Introduction
Symmetry is ubiquitous in biology, and viruses provide some of the simplest models for understanding how multiple copies of the same protein can be assembled into large macromolecular assemblies. In an extremely speculative paper with little data to support their argument, Watson and Crick suggested almost 70 years ago why all small viruses are either rod-like or spherical (Crick and Watson, Reference Crick and Watson1956): the rod-like viruses would have helical symmetry, while the spherical ones would have a point-group symmetry, with icosahedral symmetry being one of the three possibilities they considered. Many years of subsequent investigations have amply confirmed this speculation, and atomic structures now exist for hundreds of helical and icosahedral viruses. However, detailed studies of bacterial, archaeal, and eukaryotic cells have also shown how multiple copies of the same protein can be assembled symmetrically into shells, rings, and filaments. This review will focus on using cryo-EM to study the filaments and tubes assembled by viruses, bacteria, archaea, and eukaryotes, understanding the helical symmetry present and how helical symmetry may be broken in some of these systems. The review will also discuss some of the work being done using peptides and other relatively small molecules that self-assemble into tubes and filaments. In all cases, the tremendous advances that have been made in cryo-EM over the past 12 years, referred to as the ‘resolution revolution’ (Kuhlbrandt, Reference Kuhlbrandt2014), allow for the atomic structures of these assemblies to be readily determined. This review will most definitely not attempt to summarize the ~1,800 volumes currently deposited in the Electron Microscopy Data Bank (EMDB) that have been reconstructed with helical symmetry, nor will it attempt to be a complete handbook for how to process cryo-EM images of helical structures. Rather, it will focus on a relatively few issues and problems that arise from such polymers.
The first three-dimensional reconstruction by electron microscopy was of a helical bacteriophage tail (DeRosier and Klug, Reference DeRosier and Klug1968). Many more such structures have now been solved and at ever increasing resolutions. Some of the ‘model’ systems that have played an important role in the general development of cryo-EM include cytoskeletal filaments such as actin (Fujii et al., Reference Fujii, Iwane, Yanagida and Namba2010; Merino et al., Reference Merino, Pospich, Funk, Wagner, Kullmer, Arndt, Bieling and Raunser2018) and microtubules (Alushin et al., Reference Alushin, Lander, Kellogg, Zhang, Baker and Nogales2014; Zhang et al., Reference Zhang, Alushin, Brown and Nogales2015). Of the ~1,800 cryo-EM volumes currently deposited in the EMDB that have been solved by helical reconstruction, the largest single-family certainly involves amyloid. It is far beyond the scope of this article to discuss these structures or the particular methodological problems that they pose (Lovestam and Scheres, Reference Lovestam and Scheres2022), but several recent papers provide some overview (Garcia-Pardo and Ventura, Reference Garcia-Pardo and Ventura2024; Mishra, Reference Mishra2023; Scheres et al., Reference Scheres, Ryskeldi-Falcon and Goedert2023). There is an expanding body of literature about enzymes that self-assemble into helical polymers, discussed and reviewed in a number of papers (Hvorecny and Kollman Reference Hvorecny and Kollman2023; Lynch et al., Reference Lynch, Kollman and Webb2020; Park and Horton Reference Park and Horton2019; Reference Park and Horton2020; Pillay et al., Reference Pillay, Mariotti, Zaleska, Inian, Jessop, Hibbs, Desfosses, Hopkins, Templeton, Beuron, Morris and Guettler2022). While some of the earliest observations of filamentation by an enzyme, such as glutamine synthetase, date from 1968 (Valentine et al., Reference Valentine, Shapiro and Stadtman1968), the acetyl CoA carboxylase story followed soon after (Kleinschmidt et al., Reference Kleinschmidt, Moss and Lane1969). Remarkably, it has been shown that filamentation can be used to either repress enzymatic activity or activate it! It is quite likely that the repertory of enzymes that polymerize will continue to grow, as judged by a recent finding of an extracellular serine peptidase Vpr from Bacillus forming enzymatically active filaments (Cheng et al., Reference Cheng, Han, Song, Zhang and Cao2023).
Helical symmetry
Helical symmetry, in crystallographic terms, is a screw symmetry where there is a coupled rotation about the helical axis and translation along the helical axis relating identical objects. A helical filament or tube can have an additional rotational point group symmetry Cn, where a rotation of the structure about the helical axis by 360°/n leaves the structure invariant. Further, there can be a dyad axis perpendicular to the helical axis such that rotation of the structure around this dyad axis by 180° leaves the structure invariant. Since we are dealing in this review with biological polymers (composed primarily of proteins and peptides) where the building blocks are intrinsically asymmetric, a filament or tube with dyadic symmetry must have an asymmetric unit that is at least a dimer, so that the asymmetric unit itself has dyadic symmetry. The dyadic symmetry, D1, can be combined with a Cn point group symmetry to give a Dn symmetry in addition to the screw symmetry. In a three-dimensional crystal, the only screw symmetries that are possible have either 2, 3, 4 or 6 subunits per turn allowing all subunits to be in identical environments. Perhaps as a consequence, the screw symmetry was described in historical papers (Cochran, Reference Cochran, F.H. and Vand1951; Klug et al., Reference Klug, Crick and Wyckoff1958) as involving the ratio of integers (e.g., tobacco mosaic virus was a 49/3 helix having 49 subunits in 3 turns), but we now understand that there is no reason for this symmetry outside of a crystal to be described or approximated by integer ratios (Egelman, Reference Egelman2007, Reference Egelman2010).
In the absence of a point group symmetry, the description of the helical symmetry is quite simple. There is a 1-start helix that passes through every subunit, and the pitch of this helix is defined by the number of subunits per turn (which is 360° divided by the rotation per subunit) times the rise per subunit. The ‘1-start’ description refers to the fact that a plane perpendicular to the filament axis will only intersect this helical line once, while for a 2-start helix such a plane will intersect these helical lines twice, a 3-start three times, and so forth However, there will be potential ambiguities in defining this 1-start helix. For example, if we imagine that F-actin filaments (Figure 1) have 2.16 subunits/turn along a left-handed helix (a rotation of 166.67°), and that the rise per subunit is 27.3 Å, there will be a left-handed 1-start helix with a pitch of 59 Å, but there will also be a right-handed 1-start helix with 1.86 subunits/turn (a rotation of 193.33°) with a pitch of 51 Å. The convention has usually been to define the structure by the 1-start helix having the rotation less than 180°, so in this case we define actin by the left-handed 1-start helix. However, a description using the right-handed 1-start would be just as correct.
