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Target Concepts:
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Query: UMLS:C0029463 (
osteosarcoma
)
16,637
document(s) hit in 31,850,051 MEDLINE articles (0.00 seconds)
Osteosarcoma
(OS), a bone tumor, exhibit a complex karyotype. On the genomic level a highly variable degree of alterations in nearly all chromosomal regions and between individual tumors is observable. This hampers the identification of common drivers in OS biology. To identify the common molecular mechanisms involved in the maintenance of OS, we follow the hypothesis that all the copy number-associated differences between the patients are intercepted on the level of the functional modules. The implementation is based on a network approach utilizing copy number associated genes in OS, paired expression data and protein interaction data. The resulting functional modules of tightly connected genes were interpreted regarding their biological functions in OS and their potential prognostic significance. We identified an
osteosarcoma
network assembling well-known and lesser-known candidates. The derived network shows a significant connectivity and modularity suggesting that the genes affected by the heterogeneous genetic alterations share the same biological context. The network modules participate in several critical aspects of cancer biology like DNA damage response, cell growth, and cell motility which is in line with the hypothesis of specifically deregulated but functional modules in cancer. Further, we could deduce genes with possible prognostic significance in OS for further investigation (e.g. EZR, CDKN2A,
MAP3K5
). Several of those module genes were located on chromosome 6q. The given systems biological approach provides evidence that heterogeneity on the genomic and expression level is ordered by the biological system on the level of the functional modules. Different genomic aberrations are pointing to the same cellular network vicinity to form vital, but already neoplastically altered, functional modules maintaining OS. This observation, exemplarily now shown for OS, has been under discussion already for a longer time, but often in a hypothetical manner, and can here be exemplified for OS.
...
PMID:Genomic heterogeneity of osteosarcoma - shift from single candidates to functional modules. 2584 66
Osteosarcoma
represents one of the most aggressive tumors of bone among adolescents and young adults. Despite improvements in treatment,
osteosarcoma
has a grave prognosis. The identification of prognostic factors is still in its infancy. Weighted gene correlation network analysis (WGCNA) was conducted on mRNA-sequencing and clinical information (gender, survival and metastasis) of
osteosarcoma
patients from the TARGET database to obtain genes in modules associated with metastasis of
osteosarcoma
. The Cox regression analysis was then performed on the gene expression profile from TARGET to screen genes associated with patients' survival. Known genes related to
osteosarcoma
were obtained by intersecting
osteosarcoma
-related genes from DisGeNET and DiGSeE, followed by the construction of PPI network of
osteosarcoma
-related genes and survival-related genes in modules. The screened key genes were subject to multi-factor Cox proportional hazards model, and
osteosarcoma
patients were classified into high- and low- risk groups according to the risk score to evaluate the potential of key genes to predict the survival of
osteosarcoma
patients. The WGCNA showed that 4 genes in tan and 19 genes in pink modules were related to the survival of
osteosarcoma
patients.
Osteosarcoma
-related known genes (9) were obtained in intersection of DisGeNET and DiGSeE. PPI network identified 4 key genes (KRT5, HIPK2,
MAP3K5
and CD5) closely associated with survival of
osteosarcoma
patients. HIPK2,
MAP3K5
and CD5 expression was inversely correlated with survival risk, while KRT5 expression was positively correlated with survival risk. These results show KRT5, HIPK2,
MAP3K5
and CD5 serve as prognostic factors of
osteosarcoma
patients.
...
PMID:Four genes predict the survival of osteosarcoma patients based on TARGET database. 3251 76