Back to Search Start Over

An InteractiveJavaStatistical Image Segmentation System:GemIdent

Authors :
Adam Kapelner
Susan Holmes
Peter P. Lee
Source :
Journal of Statistical Software, Vol 30, Iss 10 (2009), Journal of Statistical Software; Vol 30 (2009); 1-20
Publication Year :
2009
Publisher :
Foundation for Open Access Statistic, 2009.

Abstract

Supervised learning can be used to segment/identify regions of interest in images using both color and morphological information. A novel object identification algorithm was developed in Java to locate immune and cancer cells in images of immunohistochemically-stained lymph node tissue from a recent study published by Kohrt et al. (2005). The algorithms are also showing promise in other domains. The success of the method depends heavily on the use of color, the relative homogeneity of object appearance and on interactivity. As is often the case in segmentation, an algorithm specifically tailored to the application works better than using broader methods that work passably well on any problem. Our main innovation is the interactive feature extraction from color images. We also enable the user to improve the classification with an interactive visualization system. This is then coupled with the statistical learning algorithms and intensive feedback from the user over many classification-correction iterations, resulting in a highly accurate and user-friendly solution. The system ultimately provides the locations of every cell recognized in the entire tissue in a text file tailored to be easily imported into R (Ihaka and Gentleman 1996; R Development Core Team 2009) for further statistical analyses. This data is invaluable in the study of spatial and multidimensional relationships between cell populations and tumor structure. This system is available at http://www.GemIdent.com together with three demonstration videos and a manual. The code is now open-sourced and available on github at: https://github.com/kapelner/GemIdent

Details

ISSN :
15487660
Volume :
30
Database :
OpenAIRE
Journal :
Journal of Statistical Software
Accession number :
edsair.doi.dedup.....159899676ea676dfb829e4930d637e00
Full Text :
https://doi.org/10.18637/jss.v030.i10