Protein secondary structure
Protein secondary structure is the three dimensional form of local segments of proteins. The two most common secondary structural elements are alpha helices and beta sheets, though beta turns and omega loops occur as well. Secondary structure elements typically spontaneously form as an intermediate before the protein folds into its three dimensional tertiary structure.
Secondary structure is formally defined by the pattern of hydrogen bonds between the amino hydrogen and carboxyl oxygen atoms in the peptide backbone. Secondary structure may alternatively be defined based on the regular pattern of backbone dihedral angles in a particular region of the Ramachandran plot regardless of whether it has the correct hydrogen bonds.
The concept of secondary structure was first introduced by Kaj Ulrik Linderstrøm-Lang at Stanford in 1952.[1][2] Other types of biopolymers such as nucleic acids also possess characteristic secondary structures.
Types
Geometry attribute | α-helix | 310 helix | π-helix |
---|---|---|---|
Residues per turn | 3.6 | 3.0 | 4.4 |
Translation per residue | 1.5 Å (0.15 nm) | 2.0 Å (0.20 nm) | 1.1 Å (0.11 nm) |
Radius of helix | 2.3 Å (0.23 nm) | 1.9 Å (0.19 nm) | 2.8 Å (0.28 nm) |
Pitch | 5.4 Å (0.54 nm) | 6.0 Å (0.60 nm) | 4.8 Å (0.48 nm) |
The most common secondary structures are alpha helices and beta sheets. Other helices, such as the 310 helix and π helix, are calculated to have energetically favorable hydrogen-bonding patterns but are rarely observed in natural proteins except at the ends of α helices due to unfavorable backbone packing in the center of the helix. Other extended structures such as the polyproline helix and alpha sheet are rare in native state proteins but are often hypothesized as important protein folding intermediates. Tight turns and loose, flexible loops link the more "regular" secondary structure elements. The random coil is not a true secondary structure, but is the class of conformations that indicate an absence of regular secondary structure.
Amino acids vary in their ability to form the various secondary structure elements. Proline and glycine are sometimes known as "helix breakers" because they disrupt the regularity of the α helical backbone conformation; however, both have unusual conformational abilities and are commonly found in turns. Amino acids that prefer to adopt helical conformations in proteins include methionine, alanine, leucine, glutamate and lysine ("MALEK" in amino-acid 1-letter codes); by contrast, the large aromatic residues (tryptophan, tyrosine and phenylalanine) and Cβ-branched amino acids (isoleucine, valine, and threonine) prefer to adopt β-strand conformations. However, these preferences are not strong enough to produce a reliable method of predicting secondary structure from sequence alone.
Low frequency collective vibrations are thought to be sensitive to local rigidity within proteins, revealing beta structures to be generically more rigid than alpha or disordered proteins.[5][6] Neutron scattering measurements have directly connected the spectral feature at ~1 THz to collective motions of the secondary structure of beta-barrel protein GFP.[7]
Hydrogen bonding patterns in secondary structures may be significantly distorted, which makes automatic determination of secondary structure difficult. There are several methods for formally defining protein secondary structure (e.g., DSSP,[8] DEFINE,[9] STRIDE,[10] ScrewFit,[11] SST[12]).
DSSP classification
The Dictionary of Protein Secondary Structure, in short DSSP, is commonly used to describe the protein secondary structure with single letter codes. The secondary structure is assigned based on hydrogen bonding patterns as those initially proposed by Pauling et al. in 1951 (before any protein structure had ever been experimentally determined). There are eight types of secondary structure that DSSP defines:
- G = 3-turn helix (310 helix). Min length 3 residues.
- H = 4-turn helix (α helix). Minimum length 4 residues.
- I = 5-turn helix (π helix). Minimum length 5 residues.
- T = hydrogen bonded turn (3, 4 or 5 turn)
- E = extended strand in parallel and/or anti-parallel β-sheet conformation. Min length 2 residues.
- B = residue in isolated β-bridge (single pair β-sheet hydrogen bond formation)
- S = bend (the only non-hydrogen-bond based assignment).
- C = coil (residues which are not in any of the above conformations).
