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I would agree with Nathan,
MATLAB has blind deconvolution which contrary to usual belief can work on N-dimensional data (http://blogs.mathworks.com/steve/2008/03/17/multidimensional-image-processing/#comment-20530). It will require that you generate a 3D intensity distribution like PSF. deconvolution algorithms are more sensitive to shape and size of PSF rather than actual values, so even specifying a 3D pattern of 1s should give a good start with blind deconvolution algorithm. Best shalin On Tue, Apr 1, 2008 at 4:17 AM, Nathan <[hidden email]> wrote: Search the CONFOCAL archive at http://listserv.acsu.buffalo.edu/cgi-bin/wa?S1=confocal Hi Jon, -- ~~~~~~~~~~~~~~~~~~~~~~~~~ Shalin Mehta mobile: +65-90694182 blog: shalin.wordpress.com ~~~~~~~~~~~~~~~~~~~~~~~~~~ Bioimaging Lab, Block-E3A, #7-10 Div of Bioengineering, NUS Singapore 117574 website: http://www.bioeng.nus.edu.sg/optbioimaging/colin/index.html Liver Cancer Functional Genomics Lab, #6-05 National Cancer Centre, Singapore 169610 ~~~~~~~~~~~~~~~~~~~~~~~~~~~ |
Search the CONFOCAL archive at
http://listserv.acsu.buffalo.edu/cgi-bin/wa?S1=confocal I am not too enthousiastic about blind deconvolution. When the psf is rather distorted your object <PSF look like the actual PSF = distorted, so not a nice american football. The centroids will be shifted likewise and can influence the co-localization analysis (when it's based on centroids that is). Also it can generate some very weird deconvolution artefacts. As you are scanning you perfect images of your sample it is not too much more trouble to do few more scans: to determine the psf and the chromatic shift. Invitrogen (no commerical interest) used to sell bead-samples ready for use (don't know if they still sell them). But it is easy to make your own bead-samples. Mariette Dr. Kemner-van de Corput MGC - Dept. of Cell Biology & Genetics Erasmus Medical Center Dr. Molewaterplein 50, 3015 GE Rotterdam POB 2040, 3000 CA Rotterdam, The Netherlands Op Di, 1 april, 2008 3:10 am, schreef Shalin Mehta: > Search the CONFOCAL archive at > http://listserv.acsu.buffalo.edu/cgi-bin/wa?S1=confocal > > I would agree with Nathan, > > MATLAB has blind deconvolution which contrary to usual belief can work on > N-dimensional data ( > http://blogs.mathworks.com/steve/2008/03/17/multidimensional-image-processing/#comment-20530). > > > It will require that you generate a 3D intensity distribution like PSF. > deconvolution algorithms are more sensitive to shape and size of PSF > rather > than actual values, so even specifying a 3D pattern of 1s should give a > good > start with blind deconvolution algorithm. > > Best > shalin > > On Tue, Apr 1, 2008 at 4:17 AM, Nathan <[hidden email]> wrote: > >> Search the CONFOCAL archive at >> http://listserv.acsu.buffalo.edu/cgi-bin/wa?S1=confocal Hi Jon, >> >> If your university/department has a license, you might find Matlab's >> deconvblind, deconvwnr, deconvreg, and deconvlucy functions useful. They >> require basic Matlab skill and some knowledge about how to generate >> appropriate input PSFs, but I've used them successfully a few times. >> >> Best, >> Nate >> >> >> Nathan O'Connor >> Graduate Student >> Physiology and Biophysics >> Weill Medical College of Cornell University >> NY, NY 10021 >> >> >> On Mon, Mar 31, 2008 at 3:40 PM, John Oreopoulos < >> [hidden email]> wrote: >> >> > Search the CONFOCAL archive at >> > http://listserv.acsu.buffalo.edu/cgi-bin/wa?S1=confocal >> > >> > Does anyone know of any freely available software that can deconvolve >> > image data? I am only aware of one ImageJ deconvolution plugin that >> does a >> > reasonable job under certain circumstances. I'd be interested to know >> if >> > anyone has created any others. >> > >> > >> > John Oreopoulos, BSc, >> > PhD Candidate >> > University of Toronto >> > Institute For Biomaterials and Biomedical Engineering >> > Centre For Studies in Molecular Imaging >> > >> > Tel: W:416-946-5022 >> > >> > >> > On 31-Mar-08, at 3:02 PM, Mayandi Sivaguru