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Work in Magdeburg. Wenjing Li 2012-11-23. Outline. Age and gender effects Graph analysis on MDD patients Cortical thickness – MRS correlation. Outline. Age and gender effects Graph analysis on MDD patients Cortical thickness – MRS correlation. Age and gender effects. Aim
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Work in Magdeburg Wenjing Li 2012-11-23
Outline Age and gender effects Graph analysis on MDD patients Cortical thickness – MRS correlation
Outline Age and gender effects Graph analysis on MDD patients Cortical thickness – MRS correlation
Age and gender effects • Aim • To investigate the effects of age and gender on subcortical structures in healthy subjects • Why subcortical structures? • Previous studies have reported subcortical structures are involved in psychiatric disorders. • No studies had reported gender specificity of age effects on subcortical structures by then.
How was this work done? • 2010.6 • Generation of the idea: gender differences of age trajectories on brain structures • 2010.7 – 2010.10 • Data selection • Data processing and analysis for age and gender effects on subcortical structures • 2010.11 – 2011.12 • First draft finished
How was this work done? • 2011.1 – 2011.6 • Modifying and polishing • First submission to HBM in June • 2011.8 • Decision of the HBM: Reversible rejection • 2011.9 – 2012.4 • Reanalysis based on the reviews • Re-construct the manuscript • Resubmission to HBM in April.
How this work was done? • 2012.5 • Decision of the HBM: major revision • 2012.5 – 2012.6 • Revision and resubmission • 2012.7 • Decision of the HBM: accepted
First version of this paper Data: 78 subjects, including 38 males and 38 females, age range: 19~70 years
Reviews for the first version • Reviewer 1: • Lots of tests – correction for multiple comparisons • Correction for TBV instead of ICV? • Small sample size • Reviewer 2: • Recommended to publish but with some minor problem.
Revision • Correction for multiple comparisons? • Combine the left and right subcortical structures. • Adjusted Bonforronicorrection • Correction for TBV or ICV? • We redid the analysis using TBV as covariates. • Small sample size • Rebuttal from the statistics and results.
Outline Age and gender effects Graph analysis on MDD patients Cortical thickness – MRS correlation
Distance penalty Regions that are spatially close have higher correlation coefficients whereas more distinct regions correlate less strongly. CIJ = CIJ.*log(distmat).^2; % CIJ is modified by ln.^2 of the distance
Outline Age and gender effects Graph analysis on MDD patients Cortical thickness – MRS correlation
CTh – MRS correlation • Datasets: • 46 healthy controls • 20 MDD and 20 healthy controls • Processing: • Freesurfer • Measurement: • Cortical thickness • MRS: glx (glu+gln), naa and ins in pgACC, dACC and dlPFC
Analysis • Local correlation: • Correlate cortical thickness in the MRS region itself with its corresponding MRS value. • Global correlation: • Correlate cortical thickness throughout the whole brain with the MRS values.
Models (for 46 HC) • Raw model: • CTh ~ MRS • Corrected model by ICV • CTh ~ MRS + ICV • Corrected model by further adding age and gender • CTh ~ MRS + ICV + age + gender
Models (for 20MDD&20HC) • Besides the models using for 46HC, we further add the “Group” to test for the group interaction. • Raw model: • CTh ~ Group + MRS • Corrected model by ICV • CTh ~ Group + MRS + ICV • Corrected model by further adding age and gender • CTh ~ Group + MRS + ICV + age + gender
Other work Correlation between graph metrics and MRS values. Extract the mean fALFF values within the detected ROI, and then correlate it with MRS values. FFT analysis