用深、浅高分辨率编码预测乳房x光片阅读时放射科医生的注意力

Jianxun Lou, Hanhe Lin, David Marshall, Richard White, Young Yang, S. Shelmerdine, Hantao Liu
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引用次数: 0

摘要

放射科医生在诊断图像阅读过程中的眼球运动反映了他们的个人训练和经验,这意味着他们的诊断决策与他们的感知过程有关。对于放射科医生的培训、监测和绩效评估,能够自动预测放射科医生在诊断图像上的视觉注意力的空间分布将是有益的。视觉显著性的测量是一个被充分研究的领域,它可以预测一个人的凝视注意力。然而,与广泛研究的自然图像视觉显著性(在自由观看任务中)相比,诊断图像的显著性研究较少;这两个领域的眼动行为可能存在根本差异。目前大多数显著性预测模型都是针对自然图像开发的,这可能导致它们不太擅长预测放射科医生在诊断过程中的视觉注意力。在本文中,我们提出了一种方法,专门用于自动捕获放射科医生在乳房x光片阅读期间的视觉注意力。通过采用深、浅编码器的高分辨率图像表示,该方法避免了潜在的细节损失,并在大型乳房x光眼动数据集的多个评价指标上取得了较好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Radiologist Attention During Mammogram Reading with Deep and Shallow High-Resolution Encoding
Radiologists’ eye-movement during diagnostic image reading reflects their personal training and experience, which means that their diagnostic decisions are related to their perceptual processes. For training, monitoring, and performance evaluation of radiologists, it would be beneficial to be able to automatically predict the spatial distribution of the radiologist’s visual attention on the diagnostic images. The measurement of visual saliency is a well-studied area that allows for prediction of a person’s gaze attention. However, compared with the extensively studied natural image visual saliency (in free viewing tasks), the saliency for diagnostic images is less studied; there could be fundamental differences in eye-movement behaviours between these two domains. Most current saliency prediction models have been optimally developed for natural images, which could lead them to be less adept at predicting the visual attention of radiologists during the diagnosis. In this paper, we propose a method specifically for automatically capturing the visual attention of radiologists during mammogram reading. By adopting high-resolution image representations from both deep and shallow encoders, the proposed method avoids potential detail losses and achieves superior results on multiple evaluation metrics in a large mammogram eye-movement dataset.
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