Title :
Framework for parsing, visualizing and scoring tissue microarray images
Author :
Rabinovich, Andrew ; Krajewski, Stan ; Krajewska, Maryla ; Shabaik, Ahmed ; Hewitt, Stephen M. ; Belongie, Serge ; Reed, John C. ; Price, Jeffrey H.
Author_Institution :
Dept. of Comput. Sci. & Eng., Univ. of California, La Jolla, CA
fDate :
4/1/2006 12:00:00 AM
Abstract :
Increasingly automated techniques for arraying, immunostaining, and imaging tissue sections led us to design software for convenient management, display, and scoring. Demand for molecular marker data derived in situ from tissue has driven histology informatics automation to the point where one can envision the computer, rather than the microscope, as the primary viewing platform for histopathological scoring and diagnoses. Tissue microarrays (TMAs), with hundreds or even thousands of patients´ tissue sections on each slide, were the first step in this wave of automation. Via TMAs, increasingly rapid identification of the molecular patterns of cancer that define distinct clinical outcome groups among patients has become possible. TMAs have moved the bottleneck of acquiring molecular pattern information away from sampling and processing the tissues to the tasks of scoring and results analyses. The need to read large numbers of new slides, primarily for research purposes, is driving continuing advances in commercially available automated microscopy instruments that already do or soon will automatically image hundreds of slides per day. We reviewed strategies for acquiring, collating, and storing histological images with the goal of streamlining subsequent data analyses. As a result of this work, we report an implementation of software for automated preprocessing, organization, storage, and display of high resolution composite TMA images
Keywords :
arrays; biological tissues; biomedical imaging; cancer; image sampling; image segmentation; medical computing; molecular biophysics; tumours; automated microscopy instruments; automated techniques; cancer; data analysis; densitometry; fluorometry; histopathological scoring; image acquisition; molecular marker data; molecular patterns identification; sampling; texture segmentation; tissue microarray images; Automation; Biological tissues; Cancer; Computer displays; Data visualization; Image sampling; Image storage; Informatics; Microscopy; Software design; Automated tissue microarray (TMA) scoring; densitometry/fluorometry; image acquisition; texture segmentation; tissue microarrays (TMAs);
Journal_Title :
Information Technology in Biomedicine, IEEE Transactions on
DOI :
10.1109/TITB.2005.855544