BACKGROUND: Critical to advancing the systems-level evaluation of complex biological processes is the development of comprehensive networks and computational methods to apply to the analysis of systems biology data (transcriptomics, proteomics/phosphoproteomics, metabolomics, etc.). Ideally, these networks will be specifically designed to capture the normal, non-diseased biology of the tissue or cell types under investigation, and can be used with experimentally generated systems biology data to assess the biological impact of perturbations like xenobiotics and other cellular stresses. Lung cell proliferation is a key biological process to capture in such a network model, given the pivotal role that proliferation plays in lung diseases including cancer, chronic obstructive pulmonary disease (COPD), and fibrosis. Unfortunately, no such network has been available prior to this work. RESULTS: To further a systems-level assessment of the biological impact of perturbations on non-diseased mammalian lung cells, we constructed a lung-focused network for cell proliferation. The network encompasses diverse biological areas that lead to the regulation of normal lung cell proliferation (Cell Cycle, Growth Factors, Cell Interaction, Intra- and Extracellular Signaling, and Epigenetics), and contains a total of 848 nodes (biological entities) and 1597 edges (relationships between biological entities). The network was verified using four published gene expression profiling data sets associated with measured cell proliferation endpoints in lung and lung-related cell types. Predicted changes in the activity of core machinery involved in cell cycle regulation (RB1, CDKN1A, and MYC/MYCN) are statistically supported across multiple data sets, underscoring the general applicability of this approach for a network-wide biological impact assessment using systems biology data. CONCLUSIONS: To the best of our knowledge, this lung-focused Cell Proliferation Network provides the most comprehensive connectivity map in existence of the molecular mechanisms regulating cell proliferation in the lung. The network is based on fully referenced causal relationships obtained from extensive evaluation of the literature. The computable structure of the network enables its application to the qualitative and quantitative evaluation of cell proliferation using systems biology data sets. The network is available for public use.
BACKGROUND: Critical to advancing the systems-level evaluation of complex biological processes is the development of comprehensive networks and computational methods to apply to the analysis of systems biology data (transcriptomics, proteomics/phosphoproteomics, metabolomics, etc.). Ideally, these networks will be specifically designed to capture the normal, non-diseased biology of the tissue or cell types under investigation, and can be used with experimentally generated systems biology data to assess the biological impact of perturbations like xenobiotics and other cellular stresses. Lung cell proliferation is a key biological process to capture in such a network model, given the pivotal role that proliferation plays in lung diseases including cancer, chronic obstructive pulmonary disease (COPD), and fibrosis. Unfortunately, no such network has been available prior to this work. RESULTS: To further a systems-level assessment of the biological impact of perturbations on non-diseased mammalian lung cells, we constructed a lung-focused network for cell proliferation. The network encompasses diverse biological areas that lead to the regulation of normal lung cell proliferation (Cell Cycle, Growth Factors, Cell Interaction, Intra- and Extracellular Signaling, and Epigenetics), and contains a total of 848 nodes (biological entities) and 1597 edges (relationships between biological entities). The network was verified using four published gene expression profiling data sets associated with measured cell proliferation endpoints in lung and lung-related cell types. Predicted changes in the activity of core machinery involved in cell cycle regulation (RB1, CDKN1A, and MYC/MYCN) are statistically supported across multiple data sets, underscoring the general applicability of this approach for a network-wide biological impact assessment using systems biology data. CONCLUSIONS: To the best of our knowledge, this lung-focused Cell Proliferation Network provides the most comprehensive connectivity map in existence of the molecular mechanisms regulating cell proliferation in the lung. The network is based on fully referenced causal relationships obtained from extensive evaluation of the literature. The computable structure of the network enables its application to the qualitative and quantitative evaluation of cell proliferation using systems biology data sets. The network is available for public use.
Authors: Stephanie Boue; Brett Fields; Julia Hoeng; Jennifer Park; Manuel C Peitsch; Walter K Schlage; Marja Talikka; Ilona Binenbaum; Vladimir Bondarenko; Oleg V Bulgakov; Vera Cherkasova; Norberto Diaz-Diaz; Larisa Fedorova; Svetlana Guryanova; Julia Guzova; Galina Igorevna Koroleva; Elena Kozhemyakina; Rahul Kumar; Noa Lavid; Qingxian Lu; Swapna Menon; Yael Ouliel; Samantha C Peterson; Alexander Prokhorov; Edward Sanders; Sarah Schrier; Golan Schwaitzer Neta; Irina Shvydchenko; Aravind Tallam; Gema Villa-Fombuena; John Wu; Ilya Yudkevich; Mariya Zelikman Journal: F1000Res Date: 2015-01-29
Authors: Florian Martin; Ty M Thomson; Alain Sewer; David A Drubin; Carole Mathis; Dirk Weisensee; Dexter Pratt; Julia Hoeng; Manuel C Peitsch Journal: BMC Syst Biol Date: 2012-05-31
Authors: Walter K Schlage; Jurjen W Westra; Stephan Gebel; Natalie L Catlett; Carole Mathis; Brian P Frushour; Arnd Hengstermann; Aaron Van Hooser; Carine Poussin; Ben Wong; Michael Lietz; Jennifer Park; David Drubin; Emilija Veljkovic; Manuel C Peitsch; Julia Hoeng; Renee Deehan Journal: BMC Syst Biol Date: 2011-10-19
Authors: Renée Deehan; Pia Maerz-Weiss; Natalie L Catlett; Guido Steiner; Ben Wong; Matthew B Wright; Gil Blander; Keith O Elliston; William Ladd; Maria Bobadilla; Jacques Mizrahi; Carolina Haefliger; Alan Edgar Journal: PLoS One Date: 2012-04-13 Impact factor: 3.240
Authors: Anita R Iskandar; Yang Xiang; Stefan Frentzel; Marja Talikka; Patrice Leroy; Diana Kuehn; Emmanuel Guedj; Florian Martin; Carole Mathis; Nikolai V Ivanov; Manuel C Peitsch; Julia Hoeng Journal: Toxicol Sci Date: 2015-06-16 Impact factor: 4.849
Authors: Stéphanie Boué; Marja Talikka; Jurjen Willem Westra; William Hayes; Anselmo Di Fabio; Jennifer Park; Walter K Schlage; Alain Sewer; Brett Fields; Sam Ansari; Florian Martin; Emilija Veljkovic; Renee Kenney; Manuel C Peitsch; Julia Hoeng Journal: Database (Oxford) Date: 2015-04-17 Impact factor: 3.451
Authors: Stephan Gebel; Rosemarie B Lichtner; Brian Frushour; Walter K Schlage; Vy Hoang; Marja Talikka; Arnd Hengstermann; Carole Mathis; Emilija Veljkovic; Michael Peck; Manuel C Peitsch; Renee Deehan; Julia Hoeng; Jurjen W Westra Journal: Bioinform Biol Insights Date: 2013-03-07