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Series GSE163210 Query DataSets for GSE163210
Status Public on Sep 26, 2021
Title Cancer phylogenetics using single-cell RNA-seq data
Organism Homo sapiens
Experiment type Expression profiling by high throughput sequencing
Summary To test if scRNA-seq contains sufficient phylogenetic information to reconstruct a population history of cancer, immunosuppressed NU/J mice were injected with human cancer cells (MDA-MB-231-LM2). The tumors that develop are derived from the same population and thus share a common ancestor, but evolved independently in each mouse and should form separate clades on reconstructed phylogenetic trees when analysed together. We explore and compare results of phylogenetic analyses based on both expression levels and SNVs called from our scRNA-seq data. Both techniques are shown to be useful for reconstructing phylogenetic relationships between cells, refecting the clonal composition of a tumor. Without an explicit error model, standardized expression values appears to be more powerful and informative than the SNV values at a lower computational cost, due to being a by-product of standard expression analysis. Our results suggest that scRNA-seq can be a competitive alternative or useful addition to conventional scDNA-seq phylogenetic reconstruction. Our results open up a new direction of somatic phylogenetics based on scRNA-seq data. Further research is required to refne and improve these approaches to capture the full picture of somatic evolutionary dynamics in cancer.
 
Overall design Phylogenetic analysis of 5 tumour samples from 3 individual mice seeded with human cancer cells derived from a single cell line.
 
Contributor(s) Moravec JC, Lanfear R, Spector DL, Diermeier SD, Gavryushkin A
Citation(s) 36475926
Submission date Dec 14, 2020
Last update date May 12, 2023
Contact name Jiří C Moravec
E-mail(s) jiri.moravec@otago.ac.nz
Organization name University of Otago
Department Computer Science department
Lab Biological data science lab
Street address 133 Union Street East
City Dunedin
ZIP/Postal code 9016
Country New Zealand
 
Platforms (1)
GPL18573 Illumina NextSeq 500 (Homo sapiens)
Samples (5)
GSM4974849 T1 scRNA-seq
GSM4974850 T2 scRNA-seq
GSM4974851 T3 scRNA-seq
Relations
BioProject PRJNA685196
SRA SRP297941

Download family Format
SOFT formatted family file(s) SOFTHelp
MINiML formatted family file(s) MINiMLHelp
Series Matrix File(s) TXTHelp

Supplementary file Size Download File type/resource
GSE163210_RAW.tar 6.8 Mb (http)(custom) TAR (of H5)
SRA Run SelectorHelp
Raw data are available in SRA
Processed data provided as supplementary file

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