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Malignant-lesion segmentation using 4D co-occurrence texture analysis applied to dynamic contrast-enhanced magnetic resonance breast image data

机译:使用4D共现纹理分析的恶性病变分割应用于动态对比增强磁共振乳腺图像数据

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摘要

Purpose: To investigate the use of four-dimensional (4D) co-occurrence-based texture analysis to distinguish between nonmalignant and malignant tissues in dynamic contrast-enhanced (DCE) MR images. Materials and Methods: 4D texture analysis was performedon DCE-MRI data sets of breast lesions. A model-free neural network-based classification system assigned each voxel a "nonmalignant" or "malignant" label based on the textural features. The classification results were compared via receiver operating characteristic (ROC) curve analysis with the manual lesion segmentation produced by two radiologists (observers 1 and 2). Results: The mean sensitivity and specificity of the classifier agreed with the mean observer 2 performance when compared with segmentations by observer 1 for a 95% confidence interval, using a two-sided t-test with α = 0.05. The results show that an area under the ROC curve (Az) of 0.99948, 0.99867, and 0.99957 can be achieved by comparing the classifier vs. observer 1, classifier vs. union of both observers, and classifier vs. intersection of both observers, respectively. Conclusion: This study shows that a neural network classifier based on 4D texture analysis inputs can achieve a performance comparable to that achieved by human observers, and that further research in this area is warranted. © 2007 Wiley-Liss, Inc.
机译:目的:研究基于四维(4D)共现的纹理分析在动态对比增强(DCE)MR图像中区分非恶性组织和恶性组织的用途。材料与方法:对乳腺病变的DCE-MRI数据集进行4D纹理分析。基于模型的基于神经网络的无模型分类系统为每个体素分配了“非恶性”或“恶性”标签。通过接收器工作特征(ROC)曲线分析将分类结果与两名放射科医生(观察员1和2)产生的手动病变分割进行了比较。结果:使用α= 0.05的双向t检验,与观察者1在95%置信区间进行的细分相比,分类器的平均敏感性和特异性与观察者2的平均表现相符。结果表明,通过比较分类器与观察者1,分类器与两个观察者的并集以及分类器与两个观察者的交点,可以分别获得ROC曲线下面积0.99948、0.99867和0.99957。 。结论:这项研究表明,基于4D纹理分析输入的神经网络分类器可以实现与人类观察者可比的性能,并且有必要在此领域进行进一步的研究。 ©2007 Wiley-Liss,Inc.

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