Literature DB >> 35753702

A comprehensive comparison on cell-type composition inference for spatial transcriptomics data.

Jiawen Chen1, Weifang Liu1, Tianyou Luo1, Zhentao Yu1, Minzhi Jiang2, Jia Wen3, Gaorav P Gupta4, Paola Giusti5, Hongtu Zhu1, Yuchen Yang6, Yun Li1,3,7.   

Abstract

Spatial transcriptomics (ST) technologies allow researchers to examine transcriptional profiles along with maintained positional information. Such spatially resolved transcriptional characterization of intact tissue samples provides an integrated view of gene expression in its natural spatial and functional context. However, high-throughput sequencing-based ST technologies cannot yet reach single cell resolution. Thus, similar to bulk RNA-seq data, gene expression data at ST spot-level reflect transcriptional profiles of multiple cells and entail the inference of cell-type composition within each ST spot for valid and powerful subsequent analyses. Realizing the critical importance of cell-type decomposition, multiple groups have developed ST deconvolution methods. The aim of this work is to review state-of-the-art methods for ST deconvolution, comparing their strengths and weaknesses. In particular, we construct ST spots from single-cell level ST data to assess the performance of 10 methods, with either ideal reference or non-ideal reference. Furthermore, we examine the performance of these methods on spot- and bead-level ST data by comparing estimated cell-type proportions to carefully matched single-cell ST data. In comparing the performance on various tissues and technological platforms, we concluded that RCTD and stereoscope achieve more robust and accurate inferences.
© The Author(s) 2022. Published by Oxford University Press. All rights reserved. For Permissions, please email: journals.permissions@oup.com.

Entities:  

Keywords:  cell-type deconvolution; deep learning; probabilistic modeling; single-cell; spatial transcriptomics

Mesh:

Year:  2022        PMID: 35753702      PMCID: PMC9294426          DOI: 10.1093/bib/bbac245

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   13.994


  43 in total

1.  DSTG: deconvoluting spatial transcriptomics data through graph-based artificial intelligence.

Authors:  Qianqian Song; Jing Su
Journal:  Brief Bioinform       Date:  2021-01-22       Impact factor: 11.622

Review 2.  Spatially resolved transcriptomics and beyond.

Authors:  Nicola Crosetto; Magda Bienko; Alexander van Oudenaarden
Journal:  Nat Rev Genet       Date:  2014-12-02       Impact factor: 53.242

3.  SPOTlight: seeded NMF regression to deconvolute spatial transcriptomics spots with single-cell transcriptomes.

Authors:  Marc Elosua-Bayes; Paula Nieto; Elisabetta Mereu; Ivo Gut; Holger Heyn
Journal:  Nucleic Acids Res       Date:  2021-05-21       Impact factor: 16.971

4.  A Spatiotemporal Organ-Wide Gene Expression and Cell Atlas of the Developing Human Heart.

Authors:  Michaela Asp; Stefania Giacomello; Ludvig Larsson; Chenglin Wu; Daniel Fürth; Xiaoyan Qian; Eva Wärdell; Joaquin Custodio; Johan Reimegård; Fredrik Salmén; Cecilia Österholm; Patrik L Ståhl; Erik Sundström; Elisabet Åkesson; Olaf Bergmann; Magda Bienko; Agneta Månsson-Broberg; Mats Nilsson; Christer Sylvén; Joakim Lundeberg
Journal:  Cell       Date:  2019-12-12       Impact factor: 41.582

5.  Highly sensitive spatial transcriptomics at near-cellular resolution with Slide-seqV2.

Authors:  Robert R Stickels; Evan Murray; Evan Z Macosko; Fei Chen; Pawan Kumar; Jilong Li; Jamie L Marshall; Daniela J Di Bella; Paola Arlotta
Journal:  Nat Biotechnol       Date:  2020-12-07       Impact factor: 54.908

6.  Accurate estimation of cell-type composition from gene expression data.

Authors:  Daphne Tsoucas; Rui Dong; Haide Chen; Qian Zhu; Guoji Guo; Guo-Cheng Yuan
Journal:  Nat Commun       Date:  2019-07-05       Impact factor: 14.919

7.  Deep learning and alignment of spatially resolved single-cell transcriptomes with Tangram.

Authors:  Tommaso Biancalani; Gabriele Scalia; Lorenzo Buffoni; Raghav Avasthi; Ziqing Lu; Aman Sanger; Neriman Tokcan; Charles R Vanderburg; Åsa Segerstolpe; Meng Zhang; Inbal Avraham-Davidi; Sanja Vickovic; Mor Nitzan; Sai Ma; Ayshwarya Subramanian; Michal Lipinski; Jason Buenrostro; Nik Bear Brown; Duccio Fanelli; Xiaowei Zhuang; Evan Z Macosko; Aviv Regev
Journal:  Nat Methods       Date:  2021-10-28       Impact factor: 28.547

8.  AdRoit is an accurate and robust method to infer complex transcriptome composition.

Authors:  Tao Yang; Yu Bai; Nicole Alessandri-Haber; Wen Fury; Michael Schaner; Robert Breese; Michael LaCroix-Fralish; Jinrang Kim; Christina Adler; Lynn E Macdonald; Gurinder S Atwal
Journal:  Commun Biol       Date:  2021-10-22

9.  Squidpy: a scalable framework for spatial omics analysis.

Authors:  Giovanni Palla; Hannah Spitzer; Michal Klein; David Fischer; Anna Christina Schaar; Louis Benedikt Kuemmerle; Sergei Rybakov; Ignacio L Ibarra; Olle Holmberg; Isaac Virshup; Mohammad Lotfollahi; Sabrina Richter; Fabian J Theis
Journal:  Nat Methods       Date:  2022-01-31       Impact factor: 28.547

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.