Resources

Article or Presentation

2015-European_Bioinformatics_Institute-Bio-Models-Database

Author(s): The European Bioinformatics Institute

NA

Keywords: biology database bioinformatics Models computational models

167 total view(s), 86 download(s)

Abstract

Resource Image Bio Models Database is a repository of computational models of biological processes. Models described from literature are manually curated and enriched with cross-references. All models are provided in the Public Domain.

Citation

Researchers should cite this work as follows:

Article Context

Resource Type
Differential Equation Type
Technique
Qualitative Analysis
Application Area
Course
Course Level
Lesson Length
Technology
Approach
Skills

Description

2015. The European Bioinformatics Institute. Bio Models Database. http://www.ebi.ac.uk/biomodels-main/. Accessed 15 March 2015.

Part of the European Molecular Biology Laboratory at the Wellcome Trust Genome Campus, Hinxton, Cambridgeshire, CB10 1SD, UK, EMBL-EBI provides freely available data from life science experiments, performs basic research in computational biology and offers an extensive user training programme, supporting researchers in academia and industry.

We quote from the home page,

Bio Models Database is a repository of computational models of biological processes. Models described from literature are manually curated and enriched with cross-references. All models are provided in the Public Domain. More information about Bio Models Database can be found in the FAQ.

When searching through http://www.ebi.ac.uk/biomodels-main/ under differential equation one finds 65 curated and 55 uncurated resources/papers. For each there is a full citation and an abstract and for many there is quick access to the complete paper for download.

To give the reader some idea of what the possibilities are here is one of the curated citations. It should be noted that while some materials are directly downloadable through hot-linked reference others will need to be obtained through library or individual data base or journal access privileges.

Clinical Cancer Research. 2012 Sep 15; 18(18):5071-80. Epub 2012 Jul 3. A tumor growth inhibition model for low-grade glioma treated with chemotherapy or radiotherapy. Ribba B1, Kaloshi G, Peyre M, Ricard D, Calvez V, Tod M, Cajavec-Bernard B, Idbaih A, Psimaras D, Dainese L, Pallud J, Cartalat-Carel S, Delattre JY, Honnorat J, Grenier E, Ducray F.

PURPOSE: To develop a tumor growth inhibition model for adult diffuse low-grade gliomas (LGG) able to describe tumor size evolution in patients treated with chemotherapy or radiotherapy.

EXPERIMENTAL DESIGN: Using longitudinal mean tumor diameter (MTD) data from 21 patients treated with first-line procarbazine, 1-(2-chloroethyl)-3-cyclohexyl-l-nitrosourea, and vincristine (PCV) chemotherapy, we formulated a model consisting of a system of differential equations, incorporating tumor-specific and treatment-related parameters that reflect the response of proliferative and quiescent tumor tissue to treatment. The model was then applied to the analysis of longitudinal tumor size data in 24 patients treated with first-line temozolomide (TMZ) chemotherapy and in 25 patients treated with first-line radiotherapy.

RESULTS: The model successfully described the MTD dynamics of LGG before, during, and after PCV chemotherapy. Using the same model structure, we were also able to successfully describe the MTD dynamics in LGG patients treated with TMZ chemotherapy or radiotherapy. Tumor-specific parameters were found to be consistent across the three treatment modalities. The model is robust to sensitivity analysis, and preliminary results suggest that it can predict treatment response on the basis of pretreatment tumor size data.

CONCLUSIONS: Using MTD data, we propose a tumor growth inhibition model able to describe LGG tumor size evolution in patients treated with chemotherapy or radiotherapy. In the future, this model might be used to predict treatment efficacy in LGG patients and could constitute a rational tool to conceive more effective chemotherapy schedules

 

Article Files

Authors

Author(s): The European Bioinformatics Institute

NA

Comments

Comments

There are no comments on this resource.