Difference between revisions of "Tutorial for Relaxation dispersion analysis cpmg fixed time recorded on varian as fid interleaved"

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__TOC__
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= Intro =
 
= Intro =
This tutorial presently cover the [http://svn.gna.org/svn/relax/branches/ relax_disp branch].<br>
 
This branch is under development, for testing it out, you need to use the source code. See [[Installation_linux#Checking_out_a_relax_branch]].
 
 
 
This tutorial is based on the analysis of NMR data from the paper:
 
This tutorial is based on the analysis of NMR data from the paper:
 
<blockquote>
 
<blockquote>
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     # Set the current experiment type.
 
     # Set the current experiment type.
     relax_disp.exp_type(spectrum_id=current_id, exp_type='CPMG')
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     relax_disp.exp_type(spectrum_id=current_id, exp_type='SQ CPMG')
  
 
     # Set the peak intensity errors, as defined as the baseplane RMSD.
 
     # Set the peak intensity errors, as defined as the baseplane RMSD.
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     # Set the relaxation dispersion CPMG frequencies.
 
     # Set the relaxation dispersion CPMG frequencies.
     relax_disp.cpmg_frq(spectrum_id=current_id, cpmg_frq=vcpmg)
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     relax_disp.cpmg_setup(spectrum_id=current_id, cpmg_frq=vcpmg)
  
 
     i += 1
 
     i += 1
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= See also =
 
= See also =
 +
[[Category:Relaxation dispersion analysis]]
 
[[Category:Tutorials]]
 
[[Category:Tutorials]]

Latest revision as of 12:12, 27 October 2017

Intro

This tutorial is based on the analysis of NMR data from the paper:

The inverted chevron plot measured by NMR relaxation reveals a native-like unfolding intermediate in acyl-CoA binding protein.
Kaare Teilum, Flemming M Poulsen, Mikael Akke.
Proceedings of the National Academy of Sciences of the United States of America (2006).
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC1458987

The data is recorded as FID interleaved.

Preparation

You want to make a working dir, with different folders

peak_lists
spectrometer_data
scripts

You can create the folders by

mkdir peak_lists spectrometer_data scripts

In the folder spectrometer_data should be the files: fid and procpar as the output from recording fid interleaved on Varian.
In the folder peak_lists should contain SPARKY list in SPARKY list format.
In the folder scripts we put scripts which help us processing the files.

Get the process helper scripts

Go into the scripts directory and download these scripts to there.

  1. convert_all.com
  2. fft_all.com
  3. CPMG_1_sort_pseudo3D_initialize_files.sh
  4. CPMG_2_convert_and_process.sh
  5. CPMG_3_fft_all.sh
  6. NMRPipe_to_Sparky.sh
  7. sparky_add.sh
  8. stPeakList.pl

Then make them executable, and add to PATH.

cd scripts
# Change shell
tcsh

# Make them executable
chmod +x *.sh *.com *.pl

# Add scripts to PATH
setenv PATH ${PWD}:${PATH}

# Go back to previous directory
cd ..

Extract interleaved spectra, process to NMRPipe and do spectral processing

Extract interleaved and change format to NMRPipe

sort out the interleaved fid with the script CPMG_1_sort_pseudo3D_initialize_files.sh .

# Copy data
cp -r spectrometer_data spectrometer_data_processed

# sort_pseudo3D and initialize files
cd spectrometer_data_processed
CPMG_1_sort_pseudo3D_initialize_files.sh

Now we make a file to convert from binary format of Varian to NMRPipe.

  1. Now click, 'read parameters', check 'Rance-Kay'
  2. Remember to set Y-'Observe Freq MHz' to N15
  3. Click 'Save script' to make 'fid.com' file, and 'Quit', and run the next CPMG script

Now it is time to convert all the fid from varian format to NMRPipe with the script CPMG_2_convert_and_process.sh .

CPMG_2_convert_and_process.sh

Spectral processing

This step can be done by following wiki page Spectral_processing.

Fourier transform all spectra

Now it is time to Fourier Transform all spectra with the script CPMG_3_fft_all.sh.

