• DocumentCode
    1762312
  • Title

    Integration of Network Biology and Imaging to Study Cancer Phenotypes and Responses

  • Author

    Ye Tian ; Wang, S.S. ; Zhen Zhang ; Rodriguez, Olga C. ; Petricoin, Emanuel ; Ie-Ming Shih ; Chan, Daniel ; Avantaggiati, Maria ; Guoqiang Yu ; Shaozhen Ye ; Clarke, Roger ; Chao Wang ; Bai Zhang ; Yue Wang ; Albanese, Chris

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Virginia Tech., Arlington, VA, USA
  • Volume
    11
  • Issue
    6
  • fYear
    2014
  • fDate
    Nov.-Dec. 1 2014
  • Firstpage
    1009
  • Lastpage
    1019
  • Abstract
    Ever growing “omics” data and continuously accumulated biological knowledge provide an unprecedented opportunity to identify molecular biomarkers and their interactions that are responsible for cancer phenotypes that can be accurately defined by clinical measurements such as in vivo imaging. Since signaling or regulatory networks are dynamic and context-specific, systematic efforts to characterize such structural alterations must effectively distinguish significant network rewiring from random background fluctuations. Here we introduced a novel integration of network biology and imaging to study cancer phenotypes and responses to treatments at the molecular systems level. Specifically, Differential Dependence Network (DDN) analysis was used to detect statistically significant topological rewiring in molecular networks between two phenotypic conditions, and in vivo Magnetic Resonance Imaging (MRI) was used to more accurately define phenotypic sample groups for such differential analysis. We applied DDN to analyze two distinct phenotypic groups of breast cancer and study how genomic instability affects the molecular network topologies in high-grade ovarian cancer. Further, FDA-approved arsenic trioxide (ATO) and the ND2-SmoA1 mouse model of Medulloblastoma (MB) were used to extend our analyses of combined MRI and Reverse Phase Protein Microarray (RPMA) data to assess tumor responses to ATO and to uncover the complexity of therapeutic molecular biology.
  • Keywords
    biological organs; biomedical MRI; cancer; cellular biophysics; drugs; fluctuations; molecular biophysics; proteins; tumours; FDA-approved arsenic trioxide; MRI; ND2-SmoA1 mouse model; breast cancer; cancer phenotypes imaging; cancer responses; clinical measurements; context-specific efforts; continuously accumulated biological knowledge; differential analysis; differential dependence network analysis; dynamic efforts; genomic instability; high-grade ovarian cancer; in vivo imaging; in vivo magnetic resonance imaging; medulloblastoma; molecular biomarkers; molecular network topologies; network biology integration; omics data; phenotypic conditions; random background fluctuations; regulatory networks; reverse phase protein microarray data; signaling networks; statistically significant topological rewiring; structural alterations; systematic efforts; therapeutic molecular biology complexity; tumor responses; Bioinformatics; Biomedical signal processing; Cancer; Computational biology; Genomics; Magnetic resonance imaging; Proteins; Statistical analysis; Tumors; MRI; Network biology; cancer biology; differential network;
  • fLanguage
    English
  • Journal_Title
    Computational Biology and Bioinformatics, IEEE/ACM Transactions on
  • Publisher
    ieee
  • ISSN
    1545-5963
  • Type

    jour

  • DOI
    10.1109/TCBB.2014.2338304
  • Filename
    6857391