Helical reconstruction
Helical reconstruction of filaments using cryo-EM has been thoroughly covered before in previous reviews and papers (Desfosses et al., Reference Desfosses, Ciuffa, Gutsche and Sachse2014; Egelman, Reference Egelman2010; Reference Egelman2024; Wang et al., Reference Wang, Gnewou, Solemanifar, Conticello and Egelman2022). The software used to reconstruct helical filaments has changed dramatically over the course of the years, but the scheme is basically the same after single-particle approaches to helical reconstruction (Egelman, Reference Egelman2000) have supplanted Fourier-Bessel methods (DeRosier and Klug, Reference DeRosier and Klug1968; Klug et al., Reference Klug, Crick and Wyckoff1958). Currently, helical reconstruction can be performed quite effectively using software packages such as cryoSPARC (Punjani et al., Reference Punjani, Rubinstein, Fleet and Brubaker2017) and RELION (Scheres, Reference Scheres2012). The basic workflow involves the initial processing of micrographs (motion correction, CTF estimation) followed by particle picking (now typically automated). Initial particle sorting can be done using 2D classification, which is the single-particle cryo-EM standard. Following this, the power spectrum should be calculated from a subset of good particles. These can be either hand-picked particles or particles from good 2D classes in a 2D classification job. As previously discussed (Egelman, Reference Egelman2024; Wang et al., Reference Wang, Yu, Yip, Strynadka and Egelman2006), the power spectrum of an average is not the same as the averaged power spectrum. Thus, one must take the individual segments that are part of a class average, impose the rotations that were used to generate the class average (the translations do not matter, as the power spectrum is invariant under translation, generate the power spectrum of these rotationally aligned segments, and then add them all together). This can now be done easily in cryoSPARC. Determining the helical symmetry for a filament or tube from a power spectrum may be problematic and is often the most difficult part of dealing with helical structures (Egelman, Reference Egelman2024). There are some polymers where the symmetry is completely unambiguous at even relatively low resolution, so it may help the discussion to start with such an example. The second one is much more complicated, and there are ~50 possible solutions. Unfortunately, most real specimens are likely to behave more like the second case than the first one!
A simple case of helical symmetry determination
Figure 1a shows an atomic model of an actin filament, and Figure 1b shows the power spectrum computed from the projection of this filament model. Four layer lines are labeled with their height, and the correct Bessel order is assigned. We will show that at the extremely low resolution of ~35 Å, before one would see the n = 0 meridional, corresponding to the rise per subunit, at 1/(27 Å), the symmetry is unambiguous with only three-layer lines visible. The helical symmetry (giving the rise and rotation per subunit) is completely determined if any two of these three-layer lines have a Bessel order correctly assigned. The strongest layer line is the one at 1/(59 Å). We can measure R, the distance of the peak on this layer line from the meridian, and it is ~0.009 Å−1. We can estimate (at low resolution) the diameter of the filament, and it is ~80 Å (but the atomic model is actually ~95 Å in diameter). The argument x for a Bessel function Jn(x) on a layer line will be x = 2πRr, where r is the real space radius of an atom, and the first maximum for a Bessel order 1 will be when 2πRr = 1.84, while for a Bessel order 2, the first maximum will be when 2πRr = 3.05. Using r = 40 Å and R = 0.009 (observables from the image and the power spectrum, respectively), we get an argument of 2.3. This is significantly less than 3.05, establishing that the Bessel order on this 1/(59 Å) layer line could only be either +1 or − 1. Similarly, we can look at the 1/(51 Å) layer line and measure R = 0.0085. This also shows that the Bessel order on the 1/(51 Å) layer line could only be +1 or −1. These two layer lines must have the opposite signs, as the vector relating them should have a Bessel order of +2 or −2, to give rise to the peak on the layer line at 1/(370 Å). If they had the same sign, then the Bessel order on the 1/(370 Å) layer line would need to be 0, which is clearly not the case. We are thus left with an intrinsic ambiguity about the helical hand from this assignment of Bessel orders, but we can easily resolve it by looking at AFM or metal-shadowed images of actin filaments which show us that the long pitch actin helices giving rise to the 1/(370 Å) layer line are right-handed, so we now know that there is n = −1 at 1/(59 Å) and n = +1 at 1/(51 Å). Life would be much easier if all helical structures led to such simple solutions.
A difficult case of helical symmetry determination
Helical structures made up of shorter peptides are particularly challenging in terms of helical symmetry determination. Consider the LD-tube (Figure 2) composed of the dipeptide (ʟ,ᴅ)-2NapFF (Sonani et al., Reference Sonani, Bianco, Dietrich, Doutch, Draper, Adams and Egelman2024a). This peptide has a naphthalene moiety attached to the N-terminus of diphenylalanine (FF), with the second phenylalanine being in the D-isoform (Figure 2a). The (ʟ,ᴅ)-2NapFF peptide self-assembles to form a ~ 300 Å wide, thin-walled, hollow tube, as evidenced by cryo-EM micrographs and 2D class averages (Figure 2b). The power spectrum of LD-tube segments reveals high-resolution features up to ~3.0 Å, suggesting that the packing of dipeptides is highly ordered. This, at first impression, implies that determining the helical symmetry and solving the structure might be relatively straightforward.
However, the task was more complex than it appears, as there are approximately 50 possible helical symmetries necessitating a testing of each. By knowing the tube’s radius (r) and the ‘R’ value (distance of the first peak of the layer line from the meridian), one can calculate the argument x for a Bessel function Jn(x)2πRr for layer lines ll1 at 1/(21 Å) and ll7 at 1/(3 Å) (Figure 2c). However, it is clear that there is not a single value of r, as the walls of the tube have a finite thickness. So putting in a range of values for r suggests that ll1 could correspond to Bessel orders 27, 28, 29, 30, 31, 32, or 33. But ll7 could be anything from n = 0 to n = 12. So the number of combinations is at least 7*13 = 91, without considering the signs of these Bessel orders. Considering the sign, such that each Bessel order can be either positive or negative, there would be 364 possibilities! We know that the absolute hand cannot be determined from the power spectrum (Wang et al., Reference Wang, Gnewou, Solemanifar, Conticello and Egelman2022), so we do not need to calculate, for example, both 28/7 and − 28/−7 for ll1/ll7, as one will simply be the mirror image of the other. We will thus assume that the Bessel order on ll1 is positive. Consequently, there are up to 182 possible helical symmetries, such as Bessel orders for ll1/ll7 being 28/7, 28/−7, 29/7, 29/−7, and so forth. However, ll6 in the power spectrum has a peak substantially closer to the meridian than ll1, and ll6 will be the Bessel order on ll1 subtracted from the Bessel order on ll7. For example, if ll1 is 30 and ll7 is 7, ll6 would be −23, while if ll1 is 30 and ll7 is −7, ll6 would be −37. Assuming that ll1 is a positive Bessel order, then ll7 must also be positive and cannot be less than 6. This greatly reduces the number of possible solutions to only 49, with ll1 being from 27–33 and ll7 being from 6–12.
