Classification of Multi-Parametric Body MRI Series Using Deep Learning
Journal:
arXiv
Published Date:
Jun 18, 2025
Abstract
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.