7M5T
Solution NMR structure of de novo designed protein 0515
7M5T の概要
エントリーDOI | 10.2210/pdb7m5t/pdb |
NMR情報 | BMRB: 30890 |
分子名称 | De novo designed protein 0515 (1 entity in total) |
機能のキーワード | all alpha, de novo protein |
由来する生物種 | synthetic construct |
タンパク質・核酸の鎖数 | 1 |
化学式量合計 | 11474.79 |
構造登録者 | Ramelot, T.A.,Hao, J.,Baker, D.,Montelione, G.T. (登録日: 2021-03-24, 公開日: 2021-12-15, 最終更新日: 2024-05-15) |
主引用文献 | Anishchenko, I.,Pellock, S.J.,Chidyausiku, T.M.,Ramelot, T.A.,Ovchinnikov, S.,Hao, J.,Bafna, K.,Norn, C.,Kang, A.,Bera, A.K.,DiMaio, F.,Carter, L.,Chow, C.M.,Montelione, G.T.,Baker, D. De novo protein design by deep network hallucination. Nature, 600:547-552, 2021 Cited by PubMed Abstract: There has been considerable recent progress in protein structure prediction using deep neural networks to predict inter-residue distances from amino acid sequences. Here we investigate whether the information captured by such networks is sufficiently rich to generate new folded proteins with sequences unrelated to those of the naturally occurring proteins used in training the models. We generate random amino acid sequences, and input them into the trRosetta structure prediction network to predict starting residue-residue distance maps, which, as expected, are quite featureless. We then carry out Monte Carlo sampling in amino acid sequence space, optimizing the contrast (Kullback-Leibler divergence) between the inter-residue distance distributions predicted by the network and background distributions averaged over all proteins. Optimization from different random starting points resulted in novel proteins spanning a wide range of sequences and predicted structures. We obtained synthetic genes encoding 129 of the network-'hallucinated' sequences, and expressed and purified the proteins in Escherichia coli; 27 of the proteins yielded monodisperse species with circular dichroism spectra consistent with the hallucinated structures. We determined the three-dimensional structures of three of the hallucinated proteins, two by X-ray crystallography and one by NMR, and these closely matched the hallucinated models. Thus, deep networks trained to predict native protein structures from their sequences can be inverted to design new proteins, and such networks and methods should contribute alongside traditional physics-based models to the de novo design of proteins with new functions. PubMed: 34853475DOI: 10.1038/s41586-021-04184-w 主引用文献が同じPDBエントリー |
実験手法 | SOLUTION NMR |
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