Bonjour, ceci est un commentaire. Pour supprimer un commentaire, connectez-vous et affichez les commentaires de cet article. Vous pourrez alors…
P. Y. Chou, Fasman, G. D. (1977) Beta-turns in proteins. J Mol Biol 115(2), 135-175.
- Listed: 23 May 2026 23 h 03 min
Description
P. Y. Chou, Fasman, G. D. (1977) Beta-turns in proteins. J Mol Biol 115(2), 135-175.
**P. Y. Chou, Fasman, G. D. (1977) Beta-turns in proteins. J Mol Biol 115(2), 135-175.**
*When a single sentence can ignite a paradigm shift, that sentence is a scientific landmark.*
—
### A Historical Snapshot
In 1977, two pioneering researchers—P. Y. Chou and G. D. Fasman—published their seminal paper “Beta-turns in proteins” in the *Journal of Molecular Biology*. This concise yet powerful study systematically catalogued the most common turns found in the secondary structure of proteins and introduced a quantitative approach to predict them. Although the paper is over forty years old, its influence reverberates through modern computational biology, protein engineering, and drug design.
—
### Decoding the Beta-Turn
Beta-turns are short, reversible segments that allow a polypeptide chain to reverse direction. They typically involve four amino acids and are critical for stabilizing compact protein folds. In the early days of X‑ray crystallography, the identification of beta-turns was largely anecdotal; Chou and Fasman’s work brought statistical rigor to the field. They analyzed hundreds of protein structures, discovering that certain dihedral angles and sequence motifs repeatedly appeared in turns. Their tables of propensities—how likely each amino acid is to appear in a turn—became an indispensable tool for structural biologists.
—
### The Chou‑Fasman Turn Prediction Algorithm
Beyond cataloguing, the authors proposed a simple algorithm that predicted beta-turns in primary sequences. By assigning a “turn propensity” score to each residue and scanning for favorable four-residue windows, they could anticipate where a turn would form. This method, the first of its kind, laid the groundwork for later, more sophisticated secondary‑structure prediction tools such as PSIPRED and JPred. Today, the Chou‑Fasman algorithm remains a classic example of how a statistical approach can solve a complex biological problem.
—
### From Theory to Practice
Beta-turns are not just academic curiosities; they have practical significance. In therapeutic protein design, engineers often insert or modify turns to improve stability or binding affinity. In vaccine development, surface-exposed turns can become immunogenic epitopes. Moreover, the ability to predict turns accurately aids in the modeling of membrane proteins, where turns often anchor helices to the lipid bilayer.
Because beta-turns frequently act as hinge points, they are also crucial for allosteric regulation. Recent computational methods for drug discovery routinely incorporate turn propensity data to identify potential allosteric sites.
—
### Enduring Legacy
The 1977 paper remains a cornerstone of protein science. It taught the community that sequence alone could reveal structural motifs—an idea that fueled the development of machine‑learning models for protein folding. For researchers entering the field of structural biology, the Chou‑Fasman method is a gentle introduction to the relationship between amino‑acid composition and secondary structure.
In short, “P. Y. Chou, Fasman, G. D. (1977) Beta‑turns in proteins” is more than a citation; it’s a touchstone. It reminds us that even the smallest turns in a protein can pivot our understanding of biology, biotechnology, and medicine.
18 total views, 5 today
Sponsored Links
A. D. Wyner and J. Ziv, “The rate-distortion function for source coding wit...
A. D. Wyner and J. Ziv, “The rate-distortion function for source coding with side information at the decoder,” IEEE Transactions on Information Theory, Vol. IT-22, […]
No views yet
J. D. Slepian and J. K. Wolf, “Noiseless coding of correlated information s...
J. D. Slepian and J. K. Wolf, “Noiseless coding of correlated information sources,” IEEE Transactions on Infor-mation Theory, Vol. IT-19, pp. 471–480, July 1973. None
No views yet
J. Polastre, R. Szewczyk, and D. Culler, “Telos: Enabling ul-tra-low power ...
J. Polastre, R. Szewczyk, and D. Culler, “Telos: Enabling ul-tra-low power wireless research,” in Proceedings of the Fourth International Conference on Information Processing in Sensor […]
2 total views, 2 today
J. Hill, M. Horton, et al., “The platforms enabling wireless sensor network...
J. Hill, M. Horton, et al., “The platforms enabling wireless sensor networks,” Communications of the ACM, Vol. 47, No. 6, pp. 41–46, June 2004. **J. […]
2 total views, 2 today
L. Girod, J. Elson et al., “EmStar: A software environment for developing a...
L. Girod, J. Elson et al., “EmStar: A software environment for developing and deploying wireless sensor networks,” in Pro-ceedings of the USENIX Technical Conference, San […]
