Abstract

In computer-aided diagnosis (CAD) systems, the automatic classification of the different types of the human epithelial type 2 (HEp-2) cells represents one of the critical steps in the diagnosis procedure of autoimmune diseases. Most of the methods prefer to tackle this task using the supervised learning paradigm. However, the necessity of having thousands of manually annotated examples constitutes a serious concern for the state-of-the-art HEp-2 cells classification methods. We present in this work a method that uses active learning in order to minimize the necessity of annotating the majority of the examples in the dataset. For this purpose, we use cross-modal transfer learning coupled with parallel deep residual networks. First, the parallel networks, which take simultaneously different wavelet coefficients as inputs, are trained in a fully supervised way by using a very small and already annotated dataset. Then, the trained networks are utilized on the targeted dataset, which is quite larger compared to the first one, using active learning techniques in order to only select the images that really need to be annotated among all the examples. The obtained results show that active learning, when mixed with an efficient transfer learning technique, can allow one to achieve a quite pleasant discrimination performance with only a few annotated examples in hands. This will help in building CAD systems by simplifying the burdensome task of labeling images while maintaining a similar performance with the state-of-the-art methods.

Highlights

  • The classification of the different types of the human epithelial type 2 (HEp-2) cells is one of the most important steps in the diagnosis procedure of autoimmune disease [1]

  • The automatic classification of the HEp-2 cell images represents an essential step in the production of the computer-aided diagnosis systems

  • The quasi-totality of the approaches in the HEp-2 cell classification literature prefer to address this problem by adopting the supervised learning approaches

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Summary

Introduction

The classification of the different types of the human epithelial type 2 (HEp-2) cells is one of the most important steps in the diagnosis procedure of autoimmune disease [1]. Performing this classification manually represents an arduous task and can cost a lot of time during the diagnosis process. The manual analysis of the HEp-2 cell patterns poses a certain problem in terms of consistency of the diagnosis results, since the complexity of the images complicates the task for the pathologists [2]. Which makes the classification of these cells to be one of the important parts of the computer-aided diagnosis systems

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