GLORIA

GEOMAR Library Ocean Research Information Access

feed icon rss

Your email was sent successfully. Check your inbox.

An error occurred while sending the email. Please try again.

Proceed reservation?

Export
Filter
  • Biological systems.  (1)
  • Climate  (1)
  • 1
    Online Resource
    Online Resource
    Newark :John Wiley & Sons, Incorporated,
    Keywords: Biological systems. ; Electronic books.
    Type of Medium: Online Resource
    Pages: 1 online resource (397 pages)
    Edition: 1st ed.
    ISBN: 9781394229062
    Language: English
    Note: Cover -- Title Page -- Copyright Page -- Contents -- Preface -- Part 1. Models and Data -- Chapter 1. Inference of Gene Regulatory Networks from Multi-scale Dynamic Data -- 1.1. GRN and differentiation -- 1.1.1. The coordination of gene expression by GRNs -- 1.1.2. The process of differentiation -- 1.2. Inference of GRN from population data -- 1.2.1. Population expression data -- 1.2.2. Bayesian approaches -- 1.2.3. Information theory approaches -- 1.2.4. Boolean approaches -- 1.2.5. ODE approaches -- 1.3. Inferring GRNs from single-cell data -- 1.3.1. Single cell expression data -- 1.3.2. Adaptation of GRN inference algorithms for single-cell data analysis -- 1.3.3. Using single-cell stochastic models for GRN inference -- 1.4. Alternative strategies for GRN inference -- 1.5. Performance and limitations of GRN inference -- 1.6. Inference based on the wave of expression concept -- 1.6.1. The differentiation process seen as a dynamic process of signal processing by GRNs -- 1.6.2. Experimental demonstration of waves of expression -- 1.6.3. Using waves of expression for GRN inference -- 1.6.4. Scaling up the distributed computing approach -- 1.7. Conclusion -- 1.8. References -- Chapter 2. Combinatorial Optimization Problems for Studying Metabolism -- 2.1. Dynamics and functionality of a metabolic network -- 2.1.1. Metabolic networks -- 2.1.2. Reconstruction of metabolic networks -- 2.1.3. From the dynamics of a metabolic network to its function -- 2.2. Understanding the metabolism of non-model organisms: metabolic gap-filling algorithms -- 2.2.1. Metabolism of non-model organisms -- 2.2.2. Reconstruction of the metabolism of non-model species and gap-filling problems -- 2.2.3. Added-value and limitations of metabolic gap-filling problems: example of biotic interactions -- 2.3. Microbiota metabolism: new optimization problems. , 2.3.1. Genomics of microbiota -- 2.3.2. From merged models to compartmentalized models -- 2.3.3. Completion problem for community selection in non-compartmentalized microbiota -- 2.3.4. Completion problem for selecting compartmentalized communities with minimal exchanges -- 2.4. Discrete semantics: a Boolean approximation of metabolic producibility -- 2.4.1. Topological accessibility of compounds and reactions in a metabolic network -- 2.4.2. Activation and cycles -- 2.4.3. Applications -- 2.5. Flux semantics -- 2.5.1. Modeling the response of a metabolic network with fluxes -- 2.5.2. Steady-state cycles -- 2.5.3. Application to the completion of metabolic networks -- 2.6. Comparing semantics: toward a hybrid approach -- 2.6.1. Complementarity of Boolean and stoichiometric abstractions -- 2.6.2. Hybrid completion of metabolic networks -- 2.7. Solving gap-filling problems with answer set programming -- 2.7.1. Model the Boolean activation of a reaction in ASP -- 2.7.2. Non-compartmentalized selection of communities -- 2.7.3. Compartmentalized selection of communities -- 2.8. Conclusion -- 2.9. References -- Chapter 3. The Challenges of Inferring Dynamic Models from Time Series -- 3.1. Challenges of learning about time series -- 3.2. Reconstruction of a regulation network (Boolean network) and its logical rules -- 3.2.1. Multi-valued logic -- 3.2.2. Learning operations -- 3.2.3. Dynamical semantics -- 3.2.4. GULA -- 3.2.5. PRIDE -- 3.3. Modeling Thomas networks with delays in ASP -- 3.3.1. Formalisms used -- 3.3.2. Networks -- 3.3.3. ASP technology -- 3.3.4. Description of the problem -- 3.3.5. Implementation -- 3.3.6. Results -- 3.3.7. Synthesis -- 3.4. Promise of machine learning for biology -- 3.4.1. Learning about biological regulatory networks modeling complex behaviors -- 3.4.2. Review of models -- 3.5. References. , Chapter 4. Connecting Logical Models to Omics Data -- 4.1. Introduction -- 4.2. Logical models: objectives, nature and tools -- 4.2.1. Objectives and biological questions addressed -- 4.2.2. Logical modeling -- 4.2.3. Tools and resources for logical modeling -- 4.3. Building an influence graph using biological data -- 4.3.1. Defining the outline of the model -- 4.3.2. Construction of the regulation network -- 4.4. Defining logical rules and refining model parameters