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Protein-protein Interaction Prediction using Arabic semantic analysis

机译:使用阿拉伯语语义分析的蛋白质相互作用预测

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Scientists are still far from unraveling the molecular mechanisms of most relevant diseases such as cancer and diabetes. A better understanding of protein interactions could provide a clue about the molecular mechanism of the processes leading to such diseases. Novel methodologies to understand diseases through their primary protein interactions are highly desired. In this paper we propose a simple method to predict protein-protein interaction based on Arabic semantic analysis model. The Arabic semantic model is an effective feature extraction method based on natural language processing. Two protein sequences may interact if they contain similar or related Arabic words. The semantic meaning will most likely provide us with a clue on how or why two proteins interact. To evaluate the ability of the proposed method to distinguish between “interacted” and “non-interacted” proteins pairs, we applied it on a dataset of 200 protein pairs from the available yeast saccharomyces cerevisiae protein interaction. The proposed method managed to get 100% sensitivity, 0.84% sensitivity and 92% overall accuracy. The method also showed moderate improvement over the existing well-known methods for PPI prediction such as PPI-PS and PIPE.
机译:科学家距离癌症和糖尿病等大多数最相关疾病的分子机制还很遥远。对蛋白质相互作用的更好理解可以为导致此类疾病的过程的分子机制提供线索。迫切需要通过其主要蛋白质相互作用来理解疾病的新颖方法。在本文中,我们提出了一种基于阿拉伯语语义分析模型预测蛋白质相互作用的简单方法。阿拉伯语语义模型是一种基于自然语言处理的有效特征提取方法。如果两个蛋白质序列包含相似或相关的阿拉伯语单词,则可能会相互作用。语义很可能会为我们提供有关两种蛋白质如何或为何相互作用的线索。为了评估所提出的方法区分“相互作用”和“非相互作用”蛋白对的能力,我们将其应用于来自可用酵母酿酒酵母蛋白相互作用的200个蛋白对的数据集。所提出的方法设法获得100%的灵敏度,0.84%的灵敏度和92%的整体精度。与现有的PPI预测众所周知的方法(例如PPI-PS和PIPE)相比,该方法还显示出适度的改进。

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