Kim Boah, Mathai Tejas Sudharshan, Helm Kimberly, Pinto Peter A, Summers Ronald M
Radiology and Imaging Sciences, National Institutes of Health Clinical Center, Bethesda, MD 20892 USA.
National Cancer Institute, Bethesda, MD 20892 USA.
ArXiv. 2025 Jun 18:arXiv:2506.15182v1.
Multi-parametric magnetic resonance imaging (mpMRI) exams have various series types acquired with different imaging protocols. The DICOM headers of these series often have incorrect information due to the sheer diversity of protocols and occasional technologist errors. To address this, we present a deep learning-based classification model to classify 8 different body mpMRI series types so that radiologists read the exams efficiently. Using mpMRI data from various institutions, multiple deep learning-based classifiers of ResNet, EfficientNet, and DenseNet are trained to classify 8 different MRI series, and their performance is compared. Then, the best-performing classifier is identified, and its classification capability under the setting of different training data quantities is studied. Also, the model is evaluated on the out-of-training-distribution datasets. Moreover, the model is trained using mpMRI exams obtained from different scanners in two training strategies, and its performance is tested. Experimental results show that the DenseNet-121 model achieves the highest F1-score and accuracy of 0.966 and 0.972 over the other classification models with p-value<0.05. The model shows greater than 0.95 accuracy when trained with over 729 studies of the training data, whose performance improves as the training data quantities grew larger. On the external data with the DLDS and CPTAC-UCEC datasets, the model yields 0.872 and 0.810 accuracy for each. These results indicate that in both the internal and external datasets, the DenseNet-121 model attains high accuracy for the task of classifying 8 body MRI series types.
多参数磁共振成像(mpMRI)检查有多种通过不同成像协议获取的序列类型。由于协议的多样性以及偶尔的技术人员失误,这些序列的DICOM头文件常常包含错误信息。为了解决这个问题,我们提出了一种基于深度学习的分类模型,用于对8种不同的身体mpMRI序列类型进行分类,以便放射科医生能够高效地阅读检查结果。使用来自不同机构的mpMRI数据,对基于ResNet、EfficientNet和DenseNet的多个深度学习分类器进行训练,以对8种不同的MRI序列进行分类,并比较它们的性能。然后,确定性能最佳的分类器,并研究其在不同训练数据量设置下的分类能力。此外,还在训练分布外的数据集上对该模型进行评估。而且,该模型采用两种训练策略,使用从不同扫描仪获得的mpMRI检查进行训练,并测试其性能。实验结果表明,DenseNet - 121模型在其他分类模型中F1分数最高,达到0.966,准确率为0.972,p值<0.05。当使用超过729项训练数据进行训练时,该模型的准确率大于0.95,并且随着训练数据量的增加,其性能有所提高。在DLDS和CPTAC - UCEC数据集的外部数据上,该模型的准确率分别为0.872和0.810。这些结果表明,在内部和外部数据集中,DenseNet - 121模型在对8种身体MRI序列类型进行分类的任务中都能达到较高的准确率。