'Coil' is often codified as ' ' (space), C (coil) or '–' (dash). The helices (G, H and I) and sheet conformations are all required to have a reasonable length. This means that 2 adjacent residues in the primary structure must form the same hydrogen bonding pattern. If the helix or sheet hydrogen bonding pattern is too short they are designated as T or B, respectively. Other protein secondary structure assignment categories exist (sharp turns, Omega loops, etc.), but they are less frequently used.
Secondary structure is defined by hydrogen bonding, so the exact definition of a hydrogen bond is critical. The standard hydrogen-bond definition for secondary structure is that of DSSP, which is a purely electrostatic model. It assigns charges of ±q1 ≈ 0.42e to the carbonyl carbon and oxygen, respectively, and charges of ±q2 ≈ 0.20e to the amide hydrogen and nitrogen, respectively. The electrostatic energy is
According to DSSP, a hydrogen-bond exists if and only if E is less than −0.5 kcal/mol (−2.1 kJ/mol). Although the DSSP formula is a relatively crude approximation of the physical hydrogen-bond energy, it is generally accepted as a tool for defining secondary structure.
SST[12] classification
SST is a Bayesian method to assign secondary structure to protein coordinate data using the Shannon information criterion of Minimum Message Length (MML) inference. SST treats any assignment of secondary structure as a potential hypothesis that attempts to explain (compress) given protein coordinate data. The core idea is that the best secondary structural assignment is the one that can explain (compress) the coordinates of a given protein coordinates in the most economical way, thus linking the inference of secondary structure to lossless data compression. SST accurately delineates any protein chain into regions associated with the following assignment types:[13]
- E = (Extended) strand of a β-pleated sheet
- G = Right-handed 310 helix
- H = Right-handed α-helix
- I = Right-handed π-helix
- g = Left-handed 310 helix
- h = Left-handed α-helix
- i = Left-handed π-helix
- 3 = 310-like Turn
- 4 = α-like Turn
- 5 = π-like Turn
- T = Unspecified Turn
- C = Coil
- - = Unassigned residue
SST detects π and 310 helical caps to standard α-helices, and automatically assembles the various extended strands into consistent β-pleated sheets. It provides a readable output of dissected secondary structural elements, and a corresponding PyMol-loadable script to visualize the assigned secondary structural elements individually.
Experimental determination
The rough secondary-structure content of a biopolymer (e.g., "this protein is 40% α-helix and 20% β-sheet.") can be estimated spectroscopically.[14] For proteins, a common method is far-ultraviolet (far-UV, 170–250 nm) circular dichroism. A pronounced double minimum at 208 and 222 nm indicate α-helical structure, whereas a single minimum at 204 nm or 217 nm reflects random-coil or β-sheet structure, respectively. A less common method is infrared spectroscopy, which detects differences in the bond oscillations of amide groups due to hydrogen-bonding. Finally, secondary-structure contents may be estimated accurately using the chemical shifts of an initially unassigned NMR spectrum.[15]
Prediction
Predicting protein tertiary structure from only its amino sequence is a very challenging problem (see protein structure prediction), but using the simpler secondary structure definitions is more tractable.
Early methods of secondary-structure prediction were restricted to predicting the three predominate states: helix, sheet, or random coil. These methods were based on the helix- or sheet-forming propensities of individual amino acids, sometimes coupled with rules for estimating the free energy of forming secondary structure elements. The first widely used techniques to predict protein secondary structure from the amino acid sequence were the Chou–Fasman method[16][17][18] and the GOR method.[19] Although such methods claimed to achieve ~60% accurate in predicting which of the three states (helix/sheet/coil) a residue adopts, blind computing assessments later showed that the actual accuracy was much lower.[20]
A significant increase in accuracy (to nearly ~80%) was made by exploiting multiple sequence alignment; knowing the full distribution of amino acids that occur at a position (and in its vicinity, typically ~7 residues on either side) throughout evolution provides a much better picture of the structural tendencies near that position.[21][22] For illustration, a given protein might have a glycine at a given position, which by itself might suggest a random coil there. However, multiple sequence alignment might reveal that helix-favoring amino acids occur at that position (and nearby positions) in 95% of homologous proteins spanning nearly a billion years of evolution. Moreover, by examining the average hydrophobicity at that and nearby positions, the same alignment might also suggest a pattern of residue solvent accessibility consistent with an α-helix. Taken together, these factors would suggest that the glycine of the original protein adopts α-helical structure, rather than random coil. Several types of methods are used to combine all the available data to form a 3-state prediction, including neural networks, hidden Markov models and support vector machines. Modern prediction methods also provide a confidence score for their predictions at every position.
