TY - JOUR
T1 - A novel in silico reverse-transcriptomics-based identification and blood-based validation of a panel of sub-type specific biomarkers in lung cancer
AU - Barh, Debmalya
AU - Jain, Neha
AU - Tiwari, Sandeep
AU - Field, John K
AU - Padin-Iruegas, Elena
AU - Ruibal, Alvaro
AU - López, Rafael
AU - Herranz, Michel
AU - Bhattacharya, Antaripa
AU - Juneja, Lucky
AU - Viero, Cedric
AU - Silva, Artur
AU - Miyoshi, Anderson
AU - Kumar, Anil
AU - Blum, Kenneth
AU - Azevedo, Vasco
AU - Ghosh, Preetam
AU - Liloglou, Triantafillos
PY - 2013
Y1 - 2013
N2 - Lung cancer accounts for the highest number of cancer-related deaths worldwide. Early diagnosis significantly increases the disease-free survival rate and a large amount of effort has been expended in screening trials and the development of early molecular diagnostics. However, a gold standard diagnostic strategy is not yet available. Here, based on miRNA expression profile in lung cancer and using a novel in silico reverse-transcriptomics approach, followed by analysis of the interactome; we have identified potential transcription factor (TF) markers that would facilitate diagnosis of subtype specific lung cancer. A subset of seven TF markers has been used in a microarray screen and was then validated by blood-based qPCR using stage-II and IV non-small cell lung carcinomas (NSCLC). Our results suggest that overexpression of HMGA1, E2F6, IRF1, and TFDP1 and downregulation or no expression of SUV39H1, RBL1, and HNRPD in blood is suitable for diagnosis of lung adenocarcinoma and squamous cell carcinoma sub-types of NSCLC. Here, E2F6 was, for the first time, found to be upregulated in NSCLC blood samples. The miRNA-TF-miRNA interaction based molecular mechanisms of these seven markers in NSCLC revealed that HMGA1 and TFDP1 play vital roles in lung cancer tumorigenesis. The strategy developed in this work is applicable to any other cancer or disease and can assist in the identification of potential biomarkers.
AB - Lung cancer accounts for the highest number of cancer-related deaths worldwide. Early diagnosis significantly increases the disease-free survival rate and a large amount of effort has been expended in screening trials and the development of early molecular diagnostics. However, a gold standard diagnostic strategy is not yet available. Here, based on miRNA expression profile in lung cancer and using a novel in silico reverse-transcriptomics approach, followed by analysis of the interactome; we have identified potential transcription factor (TF) markers that would facilitate diagnosis of subtype specific lung cancer. A subset of seven TF markers has been used in a microarray screen and was then validated by blood-based qPCR using stage-II and IV non-small cell lung carcinomas (NSCLC). Our results suggest that overexpression of HMGA1, E2F6, IRF1, and TFDP1 and downregulation or no expression of SUV39H1, RBL1, and HNRPD in blood is suitable for diagnosis of lung adenocarcinoma and squamous cell carcinoma sub-types of NSCLC. Here, E2F6 was, for the first time, found to be upregulated in NSCLC blood samples. The miRNA-TF-miRNA interaction based molecular mechanisms of these seven markers in NSCLC revealed that HMGA1 and TFDP1 play vital roles in lung cancer tumorigenesis. The strategy developed in this work is applicable to any other cancer or disease and can assist in the identification of potential biomarkers.
KW - Biomarkers, Tumor/blood
KW - Carcinoma, Non-Small-Cell Lung/blood
KW - Cell Cycle/genetics
KW - Computer Simulation
KW - Gene Expression Profiling/methods
KW - Gene Expression Regulation, Neoplastic
KW - Gene Regulatory Networks
KW - Humans
KW - Lung Neoplasms/blood
KW - MicroRNAs/genetics
KW - Molecular Sequence Annotation
KW - Polymerase Chain Reaction
KW - Reproducibility of Results
KW - Reverse Transcription/genetics
KW - Small Cell Lung Carcinoma/blood
KW - Transcription Factors/metabolism
U2 - 10.1186/1471-2164-14-S6-S5
DO - 10.1186/1471-2164-14-S6-S5
M3 - Article (journal)
C2 - 24564251
SN - 1471-2164
VL - 14
SP - S5
JO - BMC Genomics
JF - BMC Genomics
IS - Suppl 6
ER -