Systems Biology may be assimilated to a symbiotic cyclic interplaying between the forward and inverse problems. Computational models need to be continuously refined through experiments and in turn they help us to make limited experimental resources more efficient. Every time one does an experiment we know that there will be some noise that can disrupt our measurements. Despite the noise certainly is a problem, the inverse problems already involve the inference of missing information, even if the data is entirely reliable. So the addition of a certain limited noise does not fundamentally change the situation but can be used to solve the so-called ill-posed problem, as defined by Hadamard. It can be seen as an extra source of information. Rec...
As we all know, “Nothing in biology makes sense except in the light of evolution” Dobzhansky (Am Bio...
Optimality principles have been used to explain many biological processes and systems. However, the ...
Driven by a deluge of data, biology is undergoing a transition to a more quantitative science. Makin...
Solving inverse problems are an essential part of finding unmeasurable properties in biological syst...
<div><p>We explore the relationship among experimental design, parameter estimation, and systematic ...
Modelers must restore confidence in Systems and Computational Biology by avoiding over-interpretatio...
The current state of the inverse problem for compartmental systems is reviewed and analyzed in terms...
Biological systems can now be understood in comprehensive and quantitative detail using systems biol...
8 pages, 5 figures.-- A correction has been published: Bioinformatics, Volume 34, Issue 21, 01 Novem...
Noise is a basic ingredient in data, since observed data are always contaminated by unwanted deviati...
25 páginas, 11 figuras, 2 tablasDynamic models of biochemical networks are often formulated as sets ...
Since A. M. Turing’s paper proposing a mathematical basis for pattern formation in developing organi...
Computational and mathematical modelling has become a valuable tool for investigating biological sys...
Computational and mathematical modelling has become a valuable tool for investigating biological sys...
Understanding modeling in biology requires understanding how biology is organized as a discipline an...
As we all know, “Nothing in biology makes sense except in the light of evolution” Dobzhansky (Am Bio...
Optimality principles have been used to explain many biological processes and systems. However, the ...
Driven by a deluge of data, biology is undergoing a transition to a more quantitative science. Makin...
Solving inverse problems are an essential part of finding unmeasurable properties in biological syst...
<div><p>We explore the relationship among experimental design, parameter estimation, and systematic ...
Modelers must restore confidence in Systems and Computational Biology by avoiding over-interpretatio...
The current state of the inverse problem for compartmental systems is reviewed and analyzed in terms...
Biological systems can now be understood in comprehensive and quantitative detail using systems biol...
8 pages, 5 figures.-- A correction has been published: Bioinformatics, Volume 34, Issue 21, 01 Novem...
Noise is a basic ingredient in data, since observed data are always contaminated by unwanted deviati...
25 páginas, 11 figuras, 2 tablasDynamic models of biochemical networks are often formulated as sets ...
Since A. M. Turing’s paper proposing a mathematical basis for pattern formation in developing organi...
Computational and mathematical modelling has become a valuable tool for investigating biological sys...
Computational and mathematical modelling has become a valuable tool for investigating biological sys...
Understanding modeling in biology requires understanding how biology is organized as a discipline an...
As we all know, “Nothing in biology makes sense except in the light of evolution” Dobzhansky (Am Bio...
Optimality principles have been used to explain many biological processes and systems. However, the ...
Driven by a deluge of data, biology is undergoing a transition to a more quantitative science. Makin...