An automated procedure to properly handle digital images in large scale tissue microarray experiments.

TitleAn automated procedure to properly handle digital images in large scale tissue microarray experiments.
Publication TypeJournal Article
Year of Publication2005
AuthorsDell'Anna R, Demichelis F, Barbareschi M, Sboner A
JournalComput Methods Programs Biomed
Volume79
Issue3
Pagination197-208
Date Published2005 Sep
ISSN0169-2607
KeywordsAlgorithms, Automation, Image Processing, Computer-Assisted, Tissue Array Analysis
Abstract

Tissue Microarray (TMA) methodology has been recently developed to enable "genome-scale" molecular pathology studies. To enable high-throughput screening of TMAs automation is mandatory, both to speed up the process and to improve data quality. In particular, in acquiring digital images of single tissues (core sections) a crucial step is the correct recognition of each tissue position in the array. In fact, further reliable data analysis is based on the exact assignment of each tissue to the corresponding tumor. As most of the times tissue alignment in the microarray grid is far from being perfect, simple strategies to perform proper acquisition do not fit well. The present paper describes a new solution to automatically perform grid location assignment. We developed an ad hoc image processing procedure and a robust algorithm for object recognition. Algorithm accuracy tests and assessment of working constraints are discussed. Our approach speeds up TMA data collection and enables large scale investigation.

DOI10.1016/j.cmpb.2005.04.004
Alternate JournalComput Methods Programs Biomed
PubMed ID15979757
Related Faculty: 
Andrea Sboner, Ph.D.

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