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Published byCameron Roger Reynolds Modified over 9 years ago
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Creating an Automated Blood Vessel Diameter Tracking Tool Peter McLachlan Department of Medical Biophysics The University of Western Ontario Supervisor: Dr. Graham Fraser Co-supervisor: Dr. Dwayne Jackson
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Currently, diameters are measured in ImageJ In vivo video stills
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A graduate student may perform: 1 experiments / week ~10 000 images / experiment (conservatively!) ~5 seconds per measurement with ImageJ = 700 person hours per year Very time consuming! This is twice the time to run the experiment This process needs to be automated
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Sarelius: purely horizontal vessels and sub-regions successful but limited to pre-aligned vessels Our goal: vessels at any orientation more general sub-regions: can vary the position wrt the input points
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1.Image Registration In vivo microscopic sequences of blood flow Minimize motion in sequence frames 2.Vessel Diameter Measurement Automated over video sequence
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In vivo microvessel video User inputs initial diameter seed points Image Registration Track input points over sequence Output diameter measurements Outline of programming tasks:
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Consecutive frames experience tissue motion Breathing Response to experimental intervention
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Correlation amplitude plotted versus position (x,y) Best overlap: at the position of maximum similarity Calculate offset of frame to reference from this Repeat for every frame
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Correlation Amplitude: how good is the match
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1.Image Registration Minimize tissue motion in video 2.Vessel Diameter Measurement Automate over video sequence
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User inputs two seed points in first image Diameter is distance between two points
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Program creates sub-regions around seed points Compute similarity of current frame sub-region to reference frame sub-region
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Peak cross-correlation amplitude how far the regions have moved Shift seed points by offset and re-calculate diameter d
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First frame with seed points from user Create sub-regions based on input points from previous frame Final frame? Go to next frame Calculate new points (and diameter) from peak cross- correlation offset End Yes No
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Obtained expert manual diameter measurements The gold standard Compare these to diameters generated by the program with the same initial seed points
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Expert manual measurement
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Successfully stabilized tissue motion in sequences Software is capable of making automated diameter measurements Resulting diameter measurements are on average within 1.5 microns of the gold standard Some post-hoc analysis and selection of results may be necessary (to identify periods of poor measurements)
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Test software on other sequences and imaging techniques Test with other similarity metrics Expand functionality to measure multiple vessels and ROIs along a single vessel
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Dr. Graham Fraser Dr. Dwayne Jackson Nicole Novielli
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Lee, J., Jirapatnakul, A., Reeves, A., Crowe, W., Sarelius, I. Vessel Diameter Measurement from Intravital Microscopy Annals of Biomedical Engineering, Vol. 37, No. 5, May 2009 (2009) pp. 913–926 Brown, L. G. A survey of image registration techniques. ACM Comput. Surv. 24(4):325–376, 1992. J. P. Lewis. Fast Normalized Cross-Correlation. Industrial Light & Magic
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Optimize correlation amplitude Test software on other sequences and imaging techniques Test various size and position of sub-regions Test with other similarity metrics Expand functionality to measure multiple vessels and ROIs along a single vessel
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Non-expert Measurement
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Video of tracked diameters:
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Automated method J. Lee et al., Annals of Biomedical Eng., V. 37. No. 5:913–926, 2009
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Pick sub-regions in an image Compare relative positions with respect to reference Best position: where regions have the highest similarity
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