Quantifying the effect of experimental perturbations at single-cell resolution

被引:0
|
作者
Daniel B. Burkhardt
Jay S. Stanley
Alexander Tong
Ana Luisa Perdigoto
Scott A. Gigante
Kevan C. Herold
Guy Wolf
Antonio J. Giraldez
David van Dijk
Smita Krishnaswamy
机构
[1] Yale University,Department of Genetics
[2] Yale University,Computational Biology & Bioinformatics Program
[3] Yale University,Department of Computer Science
[4] Yale University,Department of Immunobiology
[5] Yale University,Department of Internal Medicine (Cardiology)
[6] Université de Montréal,Department of Mathematics and Statistics
[7] Mila – Quebec AI Institute,undefined
来源
Nature Biotechnology | 2021年 / 39卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Current methods for comparing single-cell RNA sequencing datasets collected in multiple conditions focus on discrete regions of the transcriptional state space, such as clusters of cells. Here we quantify the effects of perturbations at the single-cell level using a continuous measure of the effect of a perturbation across the transcriptomic space. We describe this space as a manifold and develop a relative likelihood estimate of observing each cell in each of the experimental conditions using graph signal processing. This likelihood estimate can be used to identify cell populations specifically affected by a perturbation. We also develop vertex frequency clustering to extract populations of affected cells at the level of granularity that matches the perturbation response. The accuracy of our algorithm at identifying clusters of cells that are enriched or depleted in each condition is, on average, 57% higher than the next-best-performing algorithm tested. Gene signatures derived from these clusters are more accurate than those of six alternative algorithms in ground truth comparisons.
引用
收藏
页码:619 / 629
页数:10
相关论文
共 50 条
  • [31] Inferring cell–cell communication at single-cell resolution
    Nature Biotechnology, 2024, 42 : 390 - 391
  • [32] Quantitative Investigation for the Dielectrophoretic Effect of Fluorescent Dyes at Single-Cell Resolution
    Yildizhan, Yagmur
    Gogebakan, Umut B.
    Altay, Alara
    Islam, Monsur
    Martinez-Duarte, Rodrigo
    Elitas, Meltem
    ACS OMEGA, 2018, 3 (07): : 7243 - 7246
  • [33] Quantifying the impact of electric fields on single-cell motility
    Prescott, Thomas P.
    Zhu, Kan
    Zhao, Min
    Baker, Ruth E.
    BIOPHYSICAL JOURNAL, 2021, 120 (16) : 3363 - 3373
  • [34] ImAge: quantifying epigenetic ageing with single-cell images
    Ninomiya, Kenta
    NATURE REVIEWS CANCER, 2025,
  • [35] Deconstructing iNKT cell development at single-cell resolution
    Baranek, Thomas
    Herbozo, Carolina de Amat
    Mallevaey, Thierry
    Paget, Christophe
    TRENDS IN IMMUNOLOGY, 2022, 43 (07) : 503 - 512
  • [36] Thymic iNKT cell differentiation at single-cell resolution
    Wang, Ke
    Zhao, Weijia
    Jin, Rong
    Ge, Qing
    CELLULAR & MOLECULAR IMMUNOLOGY, 2021, 18 (08) : 2065 - 2066
  • [37] Profiling Cell Signaling Networks at Single-cell Resolution
    Lun, Xiao-Kang
    Bodenmiller, Bernd
    MOLECULAR & CELLULAR PROTEOMICS, 2020, 19 (05) : 744 - 756
  • [38] Thymic iNKT cell differentiation at single-cell resolution
    Ke Wang
    Weijia Zhao
    Rong Jin
    Qing Ge
    Cellular & Molecular Immunology, 2021, 18 : 2065 - 2066
  • [39] Single-Cell Resolution of T Cell Immune Responses
    Buchholz, Veit R.
    Flossdorf, Michael
    ADVANCES IN IMMUNOLOGY, VOL 137, 2018, 137 : 1 - 41
  • [40] Characterization of the Zebrafish Cell Landscape at Single-Cell Resolution
    Jiang, Mengmeng
    Xiao, Yanyu
    Weigao, E.
    Ma, Lifeng
    Wang, Jingjing
    Chen, Haide
    Gao, Ce
    Liao, Yuan
    Guo, Qile
    Peng, Jinrong
    Han, Xiaoping
    Guo, Guoji
    FRONTIERS IN CELL AND DEVELOPMENTAL BIOLOGY, 2021, 9