Calculate 2D class averages: Difference between revisions
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* Often 25-50 iterations are necessary before the refinement converges to a stable solution. Note there is currently no convergence criterion implemented, so the user is responsible for monitoring the convergence. | * Often 25-50 iterations are necessary before the refinement converges to a stable solution. Note there is currently no convergence criterion implemented, so the user is responsible for monitoring the convergence. | ||
* The number of classes is the most important parameter. Often one performs multiple calculations with different values. | * '''The number of classes is the most important parameter'''. Often one performs multiple calculations with different values. | ||
* The regularisation parameter determines the relative weight between the experimental data and the prior. Bayes' law dictates it should be 1, but better results are often obtained using slightly higher values (e.g. 2-4), especially when dealing with cryo-data. | * The regularisation parameter determines the relative weight between the experimental data and the prior. Bayes' law dictates it should be 1, but better results are often obtained using slightly higher values (e.g. 2-4), especially when dealing with cryo-data. |
Revision as of 14:53, 28 September 2011
Using the GUI
For calculating reference-free 2D class averages, select the run-type of 2D averaging
from the drop-down menu at the top of the GUI.
I/O tab
CTF tab
Optimisation tab
- Often 25-50 iterations are necessary before the refinement converges to a stable solution. Note there is currently no convergence criterion implemented, so the user is responsible for monitoring the convergence.
- The number of classes is the most important parameter. Often one performs multiple calculations with different values.
- The regularisation parameter determines the relative weight between the experimental data and the prior. Bayes' law dictates it should be 1, but better results are often obtained using slightly higher values (e.g. 2-4), especially when dealing with cryo-data.
- The particle diameter (in Angstroms) serves to define a soft spherical mask that will be applied to the experimental images to reduce their background noise. If solvent flattening is set to Yes, then also the references will be masked using the same spherical mask (or using a user-provided one under the
solvent mask
option).
Sampling tab
In-plane angular sampling rates of 5 degrees are enough for most applications. Translational search ranges may depend on how well-centered the particles were picked, but often 10 pixels will do the job (translational searches in subsequent iterations are centered at the optimal translation in the previous one, so that particles may "move" much more than the original search range during the course of an entire refinement. Note that pre-centering prior to RELION refinement is not necessary, and also not recommended (it often messes up the Gaussian distribution of origin offsets).
Running tab
It is unlikely one needs threads for 2D class averaging, as this typically takes only modest amounts of memory. Therefore, in case multiple CPUs are available for this task, use the more efficient MPI parallelisation.