Title
Detecting spongiosis in stained histopathological specimen using multispectral imaging and machine learning
Abstract
Pathologists spend nearly 80% of their time analysing pathological tissue samples. In addition, the diagnosis is subject to inter/intra-observer variability. Thus to increase productivity and repeatability, a new field known as Computational Pathology has emerged which combines the field of pathology with computer vision, pattern recognition and machine learning. This research develops a new computational pathology framework specifically to aid with detecting a condition known as spongiosis caused by Newcastle Disease Virus infection in poultry. It combines the use of multispectral imaging with feature extraction and classification to detect areas of spongiosis in tissue of infected poultry. The success of this framework is the first step towards a completely automated diagnosis tool for histopathology.
Year
DOI
Venue
2014
10.1109/SAS.2014.6798945
Sensors Applications Symposium
Keywords
Field
DocType
biological tissues,biomedical optical imaging,cellular biophysics,diseases,feature extraction,image classification,learning (artificial intelligence),medical image processing,microorganisms,computational pathology,computer vision,infected poultry,interobserver variability,intraobserver variability,machine learning,multispectral imaging,newcastle disease virus infection,pathological tissue samples,pattern recognition,spongiosis detection,stained histopathological specimen,detection,learning artificial intelligence
Spongiosis,Computer vision,Cellular biophysics,Computer science,Multispectral image,Feature extraction,Artificial intelligence,Contextual image classification,Machine learning
Conference
Citations 
PageRank 
References 
1
0.40
4
Authors
5
Name
Order
Citations
PageRank
sanush abeysekera110.73
melanie poleen ooi210.73
Ye Chow Kuang37219.81
chee pin tan4122.01
s s hassan510.73