The analysis of Magnetic Resonance Imaging (MRI) sequences enables clinical professionals to monitor the progression of a brain tumor. As the interest for automatizing brain volume MRI analysis increases, it becomes convenient to have each sequence well identified. However, the unstandardized naming of MRI sequences makes their identification difficult for automated systems, as well as makes it difficult for researches to generate or use datasets for machine learning research. In the face of that, we propose a system for identifying types of brain MRI sequences based on deep learning. By training a Convolutional Neural Network (CNN) based on 18-layer ResNet architecture, our system can classify a volumetric brain MRI as a FLAIR, T1, T1c or T2 sequence, or whether it does not belong to any of these classes. The network was evaluated on publicly available datasets comprising both, pre-processed (BraTS dataset) and non-pre-processed (TCGA-GBM dataset), image types with diverse acquisition protocols, requiring only a few slices of the volume for training. Our system can classify among sequence types with an accuracy of 96.81%.
翻译:磁共振成像(MRI)序列的分析使临床专业人员能够监测脑肿瘤的进化。随着对大脑数量磁共振分析自动化的兴趣增加,对每个序列进行明确识别变得方便。然而,对磁共振成像(MRI)序列的不标准化命名使其难以被自动系统识别,也使得研究难以生成或使用数据集进行机器学习研究。面对这种情况,我们提议了一个基于深层学习的脑MRI序列类型识别系统。通过培训一个基于18层ResNet结构的革命神经网络(CNN),我们的系统可以将体积脑MRI分类为FLAIR、T1、T1c或T2序列,或是否不属于这些序列中的任何序列。我们系统可以对公开的数据集进行评价,这些数据集包括预处理的(BRATS数据集)和非预处理的(TCGA-GBM数据集),以及具有不同获取协议的图像类型,只需要少量的分批量的培训。我们的系统可以对96.81%的序列进行分类。