Interpretable generative deep learning: an illustration with single cell gene expression data

被引:8
|
作者
Treppner, Martin [1 ,2 ]
Binder, Harald [3 ]
Hess, Moritz [3 ]
机构
[1] Univ Freiburg, Fac Med, Inst Med Biometry & Stat, Stefan Meier Str 26, D-79104 Freiburg, Germany
[2] Univ Freiburg, Med Ctr, Stefan Meier Str 26, D-79104 Freiburg, Germany
[3] Univ Freiburg, Freiburg Ctr Data Anal & Modeling, D-79104 Freiburg, Germany
关键词
Explainable AI; Deep learning; Generative model; Dimension reduction; NEURAL-NETWORKS;
D O I
10.1007/s00439-021-02417-6
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
Deep generative models can learn the underlying structure, such as pathways or gene programs, from omics data. We provide an introduction as well as an overview of such techniques, specifically illustrating their use with single-cell gene expression data. For example, the low dimensional latent representations offered by various approaches, such as variational auto-encoders, are useful to get a better understanding of the relations between observed gene expressions and experimental factors or phenotypes. Furthermore, by providing a generative model for the latent and observed variables, deep generative models can generate synthetic observations, which allow us to assess the uncertainty in the learned representations. While deep generative models are useful to learn the structure of high-dimensional omics data by efficiently capturing non-linear dependencies between genes, they are sometimes difficult to interpret due to their neural network building blocks. More precisely, to understand the relationship between learned latent variables and observed variables, e.g., gene transcript abundances and external phenotypes, is difficult. Therefore, we also illustrate current approaches that allow us to infer the relationship between learned latent variables and observed variables as well as external phenotypes. Thereby, we render deep learning approaches more interpretable. In an application with single-cell gene expression data, we demonstrate the utility of the discussed methods.
引用
收藏
页码:1481 / 1498
页数:18
相关论文
共 50 条
  • [31] Learning Interpretable Anatomical Features Through Deep Generative Models: Application to Cardiac Remodeling
    Biffi, Carlo
    Oktay, Ozan
    Tarroni, Giacomo
    Bai, Wenjia
    De Marvao, Antonio
    Doumou, Georgia
    Rajchl, Martin
    Bedair, Reem
    Prasad, Sanjay
    Cook, Stuart
    O'Regan, Declan
    Rueckert, Daniel
    MEDICAL IMAGE COMPUTING AND COMPUTER ASSISTED INTERVENTION - MICCAI 2018, PT II, 2018, 11071 : 464 - 471
  • [32] Learning interpretable representations of entanglement in quantum optics experiments using deep generative models
    Flam-Shepherd, Daniel
    Wu, Tony C.
    Gu, Xuemei
    Cervera-Lierta, Alba
    Krenn, Mario
    Aspuru-Guzik, Alan
    NATURE MACHINE INTELLIGENCE, 2022, 4 (06) : 544 - 554
  • [33] Transformer for Gene Expression Modeling (T-GEM): An Interpretable Deep Learning Model for Gene Expression-Based Phenotype Predictions
    Zhang, Ting-He
    Hasib, Md Musaddaqul
    Chiu, Yu-Chiao
    Han, Zhi-Feng
    Jin, Yu-Fang
    Flores, Mario
    Chen, Yidong
    Huang, Yufei
    CANCERS, 2022, 14 (19)
  • [34] Learning interpretable representations of entanglement in quantum optics experiments using deep generative models
    Daniel Flam-Shepherd
    Tony C. Wu
    Xuemei Gu
    Alba Cervera-Lierta
    Mario Krenn
    Alán Aspuru-Guzik
    Nature Machine Intelligence, 2022, 4 : 544 - 554
  • [35] Interpretable single-cell transcription factor prediction based on deep learning with attention mechanism
    Gong, Meiqin
    He, Yuchen
    Wang, Maocheng
    Zhang, Yongqing
    Ding, Chunli
    COMPUTATIONAL BIOLOGY AND CHEMISTRY, 2023, 106
  • [36] scPreGAN, a deep generative model for predicting the response of single-cell expression to perturbation
    Wei, Xiajie
    Dong, Jiayi
    Wang, Fei
    BIOINFORMATICS, 2022, 38 (13) : 3377 - 3384
  • [37] Privacy of single-cell gene expression data
    Cho, Hyunghoon
    PATTERNS, 2024, 5 (11):
  • [38] Learning interpretable cellular and gene signature embeddings from single-cell transcriptomic data (vol 12, 5261, 2021)
    Zhao, Yifan
    Cai, Huiyu
    Zhang, Zuobai
    Tang, Jian
    Li, Yue
    NATURE COMMUNICATIONS, 2021, 12 (01)
  • [39] Breast cancer prediction based on gene expression data using interpretable machine learning techniques
    Kallah-Dagadu, Gabriel
    Mohammed, Mohanad
    Nasejje, Justine B.
    Mchunu, Nobuhle Nokubonga
    Twabi, Halima S.
    Batidzirai, Jesca Mercy
    Singini, Geoffrey Chiyuzga
    Nevhungoni, Portia
    Maposa, Innocent
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [40] Learning biologically-interpretable latent representations for gene expression data Pathway Activity Score Learning Algorithm
    Karagiannaki, Ioulia
    Gourlia, Krystallia
    Lagani, Vincenzo
    Pantazis, Yannis
    Tsamardinos, Ioannis
    MACHINE LEARNING, 2023, 112 (11) : 4257 - 4287