DsDNA persistence length: Difference between revisions

From OxDNA
Jump to navigation Jump to search
No edit summary
Line 5: Line 5:
dsDNA persistence length. The persistence length in this example is calculated using the following formula (see [http://jcp.aip.org/resource/1/jcpsa6/v134/i8/p085101_s1?bypassSSO=1] for details):
dsDNA persistence length. The persistence length in this example is calculated using the following formula (see [http://jcp.aip.org/resource/1/jcpsa6/v134/i8/p085101_s1?bypassSSO=1] for details):


<math>\langle {\bf n_k} \cdot {\bf n_0} \rangle = \exp(- k \langle l_0 \rangle /L_{ps}).
%<math>\langle {\bf n_k} \cdot {\bf n_0} \rangle = \exp(- k \langle l_0 \rangle /L_{ps}).
</math>
%</math>


In the <tt> EXAMPLES/PERSISTENCE_LENGTH </tt> directory, you will find a setup for calculating the persistence length of a 202 base pairs long dsDNA.  
In the <tt> EXAMPLES/PERSISTENCE_LENGTH </tt> directory, you will find a setup for calculating the persistence length of a 202 base pairs long dsDNA.  

Revision as of 19:17, 17 April 2012

Persistence length of a double-stranded DNA

The example shows how to calculate a persistence length of a double stranded DNA molecule. dsDNA persistence length. The persistence length in this example is calculated using the following formula (see [1] for details):

%

In the EXAMPLES/PERSISTENCE_LENGTH directory, you will find a setup for calculating the persistence length of a 202 base pairs long dsDNA. Note that for calculating a persistence length of a dsDNA, one needs a large number of decorrelated states. To obtain the states (which will be saved into a trajectory file), run the simulation program using the prepared input_persistence file:

oxDNA input_persistence

The program will run a molecular dynamics simulation at 23 °C and record the individual configurations. They are saved in trajectory.dat file. To analyze the data, use the python script dspl.py:

dspl.py trajectory.dat init.top 10 50

This program will produce a table of correlations between helical vectors, . Using an exponential fit to these data, one can find the persistence length.