4.6 Article

dResU-Net: 3D deep residual U-Net based brain tumor segmentation from multimodal MRI

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ELSEVIER SCI LTD
DOI: 10.1016/j.bspc.2022.103861

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Medical image segmentation; Brain tumor segmentation; Residual U-Net; BraTS 2020; Multimodal MRI; 3D deep learning

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This research presents an end-to-end framework for automatic 3D Brain Tumor Segmentation using a hybrid model of deep residual network and U-Net. The proposed model achieved promising results in terms of segmentation performance, with high dice scores for tumor sub-regions. It also demonstrated robustness in a real-world clinical setting when validated on an external cohort.
Glioma is the most prevalent and dangerous type of brain tumor which can be life-threatening when its grade is high. The early detection of these tumors can improve and save the life of the patients. The automatic seg-mentation of brain tumor from magnetic resonance imaging (MRI) plays a vital role in treatment planning and timely diagnosis. Automatic segmentation is a challenging task due to the massive amount of information pro-vided by MRI and the variation in the location and size of the tumor. Therefore, a reliable and authentic method to segment the tumorous region from healthy tissues accurately is an open challenge in the field of deep learning -based medical image analysis. This research paper presents an end-to-end framework for automatic 3D Brain Tumor Segmentation (BTS). The proposed model is a hybrid of the deep residual network and U-Net model (dResU-Net). The residual network is used as an encoder in the proposed architecture with the decoder of the U -Net model to handle the issue of vanishing gradient. The proposed model is designed to take advantage from low-level and high-level features simultaneously for making the prediction. In addition, shortcut connections are employed between residual network to preserve low-level features at each level. Furthermore, skip connections between residual and convolutional blocks in the proposed architecture are used to accelerate the training process. The proposed architecture achieved promising results with the average dice score for the tumor core (TC), whole tumor (WT), and enhancing tumor (ET) on the BraTS 2020 dataset of 0.8357, 0.8660, and 0.8004, respectively. To demonstrate the robustness of the proposed model in real-world clinical settings, validation of the trained model on an external cohort is performed on randomly selected 50 patients of the BraTS 2021 benchmark dataset. The achieved dice scores on the external cohort are 0.8400, 0.8601, and 0.8221 for TC, WT, and ET, respectively. The comparison of results of the proposed approach with the state-of-the-art techniques indicates that dResU-Net can significantly improve the segmentation performance of brain tumor sub-regions.

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