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Psychophysical similarity measure based on multi-dimensional scaling for retrieval of similar images of breast masses on mammograms

机译:基于多维缩放的心理物理相似度测量检索乳腺肿块相似图像

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For retrieving reference images which may be useful to radiologists in their diagnosis, it is necessary to determine a reliable similarity measure which would agree with radiologists' subjective impression. In this study, we propose a new similarity measure for retrieval of similar images, which may assist radiologists in the distinction between benign and malignant masses on mammograms, and investigated its usefulness. In our previous study, to take into account the subjective impression, the psychophysical similarity measure was determined by use of an artificial neural network (ANN), which was employed to learn the relationship between radiologists' subjective similarity ratings and image features. In this study, we propose a psychophysical similarity measure based on multi-dimensional scaling (MDS) in order to improve the accuracy in retrieval of similar images. Twenty-seven images of masses, 3 each from 9 different pathologic groups, were selected, and the subjective similarity ratings for all possible 351 pairs were determined by 8 expert physicians. MDS was applied using the average subjective ratings, and the relationship between each output axis and image features was modeled by the ANN. The MDS-based psychophysical measures were determined by the distance in the modeled space. With a leave-one-out test method, the conventional psychophysical similarity measure was moderately correlated with subjective similarity ratings (r=0.68), whereas the psychophysical measure based on MDS was highly correlated (r=0.81). The result indicates that a psychophysical similarity measure based on MDS would be useful in the retrieval of similar images.
机译:为了检索在诊断中可能对放射科医生有用的参考图像,有必要确定一种可靠的相似性度量,这将与放射科学家的主观印象一致。在这项研究中,我们提出了一种新的相似性措施来检索类似图像,这可能有助于放射学家在乳房X光检查上区分良性和恶性肿块,并研究其有用性。在我们以前的研究中,要考虑主观印象,通过使用人工神经网络(ANN)确定了心理物理相似度测量,该人工神经网络(ANN)被用于学习放射科主观相似性评级和图像特征之间的关系。在这项研究中,我们提出了一种基于多维缩放(MDS)的心理物理相似度测量,以提高类似图像检索的准确性。选择了27个质量图像,3种来自9种不同的病理学组,以及所有可能351对的主观相似性评级由8名专家医师确定。使用平均主体额定值应用MDS,每个输出轴和图像特征之间的关系由ANN建模。基于MDS的心理物理措施由建模空间中的距离决定。通过休留一次性测试方法,传统的心理物理相似度测量与主观相似性评级适度相关(R = 0.68),而基于MDS的心理物理测量值高度相关(R = 0.81)。结果表明,基于MDS的心理物理相似度量在检索类似图像中是有用的。

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