论文标题

使用周期一致的激活最大化来解释医学成像中的临床决策支持系统

Explaining Clinical Decision Support Systems in Medical Imaging using Cycle-Consistent Activation Maximization

论文作者

Katzmann, Alexander, Taubmann, Oliver, Ahmad, Stephen, Mühlberg, Alexander, Sühling, Michael, Groß, Horst-Michael

论文摘要

使用深层神经网络的临床决策支持已成为稳步增长的兴趣的话题。尽管最近的工作反复证明,深度学习比传统方法具有主要优势,但临床医生通常不愿采用这项技术,因为其基本的决策过程被认为是内在的且难以理解的。近年来,已经成功地提供了更深入的见解来解决这一问题。最值得注意的是,加性功能归因方法能够通过创建一个显着映射来将决策传播回输入空间,从而使从业者可以“查看网络看到的内容”。但是,生成的地图的质量可能会变得贫穷,并且只要有限的数据就可以噪音 - 在临床环境中的典型情况。我们提出了一种基于Cyclegan激活最大化的新决策解释方案,该方案即使在较小的数据集中也会产生分类器决策的高质量可视化。我们进行了一项用户研究,在该研究中,我们在LIDC数据集上评估了用于肺部病变恶性分类的方法,超声图像乳腺癌检测的母乳数据集以及CIFAR-10数据集的两个子集用于RBG图像对象对象识别。在这项用户研究中,我们的方法清楚地表现出了医学成像数据集上的现有方法,在自然图像设置中排名第二。通过我们的方法,我们为更好地理解基于深神网络的临床决策支持系统做出了重大贡献,因此旨在促进整体临床接受。

Clinical decision support using deep neural networks has become a topic of steadily growing interest. While recent work has repeatedly demonstrated that deep learning offers major advantages for medical image classification over traditional methods, clinicians are often hesitant to adopt the technology because its underlying decision-making process is considered to be intransparent and difficult to comprehend. In recent years, this has been addressed by a variety of approaches that have successfully contributed to providing deeper insight. Most notably, additive feature attribution methods are able to propagate decisions back into the input space by creating a saliency map which allows the practitioner to "see what the network sees." However, the quality of the generated maps can become poor and the images noisy if only limited data is available - a typical scenario in clinical contexts. We propose a novel decision explanation scheme based on CycleGAN activation maximization which generates high-quality visualizations of classifier decisions even in smaller data sets. We conducted a user study in which we evaluated our method on the LIDC dataset for lung lesion malignancy classification, the BreastMNIST dataset for ultrasound image breast cancer detection, as well as two subsets of the CIFAR-10 dataset for RBG image object recognition. Within this user study, our method clearly outperformed existing approaches on the medical imaging datasets and ranked second in the natural image setting. With our approach we make a significant contribution towards a better understanding of clinical decision support systems based on deep neural networks and thus aim to foster overall clinical acceptance.

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