Giter Site home page Giter Site logo

awesome-drug-discovery's Introduction

awesome-drug-discovery

Awesome PRs Welcome

A collection of drug discovery, classification and representation learning papers with deep learning.

Tutorial

Survey

  • Applications of machine learning in drug discovery and development (Nature Reviews drug discovery 2019)
    • Jessica Vamathevan, Dominic Clark, Paul Czodrowski, Ian Dunham, Edgardo Ferran, George Lee, Bin Li, Anant Madabhushi, Parantu Shah, Michaela Spitzer & Shanrong Zhao
    • [Paper(nature)]
    • [Paper(sci-hub)]
  • Evaluation of network architecture and data augmentation methods for deep learning in chemogenomics (bioRxiv 2019)
  • Large-scale comparison of machine learning methods for drug target prediction on ChEMBL (Chemical Science 2019)
  • PADME: A Deep Learning-based Framework for Drug-Target Interaction Prediction (Arxiv 2018)

Tradintional Machine Learning

  • A Bayesian machine learning approach for drug target identification using diverse data types (Nature Communications 2019)
    • Neel S. Madhukar, Prashant K. Khade, Linda Huang, Kaitlyn Gayvert, Giuseppe Galletti, Martin Stogniew, Joshua E. Allen, Paraskevi Giannakakou & Olivier Elemento
    • [Paper]
  • Drug repositioning based on bounded nuclear norm regularization (ISMB/ECCB 2019)

