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Breast segmentation in MRI: quantitative evaluation of three methods

机译:MRI中的乳房分割:三种方法的定量评估

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A precise segmentation of breast tissue is often required for computer-aided diagnosis (CAD) of breast MRI. Only a few methods have been proposed to automatically segment breast in MRI. Authors reported satisfactory performance, but a fair comparison has not been done yet as all breast segmentation methods were evaluated on their own data sets with different manual annotations. Moreover, breast volume overlap measures, which were commonly used for evaluations, do not seem to be adequate to accurately quantify the segmentation qualities. Breast volume overlap measures are not sensitive to small errors, such as local misalignments, because the breast appears to be much larger than other structures. In this work, two atlas-based approaches and a breast segmentation method based on Hessian sheetness filter are exhaustively evaluated and benchmarked on a data set of 52 manually annotated breast MR images. Three quantitative measures including dense tissue error, pectoral muscle error and pectoral surface distance are defined to objectively reflect the practical use of breast segmentation in CAD methods. The evaluation measures provide important evidence to conclude that the three evaluated techniques perform accurate breast segmentations. More specifically, the atlas-based methods appear to be more precise, but require larger computation time than the sheetness-based breast segmentation approach.
机译:乳房MRI的计算机辅助诊断(CAD)通常需要对乳房组织进行精确分割。仅提出了几种在MRI中自动分割乳房的方法。作者报告了令人满意的性能,但是由于所有的乳房分割方法都是在自己的数据集上使用不同的手动注释进行评估的,因此尚未进行公平的比较。此外,通常用于评估的乳房体积重叠测量似乎不足以准确量化分割质量。乳房体积重叠测量对诸如局部错位之类的小错误不敏感,因为乳房看起来比其他结构要大得多。在这项工作中,详尽地评估了两种基于图集的方法和基于Hessian薄片过滤器的乳房分割方法,并在包含52个手动注释的乳房MR图像的数据集上进行了基准测试。定义了三种定量度量,包括密集组织误差,胸肌误差和胸表面距离,以客观反映CAD方法中乳房分割的实际应用。评估方法提供了重要的证据,可以得出结论,三种评估的技术可以进行准确的乳房分割。更具体地说,基于图集的方法似乎更精确,但与基于平张度的乳房分割方法相比,需要更长的计算时间。

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