Helm Kimberly, Mathai Tejas Sudharshan, Kim Boah, Mukherjee Pritam, Liu Jianfei, Summers Ronald M
Imaging Biomarkers and Computer-Aided Diagnosis Laboratory, Department of Radiology and Imaging Sciences, Clinical Center, National Institutes of Health, Bethesda, MD, USA.
ArXiv. 2024 Feb 12:arXiv:2402.08098v1.
Multi-parametric MRI of the body is routinely acquired for the identification of abnormalities and diagnosis of diseases. However, a standard naming convention for the MRI protocols and associated sequences does not exist due to wide variations in imaging practice at institutions and myriad MRI scanners from various manufacturers being used for imaging. The intensity distributions of MRI sequences differ widely as a result, and there also exists information conflicts related to the sequence type in the DICOM headers. At present, clinician oversight is necessary to ensure that the correct sequence is being read and used for diagnosis. This poses a challenge when specific series need to be considered for building a cohort for a large clinical study or for developing AI algorithms. In order to reduce clinician oversight and ensure the validity of the DICOM headers, we propose an automated method to classify the 3D MRI sequence acquired at the levels of the chest, abdomen, and pelvis. In our pilot work, our 3D DenseNet-121 model achieved an score of 99.5% at differentiating 5 common MRI sequences obtained by three Siemens scanners (Aera, Verio, Biograph mMR). To the best of our knowledge, we are the first to develop an automated method for the 3D classification of MRI sequences in the chest, abdomen, and pelvis, and our work has outperformed the previous state-of-the-art MRI series classifiers.
身体的多参数磁共振成像(MRI)通常用于识别异常和疾病诊断。然而,由于各机构成像实践差异很大,且使用了来自不同制造商的大量MRI扫描仪进行成像,因此不存在MRI协议和相关序列的标准命名规范。结果,MRI序列的强度分布差异很大,并且在DICOM头文件中也存在与序列类型相关的信息冲突。目前,需要临床医生进行监督,以确保读取正确的序列并用于诊断。当需要考虑特定系列来构建大型临床研究的队列或开发人工智能算法时,这就带来了挑战。为了减少临床医生的监督并确保DICOM头文件的有效性,我们提出了一种自动方法来对在胸部、腹部和骨盆水平获取的3D MRI序列进行分类。在我们的试点工作中,我们的3D DenseNet-121模型在区分由三台西门子扫描仪(Aera、Verio、Biograph mMR)获得的5种常见MRI序列时,准确率达到了99.5%。据我们所知,我们是第一个开发用于胸部、腹部和骨盆MRI序列3D分类的自动方法的,并且我们的工作优于先前的最先进的MRI序列分类器。