Department of Computer Science, University of North Carolina at Charlotte, Charlotte, NC 28223, USA.
Information Systems Institute, HES-SO Valais, Sierre, Switzerland.
Med Image Anal. 2018 Jan;43:66-84. doi: 10.1016/j.media.2017.09.007. Epub 2017 Oct 2.
Over the past decades, medical image analytics was greatly facilitated by the explosion of digital imaging techniques, where huge amounts of medical images were produced with ever-increasing quality and diversity. However, conventional methods for analyzing medical images have achieved limited success, as they are not capable to tackle the huge amount of image data. In this paper, we review state-of-the-art approaches for large-scale medical image analysis, which are mainly based on recent advances in computer vision, machine learning and information retrieval. Specifically, we first present the general pipeline of large-scale retrieval, summarize the challenges/opportunities of medical image analytics on a large-scale. Then, we provide a comprehensive review of algorithms and techniques relevant to major processes in the pipeline, including feature representation, feature indexing, searching, etc. On the basis of existing work, we introduce the evaluation protocols and multiple applications of large-scale medical image retrieval, with a variety of exploratory and diagnostic scenarios. Finally, we discuss future directions of large-scale retrieval, which can further improve the performance of medical image analysis.
在过去的几十年中,随着数字成像技术的爆炸式发展,大量高质量、多样化的医学图像被生成,这极大地促进了医学图像分析的发展。然而,传统的医学图像分析方法已经取得了有限的成功,因为它们无法处理如此庞大的图像数据。在本文中,我们回顾了基于计算机视觉、机器学习和信息检索等领域的最新进展的大规模医学图像分析的最新方法。具体来说,我们首先介绍了大规模检索的一般流程,总结了大规模医学图像分析所面临的挑战和机遇。然后,我们全面回顾了与该流程中的主要步骤相关的算法和技术,包括特征表示、特征索引、搜索等。在现有工作的基础上,我们介绍了大规模医学图像检索的评估协议和多种应用,涵盖了各种探索性和诊断性场景。最后,我们讨论了大规模检索的未来发展方向,这将进一步提高医学图像分析的性能。