2019
DOI: 10.7150/jca.32267
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The transcriptome difference between colorectal tumor and normal tissues revealed by single-cell sequencing

Abstract: The previous cancer studies were difficult to reproduce since the tumor tissues were analyzed directly. But the tumor tissues were actually a mixture of different cancer cells. The transcriptome of single-cell was much robust than the transcriptome of a mixed tissue. The single-cell transcriptome had much smaller variance. In this study, we analyzed the single-cell transcriptome of 272 colorectal cancer (CRC) epithelial cells and 160 normal epithelial cells and identified 342 discriminative transcripts using a… Show more

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Cited by 30 publications
(23 citation statements)
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“…Our data highlights a clear shift in the transcriptome of PBMCs from cancer patients, suggesting such alterations are not restricted to the tumor microenvironment but rather are reflected systematically. Our data is in agreement with previous reports also documenting changes in gene expression in peripheral blood and/or tumor tissue from patients with CRC using digital gene expression-tag profiling approach [18], high through-put real time polymerase chain reaction (PCR) [11], single-cell sequencing [19], human transcriptome array (HTA) [20] and whole genome sequencing [21,22].…”
Section: Discussionsupporting
confidence: 93%
“…Our data highlights a clear shift in the transcriptome of PBMCs from cancer patients, suggesting such alterations are not restricted to the tumor microenvironment but rather are reflected systematically. Our data is in agreement with previous reports also documenting changes in gene expression in peripheral blood and/or tumor tissue from patients with CRC using digital gene expression-tag profiling approach [18], high through-put real time polymerase chain reaction (PCR) [11], single-cell sequencing [19], human transcriptome array (HTA) [20] and whole genome sequencing [21,22].…”
Section: Discussionsupporting
confidence: 93%
“…If several genes are similar, only the most representative gene will be selected. This approach has been proven to be effective and has been widely used for many biomedical feature selection problems (Niu et al, 2013;Zhao et al, 2013;Zhou et al, 2015;Zhang et al, 2016;Liu et al, 2017), especially in single cell RNA-Seq analysis (Zhang et al, 2019). The sample size of single cell data was large and the gene expression was spare.…”
Section: The Mrmr Ranking Of Discriminative Genesmentioning
confidence: 99%
“…These were downloaded from the Gene Ontology database 1 and the KEGG (Kyoto Encyclopedia of Genes and Genomes) pathways were downloaded from the KEGG database 2 . Hypergeometric distribution test (Li et al, 2019a;Pan et al, 2019b;Zhang et al, 2019) was applied to detect enrichment terms and p-values were corrected by False Discovery Rate (FDR) methods with a cutoff FDR < 0.05. Significantly enriched entries in all modules were sorted in ascending order by FDR value.…”
Section: Functional Enrichment Analysis Of Module Genesmentioning
confidence: 99%