CPMG_3_fft_all.sh

Convert all *.ft2 files to ucsf format, so they can be opened in SPARKY

Done by the script NMRPipe_to_Sparky.sh

NMRPipe_to_Sparky.sh

Check the peak list matches

sparky 0.fid/test.ucsf

SPARKY GUI

The keyboard shortcuts are listed in the manual [1]

First make window bigger.
zo for zoom out. zi Zoom in.

ct for setting countour level.
Set level 6 for positive and negative.
Add 1 to the +e0x level. Ex: xxxe+03 -> xxxe+04 ind positive and negative.
Ok

rp for read peaks. Find your peak file, which should be in format SPARKY_list

../peak_lists/peaks.list

Click Create peaks, Close.

Shift all peaks

Select on peak, and center it.
lt (LT) to show a list of peaks for a spectrum.
Double click on peak "A3N" in the list. Zoom in "zi".

Now you want to align you peaks, since they can be off-shifted.
First note down the current value of PPM in w1 and w2.

A3N-HN	121.828	8.513

Push F1 for select mode, drag it with the mouse or "pc" for auto "peak center".
Then click "Update" in the peak list, and note down the new values.

A3N-HN	121.681	8.514
We need to shift the nitrogen peaks 
(121.681 - 121.828)=-0.147 ppm, 
and proton peaks 
(8.514 - 8.513)=0.001 ppm.

Exit SPARKY

Go to the peak_list folder.

cd ../peak_lists/

We can add values to a column by using script sparky_add.sh

Correct Nitrogen

sparky_add.sh peaks.list '$2' -0.147 peaks_corr_N15.list

Correct Proton

sparky_add.sh peaks_corr_N15.list '$3' 0.001 peaks_corr_N15_1H.list

Check and auto center peaks

Now go into Sparky again, and read peak list.

cd ..
cd spectrometer_data_processed
sparky 0.fid/test.ucsf

rp Choose ../peak_lists/peaks_corr_N15_1H.list
Create peaks, close.
zo zoom out. ct set contour.
lt and go through peaks, and auto center with pc.

Problematic peaks:

H30N-HN, not possible to auto center in the middle. Next to L47 and E4.
A57N-HN / D68N-HN  In original peak list: A57N-HN 121.526 7.944 / D68N-HN 121.511 7.922, both centered to: 121.409 7.933.

Manually alter peaks

Save file to: ../peak_lists/peaks_corr_peak_center.list and then alter values manual.

cp ../peak_lists/peaks_corr_peak_center.list ../peak_lists/peaks_corr_final.list 
gedit ../peak_lists/peaks_corr_final.list &

Then alter to:

H30N-HN 117.794 8.045
A57N-HN	121.417 7.944
D68N-HN	121.402 7.922

Then check again in sparky.

Check for peak movement

As stated in the relax manual section 5.2.1 Temperature control and calibration, the pulse sequence can put a lot of power into the sample.

You could read these sections in the relax manual:
Importance of Temperature control and calibration
Temperature control
Temperature calibration

It is therefore good also good practice to inspect for peak movements, by overlaying all spectra:

Open all the files, and overlay them with SPARKY command ol.

sparky 0.fid/test.ucsf 1.fid/test.ucsf 2.fid/test.ucsf 3.fid/test.ucsf 4.fid/test.ucsf

Changes colours for different spectra in contour ct.
Then overlay with "ol". Make sure no peaks move around.

Measuring peak heights

We will use the program NMRPipe seriesTab to measure the intensities.

seriesTab needs a input file, where the ppm values from a SPARKY list has been converted to spectral points.
The spectral points value depends on the spectral processing parameters.

Generate spectral point file

Create a file with spectral point information with script stPeakList.pl .

stPeakList.pl 0.fid/test.ft2 ../peak_lists/peaks_corr_final.list > peaks_list.tab
cat peaks_list.tab

Make file with paths to .ft2 files

Then we make a file list of filepaths to .ft2 files.

ls -v -d -1 */*.ft2 > ft2_files.ls
cat ft2_files.ls

Measure the height or sum in a spectral point box

seriesTab -in peaks_list.tab -out peaks_list_max_standard.ser -list ft2_files.ls -max
seriesTab -in peaks_list.tab -out peaks_list_max_dx1_dy1.ser -list ft2_files.ls -max -dx 1 -dy 1

OR make the sum in a box:

seriesTab -in peaks_list.tab -out peaks_list_sum_dx1_dy1.ser -list ft2_files.ls -sum -dx 1 -dy 1

