Abstract
The antinuclear antibody (ANA) test is widely used for screening, diagnosing, and monitoring of autoimmune diseases. Themost commonmethods to determineANAare indirect immunofluorescence (IIF), performed by human epithelial type 2 (HEp-2) cells, as substrate antigen. The evaluation of ANA consist an analysis of fluorescence intensity and staining patterns. This paper presents a complete and fully automatic systemable to characterize IIF images. The fluorescence intensity classificationwas obtained by performing an image preprocessing phase and implementing a Support VectorMachines (SVM) classifier. The cells identification problem has been addressed by developing a flexible segmentation methods, based on the Hough transform for ellipses, and on an active contours model. In order to classify the HEp-2 cells, six SVM and one k-nearest neighbors (KNN)classifiers were developed. The system was tested on a public database consisting of 2080 IIF images. Unlike almost all work presented on this topic, the proposed system automatically addresses all phases of the HEp-2 image analysis process. All results have been evaluated by comparing them with some of the most representative state-of-the-art work, demonstrating the goodness of the system in the characterization of HEp-2 images.
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Cascio, D., Taormina, V., & Raso, G. (2019). An automatic HEp-2 specimen analysis system based on an active contours model and an SVM classification. Applied Sciences (Switzerland), 9(2). https://doi.org/10.3390/app9020307
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