Difference between revisions of "FlyBase:ScRNA-Seq"
(10 intermediate revisions by 2 users not shown) | |||
Line 7: | Line 7: | ||
{|class="wikitable" | {|class="wikitable" | ||
|- | |- | ||
− | |style="text-align: center; padding: 20px;"| <big>[[FlyBase:Model_Organism_Databases|Model Organism<br/> Databases]]</big> ||style="text-align: center; padding: 20px;"| <big>[[FlyBase:Images|Images]]</big> ||style="text-align: center; padding: 20px;"| <big>[[FlyBase:Maps|Maps]]</big> ||style="text-align: center; padding: 20px;"| <big>[http://www.flyrnai.org/tools/protocols/web/ Protocols]</big> ||style="text-align: center; padding: 20px;"| <big>[[FlyBase:Papers_with_technical_advances|Papers with<br/> Technical Advances]]</big> | + | |style="text-align: center; padding: 20px;"| <big>[[FlyBase:Model_Organism_Databases|Model Organism<br/> Databases]]</big> ||style="text-align: center; padding: 20px;"| <big>[[FlyBase:Images|Images]]</big> ||style="text-align: center; padding: 20px;"| <big>[[FlyBase:Maps|Maps]]</big> ||style="text-align: center; padding: 20px;"| <big>[http://www.flyrnai.org/tools/protocols/web/ Protocols]</big> ||style="text-align: center; padding: 20px;"| <big>[[FlyBase:Papers_with_technical_advances|Papers with<br/> Technical Advances]]</big> ||style="text-align: center; padding: 20px;"| <big>[[FlyBase:GSEA|Gene Set<br/> Enrichment Tools]]</big> |
|} | |} | ||
Line 23: | Line 23: | ||
|style="background: #efefef;"| [https://www.flyrnai.org/tools/single_cell// DRscDB] ||style="background: #efefef;"| DRscDB was built based on the information curated from Drosophila scRNA-seq publications and selected publications from other major model organisms (zebrafish, mouse and human) relevant to the tissue types that are common among the species chosen. Users can mine and compare the gene expression profiles at single-cell level across studies, tissues and species for any input gene. Users can also use DRscDB to analyze an input gene list, looking for marker genes enriched in tissues and cell types based in the same or other species. This makes it possible to compare different datasets across studies, tissues and species, and can facilitate cell type assignment for clusters identified from newly obtained scRNA-seq datasets. ||style="background: #efefef;" | DRSC, Harvard Medical School<br /> Boston, MA, USA | |style="background: #efefef;"| [https://www.flyrnai.org/tools/single_cell// DRscDB] ||style="background: #efefef;"| DRscDB was built based on the information curated from Drosophila scRNA-seq publications and selected publications from other major model organisms (zebrafish, mouse and human) relevant to the tissue types that are common among the species chosen. Users can mine and compare the gene expression profiles at single-cell level across studies, tissues and species for any input gene. Users can also use DRscDB to analyze an input gene list, looking for marker genes enriched in tissues and cell types based in the same or other species. This makes it possible to compare different datasets across studies, tissues and species, and can facilitate cell type assignment for clusters identified from newly obtained scRNA-seq datasets. ||style="background: #efefef;" | DRSC, Harvard Medical School<br /> Boston, MA, USA | ||
|- | |- | ||
− | | [https://www.ebi.ac.uk/gxa/sc SCEA] || Single Cell Expression Atlas (SCEA) is an open science bioinformatics resource that provides free access to gene expression data generated in experiments performed in different laboratories around the world at single cell resolution. The SCEA reprocesses raw scRNA-Seq data in a standardised way, in-house, and provides to the life sciences community uniform gene expression data across multiple species that are available both for download and for exploration via gene-oriented queries and visualisation online. The Atlas includes data from all popular single cell RNA-seq technologies, including SMART-like and Droplet. Fly datasets in SCEA can be accessed directly at [https://www.ebi.ac.uk/gxa/sc/experiments?species=%22drosophila%20melanogaster%22] ||style="white-space: nowrap;"| SCEA<br/> EMBL-EBI, Wellcome Genome Campus<br/> Hinxton, UK | + | | [https://flycellatlas.org/ Fly Cell Atlas] || The Fly Cell Atlas (FCA) is a consortium that brings together Drosophila researchers interested in single-cell genomics, transcriptomics, and epigenomics, to build comprehensive cell atlases during different developmental stages and disease models. During 2020 and 2021, the FCA consortium ran a collaborative effort with CZ Biohub, Genentech, and NIH, to sequence all cells of the adult fly. Driven by Hongjie Li and Liqun