Do “Newly Born” orphan proteins resemble “Never Born” proteins? A study using three deep learning algorithms

Author:

Liu Jing12,Yuan Rongqing3,Shao Wei4,Wang Jitong3,Silman Israel5ORCID,Sussman Joel L.6ORCID

Affiliation:

1. Department of Biotechnology and Food Engineering Guangdong Technion‐Israel Institute of Technology Shantou China

2. Faculty of Biotechnology and Food Engineering, Technion‐Israel Institute of Technology Haifa Israel

3. Department of Chemistry Tsinghua University Beijing China

4. School of Chemistry and Chemical Engineering Shanghai Jiao Tong University Shanghai China

5. Department of Brain Sciences The Weizmann Institute of Science Rehovot Israel

6. Department of Chemical and Structural Biology The Weizmann Institute of Science Rehovot Israel

Abstract

Abstract“Newly Born” proteins, devoid of detectable homology to any other proteins, known as orphan proteins, occur in a single species or within a taxonomically restricted gene family. They are generated by the expression of novel open reading frames, and appear throughout evolution. We were curious if three recently developed programs for predicting protein structures, namely, AlphaFold2, RoseTTAFold, and ESMFold, might be of value for comparison of such “Newly Born” proteins to random polypeptides with amino acid content similar to that of native proteins, which have been called “Never Born” proteins. The programs were used to compare the structures of two sets of “Never Born” proteins that had been expressed—Group 1, which had been shown experimentally to possess substantial secondary structure, and Group 3, which had been shown to be intrinsically disordered. Overall, although the models generated were scored as being of low quality, they nevertheless revealed some general principles. Specifically, all four members of Group 1 were predicted to be compact by all three algorithms, in agreement with the experimental data, whereas the members of Group 3 were predicted to be very extended, as would be expected for intrinsically disordered proteins, again consistent with the experimental data. These predicted differences were shown to be statistically significant by comparing their accessible surface areas. The three programs were then used to predict the structures of three orphan proteins whose crystal structures had been solved, two of which display novel folds. Surprisingly, only for the protein which did not have a novel fold, and was taxonomically restricted, rather than being a true orphan, did all three algorithms predict very similar, high‐quality structures, closely resembling the crystal structure. Finally, they were used to predict the structures of seven orphan proteins with well‐identified biological functions, whose 3D structures are not known. Two proteins, which were predicted to be disordered based on their sequences, are predicted by all three structure algorithms to be extended structures. The other five were predicted to be compact structures with only two exceptions in the case of AlphaFold2. All three prediction algorithms make remarkably similar and high‐quality predictions for one large protein, HCO_11565, from a nematode. It is conjectured that this is due to many homologs in the taxonomically restricted family of which it is a member, and to the fact that the Dali server revealed several nonrelated proteins with similar folds. An animated Interactive 3D Complement (I3DC) is available in Proteopedia at http://proteopedia.org/w/Journal:Proteins:3

Publisher

Wiley

Subject

Molecular Biology,Biochemistry,Structural Biology

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Random, de novo, and conserved proteins: How structure and disorder predictors perform differently;Proteins: Structure, Function, and Bioinformatics;2024-01-16

2. Toxin rescue by a random sequence;Nature Ecology & Evolution;2023-11-09

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