Discovering Salient Anatomical Landmarks by Predicting Human Gaze.

R Droste, P Chatelain, L Drukker, H Sharma, A T Papageorghiou, J A Noble
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引用次数: 7

Abstract

Anatomical landmarks are a crucial prerequisite for many medical imaging tasks. Usually, the set of landmarks for a given task is predefined by experts. The landmark locations for a given image are then annotated manually or via machine learning methods trained on manual annotations. In this paper, in contrast, we present a method to automatically discover and localize anatomical landmarks in medical images. Specifically, we consider landmarks that attract the visual attention of humans, which we term visually salient landmarks. We illustrate the method for fetal neurosonographic images. First, full-length clinical fetal ultrasound scans are recorded with live sonographer gaze-tracking. Next, a convolutional neural network (CNN) is trained to predict the gaze point distribution (saliency map) of the sonographers on scan video frames. The CNN is then used to predict saliency maps of unseen fetal neurosonographic images, and the landmarks are extracted as the local maxima of these saliency maps. Finally, the landmarks are matched across images by clustering the landmark CNN features. We show that the discovered landmarks can be used within affine image registration, with average landmark alignment errors between 4.1% and 10.9% of the fetal head long axis length.

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通过预测人类凝视发现显著的解剖标志。
解剖标志是许多医学成像任务的关键先决条件。通常,给定任务的标志集是由专家预定义的。然后对给定图像的地标位置进行手动注释,或者通过对手动注释进行训练的机器学习方法进行注释。在本文中,我们提出了一种自动发现和定位医学图像中解剖标志的方法。具体来说,我们考虑吸引人类视觉注意力的地标,我们称之为视觉显著地标。我们说明胎儿神经超声图像的方法。首先,全程临床胎儿超声扫描记录与现场超声仪的目光跟踪。接下来,训练卷积神经网络(CNN)来预测超声医师在扫描视频帧上的注视点分布(显著性图)。然后使用CNN预测未见的胎儿神经超声图像的显著性图,并提取地标作为这些显著性图的局部最大值。最后,通过对地标CNN特征进行聚类,实现图像间地标的匹配。结果表明,发现的标记可以用于仿射图像配准,平均标记对齐误差在胎儿头部长轴长度的4.1% ~ 10.9%之间。
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