using biological data -- 4.4.1. Determining logical rules locally -- 4.4.2. Define or modify the logical model as a whole -- 4.5. Data to validate models and predict behaviors -- 4.6. Conclusion -- 4.7. References -- Part 2. Formal and Semantic Methods -- Chapter 5. Boolean Networks: Formalism, Semantics and Complexity -- 5.1. Introduction -- 5.2. Classical semantics of Boolean networks -- 5.2.1. Definitions -- 5.2.2. Examples -- 5.2.3. Properties -- 5.3. Related formalisms -- 5.3.1. Cellular automata -- 5.3.2. Petri nets -- 5.4. Guarantees against quantitative models -- 5.4.1. Boolean network refinements -- 5.4.2. Counterexample for classical semantics -- 5.4.3. MP Boolean networks -- 5.5. Dynamic properties and complexities -- 5.5.1. Fixed points -- 5.5.2. Reachability between configurations -- 5.5.3. Attractors -- 5.6. Conclusion -- 5.7. Acknowledgments -- 5.8. References -- Chapter 6. Computational Logic for Biomedicine and Neurosciences -- 6.1. Introduction -- 6.2. Biomedicine in linear logic -- 6.2.1. Introduction -- 6.2.2. Logical frameworks, linear logic -- 6.2.3. Modeling in LL -- 6.2.4. Modeling breast cancer progression -- 6.2.5. Verifying properties of the model -- 6.2.6. Conclusion and future perspectives on the biomedicine section -- 6.3. On the use of Coq to model and verify neuronal archetypes -- 6.3.1. Introduction -- 6.3.2. Discrete leaky integrate and fire model. , 6.3.3. The basic archetypes -- 6.3.4. Modeling in Coq -- 6.3.5. Encoding neurons and archetypes in Coq -- 6.3.6. Properties of neurons and archetypes in Coq -- 6.3.7. Conclusions and future work on the archetypes section -- 6.4. Conclusion and perspective -- 6.5. References -- Chapter 7. The Cell: A Chemical Analog Calculator -- 7.1. Introduction -- 7.2. Chemical reaction networks -- 7.3. Discrete dynamics and digital calculation -- 7.4. Continuous dynamics and analog computation -- 7.5. Turing-completeness of continuous CRNs -- 7.6. Chemical compiler of calculable functions -- 7.7. Chemical programming of non-living vesicles -- 7.8. 1014 networked analog computers -- 7.9. References -- Chapter 8. Formal Verification Methods for Modeling in Biology: Biological Regulation Networks -- 8.1. Introduction -- 8.1.1. Illustrative example: the simplified circadian cycle of mammals -- 8.2. Formalization of René Thomas's modeling -- 8.2.1. Static description or influence graph -- 8.2.2. Dynamics of a biological regulation graph -- 8.3. Genetically modified Hoare logic -- 8.3.1. Using experimental observations: an example -- 8.3.2. A language of assertions -- 8.3.3. A language of paths -- 8.3.4. The power of assertions -- 8.3.5. A logic to calculate the weakest precondition -- 8.4. Temporal logic and CTL -- 8.4.1. CTL and model-checking -- 8.4.2. CTL fair path -- 8.5. TotemBioNet -- 8.5.1. Tools -- 8.5.2. Example 1: growth and apoptosis of a tadpole tail -- 8.5.3. Example 2: simplified mammalian cell cycle -- 8.6. Hybrid formalism -- 8.6.1. Hybrid regulation networks -- 8.6.2. Definition of hybrid trajectories -- 8.7. Hybrid Hoare logic -- 8.7.1. Property, path, and assertion languages -- 8.7.2. Hoare triples -- 8.7.3. Weakest precondition calculus -- 8.7.4. Inference rules -- 8.7.5. Holmes BioNet: an implementation of the processing chain. , 8.8. General methodology -- 8.9. Acknowledgments -- 8.10. References -- Chapter 9. Accessible Pattern Analyses in Kappa Models -- 9.1. Introduction -- 9.1.1. Context and motivations -- 9.1.2. Modeling languages for molecular interaction systems -- 9.1.3. The Kappa language -- 9.1.4. Abstract interpretation -- 9.1.5. The Kappa ecosystem -- 9.1.6. Content of the chapter -- 9.2. Site graphs -- 9.2.1. Signature -- 9.2.2. Biochemical complexes -- 9.2.3. Patterns -- 9.2.4. Embedding between patterns -- 9.3. Rewriting site graphs -- 9.3.1. Interaction rules -- 9.3.2. Reactions induced by an interaction rule -- 9.3.3. Underlying reaction networks -- 9.4. Analysis of reachable patterns -- 9.4.1. Reachability in a reaction network -- 9.4.2. Abstraction of a set of states -- 9.4.3. Fixed point transfers -- 9.5. Analysis using sets of orthogonal patterns -- 9.5.1. Orthogonal pattern sets -- 9.5.2. Post-processing and visualization of results -- 9.5.3. Study of performance and practical use -- 9.6. Conclusion -- 9.7. References -- List of Authors -- Index -- EULA.
    Location Call Number Limitation Availability
    BibTip Others were also interested in ...
  • 2
    Publication Date: 2022-10-26
