Abstract

Skin biopsy images can reveal causes and severity of many skin diseases, which is a significant complement for skin surface inspection. Automatic annotation of skin biopsy image is an important problem for increasing efficiency and reducing the subjectiveness in diagnosis. However it is challenging particularly when there exists indirect relationship between annotation terms and local regions of a biopsy image, as well as local structures with different textures. In this paper, a novel method based on a recent proposed machine learning model, named multi-instance multilabel (MIML), is proposed to model the potential knowledge and experience of doctors on skin biopsy image annotation. We first show that the problem of skin biopsy image annotation can naturally be expressed as a MIML problem and then propose an image representation method that can capture both region structure and texture features, and a sparse Bayesian MIML algorithm which can produce probabilities indicating the confidence of annotation. The proposed algorithm framework is evaluated on a real clinical dataset containing 12,700 skin biopsy images. The results show that it is effective and prominent.

Highlights

  • IntroductionMost of the skin diseases are not harmful to our health, while some kinds of them would lead to serious problems for our health

  • Skin diseases are common in our daily life

  • Rapid recognition and correct diagnosis are important to the grave skin diseases as well as neoplasms, bullous dermatoses, sexually transmitted diseases (STD), and so forth

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Summary

Introduction

Most of the skin diseases are not harmful to our health, while some kinds of them would lead to serious problems for our health. Rapid recognition and correct diagnosis are important to the grave skin diseases as well as neoplasms, bullous dermatoses, sexually transmitted diseases (STD), and so forth. It is a great challenge for doctors specializing in dermatology since there are more than 3,000 kinds of diseases in this field, and what is worse is that the number of patients in dermatology is increasing rapidly [1], leading to great burden for doctors to precisely inspect large amount of cases every day

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