论文标题
在脑CT扫描中进行自我监督的分数检测
Self-Supervised Out-of-Distribution Detection in Brain CT Scans
论文作者
论文摘要
医学成像数据受注释的可用性有限,因为注释3D医学数据是一项耗时且昂贵的任务。此外,即使有注释可用,基于学习的方法也会遭受高度不平衡的数据。筛查期间的大多数扫描来自正常受试者,但异常情况也有很大的变化。为了解决这些问题,最近已经报道了通过计算重建误差来检测大尺寸正常扫描并检测异常扫描的无监督的深度异常检测方法。在本文中,我们提出了一种新型的自我监督学习技术,以用于异常检测。我们的体系结构主要包括两个部分:1)重建和2)预测几何变换。通过训练网络预测几何变换,该模型可以学习更好的图像特征和正常扫描的分布。在测试时间,几何变换预测指标可以通过计算几何变换和预测之间的误差来分配异常得分。此外,我们进一步将自我监督的学习和上下文修复进行预处理。通过对临床脑CT扫描的比较实验,已验证了该方法的有效性。
Medical imaging data suffers from the limited availability of annotation because annotating 3D medical data is a time-consuming and expensive task. Moreover, even if the annotation is available, supervised learning-based approaches suffer highly imbalanced data. Most of the scans during the screening are from normal subjects, but there are also large variations in abnormal cases. To address these issues, recently, unsupervised deep anomaly detection methods that train the model on large-sized normal scans and detect abnormal scans by calculating reconstruction error have been reported. In this paper, we propose a novel self-supervised learning technique for anomaly detection. Our architecture largely consists of two parts: 1) Reconstruction and 2) predicting geometric transformations. By training the network to predict geometric transformations, the model could learn better image features and distribution of normal scans. In the test time, the geometric transformation predictor can assign the anomaly score by calculating the error between geometric transformation and prediction. Moreover, we further use self-supervised learning with context restoration for pretraining our model. By comparative experiments on clinical brain CT scans, the effectiveness of the proposed method has been verified.