Deep learning-based ensemble model for brain tumor segmentation using multi-parametric MR scans
Author:
Das Suchismita12, Bose Srijib3, Nayak Gopal Krishna1, Saxena Sanjay1
Affiliation:
1. Computer Science & Engineering, IIIT Bhubaneswar , Bhubaneswar , Odisha, 751003 , India 2. KIIT University , Odisha , 751024 , India 3. Computer Science & Engineering, KIIT University , Odisha , 751024 , India
Abstract
Abstract
Glioma is a type of fast-growing brain tumor in which the shape, size, and location of the tumor vary from patient to patient. Manual extraction of a region of interest (tumor) with the help of a radiologist is a very difficult and time-consuming task. To overcome this problem, we proposed a fully automated deep learning-based ensemble method of brain tumor segmentation on four different 3D multimodal magnetic resonance imaging (MRI) scans. The segmentation is performed by three most efficient encoder–decoder deep models for segmentation and their results are measured through the well-known segmentation metrics. Then, a statistical analysis of the models was performed and an ensemble model is designed by considering the highest Matthews correlation coefficient using a particular MRI modality. There are two main contributions of the article: first the detailed comparison of the three models, and second proposing an ensemble model by combining the three models based on their segmentation accuracy. The model is evaluated using the brain tumor segmentation (BraTS) 2017 dataset and the F1 score of the final combined model is found to be 0.92, 0.95, 0.93, and 0.84 for whole tumor, core, enhancing tumor, and edema sub-tumor, respectively. Experimental results show that the model outperforms the state of the art.
Publisher
Walter de Gruyter GmbH
Subject
General Computer Science
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Cited by
12 articles.
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