Automated skin biopsy histopathological image annotation using multi-instance representation and learning |
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Authors: | Gang Zhang Jian Yin Ziping Li Xiangyang Su Guozheng Li Honglai Zhang |
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Affiliation: | 1.School of Information Science and Technology,SUN YAT-SEN University,Guangzhou,China;2.The Second Affiliated Hospital of Guangzhou University of Chinese Medicine,China;3.School of Automation,Guangdong University of Technology,Guangzhou,China;4.The Third Affiliated Hospital of SUN YAT-SEN University,Guangzhou,China;5.Department of Control Science and Engineering,Tongji University,Shanghai,China;6.Guangzhou University of Chinese Medicine,Guangzhou,China |
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Abstract: | With digitisation and the development of computer-aided diagnosis, histopathological image analysis has attracted considerable interest in recent years. In this article, we address the problem of the automated annotation of skin biopsy images, a special type of histopathological image analysis. In contrast to previous well-studied methods in histopathology, we propose a novel annotation method based on a multi-instance learning framework. The proposed framework first represents each skin biopsy image as a multi-instance sample using a graph cutting method, decomposing the image to a set of visually disjoint regions. Then, we construct two classification models using multi-instance learning algorithms, among which one provides determinate results and the other calculates a posterior probability. We evaluate the proposed annotation framework using a real dataset containing 6691 skin biopsy images, with 15 properties as target annotation terms. The results indicate that the proposed method is effective and medically acceptable. |
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