Learning to encode cellular responses to systematic perturbations with deep generative models

被引:0
|
作者
Yifan Xue
Michael Q. Ding
Xinghua Lu
机构
[1] School of Medicine,Department of Biomedical Informatics
[2] University of Pittsburgh,Department of Pharmaceutical Sciences
[3] School of Pharmacy,undefined
[4] University of Pittsburgh,undefined
来源
npj Systems Biology and Applications | / 6卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Cellular signaling systems play a vital role in maintaining homeostasis when a cell is exposed to different perturbations. Components of the systems are organized as hierarchical networks, and perturbing different components often leads to transcriptomic profiles that exhibit compositional statistical patterns. Mining such patterns to investigate how cellular signals are encoded is an important problem in systems biology, where artificial intelligence techniques can be of great assistance. Here, we investigated the capability of deep generative models (DGMs) to modeling signaling systems and learn representations of cellular states underlying transcriptomic responses to diverse perturbations. Specifically, we show that the variational autoencoder and the supervised vector-quantized variational autoencoder can accurately regenerate gene expression data in response to perturbagen treatments. The models can learn representations that reveal the relationships between different classes of perturbagens and enable mappings between drugs and their target genes. In summary, DGMs can adequately learn and depict how cellular signals are encoded. The resulting representations have broad applications, demonstrating the power of artificial intelligence in systems biology and precision medicine.
引用
收藏
相关论文
共 50 条
  • [1] Learning to encode cellular responses to systematic perturbations with deep generative models
    Xue, Yifan
    Ding, Michael Q.
    Lu, Xinghua
    NPJ SYSTEMS BIOLOGY AND APPLICATIONS, 2020, 6 (01) : 35
  • [2] Learning Universal Adversarial Perturbations with Generative Models
    Hayes, Jamie
    Danezis, George
    2018 IEEE SYMPOSIUM ON SECURITY AND PRIVACY WORKSHOPS (SPW 2018), 2018, : 43 - 49
  • [3] Learning Deep Generative Models
    Salakhutdinov, Ruslan
    ANNUAL REVIEW OF STATISTICS AND ITS APPLICATION, VOL 2, 2015, 2 : 361 - 385
  • [4] Generative chemistry: drug discovery with deep learning generative models
    Bian, Yuemin
    Xie, Xiang-Qun
    JOURNAL OF MOLECULAR MODELING, 2021, 27 (03)
  • [5] Generative chemistry: drug discovery with deep learning generative models
    Yuemin Bian
    Xiang-Qun Xie
    Journal of Molecular Modeling, 2021, 27
  • [6] Learning Deep Generative Models for Queuing Systems
    Ojeda, Cesar
    Cvejoski, Kostadin
    Georgiev, Bodgan
    Bauckhage, Christian
    Schuecker, Jannis
    Sanchez, Ramses J.
    THIRTY-FIFTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, THIRTY-THIRD CONFERENCE ON INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE AND THE ELEVENTH SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2021, 35 : 9214 - 9222
  • [7] A Systematic Survey on Deep Generative Models for Graph Generation
    Guo, Xiaojie
    Zhao, Liang
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2023, 45 (05) : 5370 - 5390
  • [8] Unsupervised learning of global factors in deep generative models
    Peis, Ignacio
    Olmos, Pablo M.
    Artes-Rodriguez, Antonio
    PATTERN RECOGNITION, 2022, 134
  • [9] Wasserstein Learning of Deep Generative Point Process Models
    Xiao, Shuai
    Farajtabar, Mehrdad
    Ye, Xiaojing
    Yang, Junchi
    Song, Le
    Zha, Hongyuan
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 30 (NIPS 2017), 2017, 30
  • [10] Learning Deep Generative Spatial Models for Mobile Robots
    Pronobis, Andrzej
    Rao, Rajesh P. N.
    2017 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS), 2017, : 755 - 762