    Description: © The Author(s), 2019. This article is distributed under the terms of the Creative Commons Attribution License. The definitive version was published in Foltz, G. R., Brandt, P., Richter, I., Rodriguez-Fonsecao, B., Hernandez, F., Dengler, M., Rodrigues, R. R., Schmidt, J. O., Yu, L., Lefevre, N., Da Cunha, L. C., Mcphaden, M. J., Araujo, M., Karstensen, J., Hahn, J., Martin-Rey, M., Patricola, C. M., Poli, P., Zuidema, P., Hummels, R., Perez, R. C., Hatje, V., Luebbecke, J. F., Palo, I., Lumpkin, R., Bourles, B., Asuquo, F. E., Lehodey, P., Conchon, A., Chang, P., Dandin, P., Schmid, C., Sutton, A., Giordani, H., Xue, Y., Illig, S., Losada, T., Grodsky, S. A., Gasparinss, F., Lees, T., Mohino, E., Nobre, P., Wanninkhof, R., Keenlyside, N., Garcon, V., Sanchez-Gomez, E., Nnamchi, H. C., Drevillon, M., Storto, A., Remy, E., Lazar, A., Speich, S., Goes, M., Dorrington, T., Johns, W. E., Moum, J. N., Robinson, C., Perruches, C., de Souza, R. B., Gaye, A. T., Lopez-Paragess, J., Monerie, P., Castellanos, P., Benson, N. U., Hounkonnou, M. N., Trotte Duha, J., Laxenairess, R., & Reul, N. The tropical Atlantic observing system. Frontiers in Marine Science, 6(206), (2019), doi:10.3389/fmars.2019.00206.
    Description: he tropical Atlantic is home to multiple coupled climate variations covering a wide range of timescales and impacting societally relevant phenomena such as continental rainfall, Atlantic hurricane activity, oceanic biological productivity, and atmospheric circulation in the equatorial Pacific. The tropical Atlantic also connects the southern and northern branches of the Atlantic meridional overturning circulation and receives freshwater input from some of the world’s largest rivers. To address these diverse, unique, and interconnected research challenges, a rich network of ocean observations has developed, building on the backbone of the Prediction and Research Moored Array in the Tropical Atlantic (PIRATA). This network has evolved naturally over time and out of necessity in order to address the most important outstanding scientific questions and to improve predictions of tropical Atlantic severe weather and global climate variability and change. The tropical Atlantic observing system is motivated by goals to understand and better predict phenomena such as tropical Atlantic interannual to decadal variability and climate change; multidecadal variability and its links to the meridional overturning circulation; air-sea fluxes of CO2 and their implications for the fate of anthropogenic CO2; the Amazon River plume and its interactions with biogeochemistry, vertical mixing, and hurricanes; the highly productive eastern boundary and equatorial upwelling systems; and oceanic oxygen minimum zones, their impacts on biogeochemical cycles and marine ecosystems, and their feedbacks to climate. Past success of the tropical Atlantic observing system is the result of an international commitment to sustained observations and scientific cooperation, a willingness to evolve with changing research and monitoring needs, and a desire to share data openly with the scientific community and operational centers. The observing system must continue to evolve in order to meet an expanding set of research priorities and operational challenges. This paper discusses the tropical Atlantic observing system, including emerging scientific questions that demand sustained ocean observations, the potential for further integration of the observing system, and the requirements for sustaining and enhancing the tropical Atlantic observing system.
    Description: MM-R received funding from the MORDICUS grant under contract ANR-13-SENV-0002-01 and the MSCA-IF-EF-ST FESTIVAL (H2020-EU project 797236). GF, MG, RLu, RP, RW, and CS were supported by NOAA/OAR through base funds to AOML and the Ocean Observing and Monitoring Division (OOMD; fund reference 100007298). This is NOAA/PMEL contribution #4918. PB, MDe, JH, RH, and JL are grateful for continuing support from the GEOMAR Helmholtz Centre for Ocean Research Kiel. German participation is further supported by different programs funded by the Deutsche Forschungsgemeinschaft, the Deutsche Bundesministerium für Bildung und Forschung (BMBF), and the European Union. The EU-PREFACE project funded by the EU FP7/2007–2013 programme (Grant No. 603521) contributed to results synthesized here. LCC was supported by the UERJ/Prociencia-2018 research grant. JOS received funding from the Cluster of Excellence Future Ocean (EXC80-DFG), the EU-PREFACE project (Grant No. 603521) and the BMBF-AWA project (Grant No. 01DG12073C).
    Keywords: Tropical Atlantic Ocean ; Observing system ; Weather ; Climate ; Hurricanes ; Biogeochemistry ; Ecosystems ; Coupled model bias
    Repository Name: Woods Hole Open Access Server
    Type: Article
    Location Call Number Limitation Availability
    BibTip Others were also interested in ...
Close ⊗
This website uses cookies and the analysis tool Matomo. More information can be found here...