论文标题
Roto-Translation eproivaration卷积网络:组织病理学图像分析应用
Roto-Translation Equivariant Convolutional Networks: Application to Histopathology Image Analysis
论文作者
论文摘要
旋转不变性是用于医学图像分析的机器学习模型的所需属性,尤其是计算病理应用。我们提出了一个框架,以编码卷积网络中特殊欧几里得运动组SE(2)的几何结构,以通过引入SE(2)-group卷积层引入翻译和旋转等值。该结构使模型能够以离散的方向维度来学习特征表示,从而确保其输出在离散的旋转集中是不变的。旋转不变性的常规方法主要依赖于数据增强,但这不能保证输入旋转时输出的鲁棒性。因此,受过训练的常规CNN可能需要测试时间旋转的增加才能达到其全部功能。这项研究的重点是组织病理学图像分析应用,其期望的是,机器学习模型不会捕获成像组织的任意全球方向信息。对三种不同的组织病理学图像分析任务(有丝分裂检测,核分割和肿瘤分类)进行评估。我们为每个问题提供了一个比较分析,并表明使用建议的框架时可以实现绩效的一致性提高。
Rotation-invariance is a desired property of machine-learning models for medical image analysis and in particular for computational pathology applications. We propose a framework to encode the geometric structure of the special Euclidean motion group SE(2) in convolutional networks to yield translation and rotation equivariance via the introduction of SE(2)-group convolution layers. This structure enables models to learn feature representations with a discretized orientation dimension that guarantees that their outputs are invariant under a discrete set of rotations. Conventional approaches for rotation invariance rely mostly on data augmentation, but this does not guarantee the robustness of the output when the input is rotated. At that, trained conventional CNNs may require test-time rotation augmentation to reach their full capability. This study is focused on histopathology image analysis applications for which it is desirable that the arbitrary global orientation information of the imaged tissues is not captured by the machine learning models. The proposed framework is evaluated on three different histopathology image analysis tasks (mitosis detection, nuclei segmentation and tumor classification). We present a comparative analysis for each problem and show that consistent increase of performances can be achieved when using the proposed framework.