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Predicting drug resistance related to ABC transporters using unsupervised Consensus Self-Organizing Maps

机译:使用无监督的共识自组织图预测与ABC转运蛋白有关的耐药性

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摘要

ATP binding cassette (ABC) transporters play a pivotal role in drug elimination, particularly on several types of cancer in which these proteins are overexpressed. Due to their promiscuous ligand recognition, building computational models for substrate classification is quite challenging. This study evaluates the use of modified Self-Organizing Maps (SOM) for predicting drug resistance associated with P-gp, MPR1 and BCRP activity. Herein, we present a novel multi-labelled unsupervised classification model which combines a new clustering algorithm with SOM. It significantly improves the accuracy of substrates classification, catching up with traditional supervised machine learning algorithms. Results can be applied to predict the pharmacological profile of new drug candidates during the drug development process.
机译:ATP结合盒(ABC)转运蛋白在药物消除中起着关键作用,尤其是在这些蛋白质过表达的几种类型的癌症中。由于它们混杂的配体识别,建立用于底物分类的计算模型非常具有挑战性。这项研究评估使用改进的自组织映射(SOM)来预测与P-gp,MPR1和BCRP活性相关的耐药性。在这里,我们提出了一种新颖的多标签无监督分类模型,该模型结合了新的聚类算法和SOM。与传统的监督式机器学习算法相比,它大大提高了基材分类的准确性。结果可用于预测药物开发过程中新候选药物的药理作用。

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