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首页> 外文期刊>Journal of proteome research >Trypano-PPI: A Web Server for Prediction of Unique Targets in Trypanosome Proteome by using Electrostatic Parameters of Protein-protein Interactions
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Trypano-PPI: A Web Server for Prediction of Unique Targets in Trypanosome Proteome by using Electrostatic Parameters of Protein-protein Interactions

机译:锥虫-PPI:通过使用蛋白质-蛋白质相互作用的静电参数来预测锥虫蛋白质组中独特目标的Web服务器

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Trypanosoma brucei causes African trypanosomiasis in humans (HAT or African sleeping sickness) and Nagana in cattle. The disease threatens over 60 million people and uncounted numbers of cattle in 36 countries of sub-Saharan Africa and has a devastating impact on human health and the economy. On the other hand, Trypanosoma cruzi is responsible in South America for Chagas disease, which can cause acute illness and death, especially in young children. In this context, the discovery of novel drug targets in Trypanosome proteome is a major focus for the scientific community. Recently, many researchers have spent important efforts on the study of protein-protein interactions (PPIs) in pathogen Trypanosome species concluding that the low sequence identities between some parasite proteins and their human host render these PPIs as highly promising drug targets. To the best of our knowledge, there are no general models to predict Unique PPIs in Trypanosome (TPPIs). On the other hand, the 3D structure of an increasing number of Trypanosome proteins is reported in databases. In this regard, the introduction of a new model to predict TPPIs from the 3D structure of proteins involved in PPI is very important. For this purpose, we introduced new protein-protein complex invariants based on the Markov average electrostatic potential xi(k)(R-i) for amino acids located in different regions (R-i) of i-th protein and placed at a distance k one from each other. We calculated more than 30 different types of parameters for 7866 pairs of proteins (1023 TPPIs and 6823 non-TPPIs) from more than 20 organisms, including parasites and human or cattle hosts. We found a very simple linear model that predicts above 90% of TPPIs and non-TPPIs both in training and independent test subsets using only two parameters. The parameters were (d)xi(k)(S) = vertical bar xi(k)(S-i) - xi(k)(S-2)vertical bar, the absolute difference between the xi(k)(S-i) values on the surface of the two proteins of the pairs. We also tested nonlinear ANN models for comparison purposes but the linear model gives the best results. We implemented this predictor in the web server named Trypan-oPPI freely available to public at http://miaja.tic.udc.es/Bio-AIMS/TrypanoPPI.php. This is the first model that predicts how unique a protein-protein complex in Trypanosome proteome is with respect to other parasites and hosts, opening new opportunities for antitrypanosome drug target discovery.
机译:布鲁氏锥虫可引起人类非洲锥虫病(HAT或非洲昏睡病)和牛长治病。该疾病威胁着撒哈拉以南非洲36个国家的6000万人和数量不明的牛,对人类健康和经济造成了毁灭性影响。另一方面,克鲁斯锥虫在南美负责查加斯病,该病可能导致急性疾病和死亡,尤其是在幼儿中。在这种情况下,锥虫蛋白质组中新型药物靶标的发现是科学界关注的重点。最近,许多研究人员在病原性锥虫物种中的蛋白质-蛋白质相互作用(PPI)方面进行了重要的研究,认为某些寄生虫蛋白质与其人类宿主之间的低序列同一性使这些PPI成为极有希望的药物靶标。据我们所知,尚无通用模型来预测锥虫体中独特的PPI(TPPI)。另一方面,数据库中报道了越来越多的锥虫蛋白的3D结构。在这方面,引入一种新模型以根据PPI参与的蛋白质的3D结构预测TPPI非常重要。为此,我们基于位于第i个蛋白质不同区域(Ri)的氨基酸的马尔可夫平均静电势xi(k)(Ri)引入了新的蛋白质-蛋白质复合不变式,每个氨基酸之间的距离为k其他。我们计算了来自20多种生物(包括寄生虫和人或牛宿主)的7866对蛋白质(1023 TPPI和6823非TPI)的30多种不同类型的参数。我们发现了一个非常简单的线性模型,该模型仅使用两个参数就可以预测训练和独立测试子集中的TPPI和非TPPI超过90%。参数为(d)xi(k)(S)=竖线xi(k)(Si)-xi(k)(S-2)竖线,xi(k)(Si)值之间的绝对差两对蛋白质的表面。我们还测试了非线性ANN模型以进行比较,但线性模型给出了最佳结果。我们在名为Trypan-oPPI的Web服务器中实现了该预测变量,该服务器可从http://miaja.tic.udc.es/Bio-AIMS/TrypanoPPI.php免费获得。这是第一个预测锥虫蛋白质组中蛋白质-蛋白质复合物相对于其他寄生虫和宿主的独特性的模型,这为抗锥虫药物靶标发现打开了新的机遇。

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