Could generating a power spectrum at even higher resolution solve the ambiguities present? If we somehow had layer lines out to 1 Å (as opposed to the ~3 Å we show in Figure 2c) would these ambiguities vanish? The answer is simply no, for the reason that out-of-plane tilt remains an unknown variable and one that we cannot control in specimen preparation. Helical symmetry is most simply understood when filaments are lying in the plane of projection, that is when the helical axis is perpendicular to the electron beam. For negatively stained specimens that have been adsorbed to a substrate, such as a carbon film, this is almost certainly the case. However, in cryo-EM, the ice has a finite thickness, and a filament may not be precisely in a plane perpendicular to the beam. We refer to this as out-of-plane tilt, and it can greatly complicate the analysis of diffraction patterns as intensities on layer lines are shifted (Egelman, Reference Egelman2014).
This is illustrated by the fact that in Figure 2d a power spectrum from a subset of tubes is shown where the layer line at 1/(3 Å) has clear meridional intensity and must be n = 0 if there were no out-of-plane tilt. But we know that it is n = 9, and the amount of out-of-plane tilt needed to make the n = 9 look like an n = 0 is only about 2° for this layer line. If we had layer lines beyond the 1/(3 Å) seen, they would be even more sensitive to out-of-plane tilt, and thus would provide no useful information for determining the helical symmetry.
The problem is further complicated by the fact that closely related symmetries can have axial rises, in some cases, differing by only a few thousandths of an Å. For instance, the helical symmetries 31/9 and 32/9, based on Bessel orders for ll1/ll7, have axial rises of 0.102 Å and 0.0989 Å, respectively. The 0.003 Å difference in axial rise between these symmetries results in very similar helical nets (discussed below), making it challenging to distinguish between them. In practice, this can lead to numerous local minima during refinement, in which the alignment procedure can get stuck.
Additionally, the absence of low-to-medium resolution features, as observed in the power spectrum with no detectable nonequatorial peaks between 1/(13 Å) to 1/(5 Å) (Figure 2c), complicates matters. This absence of low-resolution information, a well-known problem for amyloid filaments, hampers iterative refinement algorithms. The iterative refinement algorithm, used by programs such as Relion and CryoSPARC, requires a reference volume at each cycle for the alignment of the images. The starting volume, for helical refinement, can be a simple cylinder, which gets better at every iteration based on the low to medium-resolution features present in the structure. Since the LD-tube has no low-resolution features, the iterative approach tends to get stuck in local minima. A solution is to use an initial model. One approach for generating an initial model involves using 2D class averages (Scheres, Reference Scheres2020). This method mainly relies on the apparent crossovers in the 2D class averages of amyloid filaments. However, since no such crossover is visible in 2D class averages of LD tube, this method may not be directly applicable. Alternatively, an initial model can be generated from a small subset of unbinned segments using SPIDER, as described in Sonani et al. (Reference Sonani, Bianco, Dietrich, Doutch, Draper, Adams and Egelman2024a), where random azimuthal angles are assigned to these projections. Starting with such an initial model and by extensive symmetry testing of the 49 possible symmetries, the 3.3 Å map of LD tube was achieved, revealing the 32-start helical organization of dipeptides in the tube (Figure 2e).
Unique cases in helical symmetry
A case with mixed helical symmetries
In the context of problematic cases, helical symmetry determination for a sample exhibiting dual helical symmetries is challenging. The contractile tail of Myoviridae bacteriophages comprises a central tube and surrounding sheath, both of which exhibit identical helical symmetry in their precontracted state (Hardy et al., Reference Hardy, Dunstan, Lithgow and Coulibaly2022). This symmetry is relatively straightforward to identify due to the presence of only two prominent layer lines n = 0 and n = 6 in its power spectrum. However, during the bacteriophage life cycle, the tail sheath undergoes contraction of up to 25% of its original length, leading to a scenario where the tube and sheath adopt different helical symmetries. While it has been assumed that the tube structure remains unchanged when the surrounding sheath contracts (Leiman and Shneider, Reference Leiman and Shneider2012), this has never been determined experimentally until very recently (Sonani et al., Reference Sonani, Palmer, Esteves, Horton, Sebastian, Kelly, Wang, Kreutzberger, Russell and Leiman2024b), due to the fact that in the post-contracted state there will be a superposition of two different helical symmetries.
Figure 3a shows a cryo-electron micrograph of the post-contracted tail of myophage Milano, infecting the soil bacterium Agrobacterium tumefaciens (Nittolo et al., Reference Nittolo, Ravindran, Gonzalez and Ramsey2019; Sonani et al., Reference Sonani, Palmer, Esteves, Horton, Sebastian, Kelly, Wang, Kreutzberger, Russell and Leiman2024b). Figure 3b is the 2D class average of contracted tail segments showing the overlapping projection of tube and sheath having different helical symmetries. Figure 3c shows a simulated top view of the contracted tail, with the tube in violet and the sheath in grey. The size of the sheath protein is nearly four times larger than the tube protein, resulting in a sheath:tube mass ratio of ~4:1 in projected images. This causes the sheath signal to completely dominate the weak tube signal. Consequently, the power spectrum (Figure 3d) derived from the contracted tail segments predominantly shows layer lines arising from the sheath. Specifically, the layer lines at ~1/(34 Å) (n = 0) and ~ 1/(17 Å) (n = 6) are attributed to the sheath symmetry, with no discernible layer lines arising from the tube symmetry. This problem kept the post-contracted tube structure unresolved and speculative for a long time (Fraser et al., Reference Fraser, Prokhorov, Jiao, Pettitt, Scheuring and Leiman2021; Leiman and Shneider, Reference Leiman and Shneider2012).
The strategy to solve this problem involved windowing of raw tail segments (Sonani et al., Reference Sonani, Palmer, Esteves, Horton, Sebastian, Kelly, Wang, Kreutzberger, Russell and Leiman2024b). As shown in Figure 3e, the tail segments were tightly masked to decrease the signal from the sheath and increase the relative contribution of the tube. As shown in the simulated top view (Figure 3f), this cannot completely eliminate the signal from sheath but reduces the sheath:tube mass ratio to ~2:1. The power spectrum of these windowed segments (Figure 3g) reveals additional layer lines at approximately 23 Å and 12 Å, which correspond to the helical symmetry of the tube. Indexing these layer lines as n = 0 and n = 6, respectively, yielded helical symmetry parameters of 28.2° twist and 34.0 Å rise. Imposing these parameters made possible a ~ 3.3 Å reconstruction of the tube enclosed within a contracted sheath (Figure 3h) due to the fact that the mass of the surrounding sheath is averaged out because of its different helical symmetry.