Analyse in relax

Extract the spectra settings from Varian procpar file

Now we want to make a settings file we can read in relax.

set NCYCLIST=`awk '/^ncyc /{f=1;next}f{print $0;exit}' procpar`; echo $NCYCLIST
set TIMET2=`awk '/^time_T2 /{f=1;next}f{print $2;exit}' procpar`; echo $TIMET2
set SFRQ=`awk '/^sfrq /{f=1;next}f{print $2;exit}' procpar`; echo $SFRQ

foreach I (`seq 2 ${#NCYCLIST}`)
set NCYC=${NCYCLIST[$I]}; set FRQ=`echo ${NCYC}/${TIMET2} | bc -l`; echo $NCYC $TIMET2 $FRQ $SFRQ >> ncyc.txt
end
cat ncyc.txt

Measure the backgorund noise "RMSD" in each of the .ft2 files

RMSD via sparky

There exist two ways to get the background RMSD noise

  1. For whole spectrum: http://www.cgl.ucsf.edu/home/sparky/manual/views.html#Noise
  2. For a region: http://www.cgl.ucsf.edu/home/sparky/manual/extensions.html#RegionRMSD

We take the full background noise, to save time.

sparky 0.fid/test.ucsf

Then st and recompute for 10000 points.
It should give valuee of order: 2.47e+03 or similar.
Add the values to ncyc.txt in next column.

Repeat for all spectra.

We will use ncyc.text to make the spectra settings later, and should look like this.
ncyc time_T2 CPMG_frq sfrq RMSD

28 0.06 466.66666666666666666666 599.8908622 2.47e+03
0 0.06 0 599.8908622 2.34e+03
4 0.06 66.66666666666666666666 599.8908622 2.41e+03
32 0.06 533.33333333333333333333 599.8908622 2.42e+03
60 0.06 1000.00000000000000000000 599.8908622 2.45e+03
2 0.06 33.33333333333333333333 599.8908622 2.42e+03
10 0.06 166.66666666666666666666 599.8908622 2.42e+03
16 0.06 266.66666666666666666666 599.8908622 2.44e+03
8 0.06 133.33333333333333333333 599.8908622 2.39e+03
20 0.06 333.33333333333333333333 599.8908622 2.4e+03
50 0.06 833.33333333333333333333 599.8908622 2.42e+03
18 0.06 300.00000000000000000000 599.8908622 2.46e+03
40 0.06 666.66666666666666666666 599.8908622 2.41e+03
6 0.06 100.00000000000000000000 599.8908622 2.45e+03
12 0.06 200.00000000000000000000 599.8908622 2.45e+03
0 0.06 0 599.8908622 2.39e+03
24 0.06 400.00000000000000000000 599.8908622 2.45e+03

RMSD via nmrpipe showApod

We can also use the showApod rmsd.

set FIDS=`cat ft2_files.ls`
set OUT=${PWD}/apod_rmsd.txt
set CWD=$PWD
rm $OUT

foreach I (`seq 1 ${#FIDS}`)
set FID=${FIDS[$I]}; set DIRN=`dirname $FID`
cd $DIRN
set apodrmsd=`showApod *.ft2 | grep "REMARK Automated Noise Std Dev in Processed Data:" | awk '{print $9}'`
echo $apodrmsd $DIRN >> $OUT
cd $CWD
end
cat $OUT
mv ncyc.txt ncyc_or.txt
paste ncyc_or.txt $OUT > ncyc.txt

Prepare directory for relax run

Then we make a directory ready for relax

mkdir ../relax
cp ncyc.txt ../relax
cp peaks_list* ../relax
cd ../relax

relax script for setting experiment settings to spectra

Add the following python relax script file to the relax directory.

This can be modified as wanted.
This is to save "time" on the tedious work on setting the experimental conditions for each spectra.

relax_3_spectra_settings.py

# Loop over the spectra settings.
ncycfile=open('ncyc.txt','r')

# Make empty ncyclist
ncyclist = []

i = 0
for line in ncycfile:
    ncyc = line.split()[0]
    time_T2 = float(line.split()[1])
    vcpmg = line.split()[2]
    set_sfrq = float(line.split()[3])
    rmsd_err = float(line.split()[4])

    print ncyc, time_T2, vcpmg

    # Test if spectrum is a reference
    if float(vcpmg) == 0.0:
        vcpmg = None
    else:
        vcpmg = round(float(vcpmg),3)

