Title of article :
Deep Learning-Based Acute Ischemic Stroke Lesion Segmentation Method on Multimodal MR Images Using a Few Fully Labeled Subjects
Author/Authors :
Zhao, Bin Nankai University - Tianjin, China , Liu, Zhiyang Nankai University - Tianjin, China , Liu, Guohua Nankai University - Tianjin, China , Cao, Chen Department of Medical Imaging - Tianjin Huanhu Hospital - Tianjin, China , Jin, Song Department of Medical Imaging - Tianjin Huanhu Hospital - Tianjin, China , Wu, Hong Nankai University - Tianjin, China , Ding, Shuxue Nankai University - Tianjin, China
Pages :
12
From page :
1
To page :
12
Abstract :
Acute ischemic stroke (AIS) has been a common threat to human health and may lead to severe outcomes without proper and prompt treatment. To precisely diagnose AIS, it is of paramount importance to quantitatively evaluate the AIS lesions. By adopting a convolutional neural network (CNN), many automatic methods for ischemic stroke lesion segmentation on magnetic resonance imaging (MRI) have been proposed. However, most CNN-based methods should be trained on a large amount of fully labeled subjects, and the label annotation is a labor-intensive and time-consuming task. Therefore, in this paper, we propose to use a mixture of many weakly labeled and a few fully labeled subjects to relieve the thirst of fully labeled subjects. In particular, a multifeature map fusion network (MFMF-Network) with two branches is proposed, where hundreds of weakly labeled subjects are used to train the classification branch, and several fully labeled subjects are adopted to tune the segmentation branch. By training on 398 weakly labeled and 5 fully labeled subjects, the proposed method is able to achieve a mean dice coefficient of 0:699 ± 0:128 on a test set with 179 subjects. The lesion-wise and subject-wise metrics are also evaluated, where a lesion-wise F1 score of 0.886 and a subject-wise detection rate of 1 are achieved.
Keywords :
MR , Multimoda , Segmentation , ADC
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2021
Full Text URL :
Record number :
2616196
Link To Document :
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