| Literature DB >> 34712733 |
Huanqing Liu1, Tingting Li2, Xunda Ye3, Jun Lyu1.
Abstract
BACKGROUND: Small-cell lung cancer (SCLC) is a major cause of carcinoma-related deaths worldwide. The aim of this study was to identify the key biomarkers and pathways in SCLC using biological analysis.Entities:
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Year: 2021 PMID: 34712733 PMCID: PMC8548101 DOI: 10.1155/2021/5953386
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1Identification of differentially expressed genes (DEGs) between SCLC and normal tissues. (a) Volcanic distribution map of DEGs in GSE30219 dataset. (b) Volcanic distribution map of DEGs in dataset GSE99316. (c) Volcanic distribution map of DEGs in the GSE149507 dataset (green indicates low expression, red indicates high expression, and black indicates no difference). (d) A Venn diagram shows the DEGs with three datasets overlapping.
268 DEG lists were identified and confirmed from three GEO datasets.
| Regulation | Number | Genes |
|---|---|---|
| Upregulation | 192 | TPX2, GF2BP3, CCNB1, PCSK1, CXCL13, GINS1, ZIC2, ISL1, ANLN, BIRC5, KCNC1, KNTC1, CCNE1, FOXM1, CDK1, RACGAP1, TOX3, CDC6, CENPU, CEL, AURKA, KIF14, MAD2L1, ZNF711, RNF182, IGSF9, ELAVL2, KIF4A, MCM10, TYMS, DNA2, MELK, ZWINT, NDC80, PPM1E, OIP5, CCNA2, GTSE1, POU3F2, NUF2, PTTG1, NRTN, MMP12, CDCA5, UBE2T, CKS2, FOXG1, ECT2, DEPDC1, KIF23, NOL4, CENPE, SPAG5, TUBB2B, INSM1, HOXD10, CCNB2, PRC1, SRD5A1, CDT1, CENPW, CEP55, PLEKHG4B, CCNE2, CDC45, PMAIP1, MCM2, MCM4, INHBE, SBK1, DLGAP5, RAD51AP1, SCG3, KIF1A, CKAP2L, MKI67, CDCA2, CDCA8, EXO1, GRP, C12orf56, FZD3, NMU, RGS17, CENPK, LOC646903, UGT8, NEK2, SOX2, GINS2, ESPL1, DONSON, AMER2, E2F8, MEX3B, DEPDC1B, CLGN, DSP, SOX4, ADAMDEC1, UCHL1, EZH2, NUP62CL, CHEK1, NEIL3, KIF11, KIF18B, ASF1B, RIPPLY3, CDH2, KIFC1, FOXO6, DLX6, NCAPG2, KIF2C, GNG4, FBXO5, C5orf34, HAGLROS, CDCA7, CDC20, RFC4, MIAT, BUB1, PBK, AP3B2, SKA1, TRIP13, CDC7, NCAPH, ACYP1, SMC2, RMI1, ASPM, CDCA3, ATAD2, BRIP1, ELAVL4, STIL, UBE2C, MND1, NELL1, RAB3B, HES6, POLE2, RRM2, TOP2A, FEN1, HELLS, FANCI, RAD54L, DLX5, ZNF367, SPC25, KIF18A, DDC, KIF15, BUB1B, HJURP, DTL, FAM83D, CENPV, MEST, HMMR, NRCAM, RIMS2, GMNN, KIF20A, ORC6, KCNMB2, SOX11, SIX1, HEPACAM2, ASCL1, PEX5L, SGO2, CDKN2A, IGFBPL1, LHX2, ONECUT2, TTK, CDKN3, GAD1, NCAPG, RASSF6, CELF4, RMI2, RNF183, CENPF, NUSAP1, ELAVL3, ST18 |
| Downregulation | 76 | FIBIN, PPP1R14A, GHR, MAOA, GDF10, LAMP3, FCN1, HLF, FHL1, RRAD, SCN4B, SFTPD, PLAC9, FHL5, GPM6A, NR3C2, EMCN, GPIHBP1, OGN, SCGB1A1, CA4, AQP3, LYVE1, ADAMTS8, NAPSA, ADIRF, SRPX, RNASE1, SFTPC, FXYD1, FOSB, RSPO3, CX3CR1, WFDC1, BMP5, AOX1, CFD, RNASE4, CHRDL1, DPP4, MUC1, CD36, SERPINA1, TNNC1, ABCA8, STEAP4, AOC3, FCER1A, ZBTB16, ASPA, FGFR2, EDNRB, C7, DPT, MFAP4, SCARA5, MAOB, PTGDS, CDO1, ADAMTS1, S1PR1, NEXN, CA2, SFTPB, ANPEP, AQP1, RBMS3, ADH1B, NEDD9, CXCL5, FABP4, FAM107A, GPX3, SCGB3A2, GPAT3, FBLN5 |
Figure 2Functional annotation and path enrichment analysis. (a) BP enriched upregulated DEGs. (b) BP enriched downregulated DEGs. (c) MF enriched upregulated DEGs. (d) MF enriched downregulated DEGs. (e) CC enriched upregulated DEGs. (f) CC enriched downregulated DEGs. The X axis is a detailed term for functional annotation and path enrichment. The Y axis represents the percentage of genes, log10(P value). The red line is P = 0.05, which is the reference value of statistical analysis truncation standard. The yellow line represents log10(P value).
Figure 3Enrichment of biological pathway analysis of DEGs. P value represents the color depth of nodes. The size of nodes means the quantity of genes. (a) Upregulated DEG terms. (b) Downregulated DEG terms.
Figure 4Cytoscape was utilized for constructing the PPI network of DEGs. Light red was applied for marking the upregulation genes. The downregulation genes are labeled in blue.
Figure 5The foremost module was acquired from the PPI network.
Figure 6Enrichment of biological pathway analysis of DEGs in a significant module.
Top 10 hub DEGs with high score.
| Gene symbol | Score | Type | MCODE cluster |
|---|---|---|---|
| CDC20 | 69.5 | Upregulated | Cluster 1 |
| CENPU | 69.7 | Upregulated | Cluster 1 |
| CHEK1 | 70.2 | Upregulated | Cluster 1 |
| DTL | 70.2 | Upregulated | Cluster 1 |
| KIF4A | 69.5 | Upregulated | Cluster 1 |
| KIF14 | 70.1 | Upregulated | Cluster 1 |
| MCM4 | 69.9 | Upregulated | Cluster 1 |
| NCAPG2 | 69.7 | Upregulated | Cluster 1 |
| NEK2 | 69.6 | Upregulated | Cluster 1 |
| FOXM1 | 69.5 | Upregulated | Cluster 1 |
Figure 7UCSC was utilized for constructing the hierarchical clustering of hub genes. The pink bands represent normal samples and the blue bands represent SCLC samples. The red markers indicate upregulated gene expression. Blue markers indicate downregulated genes.
Figure 8Kaplan-Meier curve analysis of the influence of hub genes on the prognosis of lung cancer patients. The statistical difference was considered significant if P < 0.05.
Figure 9ONCOMINE analysis of hub gene expression in SCLC vs. adjacent tissue.