Deep Learning

  • MONN: a Multi-Objective Neural Network for Predicting Pairwise Non-Covalent Interactions and Binding Affinities between Compounds and Proteins (RECOMB 2020)
  • Evaluating Protein Transfer Learning with TAPE (NIPS 2019)
  • Predicting Drug−Target Interaction Using a Novel Graph Neural Network with 3D Structure-Embedded Graph Representation (ACS 2019)
  • DeepChemStable: Chemical Stability Prediction with an Attention-Based Graph Convolution Network (ACS 2019)
  • DeepConv-DTI: Prediction of drug-target interactions via deep learning with convolution on protein sequences (PLOS 2019)
  • A Domain Knowledge Constraint Variantional Model for Drug Discovery (AAAI 2020 preprint review)
  • DeepGS: Deep Representation Learning of Graphs and Sequences for Drug-Target Binding Affinity Prediction (AAAI 2020 preprint review)
  • DAEM: Deep Attribute Embedding based Multi-Task Learning for Predicting Adverse Drug-Drug Interaction (AAAI 2020 preprint review)
  • Pushing the Boundaries of Molecular Representation for Drug Discovery with the Graph Attention Mechanism (Journal of Medicinal Chemistry 2019)
    • Zhaoping Xiong, Dingyan Wang, Xiaohong Liu, Feisheng Zhong, Xiaozhe Wan, Xutong Li, Zhaojun Li, Xiaomin Luo, Kaixian Chen, Hualiang Jiang and Mingyue Zheng
    • [Paper]
    • [Python Reference]
  • GraphDTA: prediction of drug–target binding affinity using graph convolutional networks (BioArxiv 2019)
  • Self-Attention Based Molecule Representation for Predicting Drug-Target Interaction (2019)
  • Multifaceted protein–protein interaction prediction based on Siamese residual RCNN (ISMB/ECCB 2019)
    • Muhao Chen1, Chelsea J.-T. Ju, Guangyu Zhou, Xuelu Chen, Tianran Zhang, Kai-Wei Chang, Carlo Zaniolo and Wei Wang
    • [Paper]
    • [Python Reference]
  • Attention-based Multi-Input Deep Learning Architecture for Biological Activity Prediction: An Application in EGFR Inhibitors (Arxiv 2019)
  • LEARNING PROTEIN SEQUENCE EMBEDDINGS USING INFORMATION FROM STRUCTURE (ICLR 2019)
  • NeoDTI: neural integration of neighbor information from a heterogeneous network for discovering new drug–target interactions (Bioinformatics 2019)
  • DeepAffinity: interpretable deep learning of compound–protein affinity through unified recurrent and convolutional neural networks (Bioinformatics 2019)
  • WideDTA: prediction of drug-target binding affinity (Arxiv 2019)
  • Predicting Drug Protein Interaction using Quasi-Visual Question Answering System (bioRxiv 2019)
    • Shuangjia Zheng, Yongjian Li, Sheng Chen, Jun Xu, Yuedong Yang
    • [Paper]
  • Drug2Vec: Knowledge-aware Feature-driven Method for Drug Representation Learning (BIBM 2018)
    • Ying Shen, Kaiqi Yuan, Yaliang Li, Buzhou Tang, Min Yang, Nan Du, Kai Lei
    • [Paper]
  • Automatic Chemical Design Using a Data-Driven Continuous Representation of Molecules (ACS 2018)
  • Compound–protein interaction prediction with end-to-end learning of neural networks for graphs and sequences (Bioinformatics 2018)
  • Accelerating Prototype-Based Drug Discovery using Conditional Diversity Networks (KDD 2018)
  • DeepDTA: deep drug–target binding affinity prediction (Bioinformatics 2018)
  • Interpretable Drug Target Prediction Using Deep Neural Representation (IJCAI 2018)
    • Kyle Yingkai Gao, Achille Fokoue, Heng Luo, Arun Iyengar, Sanjoy Dey, Ping Zhang
    • [Paper]
  • Graph Convolutional Neural Networks for Predicting Drug-Target Interactions (bioRxiv 2018)
    • Wen Torng, Russ B. Altman
    • [Paper]
  • Chemi-Net: A molecular graph convolutional network for accurate drug property prediction (Arxiv 2018)
    • Ke Liu, Xiangyan Sun, Lei Jia, Jun Ma, Haoming Xing, Junqiu Wu, Hua Gao, Yax Sun, Florian Boulnois, Jie Fan
    • [Paper]
  • CheMixNet: Mixed DNN Architectures for Predicting Chemical Properties using Multiple Molecular Representations (CoRR 2018)
  • Deep learning improves prediction of drug–drug and drug–food interactions (PNAS 2018)
  • Machine learning of toxicological big data enables read-across structure activity relationships (RASAR) outperforming animal test reproducibility (Toxicological Sciences 2018)
    • Thomas Luechtefeld, Dan Marsh, Craig Rowlands, Thomas Hartung
    • [Paper]
  • A network integration approach for drug-target interaction prediction and computational drug repositioning from heterogeneous information (nature communications 2017)
    • Yunan Luo, Xinbin Zhao, Jingtian Zhou, Jinglin Yang, Yanqing Zhang, Wenhua Kuang, Jian Peng, Ligong Chen and Jianyang Zeng
    • [Paper]
    • [Python Reference]
  • SMILES2Vec: An Interpretable General-Purpose Deep Neural Network for Predicting Chemical Properties (Arxiv 2017)
  • drugGAN: An Advanced Generative Adversarial Autoencoder Model for de Novo Generation of New Molecules with Desired Molecular Properties in Silico (ACS 2017)
    • Artur Kadurin, Sergey Nikolenko, Kuzma Khrabrov
    • [Paper]
  • Learning Graph-Level Representation for Drug Discovery (Arxiv 2017)
  • Deep-Learning-Based Drug–Target Interaction Prediction (ACS 2017)
  • Machine learning accelerates MD-based binding (Bioinformatics 2017)
  • Deep learning with feature embedding for compound-protein interaction prediction (bioRxiv 2016)
  • CGBVS-DNN Prediction of Compound-protein Interactions Based on Deep Learning (2016)
    • Masatoshi Hamanaka, Kei Taneishi, Hiroaki Iwata, Jun Ye, Jianguo Pei, Jinlong Hou, Yasushi Okuno
    • [Paper]
  • Boosting compound-protein interaction prediction by deep learning (2016)
    • Kai Tian, Mingyu Shao, Yang Wang, Jihong Guan, Shuigeng Zhou
    • [Paper]
  • Boosting Docking-based Virtual Screening with Deep Learning (ACS 2016)
    • Janaina Cruz Pereira, Ernesto Raúl Caffarena, Cicero Nogueira dos Santos
    • [Paper]
  • Massively Multitask Networks for Drug Discovery (CoRR 2015)
    • Bharath Ramsundar, Steven M. Kearnes, Patrick Riley, Dale Webster, David E. Konerding, Vijay S. Pande
    • [Paper]
  • Deep Neural Nets as a Method for Quantitative Structure−Activity Relationships (ACS 2015)
    • Junshui Ma, Robert P. Sheridan, Andy Liaw, George E. Dahl, Vladimir Svetnik
    • [Paper]
  • Toxicity Prediction using Deep Learning (Arxiv 2015)
  • Multi-Task Deep Networks for Drug Target Prediction (NIPS 2014)
    • Thomas Unterthiner, AndreasMayr, G¨unterKlambauer
    • [Paper]
  • Multi-task Neural Networks for QSAR Predictions (Arxiv 2014)
    • George E. Dahl, Navdeep Jaitly, Ruslan Salakhutdinov
    • [Paper]
  • Deep Learning as an Opportunity in Virtual Screening (2014)