3 total views, 3 today
M. Dyer, J. Beutel, et al., “Deployment support network: A toolkit for the ...
M. Dyer, J. Beutel, et al., “Deployment support network: A toolkit for the development of WSNs,” in Proceedings of the Fourth European Workshop on Sensor […]
3 total views, 3 today
G. Werner-Allen, P. Swieskowski, and M. Welsh, “MoteLab: A wireless sensor ...
G. Werner-Allen, P. Swieskowski, and M. Welsh, “MoteLab: A wireless sensor network testbed,” in Proceedings of the Fourth International Conference on Information Processing in Sensor […]
2 total views, 2 today
D. Jia, G. H. Krogh, and C. Wong, “TOSHILT: Middleware for hardware-in-the-...
D. Jia, G. H. Krogh, and C. Wong, “TOSHILT: Middleware for hardware-in-the-Loop testing of wireless sensor networks,” October 2007. http://www.ece.cmu.edu/~webk/sensor_networks/pub/ipsn05_hilt.pdf. ## “D. Jia, G. H. […]
2 total views, 2 today
B. L. Titzer, D. K. Lee, and J. Palsberg, “Avrora: Scalable sensor network ...
B. L. Titzer, D. K. Lee, and J. Palsberg, “Avrora: Scalable sensor network simulation with precise timing,” in Proceedings of the Fourth International Conference on […]
2 total views, 2 today
J. Pollet, D. Blazakis, et al., “ATEMU: A fine-grained sensor network simul...
J. Pollet, D. Blazakis, et al., “ATEMU: A fine-grained sensor network simulator,” in Proceedings of the First IEEE Commu-nications Society Conference on Sensor and Ad […]
3 total views, 3 today
A. D. Wyner and J. Ziv, “The rate-distortion function for source coding wit...
A. D. Wyner and J. Ziv, “The rate-distortion function for source coding with side information at the decoder,” IEEE Transactions on Information Theory, Vol. IT-22, […]
No views yet
J. D. Slepian and J. K. Wolf, “Noiseless coding of correlated information s...
J. D. Slepian and J. K. Wolf, “Noiseless coding of correlated information sources,” IEEE Transactions on Infor-mation Theory, Vol. IT-19, pp. 471–480, July 1973. None
No views yet
J. Polastre, R. Szewczyk, and D. Culler, “Telos: Enabling ul-tra-low power ...
J. Polastre, R. Szewczyk, and D. Culler, “Telos: Enabling ul-tra-low power wireless research,” in Proceedings of the Fourth International Conference on Information Processing in Sensor […]
2 total views, 2 today
J. Hill, M. Horton, et al., “The platforms enabling wireless sensor network...
J. Hill, M. Horton, et al., “The platforms enabling wireless sensor networks,” Communications of the ACM, Vol. 47, No. 6, pp. 41–46, June 2004. **J. […]
2 total views, 2 today
L. Girod, J. Elson et al., “EmStar: A software environment for developing a...
L. Girod, J. Elson et al., “EmStar: A software environment for developing and deploying wireless sensor networks,” in Pro-ceedings of the USENIX Technical Conference, San […]
3 total views, 3 today
M. Dyer, J. Beutel, et al., “Deployment support network: A toolkit for the ...
M. Dyer, J. Beutel, et al., “Deployment support network: A toolkit for the development of WSNs,” in Proceedings of the Fourth European Workshop on Sensor […]
3 total views, 3 today
G. Werner-Allen, P. Swieskowski, and M. Welsh, “MoteLab: A wireless sensor ...
G. Werner-Allen, P. Swieskowski, and M. Welsh, “MoteLab: A wireless sensor network testbed,” in Proceedings of the Fourth International Conference on Information Processing in Sensor […]
2 total views, 2 today
D. Jia, G. H. Krogh, and C. Wong, “TOSHILT: Middleware for hardware-in-the-...
D. Jia, G. H. Krogh, and C. Wong, “TOSHILT: Middleware for hardware-in-the-Loop testing of wireless sensor networks,” October 2007. http://www.ece.cmu.edu/~webk/sensor_networks/pub/ipsn05_hilt.pdf. ## “D. Jia, G. H. […]
2 total views, 2 today
B. L. Titzer, D. K. Lee, and J. Palsberg, “Avrora: Scalable sensor network ...
B. L. Titzer, D. K. Lee, and J. Palsberg, “Avrora: Scalable sensor network simulation with precise timing,” in Proceedings of the Fourth International Conference on […]
2 total views, 2 today
J. Pollet, D. Blazakis, et al., “ATEMU: A fine-grained sensor network simul...
J. Pollet, D. Blazakis, et al., “ATEMU: A fine-grained sensor network simulator,” in Proceedings of the First IEEE Commu-nications Society Conference on Sensor and Ad […]
3 total views, 3 today
Recent Comments