Luo, along with dozens of Drosophila labs in the Bay area, 15 tissues were dissected for single-nucleus RNA-seq, alongside the whole head and body. Data analysis teams in Leuven (Aerts) and EPFL (Deplancke) analyzed all data, and through >20 online jamborees with >40 Drosophila labs around the world, more than 250 single-cell clusters were annotated with FlyBase FBbt terms. The data is now available via three portals, namely SCope, ASAP, and CellxGene, and can be downloaded as loomX and h5ad files to be further analyzed in R or Python. ||style="white-space: nowrap;"| Founders<br /> Stein Aerts, Leuven, Belgium <br /> Bart Deplancke, Lausanne, Switzerland <br /> Robert Zinzen, Berlin, Germany <br /> Contact - fca@flycellatlas.org |
+ | |- | ||
+ | |style="background: #efefef;"| [https://www.ebi.ac.uk/gxa/sc SCEA] ||style="background: #efefef;"| Single Cell Expression Atlas (SCEA) is an open science bioinformatics resource that provides free access to gene expression data generated in experiments performed in different laboratories around the world at single cell resolution. The SCEA reprocesses raw scRNA-Seq data in a standardised way, in-house, and provides to the life sciences community uniform gene expression data across multiple species that are available both for download and for exploration via gene-oriented queries and visualisation online. The Atlas includes data from all popular single cell RNA-seq technologies, including SMART-like and Droplet. Fly datasets in SCEA can be accessed directly at [https://www.ebi.ac.uk/gxa/sc/experiments?species=%22drosophila%20melanogaster%22] ||style="background: #efefef;white-space: nowrap;"| SCEA<br/> EMBL-EBI, Wellcome Genome Campus<br/> Hinxton, UK | ||
+ | |- | ||
+ | | [https://cells.ucsc.edu/? UCSC Cell Browser] || The UCSC Cell Browser is an interactive viewer for single-cell expression for a variety of species, including D. melanogaster. || UCSC | ||
+ | |||
|- | |- | ||
|} | |} | ||
Line 53: | Line 58: | ||
|- | |- | ||
|style="background: #efefef;"| [http://satijalab.org/seurat/ Seurat] ||style="background: #efefef;"| Seurat is an R package designed for QC, analysis, and exploration of single-cell RNA-seq data. Seurat aims to enable users to identify and interpret sources of heterogeneity from single-cell transcriptomic measurements, and to integrate diverse types of single-cell data. ||style="background: #efefef;"| Satija lab<br /> New York Genome Center<br /> Center for Genomics and Systems Biology<br /> NYU<br /> New York, NY<br /> [https://www.biorxiv.org/content/10.1101/2020.10.12.335331v1 Hao et al.] | |style="background: #efefef;"| [http://satijalab.org/seurat/ Seurat] ||style="background: #efefef;"| Seurat is an R package designed for QC, analysis, and exploration of single-cell RNA-seq data. Seurat aims to enable users to identify and interpret sources of heterogeneity from single-cell transcriptomic measurements, and to integrate diverse types of single-cell data. ||style="background: #efefef;"| Satija lab<br /> New York Genome Center<br /> Center for Genomics and Systems Biology<br /> NYU<br /> New York, NY<br /> [https://www.biorxiv.org/content/10.1101/2020.10.12.335331v1 Hao et al.] | ||
− | |||
− | |||
|} | |} | ||
+ | <br/> | ||
+ | |||
+ | = Sharing scRNAseq Datasets with the Community = | ||
+ | |||
+ | FlyBase has an ongoing collaboration with the EBI’s [https://www.ebi.ac.uk/gxa/sc/home Single Cell Expression Atlas], a repository of scRNAseq datasets. | ||
+ | |||
+ | In order to get your scRNAseq data into the Single Cell Expression Atlas, you need to deposit your raw sequencing data files into a sequencing data repository such as the NCBI’s [https://www.ncbi.nlm.nih.gov/geo/ Gene Expression Omnibus] or the EBI’s [https://www.ebi.ac.uk/biostudies/arrayexpress ArrayExpress]. From there, once your paper has been published, your data will be picked up by FlyBase and SCEA curators to be added to the Single Cell Expression Atlas. | ||
+ | |||
+ | In the meantime, if you wish to upload your processed data somewhere else to share it as soon as possible, your options include: | ||
+ | |||
+ | * the EFPL/SIB’s [https://asap.epfl.ch/ ASAP platform]; | ||
+ | * the UCSC [https://cells.ucsc.edu/ Cell Browser] (there is no upload form from the website itself; you need to contact them at cells@ucsc.edu). | ||
+ | |||
+ | There is also CZI’s [cellxgene.cziscience.com/ Cell×Gene Discover], but currently they only accept data from primates and rodents. This may change in the future, though, and we’ll update this page if/when they start accepting datasets from _D. melanogaster_. | ||
<br/> | <br/> | ||