    # Add ncyc to list
    ncyclist.append(int(ncyc))

    # Set the current spectrum id
    current_id = "Z_A%s"%(i)

    # Set the current experiment type.
    relax_disp.exp_type(spectrum_id=current_id, exp_type='SQ CPMG')

    # Set the peak intensity errors, as defined as the baseplane RMSD.
    spectrum.baseplane_rmsd(error=rmsd_err, spectrum_id=current_id)

    # Set the NMR field strength of the spectrum.
    spectrometer.frequency(id=current_id, frq=set_sfrq, units='MHz')

    # Relaxation dispersion CPMG constant time delay T (in s).
    relax_disp.relax_time(spectrum_id=current_id, time=time_T2)

    # Set the relaxation dispersion CPMG frequencies.
    relax_disp.cpmg_setup(spectrum_id=current_id, cpmg_frq=vcpmg)

    i += 1

# Specify the duplicated spectra.
#spectrum.replicated(spectrum_ids=['Z_A1', 'Z_A15'])

# The automatic way
dublicates = map(lambda val: (val, [i for i in xrange(len(ncyclist)) if ncyclist[i] == val]), ncyclist)
for dub in dublicates:
    ncyc, list_index_occur = dub
    if len(list_index_occur) > 1:
        id_list = []
        for list_index in list_index_occur:
            id_list.append('Z_A%s'%list_index)
        # We don't setup replications, since we have RMSD values from background noise
        print id_list
        #spectrum.replicated(spectrum_ids=id_list)

# Delete replicate spectrum
spectrum.delete('Z_A15')

Analyse

NOTES about speed up of model selection: To speed up the model selection, see Category:Time_of_running.

Monte-Carlo simulations:
We will set the number of Monte-Carlo simulations to 10, for inspection.

This will not affect model selection.
For initial analyses where errors are not so important, the number of simulations can be dropped massively to speed things up.
If errors are not important for specific cases, set the number of MC sims to 3-10, and the analysis will perform much more rapidly.
The result is that the error estimates of the parameters are horrible but, but in some cases, excluding publication, that is not such a problem.

Which models to chose for running: This text is based on this email thread discussion:
When you are analysing data, you would probably limit the number of models to 2-3.
For example if you know that all residues are experiencing slow exchange, the LM63 fast exchange model does not need to be used.
It is interesting to see that sometimes the analytic models are selected and sometimes the numeric models.
But this is an academic curiosity, it is probably not a practical question anyone analysing real dispersion data is interested in.
The way an analysis would normally be performed is to first decide if the analytic or numeric approach is to be used.

For the analytic approach with slow exchange, you only need the No Rex and CR72 models.
You could add the IT99 model if you can see that pA >> pB in the spectra, i.e. the pB peak is tiny.

If you take the numeric approach, then the 'No Rex' and 'NS 2-site expanded' models can be used.

Once you perform an initial analysis of all residues separately, you can then look at the dynamics parameter values and judge which spins to cluster together to have the same model of dynamics, then re-perform the analysis.

Analyse in GUI

Start relax in GUI mode

relax_disp -g -t log_relax_4_model_sel.log
  1. Ctrl+n for new analysis
  2. Select Relaxation dispersion analysis button -> Next
  3. Starting pipe: base pipe
  4. Pipe bundle: relax_disp -> Start
  5. We want to load the spins manually, so in next window, then go to "User functions (n-z) -> script"
  6. Select file_name: relax_2_spins.py -> OK
  7. Then click Spin Isotopes button:
  8. The nuclear isotope name: 15N
  9. The spin ID string: @N* -> OK
  10. The load spectra: Select button "Add" under spectra list:
  11. The file name: peaks_list_max_standard.ser
  12. The spectrum ID string: auto
  13. Leave the rest of the fields as they are, they are not used.
  14. Push "Apply" and then Cancel
  15. We want to change the spectra properties by a script.
  16. Go to "User functions (n-z) -> script"
  17. Select file_name: relax_3_spectra_settings.py -> OK
  18. Before executing, it would be a good idea to save the state, to save the current setup.
  19. This state file will also be used for loading, before a later cluster/global fit analysis.
  20. Shift+Ctrl+s OR File-> Save as... ini_setup.bz2
  21. Make a directory for the output of the results, f.ex: model_sel_analyt.
  22. Point Results directory to model_sel_analyt.
  23. Set Monte-Carlo Simulations to 10
  24. Select models: Lets take "R2eff", "No Rex", "TSMFK01", "LM63", "CR72", "CR72 full", "IT99"
  25. Save the state again, so the settings for models, monte-carlo settings and result directory is preserved.
  26. Shift+Ctrl+s OR File-> Save as... ini_run.bz2 in the model_sel_analyt directory.
  27. Now push "Execute"

The analysis will probably take between 4-10 hours.

