TY - JOUR
T1 - Brain Tumor Classification using Under-Sampled k-Space Data
T2 - A Deep Learning Approach∗
AU - Sultana, Tania
AU - Kurosaki, Sho
AU - Jitsumatsu, Yutaka
AU - Kuhara, Shigehide
AU - Takeuchi, Junichi
N1 - Publisher Copyright:
© 2023 Institute of Electronics, Information and Communication, Engineers, IEICE. All rights reserved.
PY - 2023/11
Y1 - 2023/11
N2 - We assess how well the recently created MRI reconstruction technique, Multi-Resolution Convolutional Neural Network (MRCNN), performs in the core medical vision field (classification). The primary goal of MRCNN is to identify the best k-space undersampling patterns to accelerate the MRI. In this study, we use the Figshare brain tumor dataset for MRI classification with 3064 T1-weighted contrast-enhanced MRI (CE-MRI) over three categories: meningioma, glioma, and pituitary tumors. We apply MRCNN to the dataset, which is a method to reconstruct high-quality images from under-sampled k-space signals. Next, we employ the pre-trained VGG16 model, which is a Deep Neural Network (DNN) based image classifier to the MRCNN restored MRIs to classify the brain tumors. Our experiments showed that in the case of MRCNN restored data, the proposed brain tumor classifier achieved 92.79% classification accuracy for a 10% sampling rate, which is slightly higher than that of SRCNN, MoDL, and Zero-filling methods have 91.89%, 91.89%, and 90.98% respectively. Note that our classifier was trained using the dataset consisting of the images with full sampling and their labels, which can be regarded as a model of the usual human diagnostician. Hence our results would suggest MRCNN is useful for human diagnosis. In conclusion, MRCNN significantly enhances the accuracy of the brain tumor classification system based on the tumor location using under-sampled k-space signals.
AB - We assess how well the recently created MRI reconstruction technique, Multi-Resolution Convolutional Neural Network (MRCNN), performs in the core medical vision field (classification). The primary goal of MRCNN is to identify the best k-space undersampling patterns to accelerate the MRI. In this study, we use the Figshare brain tumor dataset for MRI classification with 3064 T1-weighted contrast-enhanced MRI (CE-MRI) over three categories: meningioma, glioma, and pituitary tumors. We apply MRCNN to the dataset, which is a method to reconstruct high-quality images from under-sampled k-space signals. Next, we employ the pre-trained VGG16 model, which is a Deep Neural Network (DNN) based image classifier to the MRCNN restored MRIs to classify the brain tumors. Our experiments showed that in the case of MRCNN restored data, the proposed brain tumor classifier achieved 92.79% classification accuracy for a 10% sampling rate, which is slightly higher than that of SRCNN, MoDL, and Zero-filling methods have 91.89%, 91.89%, and 90.98% respectively. Note that our classifier was trained using the dataset consisting of the images with full sampling and their labels, which can be regarded as a model of the usual human diagnostician. Hence our results would suggest MRCNN is useful for human diagnosis. In conclusion, MRCNN significantly enhances the accuracy of the brain tumor classification system based on the tumor location using under-sampled k-space signals.
KW - MRI
KW - brain tumor classification
KW - deep learning
KW - reconstruction
KW - super-resolution
KW - under-sampled k-space data
UR - http://www.scopus.com/inward/record.url?scp=85177035593&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85177035593&partnerID=8YFLogxK
U2 - 10.1587/transinf.2022EDP7198
DO - 10.1587/transinf.2022EDP7198
M3 - Article
AN - SCOPUS:85177035593
SN - 0916-8532
VL - E106.D
SP - 1831
EP - 1841
JO - IEICE Transactions on Information and Systems
JF - IEICE Transactions on Information and Systems
IS - 11
ER -