DocumentCode :
3717223
Title :
An interactive learning framework for scalable classification of pathology images
Author :
Michael Nalisnik;David A Gutman;Jun Kong;Lee A D Cooper
Author_Institution :
Department of Computer Science and Mathematics, Emory University, Emory University School of Medicine, Atlanta, GA 30322
fYear :
2015
Firstpage :
928
Lastpage :
935
Abstract :
Recent advances in microscopy imaging and genomics have created an explosion of patient data in the pathology domain. Whole-slide images (WSIs) of tissues can now capture disease processes as they unfold in high resolution, recording the visual cues that have been the basis of pathologic diagnosis for over a century. Each WSI contains billions of pixels and up to a million or more microanatomic objects whose appearances hold important prognostic information. Computational image analysis enables the mining of massive WSI datasets to extract quantitative morphologic features describing the visual qualities of patient tissues. When combined with genomic and clinical variables, this quantitative information provides scientists and clinicians with insights into disease biology and patient outcomes. To facilitate interaction with this rich resource, we have developed a web-based machine-learning framework that enables users to rapidly build classifiers using an intuitive active learning process that minimizes data labeling effort. In this paper we describe the architecture and design of this system, and demonstrate its effectiveness through quantification of glioma brain tumors.
Keywords :
"Pathology","Microscopy","Data visualization","Image analysis","Training","Algorithm design and analysis","Cancer"
Publisher :
ieee
Conference_Titel :
Big Data (Big Data), 2015 IEEE International Conference on
Type :
conf
DOI :
10.1109/BigData.2015.7363841
Filename :
7363841
Link To Document :
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