» Articles » PMID: 36926275

Before and After AlphaFold2: An Overview of Protein Structure Prediction

Overview
Journal Front Bioinform
Specialty Biology
Date 2023 Mar 17
PMID 36926275
Authors
Affiliations
Soon will be listed here.
Abstract

Three-dimensional protein structure is directly correlated with its function and its determination is critical to understanding biological processes and addressing human health and life science problems in general. Although new protein structures are experimentally obtained over time, there is still a large difference between the number of protein sequences placed in Uniprot and those with resolved tertiary structure. In this context, studies have emerged to predict protein structures by methods based on a template or free modeling. In the last years, different methods have been combined to overcome their individual limitations, until the emergence of AlphaFold2, which demonstrated that predicting protein structure with high accuracy at unprecedented scale is possible. Despite its current impact in the field, AlphaFold2 has limitations. Recently, new methods based on protein language models have promised to revolutionize the protein structural biology allowing the discovery of protein structure and function only from evolutionary patterns present on protein sequence. Even though these methods do not reach AlphaFold2 accuracy, they already covered some of its limitations, being able to predict with high accuracy more than 200 million proteins from metagenomic databases. In this mini-review, we provide an overview of the breakthroughs in protein structure prediction before and after AlphaFold2 emergence.

Citing Articles

Structural bioinformatics for rational drug design.

Mozaffari S, Moen A, Ng C, Nicolaes G, Wichapong K Res Pract Thromb Haemost. 2025; 9(1):102691.

PMID: 40027444 PMC: 11869865. DOI: 10.1016/j.rpth.2025.102691.


Advances of deep Neural Networks (DNNs) in the development of peptide drugs.

Niu Y, Qin P, Lin P Future Med Chem. 2025; 17(4):485-499.

PMID: 39935356 PMC: 11834456. DOI: 10.1080/17568919.2025.2463319.


The physics-AI dialogue in drug design.

Vargas-Rosales P, Caflisch A RSC Med Chem. 2025; .

PMID: 39906313 PMC: 11788922. DOI: 10.1039/d4md00869c.


Post-processing enhances protein secondary structure prediction with second order deep learning and embeddings.

Chatzimiltis S, Agathocleous M, Promponas V, Christodoulou C Comput Struct Biotechnol J. 2025; 27:243-251.

PMID: 39866664 PMC: 11764030. DOI: 10.1016/j.csbj.2024.12.022.


Lessons from Deep Learning Structural Prediction of Multistate Multidomain Proteins-The Case Study of Coiled-Coil NOD-like Receptors.

Sulea T, Martin E, Bugeac C, Bectas F, Iacob A, Spiridon L Int J Mol Sci. 2025; 26(2).

PMID: 39859213 PMC: 11765006. DOI: 10.3390/ijms26020500.


References
1.
Jones D . GenTHREADER: an efficient and reliable protein fold recognition method for genomic sequences. J Mol Biol. 1999; 287(4):797-815. DOI: 10.1006/jmbi.1999.2583. View

2.
Azzaz F, Yahi N, Chahinian H, Fantini J . The Epigenetic Dimension of Protein Structure Is an Intrinsic Weakness of the AlphaFold Program. Biomolecules. 2022; 12(10). PMC: 9599222. DOI: 10.3390/biom12101527. View

3.
Skolnick J, Gao M, Zhou H, Singh S . AlphaFold 2: Why It Works and Its Implications for Understanding the Relationships of Protein Sequence, Structure, and Function. J Chem Inf Model. 2021; 61(10):4827-4831. PMC: 8592092. DOI: 10.1021/acs.jcim.1c01114. View

4.
Scardino V, Di Filippo J, Cavasotto C . How good are AlphaFold models for docking-based virtual screening?. iScience. 2023; 26(1):105920. PMC: 9852548. DOI: 10.1016/j.isci.2022.105920. View

5.
Rost B, Schneider R, Sander C . Protein fold recognition by prediction-based threading. J Mol Biol. 1997; 270(3):471-80. DOI: 10.1006/jmbi.1997.1101. View