School of Biological Sciences, College of Natural Sciences, Bangor University, Bangor LL57 2UW, UK.
Toxicon. 2013 Sep;72:113-25. doi: 10.1016/j.toxicon.2013.06.019. Epub 2013 Jul 4.
Venoms contain active substances with highly specific physiological effects and are increasingly being used as sources of novel diagnostic, research and treatment tools for human disease. Experimental characterisation of individual toxin activities is a severe rate-limiting step in the discovery process, and in-silico tools which allow function to be predicted from sequence information are essential. Toxins are typically members of large multifunctional families of structurally similar proteins that can have different biological activities, and minor sequence divergence can have significant consequences. Thus, existing predictive tools tend to have low accuracy. We investigated a classification model based on physico-chemical attributes that can easily be calculated from amino-acid sequences, using over 250 (mostly novel) viperid phospholipase A₂ toxins. We also clustered proteins by sequence profiles, and carried out in-vitro tests for four major activities on a selection of isolated novel toxins, or crude venoms known to contain them. The majority of detected activities were consistent with predictions, in contrast to poor performance of a number of tested existing predictive methods. Our results provide a framework for comparison of active sites among different functional sub-groups of toxins that will allow a more targeted approach for identification of potential drug leads in the future.
毒液中含有具有高度特异性生理作用的活性物质,越来越多地被用作人类疾病新型诊断、研究和治疗工具的来源。个体毒素活性的实验表征是发现过程中的严重限速步骤,能够根据序列信息预测功能的计算工具是必不可少的。毒素通常是结构相似的多功能蛋白大家族的成员,具有不同的生物学活性,微小的序列差异可能会产生重大影响。因此,现有的预测工具往往准确性较低。我们研究了一种基于理化属性的分类模型,该模型可以很容易地根据氨基酸序列计算出来,使用了超过 250 种(主要是新型的)蝰蛇磷脂酶 A₂毒素。我们还根据序列特征对蛋白质进行聚类,并对四种主要活性的选择新型分离毒素或已知含有它们的粗毒液进行了体外测试。与许多经过测试的现有预测方法的不佳性能形成对比的是,检测到的大多数活性都与预测一致。我们的研究结果为不同功能亚组毒素的活性位点之间的比较提供了一个框架,这将允许未来更有针对性地确定潜在的药物先导物。