Bayesian Modeling of Spatial Molecular Profiling Data via Gaussian Process

12/06/2020
by   Qiwei Li, et al.
0

The location, timing, and abundance of gene expression (both mRNA and proteins) within a tissue define the molecular mechanisms of cell functions. Recent technology breakthroughs in spatial molecular profiling, including imaging-based technologies and sequencing-based technologies, have enabled the comprehensive molecular characterization of single cells while preserving their spatial and morphological contexts. This new bioinformatics scenario calls for effective and robust computational methods to identify genes with spatial patterns. We represent a novel Bayesian hierarchical model to analyze spatial transcriptomics data, with several unique characteristics. It models the zero-inflated and over-dispersed counts by deploying a zero-inflated negative binomial model that greatly increases model stability and robustness. Besides, the Bayesian inference framework allows us to borrow strength in parameter estimation in a de novo fashion. As a result, the proposed model shows competitive performances in accuracy and robustness over existing methods in both simulation studies and two real data applications. The related R/C++ source code is available at https://github.com/Minzhe/BOOST-GP.

READ FULL TEXT

page 18

page 21

page 23

research
04/28/2021

BOOST-Ising: Bayesian Modeling of Spatial Transcriptomics Data via Ising Model

Recent technology breakthrough in spatial molecular profiling has enable...
research
05/14/2023

Bayesian Flexible Modelling of Spatially Resolved Transcriptomic Data

Single-cell RNA-sequencing technologies may provide valuable insights to...
research
08/01/2019

Bayesian Gamma-Negative Binomial Modeling of Single-Cell RNA Sequencing Data

Background: Single-cell RNA sequencing (scRNA-seq) is a powerful profili...
research
12/09/2021

The Peril of Popular Deep Learning Uncertainty Estimation Methods

Uncertainty estimation (UE) techniques – such as the Gaussian process (G...
research
08/10/2023

Spatial Pathomics Toolkit for Quantitative Analysis of Podocyte Nuclei with Histology and Spatial Transcriptomics Data in Renal Pathology

Podocytes, specialized epithelial cells that envelop the glomerular capi...
research
06/20/2019

SMILES-X: autonomous molecular compounds characterization for small datasets without descriptors

In materials science and related fields, small datasets (≪1000 samples) ...
research
02/08/2018

mGPfusion: Predicting protein stability changes with Gaussian process kernel learning and data fusion

Proteins are commonly used by biochemical industry for numerous processe...

Please sign up or login with your details

Forgot password? Click here to reset