论文标题
使用相邻切片的深度描述子在CT上切片级检测颅内出血
Slice-level Detection of Intracranial Hemorrhage on CT Using Deep Descriptors of Adjacent Slices
论文作者
论文摘要
代表性学习技术的快速发展,例如深神经网络以及大规模宣布良好的医学成像数据集的可用性,必须在3D医学图像分析和诊断中迅速增加监督机器学习的使用。特别是,深度卷积神经网络(D-CNN)一直是关键参与者,并被医学成像界采用,以协助临床医生和医学专家进行疾病诊断和治疗。但是,培训和推断深神经网络(例如D-CNN)在高分辨率3D体积的计算机断层扫描(CT)扫描中以构成诊断任务带来巨大的计算挑战。这项挑战提出了开发基于深度学习的方法,这些方法在2D图像中具有强大的学习表示形式,而是3D扫描。在这项工作中,我们首次提出了一种新的策略,以基于沿轴的相邻切片的描述符在CT扫描上训练\ Emph {slice level}分类器。特别是,每种都是通过卷积神经网络(CNN)提取的。该方法适用于具有诸如RSNA颅内出血(ICH)数据集之类的CT数据集,该数据集旨在预测ICH的存在并将其分类为5种不同的子类型。我们在RSNA ICH挑战的最佳4%表现最佳解决方案中获得了单个模型,其中允许模型集成。实验还表明,所提出的方法在CQ500上显着胜过基线模型。提出的方法是一般的,可以应用于其他3D医学诊断任务,例如MRI成像。为了鼓励该领域的新进步,我们将在接受本文后建立我们的代码和预培训模型。
The rapid development in representation learning techniques such as deep neural networks and the availability of large-scale, well-annotated medical imaging datasets have to a rapid increase in the use of supervised machine learning in the 3D medical image analysis and diagnosis. In particular, deep convolutional neural networks (D-CNNs) have been key players and were adopted by the medical imaging community to assist clinicians and medical experts in disease diagnosis and treatment. However, training and inferencing deep neural networks such as D-CNN on high-resolution 3D volumes of Computed Tomography (CT) scans for diagnostic tasks pose formidable computational challenges. This challenge raises the need of developing deep learning-based approaches that are robust in learning representations in 2D images, instead 3D scans. In this work, we propose for the first time a new strategy to train \emph{slice-level} classifiers on CT scans based on the descriptors of the adjacent slices along the axis. In particular, each of which is extracted through a convolutional neural network (CNN). This method is applicable to CT datasets with per-slice labels such as the RSNA Intracranial Hemorrhage (ICH) dataset, which aims to predict the presence of ICH and classify it into 5 different sub-types. We obtain a single model in the top 4% best-performing solutions of the RSNA ICH challenge, where model ensembles are allowed. Experiments also show that the proposed method significantly outperforms the baseline model on CQ500. The proposed method is general and can be applied to other 3D medical diagnosis tasks such as MRI imaging. To encourage new advances in the field, we will make our codes and pre-trained model available upon acceptance of the paper.