger, A. T. (2005). Structure, 13, 171–172. Web of Science CrossRef PubMed CAS Google Scholar
Buchan, D. W. A., Minneci, F., Nugent, T. C. O., Bryson, K. & Jones, D. T. (2013). Nucleic Acids Res. 41, W349–W357. CrossRef PubMed Google Scholar
Bunker, R. D., Dickson, J. M. J., Caradoc-Davies, T. T., Loomes, K. M. & Baker, E. N. (2012). Acta Cryst. F68, 1259–1262. CrossRef IUCr Journals Google Scholar
Chen, V. B., Arendall, W. B., Headd, J. J., Keedy, D. A., Immormino, R. M., Kapral, G. J., Murray, L. W., Richardson, J. S. & Richardson, D. C. (2010). Acta Cryst. D66, 12–21. Web of Science CrossRef CAS IUCr Journals Google Scholar
Dessau, M., Halimi, Y., Erez, T., Chomsky-Hecht, O., Chamovitz, D. A. & Hirsch, J. A. (2008). Plant Cell, 20, 2815–2834. CrossRef Google Scholar
Echalier, A., Pan, Y., Birol, M., Tavernier, N., Pintard, L., Hoh, F., Ebel, C., Galophe, N., Claret, F. X. & Dumas, C. (2013). Proc. Natl Acad. Sci. USA, 110, 1273–1278. CrossRef Google Scholar
Emsley, P., Lohkamp, B., Scott, W. G. & Cowtan, K. (2010). Acta Cryst. D66, 486–501. Web of Science CrossRef CAS IUCr Journals Google Scholar
Enchev, R. I., Schreiber, A., Beuron, F. & Morris, E. P. (2010). Structure, 18, 518–527. CrossRef Google Scholar
Enchev, R. I., Scott, D. C., da Fonseca, P. C., Schreiber, A., Monda, J. K., Schulman, B. A., Peter, M. & Morris, E. P. (2012). Cell Rep. 2, 616–627. CrossRef Google Scholar
Evans, P. R. & Murshudov, G. N. (2013). Acta Cryst. D69, 1204–1214. Web of Science CrossRef CAS IUCr Journals Google Scholar
French, S. & Wilson, K. (1978). Acta Cryst. A34, 517–525. CrossRef CAS IUCr Journals Web of Science Google Scholar
Jackson, R. N., McCoy, A. J., Terwilliger, T. C., Read, R. J. & Wiedenheft, B. (2015). Nature Protoc. 10, 1275–1284. CrossRef Google Scholar
Joosten, R. P., Joosten, K., Murshudov, G. N. & Perrakis, A. (2012). Acta Cryst. D68, 484–496. Web of Science CrossRef CAS IUCr Journals Google Scholar
Kabsch, W. (2010). Acta Cryst. D66, 125–132. Web of Science CrossRef CAS IUCr Journals Google Scholar
Karplus, P. A. & Diederichs, K. (2012). Science, 336, 1030–1033. Web of Science CrossRef CAS PubMed Google Scholar
Kelley, L. A., Mezulis, S., Yates, C. M., Wass, M. N. & Sternberg, M. J. E. (2015). Nature Protoc. 10, 845–858. Web of Science CrossRef CAS Google Scholar
Kleywegt, G. J. & Read, R. J. (1997). Structure, 5, 1557–1569. Web of Science CrossRef CAS PubMed Google Scholar
Kotiguda, G. G., Weinberg, D., Dessau, M., Salvi, C., Serino, G., Chamovitz, D. A. & Hirsch, J. A. (2012). J. Biol. Chem. 287, 42031–42041. CrossRef Google Scholar
Lebedev, A. A., Vagin, A. A. & Murshudov, G. N. (2006). Acta Cryst. D62, 83–95. Web of Science CrossRef CAS IUCr Journals Google Scholar
Lee, J.-H., Yi, L., Li, J., Schweitzer, K., Borgmann, M., Naumann, M. & Wu, H. (2013). Proc. Natl Acad. Sci. USA, 110, 11845–11850. CrossRef Google Scholar
Lingaraju, G. M., Bunker, R. D., Cavadini, S., Hess, D., Hassiepen, U., Renatus, M., Fischer, E. S. & Thomä, N. H. (2014). Nature (London), 512, 161–165. CrossRef Google Scholar
Luo, Z., Rajashankar, K. & Dauter, Z. (2014). Acta Cryst. D70, 253–260. Web of Science CrossRef CAS IUCr Journals Google Scholar
