Li Limin, He Xiao, Borgwardt Karsten
School of Mathematics and Statistics, Xi'an Jiaotong University, Xi'an, 710049, China.
Department of Biosystems Science and Engineering, ETH Zurich, Basel, Switzerland.
BMC Syst Biol. 2018 Apr 24;12(Suppl 4):55. doi: 10.1186/s12918-018-0569-7.
Finding potential drug targets is a crucial step in drug discovery and development. Recently, resources such as the Library of Integrated Network-Based Cellular Signatures (LINCS) L1000 database provide gene expression profiles induced by various chemical and genetic perturbations and thereby make it possible to analyze the relationship between compounds and gene targets at a genome-wide scale. Current approaches for comparing the expression profiles are based on pairwise connectivity mapping analysis. However, this method makes the simple assumption that the effect of a drug treatment is similar to knocking down its single target gene. Since many compounds can bind multiple targets, the pairwise mapping ignores the combined effects of multiple targets, and therefore fails to detect many potential targets of the compounds.
We propose an algorithm to find sets of gene knock-downs that induce gene expression changes similar to a drug treatment. Assuming that the effects of gene knock-downs are additive, we propose a novel bipartite block-wise sparse multi-task learning model with super-graph structure (BBSS-MTL) for multi-target drug repositioning that overcomes the restrictive assumptions of connectivity mapping analysis.
The proposed method BBSS-MTL is more accurate for predicting potential drug targets than the simple pairwise connectivity mapping analysis on five datasets generated from different cancer cell lines.
The code can be obtained at http://gr.xjtu.edu.cn/web/liminli/codes .
寻找潜在的药物靶点是药物研发过程中的关键一步。最近,诸如基于整合网络的细胞特征库(LINCS)L1000数据库等资源提供了由各种化学和基因扰动诱导的基因表达谱,从而使得在全基因组范围内分析化合物与基因靶点之间的关系成为可能。当前用于比较表达谱的方法基于成对连接性映射分析。然而,该方法做了一个简单的假设,即药物治疗的效果类似于敲低其单个靶基因。由于许多化合物可以结合多个靶点,成对映射忽略了多个靶点的联合效应,因此无法检测到化合物的许多潜在靶点。
我们提出了一种算法,用于找到能诱导与药物治疗相似的基因表达变化的基因敲低集合。假设基因敲低的效应是可加的,我们提出了一种具有超图结构的新型二分块-wise稀疏多任务学习模型(BBSS-MTL)用于多靶点药物重新定位,该模型克服了连接性映射分析的限制性假设。
在从不同癌细胞系生成的五个数据集上,所提出的BBSS-MTL方法在预测潜在药物靶点方面比简单的成对连接性映射分析更准确。