scholarly journals Abstract 3201: Single-cell trajectory analysis reveals a melanoma-driven distinct hematopoietic response in murine spleen

Author(s):  
Nihan Kara ◽  
Nikolay Samusik ◽  
Xiaoshan Shi ◽  
Chip Lomas ◽  
Stephanie Widmann ◽  
...  
2018 ◽  
Vol 8 (1) ◽  
Author(s):  
Yuko Arioka ◽  
Emiko Shishido ◽  
Hisako Kubo ◽  
Itaru Kushima ◽  
Akira Yoshimi ◽  
...  

2021 ◽  
Vol 7 (10) ◽  
pp. eabc5464
Author(s):  
Kiya W. Govek ◽  
Emma C. Troisi ◽  
Zhen Miao ◽  
Rachael G. Aubin ◽  
Steven Woodhouse ◽  
...  

Highly multiplexed immunohistochemistry (mIHC) enables the staining and quantification of dozens of antigens in a tissue section with single-cell resolution. However, annotating cell populations that differ little in the profiled antigens or for which the antibody panel does not include specific markers is challenging. To overcome this obstacle, we have developed an approach for enriching mIHC images with single-cell RNA sequencing data, building upon recent experimental procedures for augmenting single-cell transcriptomes with concurrent antigen measurements. Spatially-resolved Transcriptomics via Epitope Anchoring (STvEA) performs transcriptome-guided annotation of highly multiplexed cytometry datasets. It increases the level of detail in histological analyses by enabling the systematic annotation of nuanced cell populations, spatial patterns of transcription, and interactions between cell types. We demonstrate the utility of STvEA by uncovering the architecture of poorly characterized cell types in the murine spleen using published cytometry and mIHC data of this organ.


Cell Systems ◽  
2018 ◽  
Vol 6 (1) ◽  
pp. 37-51.e9 ◽  
Author(s):  
Charles A. Herring ◽  
Amrita Banerjee ◽  
Eliot T. McKinley ◽  
Alan J. Simmons ◽  
Jie Ping ◽  
...  

Cell ◽  
2014 ◽  
Vol 157 (3) ◽  
pp. 714-725 ◽  
Author(s):  
Sean C. Bendall ◽  
Kara L. Davis ◽  
El-ad David Amir ◽  
Michelle D. Tadmor ◽  
Erin F. Simonds ◽  
...  

2021 ◽  
Vol 12 ◽  
Author(s):  
Zeying Wang ◽  
Yanru Wang ◽  
Taiyu Hui ◽  
Rui Chen ◽  
Yanan Xu ◽  
...  

Cashmere fineness is one of the important factors determining cashmere quality; however, our understanding of the regulation of cashmere fineness at the cellular level is limited. Here, we used single-cell RNA sequencing and computational models to identify 13 skin cell types in Liaoning cashmere goats. We also analyzed the molecular changes in the development process by cell trajectory analysis and revealed the maturation process in the gene expression profile in Liaoning cashmere goats. Weighted gene co-expression network analysis explored hub genes in cell clusters related to cashmere formation. Secondary hair follicle dermal papilla cells (SDPCs) play an important role in the growth and density of cashmere. ACTA2, a marker gene of SDPCs, was selected for immunofluorescence (IF) and Western blot (WB) verification. Our results indicate that ACTA2 is mainly expressed in SDPCs, and WB results show different expression levels. COL1A1 is a highly expressed gene in SDPCs, which was verified by IF and WB. We then selected CXCL8 of SDPCs to verify and prove the differential expression in the coarse and fine types of Liaoning cashmere goats. Therefore, the CXCL8 gene may regulate cashmere fineness. These genes may be involved in regulating the fineness of cashmere in goat SDPCs; our research provides new insights into the mechanism of cashmere growth and fineness regulation by cells.


2019 ◽  
Author(s):  
Kazumitsu Maehara ◽  
Yasuyuki Ohkawa

AbstractSingle-cell analysis is a powerful technique used to identify a specific cell population of interest during differentiation, aging, or oncogenesis. Individual cells occupy a particular transient state in the cell cycle, circadian rhythm, or during cell death. An appealing concept of pseudo-time trajectory analysis of single-cell RNA sequencing data was proposed in the software Monocle, and several methods of trajectory analysis have since been published to date. These aim to infer the ordering of cells and enable the tracing of gene expression profile trajectories in cell differentiation and reprogramming. However, the methods are restricted in terms of time structure because of the pre-specified structure of trajectories (linear, branched, tree or cyclic) which contrasts with the mixed state of single cells.Here, we propose a technique to extract underlying flows in single-cell data based on the Hodge decomposition (HD). HD is a theorem of vector fields on a manifold which guarantees that any given flow can decompose into three types of orthogonal component: gradient-flow (acyclic), curl-, and harmonic-flow (cyclic). HD is generalized on a simplicial complex (graph) and the discretized HD has only a weak assumption that the graph is directed. Therefore, in principle, HD can extract flows from any mixture of tree and cyclic time flows of observed cells. The decomposed flows provide intuitive interpretations about complex flow because of their linearity and orthogonality. Thus, each extracted flow can be focused on separately with no need to consider crosstalk.We developed ddhodge software, which aims to model the underlying flow structure that implies unobserved time or causal relations in the hodge-podge collection of data points. We demonstrated that the mathematical framework of HD is suitable to reconstruct a sparse graph representation of diffusion process as a candidate model of differentiation while preserving the divergence of the original fully-connected graph. The preserved divergence can be used as an indicator of the source and sink cells in the observed population. A sparse graph representation of the diffusion process transforms data analysis of the non-linear structure embedded in the high-dimensional space of single-cell data into inspection of the visible flow using graph algorithms. Hence, ddhodge is a suitable toolkit to visualize, inspect, and subsequently interpret large data sets including, but not limited to, high-throughput measurements of biological data.The beta version of ddhodge R package is available at:https://github.com/kazumits/ddhodge


2019 ◽  
Vol 37 (5) ◽  
pp. 547-554 ◽  
Author(s):  
Wouter Saelens ◽  
Robrecht Cannoodt ◽  
Helena Todorov ◽  
Yvan Saeys

2018 ◽  
Vol 154 (6) ◽  
pp. S-688
Author(s):  
Amrita Banerjee ◽  
Charles A. Herring ◽  
Eliot McKinley ◽  
Alan J. Simmons ◽  
Robert J. Coffey ◽  
...  

Sign in / Sign up

Export Citation Format

Share Document