Bacterial flagellar filaments with outer domain multimers
Flagella are motility devices that have convergently evolved across the three domains of life (bacteria, archaea and eukaryotes) to allow cells to swim in solution (Beeby et al., Reference Beeby, Ferreira, Tripp, Albers and Mitchell2020). While it has been proposed that the archaeal flagellum should be called an ‘archaellum’ due to the fact that it has no homology with the bacterial flagellum (Jarrell and Albers, Reference Jarrell and Albers2012), we have many examples where analogous, but nonhomologous systems in biology retain the same name. Birds, bats, and bees have wings, but these are analogous and do not have a common ancestry. Insects and mammals have legs, but these appendages also have no common ancestry. We and others (Wirth, Reference Wirth2012) have therefore argued that all three should retain their classical description as flagella, even though none of the main components of the three flagellar systems share homology. The eukaryotic cilium is very similar to the eukaryotic flagellum, but the term flagellum is used to describe the undulating tails of motile cells such as sperm and protists, and these tails are not called cilia. For example, a PubMed search for ‘sperm’ AND ‘flagellum’ returns 1,517 papers. Similarly, a search for ‘trypanosome’ AND ‘flagellum’ returns 182 papers. While the eukaryotic flagellum is composed of hundreds of different components (Pazour et al., Reference Pazour, Agrin, Leszyk and Witman2005), bacterial and archaeal flagellar filaments are much simpler and in general are mainly composed of thousands of copies of a single protein, flagellin. Despite having no homology, bacterial and archaeal flagellins have convergently evolved to assemble into filaments with three-dimensional supercoils using strikingly similar mechanisms (Kreutzberger et al., Reference Kreutzberger, Sonani, Liu, Chatterjee, Wang, Sebastian, Biswas, Ewing, Zheng, Poly, Frankel, Luisi, Calladine, Krupovic, Scharf and Egelman2022b). The structures of bacterial flagellar filaments have been studied extensively since the 1970’s (Kamiya and Asakura, Reference Kamiya and Asakura1976; Wakabayashi and Mitsui, Reference Wakabayashi and Mitsui1970) with some papers dating back even earlier (Pijper and Abraham, Reference Pijper and Abraham1954). Until recently, almost all structural studies were done exclusively on nonmotile mutant straight (as opposed to supercoiled) flagellar filaments that were found to contain all left-handed (L-type) or right-handed (R-type) protofilaments (Hyman and Trachtenberg, Reference Hyman and Trachtenberg1991; Kreutzberger et al., Reference Kreutzberger, Ewing, Poly, Wang and Egelman2020; Maki-Yonekura et al., Reference Maki-Yonekura, Yonekura and Namba2010; Samatey et al., Reference Samatey, Imada, Nagashima, Vonderviszt, Kumasaka, Yamamoto and Namba2001; Wang et al., Reference Wang, Burrage, Postel, Clark, Orlova, Sundberg, Kearns and Egelman2017; Yonekura et al., Reference Yonekura, Maki-Yonekura and Namba2003). There are 11 protofilaments formed by the protein flagellin in these filaments, and in the L-type and R-type mutants all 11 protofilaments are either left-handed or right-handed, respectively. In these straight mutants, helical symmetry exists such that every flagellin molecule is in an identical environment. More recently, there have been many structures obtained from supercoiled flagellar filaments which retain their curvature in the relatively thin ice of cryo-EM conditions (Blum et al., Reference Blum, Filippidou, Fatton, Junier and Abrahams2019; Fields et al., Reference Fields, Zhang, Bellis, Petersen, Halder, Rich-New, Wu and Wang2024; Gibson et al., Reference Gibson, Trajtenberg, Wunder, Brady, San Martin, Mechaly, Shang, Liu, Picardeau, Ko, Buschiazzo and Sindelar2020; Kreutzberger et al., Reference Kreutzberger, Sobe, Sauder, Chatterjee, Pena, Wang, Giron, Kiessling, Costa, Conticello, Frankel, Kendall, Scharf and Egelman2022a; Kreutzberger et al., Reference Kreutzberger, Sonani, Liu, Chatterjee, Wang, Sebastian, Biswas, Ewing, Zheng, Poly, Frankel, Luisi, Calladine, Krupovic, Scharf and Egelman2022b; Montemayor et al., Reference Montemayor, Ploscariu, Sanchez, Parrell, Dillard, Shebelut, Ke, Guerrero-Ferreira and Wright2021; Nedeljkovic et al., Reference Nedeljkovic, Kreutzberger, Postel, Bonsor, Xing, Jacob, Schuler, Egelman and Sundberg2023; Sanchez et al., Reference Sanchez, Montemayor, Ploscariu, Parrell, Baumgardt, Yang, Sibert, Cai and Wright2023). However, the majority of these cryo-EM reconstructions still imposed helical symmetry, even though it is not strictly present in the supercoiled state. The proposed mechanistic basis for bacterial flagellar filament supercoiling has a long history going back almost 50 years, based upon assumed mixtures of L- and R-state protofilaments (Calladine, Reference Calladine1975; Calladine et al., Reference Calladine, Luisi and Pratap2013; Kamiya et al., Reference Kamiya, Asakura and Yamaguchi1980; Kamiya et al., Reference Kamiya, Hotani and Asakura1982). The relevance of the L- and R-type mutants appears to have diminished, as a recent study showed that neither of these two conformations exist in the wildtype supercoiled structures as determined by cryo-EM (Kreutzberger et al., Reference Kreutzberger, Sonani, Liu, Chatterjee, Wang, Sebastian, Biswas, Ewing, Zheng, Poly, Frankel, Luisi, Calladine, Krupovic, Scharf and Egelman2022b). Given the long history of flagellar filament structural biology, an entire review on just this subject would be required to do justice to the many papers that have been produced. This is well beyond the scope of the present review, and we will focus on some examples of both the distinct helical symmetries adopted by flagellar filaments, and how this symmetry can be broken by supercoiling.
