[HTML][HTML] Machine learning for perturbational single-cell omics
Cell biology is fundamentally limited in its ability to collect complete data on cellular
phenotypes and the wide range of responses to perturbation. Areas such as computer vision …
phenotypes and the wide range of responses to perturbation. Areas such as computer vision …
Application of deep learning on single-cell RNA sequencing data analysis: a review
Single-cell RNA sequencing (scRNA-seq) has become a routinely used technique to
quantify the gene expression profile of thousands of single cells simultaneously. Analysis of …
quantify the gene expression profile of thousands of single cells simultaneously. Analysis of …
Multi-omics single-cell data integration and regulatory inference with graph-linked embedding
ZJ Cao, G Gao - Nature Biotechnology, 2022 - nature.com
Despite the emergence of experimental methods for simultaneous measurement of multiple
omics modalities in single cells, most single-cell datasets include only one modality. A major …
omics modalities in single cells, most single-cell datasets include only one modality. A major …
The scverse project provides a computational ecosystem for single-cell omics data analysis
Single-cell omics technologies have enabled the creation of comprehensive cell atlases
across tissues and species and delivered key insights into the biological mechanisms …
across tissues and species and delivered key insights into the biological mechanisms …
[HTML][HTML] A Python library for probabilistic analysis of single-cell omics data
To the Editor—Methods for analyzing single-cell data 1, 2, 3, 4 perform a core set of
computational tasks. These tasks include dimensionality reduction, cell clustering, cell-state …
computational tasks. These tasks include dimensionality reduction, cell clustering, cell-state …
Single-cell transcriptomic atlas-guided development of CAR-T cells for the treatment of acute myeloid leukemia
A Gottschlich, M Thomas, R Grünmeier, S Lesch… - Nature …, 2023 - nature.com
Chimeric antigen receptor T cells (CAR-T cells) have emerged as a powerful treatment
option for individuals with B cell malignancies but have yet to achieve success in treating …
option for individuals with B cell malignancies but have yet to achieve success in treating …
scTab: scaling cross-tissue single-cell annotation models
Identifying cellular identities is a key use case in single-cell transcriptomics. While machine
learning has been leveraged to automate cell annotation predictions for some time, there …
learning has been leveraged to automate cell annotation predictions for some time, there …
Biologically informed deep learning to query gene programs in single-cell atlases
The increasing availability of large-scale single-cell atlases has enabled the detailed
description of cell states. In parallel, advances in deep learning allow rapid analysis of newly …
description of cell states. In parallel, advances in deep learning allow rapid analysis of newly …
An integrated transcriptomic cell atlas of human neural organoids
Human neural organoids, generated from pluripotent stem cells in vitro, are useful tools to
study human brain development, evolution and disease. However, it is unclear which parts …
study human brain development, evolution and disease. However, it is unclear which parts …
Delineating mouse β-cell identity during lifetime and in diabetes with a single cell atlas
Although multiple pancreatic islet single-cell RNA-sequencing (scRNA-seq) datasets have
been generated, a consensus on pancreatic cell states in development, homeostasis and …
been generated, a consensus on pancreatic cell states in development, homeostasis and …