HeartSpot:心脏肥大检测的私有和可解释的数据压缩

Elvin Johnson, Shreshta Mohan, Alex Gaudio, A. Smailagic, C. Faloutsos, A. Campilho
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引用次数: 0

摘要

数据驱动的胸部x射线图像分析深度学习的进展强调了对可解释性、隐私性、大数据集和大量计算资源的需求。我们将隐私和可解释性框架为有损的单图像压缩问题,以减少无需训练的计算和数据需求。对于胸部x线图像中的心脏肥大检测,我们提出了HeartSpot和四个空间偏差先验。HeartSpot先验定义了如何基于医学文献和机器的领域知识对像素进行采样。HeartSpot通过丢弃高达97%的像素来私有化胸部x光图像,例如那些显示胸腔形状、骨骼、小病变和其他敏感特征的像素。心脏斑点先验是预先可解释的,并给出了人类可解释的保存的空间特征图像,清晰地勾勒出心脏的轮廓。HeartSpot提供了强大的压缩功能,像素减少了32倍,文件大小减少了11倍。使用HeartSpot的心脏扩张检测器的训练速度提高了9倍,或者至少同样准确(高达0.01)AUC ROC)与基线DenseNet121比较。HeartSpot可以通过重用现有的归因方法进行事后解释,而不需要访问原始的非私有图像。总之,HeartSpot提高了速度和准确性,减少了图像大小,提高了隐私性,并确保了可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HeartSpot: Privatized and Explainable Data Compression for Cardiomegaly Detection
Advances in data-driven deep learning for chest X-ray image analysis underscore the need for explainability, privacy, large datasets and significant computational resources. We frame privacy and explainability as a lossy single-image compression problem to reduce both computational and data requirements without training. For Cardiomegaly detection in chest X-ray images, we propose HeartSpot and four spatial bias priors. HeartSpot priors define how to sample pixels based on domain knowledge from medical literature and from machines. HeartSpot privatizes chest X-ray images by discarding up to 97% of pixels, such as those that reveal the shape of the thoracic cage, bones, small lesions and other sensitive features. HeartSpot priors are ante-hoc explainable and give a human-interpretable image of the preserved spatial features that clearly outlines the heart. HeartSpot offers strong compression, with up to 32x fewer pixels and 11 $x$ smaller filesize. Cardiomegaly detectors using HeartSpot are up to 9x faster to train or at least as accurate (up to +.01 AUC ROC) when compared to a baseline DenseNet121. HeartSpot is post-hoc explainable by re-using existing attribution methods without requiring access to the original non-privatized image. In summary, HeartSpot improves speed and accuracy, reduces image size, improves privacy and ensures explainability.
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