TY - CHAP
T1 - A network-based integrative workflow to unravel mechanisms underlying disease progression
AU - Khan, Faiz M.
AU - Sadeghi, Mehdi
AU - Gupta, Shailendra K.
AU - Wolkenhauer, Olaf
N1 - Publisher Copyright:
© Springer Science+Business Media LLC 2018.
PY - 2018
Y1 - 2018
N2 - Unraveling mechanisms underlying diseases has motivated the development of systems biology approaches. The key challenges for the development of mathematical models and computational tool are (1) the size of molecular networks, (2) the nonlinear nature of spatio-temporal interactions, and (3) feedback loops in the structure of interaction networks. We here propose an integrative workflow that combines structural analyses of networks, high-throughput data, and mechanistic modeling. As an illustration of the workflow, we use prostate cancer as a case study with the aim of identifying key functional components associated with primary to metastasis transitions. Analysis carried out by the workflow revealed that HOXD10, BCL2, and PGR are the most important factors affected in primary prostate samples, whereas, in the metastatic state, STAT3, JUN, and JUNB are playing a central role. The identified key elements of each network are validated using patient survival analysis. The workflow presented here allows experimentalists to use heterogeneous data sources for the identification of diagnostic and prognostic signatures.
AB - Unraveling mechanisms underlying diseases has motivated the development of systems biology approaches. The key challenges for the development of mathematical models and computational tool are (1) the size of molecular networks, (2) the nonlinear nature of spatio-temporal interactions, and (3) feedback loops in the structure of interaction networks. We here propose an integrative workflow that combines structural analyses of networks, high-throughput data, and mechanistic modeling. As an illustration of the workflow, we use prostate cancer as a case study with the aim of identifying key functional components associated with primary to metastasis transitions. Analysis carried out by the workflow revealed that HOXD10, BCL2, and PGR are the most important factors affected in primary prostate samples, whereas, in the metastatic state, STAT3, JUN, and JUNB are playing a central role. The identified key elements of each network are validated using patient survival analysis. The workflow presented here allows experimentalists to use heterogeneous data sources for the identification of diagnostic and prognostic signatures.
KW - Disease signatures
KW - Integrative workflow
KW - Large-scale networks
KW - Mathematical models
KW - Network-based analysis
UR - https://www.scopus.com/pages/publications/85033687831
U2 - 10.1007/978-1-4939-7456-6_12
DO - 10.1007/978-1-4939-7456-6_12
M3 - Chapter
C2 - 29119509
AN - SCOPUS:85033687831
T3 - Methods in Molecular Biology
SP - 247
EP - 276
BT - Methods in Molecular Biology
PB - Humana Press Inc.
ER -