New in protein structure and function annotation: hotspots, single nucleotide polymorphisms and the 'Deep Web'.

Yana Bromberg, Guy Yachdav, Yanay Ofran, Reinhard Schneider, Burkhard Rost
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Abstract

The rapidly increasing quantity of protein sequence data continues to widen the gap between available sequences and annotations. Comparative modeling suggests some aspects of the 3D structures of approximately half of all known proteins; homology- and network-based inferences annotate some aspect of function for a similar fraction of the proteome. For most known protein sequences, however, there is detailed knowledge about neither their function nor their structure. Comprehensive efforts towards the expert curation of sequence annotations have failed to meet the demand of the rapidly increasing number of available sequences. Only the automated prediction of protein function in the absence of homology can close the gap between available sequences and annotations in the foreseeable future. This review focuses on two novel methods for automated annotation, and briefly presents an outlook on how modern web software may revolutionize the field of protein sequence annotation. First, predictions of protein binding sites and functional hotspots, and the evolution of these into the most successful type of prediction of protein function from sequence will be discussed. Second, a new tool, comprehensive in silico mutagenesis, which contributes important novel predictions of function and at the same time prepares for the onset of the next sequencing revolution, will be described. While these two new sub-fields of protein prediction represent the breakthroughs that have been achieved methodologically, it will then be argued that a different development might further change the way biomedical researchers benefit from annotations: modern web software can connect the worldwide web in any browser with the 'Deep Web' (ie, proprietary data resources). The availability of this direct connection, and the resulting access to a wealth of data, may impact drug discovery and development more than any existing method that contributes to protein annotation.

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蛋白质结构和功能注释新进展:热点、单核苷酸多态性和“深网”。
快速增加的蛋白质序列数据量继续扩大可用序列和注释之间的差距。比较模型显示了大约一半已知蛋白质的3D结构的某些方面;同源性和基于网络的推断注释了蛋白质组相似部分功能的某些方面。然而,对于大多数已知的蛋白质序列,我们既不了解它们的功能,也不了解它们的结构。对序列注释专家管理的全面努力已经无法满足快速增长的可用序列数量的需求。在可预见的未来,只有在没有同源性的情况下对蛋白质功能进行自动预测,才能缩小现有序列与注释之间的差距。本文综述了两种新的自动注释方法,并简要介绍了现代网络软件如何给蛋白质序列注释领域带来革命性的变化。首先,将讨论蛋白质结合位点和功能热点的预测,以及这些预测如何演变成最成功的从序列预测蛋白质功能的类型。其次,将描述一种新的工具,全面的硅诱变,它有助于重要的新功能预测,同时为下一次测序革命的开始做准备。虽然这两个新的蛋白质预测子领域代表了方法论上的突破,但有人认为,另一个不同的发展可能会进一步改变生物医学研究人员从注释中受益的方式:现代网络软件可以将任何浏览器中的全球网络与“深网”(即专有数据资源)连接起来。这种直接联系的可用性,以及由此产生的对大量数据的访问,可能比任何现有的有助于蛋白质注释的方法更能影响药物的发现和开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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