2023
DOI: 10.3389/fendo.2023.1163046
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Integrating single-cell analysis and machine learning to create glycosylation-based gene signature for prognostic prediction of uveal melanoma

Abstract: BackgroundIncreasing evidence suggests a correlation between glycosylation and the onset of cancer. However, the clinical relevance of glycosylation-related genes (GRGs) in uveal melanoma (UM) is yet to be fully understood. This study aimed to shed light on the impact of GRGs on UM prognosis.MethodsTo identify the most influential genes in UM, we employed the AUCell and WGCNA algorithms. The GRGs signature was established by integrating bulk RNA-seq and scRNA-seq data. UM patients were separated into two group… Show more

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Cited by 33 publications
(31 citation statements)
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References 51 publications
(58 reference statements)
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“…To validate our findings, we downloaded expression profiles from eight GEO datasets, including GSE13213 (n=117), GSE26939 (n=115), GSE29016(n=39), GSE30219 (n=85), GSE31210 (n=226), GSE37745 (n=106), GSE42127 (n=133), and GSE68465 (n=442). To ensure comparability across datasets, all expression data was normalized to transcripts per million (TPM), and batch effects were removed using the “sva” package ( 17 ). Prior to analysis, all data was log2 transformed.…”
Section: Methodsmentioning
confidence: 99%
“…To validate our findings, we downloaded expression profiles from eight GEO datasets, including GSE13213 (n=117), GSE26939 (n=115), GSE29016(n=39), GSE30219 (n=85), GSE31210 (n=226), GSE37745 (n=106), GSE42127 (n=133), and GSE68465 (n=442). To ensure comparability across datasets, all expression data was normalized to transcripts per million (TPM), and batch effects were removed using the “sva” package ( 17 ). Prior to analysis, all data was log2 transformed.…”
Section: Methodsmentioning
confidence: 99%
“…The clinical characteristics were integrated with the risk score utilizing the R package ‘rms’ to construct a more precise nomogram ( 19 , 20 ), which enhanced the predictability of prognostication. The accuracy of the nomogram was assessed by calibration and ROC curves ( 21 ).…”
Section: Methodsmentioning
confidence: 99%
“…We used the Seurat v4.1.3 package to process scRNA-seq data. [20,21] Several quality measures were applied: cells with fewer than 200 features (low quality) or >8000 features (doublets/multiplets) were removed; cells with more than 20% mitochondrial genes or 5% hemoglobin genes were removed (low quality) (Supplementary Fig. 1A-B, http://links.lww.com/ MD/J443).…”
Section: Single-cell Rna-seq Data Analysismentioning
confidence: 99%