McCoy, A. J., Grosse-Kunstleve, R. W., Adams, P. D., Winn, M. D., Storoni, L. C. & Read, R. J. (2007). J. Appl. Cryst. 40, 658–674. Web of Science CrossRef CAS IUCr Journals Google Scholar
McCoy, A. J. & Read, R. J. (2010). Acta Cryst. D66, 458–469. Web of Science CrossRef CAS IUCr Journals Google Scholar
Murshudov, G. N., Skubák, P., Lebedev, A. A., Pannu, N. S., Steiner, R. A., Nicholls, R. A., Winn, M. D., Long, F. & Vagin, A. A. (2011). Acta Cryst. D67, 355–367. Web of Science CrossRef CAS IUCr Journals Google Scholar
Nicholls, R. A., Long, F. & Murshudov, G. N. (2012). Acta Cryst. D68, 404–417. Web of Science CrossRef CAS IUCr Journals Google Scholar
Padilla, J. E. & Yeates, T. O. (2003). Acta Cryst. D59, 1124–1130. Web of Science CrossRef CAS IUCr Journals Google Scholar
Pannu, N. S., McCoy, A. J. & Read, R. J. (2003). Acta Cryst. D59, 1801–1808. Web of Science CrossRef CAS IUCr Journals Google Scholar
Pathare, G. R., Nagy, I., Bohn, S., Unverdorben, P., Hubert, A., Korner, R., Nickell, S., Lasker, K., Sali, A., Tamura, T., Nishioka, T., Forster, F., Baumeister, W. & Bracher, A. (2012). Proc. Natl Acad. Sci. USA, 109, 149–154. CrossRef Google Scholar
Poornam, G. P., Matsumoto, A., Ishida, H. & Hayward, S. (2009). Proteins, 76, 201–212. CrossRef Google Scholar
Rudenko, G., Henry, L., Vonrhein, C., Bricogne, G. & Deisenhofer, J. (2003). Acta Cryst. D59, 1978–1986. Web of Science CrossRef CAS IUCr Journals Google Scholar
Sanchez-Weatherby, J., Bowler, M. W., Huet, J., Gobbo, A., Felisaz, F., Lavault, B., Moya, R., Kadlec, J., Ravelli, R. B. G. & Cipriani, F. (2009). Acta Cryst. D65, 1237–1246. Web of Science CrossRef CAS IUCr Journals Google Scholar
Sarin, L. P., Wright, S., Chen, Q., Degerth, L. H., Stuart, D. I., Grimes, J. M., Bamford, D. H. & Poranen, M. M. (2012). Virology, 432, 184–193. CrossRef Google Scholar
Schröder, G. F., Levitt, M. & Brunger, A. T. (2010). Nature (London), 464, 1218–1222. Web of Science PubMed Google Scholar
Schröder, G. F., Levitt, M. & Brunger, A. T. (2014). Acta Cryst. D70, 2241–2255. CrossRef IUCr Journals Google Scholar
Smart, O. S., Womack, T. O., Flensburg, C., Keller, P., Paciorek, W., Sharff, A., Vonrhein, C. & Bricogne, G. (2012). Acta Cryst. D68, 368–380. Web of Science CrossRef CAS IUCr Journals Google Scholar
Terwilliger, T. C. (2000). Acta Cryst. D56, 965–972. Web of Science CrossRef CAS IUCr Journals Google Scholar
Terwilliger, T. C. (2013). J. Struct. Funct. Genomics, 14, 91–95. CrossRef Google Scholar
Turk, D. (2013). Acta Cryst. D69, 1342–1357. Web of Science CrossRef CAS IUCr Journals Google Scholar
Vonrhein, C., Blanc, E., Roversi, P. & Bricogne, G. (2005). Methods Mol. Biol. 364, 215–230. Google Scholar
Wei, Z., Zhang, P., Zhou, Z., Cheng, Z., Wan, M. & Gong, W. (2004). J. Biol. Chem. 279, 34983–34990. CrossRef Google Scholar
Winn, M. D. et al. (2011). Acta Cryst. D67, 235–242. Web of Science CrossRef CAS IUCr Journals Google Scholar
Zhang, H., Gao, Z.-Q., Wang, W.-J., Liu, G.-F., Shtykova, E. V., Xu, J.-H., Li, L.-F., Su, X.-D. & Dong, Y.-H. (2012). FEBS Lett. 586, 1147–1153. CrossRef Google Scholar
Zhang, Y. (2007). BMC Bioinformatics, 9, 40. Google Scholar
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