372 research outputs found
Reading the three-dimensional structure of a protein from its amino acid sequence
While all the information required for the folding of a protein is contained
in its amino acid sequence, one has not yet learnt how to extract this
information so as to predict the detailed, biological active, three-dimensional
structure of a protein whose sequence is known. This situation is not
particularly satisfactory, in keeping with the fact that while linear
sequencing of the amino acids specifying a protein is relatively simple to
carry out, the determination of the folded-native-conformation can only be done
by an elaborate X-ray diffraction analysis performed on crystals of the protein
or, if the protein is very small, by nuclear magnetic resonance techniques.
Using insight obtained from lattice model simulations of the folding of small
proteins (fewer than 100 residues), in particular of the fact that this
phenomenon is essentially controlled by conserved contacts among strongly
interacting amino acids, which also stabilize local elementary structures
formed early in the folding process and leading to the (post-critical) folding
core when they assemble together, we have worked out a successful strategy for
reading the three-dimensional structure of a notional protein from its amino
acid sequence.Comment: misprints eliminated and small mistakes correcte
The looping probability of random heteropolymers helps to understand the scaling properties of biopolymers
Random heteropolymers are a minimal description of biopolymers and can
provide a theoretical framework to the investigate the formation of loops in
biophysical experiments. A two--state model provides a consistent and robust
way to study the scaling properties of loop formation in polymers of the size
of typical biological systems. Combining it with self--adjusting
simulated--tempering simulations, we can calculate numerically the looping
properties of several realizations of the random interactions within the chain.
Differently from homopolymers, random heteropolymers display at different
temperatures a continuous set of scaling exponents. The necessity of using
self--averaging quantities makes finite--size effects dominant at low
temperatures even for long polymers, shadowing the length--independent
character of looping probability expected in analogy with homopolymeric
globules. This could provide a simple explanation for the small scaling
exponents found in experiments, for example in chromosome folding
Properties of low-dimensional collective variables in the molecular dynamics of biopolymers
The description of the dynamics of a complex, high-dimensional system in
terms of a low-dimensional set of collective variables Y can be fruitful if the
low dimensional representation satisfies a Langevin equation with drift and
diffusion coefficients which depend only on Y. We present a computational
scheme to evaluate whether a given collective variable provides a faithful
low-dimensional representation of the dynamics of a high-dimensional system.
The scheme is based on the framework of finite-difference Langevin-equation,
similar to that used for molecular-dynamics simulations. This allows one to
calculate the drift and diffusion coefficients in any point of the
full-dimensional system. The width of the distribution of drift and diffusion
coefficients in an ensemble of microscopic points at the same value of Y
indicates to which extent the dynamics of Y is described by a simple Langevin
equation. Using a simple protein model we show that collective variables often
used to describe biopolymers display a non-negligible width both in the drift
and in the diffusion coefficients. We also show that the associated effective
force is compatible with the equilibrium free--energy calculated from a
microscopic sampling, but results in markedly different dynamical properties
Time delay as a key to Apoptosis Induction in the p53 Network
A feedback mechanism that involves the proteins p53 and mdm2, induces cell
death as a controled response to severe DNA damage. A minimal model for this
mechanism demonstrates that the respone may be dynamic and connected with the
time needed to translate the mdm2 protein. The response takes place if the
dissociation constant k between p53 and mdm2 varies from its normal value.
Although it is widely believed that it is an increase in k that triggers the
response, we show that the experimental behaviour is better described by a
decrease in the dissociation constant. The response is quite robust upon
changes in the parameters of the system, as required by any control mechanism,
except for few weak points, which could be connected with the onset of cancer
Protein folding: Can high-performance computing improve our understanding?
Proteins are complex physical systems of great biological and pharmaceutical interest. Computer simulations can be useful to understand how they fold to their biologically active conformation, but have to face two problems, namely
the roughness of the energy landscape and the wide range of time scales associated with the folding process. Models at atomic detail are able to describe the protein with a high degree of realism, but are computationally very demanding and their results usually are difficult to analyse. Models with simplified degrees of freedom are less accurate but are good at highlighting the basic physical mechanism which
controls protein dynamics. A combination of the two can be the right solution to the protein folding problem
Hiking in the energy landscape in sequence space: a bumpy road to good folders
With the help of a simple 20 letters, lattice model of heteropolymers, we
investigate the energy landscape in the space of designed good-folder
sequences. Low-energy sequences form clusters, interconnected via neutral
networks, in the space of sequences. Residues which play a key role in the
foldability of the chain and in the stability of the native state are highly
conserved, even among the chains belonging to different clusters. If, according
to the interaction matrix, some strong attractive interactions are almost
degenerate (i.e. they can be realized by more than one type of aminoacid
contacts) sequence clusters group into a few super-clusters. Sequences
belonging to different super-clusters are dissimilar, displaying very small
() similarity, and residues in key-sites are, as a rule, not
conserved. Similar behavior is observed in the analysis of real protein
sequences.Comment: 17 pages 5 figures Corrected typos added auxiliary informatio
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