[HTML][HTML] Deep learning applications in single-cell genomics and transcriptomics data analysis

N Erfanian, AA Heydari, AM Feriz, P Iañez… - Biomedicine & …, 2023 - Elsevier
Traditional bulk sequencing methods are limited to measuring the average signal in a group
of cells, potentially masking heterogeneity, and rare populations. The single-cell resolution …

Towards systems immunology of critical illness at scale: from single cell 'omics to digital twins

Y Vodovotz - Trends in immunology, 2023 - cell.com
Single-cell 'omics methodology has yielded unprecedented insights based largely on data-
centric informatics for reducing, and thus interpreting, massive datasets. In parallel …

Statistical inference with a manifold-constrained RNA velocity model uncovers cell cycle speed modulations

AR Lederer, M Leonardi, L Talamanca… - Nature …, 2024 - nature.com
Across biological systems, cells undergo coordinated changes in gene expression, resulting
in transcriptome dynamics that unfold within a low-dimensional manifold. While low …

Transcriptomic forecasting with neural ordinary differential equations

R Erbe, G Stein-O'Brien, EJ Fertig - Patterns, 2023 - cell.com
Single-cell transcriptomics technologies can uncover changes in the molecular states that
underlie cellular phenotypes. However, understanding the dynamic cellular processes …

scTour: a deep learning architecture for robust inference and accurate prediction of cellular dynamics

Q Li - Genome Biology, 2023 - Springer
Despite the continued efforts, a batch-insensitive tool that can both infer and predict the
developmental dynamics using single-cell genomics is lacking. Here, I present scTour, a …

scNODE : generative model for temporal single cell transcriptomic data prediction

J Zhang, E Larschan, J Bigness, R Singh - Bioinformatics, 2024 - academic.oup.com
Measurement of single-cell gene expression at different timepoints enables the study of cell
development. However, due to the resource constraints and technical challenges associated …

A dynamical perspective: moving towards mechanism in single-cell transcriptomics

RJ Maizels - … Transactions of the Royal Society B, 2024 - royalsocietypublishing.org
As the field of single-cell transcriptomics matures, research is shifting focus from
phenomenological descriptions of cellular phenotypes to a mechanistic understanding of the …

Improving the RNA velocity approach with single-cell RNA lifecycle (nascent, mature and degrading RNAs) sequencing technologies

C Zhang, Y Fang, W Chen, Z Chen… - Nucleic Acids …, 2023 - academic.oup.com
We presented an experimental method called FLOUR-seq, which combines BD Rhapsody
and nanopore sequencing to detect the RNA lifecycle (including nascent, mature, and …

Model-based inference of RNA velocity modules improves cell fate prediction

A Aivazidis, F Memi, V Kleshchevnikov, B Clarke… - bioRxiv, 2023 - biorxiv.org
RNA velocity is a powerful paradigm that exploits the temporal information contained in
spliced and unspliced RNA counts to infer transcriptional dynamics. Existing velocity models …

Inferring single-cell transcriptomic dynamics with structured latent gene expression dynamics

S Farrell, M Mani, S Goyal - Cell Reports Methods, 2023 - cell.com
Gene expression dynamics provide directional information for trajectory inference from
single-cell RNA sequencing data. Traditional approaches compute RNA velocity using strict …