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Cytochrome P450 site of metabolism prediction from 2D topological fingerprints using GPU accelerated probabilistic classifiers

机译:使用GPU加速的概率分类器从2D拓扑指纹预测细胞色素P450的代谢位点

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摘要

BackgroundThe prediction of sites and products of metabolism in xenobiotic compounds is key to the development of new chemical entities, where screening potential metabolites for toxicity or unwanted side-effects is of crucial importance. In this work 2D topological fingerprints are used to encode atomic sites and three probabilistic machine learning methods are applied: Parzen-Rosenblatt Window (PRW), Naive Bayesian (NB) and a novel approach called RASCAL (Random Attribute Subsampling Classification ALgorithm). These are implemented by randomly subsampling descriptor space to alleviate the problem often suffered by data mining methods of having to exactly match fingerprints, and in the case of PRW by measuring a distance between feature vectors rather than exact matching. The classifiers have been implemented in CUDA/C++ to exploit the parallel architecture of graphical processing units (GPUs) and is freely available in a public repository.
机译:背景异种生物化合物中代谢位点和产物的预测是开发新化学实体的关键,在新化学实体中,筛选潜在代谢物的毒性或不良副作用至关重要。在这项工作中,使用2D拓扑指纹对原子位点进行编码,并应用了三种概率机器学习方法:Parzen-Rosenblatt窗口(PRW),朴素贝叶斯(NB)和一种称为RASCAL的新颖方法(随机属性子采样分类算法)。这些通过随机地对描述符空间进行二次采样来缓解,以缓解数据挖掘方法经常遇到的问题,即必须精确匹配指纹,而在PRW的情况下,则通过测量特征向量之间的距离而不是精确匹配来解决。分类器已在CUDA / C ++中实现,以利用图形处理单元(GPU)的并行体系结构,并可在公共存储库中免费使用。

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