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Finding and exploiting correspondences in Drosophila embryos. Charless Fowlkes and Jitendra Malik UC Berkeley Computer Science. ?. Motivation for combining measurements. Average noisy flouresence data over multiple embryos High throughput
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Finding and exploiting correspondences in Drosophila embryos Charless Fowlkes and Jitendra Malik UC Berkeley Computer Science
Motivation for combining measurements • Average noisy flouresence data over multiple embryos • High throughput • N versus N2 hybridizations to capture colocation of N gene products • Visualization of composite expression map • Study shape of expression patterns
Sources of Variation • Not so interesting: • Staining • Shrinking • Spinning • Squashing • Staging • Interesting: • Biological Variation
Overview • Finding Correspondences • Nuclear segmentation • Deformable matching • Exploiting Correspondences • Preliminary results • Discussion
x-y x-y x-z Segmenting Nuclei [C. Luengo, D. Knowles] ~200µm ~500µm Embryo is approximately 500µm by 200µm and contains about 5000 to 6000 nuclei
Mesh generation • Point cloud doesn’t capture the blastoderm topology. Locally, it is a 2D sheet of cells • Utilize off the shelf tools from computational geometry [Kolluri et al, 2004]
Clyindrical Projection Dorsal Ventral Dorsal Anterior Posterior
Overview • Finding Correspondences • Nuclear segmentation • Deformable matching • Exploiting Correspondences • Preliminary results • Discussion
Cij = disimilarity of local descriptor for points i and j Dij = distance between points i and j minimize : Σij (Cij + λDij) • Xij subject to : ΣiXij = 1 Σj Xij = 1 λ sets the relative importance of distance versus shape context match Correspondence as optimization Xij = 1 if point i is matched to point j 0 otherwise i j
Problem: correspondence may not be smooth • Find correspondence by optimizing Xij • Smoothly warp source embryo to bring into alignment with corresponding points • Repeat… Solution: iteratively correspond and warp
Overview • Finding Correspondences • Nuclear segmentation • Deformable matching • Exploiting Correspondences • Preliminary results • Composite Expression Map • Nuclear Density Map • Shape • Discussion
Preliminary Results • 34 embryos stained for ftz and one other gene product • Choose a target embryo • Find correspondences with remaining embryos and “transfer” measurements
Building a composite expression map Source Embryos Target Embryo X Y Push expression levels forward thru correspondence function X
FTZ average after coarse alignment FTZ average after detailed matching
ftz eve snail kni hb Composite Map: View #1
ftz eve snail kni hb Composite Map: View #2
Building a nuclear density map X Y Push average nuclear density forward thru correspondence function X
Shape Analysis X-1 Y-1 Pull back selected region thru inverse correspondence function.
Current/Future Work • Verifying the correspondences are biologically “correct” • Analysis of variation in shapes of expression patterns • Hybridization experiment design
Hybridization Design Sna Kni Hb Ftz Slp Eve
Hybridization Design Eve Hb Ftz Sna Sna Sna Kni Slp Kni Hb Hb Ftz Ftz Slp Eve Eve • Can build composite map from any connected graph • Error accumulates so diameter should be small • Some genes provide more powerful constraints than others