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Effectiveness of Global Features for Automatic Medical Image Classification and Retrieval – the experiences of OHSU at ImageCLEFmed

机译:自动医学图像分类和检索的全局功能的有效性– OHSU在ImageCLEFmed上的经验

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摘要

In 2006 and 2007, Oregon Health & Science University (OHSU) participated in the automatic image annotation task for medical images at ImageCLEF, an annual international benchmarking event that is part of the Cross Language Evaluation Forum (CLEF). The goal of the automatic annotation task was to classify 1000 test images based on the Image Retrieval in Medical Applications (IRMA) code, given a set of 10,000 training images. There were 116 distinct classes in 2006 and 2007. We evaluated the efficacy of a variety of primarily global features for this classification task. These included features based on histograms, gray level correlation matrices and the gist technique. A multitude of classifiers including k-nearest neighbors, two-level neural networks, support vector machines, and maximum likelihood classifiers were evaluated. Our official error rates for the 1000 test images were 26% in 2006 using the flat classification structure. The error count in 2007 was 67.8 using the hierarchical classification error computation based on the IRMA code in 2007. Confusion matrices as well as clustering experiments were used to identify visually similar classes. The use of the IRMA code did not help us in the classification task as the semantic hierarchy of the IRMA classes did not correspond well with the hierarchy based on clustering of image features that we used. Our most frequent misclassification errors were along the view axis. Subsequent experiments based on a two-stage classification system decreased our error rate to 19.8% for the 2006 dataset and our error count to 55.4 for the 2007 data.
机译:在2006年和2007年,俄勒冈健康与科学大学(OHSU)在ImageCLEF上参加了医学图像的自动图像注释任务,ImageCLEF是年度国际基准测试活动,是跨语言评估论坛(CLEF)的一部分。自动批注任务的目标是根据医疗应用程序中的图像检索(IRMA)代码对1000张测试图像进​​行分类,给定一组10,000张训练图像。在2006年和2007年,共有116个不同的类别。我们评估了此分类任务的各种主要全球特征的功效。这些功能包括基于直方图,灰度相关矩阵和要点技术的功能。评估了包括k近邻,两级神经网络,支持向量机和最大似然分类器在内的众多分类器。使用平面分类结构,我们在2006年对1000张测试图像的官方错误率为26%。使用2007年基于IRMA代码的分层分类错误计算,2007年的错误计数为67.8。使用混淆矩阵以及聚类实验来识别视觉上相似的类。 IRMA代码的使用没有帮助我们完成分类任务,因为IRMA类的语义层次结构与基于我们使用的图像特征聚类的层次结构不太吻合。我们最常见的错误分类错误是沿视图轴。随后的基于两阶段分类系统的实验将2006年数据集的错误率降低到19.8%,将2007年数据的错误率降低到55.4。

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