School of Biosciences, University of Birmingham, Edgbaston Birmingham, B15 2TT, United Kingdom.
Division of Pharmacy and Optometry, School of Health Sciences, Manchester Academic Health Sciences Centre, University of Manchester, Manchester, M13 9PL, United Kingdom.
PLoS One. 2019 Jan 8;14(1):e0205214. doi: 10.1371/journal.pone.0205214. eCollection 2019.
Rapid, accurate prediction of protein structure from amino acid sequence would accelerate fields as diverse as drug discovery, synthetic biology and disease diagnosis. Massively improved prediction of protein structures has been driven by improving the prediction of the amino acid residues that contact in their 3D structure. For an average globular protein, around 92% of all residue pairs are non-contacting, therefore accurate prediction of only a small percentage of inter-amino acid distances could increase the number of constraints to guide structure determination. We have trained deep neural networks to predict inter-residue contacts and distances. Distances are predicted with an accuracy better than most contact prediction techniques. Addition of distance constraints improved de novo structure predictions for test sets of 158 protein structures, as compared to using the best contact prediction methods alone. Importantly, usage of distance predictions allows the selection of better models from the structure pool without a need for an external model assessment tool. The results also indicate how the accuracy of distance prediction methods might be improved further.
从氨基酸序列快速、准确地预测蛋白质结构将加速药物发现、合成生物学和疾病诊断等多个领域的发展。通过改进对其 3D 结构中相互作用的氨基酸残基的预测,大大提高了蛋白质结构的预测能力。对于平均球状蛋白质,大约 92%的所有残基对是非接触的,因此仅准确预测一小部分氨基酸间距离就可以增加约束数量以指导结构确定。我们已经训练了深度神经网络来预测残基间的接触和距离。与大多数接触预测技术相比,距离预测的准确性更高。与仅使用最佳接触预测方法相比,添加距离约束可提高 158 个蛋白质结构测试集的从头预测结构的准确性。重要的是,使用距离预测可以从结构池中选择更好的模型,而无需外部模型评估工具。结果还表明,距离预测方法的准确性如何进一步提高。