Journal Article10.1016/j.gep.2021.119228
Single-cell transcriptome analysis defines mesenchymal stromal cells in the mouse incisor dental pulp
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TL;DR: In this paper , a single-cell RNA sequencing strategy was applied to establish the RNA expression profiles of individual dental pulp cells from 5- to 6-day-old mouse incisors.
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About: This article is published in Gene Expression Patterns. The article was published on 01 Mar 2022. The article focuses on the topics: Mesenchymal stem cell & Biology.
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Citations
Transcriptome analysis of osteogenic differentiation of human maxillary sinus mesenchymal stem cells using RNA-Seq
Yutao Zhou,Rui Jiang,Jindi Zeng,Yu Chen,Jing Ren,Songling Chen,Er-Min Nie +6 more
TL;DR: It is demonstrated that accelerated ossification process, calcium signalling, and upregulation of SMOC2, OMD, IGF1, JUNB, BMP5, ADRA1A and IGF2, may contribute to the osteogenic differentiation of hMSMSCs.
1
Single-cell Transcriptome Landscape of DNA Methylome Regulators Associated with Orofacial Clefts in the Mouse Dental Pulp.
Badam Enkhmandakh,Pujan Joshi,Paul Robson,Anushree Vijaykumar,Mina Mina,Dong-Guk Shin,Dashzeveg Bayarsaihan +6 more
TL;DR: In this paper , the authors used single-cell RNA sequencing (scRNA-seq) data to characterize transcriptome in individual subpopulations of mesenchymal stem/stromal cells (MSCs) in the mouse incisor dental pulp.
Dental Pulp Stem Cells and Current in vivo Approaches to Study Dental Pulp Stem Cells in Pulp Injury and Regeneration
31 Aug 2023
TL;DR: Recent progress in identity, function, and regulation of endogenous DPSCs and their clinical potential for pulp injury and regeneration in vivo is reviewed.
Single-cell RNA analysis of chromodomain-encoding genes in mesenchymal stromal cells of the mouse dental pulp.
TL;DR: Single-cell RNA analysis of chromodomain-encoding genes in mesenchymal stromal cells of the mouse dental pulp reveals distinct spatiotemporal expression patterns and potential roles in osteogenic differentiation.
Single cell RNA sequencing reveals mesenchymal heterogeneity and critical functions of Cd271 in tooth development
TL;DR: In this paper , the effect of p75NTR deficiency on mesenchymal stem cells (MSCs) gene expression and cell proportion by cell subgrouping, differential gene analysis, enrichment analysis and protein-protein interaction network analysis was investigated.
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