wrote: >> > >> > Search the CONFOCAL archive at >> > http://listserv.acsu.buffalo.edu/cgi-bin/wa?S1=confocal >> > Valeria, my understanding is that you will be better off with >> > deconvolving all your optical microscope data sets (widefield, >> confocal and >> > etc) in general. With reference to colocalization analysis, you first >> sample >> > the data following sequential scans (never simultaneous for the coloc >> > analysis) Nyquist sampling in 3D (I would personally suggest a bit >> over >> > sampling won't hurt, if you do not experience significant >> photobleaching), >> > and then a deconvolution is a must with a plane by plane analysis. >> > Deconvolution will not change a "non-cocolalizing" data points in to >> > "colocalizing" data points. But it can be otherwise, a colocaizing >> data >> > points in raw data could become in fact not colocalizing anymore after >> > deconvolution. But the parameters affecting your conlusion greatly is >> at >> > much before you deconve the data i.e., the sample preparation, >> fixation, >> > blocking, selection of antibodies, fluorophores, scan parameters and >> so on. >> > Shiv >> > >> > >> > At 10:05 AM 3/31/2008, you wrote: >> > >> > Search the CONFOCAL archive at >> > http://listserv.acsu.buffalo.edu/cgi-bin/wa?S1=confocal >> > >> > Hi, >> > >> > This question just fit in perfectly on what I am trying to find out >> > about >> > colocalization. >> > >> > When and why do I need do deconvolve pictures collected with a >> confocal >> > in >> > order to be sure about my colocalization (or not colocalization) >> > results? >> > >> > To be specific: I am working on pre and post-synaptic proteins. >> > >> > Thanks >> > >> > Valeria >> > >> > >> > >> > > Search the CONFOCAL archive at >> > > http://listserv.acsu.buffalo.edu/cgi-bin/wa?S1=confocal >> > > >> > > Colocalization based upon "yellow" could be accurate, if and only >> if, >> > > the intensities are comparable and pixel (voxel) quantities in the >> > > suspected colocalized volumes are in roughly equal. . Otherwise, >> > > the yellow is masked by the predominate channel. Something small, >> > > like lysosomes, would need to be sampled properly. Colocalization >> > > could be masked by blur unless deconvolved, even if images are >> > > collected with a confocal. >> > > On Feb 7, 2007, at 1:05 PM, Marc Thibault wrote: >> > > >> > >> Search the CONFOCAL archive at >> > >> http://listserv.acsu.buffalo.edu/cgi-bin/wa?S1=confocal >> > >> >> > >> Hi all, >> > >> >> > >> It seems that in many papers from biologists or chemists, and i'm >> > >> talking >> > >> high impact factors journals, colocalisation of two elements is is >> > >> often >> > >> assumed by simple color superposition (ex: red and green fluoresce >> > >> yellow >> > >> when colocalising), while microscopists (many physisists I suppose) >> > >> seem to >> > >> need a more complex software-based confirmation. >> > >> Is it ok, when using high end equipment and corrected objectives >> > >> (apochromat >> > >> with high NA for ex.), to assume colocalisation by color >> > >> superposition, >> > >> especially when fluorophore are confined to small volume entities, >> > >> like >> > >> lysosomes ? >> > >> >> > >> Thanks >> > >> >> > >> Marc >> > > >> > >> > Mayandi Sivaguru, PhD, PhD >> > Microscopy Facility Manager >> > 8, Institute for Genomic Biology >> > University of Illinois at Urbana-Champaign >> > 1206 West Gregory Dr. >> > Urbana, IL 61801 USA >> > >> > Office: 217.333.1214 >> > Fax: 217.244.2496 >> > [hidden email] >> > http://core.igb.uiuc.edu >> > >> > >> > >> > >> >> > > > -- > ~~~~~~~~~~~~~~~~~~~~~~~~~ > Shalin Mehta > mobile: +65-90694182 > blog: shalin.wordpress.com > ~~~~~~~~~~~~~~~~~~~~~~~~~~ > Bioimaging Lab, Block-E3A, #7-10 > Div of Bioengineering, NUS Singapore 117574 > website: http://www.bioeng.nus.edu.sg/optbioimaging/colin/index.html > > Liver Cancer Functional Genomics Lab, #6-05 > National Cancer Centre, Singapore 169610 > ~~~~~~~~~~~~~~~~~~~~~~~~~~~ > |
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