An automatic segmentation and classification framework for anti-nuclear antibody images

被引:0
作者
Chung-Chuan Cheng
Tsu-Yi Hsieh
Jin-Shiuh Taur
Yung-Fu Chen
机构
[1] National Chung Hsing University,Department of Electrical Engineering
[2] Taichung Veterans General Hospital,Division of Allergy, Immunology and Rheumatology
[3] Central Taiwan University of Science and Technology,Department of Healthcare Administration
[4] Central Taiwan University of Science and Technology,Institute of Biomedical Engineering and Material Science
[5] China Medical University,Department of Health Services Administration
来源
BioMedical Engineering OnLine | / 12卷
关键词
Segmentation Result; Automatic Segmentation; Cell Detection; Cell Pattern; Foreground Region;
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学科分类号
摘要
Autoimmune disease is a disorder of immune system due to the over-reaction of lymphocytes against one's own body tissues. Anti-Nuclear Antibody (ANA) is an autoantibody produced by the immune system directed against the self body tissues or cells, which plays an important role in the diagnosis of autoimmune diseases. Indirect ImmunoFluorescence (IIF) method with HEp-2 cells provides the major screening method to detect ANA for the diagnosis of autoimmune diseases. Fluorescence patterns at present are usually examined laboriously by experienced physicians through manually inspecting the slides with the help of a microscope, which usually suffers from inter-observer variability that limits its reproducibility. Previous researches only provided simple segmentation methods and criterions for cell segmentation and recognition, but a fully automatic framework for the segmentation and recognition of HEp-2 cells had never been reported before. This study proposes a method based on the watershed algorithm to automatically detect the HEp-2 cells with different patterns. The experimental results show that the segmentation performance of the proposed method is satisfactory when evaluated with percent volume overlap (PVO: 89%). The classification performance using a SVM classifier designed based on the features calculated from the segmented cells achieves an average accuracy of 96.90%, which outperforms other methods presented in previous studies. The proposed method can be used to develop a computer-aided system to assist the physicians in the diagnosis of auto-immune diseases.
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