stLearn
Cited by: 57
|
Update date: 2020-05-01

Description

stLearn is designed to comprehensively analyse Spatial Transcriptomics (ST) data to investigate complex biological processes within an undissociated tissue. ST is emerging as the “next generation” of single-cell RNA sequencing because it adds spatial and morphological context to the transcriptional profile of cells in an intact tissue section. However, existing ST analysis methods typically use the captured spatial and/or morphological data as a visualisation tool rather than as informative features for model development. We have developed an analysis method that exploits all three data types: Spatial distance, tissue Morphology, and gene Expression measurements (SME) from ST data. This combinatorial approach allows us to more accurately model underlying tissue biology, and allows researchers to address key questions in three major research areas: cell type identification, cell trajectory reconstruction, and the study of cell-cell interactions within an undissociated tissue sample.

Related


1

Spatial profiling technologies and applications for brain cancers.

Authors: Kalita-de Croft, Priyakshi; Sadeghi Rad, Habib; Gasper, Harry; O'Byrne, Ken; Lakhani, Sunil R; Kulasinghe, Arutha
Journal: Expert Rev Mol Diagn,2021/3;21(3):323-332.
Keywords:Spatial Transcriptomics; Brain tumors; brain metastasis; glioblastoma; spatial profiling; tumor microenvironment
IF: 5.670
Cited by: 10

2

Spatial transcriptomics at subspot resolution with BayesSpace.

Authors: Zhao, Edward; Stone, Matthew R; Ren, Xing; Guenthoer, Jamie; Smythe, Kimberly S; Pulliam, Thomas; Williams, Stephen R; Uytingco, Cedric R; Taylor, Sarah E B; Nghiem, Paul; Bielas, Jason H; Gottardo, Raphael
Journal: Nat Biotechnol,2021/11;39(11):1375-1384.
Keywords:Spatial Transcriptomics
IF: 68.164
Cited by: 206

3

Statistical and machine learning methods for spatially resolved transcriptomics with histology.

Authors: Hu, Jian; Schroeder, Amelia; Coleman, Kyle; Chen, Chixiang; Auerbach, Benjamin J; Li, Mingyao
Journal: Comput Struct Biotechnol J,2021;19:3829-3841.
Keywords:smFISH; Seurat; seqFISH+; 10X Visium; MERFISH; Slide-seq; Spatial Transcriptomics; HDST; Cell-cell communications; Celltype deconvolution; Spatial clustering; Spatially resolved transcriptomics; Spatially variable genes
IF: 6.155
Cited by: 40

4

The Pandora's box of novel technologies that may revolutionize lung cancer.

Authors: Rad, Habib Sadeghi; Rad, Hamid Sadeghi; Shiravand, Yavar; Radfar, Payar; Arpon, David; Warkiani, Majid Ebrahimi; O'Byrne, Ken; Kulasinghe, Arutha
Journal: Lung Cancer,2021/09;159:34-41.
Keywords:Spatial Transcriptomics; Lung cancer; Molecular barcoding; Multiplex immunohistochemistry; Spatial transcriptomics; Tumour microenvironment
IF: 6.081
Cited by: 10

5

Spatial omics and multiplexed imaging to explore cancer biology.

Authors: Lewis, Sabrina M; Asselin-Labat, Marie-Liesse; Nguyen, Quan; Berthelet, Jean; Tan, Xiao; Wimmer, Verena C; Merino, Delphine; Rogers, Kelly L; Naik, Shalin H
Journal: Nat Methods,2021/09;18(9):997-1012.
Keywords:osmFISH; FISSEQ; ExSeq; STARmap; HDST; split-FISH; smFISH; ZipSeq; Ultivue; RNAscope; Stereo-seq; LCM-seq; Spatial Gene Expression; Spatial Omics; Seurat; ...More
IF: 47.990
Cited by: 206

6

Exploring tissue architecture using spatial transcriptomics.

Authors: Rao, Anjali; Barkley, Dalia; França, Gustavo S; Yanai, Itai
Journal: Nature,2021/08;596(7871):211-220.
Keywords:Spatial Transcriptomics
IF: 69.504
Cited by: 427

7

Advances in spatial transcriptomic data analysis.

Authors: Dries, Ruben; Chen, Jiaji; Del Rossi, Natalie; Khan, Mohammed Muzamil; Sistig, Adriana; Yuan, Guo-Cheng
Journal: Genome Res,2021/10;31(10):1706-1718.
Keywords:Spatial Transcriptomics
IF: 9.438
Cited by: 71

8

SpaGCN: Integrating gene expression, spatial location and histology to identify spatial domains and spatially variable genes by graph convolutional network.

Authors: Hu, Jian; Li, Xiangjie; Coleman, Kyle; Schroeder, Amelia; Ma, Nan; Irwin, David J; Lee, Edward B; Shinohara, Russell T; Li, Mingyao
Journal: Nat Methods,2021/11;18(11):1342-1351.
Keywords:seqFISH+; MERFISH; Slide-seq; ISS; Spatial Transcriptomics; Slide-seqV2; STARmap; HDST; Seq-Scope; FISSEQ
IF: 47.990
Cited by: 178

9

Maximizing the Utility of Transcriptomics Data in Inflammatory Skin Diseases.

Authors: Wu, Jingni; Fang, Zhixiao; Liu, Teng; Hu, Wei; Wu, Yangjun; Li, Shengli
Journal: Front Immunol,2021;12:761890.
Keywords:Spatial Transcriptomics; RNA-Seq; atopic dermatitis; bioinformatics; inflammatory skin diseases; psoriasis; transcriptomics
IF: 8.786
Cited by: 5

10

Squidpy: a scalable framework for spatial omics analysis.

Authors: Palla, Giovanni; Spitzer, Hannah; Klein, Michal; Fischer, David; Schaar, Anna Christina; Kuemmerle, Louis Benedikt; Rybakov, Sergei; Ibarra, Ignacio L; Holmberg, Olle; Virshup, Isaac; Lotfollahi, Mohammad; Richter, Sabrina; Theis, Fabian J
Journal: Nat Methods,2022/1/31;
Keywords:Spatial Omics; seqFISH+; MERFISH; Slide-seq; Spatial Transcriptomics; Slide-seqV2; MIBI; IMC; Spatial Gene Expression
IF: 47.990
Cited by: 182

Tool types

Data or Image Reconstruction
Cell-Cell Interactions
Data Clustering
Co-localization or Gene-Gene Interactions
Data Visualisation
Exploratory Data Analysis
Intercellular Communication

Languages

Python