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ALPHAFOLD: DERİN ÖĞRENME VE SİNİR AĞLARI YOLUYLA PROTEİN KATLAMASINDA DEVRİM YARATMAK

Yıl 2023, Cilt: 22 Sayı: 44, 445 - 466, 31.12.2023
https://doi.org/10.55071/ticaretfbd.1323165

Öz

AlphaFold, bir protein dizisinin üç boyutlu yapısını tahmin etmek için derin sinir ağlarını ve gelişmiş makine öğrenimi tekniklerini kullanan, DeepMind ekibi tarafından geliştirilmiş bir protein katlama tahmin aracıdır. Protein katlanmasının tahmini, hesaplamalı biyolojide uzun süredir devam eden bir sorun olmuştur ve doğru protein yapısı tahmin yöntemlerinin geliştirilmesi, bilim camiasının büyük ilgisini çekmiştir. AlphaFold, önce bir proteinin yerel yapısını tahmin ettiği ve ardından genel yapıyı bir araya getirdiği iki aşamalı bir yaklaşım kullanır. AlphaFold, iki yılda bir yapılan CASP (Yapı Tahmininin Kritik Değerlendirmesi) deneylerinde diğer son teknoloji yöntemleri geride bırakarak çok çeşitli proteinlerin yapısını tahmin etmede kayda değer bir başarı elde etmiştir. AlphaFold'un tahminlerinin doğruluğu, protein işlevini ve hastalık mekanizmalarını, ilaç keşfini ve sentetik biyolojiyi anlamak için önemli etkilere sahiptir. Bu derlemede, AlphaFold'un geliştirilmesine, temel metodolojisine ve CASP deneylerindeki performansına genel bir bakış sunulmaktadır. Ek olarak, AlphaFold'un protein mühendisliği, ilaç keşfi ve yapısal biyolojideki potansiyel uygulamaları da tartışılmaktadır.

Kaynakça

  • Akdel, M., Pires, D. E., Pardo, E. P., Jänes, J., Zalevsky, A. O., Mészáros, B., Bryant, P., Good, L. L., Laskowski, R. A. & Pozzati, G. (2022). A structural biology community assessment of AlphaFold2 applications. Nature Structural & Molecular Biology, 1-12.
  • AlQuraishi, M. (2019). AlphaFold at CASP13. Bioinformatics, 35(22), 4862-4865.
  • AlQuraishi, M. (2021). Machine learning in protein structure prediction. Current opinion in chemical biology, 65, 1-8.
  • Anfinsen, C. & Scheraga, H. (1975). Experimental and theoretical aspects of protein folding. Advances in protein chemistry, 29, 205-300.
  • Anfinsen, C. B. (1973). Principles that govern the folding of protein chains. Science, 181(4096), 223-230.
  • Anfinsen, C. B., Haber, E., Sela, M. & White Jr, F. (1961). The kinetics of formation of native ribonuclease during oxidation of the reduced polypeptide chain. Proceedings of the National Academy of Sciences, 47(9), 1309-1314.
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  • Borkakoti, N. & Thornton, J. M. (2023). AlphaFold2 protein structure prediction: Implications for drug discovery. Current Opinion in Structural Biology, 78, 102526.
  • Buel, G. R. & Walters, K. J. (2022). Can AlphaFold2 predict the impact of missense mutations on structure? Nature Structural & Molecular Biology, 29(1), 1-2.
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  • Dobson, L., Szekeres, L. I., Gerdán, C., Langó, T., Zeke, A. & Tusnády, G. E. (2023). TmAlphaFold database: membrane localization and evaluation of AlphaFold2 predicted alpha-helical transmembrane protein structures. Nucleic acids research, 51(D1), 517-522.
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ALPHAFOLD: REVOLUTIONIZING PROTEIN FOLDING THROUGH DEEP LEARNING AND NEURAL NETWORKS

Yıl 2023, Cilt: 22 Sayı: 44, 445 - 466, 31.12.2023
https://doi.org/10.55071/ticaretfbd.1323165

Öz

AlphaFold is a protein folding prediction tool developed by the DeepMind team, which leverages deep neural networks and advanced machine learning techniques to predict the three-dimensional structure of a protein sequence. The prediction of protein folding has been a long-standing challenge in computational biology, and the development of accurate protein structure prediction methods has been of great interest to the scientific community. AlphaFold employs a two-stage approach, in which it first predicts the local structure of a protein and then assembles the global configuration. AlphaFold has achieved remarkable success in predicting the structure of a wide range of proteins, outperforming other state-of-the-art methods in the biennial CASP (Critical Assessment of Structure Prediction) experiments. The accuracy of AlphaFold's predictions has significant implications for understanding protein function and disease mechanisms, drug discovery, and synthetic biology. This review provides an overview of AlphaFold's development, basic methodology, and performance in CASP experiments. Moreover, potential applications of AlphaFold in protein engineering, drug discovery, and structural biology are also discussed.

