Zheng Bin
Imaging Research Center, Department of Radiology, University of Pittsburgh, 3362 Fifth Avenue, Room 128, Pittsburgh, PA 15213, USA.
Algorithms. 2009 Jun 1;2(2):828-849. doi: 10.3390/a2020828.
As the rapid advance of digital imaging technologies, the content-based image retrieval (CBIR) has became one of the most vivid research areas in computer vision. In the last several years, developing computer-aided detection and/or diagnosis (CAD) schemes that use CBIR to search for the clinically relevant and visually similar medical images (or regions) depicting suspicious lesions has also been attracting research interest. CBIR-based CAD schemes have potential to provide radiologists with "visual aid" and increase their confidence in accepting CAD-cued results in the decision making. The CAD performance and reliability depends on a number of factors including the optimization of lesion segmentation, feature selection, reference database size, computational efficiency, and relationship between the clinical relevance and visual similarity of the CAD results. By presenting and comparing a number of approaches commonly used in previous studies, this article identifies and discusses the optimal approaches in developing CBIR-based CAD schemes and assessing their performance. Although preliminary studies have suggested that using CBIR-based CAD schemes might improve radiologists' performance and/or increase their confidence in the decision making, this technology is still in the early development stage. Much research work is needed before the CBIR-based CAD schemes can be accepted in the clinical practice.
随着数字成像技术的迅速发展,基于内容的图像检索(CBIR)已成为计算机视觉中最活跃的研究领域之一。在过去几年中,开发利用CBIR来搜索描绘可疑病变的临床相关且视觉相似的医学图像(或区域)的计算机辅助检测和/或诊断(CAD)方案也一直吸引着研究兴趣。基于CBIR的CAD方案有潜力为放射科医生提供“视觉辅助”,并在决策过程中增强他们接受CAD提示结果的信心。CAD的性能和可靠性取决于许多因素,包括病变分割的优化、特征选择、参考数据库大小、计算效率以及CAD结果的临床相关性和视觉相似性之间的关系。通过展示和比较先前研究中常用的一些方法,本文识别并讨论了开发基于CBIR的CAD方案及其性能评估的最佳方法。尽管初步研究表明,使用基于CBIR的CAD方案可能会提高放射科医生的表现和/或增强他们在决策中的信心,但这项技术仍处于早期发展阶段。在基于CBIR的CAD方案能够被临床实践接受之前,还需要进行大量的研究工作。