摘要:
Existing computational methods for drug repositioning either rely only on the gene expression response of cell lines after treatment, or on drug-to-disease relationships, merging several information levels. However, the noisy nature of the gene expression and the scarcity of genomic data for many diseases are important limitations to such approaches. Here we focused on a drug-centered approach by predicting the therapeutic class of FDA-approved compounds, not considering data concerning the diseases. We propose a novel computational approach to predict drug repositioning based on state-of-the-art machine-learning algorithms. We have integrated multiple layers of information: i) on the distances of the drugs based on how similar are their chemical structures, ii) on how close are their targets within the protein-protein interaction network, and iii) on how correlated are the gene expression patterns after treatment. Our classifier reaches high accuracy levels (78%), allowing us to re-interpret the top misclassifications as re-classifications, after rigorous statistical evaluation. Efficient drug repurposing has the potential to significantly impact the whole field of drug development. The results presented here can significantly accelerate the translation into the clinics of known compounds for novel therapeutic uses.
展开
本文提出了一种基于最新机器学习算法的药物再定位预测新方法,整合了药物化学结构相似性、蛋白质相互作用网络及药物治疗后的基因表达模式等多层信息。该模型达到了78%的高准确率,通过对错误分类的重新评估,揭示了潜在的药物新用途。这种方法有望显著加速已知化合物在新治疗应用中的临床转化。
3296

被折叠的 条评论
为什么被折叠?