Kaynakça

  • Akdel, M., Pires, D. E., Pardo, E. P., Jänes, J., Zalevsky, A. O., Mészáros, B., Bryant, P., Good, L. L., Laskowski, R. A. & Pozzati, G. (2022). A structural biology community assessment of AlphaFold2 applications. Nature Structural & Molecular Biology, 1-12.
  • AlQuraishi, M. (2019). AlphaFold at CASP13. Bioinformatics, 35(22), 4862-4865.
  • AlQuraishi, M. (2021). Machine learning in protein structure prediction. Current opinion in chemical biology, 65, 1-8.
  • Anfinsen, C. & Scheraga, H. (1975). Experimental and theoretical aspects of protein folding. Advances in protein chemistry, 29, 205-300.
  • Anfinsen, C. B. (1973). Principles that govern the folding of protein chains. Science, 181(4096), 223-230.
  • Anfinsen, C. B., Haber, E., Sela, M. & White Jr, F. (1961). The kinetics of formation of native ribonuclease during oxidation of the reduced polypeptide chain. Proceedings of the National Academy of Sciences, 47(9), 1309-1314.
  • Arnold, K., Bordoli, L., Kopp, J. & Schwede, T. (2006). The SWISS-MODEL workspace: A web-based environment for protein structure homology modelling. Bioinformatics, 22(2), 195-201.
  • Bolen, D. & Baskakov, I. V. (2001). The osmophobic effect: natural selection of a thermodynamic force in protein folding. Journal of molecular biology, 310(5), 955-963.
  • Borkakoti, N. & Thornton, J. M. (2023). AlphaFold2 protein structure prediction: Implications for drug discovery. Current Opinion in Structural Biology, 78, 102526.
  • Buel, G. R. & Walters, K. J. (2022). Can AlphaFold2 predict the impact of missense mutations on structure? Nature Structural & Molecular Biology, 29(1), 1-2.
  • Burley, S. & Petsko, G. (1988). Weakly polar interactions in proteins. Advances in protein chemistry, 39, 125-189.
  • Burley, S. K., Bhikadiya, C., Bi, C., Bittrich, S., Chen, L., Crichlow, G. V., Duarte, J. M., Dutta, S., Fayazi, M. & Feng, Z. (2022). RCSB Protein Data Bank: Celebrating 50 years of the PDB with new tools for understanding and visualizing biological macromolecules in 3D. Protein Science, 31(1), 187-208.
  • Chen, I.-M. A., Markowitz, V. M., Chu, K., Palaniappan, K., Szeto, E., Pillay, M., Ratner, A., Huang, J., Andersen, E. & Huntemann, M. (2016). IMG/M: Integrated genome and metagenome comparative data analysis system. Nucleic acids research, 507-516.
  • Cheng, J., Roy, R. S., Liu, J., Giri, N. & Guo, Z. (2023). Combining pairwise structural similarity and deep learning interface contact prediction to estimate protein complex model accuracy in CASP15. bioRxiv, 2023.2003.2008.531814.
  • de Almeida Paiva, V., de Souza Gomes, I., Monteiro, C. R., Mendonça, M. V., Martins, P. M., Santana, C. A., Gonçalves-Almeida, V., Izidoro, S. C., de Melo-Minardi, R. C. & de Azevedo Silveira, S. (2022). Protein structural bioinformatics: An overview. Computers in Biology and Medicine, 105695.
  • Dhingra, S., Sowdhamini, R., Cadet, F. & Offmann, B. (2020). A glance into the evolution of template-free protein structure prediction methodologies. Biochimie, 175, 85-92.
  • Dill, K. A. (1990). Dominant forces in protein folding. Biochemistry, 29(31), 7133-7155.
  • Dill, K. A. & MacCallum, J. L. (2012). The protein-folding problem, 50 years on. Science, 338(6110), 1042-1046.
  • Dobson, L., Szekeres, L. I., Gerdán, C., Langó, T., Zeke, A. & Tusnády, G. E. (2023). TmAlphaFold database: membrane localization and evaluation of AlphaFold2 predicted alpha-helical transmembrane protein structures. Nucleic acids research, 51(D1), 517-522.
  • Evans, R., O’Neill, M., Pritzel, A., Antropova, N., Senior, A., Green, T., Žídek, A., Bates, R., Blackwell, S. & Yim, J. (2021). Protein complex prediction with AlphaFold-Multimer. bioRxiv, 2021.2010.2004.463034.
  • Faure, A. J., Domingo, J., Schmiedel, J. M., Hidalgo-Carcedo, C., Diss, G. & Lehner, B. (2022). Mapping the energetic and allosteric landscapes of protein binding domains. Nature, 604(7904), 175-183.
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  • Freschlin, C. R., Fahlberg, S. A. & Romero, P. A. (2022). Machine learning to navigate fitness landscapes for protein engineering. Current Opinion in Biotechnology, 75, 102713.
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  • Miserez, A., Yu, J. & Mohammadi, P. (2023). Protein-based biological materials: Molecular design and artificial production. Chemical Reviews, 123(5), 2049-2111.
  • Miyazawa, T., Hiratsuka, Y., Toda, M., Hatakeyama, N., Ozawa, H., Abe, C., Cheng, T.-Y., Matsushima, Y., Miyawaki, Y. & Ashida, K. (2022). Artificial intelligence in food science and nutrition: a narrative review. Nutrition Reviews, 80(12), 2288-2300.
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  • Waterhouse, A., Bertoni, M., Bienert, S., Studer, G., Tauriello, G., Gumienny, R., Heer, F. T., de Beer, T. A. P., Rempfer, C. & Bordoli, L. (2018). SWISS-MODEL: homology modelling of protein structures and complexes. Nucleic acids research, 46(W1), W296-W303.
  • Wodak, S. J., Vajda, S., Lensink, M. F., Kozakov, D. & Bates, P. A. (2022). Critical Assessment of Methods for Predicting the 3D Structure of Proteins and Protein Complexes. Annual Review of Biophysics, 52.
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  • Zwanzig, R., Szabo, A. & Bagchi, B. (1992). Levinthal's paradox. Proceedings of the National Academy of Sciences, 89(1), 20-22.
Toplam 90 adet kaynakça vardır.