Analyse via script

Add the following python relax script file to the relax directory

relax_1_ini.py

# Taken from the relax disp manual, section 10.6.1 Dispersion script mode - the sample script
# Create the data pipe.
pipe_name = 'base pipe'
pipe_bundle = 'relax_disp'
pipe.create(pipe_name=pipe_name, bundle=pipe_bundle, pipe_type='relax_disp')

# Create the spins
spectrum.read_spins(file="peaks_list_max_standard.ser", dir=None)

# Name the isotope for field strength scaling.
spin.isotope(isotope='15N')

# Read the spectrum from NMRSeriesTab file. The "auto" will generate spectrum name of form: Z_A{i}
spectrum.read_intensities(file="peaks_list_max_standard.ser", dir=None, spectrum_id='auto', int_method='height')

# Set the spectra experimental properties/settings.
script(file='relax_3_spectra_settings.py', dir=None)

# Save the program state before run.
# This state file will also be used for loading, before a later cluster/global fit analysis.
state.save('ini_setup', force=True)

relax_4_model_sel.py

import os
from auto_analyses.relax_disp import Relax_disp

# Load the initial state setup
state.load(state='ini_setup.bz2')
 
# Set settings for run.
results_directory = os.path.join(os.getcwd(),"model_sel_analyt")
pipe_name = 'base pipe'; pipe_bundle = 'relax_disp'
MODELS = ['R2eff', 'No Rex', 'TSMFK01', 'LM63', 'CR72', 'CR72 full', 'IT99']
GRID_INC = 21; MC_NUM = 10; MODSEL = 'AIC'
 
# Execute
Relax_disp(pipe_name=pipe_name, pipe_bundle=pipe_bundle, results_dir=results_directory, models=MODELS, grid_inc=GRID_INC, mc_sim_num=MC_NUM, modsel=MODSEL)

And the just start relax with

relax_disp relax_1_ini.py -t log_relax_1_ini.log
relax_disp relax_4_model_sel.py -t log_relax_4_model_sel.log

The analysis will probably take between 4-10 hours.

Rerun from a "ini_setup.bz2" file

If something goes wrong, you can open the ini_setup.bz2 in the model_sel_analyt directory.

Just start relax:

relax_disp -g -t log_relax_4_model_sel.log

and open the ini_setup.bz2 from File->"Open relax state".
It should jump to the analysis window, make corrections, and you can then click "Execute".

In script, just follow section Analyse_via_script.

Inspecting results from the relax analysis

In the main directory, there should be an auto-saved final_state.bz2 which can opened to inspect the results.

After the analysis, several folders should be available, with data for each fitted model.

R2eff/
No Rex/
TSMFK01/
LM63/
CR72/
CR72 full/
IT99/
final/

In each of these folders, there is a grace2images.py python file, which will as standard convert the grace script files to PNG files.

Inspect graphs

You can convert all to PNG images, by:

cd "R2eff"; ./grace2images.py; cd .. ;
cd "No Rex"; ./grace2images.py; cd .. ;
cd "TSMFK01"; ./grace2images.py; cd .. ;
cd "LM63"; ./grace2images.py; cd .. ;
cd "CR72"; ./grace2images.py; cd .. ;
cd "CR72 full"; ./grace2images.py; cd .. ;
cd "IT99"; ./grace2images.py; cd .. ;
cd "final"; ./grace2images.py; cd .. ;

find . -type f -name "*.png"

# And if you want to delete them.
find . -type f -name "*.png" -exec rm -f {} \;

You can then quickly go through the fitted graphs for the models.

Convert log file to relax script

If you made a logfile, then you can do convert it to the full relax script.
See Grep_log_file for this.