Line 64: | Line 81: | ||
!style="background: #efefef;"| Resource !!style="background: #efefef;"| Description !!style="background: #efefef;"| Source/Contact | !style="background: #efefef;"| Resource !!style="background: #efefef;"| Description !!style="background: #efefef;"| Source/Contact | ||
|- | |- | ||
− | | [https://flycellatlas.org/ Fly Cell Atlas] || The Fly Cell Atlas (FCA) is a consortium that | + | | [https://flycellatlas.org/ Fly Cell Atlas] || The Fly Cell Atlas (FCA) is a consortium that brings together Drosophila researchers interested in single-cell genomics, transcriptomics, and epigenomics, to build comprehensive cell atlases during different developmental stages and disease models. ||style="white-space: nowrap;"| Founders<br /> Stein Aerts, Leuven, Belgium <br /> Bart Deplancke, Lausanne, Switzerland <br /> Robert Zinzen, Berlin, Germany <br /> Contact - fca@flycellatlas.org |
Latest revision as of 20:24, 25 June 2024
Popular Resource Categories
All Resources | CRISPR | ScRNA-Seq | RNAi | Stocks | Antibodies | Neuroscience |
Model Organism Databases |
Images | Maps | Protocols | Papers with Technical Advances |
Gene Set Enrichment Tools |
Single Cell RNA-seq Data Portals
Resource | Description | Source/Reference |
---|---|---|
DVEX | Drosophila Virtual Expression eXplorer (DVEX) is an online resource tool which offers an easy way to explore the transcriptome of the stage 6 Drosophila embryo at the single cell level. | MDC BIMSB Berlin, Germany Karaiskos et al. |
DRscDB | DRscDB was built based on the information curated from Drosophila scRNA-seq publications and selected publications from other major model organisms (zebrafish, mouse and human) relevant to the tissue types that are common among the species chosen. Users can mine and compare the gene expression profiles at single-cell level across studies, tissues and species for any input gene. Users can also use DRscDB to analyze an input gene list, looking for marker genes enriched in tissues and cell types based in the same or other species. This makes it possible to compare different datasets across studies, tissues and species, and can facilitate cell type assignment for clusters identified from newly obtained scRNA-seq datasets. | DRSC, Harvard Medical School Boston, MA, USA |
Fly Cell Atlas | The Fly Cell Atlas (FCA) is a consortium that brings together Drosophila researchers interested in single-cell genomics, transcriptomics, and epigenomics, to build comprehensive cell atlases during different developmental stages and disease models. During 2020 and 2021, the FCA consortium ran a collaborative effort with CZ Biohub, Genentech, and NIH, to sequence all cells of the adult fly. Driven by Hongjie Li and Liqun Luo, along with dozens of Drosophila labs in the Bay area, 15 tissues were dissected for single-nucleus RNA-seq, alongside the whole head and body. Data analysis teams in Leuven (Aerts) and EPFL (Deplancke) analyzed all data, and through >20 online jamborees with >40 Drosophila labs around the world, more than 250 single-cell clusters were annotated with FlyBase FBbt terms. The data is now available via three portals, namely SCope, ASAP, and CellxGene, and can be downloaded as loomX and h5ad files to be further analyzed in R or Python. | Founders Stein Aerts, Leuven, Belgium Bart Deplancke, Lausanne, Switzerland Robert Zinzen, Berlin, Germany Contact - fca@flycellatlas.org |
SCEA | Single Cell Expression Atlas (SCEA) is an open science bioinformatics resource that provides free access to gene expression data generated in experiments performed in different laboratories around the world at single cell resolution. The SCEA reprocesses raw scRNA-Seq data in a standardised way, in-house, and provides to the life sciences community uniform gene expression data across multiple species that are available both for download and for exploration via gene-oriented queries and visualisation online. The Atlas includes data from all popular single cell RNA-seq technologies, including SMART-like and Droplet. Fly datasets in SCEA can be accessed directly at [1] | SCEA EMBL-EBI, Wellcome Genome Campus Hinxton, UK |
UCSC Cell Browser | The UCSC Cell Browser is an interactive viewer for single-cell expression for a variety of species, including D. melanogaster. | UCSC |
Single Cell RNA-seq Data Analysis Tools
Resource | Description | Source/Reference |
---|---|---|
