TY - JOUR
T1 - A systems biology approach reveals common metastatic pathways in osteosarcoma
AU - Flores, Ricardo J.
AU - Li, Yiting
AU - Yu, Alexander
AU - Shen, Jianhe
AU - Rao, Pulivarthi H.
AU - Lau, Serrine S.
AU - Vannucci, Marina
AU - Lau, Ching C.
AU - Man, Tsz Kwong
N1 - Funding Information:
This work was partly supported by the NIH Training Grant T32 CA115303-04S1 (RJF), the Training fellowship from the Keck Center Computational Cancer Biology Training Program of the Gulf Coast Consortia (CPRIT Grant No. RP101489) (RJF), the Multiple Investigator Research Award, Cancer Prevention and Research Institute of Texas (TKM, CCL). Mass spectrometric data were acquired by the Arizona Proteomics Consortium supported by the NIEHS grant ES06694 to the SWEHSC, the NIH/NCI grant CA023074 to the AZCC and by the BIO5 Institute of the University of Arizona.
PY - 2012/5/28
Y1 - 2012/5/28
N2 - Background: Osteosarcoma (OS) is the most common malignant bone tumor in children and adolescents. The survival rate of patients with metastatic disease remains very dismal. Nevertheless, metastasis is a complex process and a single-level analysis is not likely to identify its key biological determinants. In this study, we used a systems biology approach to identify common metastatic pathways that are jointly supported by both mRNA and protein expression data in two distinct human metastatic OS models.Results: mRNA expression microarray and N-linked glycoproteomic analyses were performed on two commonly used isogenic pairs of human metastatic OS cell lines, namely HOS/143B and SaOS-2/LM7. Pathway analysis of the differentially regulated genes and glycoproteins separately revealed pathways associated to metastasis including cell cycle regulation, immune response, and epithelial-to-mesenchymal-transition. However, no common significant pathway was found at both genomic and proteomic levels between the two metastatic models, suggesting a very different biological nature of the cell lines. To address this issue, we used a topological significance analysis based on a " shortest-path" algorithm to identify topological nodes, which uncovered additional biological information with respect to the genomic and glycoproteomic profiles but remained hidden from the direct analyses. Pathway analysis of the significant topological nodes revealed a striking concordance between the models and identified significant common pathways, including " Cytoskeleton remodeling/TGF/WNT" , " Cytoskeleton remodeling/Cytoskeleton remodeling" , and " Cell adhesion/Chemokines and adhesion" . Of these, the " Cytoskeleton remodeling/TGF/WNT" was the top ranked common pathway from the topological analysis of the genomic and proteomic profiles in the two metastatic models. The up-regulation of proteins in the " Cytoskeleton remodeling/TGF/WNT" pathway in the SaOS-2/LM7 and HOS/143B models was further validated using an orthogonal Reverse Phase Protein Array platform.Conclusions: In this study, we used a systems biology approach by integrating genomic and proteomic data to identify key and common metastatic mechanisms in OS. The use of the topological analysis revealed hidden biological pathways that are known to play critical roles in metastasis. Wnt signaling has been previously implicated in OS and other tumors, and inhibitors of Wnt signaling pathways are available for clinical testing. Further characterization of this common pathway and other topological pathways identified from this study may lead to a novel therapeutic strategy for the treatment of metastatic OS.
AB - Background: Osteosarcoma (OS) is the most common malignant bone tumor in children and adolescents. The survival rate of patients with metastatic disease remains very dismal. Nevertheless, metastasis is a complex process and a single-level analysis is not likely to identify its key biological determinants. In this study, we used a systems biology approach to identify common metastatic pathways that are jointly supported by both mRNA and protein expression data in two distinct human metastatic OS models.Results: mRNA expression microarray and N-linked glycoproteomic analyses were performed on two commonly used isogenic pairs of human metastatic OS cell lines, namely HOS/143B and SaOS-2/LM7. Pathway analysis of the differentially regulated genes and glycoproteins separately revealed pathways associated to metastasis including cell cycle regulation, immune response, and epithelial-to-mesenchymal-transition. However, no common significant pathway was found at both genomic and proteomic levels between the two metastatic models, suggesting a very different biological nature of the cell lines. To address this issue, we used a topological significance analysis based on a " shortest-path" algorithm to identify topological nodes, which uncovered additional biological information with respect to the genomic and glycoproteomic profiles but remained hidden from the direct analyses. Pathway analysis of the significant topological nodes revealed a striking concordance between the models and identified significant common pathways, including " Cytoskeleton remodeling/TGF/WNT" , " Cytoskeleton remodeling/Cytoskeleton remodeling" , and " Cell adhesion/Chemokines and adhesion" . Of these, the " Cytoskeleton remodeling/TGF/WNT" was the top ranked common pathway from the topological analysis of the genomic and proteomic profiles in the two metastatic models. The up-regulation of proteins in the " Cytoskeleton remodeling/TGF/WNT" pathway in the SaOS-2/LM7 and HOS/143B models was further validated using an orthogonal Reverse Phase Protein Array platform.Conclusions: In this study, we used a systems biology approach by integrating genomic and proteomic data to identify key and common metastatic mechanisms in OS. The use of the topological analysis revealed hidden biological pathways that are known to play critical roles in metastasis. Wnt signaling has been previously implicated in OS and other tumors, and inhibitors of Wnt signaling pathways are available for clinical testing. Further characterization of this common pathway and other topological pathways identified from this study may lead to a novel therapeutic strategy for the treatment of metastatic OS.
UR - http://www.scopus.com/inward/record.url?scp=84861436481&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=84861436481&partnerID=8YFLogxK
U2 - 10.1186/1752-0509-6-50
DO - 10.1186/1752-0509-6-50
M3 - Article
C2 - 22640921
AN - SCOPUS:84861436481
SN - 1752-0509
VL - 6
JO - BMC Systems Biology
JF - BMC Systems Biology
M1 - 50
ER -