All flagellar filaments have an overall symmetry that is dependent on the protein domains D0 and D1 found in the inner core of every flagellar filament. If one were to obtain cryo-electron micrographs of flagellar filaments (Figure 4a) and process them to obtain an averaged power spectrum, many types of flagellar filaments would have a power spectrum resembling the one shown in Figure 4b. Two such examples are flagellar filaments from Bacillus subtilis (Wang et al., Reference Wang, Burrage, Postel, Clark, Orlova, Sundberg, Kearns and Egelman2017) (Figure 4c) and Campylobacter jejuni (Kreutzberger et al., Reference Kreutzberger, Ewing, Poly, Wang and Egelman2020) (Figure 4d). The most prominent layer lines in this power spectrum are from the 1-, 5- and 6-start helices. However, straight L- and R-type flagellar filaments may also produce a power spectrum with a clear n = 11 layer line arising from the 11-start helix (Wang et al., Reference Wang, Burrage, Postel, Clark, Orlova, Sundberg, Kearns and Egelman2017). These flagellar filaments have helical symmetry parameters that vary slightly depending on whether the filaments are straight (L-type/R-type) or in different supercoiled states (Normal, Curly I, Curly II, etc.) (Calladine et al., Reference Calladine, Luisi and Pratap2013; Wang et al., Reference Wang, Burrage, Postel, Clark, Orlova, Sundberg, Kearns and Egelman2017). For all these symmetries, the helical rise typically varies between about 4.4 Å and 5.0 Å and the twist varies between 65.3° and 65.8°. We will refer to this as a canonical or monomeric flagellar filament symmetry, as the asymmetric unit in the filament contains a single flagellin molecule. Helical symmetries can be easily plotted as helical nets, which is the unrolled surface lattice. In Figure 4e, the helical net of a canonical flagellar filament with a monomeric symmetry is shown.
While the B. subtilis and C. jejuni flagellar filaments have similar helical symmetries, there are additional domains (called outer domains) in the C. jejuni filament. The B. subtilis flagellin only has core domains D0 and D1, while the C. jejuni flagellin has additional domains D2, D3, and D4. These domains are on the surface of the filament and result in the C. jejuni filament having a larger diameter than the B. subtilis one. The model system for many earlier structural studies was the Salmonella typhimurium flagellar filament, which contains outer domains D2 and D3. However, there is no homology between these Salmonella outer domains and the C. jejuni ones, but they are still given the same name solely to indicate their position in the flagellin fold. In both, the cases of the C. jejuni and S. typhimurium flagellar filaments, any packing interactions that the outer domains make do not contribute to the symmetry of the filament. We know this because these filaments have the same symmetry as the B. subtilis filaments, which have essentially no outer domain (only a very small loop region is present). However, we will show how some flagellin outer domains can drastically alter the overall symmetries of their respective filaments by establishing new packing interactions on the filament surface, although these new contacts do not alter the interactions in domains D0 and D1.
There were numerous early studies which described flagellar filaments with ‘perturbed’ symmetries (Cohen-Krausz and Trachtenberg, Reference Cohen-Krausz and Trachtenberg1998; Kamiya et al., Reference Kamiya, Hotani and Asakura1982; Trachtenberg et al., Reference Trachtenberg, DeRosier and Macnab1987; Trachtenberg et al., Reference Trachtenberg, DeRosier, Zemlin and Beckmann1998) due to power spectra with extra layer lines in addition to the typical canonical ones. These additional layer lines indicated that there was a larger asymmetric unit than a single flagellin in these filaments, likely arising from interactions among the outer domains that were altering the symmetry as a whole. Recent studies using cryo-EM have found similar cases where the overall filament symmetry is different from the canonical one (Fields et al., Reference Fields, Zhang, Bellis, Petersen, Halder, Rich-New, Wu and Wang2024; Kreutzberger et al., Reference Kreutzberger, Sobe, Sauder, Chatterjee, Pena, Wang, Giron, Kiessling, Costa, Conticello, Frankel, Kendall, Scharf and Egelman2022a; Wang et al., Reference Wang, Burrage, Postel, Clark, Orlova, Sundberg, Kearns and Egelman2017). In some flagellar filaments, the overall surface of the filament is noticeably different, and this can be seen in raw electron micrographs such as the one from E. coli O157:H7 (EHEC O157:H7) shown in Figure 5a. The averaged power spectrum of multiple segments of EHEC H7 flagellar filaments shows twice the number of layers lines as expected for a canonical flagellar filament (Figure 5b). However, knowing that this is a flagellar filament makes determining the symmetry much easier. Since the n = +1, n = −5, and n = +6 layer lines occur at approximately the same spacings for the EHEC H7 flagellar filament as they do in canonical flagellar filaments, the simplest explanation is that the additional layer lines arise from a larger asymmetric unit. Calculation of the symmetry from the EHE H7 power spectrum shows a helical rise of ~9.6 Å and a helical twist of ~130.8°, values that are roughly double those of the canonical flagellar filament symmetry parameters, showing that the asymmetric unit has doubled.
Helical reconstruction with these parameters results in a density map with unique surface features (Figure 5c) that atomic model building reveals to be the result of the EHEC flagellin outer domains having two distinct conformations that are related to each other by a 180° rotation (Figure 5d). When these two conformations are mapped onto a helical net with a monomeric symmetry, the overall symmetry of the dimer flagellar filament can be clearly visualized (Figure 5e). Such a huge conformational change (a 180° rotation of half of the outer domains) cannot in any way be considered a ‘perturbation’, in stark contrast with the earlier descriptions (Trachtenberg et al., Reference Trachtenberg, DeRosier, Aizawa and Macnab1986). Similarly, a flagellar filament belonging to the genus Achromobacter also has unique surface patterns revealed in electron micrographs (Figure 5f), and analysis of their power spectrum revealed four times the number of layer lines when compared to a canonical flagellar filament (Figure 5g). Determination of the helical symmetry from the power spectrum resulted in a tetrameric symmetry with a helical rise of ~19.2 Å and a helical twist of ~261.6°, values that are quadruple those of canonical flagellar filament symmetries. Helical reconstruction using this tetrameric symmetry resulted in a high-resolution density map with unique surface features (Figure 5h) and subsequent model building revealed four unique flagellin outer domain conformation (Figure 5i). Such a tetrameric symmetry can also be visualized on a helical net plotted using the monomeric symmetry, but the asymmetric unit now contains four flagellin molecules (Figure 5j).