Secondary-structure prediction methods were evaluated by the Critical Assessment of protein Structure Prediction (CASP) experiments and continuously benchmarked, e.g. by EVA (benchmark). Based on these tests, the most accurate methods were Psipred, SAM,[23] PORTER,[24] PROF,[25] and SABLE.[26] The chief area for improvement appears to be the prediction of β-strands; residues confidently predicted as β-strand are likely to be so, but the methods are apt to overlook some β-strand segments (false negatives). There is likely an upper limit of ~90% prediction accuracy overall, due to the idiosyncrasies of the standard method (DSSP) for assigning secondary-structure classes (helix/strand/coil) to PDB structures, against which the predictions are benchmarked.[27]
Accurate secondary-structure prediction is a key element in the prediction of tertiary structure, in all but the simplest (homology modeling) cases. For example, a confidently predicted pattern of six secondary structure elements βαββαβ is the signature of a ferredoxin fold.[28]
Applications
Both protein and nucleic acid secondary structures can be used to aid in multiple sequence alignment. These alignments can be made more accurate by the inclusion of secondary structure information in addition to simple sequence information. This is sometimes less useful in RNA because base pairing is much more highly conserved than sequence. Distant relationships between proteins whose primary structures are unalignable can sometimes be found by secondary structure.[21]
It has been shown that α-helices are more stable, robust to mutations and designable than β-strands in natural proteins,[29] thus designing functional all-α proteins is likely to be easier that designing proteins with both helices and strands; this has been recently confirmed experimentally.[30]
See also
- Folding (chemistry)
- Nucleic acid secondary structure
- Translation
- Structural motif
- Protein circular dichroism data bank
- WHAT IF software
- List of protein secondary structure prediction programs
References
- Linderstrøm-Lang KU (1952). Lane Medical Lectures: Proteins and Enzymes. Stanford University Press. p. 115. ASIN B0007J31SC.
- Schellman JA, Schellman CG (1997). "Kaj Ulrik Linderstrøm-Lang (1896–1959)". Protein Sci. 6 (5): 1092–100. doi:10.1002/pro.5560060516. PMC 2143695. PMID 9144781.
He had already introduced the concepts of the primary, secondary, and tertiary structure of proteins in the third Lane Lecture (Linderstram-Lang, 1952)
- Steven Bottomley (2004). "Interactive Protein Structure Tutorial". Archived from the original on March 1, 2011. Retrieved January 9, 2011.
- Schulz, G. E. (Georg E.), 1939- (1979). Principles of protein structure. Schirmer, R. Heiner, 1942-. New York: Springer-Verlag. ISBN 0-387-90386-0. OCLC 4498269.
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- Perticaroli S, Nickels JD, Ehlers G, Sokolov AP (June 2014). "Rigidity, secondary structure, and the universality of the boson peak in proteins". Biophysical Journal. 106 (12): 2667–74. Bibcode:2014BpJ...106.2667P. doi:10.1016/j.bpj.2014.05.009. PMC 4070067. PMID 24940784.
- Nickels JD, Perticaroli S, O'Neill H, Zhang Q, Ehlers G, Sokolov AP (2013). "Coherent neutron scattering and collective dynamics in the protein, GFP". Biophys. J. 105 (9): 2182–87. Bibcode:2013BpJ...105.2182N. doi:10.1016/j.bpj.2013.09.029. PMC 3824694. PMID 24209864.
- Kabsch W, Sander C (Dec 1983). "Dictionary of protein secondary structure: pattern recognition of hydrogen-bonded and geometrical features". Biopolymers. 22 (12): 2577–637. doi:10.1002/bip.360221211. PMID 6667333. S2CID 29185760.
