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Application of bioinformatics algorithms to define the most important protein features contribute to GABA receptors diversity GABA receptors' diversity, bioinformatic applications

机译:应用生物信息学算法定义最重要的蛋白质特征有助于GABA受体多样性GABA受体的多样性,生物信息学应用

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The importance of GABA receptors in the modulation of transmitter release and the late inhibitory postsynaptic potential and their ubiquitous distribution within the CNS promise a good deal as targets for many medical and pharmacological interventions. GABA interacts with various receptors types as A, B, C and various subtypes receptors. Various methods have been employed to distinguish between different GABA receptors' identity and here we have used various bioinformatics algorithms such as Rule Induction, Tree Induction, Attribute Weighting and clustering models to find out the most important protein features in each GABA receptors. More than 900 protein features for sequences all known GABA receptors were compared and the results showed in majority of models employed in this study, the frequencies and the counts of dipeptides play major roles in forming various types of GABA receptors. It has also shown the performance and the accuracies of the models employed here were generally high enough (except for one) confirming this approach can be used to study the structural difference between types and subtypes of GABA receptors. The new finding will be carefully analyzed and will be enclosed in camera ready paper.
机译:GABA受体在调节递质释放和晚期抑制性突触后电位及其在中枢神经系统内的普遍分布中的重要性有望成为许多医学和药理学干预措施的目标。 GABA与各种受体类型(例如A,B,C和各种亚型受体)相互作用。已经采用了各种方法来区分不同的GABA受体身份,在这里我们使用了各种生物信息学算法,例如规则归纳,树归纳,属性加权和聚类模型,以找出每种GABA受体中最重要的蛋白质特征。比较了所有已知GABA受体序列的900多种蛋白质特征,结果显示该研究采用的大多数模型中,二肽的频率和计数在形成各种类型的GABA受体中起主要作用。它也表明这里使用的模型的性能和准确性通常都很高(除了一个模型),这证实了该方法可用于研究GABA受体类型和亚型之间的结构差异。我们将对新发现进行认真分析,并将其包装在可用于照相机的纸张中。

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