Compare values

For the TSMFK01 and for example the CR72, the k_AB value can be compare

cd model_sel_analyt
paste "TSMFK01/k_AB.out" "CR72/k_AB.out" | awk '{print $2, $3, $6, $13}'

Inspect model selection for residues

Grep AIC selection from logfile

If you have a log file.

set IN=log_relax_4_model_sel.log ;
set OUT=log_relax_4_model_sel_chosen_models.txt ;

set FROM=`grep -n "AIC model selection" $IN | cut -d":" -f1` ;
set TO=`grep -n "monte_carlo.setup(" $IN | cut -d":" -f1` ;
sed -n ${FROM},${TO}p $IN > $OUT ;
cat $OUT ;

get spin.model

See Category:List_objects to get inspiration how to loop through the data class containers.

You should open the final_state.bz2 in the result directory.

state.load(state='final_state.bz2')

# See which data is in the pipe
pipe.display()

# print the spin model, first import spin_loop
from pipe_control.mol_res_spin import spin_loop

print("%20s %20s" % ("# Spin ID", "Model"))
for spin, spin_id in spin_loop(return_id=True, skip_desel=True):
    print("%20s %20s" % (repr(spin_id), spin.model))

You can also in the GUI see this in the Spin Viewer window under "View -> Spin Viewer (Ctrl+t)".
Select a spin, and look for the Variable model.

Execute a clustering analysis

Notes about how to select residues for clustering. Based on this email thread:
Clustering is a manual operation and it should not be automated.
It is based on human logic and is highly subjective.
For example it could be decided that one analysis is performed whereby one motional process is assumed, i.e. one kex value for all exchanging spins.
Or it could be decided that there are two motional processes, so two clusters are created, each having their own kex.
Some spins with bizarre dynamics may be left out as 'free spins' and not used in the cluster.
If you just want all spins with Rex to be in one cluster, you could just use all spins where spin.model is not set to No Rex.

Notes about how clustering is performed in relax.
All spins of one cluster ID will be optimised as one model.
Several cluster ID will result in all those spins being optimised separately, but again with all spins together.
Any spins not in a cluster ID (labelled as free spins) will be optimised individually.
Have a look at the model_loop() method of the specific_analyses.relax_disp.api module,
and the function specific_analyses.relax_disp.disp_data.loop_cluster which it uses.

Inspect residues for clustering

Let us select residues based on a criterion where the highest number of residues have been fitted to the same model.

Open the final_state.bz2 in relax GUI.

You can see the model select for each residue in the Spin viewer (View -> Spin viewer (Ctrl+T)). Look for the Variable model.

Open the relax prompt with Ctrl+p if you are in the GUI.
Tip: You can copy the lines, and in the relax prompt, select "Paste Plus".

from pipe_control.mol_res_spin import spin_loop

# Open file for writing
cluster_file = "cluster_residues.txt"
f = open(cluster_file, 'w')
 
# Make a list to count number of models
resi_models = []

for spin, mol_name, res_num, res_name, spin_id in spin_loop(full_info=True, return_id=True, skip_desel=True):
    # Write models to file
    f.write( str(spin_id) + " ; " + str(spin.model) + " ; " + str(mol_name) + " ; " + str(res_num) + " ; " + str(res_name) + "\n" )
 
    # Append models to list
    resi_models.append(spin.model)
 
# Count resi_models
c_resi_models = dict((i,resi_models.count(i)) for i in resi_models)
print c_resi_models
 
# Write count result to file
for key, val in c_resi_models.items():
    f.write( "# ; " + str(key) + " ; " + str(val) + "\n" )

#Close the file 
f.close()

Copy cluster_residues.txt to the initial directory.

Create new analysis clustering

For the clustered analysis, you need to start a new analysis.
You should not load the results from the final pipe, since this will likely be fatal for the clustered analysis.
The auto-analysis is designed to take the pre-run directory name and load the results files for each model itself (not the state file).
Each results file will be loaded into a temporary data pipe and the initial parameter values copied from that.

So Close relax, and then add these files.

