李翛然
(2025-11-29 22:54):
#paper doi:10.1038/s41586-024-08427-x Computational design of cysteine proteases Baker真的是想教会这个世界怎么用AI设计蛋白质~该研究利用深度学习模型 RFD2‑MI 从头设计了具有催化活性的半胱氨酸蛋白酶,能够在序列特异性下切割肽链酰胺键。设计的酶展示出最高约 3 × 10⁷ 倍的速率提升(kcat/k_uncat),并通过晶体结构验证其与预测模型高度一致(Cα RMSD < 1.2 Å)。所有设计的折叠均为自然界未见过的新结构(TM‑score < 0.5),实验证实其热稳定性高(Tm > 80 °C)并在中性 pH 条件下保持活性。 又是一个手把手教程~~
bioRxiv,
2025-11-22.
DOI: 10.1101/2025.11.21.689808
Computational design of cysteine proteases
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Abstract:
Abstract Despite advances in de novo enzyme design, success has been largely limited to low energy barrier model reactions. Amide bonds such as those linking amino acids along the peptide backbone are stable for hundreds of years in neutral aqueous solution because of the high energy barrier to hydrolysis 1 . Here we describe the use of a new deep learning method, RFD2-MI 2 , to de novo design enzymes which utilize an activated cysteine nucleophile to hydrolyze the polypeptide backbone in a sequence-dependent manner, achieving rate enhancements over the background reaction ( k cat / k uncat ) of up to 3 × 10 7 . The generated designs have folds very different from the proteases in nature (TM score < 0.50), and crystal structures are very close to the design models (Cα RMSDs < 1.2 Å), highlighting the accuracy of the design methodology. Our approach has broad utility for advancing the design of novel proteases for both biotechnical and medical applications.
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