Filaments with seams
The notion of breaks or ‘seams’ in helical symmetry has been present in the field of helical assemblies for quite some time. Perhaps the most well-known example is the seam that occurs in microtubules (Kikkawa et al., Reference Kikkawa, Ishikawa, Nakata, Wakabayashi and Hirokawa1994). This break in the symmetry of the microtubule lattice is due to a register switch along a line in the filament where the pattern of αβαβ… is broken (Figure 6a). At low resolution, α and β tubulin look identical, and thus, the seam would not be seen. However, microtubule-binding proteins such as kinesin bind to α- and β-tubulin differently, and thus can be used to visualize the seam at low resolution (Kikkawa et al., Reference Kikkawa, Ishikawa, Nakata, Wakabayashi and Hirokawa1994). Seams arising in bacterial flagellar filaments due to a pairing of subunits have been called ‘non-helical perturbations’ (Trachtenberg et al., Reference Trachtenberg, DeRosier, Zemlin and Beckmann1998), as opposed to the ‘helical perturbations’ that arise from a pairing of subunits that leave helical symmetry intact, albeit with double the asymmetric unit. Such an example of a seam in Pseudomonas aeruginosa strain PAO1 was reconstructed at low resolution (Wang et al., Reference Wang, Burrage, Postel, Clark, Orlova, Sundberg, Kearns and Egelman2017). While the PAO1 power spectrum in Figure 6b suggests a dimer symmetry similar to the EPEC H7 filament, further analysis reveals that the additional layer lines contain noninteger Bessel orders, and that the filament cannot have a strict dimeric helical symmetry such as found in the EPEC H7 filaments. Recently, a scheme has been developed to asymmetrically reconstruct bacterial flagellar filaments to reveal features such as curvature and supercoiling (Kreutzberger et al., Reference Kreutzberger, Sonani, Liu, Chatterjee, Wang, Sebastian, Biswas, Ewing, Zheng, Poly, Frankel, Luisi, Calladine, Krupovic, Scharf and Egelman2022b). While described in greater detail in the sections below, this same reconstruction methodology was used to solve the PAO1 flagellar filament structure to a reasonable resolution (Figure 6c) (Nedeljkovic et al., Reference Nedeljkovic, Kreutzberger, Postel, Bonsor, Xing, Jacob, Schuler, Egelman and Sundberg2023). Model building and analysis revealed that 10 out of the 11 PAO1 protofilaments had a repeating pattern where the outer domains of each flagellin on the same protofilament alternated between two conformations (Figure 6d). However, one protofilament did not have such a pattern and formed the seam where all subunits on this protofilament had the same outer domain conformation (Figure 6e). Such a seam can also be easily visualized using a helical net where each point corresponds to a flagellin with the monomeric symmetry, but the respective outer domain conformations are indicated by the points having three different colors (Figure 6f).
Subunit multimerization in extracellular archaeal filaments
As previously noted, bacterial and archaeal flagellar filaments share no structural homology. In fact, archaeal flagella are structural homologues of bacterial and archaeal type 4 pili (T4P) (Faguy et al., Reference Faguy, Jarrell, Kuzio and Kalmokoff1994). All archaeal flagellar filaments that have been studied have a symmetry with a rise of ~5.3 Å and a twist of ~108° (Kreutzberger et al., Reference Kreutzberger, Cvirkaite-Krupovic, Liu, Baquero, Liu, Sonani, Calladine, Wang, Krupovic and Egelman2023). Archaeal flagellin consists of an N-terminal α-helical domain and a C-terminal largely β-sheet globular domain (Figure Mark 4a). The C-terminal globular domains can vary quite a bit in size, while the N-terminal helices are all around 45 amino acids in length (give or take a few residues depending on the species) (Kreutzberger et al., Reference Kreutzberger, Cvirkaite-Krupovic, Liu, Baquero, Liu, Sonani, Calladine, Wang, Krupovic and Egelman2023). This flagellin domain organization is shown for the Methanospirillum hungatei archaeal flagellar filament (Poweleit et al., Reference Poweleit, Ge, Nguyen, Loo, Gunsalus and Zhou2016) in Figure 7a. The power spectrum for the M. hungtai filament is shown in Figure 7b. Strikingly similar in concept to the multimerization of bacterial flagellin outer domains, the recent Methanocaldococcus villosus archaeal flagellar filament structure (Gambelli et al., Reference Gambelli, Isupov, Conners, McLaren, Bellack, Gold, Rachel and Daum2022) revealed a filament composed of two different flagellins arranged into an asymmetric unit of 6 flagellins Figure 7c, containing three copies each of flagellins ArlB1 and ArlB2. While this hexameric flagellar filament has a striking packing pattern (Figure 7c), the differences between this hexameric filament’s power spectrum (Figure 7d) and a monomeric one (Figure 7b) are quite subtle compared to the differences observed for bacterial flagellar filaments. The most noticeable difference between the monomeric M. hungtai power spectrum (Figure 7b) and the hexameric one is the presence of a n = 0 layer line found at ~1/(33 Å) in the M. villosus power spectrum (Figure 7d). While the M. villosus archaeal flagellar filament contains an asymmetric unit of multiple subunits, it is unique from currently known bacterial flagellar filament structures because its asymmetric unit contains two distinct proteins rather than one protein that adopts multiple conformations. More recently, two different studies have identified archaeal type IV pili, where the asymmetric unit consists of three identical copies of a type IV pilin that adopts three distinct outer domain conformations (Gaines et al., Reference Gaines, Sivabalasarma, Isupov, Haque, McLaren, Hanus, Gold, Albers and Daum2024; Liu et al., Reference Liu, Eastep, Cvirkaite-Krupovic, Rich-New, Kreutzberger, Egelman, Krupovic and Wang2024). Strikingly, in one study, the same pilin was found to also form a type IV pilus where it only adopted a single conformation (Liu et al., Reference Liu, Eastep, Cvirkaite-Krupovic, Rich-New, Kreutzberger, Egelman, Krupovic and Wang2024).
Asymmetric reconstruction of filamentous assemblies with pseudo-helical symmetry
While symmetry is ubiquitous in nature, deviations from perfect symmetry often exist. For instance, icosahedral virus capsids often display asymmetry in various regions (Jose and Hafenstein, Reference Jose and Hafenstein2022). Although an icosahedral symmetric reconstruction technique can achieve markedly higher resolution, it loses crucial asymmetric details, which are often biologically significant. Recent advancements in cryo-EM have greatly enabled asymmetric reconstructions, thereby providing valuable new biological insights into viral structures (DiNunno et al., Reference DiNunno, Goetschius, Narayanan, Majowicz, Moustafa, Bator, Hafenstein and Jose2020; Goetschius et al., Reference Goetschius, Hartmann, Organtini, Callaway, Huang, Bator, Ashley, Makhov, Conway, Parrish and Hafenstein2021; Liu et al., Reference Liu, Jih, Dai, Bi and Zhou2019).
