Intrinsically Disordered Proteins: Predictions and Applications

A. Dunker, C. Oldfield, Jingwei Meng, P. Romero, Jack Y. Yang, Z. Obradovic, V. Uversky
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引用次数: 1

Abstract

About 10 years ago we published our first predictor of intrinsically disordered protein residues in another IEEE journal, the Proceedings of the IEEE International Conference on Neural Networks. Others call such proteins "natively unfolded" and "intrinsically unstructured." Since then, we and others have substantially improved the prediction of intrinsically disordered residues. The prediction of protein intrinsic disorder is similar to the prediction of secondary structure in terms of methodology, but, at the structural level, secondary structure (especially random coil) and intrinsic disorder differ completely in their dynamic motion. First, we will briefly describe the prediction of protein disorder, show the progress from ~ 70 % to ~ 85 % per residue prediction accuracy, and show that intrinsically disordered proteins are common over the three domains of life, but are especially common among the eukaryotes. Next we will discuss our methods for deducing functions that are associated with disordered rather than structured proteins. In brief, structured proteins have advantages for catalysis while disordered proteins and regions have advantages for the reversible, weak binding often observed in signaling, control, and regulation. After that we will discuss how disorder facilitates binding diversity in protein-protein interaction networks, both for single disordered regions binding to many partners and for many disordered regions with different sequences binding to a common site on the surface of one structured protein. Part three presents data indicating that alternative splicing is more prevalent in regions of RNA that code for disorder than those that code for structure, thus providing a means for evolving tissue-specific signaling networks. Finally, we will present a novel approach to drug discovery based on disordered protein.
内在无序蛋白质:预测和应用
大约10年前,我们在另一份IEEE期刊《IEEE国际神经网络会议论文集》上发表了我们的第一个内在无序蛋白质残基预测器。其他人称这种蛋白质为“天然展开的”和“内在非结构化的”。从那时起,我们和其他人已经大大改进了内在无序残基的预测。蛋白质内在无序的预测在方法上与二级结构的预测相似,但在结构层面,二级结构(尤其是随机线圈)与内在无序的动态运动完全不同。首先,我们将简要描述蛋白质紊乱的预测,展示从每个残基预测准确率的~ 70%到~ 85%的进展,并表明内在紊乱的蛋白质在生命的三个领域中都很常见,但在真核生物中尤其常见。接下来,我们将讨论推断与无序而非结构化蛋白质相关的功能的方法。简而言之,结构蛋白具有催化的优势,而无序蛋白和区域具有在信号、控制和调节中经常观察到的可逆、弱结合的优势。之后,我们将讨论无序如何促进蛋白质-蛋白质相互作用网络中的结合多样性,无论是单个无序区域与许多伙伴结合,还是许多具有不同序列的无序区域与一个结构蛋白表面的共同位点结合。第三部分提供的数据表明,选择性剪接在编码无序的RNA区域比编码结构的RNA区域更为普遍,从而为进化组织特异性信号网络提供了一种手段。最后,我们将提出一种基于无序蛋白的药物发现新方法。
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