1 / 18

Developments in xia2

Developments in xia2. Graeme Winter CCP4 Dev Meeting 2008. What is xia2?. Automated robust data reduction and analysis Thorough – takes additional steps when many users wouldn’t bother In: images from e.g. synchrotron beamline

holden
Download Presentation

Developments in xia2

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Developments in xia2 Graeme Winter CCP4 Dev Meeting 2008

  2. What is xia2? • Automated robust data reduction and analysis • Thorough – takes additional steps when many users wouldn’t bother • In: images from e.g. synchrotron beamline • Out: measurements for downstream phasing via e.g. HAPPy, Mr BUMP, Phenix…

  3. Recent changes • Inclusion in CCP4 6.1 • Many command line options • Integrated with AutoRickshaw (EMBL H) • Robust lattice determination • Support for Q270, Pilatus • Zero input option

  4. 3 Month plans • BioXHit ends in June => so does xia2 development • Include robust system to decide resolution limits etc (next slides) • Finish release 0.3.0 to go with release version of CCP4 6.1

  5. Chef Let’s cook them books!

  6. What is chef? • A tool to help you use the best of the reflections you have • Uses unmerged intensities • Uses robust statistics to decide: • d*min for different functions (resolution) • Dmax for different functions (dose) • Additional program “doser” to add dose information to unmerged MTZ files

  7. In • MTZ files from scala with “output unmerged” set • DOSE / TIME information for doser: • BATCH 1 DOSE 2.5 TIME 2.5 • BATCH 2 DOSE 7.5 TIME 8.2 • …

  8. Running doser hklin TS03_12287_chef_INFL.mtz hklout infl.mtz < doser.in doser hklin TS03_12287_chef_LREM.mtz hklout lrem.mtz < doser.in doser hklin TS03_12287_chef_PEAK.mtz hklout peak.mtz < doser.in chef hklin1 infl.mtz hklin2 lrem.mtz hklin3 peak.mtz << eof isigma 2.0 resolution 1.65 range width 30 max 1500 print comp rd rdcu anomalous on labin BASE=DOSE eof

  9. Output • Resolution vs. dose • Completeness vs. dose for each data set

  10. Methods • Based on “new” cumulative-pairwise R factor RCP: • Inspired by Rd in Diederichs (2006)

  11. And RCP means..? • How well do the measurements up to dose D agree? • Closely related to I/σ • Reasonably robust as it does not depend on sigma estimates or means • Gets bigger when systematic variation contributes to spread

  12. Requirements • Radiation damaged MAD data – what do I want for: • Substructure determination – big anomalous / dispersive signal • Phase calculation – well measured ΔF • Phase extension & improvement – good F • Refinement – good F • 85% Limit RCP < R(I/σ) + S(I/σ, Nm, Nu)

  13. Example • JCSG TB0541 – heavily radiation damaged… • 3 wavelength MAD – INFL + LREM, PEAK • Massive signal • P43212, 90 degrees * 3 => plenty of data • Chef says “use data to 1.65A, D=~600s”

  14. Before (INFL) For TS03/12287/INFL High resolution limit 1.66 7.41 1.66 Low resolution limit 52.7 52.7 1.7 Completeness 95.8 98.4 72.5 Multiplicity 6.4 5.1 4.2 I/sigma 13.1 25.6 2.2 Rmerge 0.085 0.045 0.654 Rmeas(I) 0.117 0.077 0.808 Rmeas(I+/-) 0.099 0.054 0.816 Rpim(I) 0.045 0.032 0.374 Rpim(I+/-) 0.051 0.029 0.478 Wilson B factor 19.372 Anomalous completeness 95.5 100.0 72.3 Anomalous multiplicity 3.4 3.5 2.1 Anomalous correlation 0.546 0.695 0.032

  15. After (INFL – first 60 degrees) For TEST001/12287/LREM High resolution limit 1.63 7.3 1.63 Low resolution limit 52.56 52.56 1.68 Completeness 92.6 98.3 62.9 Multiplicity 4.1 3.3 2.4 I/sigma 13.6 26.2 2.1 Rmerge 0.052 0.033 0.317 Rmeas(I) 0.065 0.041 0.504 Rmeas(I+/-) 0.066 0.043 0.445 Rpim(I) 0.031 0.021 0.306 Rpim(I+/-) 0.041 0.027 0.311 Wilson B factor 18.731 Anomalous completeness 91.8 99.4 59.4 Anomalous multiplicity 2.2 2.2 1.3 Anomalous correlation -0.227 0.071 0.01

  16. Why improvement? • Limit radiation damage => σF more meaningful • Limit damage => ΔF better • Without systematic damage get higher resolution for given I/σ

  17. However… • Pipe MTZ through scaleit / solve / cad / resolve / Arp/Warp and get very similar results – slight improvement though • This is most interesting, because it means that 55% of the “data” did not add to the quality of the result

  18. Plans • Currently writing this up for J. Appl. Cryst • Chef will be included in CCP4 6.1 • Next: include this as part of xia2 (makes 0.3.0) • Extend chef to make decisions about anomalous / dispersive differences

More Related