MERFISHtools
Cited by: 5
|
Update date: 2019-03-16

Description

A Bayesian model for single cell transcript expression analysis on MERFISH data. MOTIVATION: Multiplexed error-robust fluorescence in-situ hybridization (MERFISH) is a recent technology to obtain spatially resolved gene or transcript expression profiles in single cells for hundreds to thousands of genes in parallel. So far, no statistical framework to analyze MERFISH data is available. RESULTS: We present a Bayesian model for single cell transcript expression analysis on MERFISH data. We show that the model successfully captures uncertainty in MERFISH data and eliminates systematic biases that can occur in raw RNA molecule counts obtained with MERFISH. Our model accurately estimates transcript expression and additionally provides the full probability distribution and credible intervals for each transcript. We further show how this enables MERFISH to scale towards the whole genome while being able to control the uncertainty in obtained results. AVAILABILITY AND IMPLEMENTATION: The presented model is implemented on top of Rust-Bio (Koster, 2016) and available open-source as MERFISHtools (https://merfishtools.github.io). It can be easily installed via Bioconda (Gruning et al., 2018). The entire analysis performed in this paper is provided as a fully reproducible Snakemake (Koster and Rahmann, 2012) workflow via Zenodo (https://doi.org/10.5281/zenodo.752340). SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

Keywords

MERFISH
Spatial Gene Expression

Related


1

A Bayesian model for single cell transcript expression analysis on MERFISH data.

Authors: Köster, Johannes; Brown, Myles; Liu, X Shirley
Journal: Bioinformatics,2019/03/15;35(6):995-1001.
Keywords:MERFISH; Spatial Gene Expression
IF: 0
Cited by: 5

2

Eleven grand challenges in single-cell data science.

Authors: Lähnemann, David; Köster, Johannes; Szczurek, Ewa; McCarthy, Davis J; Hicks, Stephanie C; Robinson, Mark D; Vallejos, Catalina A; Campbell, Kieran R; Beerenwinkel, Niko; Mahfouz, Ahmed; Pinello, Luca; Skums, Pavel; Stamatakis, Alexandros; Attolini, Camille Stephan-Otto; Aparicio, Samuel; ...More
Journal: Genome Biol,2020/02/07;21(1):31.
Keywords:smFISH; mIF; Seurat; seqFISH+; Omics; ISS; Slide-seq; osmFISH; MERFISH; Spatial Transcriptomics; FISSEQ; Cellular Genomics; LCM-seq
IF: 17.906
Cited by: 578

3

Recovering Spatially-Varying Cell-Specific Gene Co-expression Networks for Single-Cell Spatial Expression Data.

Authors: Yu, Jinge; Luo, Xiangyu
Journal: Front Genet,2021;12:656637.
Keywords:Seurat; seqFISH+; MERFISH; ISS; FISSEQ; Spatial Genomics; Bayesian posterior estimates; cell-specific; gene co-expression network; neighborhood; prediction; single-cell spatial expression
IF: 0

Tool types

Exploratory Data Analysis
Online Data For Paper