Do clustering Analysis in GUI

Start relax in GUI mode

relax_disp -g -t log_relax_5_cluster.log
  1. Open the ini_setup.bz2 from File->"Open relax state".
  2. Open the relax prompt with Ctrl+p. And paste this is.
# Cluster residues
cluster_file = "cluster_residues.txt"
f = open(cluster_file, 'r')
for line in f:
    if line[0] == "#":
        continue
    else:
        spinid = line.split(";")[0].strip()
        spinmodel = line.split(";")[1].strip()

    # Deselect those spins not showing exchange for further analysis.
    if spinmodel == "No Rex":
        deselect.spin(spin_id=spinid, change_all=False)
    else:
        relax_disp.cluster('model_cluster', spinid)
        
f.close()

# Check which are clustered
print cdp.clustering

# Check for selected/deselected spins.
for spin, spin_id in spin_loop(return_id=True, skip_desel=False):
    print spin_id, spin.select
  1. Before executing, it would be a good idea to save the state after clustering.
  2. Shift+Ctrl+s OR File-> Save as... ini_setup_cluster.bz2
  3. Ctrl+d , right click "base pipe" and "Associate with a new auto-analysis"
  4. Close pipe viewer
  5. Make a directory for the output of the results, f.ex: model_clustering_analyt
  6. Point Results directory to model_clustering_analyt.
  7. Pint Previous run directory to previous result directory, where all the models had their folders. Values will be read from here. model_sel_analyt
  8. Set Monte-Carlo Simulations to 50
  9. Select models: Lets take "R2eff", "No Rex", "TSMFK01"
  10. Now push "Execute"

Do clustering Analysis in script

Add the following python relax script file to the relax directory.

relax_5_cluster.py

"""Taken from the relax disp manual, section 10.6.1 Dispersion script mode - the sample script.

To run the script, simply type:

$ ../../../../../relax relax_5_cluster.py --tee relax_5_cluster.log
"""

import os
from auto_analyses.relax_disp import Relax_disp
from pipe_control.mol_res_spin import spin_loop

# Set settings for run.
pre_run_directory = os.path.join(os.getcwd(),"model_sel_analyt")
results_directory = os.path.join(os.getcwd(),"model_clustering_analyt")
cluster_file = "cluster_residues.txt"

# Load the previous final state with results.
state.load(state='final_state.bz2', dir=pre_run_directory, force=False)

# Open file for writing
f = open(cluster_file, 'w')
 
# Make a list to count number of models
resi_models = []

for spin, mol_name, res_num, res_name, spin_id in spin_loop(full_info=True, return_id=True, skip_desel=True):
    # Write models to file
    f.write( str(spin_id) + " ; " + str(spin.model) + " ; " + str(mol_name) + " ; " + str(res_num) + " ; " + str(res_name) + "\n" )
 
    # Append models to list
    resi_models.append(spin.model)
 
# Count resi_models
c_resi_models = dict((i,resi_models.count(i)) for i in resi_models)
print c_resi_models
 
# Write count result to file
for key, val in c_resi_models.items():
    f.write( "# ; " + str(key) + " ; " + str(val) + "\n" )

#Close the file 
f.close()

##################
# Cluster file for selection residues.
#################

# Load the initial state setup
state.load(state='ini_setup.bz2', force=True)

# Cluster residues
f = open(cluster_file, 'r')
for line in f:
    if line[0] == "#":
        continue
    else:
        spinid = line.split(";")[0].strip()
        spinmodel = line.split(";")[1].strip()

    # Deselect those spins not showing exchange for further analysis.
    if spinmodel == "No Rex":
        deselect.spin(spin_id=spinid, change_all=False)
    else:
        relax_disp.cluster('model_cluster', spinid)
        
f.close()

# Check which are clustered
print cdp.clustering

# Check for selected/deselected spins.
for spin, spin_id in spin_loop(return_id=True, skip_desel=False):
    print spin_id, spin.select

# Save the program state before run.
state.save('ini_setup_cluster.bz2', force=True)

##################
# Run cluster analysis
#################

# Set settings for run.
pipe_name = 'base pipe'; pipe_bundle = 'relax_disp'
MODELS = ['R2eff', 'No Rex', 'TSMFK01']
GRID_INC = 21; MC_NUM = 50; MODSEL = 'AIC'

# Execute
Relax_disp(pipe_name=pipe_name, pipe_bundle=pipe_bundle, results_dir=results_directory, models=MODELS, grid_inc=GRID_INC, mc_sim_num=MC_NUM, modsel=MODSEL, pre_run_dir=pre_run_directory)

And the just start relax with

relax_disp relax_5_cluster.py -t log_relax_5_cluster.log

See also