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Optimization of reference library used in content-based medical image retrieval scheme

机译:基于内容的医学图像检索方案中参考库的优化

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摘要

Building an optimal image reference library is a critical step in developing the interactive computer-aided detection and diagnosis (I-CAD) systems of medical images using content-based image retrieval (CBIR) schemes. In this study, the authors conducted two experiments to investigate (1) the relationship between I-CAD performance and size of reference library and (2) a new reference selection strategy to optimize the library and improve I-CAD performance. The authors assembled a reference library that includes 3153 regions of interest (ROI) depicting either malignant masses (1592) or CAD-cued false-positive regions (1561) and an independent testing data set including 200 masses and 200 false-positive regions. A CBIR scheme using a distance-weighted K-nearest neighbor algorithm is applied to retrieve references that are considered similar to the testing sample from the library. The area under receiver operating characteristic curve (Az) is used as an index to evaluate the I-CAD performance. In the first experiment, the authors systematically increased reference library size and tested I-CAD performance. The result indicates that scheme performance improves initially from Az=0.715 to 0.874 and then plateaus when the library size reaches approximately half of its maximum capacity. In the second experiment, based on the hypothesis that a ROI should be removed if it performs poorly compared to a group of similar ROIs in a large and diverse reference library, the authors applied a new strategy to identify “poorly effective” references. By removing 174 identified ROIs from the reference library, I-CAD performance significantly increases to Az=0.914 (p < 0.01). The study demonstrates that increasing reference library size and removing poorly effective references can significantly improve I-CAD performance.
机译:建立最佳的图像参考库是使用基于内容的图像检索(CBIR)方案开发医学图像的交互式计算机辅助检测和诊断(I-CAD)系统的关键步骤。在这项研究中,作者进行了两个实验来研究(1)I-CAD性能与参考库大小之间的关系,以及(2)一种新的参考选择策略,以优化库并改善I-CAD性能。作者组装了一个包含3153个感兴趣区域(ROI)的参考库,其中描述了恶性肿块(1592)或CAD提示的假阳性区域(1561),以及一个独立的测试数据集,其中包括200个肿块和200个假阳性区域。应用使用距离加权K最近邻算法的CBIR方案从库中检索被认为与测试样本相似的参考。接收器工作特性曲线(Az)下的面积用作评估I-CAD性能的指标。在第一个实验中,作者系统地增加了参考库的大小并测试了I-CAD性能。结果表明,方案的性能最初从Az = 0.715提高到0.874,然后在库大小达到其最大容量的一半时稳定下来。在第二个实验中,基于这样的假设,即与大型且多样化的参考库中的一组类似ROI相比,如果ROI表现不佳,则应删除ROI,这组作者应用了一种新策略来识别“效果较差”的参考。通过从参考库中删除174个已识别的ROI,I-CAD性能将显着提高到Az = 0.914(p <0.01)。该研究表明,增加参考库的大小并删除效果不佳的参考可以显着改善I-CAD性能。

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