Drug–pathway interaction prediction via multiple feature fusion?
Molecular BioSystems Pub Date: 2014-08-14 DOI: 10.1039/C4MB00199K
Abstract
Predicting new drug–pathway interactions from heterogeneous biological data is important not only for the understanding of various drug response and molecular interaction processes, but also for the development of novel drugs and the therapy of human diseases. In this paper, three different learning methods including the Bipartite Local Models method (BLM), Gaussian Interaction Profiles kernels (GIP) method and Graph-based Semi-supervised Learning method (GBSSL) were used to predict drug–pathway interactions. To realize the purpose, drugs were firstly represented by functional groups and chemical structure similarity, and pathways were represented by their related gene expressions and semantic similarity based features. Then, the parameter optimization procedures were further adopted to deal with heterogeneous data sources. As a result, the proposed methods achieved a high ROC curve score (AUC score) over 0.95, which validated the effectiveness of multiple information integration. Moreover, several new potential drug–pathway interactions were identified for further biological function research.
Recommended Literature
- [1] An approach towards the synthesis of novel fused nitrogen tricyclic heterocyclic scaffolds via GBB reaction? Sandip Gangadhar Balwe,Yeon Tae JeongOrg. Biomol. Chem., 2018,16, 1287-1296 10.1039/C7OB02933K
- [2] Alternative donor substrates for inverting and retaining glycosyltransferases? Luke L. Lairson,Warren W. WakarchukChem. Commun., 2007, 365-367 10.1039/B614636H
- [3] An integrated cathode and solid electrolyte via in situ polymerization with significantly reduced interface resistance? Jialiang Yuan,Ran Dong,Yuan Li,Yang Liu,Zhuo Zheng,Yuxia Liu,Yan Sun,Benhe Zhong,Zhenguo Wu,Xiaodong GuoChem. Commun., 2021,57, 13004-13007 10.1039/D1CC04485K
- [4] An artificial photosynthesis system comprising a covalent triazine framework as an electron relay facilitator for photochemical carbon dioxide reduction? Siquan Zhang,Shengyao Wang,Liping Guo,Hao Chen,Bien Tan,Shangbin JinJ. Mater. Chem. C, 2020,8, 192-200 10.1039/C9TC05297F
- [5] An astrophysically-relevant mechanism for amino acid enantiomer enrichment Stephen P. Fletcher,Richard B. C. Jagt,Ben L. FeringaChem. Commun., 2007, 2578-2580 10.1039/B702882B
- [6] An aptasensor for the detection of ampicillin in milk using a personal glucose meter Xixi Li,Nanwei Zhu,Ruohan Li,Qinpu ZhangAnal. Methods, 2020,12, 3376-3381 10.1039/D0AY00256A
- [7] An integrated droplet-digital microfluidic system for on-demand droplet creation, mixing, incubation, and sorting? Lab Chip, 2019,19, 524-535 10.1039/C8LC01170B
- [8] An atomistic mechanism for the degradation of perovskite solar cells by trapped charge? Eunhak Lim,Jiyoung Heo,Seong Keun KimNanoscale, 2019,11, 11369-11378 10.1039/C9NR02193K
- [9] An inter-tangled network of redox-active and conducting polymers as a cathode for ultrafast rechargeable batteries Jieun Kim,Han-Saem Park,Tae-Hee Kim,Sung Yeol Kim,Hyun-Kon SongPhys. Chem. Chem. Phys., 2014,16, 5295-5300 10.1039/C3CP54624A
- [10] An antioxidant self-healing hydrogel for 3D cell cultures? Lei Yang,Yuan Zeng,Haibo Wu,Chunwu Zhou,Lei TaoJ. Mater. Chem. B, 2020,8, 1383-1388 10.1039/C9TB02792K
Journal Name:Molecular BioSystems
research_products
-
CAS no.: 89640-58-4