内在无序蛋白质
扩散
化学物理
统计物理学
材料科学
纳米技术
化学
物理
热力学
核磁共振
作者
Junjie Zhu,Zhengxin Li,Bo Zhang,Zhuoqi Zheng,Bozitao Zhong,Jie Bai,Xiaokun Hong,Taifeng Wang,Ting Wei,Jianyi Yang,Haifeng Chen
标识
DOI:10.1101/2024.05.05.592611
摘要
Intrinsically disordered proteins (IDPs) play pivotal roles in various biological functions and are closely linked to many human diseases including cancer, diabetes and Alzheimer disease. Structural investigations of IDPs typically involve a combination of molecular dynamics (MD) simulations and experimental data to correct for intrinsic biases in simulation methods. However, these simulations are hindered by their high computational cost and a scarcity of experimental data, severely limiting their applicability. Despite the recent advancements in structure prediction for structured proteins, understanding the conformational properties of IDPs remains challenging partly due to the poor conservation of disordered protein sequences and limited experimental characterization. Here, we introduce IDPFold, a method capable of generating conformational ensembles for IDPs directly from their sequences using fine-tuned diffusion models. IDPFold bypasses the need for Multiple Sequence Alignments (MSA) or experimental data, achieving accurate predictions of ensemble properties across numerous IDPs. By sampling conformations at the backbone level, IDPFold provides more detailed structural features and more precise property estimation compared to other state-of-the-art methods. IDPFold is ready to be used in the elucidate the sequence-disorder-function paradigm of IDPs.
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