| Literature DB >> 20879454 |
Tammy Riklin Raviv1, V Ljosa, A L Conery, F M Ausubel, A E Carpenter, P Golland, C Wählby.
Abstract
We present a novel approach for extracting cluttered objects based on their morphological properties. Specifically, we address the problem of untangling Caenorhabditis elegans clusters in high-throughput screening experiments. We represent the skeleton of each worm cluster by a sparse directed graph whose vertices and edges correspond to worm segments and their adjacencies, respectively. We then search for paths in the graph that are most likely to represent worms while minimizing overlap. The worm likelihood measure is defined on a low-dimensional feature space that captures different worm poses, obtained from a training set of isolated worms. We test the algorithm on 236 microscopy images, each containing 15 C. elegans worms, and demonstrate successful cluster untangling and high worm detection accuracy.Entities:
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Year: 2010 PMID: 20879454 PMCID: PMC3050593 DOI: 10.1007/978-3-642-15711-0_79
Source DB: PubMed Journal: Med Image Comput Comput Assist Interv