Graph contextualized attention network for predicting synthetic lethality in human cancers
暂无分享,去创建一个
Chee Keong Kwoh | Jie Zheng | Jiawei Luo | Yahui Long | Yong Liu | Min Wu | Xiaoli Li
[1] P. Sutphin,et al. Targeting GLUT1 and the Warburg Effect in Renal Cell Carcinoma by Chemical Synthetic Lethality , 2011, Science Translational Medicine.
[2] Min Wu,et al. Predicting synthetic lethal interactions in human cancers using graph regularized self-representative matrix factorization , 2019, BMC Bioinformatics.
[3] Vipin Kumar,et al. An Integrative Multi-Network and Multi-Classifier Approach to Predict Genetic Interactions , 2010, PLoS Comput. Biol..
[4] Zhu-Hong You,et al. Graph convolution for predicting associations between miRNA and drug resistance , 2019, Bioinform..
[5] K. Camphausen,et al. SL-BioDP: Multi-Cancer Interactive Tool for Prediction of Synthetic Lethality and Response to Cancer Treatment , 2019, Cancers.
[6] Nicholas P. Tatonetti,et al. Connectivity Homology Enables Inter-Species Network Models of Synthetic Lethality , 2015, PLoS Comput. Biol..
[7] Xiangrong Liu,et al. Identifying enhancer-promoter interactions with neural network based on pre-trained DNA vectors and attention mechanism , 2019, Bioinform..
[8] Roland Arnold,et al. A negative genetic interaction map in isogenic cancer cell lines reveals cancer cell vulnerabilities , 2013, Molecular systems biology.
[9] Subarna Sinha,et al. Systematic discovery of mutation-specific synthetic lethals by mining pan-cancer human primary tumor data , 2017, Nature Communications.
[10] Donald F. Towsley,et al. Diffusion-Convolutional Neural Networks , 2015, NIPS.
[11] P. Hieter,et al. Synthetic lethality and cancer , 2017, Nature Reviews Genetics.
[12] Yong Liu,et al. SL2MF: Predicting Synthetic Lethality in Human Cancers via Logistic Matrix Factorization , 2018, IEEE/ACM Transactions on Computational Biology and Bioinformatics.
[13] Fan Zhang,et al. Predicting essential genes and synthetic lethality via influence propagation in signaling pathways of cancer cell fates , 2015, J. Bioinform. Comput. Biol..
[14] Min Wu,et al. Dual-dropout graph convolutional network for predicting synthetic lethality in human cancers , 2020, Bioinform..
[15] Grace S. Shieh,et al. Uncovering synthetic lethal interactions for therapeutic targets and predictive markers in lung adenocarcinoma , 2016, OncoTarget.
[16] Christos Faloutsos,et al. Random walk with restart: fast solutions and applications , 2008, Knowledge and Information Systems.
[17] Vaibhav Rajan,et al. Predicting Synthetic Lethal Interactions using Heterogeneous Data Sources. , 2019, Bioinformatics.
[18] Chee-Keong Kwoh,et al. Computational prediction of drug-target interactions using chemogenomic approaches: an empirical survey , 2019, Briefings Bioinform..
[19] Lei S. Qi,et al. Genetic interaction mapping in mammalian cells using CRISPR interference , 2017, Nature Methods.
[20] Xiang Deng,et al. DiscoverSL: an R package for multi‐omic data driven prediction of synthetic lethality in cancers , 2018, Bioinform..
[21] D. Silver,et al. Synthetic lethality--a new direction in cancer-drug development. , 2009, The New England journal of medicine.
[22] Chee Keong Kwoh,et al. Predicting Human Microbe-Drug Associations via Graph Convolutional Network with Conditional Random Field , 2020, Bioinform..
[23] Eytan Ruppin,et al. Predicting Cancer-Specific Vulnerability via Data-Driven Detection of Synthetic Lethality , 2014, Cell.
[24] Fan Zhang,et al. In Silico Prediction of Synthetic Lethality by Meta-Analysis of Genetic Interactions, Functions, and Pathways in Yeast and Human Cancer , 2014, Cancer informatics.
[25] Kara Dolinski,et al. The BioGRID interaction database: 2019 update , 2018, Nucleic Acids Res..
[26] Hui Liu,et al. SynLethDB: synthetic lethality database toward discovery of selective and sensitive anticancer drug targets , 2015, Nucleic Acids Res..
[27] Michael J. Emanuele,et al. A Genome-wide RNAi Screen Identifies Multiple Synthetic Lethal Interactions with the Ras Oncogene , 2009, Cell.
[28] Limsoon Wong,et al. Inferring synthetic lethal interactions from mutual exclusivity of genetic events in cancer , 2015, Biology Direct.
[29] Chunyan Miao,et al. Neighborhood Regularized Logistic Matrix Factorization for Drug-Target Interaction Prediction , 2016, PLoS Comput. Biol..
[30] Iñigo Apaolaza,et al. An in-silico approach to predict and exploit synthetic lethality in cancer metabolism , 2017, Nature Communications.
[31] James M. McFarland,et al. Multiplexed single-cell transcriptional response profiling to define cancer vulnerabilities and therapeutic mechanism of action , 2020, Nature Communications.
[32] Xing-Ming Zhao,et al. A graph regularized generalized matrix factorization model for predicting links in biomedical bipartite networks , 2020, Bioinform..
[33] Nagarajan Natarajan,et al. Inductive matrix completion for predicting gene–disease associations , 2014, Bioinform..
[34] L. Hartwell,et al. Integrating genetic approaches into the discovery of anticancer drugs. , 1997, Science.
[35] Xiangrong Chen,et al. Predicting synthetic lethal interactions using conserved patterns in protein interaction networks , 2019, PLoS Comput. Biol..
[36] S. Elledge,et al. A Role for Mitochondrial Translation in Promotion of Viability in K-Ras Mutant Cells. , 2017, Cell reports.