使用标签特定眼动跟踪注释的胸部x线分类器的定位监督。

Ricardo Bigolin Lanfredi, Joyce D Schroeder, Tolga Tasdizen
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引用次数: 0

摘要

卷积神经网络(cnn)已成功应用于胸部x射线(CXR)图像。此外,标注的边界框已被证明可以提高CNN在定位异常方面的可解释性。但是,只有少数包含边界框的相对较小的CXR数据集可用,并且收集它们的成本非常高。碰巧的是,眼动追踪(ET)数据可以在放射科医生的临床工作流程中收集。我们使用放射科医生记录的ET数据,同时口授CXR报告来训练cnn。我们从ET数据中提取片段,将它们与关键词的听写联系起来,并使用它们来监督特定异常的定位。我们证明了这种方法可以在不影响图像级分类的情况下提高模型的可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Localization supervision of chest x-ray classifiers using label-specific eye-tracking annotation.

Localization supervision of chest x-ray classifiers using label-specific eye-tracking annotation.

Localization supervision of chest x-ray classifiers using label-specific eye-tracking annotation.

Localization supervision of chest x-ray classifiers using label-specific eye-tracking annotation.

Convolutional neural networks (CNNs) have been successfully applied to chest x-ray (CXR) images. Moreover, annotated bounding boxes have been shown to improve the interpretability of a CNN in terms of localizing abnormalities. However, only a few relatively small CXR datasets containing bounding boxes are available, and collecting them is very costly. Opportunely, eye-tracking (ET) data can be collected during the clinical workflow of a radiologist. We use ET data recorded from radiologists while dictating CXR reports to train CNNs. We extract snippets from the ET data by associating them with the dictation of keywords and use them to supervise the localization of specific abnormalities. We show that this method can improve a model's interpretability without impacting its image-level classification.

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