Similarly, helical polymers exhibit clear deviations from helical symmetry such as bending. Generally, such deviations can be ignored in the single particle approach to helical reconstruction by the use of short segments that are all relatively straight. This approach provides a piece-wise linear approximation to the continuum, so a curved filament can be treated as an ensemble of straight segments if the radius of curvature is large enough. However, curved filaments may instead be treated asymmetrically when the radius of curvature is much smaller. Some examples of polymers that have been reconstructed asymmetrically resulting in high-resolution structures include F-actin (Carl et al., Reference Carl, Reynolds, Gurel, Phua, Sun, Mei, Hamilton, Takagi, Noble, Sellers and Alushin2024; Reynolds et al., Reference Reynolds, Hachicho, Carl, Gong and Alushin2022) shown in Figure 8a,b as well as the supercoiled flagellar polyhooks as shown in Figure 8c (Kato et al., Reference Kato, Makino, Miyata, Horvath and Namba2019; Shibata et al., Reference Shibata, Matsunami, Aizawa and Wolf2019). In the examples described in the previous section, many of the bacterial and archaeal flagellar filaments’ high-resolution cryo-EM structures were solved by imposing helical symmetry on filamentous assemblies that were supercoiled and thus did not have true helical symmetry. Supercoiling means that all subunits are not in an identical environment, with some being on the inside of a curve and others being on the outside.
Consider the supercoiled flagellar filaments from Escherichia coli K12. Cryo-EM images of these filaments show pronounced bending indicative of supercoiling (Figure 8d) (Kreutzberger et al., Reference Kreutzberger, Sonani, Liu, Chatterjee, Wang, Sebastian, Biswas, Ewing, Zheng, Poly, Frankel, Luisi, Calladine, Krupovic, Scharf and Egelman2022b). The 2D class average of 415 × 415 Å segments of these filaments shows nearly undetectable bending at this scale, as shown in Figure 8e. The average power spectrum from these raw segments, shown in Figure 8f, features layer lines extending to high resolution (~4.4 Å), suggesting the presence of a high degree of order. This indicates that the supercoiled flagellar filament can still be reconstructed helically using this smaller box size. Figure 8g shows such a helical reconstruction of a bacterial flagellar filament featuring well-resolved secondary structures. However, all information about supercoiling is lost in this approach as the imposition of helical symmetry eliminates the ability to resolve small conformational differences between subunits, such as those on the inside and outside of the curve. To address this, an asymmetric reconstruction approach can be employed to preserve supercoiling information, as described by Kreutzberger et al. (Kreutzberger et al., Reference Kreutzberger, Sonani, Liu, Chatterjee, Wang, Sebastian, Biswas, Ewing, Zheng, Poly, Frankel, Luisi, Calladine, Krupovic, Scharf and Egelman2022b). Using this asymmetric approach cryo-EM maps and models of supercoiled bacterial and archaeal flagellar filaments can be obtained (Figure 8g).
Since the reconstructions of curved filaments are essentially a single-particle cryo-EM reconstruction problem, a variety of different methodologies have been used to provide a suitable starting volume for asymmetric reconstructions. Shibata et al. achieved the best results on their flagellar polyhooks structure when starting with a computationally generated supercoiled volume (Shibata et al., Reference Shibata, Matsunami, Aizawa and Wolf2019). For the reconstructions of bent F-actin, Reynolds et al. used a neural network-based approach to select high curvature actin filaments and then generated a starting volume via ab initio reconstruction (Reynolds et al., Reference Reynolds, Hachicho, Carl, Gong and Alushin2022). The continuum of actin curvature states was then characterized using cryoDRGN variability analysis (Zhong et al., Reference Zhong, Bepler, Berger and Davis2021). The bacterial flagellar filament ab initio reconstructions, in general, yielded poor results (Kreutzberger et al., Reference Kreutzberger, Sonani, Liu, Chatterjee, Wang, Sebastian, Biswas, Ewing, Zheng, Poly, Frankel, Luisi, Calladine, Krupovic, Scharf and Egelman2022b). Therefore, several different approaches were taken to yield a curved filament structure, and one approach is shown in Figure 8g. Here, a mask from the helical reconstruction job as well as the individual particles can be used as inputs into a cryoSPARC 3D variability job (Punjani and Fleet, Reference Punjani and Fleet2021; Punjani et al., Reference Punjani, Rubinstein, Fleet and Brubaker2017; Punjani et al., Reference Punjani, Zhang and Fleet2020). If curvature is present in the particles, as is the case for supercoiled bacterial flagella, then the program can be used to generate a curved volume. As with cryoDRGN, cryoSPARC should be able to sort out different curvature states within the same dataset.
Similarly, there are instances where extreme flexibility impedes helical reconstruction. Consider the example of the Vibrio cholerae toxin-coregulated pilus (TCP), which appears very flexible by cryo-EM (Figure. 9a) (Sonani et al., Reference Sonani, Sanchez, Baumgardt, Kundra, Wright, Craig and Egelman2023). This flexibility is apparent in the 2D class average generated from the 212 × 212 Å size segments (Figure 9b). The average power spectrum (Figure 9c) from these segments shows layer lines extending only up to ~21 Å, reflecting a lack of long-range order. Consequently, the helical reconstruction was limited to ~6 Å resolution (Figure 9d). In such cases, asymmetric reconstruction can be beneficial (Sonani et al., Reference Sonani, Sanchez, Baumgardt, Kundra, Wright, Craig and Egelman2023). This method involves identifying subsets of segments with homogeneous bending through extensive 2D and 3D classifications, which can then be used for asymmetric reconstruction with an initial low-resolution 3D map and mask generated by the helical reconstruction. A higher resolution (~3.7 Å) map of the V. cholerae TCP was thus achieved by not imposing helical symmetry (Figure 9e). This is almost counter-intuitive, as traditionally, the assumption has been that dropping symmetry will lead to a lower resolution. Similarly, the high-resolution structure of the very flexible S. sanguinis type IV pilus was successfully solved by asymmetric reconstruction (Anger et al., Reference Anger, Pieulle, Shahin, Valette, Le Guenno, Kosta, Pelicic and Fronzes2023).
