Literature DB >> 34849574

SC-MEB: spatial clustering with hidden Markov random field using empirical Bayes.

Yi Yang1, Xingjie Shi2, Wei Liu1, Qiuzhong Zhou3, Mai Chan Lau4, Jeffrey Chun Tatt Lim4, Lei Sun3, Cedric Chuan Young Ng, Joe Yeong4,5, Jin Liu1.   

Abstract

Spatial transcriptomics has been emerging as a powerful technique for resolving gene expression profiles while retaining tissue spatial information. These spatially resolved transcriptomics make it feasible to examine the complex multicellular systems of different microenvironments. To answer scientific questions with spatial transcriptomics and expand our understanding of how cell types and states are regulated by microenvironment, the first step is to identify cell clusters by integrating the available spatial information. Here, we introduce SC-MEB, an empirical Bayes approach for spatial clustering analysis using a hidden Markov random field. We have also derived an efficient expectation-maximization algorithm based on an iterative conditional mode for SC-MEB. In contrast to BayesSpace, a recently developed method, SC-MEB is not only computationally efficient and scalable to large sample sizes but is also capable of choosing the smoothness parameter and the number of clusters. We performed comprehensive simulation studies to demonstrate the superiority of SC-MEB over some existing methods. We applied SC-MEB to analyze the spatial transcriptome of human dorsolateral prefrontal cortex tissues and mouse hypothalamic preoptic region. Our analysis results showed that SC-MEB can achieve a similar or better clustering performance to BayesSpace, which uses the true number of clusters and a fixed smoothness parameter. Moreover, SC-MEB is scalable to large 'sample sizes'. We then employed SC-MEB to analyze a colon dataset from a patient with colorectal cancer (CRC) and COVID-19, and further performed differential expression analysis to identify signature genes related to the clustering results. The heatmap of identified signature genes showed that the clusters identified using SC-MEB were more separable than those obtained with BayesSpace. Using pathway analysis, we identified three immune-related clusters, and in a further comparison, found the mean expression of COVID-19 signature genes was greater in immune than non-immune regions of colon tissue. SC-MEB provides a valuable computational tool for investigating the structural organizations of tissues from spatial transcriptomic data.
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Entities:  

Keywords:  cell phenotype; empirical Bayes; expectation-maximization algorithm; hidden Markov random field; spatial transcriptomics

Mesh:

Year:  2022        PMID: 34849574      PMCID: PMC8690176          DOI: 10.1093/bib/bbab466

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   11.622


  5 in total

1.  Joint dimension reduction and clustering analysis of single-cell RNA-seq and spatial transcriptomics data.

Authors:  Wei Liu; Xu Liao; Yi Yang; Huazhen Lin; Joe Yeong; Xiang Zhou; Xingjie Shi; Jin Liu
Journal:  Nucleic Acids Res       Date:  2022-07-08       Impact factor: 19.160

2.  Identifying multicellular spatiotemporal organization of cells with SpaceFlow.

Authors:  Honglei Ren; Benjamin L Walker; Zixuan Cang; Qing Nie
Journal:  Nat Commun       Date:  2022-07-14       Impact factor: 17.694

3.  Elucidating tumor heterogeneity from spatially resolved transcriptomics data by multi-view graph collaborative learning.

Authors:  Chunman Zuo; Yijian Zhang; Chen Cao; Jinwang Feng; Mingqi Jiao; Luonan Chen
Journal:  Nat Commun       Date:  2022-10-10       Impact factor: 17.694

4.  Case report: Understanding the impact of persistent tissue-localization of SARS-CoV-2 on immune response activity via spatial transcriptomic analysis of two cancer patients with COVID-19 co-morbidity.

Authors:  Mai Chan Lau; Yang Yi; Denise Goh; Chun Chau Lawrence Cheung; Benedict Tan; Jeffrey Chun Tatt Lim; Craig Ryan Joseph; Felicia Wee; Justina Nadia Lee; Xinru Lim; Chun Jye Lim; Wei Qiang Leow; Jing Yi Lee; Cedric Chuan Young Ng; Hamed Bashiri; Peng Chung Cheow; Chun Yip Chan; Ye Xin Koh; Thuan Tong Tan; Shirin Kalimuddin; Wai Meng David Tai; Jia Lin Ng; Jenny Guek-Hong Low; Tony Kiat Hon Lim; Jin Liu; Joe Poh Sheng Yeong
Journal:  Front Immunol       Date:  2022-09-12       Impact factor: 8.786

Review 5.  Statistical and machine learning methods for spatially resolved transcriptomics data analysis.

Authors:  Zexian Zeng; Yawei Li; Yiming Li; Yuan Luo
Journal:  Genome Biol       Date:  2022-03-25       Impact factor: 13.583

  5 in total

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