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Identification of key genes underlying clinical features of hepatocellular carcinoma based on weighted gene co‑expression network analysis and bioinformatics analysis
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作者 ZHANG Kan LONG Fu‑li +3 位作者 LI Yuan SHU Fa‑ming YAO Fan WEI Ai‑Ling 《Journal of Hainan Medical University》 2023年第2期49-55,共7页
Objective: To identify module genes that are closely related to clinical features of hepatocellular carcinoma (HCC) by weighted gene co‑expression network analysis, and to provide a reference for early clinical diagno... Objective: To identify module genes that are closely related to clinical features of hepatocellular carcinoma (HCC) by weighted gene co‑expression network analysis, and to provide a reference for early clinical diagnosis and treatment. Methods: GSE84598 chip data were downloaded from the GEO database, and module genes closely related to the clinical features of HCC were extracted by comprehensive weighted gene co‑expression network analysis. Hub genes were identified through protein interaction network analysis by the maximum clique centrality (MCC) algorithm;Finally, the expression of hub genes was validated by TCGA database and the Kaplan Meier plotter online database was used to evaluate the prognostic relationship between hub genes and HCC patients. Results: By comparing the gene expression data between HCC tissue samples and normal liver tissue samples, a total of 6 262 differentially expressed genes were obtained, of which 2 207 were upregulated and 4 055 were downregulated. Weighted gene co‑expression network analysis was applied to identify 120 genes of key modules. By intersecting with the differentially expressed genes, 115 candidate hub genes were obtained. The results of enrichment analysis showed that the candidate hub genes were closely related to cell mitosis, p53 signaling pathway and so on. Further application of the MCC algorithm to the protein interaction network of 115 candidate hub genes identified five hub genes, namely NUF2, RRM2, UBE2C, CDC20 and MAD2L1. Validation of hub genes by TCGA database revealed that all five hub genes were significantly upregulated in HCC tissues compared to normal liver tissues;Moreover, survival analysis revealed that high expression of hub genes was closely associated with poor prognosis in HCC patients. Conclusions: This study identifies five hub genes by combining multiple databases, which may provide directions for the clinical diagnosis and treatment of HCC. 展开更多
关键词 Weighted gene co‑expression network analysis Bioinformatics Hepatocellular carcinoma Maximal clique centrality algorithm
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A Novel Register Allocation Algorithm for Testability 被引量:1
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作者 孙强 周涛 李海军 《Tsinghua Science and Technology》 SCIE EI CAS 2007年第S1期57-60,共4页
In the course of high-level synthesis of integrate circuit, the hard-to-test structure caused by irrational schedule and allocation reduces the testability of circuit. In order to improve the circuit testability, this... In the course of high-level synthesis of integrate circuit, the hard-to-test structure caused by irrational schedule and allocation reduces the testability of circuit. In order to improve the circuit testability, this paper proposes a weighted compatibility graph (WCG), which provides a weighted formula of compatibility graph based on register allocation for testability and uses improved weighted compatibility clique partition algorithm to deal with this WCG. As a result, four rules for testability are considered simultaneously in the course of register allocation so that the objective of improving the design of testability is acquired. Tested by many experimental results of benchmarks and compared with many other models, the register allocation algorithm proposed in this paper has greatly improved the circuit testability with little overhead on the final circuit area. 展开更多
关键词 high-level synthesis register allocation TESTABILITY compatibility graph clique partition algorithm
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