Conclusion
Advances in software (Nakane et al., Reference Nakane, Kotecha, Sente, McMullan, Masiulis, Brown, Grigoras, Malinauskaite, Malinauskas, Miehling, Uchanski, Yu, Karia, Pechnikova, de Jong, Keizer, Bischoff, McCormack, Tiemeijer, Hardwick, Chirgadze, Murshudov, Aricescu and Scheres2020; Punjani and Fleet, Reference Punjani and Fleet2021; Punjani et al., Reference Punjani, Zhang and Fleet2020; Schwab et al., Reference Schwab, Kimanius, Burt, Dendooven and Scheres2024; Zhong et al., Reference Zhong, Bepler, Berger and Davis2021) and hardware (Sun et al., Reference Sun, Azumaya, Tse, Bulkley, Harrington, Gilbert, Frost, Southworth, Verba, Cheng and Agard2021; Weis and Hagen, Reference Weis and Hagen2020) continue to drive the ‘revolution’ in resolution that has transformed the field of cryo-EM. Better microscopes, better cameras, and better programs have meant that we can do things today that would have been considered impossible only 5 years ago. One of these things involves completely dropping helical symmetry, which can give new insights into everything from actomyosin force generation (Carl et al., Reference Carl, Reynolds, Gurel, Phua, Sun, Mei, Hamilton, Takagi, Noble, Sellers and Alushin2024) to the supercoiling of prokaryotic flagellar filaments (Kreutzberger et al., Reference Kreutzberger, Sonani, Liu, Chatterjee, Wang, Sebastian, Biswas, Ewing, Zheng, Poly, Frankel, Luisi, Calladine, Krupovic, Scharf and Egelman2022b).
While the simplest examples of helical symmetry in biology involve identical subunits being in identical environments in a filament or tube, we have provided many examples where this clearly is not the case, such as where the same subunit can exist in two, three, or four different conformations within the same polymer (Gaines et al., Reference Gaines, Sivabalasarma, Isupov, Haque, McLaren, Hanus, Gold, Albers and Daum2024; Kreutzberger et al., Reference Kreutzberger, Sobe, Sauder, Chatterjee, Pena, Wang, Giron, Kiessling, Costa, Conticello, Frankel, Kendall, Scharf and Egelman2022a; Liu et al., Reference Liu, Eastep, Cvirkaite-Krupovic, Rich-New, Kreutzberger, Egelman, Krupovic and Wang2024). The supercoiling of flagellar filaments, necessary for motility since the rotation of a straight filament does not generate thrust, arises from identical subunits adopting multiple conformations. While early models for bacterial flagellar supercoiling were based upon the notion that there were two discrete conformational states in the flagellar filament, more recent results show that this is not the case, and there can be 11 different states (Kreutzberger et al., Reference Kreutzberger, Sonani, Liu, Chatterjee, Wang, Sebastian, Biswas, Ewing, Zheng, Poly, Frankel, Luisi, Calladine, Krupovic, Scharf and Egelman2022b). An earlier study of the bacterial flagellar hook actually visualized 11 different states within that assembly (Shibata et al., Reference Shibata, Matsunami, Aizawa and Wolf2019), providing a tantalizing suggestion that the same might be possible for the flagellar filament.
In the case of the bacterial flagellar filament, the 11 subunit conformations are so similar to each other that the imposition of helical symmetry can still result in a high-resolution structures. The same cannot be said for subunits in the flexible, but not supercoiled, TCP pilus. While never attempted, it is almost certain that helical reconstruction of the supercoiled flagellar polyhooks would have yielded a far inferior structure due to the great degree of curvature present in the reconstruction. Indeed, to achieve the best structure possible with their data, Shibata et al. had to create a featureless supercoiled starting volume as ab initio reconstructions yielded artifacts. As technology continues to improve in the field, creative solutions to cryo-EM structural determination will become simpler, and structures that are currently thought of as impossible to solve will become solvable.
We have not discussed the role of cryo-electron tomography (cryo-ET) in determining the structure of helical polymers (Bharat et al., Reference Bharat, Noda, Riches, Kraehling, Kolesnikova, Becker, Kawaoka and Briggs2012; Zhang and Mahamid, Reference Zhang and Mahamid2024). As the resolution of cryo-ET continues to improve (Hutchings and Villa, Reference Hutchings and Villa2024; Noble and de Marco, Reference Noble and de Marco2024), it is certainly reasonable to expect that the structure of an increasing number of helical assemblies will be solved in situ, as opposed to current practice using purified samples. Such an approach has already been applied to muscle fibers, with great success (Tamborrini et al., Reference Tamborrini, Wang, Wagner, Tacke, Stabrin, Grange, Kho, Rees, Bennett, Gautel and Raunser2023).
In some cases, these newer methodological advances for helical structure determination should perhaps be thought of as an expansion of the tools available to structural biologists rather than strictly replacing the older methods. While software packages such as Relion and cryoSPARC can lead to quick and efficient structural determination of many helical filaments, not every structure is simple. In fact, in one of the examples above (Figure 2), the legacy software package Spider (Frank et al., Reference Frank, Radermacher, Penczek, Zhu, Li, Ladjadj and Leith1996) proved to be more effective in initial structural determination than these more modern packages. Thus, it is important to consider that sometimes older, legacy software can still be useful.
As with many areas of science, we expect that advances in machine learning and artificial intelligence will play a large role in expediting the analysis of helical polymers in the future (Egelman, Reference Egelman2024). As we discussed here, we currently do not have useful metrics that can distinguish correct from incorrect symmetries. The determination of the correct symmetry is usually made because it is the only one that generates all the features that we expect from proteins, such as secondary structure and side chains. However given the huge and growing database of protein maps, machines can be trained to recognize which ones are correct and which are artifacts. So, it is reasonable to expect that the experience currently needed to recognize a correct map from an incorrect one will be replaced in the future by intelligent programs.
Financial support
This work was supported by NIH grant GM122510.
Competing interest
The authors declare none.
Key Terms
Power spectrum: The intensities (the amplitudes squared) in a Fourier transform. This discards the phase information as the Fourier transform contains both amplitudes and phases. Since phases are discarded power spectra from different filament segments can be simply added together without the need for alignment. In other words, the power spectrum from a single filament is invariant under translations of the filament.
Equator: A line in the Fourier transform (FT) or power spectrum of a helical filament that is perpendicular to the filament axis and passes through the origin (the center of the FT). This line corresponds to the Fourier transform of the filament density when projected perpendicular to the filament axis, and is related to the radial density distribution in the filament.
Meridian: A line in the Fourier transform or power spectrum of a helical filament that is parallel to the filament axis and passes through the origin. This line corresponds to the Fourier transform of the filament density when projected onto a line parallel to the filament axis. The lowest resolution intensity on this line typically corresponds to the reciprocal of the rise per subunit.
Bessel function: These are solutions of a differential equation where n is the order of the Bessel function. For integer n (which is the case here, except when seams appear in a structure), these functions are called the cylindrical harmonics because they appear in the solution to Laplace’s equation in cylindrical coordinates. It was recognized in the 1950s that the Fourier transform of a helix can be decomposed very simply into Bessel functions of different orders n.
Layer line: Due to axial periodicities in a helical filament, diffraction from these filaments only occurs on discrete lines, called layer lines. In the simplest case, each layer line contains a single Bessel function of order n.