使用卷积神经网络的身体MRI序列自动分类。

IF 3.8 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Academic Radiology Pub Date : 2024-12-06 DOI:10.1016/j.acra.2024.11.046
Boah Kim, Tejas Sudharshan Mathai, Kimberly Helm, Pritam Mukherjee, Jianfei Liu, Ronald M Summers
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引用次数: 0

摘要

基本原理和目的:多参数磁共振成像(mpMRI)在临床实践中是常规获得的。然而,目前还没有MRI方案和系列的标准化命名约定。DICOM标题中出现的系列描述中的冲突是由于来自不同制造商的无数MRI扫描仪用于成像,不同机构的成像实践差异很大,以及技术人员的偏好。这些冲突影响了悬挂协议,该协议规定了阅读放射科医生的序列安排。目前,临床医生的监督是必要的,以确保正确的序列被读取和用于诊断。这项试点工作旨在对在胸部、腹部和骨盆水平上获得的mpMRI研究中的五个不同系列进行分类。材料与方法:首先,利用西门子扫描仪采集的数据,对比二维和三维分类网络,确定最优网络。然后,用不同的训练数据量对其进行训练,分析其性能。分布外(OOD)鲁棒性对数据采集的Philips扫描仪也进行了测量。此外,还研究了数据增强对模型训练的影响。该模型还通过降采样或裁剪在较小的输入量下进行了测试。最后,结合西门子和飞利浦扫描仪的数据对模型进行训练,以弥合不同扫描仪之间的性能差距。结果:在ResNet-50、ResNet-101、DenseNet-121和EfficientNet-BN0的2D和3D网络中,3D DenseNet-121集成在西门子扫描仪的数据上测试时获得了99.5%的F1分数。该模型在飞利浦扫描仪的OOD数据上表现良好,达到了86.5%的F1分数。在使用和不使用数据增强训练的模型之间,以及使用原始大小的输入和使用较小大小的输入训练的模型之间,没有统计学上的显著差异。当使用组合数据训练模型时,Philips测试集的F1分数提高到98.8%,Siemens测试集的F1分数提高到99.3%。结论:我们的试点工作有助于在胸部、腹部和骨盆水平的研究中对MRI序列进行分类。它有可能实现悬挂方案的强大自动化,并为临床前研究创建大规模数据队列。
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Automated Classification of Body MRI Sequences Using Convolutional Neural Networks.

Rationale and objectives: Multi-parametric MRI (mpMRI) studies of the body are routinely acquired in clinical practice. However, a standardized naming convention for MRI protocols and series does not exist currently. Conflicts in the series descriptions present in the DICOM headers arise due to myriad MRI scanners from various manufacturers used for imaging, wide variations in imaging practices across institutions, and technologist preferences. These conflicts affect the hanging protocol, which dictates the arrangement of sequences for the reading radiologist. At present, clinician supervision is necessary to ensure that the correct sequence is being read and used for diagnosis. This pilot work seeks to classify five different series in mpMRI studies acquired at the levels of the chest, abdomen, and pelvis.

Materials and methods: First, 2D and 3D classification networks were compared using data acquired by Siemens scanners and the optimal network was identified. Then, its performance was analyzed when trained with different training data quantities. The out-of-distribution (OOD) robustness on data acquired by a Philips scanner was also measured. In addition, the effect of data augmentation on model training was studied. The model was also tested with smaller input volumes through downsampling or cropping. Finally, the model was trained on combined data from both Siemens and Philips scanners to bridge the performance gap between different scanners.

Results: Among 2D and 3D networks of ResNet-50, ResNet-101, DenseNet- 121, and EfficientNet-BN0, the 3D DenseNet-121 ensemble achieved an F1 score of 99.5% when tested on data from the Siemens scanners. The model performed well on OOD data from the Philips scanner and achieved an F1 score of 86.5%. There was no statistically significant difference between the models trained with and without data augmentation, and between the models trained with original-sized input and with smaller-sized input. When training the model with combined data, the F1 score improved to 98.8% for the Philips test set and 99.3% for the Siemens test set respectively.

Conclusion: Our pilot work is useful for the classification of MRI sequences in studies acquired at the level of the chest, abdomen, and pelvis. It has the potential for robust automation of hanging protocols and the creation of large-scale data cohorts for pre-clinical research.

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来源期刊
Academic Radiology
Academic Radiology 医学-核医学
CiteScore
7.60
自引率
10.40%
发文量
432
审稿时长
18 days
期刊介绍: Academic Radiology publishes original reports of clinical and laboratory investigations in diagnostic imaging, the diagnostic use of radioactive isotopes, computed tomography, positron emission tomography, magnetic resonance imaging, ultrasound, digital subtraction angiography, image-guided interventions and related techniques. It also includes brief technical reports describing original observations, techniques, and instrumental developments; state-of-the-art reports on clinical issues, new technology and other topics of current medical importance; meta-analyses; scientific studies and opinions on radiologic education; and letters to the Editor.
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