Ayrıntılar

Birincil Dil Türkçe
Konular Derin Öğrenme, Nöral Ağlar, Doğal Dil İşleme, Yapay Zeka (Diğer), Biyomühendislik (Diğer)
Bölüm Derleme Makaleler
Yazarlar

Burcu Tekin 0000-0003-4177-2245

Rafig Gurbanov 0000-0002-5293-6447

Erken Görünüm Tarihi 12 Aralık 2023
Yayımlanma Tarihi 31 Aralık 2023
Gönderilme Tarihi 6 Temmuz 2023
Yayımlandığı Sayı Yıl 2023 Cilt: 22 Sayı: 44

Kaynak Göster

APA Tekin, B., & Gurbanov, R. (2023). ALPHAFOLD: DERİN ÖĞRENME VE SİNİR AĞLARI YOLUYLA PROTEİN KATLAMASINDA DEVRİM YARATMAK. İstanbul Ticaret Üniversitesi Fen Bilimleri Dergisi, 22(44), 445-466. https://doi.org/10.55071/ticaretfbd.1323165
AMA Tekin B, Gurbanov R. ALPHAFOLD: DERİN ÖĞRENME VE SİNİR AĞLARI YOLUYLA PROTEİN KATLAMASINDA DEVRİM YARATMAK. İstanbul Ticaret Üniversitesi Fen Bilimleri Dergisi. Aralık 2023;22(44):445-466. doi:10.55071/ticaretfbd.1323165
Chicago Tekin, Burcu, ve Rafig Gurbanov. “ALPHAFOLD: DERİN ÖĞRENME VE SİNİR AĞLARI YOLUYLA PROTEİN KATLAMASINDA DEVRİM YARATMAK”. İstanbul Ticaret Üniversitesi Fen Bilimleri Dergisi 22, sy. 44 (Aralık 2023): 445-66. https://doi.org/10.55071/ticaretfbd.1323165.
EndNote Tekin B, Gurbanov R (01 Aralık 2023) ALPHAFOLD: DERİN ÖĞRENME VE SİNİR AĞLARI YOLUYLA PROTEİN KATLAMASINDA DEVRİM YARATMAK. İstanbul Ticaret Üniversitesi Fen Bilimleri Dergisi 22 44 445–466.
IEEE B. Tekin ve R. Gurbanov, “ALPHAFOLD: DERİN ÖĞRENME VE SİNİR AĞLARI YOLUYLA PROTEİN KATLAMASINDA DEVRİM YARATMAK”, İstanbul Ticaret Üniversitesi Fen Bilimleri Dergisi, c. 22, sy. 44, ss. 445–466, 2023, doi: 10.55071/ticaretfbd.1323165.
ISNAD Tekin, Burcu - Gurbanov, Rafig. “ALPHAFOLD: DERİN ÖĞRENME VE SİNİR AĞLARI YOLUYLA PROTEİN KATLAMASINDA DEVRİM YARATMAK”. İstanbul Ticaret Üniversitesi Fen Bilimleri Dergisi 22/44 (Aralık 2023), 445-466. https://doi.org/10.55071/ticaretfbd.1323165.
JAMA Tekin B, Gurbanov R. ALPHAFOLD: DERİN ÖĞRENME VE SİNİR AĞLARI YOLUYLA PROTEİN KATLAMASINDA DEVRİM YARATMAK. İstanbul Ticaret Üniversitesi Fen Bilimleri Dergisi. 2023;22:445–466.
MLA Tekin, Burcu ve Rafig Gurbanov. “ALPHAFOLD: DERİN ÖĞRENME VE SİNİR AĞLARI YOLUYLA PROTEİN KATLAMASINDA DEVRİM YARATMAK”. İstanbul Ticaret Üniversitesi Fen Bilimleri Dergisi, c. 22, sy. 44, 2023, ss. 445-66, doi:10.55071/ticaretfbd.1323165.
Vancouver Tekin B, Gurbanov R. ALPHAFOLD: DERİN ÖĞRENME VE SİNİR AĞLARI YOLUYLA PROTEİN KATLAMASINDA DEVRİM YARATMAK. İstanbul Ticaret Üniversitesi Fen Bilimleri Dergisi. 2023;22(44):445-66.