Recommender Systems

  • Multi-Component Graph Convolutional Collaborative Filtering (AAAI 2020)
  • SoRecGAT: Leveraging Graph Attention Mechanism for Top-N Social Recommendation (ECML 2019)
  • AutoInt: Automatic Feature Interaction Learning via Self-Attentive Neural Networks (CIKM 2019)
  • Neural Graph Collaborative Filtering (SIGIR 2019)
  • Collaborative Similarity Embedding for Recommender Systems (WWW 2019)
    • Chih-Ming Chen, Chuan-Ju Wang, Ming-Feng Tsai, Yi-Hsuan Yang
    • [Paper]
  • Variational Autoencoders for Collaborative Filtering (WWW 2018)
    • Dawen Liang, Rahul G. Krishnan, Matthew D. Hoffman, Tony Jebara
    • [Paper]
  • TEM: Tree-enhancedEmbeddingModelfor ExplainableRecommendation (WWW 2018)
  • Neural Collaborative Filtering (WWW 2017)

Others

  • A Degeneracy Framework for Graph Similarity (IJCAI 2018)
  • Fast Graph Representation Learning with Pytorch Geometric (ICLR 2019)
  • GMNN: Graph Markov Neural Networks (ICML 2019)
  • Are We Really Making Much Progress? A Worrying Analysis of Recent Neural Recommendation Approaches (RecSys 2019)

awesome-drug-discovery's People

Contributors

xnuohz avatar

Stargazers

 avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar  avatar

Watchers

 avatar  avatar  avatar  avatar

Recommend Projects

  • React photo React

    A declarative, efficient, and flexible JavaScript library for building user interfaces.

  • Vue.js photo Vue.js

    🖖 Vue.js is a progressive, incrementally-adoptable JavaScript framework for building UI on the web.

  • Typescript photo Typescript

    TypeScript is a superset of JavaScript that compiles to clean JavaScript output.

  • TensorFlow photo TensorFlow

    An Open Source Machine Learning Framework for Everyone

  • Django photo Django

    The Web framework for perfectionists with deadlines.

  • D3 photo D3

    Bring data to life with SVG, Canvas and HTML. 📊📈🎉

Recommend Topics

  • javascript

    JavaScript (JS) is a lightweight interpreted programming language with first-class functions.

  • web

    Some thing interesting about web. New door for the world.

  • server

    A server is a program made to process requests and deliver data to clients.

  • Machine learning

    Machine learning is a way of modeling and interpreting data that allows a piece of software to respond intelligently.

  • Game

    Some thing interesting about game, make everyone happy.

Recommend Org

  • Facebook photo Facebook

    We are working to build community through open source technology. NB: members must have two-factor auth.

  • Microsoft photo Microsoft

    Open source projects and samples from Microsoft.

  • Google photo Google

    Google ❤️ Open Source for everyone.

  • D3 photo D3

    Data-Driven Documents codes.