1 / 48

MSmcDESPOT : Follow-Ups

MSmcDESPOT : Follow-Ups. November 1, 2010. Where We Are. Baseline cross-section conclusions: DVF is sensitive to early stages of MS where other measures are not DVF correlates with EDSS (R^2 = 0.37 in NAWM)

kairos
Download Presentation

MSmcDESPOT : Follow-Ups

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. MSmcDESPOT: Follow-Ups November 1, 2010

  2. Where We Are • Baseline cross-section conclusions: • DVF is sensitive to early stages of MS where other measures are not • DVF correlates with EDSS (R^2 = 0.37 in NAWM) • The addition of a quantitative measure significantly improves EDSS prediction compared to volumetric atrophy measures alone • 1yr follow-up scans • 23/26 patients scanned • 5/26 normals scanned and more incoming

  3. Patient Overview

  4. Patient Overview

  5. Patient Overview

  6. Patient Overview

  7. Patient Overview

  8. Correlation Plots

  9. Correlation Plots

  10. Discussion • Our correlations for DV and DVF were consistent between the baseline and follow up • Change in DV has a large scale • Could mean we’re quite sensitive to changes in the brain • Need to quantify how much DV varies due to repeatability error • DV increased for almost every patient, only P020 had a drop (not shown because no EDSS data) • Currently, we unexpectedly observe a negative correlation between change in EDSS and change in DV

  11. Normals • N004, N008, N012 • First glimpse at the repeatability of the DV measure and mcDESPOT-derived MWF maps • We would like to see little change between the baseline and follow up MWF maps

  12. Correlations

  13. Correlations

  14. Correlations

  15. Histograms

  16. Histograms

  17. Histograms

  18. DV • Using the old baseline mean and std. dev. MWF maps, computed DV for the new normal scans • Disconcertingly large increase in DV • Why? • Biased using the baseline mean derived from normals to get their baseline DV • Follow-up scan quality?

  19. Baseline SPGR_fa13 Images

  20. 1yr SPGR_fa13 Images

  21. Discussion • I would argue that the reduction in quality in the follow-up scans is comparable between the normals and P022 • Are there ways to deal with the bias? • Cross-validation • Try many random subsets of the normal population to generate mean and std. dev., choose the map pair that minimizes total DV among all normals • Ensemble methods • Use all the map pairs and for each, generate a DV mask, then a voxel is considered demyelinated only if a majority of the DV masks have it as demyelinated

  22. MSmcDESPOT: Looking at Maps October 29, 2010

  23. Motivation • Thus far we’ve been studying DV and DVF, which collapses all of our data into a single metric for each patient • One of the key advantages of mcDESPOT is that it acquires whole brain maps • We should start looking at our data as whole brain maps • Perhaps different subtypes of MS are associated with different spatial distributions of MWF

  24. Baseline: Mean MWF Normals

  25. Baseline: Mean MWF CIS

  26. Baseline: Mean MWF RRMS

  27. Baseline: Mean MWF SPMS

  28. Baseline: Mean MWF PPMS

  29. Discussion • There’s clearly a drop in overall MWF as we progress from CIS to RR to SP to PP • Can’t really discern any favoring for locations of low MWF other than around the ventricles • DV maps would probably show this better than anything, should generate a probabilistic DV map

  30. Baseline: Std. Dev. MWF Normals

  31. Baseline: Std. Dev. MWF CIS

  32. Baseline: Std. Dev. MWF RRMS

  33. Baseline: Std. Dev. MWF SPMS

  34. Baseline: Std. Dev. MWF PPMS

  35. Discussion • In normals, MWF has a much lower standard deviation in WM areas • RR patients seem to have an overall lower standard deviation than CIS • One interpretation might be that CIS patients are only starting to lose myelin so there is a lot of variability among them • PP is by far the worst, the variance of MWF among the subjects seems to be the same throughout the brain • This means that the amount and location of myelin lost among PP patients varies wildly • Of course standard deviation is a group based measure, not sure about the direct clinical application for one patient • The 1yr cross-section maps looks like the baseline

  36. Difference Maps • For each subject, the difference map was computed as MWF_1yr – MWF_baseline • Then the mean difference between patients was computed for each subtype as well as the standard deviation of the differences • The following maps may be hard to look at, they are highly non-traditional and probably it’s the first time anyone has ever seen such images

  37. Difference: Mean CIS

  38. Difference: Mean RRMS

  39. Difference: Mean SPMS

  40. Difference: Mean SPMS

  41. Discussion • There is a clear different between CIS and RR, with RR patients having much larger drops in MWF • Actually, I feel like RR patients have the most actively changing MWF among all the subtypes looking at these images • Consistent with early stages being the most active? Have to check the ages of our RR patients.

  42. Ratio Maps • For each subject, the ratio map was computed as MWF_1yr/MWF_baseline • Then the mean ratio between patients was computed for each subtype as well as the standard deviation of the ratios • These maps are ugly, it is tough to tell what’s going on • Ignore the white fringing around the brain, caused by regions of low MWF • Inside the brain, they would indicate places where lesions with low MWF are • Maybe even they show lesions that have remyelinated a little as (not as small MWF)/(really small MWF) = big number

  43. Ratio: Mean CIS

  44. Ratio: Mean RRMS

  45. Ratio: Mean SPMS

  46. Ratio: Mean PPMS

  47. Discussion • Hard to decipher these • CIS seems the most uniform, so the percent change in MWF is perhaps low, which may not be clear based on just the mean difference maps

  48. Thoughts • This is more data than someone can humanly process, need to identify key regions • Unsupervised exploratory data mining techniques could be worth pursuing, since our outcomes of EDSS and ΔEDSS are problematic • Goal here is to find patterns in the data rather than trying to predict an outcome

More Related