Hi Bill, 
 
thanks for your kind reply. I will do a search with your keywords. 
 
I cannot commit to a conference yet, but if you have a link, I'll look into it. 
Classification is only part of what I do. My goal is patient-specific surgery 
simulation, and that entails computing a tissue map from CT and occasionally 
co-registered MR, as well as meshing tissues to synthesize a biomechanical 
response. Whether I go also depends where I am at the time: for a host of 
reasons it's trickier if I am still in Leipzig then. 
 
Thanks again for your help. 
 
Cheers,
 
Michel

________________________________

From: Classification, clustering, and phylogeny estimation on behalf of William 
Shannon
Sent: Thu 7/26/2007 10:12 PM
To: [email protected]
Subject: Re: using features which may be null for some classes


Two thoughts (based on my 2 minutes of understanding of this problem from 
reading your email):

1. It seems that the 0 values are important and indicate soft tissue.  I am not 
sure why you couldn't use these discriminators.  If they are 0 in all samples 
then they won't impact the classifier, if 0 in some then maybe you can classify 
by these values.

2. It sounds like the data are images and I wonder if work on fnctional data 
analysis would be useful.  Search the internet on RAMSAY STATISTICS MONTREAL  
and you will get to his web page and a link to the book on functional data 
analysis.


DO YOU WANT TO COME TO ST LOUIS NEXT JULY 5-7 FOR THE 2008 ANNUAL MEETING OF 
THE CLASSIFICATION SOCIETY AND TALK ABOUT YOUR WORK????


Bill

"Audette, Michel" <[EMAIL PROTECTED]> wrote: 

        Hi Bill, 
         
        thanks for your kind reply. One feature is CT data of the head, while 
the second is a sheetness measure, based on a paper by DescĂ´teaux
        Bone enhancement filtering: application to sinus bone segmentation and 
simulation of pituitary surgery
         
www-sop.inria.fr/odyssee/team/Maxime.Descoteaux/docs/descoteaux_miccai05.pdf  
        It detects locally curviplanar tissues at various scales, and in fact 
the scale coinciding with the maximum sheetness value is also stored. 
         
        This sheetness data is a volume image, and because of the way it is 
output, using a minc volume where reals are stored as shorts with a scaling 
factor, any value less than 0.001 is simply output as null in these volumes. So 
much of soft tissue in the head, except skin which is in fact somewhat 
sheetlike, as well as background, has a null value, where cranial bones have a 
high value. 
         
        If I use a minimally supervised classification algorithm, I have to do 
it in a manner where one of the features has zero values for some tissues, and 
non-zero values for others, unless I replace those zero values by a synthetic 
value for mean and variance, in keeping with that .001 threshold. 
         
        What do you think?
         
        Cheers, 
         
        Michel
         
        Michel Audette, Ph.D.  
        Innovation Center Computer Assisted Surgery (ICCAS)  
        Philipp-Rosenthal-Strasse 55 
        Leipzig, Germany 
        Phone: ++49 (0) 341 / 97 - 1 20 13 
        Fax: ++49 (0) 341 / 97 - 1 20 09 
         
         
        
________________________________

        From: Classification, clustering, and phylogeny estimation 
[mailto:[EMAIL PROTECTED] On Behalf Of William Shannon
        Sent: July 25, 2007 6:59 PM
        To: [email protected]
        Subject: Re: using features which may be null for some classes
         
        To you explain the data a little more?
        
        Bill Shannon
        
        
        "Audette, Michel" <[EMAIL PROTECTED]> wrote:
        Dear all, 
        
        I am interested in implemented a semi-supervised clustering method, 
i.e.: making use of a small set of training points, to classify tissues of the 
head visible in CT data. I would like not only to use CT intensity as a 
feature, but a measure of sheet-like structure that correlates with thin bone, 
and may assist the detection of thin bone structures that are otherwise 
undiscernible from soft tissue, due to partial volume effects that blurr 
intensities together. However, this latter feature, sheetness, produces a null 
value for most tissue classes. 
        
        Can anyone suggest a means of integrating two features together, CT and 
sheetness, in a clustering algorithm, given that one of them appears null for 
several classes? 
        
        Best regards, 
        
        Michel Audette, Ph.D.
        Innovation Center Computer Assisted Surgery (ICCAS)
        Philipp-Rosenthal-Strasse 55
        Leipzig, Germany
        Phone: ++49 (0) 341 / 97 - 1 20 13
        Fax: ++49 (0) 341 / 97 - 1 20 09
        
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