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A Hadoop-Based Method to Predict Potential Effective Drug Combination

机译:一种基于Hadoop的潜在有效药物组合预测方法

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Combination drugs that impact multiple targets simultaneously are promising candidates for combating complex diseases due to their improved efficacy and reduced side effects. However, exhaustive screening of all possible drug combinations is extremely time-consuming and impractical. Here, we present a novel Hadoop-based approach to predict drug combinations by taking advantage of the MapReduce programming model, which leads to an improvement of scalability of the prediction algorithm. By integrating the gene expression data of multiple drugs, we constructed data preprocessing and the support vector machines and naïve Bayesian classifiers on Hadoop for prediction of drug combinations. The experimental results suggest that our Hadoop-based model achieves much higher efficiency in the big data processing steps with satisfactory performance. We believed that our proposed approach can help accelerate the prediction of potential effective drugs with the increasing of the combination number at an exponential rate in future. The source code and datasets are available upon request.
机译:同时作用于多个靶标的组合药物由于其提高的功效和减少的副作用而成为对抗复杂疾病的有希望的候选者。但是,对所有可能的药物组合进行详尽的筛选非常耗时且不切实际。在这里,我们提出一种新颖的基于Hadoop的方法,通过利用MapReduce编程模型来预测药物组合,从而改善了预测算法的可伸缩性。通过整合多种药物的基因表达数据,我们在Hadoop上构建了数据预处理和支持向量机以及朴素的贝叶斯分类器,以预测药物组合。实验结果表明,我们基于Hadoop的模型在大数据处理步骤中实现了更高的效率,并具有令人满意的性能。我们相信,随着组合数的增加,未来所提出的方法可以帮助加速对潜在有效药物的预测。可根据要求提供源代码和数据集。

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