ASAP | The web-based, collaborative portal ASAP (Automated Single-cell Analysis Portal) was developed with as primary goal to democratize complex single-cell omics data analyses (scRNA-seq and more recently scATAC-seq). By taking advantage of a Docker system to enhance reproducibility, and novel bioinformatics approaches that were recently developed for improving scalability, ASAP meets challenging requirements set by recent cell atlasing efforts such as the Human (HCA) and Fly (FCA) Cell Atlas Projects. Specifically, ASAP can now handle datasets containing millions of cells, integrating intuitive tools that allow researchers to collaborate on the same project synchronously. ASAP tools are versioned, and researchers can create unique access IDs for storing complete analyses that can be reproduced or completed by others. Finally, ASAP does not require any installation and provides a full and modular single-cell RNA-seq analysis pipeline. | EPFL Swiss Institute of Bioinformatics Lausanne, Switzerland |
cisTopic | cisTopic is an R package to simultaneously identify cell states and cis-regulatory topics from single cell epigenomics data. | González-Blas et al. |
Distmap | DistMap can be used to spatially map single cell RNA sequencing data by using an existing reference database of in situs. | Karaiskos et al. |
Lasso.TopX | Lasso.TopX is an approach for identifying genes that contain spatial information. It utilizes the Lasso and ranking statistics and allows a user to define a specific number of features they are interested in. It was used to reconstruct the 3-D arrangement of the embryo using information from the identified genes employing Matthews correlation coefficients (MCC). | Thomas Jefferson University Philadelphia, PA Loher et al. |
DeepCMC - Neural Networks | A Neural Networks (NN) based approach for identifying genes that contain spatial information. It utilizes weak supervision for linear regression to accommodate for uncertain or probabilistic training labels. It was used to reconstruct the 3-D arrangement of the embryo using information from the identified genes employing Matthews correlation coefficients (MCC). | Thomas Jefferson University Philadelphia, PA Loher et al. |
novoSpaRc | novoSpaRc predicts locations of single cells in space by solely using single-cell RNA sequencing data. An existing reference database of marker genes is not required, but significantly enhances performance if available. | Nitzan et al. |
R Pipeline | A custom multistage analysis pipeline which integrates modules contained indifferent R packages to ensure exible, high-quality RNA-seq data analysis. | Vicidomini et al. |
SCENIC R Package SCENIC Python package |
SCENIC infers Gene Regulatory Networks and cell types from single-cell RNA-seq data. | Aibar et al. Van de Sande et al. |
SCope | SCope is a fast visualization tool for large-scale and high dimensional scRNA-seq and scATAC-seq datasets. | Janssens et al. |
Seurat | Seurat is an R package designed for QC, analysis, and exploration of single-cell RNA-seq data. Seurat aims to enable users to identify and interpret sources of heterogeneity from single-cell transcriptomic measurements, and to integrate diverse types of single-cell data. | Satija lab New York Genome Center Center for Genomics and Systems Biology NYU New York, NY Hao et al. |
Sharing scRNAseq Datasets with the Community
FlyBase has an ongoing collaboration with the EBI’s Single Cell Expression Atlas, a repository of scRNAseq datasets.
In order to get your scRNAseq data into the Single Cell Expression Atlas, you need to deposit your raw sequencing data files into a sequencing data repository such as the NCBI’s Gene Expression Omnibus or the EBI’s ArrayExpress. From there, once your paper has been published, your data will be picked up by FlyBase and SCEA curators to be added to the Single Cell Expression Atlas.
In the meantime, if you wish to upload your processed data somewhere else to share it as soon as possible, your options include:
- the EFPL/SIB’s ASAP platform;
- the UCSC Cell Browser (there is no upload form from the website itself; you need to contact them at cells@ucsc.edu).
There is also CZI’s [cellxgene.cziscience.com/ Cell×Gene Discover], but currently they only accept data from primates and rodents. This may change in the future, though, and we’ll update this page if/when they start accepting datasets from _D. melanogaster_.
Single Cell RNA-seq Community
Resource | Description | Source/Contact |
---|---|---|
Fly Cell Atlas | The Fly Cell Atlas (FCA) is a consortium that brings together Drosophila researchers interested in single-cell genomics, transcriptomics, and epigenomics, to build comprehensive cell atlases during different developmental stages and disease models. | Founders Stein Aerts, Leuven, Belgium Bart Deplancke, Lausanne, Switzerland Robert Zinzen, Berlin, Germany Contact - fca@flycellatlas.org |