External Email - Use Caution Ah, I think I understand now, thanks. I've attached my contrast and FSGD file to confirm. In the FSGD file, the format for the classes are <group>_<sex>_<centre>.
Please let me know.

Thanks again,
Colleen

On 2018-05-04 09:49, C.P.E. Rollins wrote:
Hi,

Sorry for coming back to this, but I'm still confused about the issue
of having unbalanced classes. I thought that I could not remove the
class as you suggested since this would mean that the contrast
positive and negative values would no longer add up to 0.  For
instance if I remove only class "patient_centre2_female", then my
contrast would have 11 (-1) and 12 (1) as opposed to 12 and 12. Could
you please clarify?

Thanks again,
Colleen


On 2018-04-30 14:43, C.P.E. Rollins wrote:
I thought that I could not remove the class since this would mean that
the contrast positive and negative values would no longer add up to 0.
For instance if I remove only class "patient_centre2_female", then my
contrast would have 11 (-1) and 12 (1) as opposed to 12 and 12. Could
you please clarify?

Thanks again,
Colleen

-------- Original Message --------
Subject: Re: [Freesurfer] FSGD design for multi-centre study
Date: 2018-04-20 11:19
From: "C.P.E. Rollins" <cp...@cam.ac.uk>
To: Freesurfer <freesurfer@nmr.mgh.harvard.edu>

Thanks a lot for the explanation. The issue is that I don't think
Freesurfer will run a design for which there are no subjects for a
given class. So if I keep the classes (24 classes since 6 centres x 2
gender x 2 groups (patient vs. control), and have the contrast with 12
(-1) and 12 (1),
-1 -1 -1 -1 -1 -1 -1 -1 -1 -1 -1 -1 1 1 1 1 1 1 1 1 1 1 1 1 0
I get the error:
--------------------------------
ERROR: matrix is ill-conditioned or badly scaled, condno = 1e+08
--------------------------------
Possible problem with experimental design:
Check for duplicate entries and/or lack of range of
continuous variables within a class.

I'm assuming this is because there are no participants in, for
example, patient_centre2_female
Is there any way to get around this issue, or should I remove those
centres from my analysis (since I can't only remove
"patient_centre2_female", as this would make the contrast unbalanced
(positives and negatives would not add to the same number). I hope
this was clear but please let me know if it was not.

Thanks again,
Colleen
-1 -1 -1 -1 -1 -1 -1 -1 -1 0.75 0.75 0.75 0.75 0.75 0.75 0.75 0.75 0.75 0.75 
0.75 0.75 0
GroupDescriptorFile 1
Class NH_Male_MAN
Class NH_Female_MAN
Class NH_Male_EDB
Class NH_Male_CAM
Class NH_Female_CAM
Class NH_Male_UCL
Class NH_Male_KCL
Class NH_Female_KCL
Class NH_Male_BIR
Class H_Male_MAN
Class H_Female_MAN
Class H_Male_EDB
Class H_Female_EDB
Class H_Male_CAM
Class H_Female_CAM
Class H_Male_UCL
Class H_Female_UCL
Class H_Male_KCL
Class H_Female_KCL
Class H_Male_BIR
Class H_Female_BIR
Variables                       Age
Input   H_BMN001-002    H_Male_MAN      32
Input   H_BMN001-003    H_Male_MAN      19
Input   H_BMN001-006    H_Male_MAN      26
Input   H_BMN001-015    H_Male_MAN      30
Input   H_BMN001-040    H_Female_MAN    28
Input   H_BMN001-041    H_Female_MAN    20
Input   H_BMN001-042    H_Male_MAN      25
Input   H_BMN001-043    H_Male_MAN      20
Input   H_BMN001-044    H_Male_MAN      25
Input   H_BMN001-046    H_Male_MAN      21
Input   H_BMN001-055    H_Male_MAN      26
Input   H_BMN001-056    H_Male_MAN      22
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