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A hierarchical neural network architecture that learns target context: applications to digital mammography

机译:一种学习目标上下文的分层神经网络架构:数字乳房X X X选取的应用程序

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An important problem in image analysis is finding small objects in large images. The problem is challenging because: 1) searching a large image is computationally expensive; and 2) small targets (on the order of a few pixels in size) have relatively few distinctive features which enable them to be distinguished from non-targets. To overcome these challenges the authors have developed a hierarchical neural network architecture which combines multiresolution pyramid processing with neural networks. Here the authors discuss the application of their hierarchical neural network architecture to the problem of detecting microcalcifications in digital mammograms. Microcalcifications are cues for breast tumors. 30% to 50% of breast carcinomas have microcalcifications visible in mammograms while 60% to 80% of all breast tumors eventually show microcalcifications via histology. Similar to the building/ATR problem, microcalcifications are generally very small point-like objects (10 pixels in mammograms) which are hard to detect. Radiologists must often exploit other information in the imagery (e.g. location of blood vessels, ducts, etc.) in order to detect these microcalcifications. Here the authors examine how well their hierarchical neural network architecture learns and exploits contextual information in mammograms.
机译:图像分析中的一个重要问题在大图像中找到了小对象。问题是具有挑战性的,因为:1)搜索大图像是计算昂贵的; 2)小目标(大小的几个像素的顺序)具有相对较少的独特特征,使它们能够与非目标区分开。为了克服这些挑战,作者开发了一种分层神经网络架构,它将多分辨率金字塔处理与神经网络相结合。这里作者讨论了分层神经网络架构在数字乳房X光图中检测微钙化的问题。微钙化是乳腺肿瘤的提示。 30%至50%的乳腺癌乳腺癌在乳房X线照片中可见,而所有乳腺肿瘤的60%至80%最终通过组织学显示微钙化。类似于建筑物/ ATR问题,微透析通常是非常小的点状物体(> 10个乳房X线图中的> 10像素),这很难检测。放射科医师通常必须利用图像中的其他信息(例如,血管的位置,管道等)以检测这些微钙化。在这里,作者研究了分层神经网络架构的学习和利用乳房X光检查的上下文信息的程度。

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