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- Chou PY, Fasman GD (1978). "Prediction of the secondary structure of proteins from their amino acid sequence". Advances in Enzymology and Related Areas of Molecular Biology. Advances in Enzymology - and Related Areas of Molecular Biology. Vol. 47. pp. 45–148. doi:10.1002/9780470122921.ch2. ISBN 9780470122921. PMID 364941.
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- Simossis VA, Heringa J (Aug 2004). "Integrating protein secondary structure prediction and multiple sequence alignment". Current Protein & Peptide Science. 5 (4): 249–66. doi:10.2174/1389203043379675. PMID 15320732.
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- Pollastri G, McLysaght A (2005). "Porter: a new, accurate server for protein secondary structure prediction". Bioinformatics. 21 (8): 1719–20. doi:10.1093/bioinformatics/bti203. PMID 15585524.
- Yachdav G, Kloppmann E, Kajan L, Hecht M, Goldberg T, Hamp T, Hönigschmid P, Schafferhans A, Roos M, Bernhofer M, Richter L, Ashkenazy H, Punta M, Schlessinger A, Bromberg Y, Schneider R, Vriend G, Sander C, Ben-Tal N, Rost B (2014). "PredictProtein—an open resource for online prediction of protein structural and functional features". Nucleic Acids Res. 42 (Web Server issue): W337–43. doi:10.1093/nar/gku366. PMC 4086098. PMID 24799431.
- Adamczak R, Porollo A, Meller J (2005). "Combining prediction of secondary structure and solvent accessibility in proteins". Proteins. 59 (3): 467–75. doi:10.1002/prot.20441. PMID 15768403. S2CID 13267624.
- Kihara D (Aug 2005). "The effect of long-range interactions on the secondary structure formation of proteins". Protein Science. 14 (8): 1955–963. doi:10.1110/ps.051479505. PMC 2279307. PMID 15987894.
- Qi Y, Grishin NV (2005). "Structural classification of thioredoxin-like fold proteins" (PDF). Proteins. 58 (2): 376–88. CiteSeerX 10.1.1.644.8150. doi:10.1002/prot.20329. PMID 15558583. S2CID 823339.
Since the fold definition should include only the core secondary structural elements that are present in the majority of homologs, we define the thioredoxin-like fold as a two-layer α/β sandwich with the βαβββα secondary-structure pattern.
- Abrusan G, Marsh JA (2016). "Alpha helices are more robust to mutations than beta strands". PLOS Computational Biology. 12 (12): e1005242. Bibcode:2016PLSCB..12E5242A. doi:10.1371/journal.pcbi.1005242. PMC 5147804. PMID 27935949.
- Rocklin GJ, et al. (2017). "Global analysis of protein folding using massively parallel design, synthesis, and testing". Science. 357 (6347): 168–175. Bibcode:2017Sci...357..168R. doi:10.1126/science.aan0693. PMC 5568797. PMID 28706065.
Further reading
- Branden C, Author J (1999). Introduction to protein structure (2nd ed.). New York: Garland Science. ISBN 978-0815323051.
{{cite book}}
:|author=
has generic name (help) - Pauling L, Corey RB (1951). "Configurations of Polypeptide Chains With Favored Orientations Around Single Bonds: Two New Pleated Sheets". Proc. Natl. Acad. Sci. U.S.A. 37 (11): 729–40. Bibcode:1951PNAS...37..729P. doi:10.1073/pnas.37.11.729. PMC 1063460. PMID 16578412. (The original beta-sheet conformation article.)
- Pauling L, Corey RB, Branson HR (1951). "The structure of proteins; two hydrogen-bonded helical configurations of the polypeptide chain". Proc. Natl. Acad. Sci. U.S.A. 37 (4): 205–11. Bibcode:1951PNAS...37..205P. doi:10.1073/pnas.37.4.205. PMC 1063337. PMID 14816373. (alpha- and pi-helix conformations, since they predicted that helices would not be possible.)
External links
- NetSurfP – Secondary Structure and Surface Accessibility predictor
- PROF
- ScrewFit
- PSSpred A multiple neural network training program for protein secondary structure prediction
- Genesilico metaserver Metaserver which allows to run over 20 different secondary structure predictors by one click
- SST webserver: An information-theoretic (compression-based) secondary structural assignment.