Computational models in biology and biomedical science are often constructed to aid people's understanding of phenomena or to inform decisions with socioeconomic consequences. Model credibility is the willingness of people to trust a model's predictions and is often difficult to establish for computational biology models. A 3 3 matrix has been proposed to allow such models to be categorised with respect to their testability and epistemic foundation in order to guide the selection of an appropriate process of validation to supply evidence to establish credibility. Three approaches to validation are identified that can be deployed depending on whether a model is deemed untestable, testable or lies somewhere in between. In the latter two case...
The difficulties encountered in applying current normative approaches for validation to computationa...
peer reviewedComputational Biology has increasingly become an important tool for biomedical and tran...
Abstract: Validation is the most incomprehensible part of developing a model. Nevetheless, no model ...
Computational models in biology and biomedical science are often constructed to aid people's underst...
AbstractComputational models in biology and biomedical science are often constructed to aid people's...
Different research communities have developed various approaches to assess the credibility of predic...
Abstract: Different research communities have developed various approaches to assess the credibility...
There are currently no widely shared criteria by which to assess the validity of computational model...
Systems biology, neuroscience and other disciplines in biology rely increasingly on computer simulat...
Historically, the evidences of safety and efficacy that companies provide to regulatory agencies as ...
<p>This presentation is a high-level overview of a strategy to assess the credibility of computation...
Modelers must restore confidence in Systems and Computational Biology by avoiding over-interpretatio...
The value of in silico methods in drug development and evaluation has been demonstrated repeatedly a...
Modeling and simulation in computational neuroscience is currently a research enterprise to better u...
Abstract: Computational Biology has increasingly become an important tool for biomedical and transla...
The difficulties encountered in applying current normative approaches for validation to computationa...
peer reviewedComputational Biology has increasingly become an important tool for biomedical and tran...
Abstract: Validation is the most incomprehensible part of developing a model. Nevetheless, no model ...
Computational models in biology and biomedical science are often constructed to aid people's underst...
AbstractComputational models in biology and biomedical science are often constructed to aid people's...
Different research communities have developed various approaches to assess the credibility of predic...
Abstract: Different research communities have developed various approaches to assess the credibility...
There are currently no widely shared criteria by which to assess the validity of computational model...
Systems biology, neuroscience and other disciplines in biology rely increasingly on computer simulat...
Historically, the evidences of safety and efficacy that companies provide to regulatory agencies as ...
<p>This presentation is a high-level overview of a strategy to assess the credibility of computation...
Modelers must restore confidence in Systems and Computational Biology by avoiding over-interpretatio...
The value of in silico methods in drug development and evaluation has been demonstrated repeatedly a...
Modeling and simulation in computational neuroscience is currently a research enterprise to better u...
Abstract: Computational Biology has increasingly become an important tool for biomedical and transla...
The difficulties encountered in applying current normative approaches for validation to computationa...
peer reviewedComputational Biology has increasingly become an important tool for biomedical and tran...
Abstract: Validation is the most incomprehensible part of developing a model. Nevetheless, no model ...