Title :
Cluster detection in cytology images using the cellgraph method
Author :
Chandran, Pournami S. ; Byju, N.B. ; Deepak, R.U. ; Rajesh Kumar, R. ; Sudhamony, S. ; Malm, Patrik ; Bengtsson, Ewert
Author_Institution :
Centre for Dev. of Adv. Comput., Thiruvananthapuram, India
Abstract :
Automated cervical cancer detection system is primarily based on delineating the cell nuclei and analyzing their textural and morphometric features for malignant characteristics. The presence of cell clusters in the slides have diagnostic value, since malignant cells have a greater tendency to stick together forming clusters than normal cells. However, cell clusters pose difficulty in delineating nucleus and extracting features reliably for malignancy detection in comparison to free lying cells. LBC slide preparation techniques remove biological artifacts and clustering to some extent but not completely. Hence cluster detection in automated cervical cancer screening becomes significant. In this work, a graph theoretical technique is adopted which can identify and compute quantitative metrics for this purpose. This method constructs a cell graph of the image in accordance with the Waxman model, using the positional coordinates of cells. The computed graph metrics from the cell graphs are used as the feature set for the classifier to deal with cell clusters. It is a preliminary exploration of using the topological analysis of the cellgraph to cytological images and the accuracy of classification using SVM showed that the results are well suited for cluster detection.
Keywords :
cancer; cellular biophysics; feature extraction; graph theory; image classification; image texture; medical image processing; object detection; pattern clustering; support vector machines; LBC slide preparation techniques; SVM; Waxman model; automated cervical cancer detection system; biological artifact removal; cell nuclei delineation; cell positional coordinates; cellgraph method; classifier; cluster detection; clustering; computed graph metrics; cytology images; feature extraction; graph theoretical technique; malignancy detection; malignant cells; morphometric features analysis; textural features analysis; topological analysis; Analytical models; Bioinformatics; Cancer; Image segmentation; Measurement; Medical diagnostic imaging; adjacency matrix; cell cluster; cellgraph; cervical cancer; graph metrics; support vector machine; waxman model;
Conference_Titel :
Information Technology in Medicine and Education (ITME), 2012 International Symposium on
Conference_Location :
Hokodate, Hokkaido
Print_ISBN :
978-1-4673-2109-9
DOI :
10.1109/ITiME.2012.6291454