Abstract

Automatic and accurate segmentation of brain tumors plays an important role in the diagnosis and treatment of brain tumors. In order to improve the accuracy of brain tumor segmentation, an improved multimodal MRI brain tumor segmentation algorithm based on U-net is proposed in this paper. In the original U-net, the contracting path uses the pooling layer to reduce the resolution of the feature image and increase the receptive field. In the expanding path, the up sampling is used to restore the size of the feature image. In this process, some details of the image will be lost, leading to low segmentation accuracy. This paper proposes an improved convolutional neural network named AIU-net (Atrous-Inception U-net). In the encoder of U-net, A-inception (Atrous-inception) module is introduced to replace the original convolution block. The A-inception module is an inception structure with atrous convolution, which increases the depth and width of the network and can expand the receptive field without adding additional parameters. In order to capture the multiscale features, the atrous spatial pyramid pooling module (ASPP) is introduced. The experimental results on the BraTS (the multimodal brain tumor segmentation challenge) dataset show that the dice score obtained by this method is 0.93 for the enhancing tumor region, 0.86 for the whole tumor region, and 0.92 for the tumor core region, and the segmentation accuracy is improved.

Highlights

  • Glioma is the most common brain tumor, and it is the brain tumor with the highest mortality and morbidity

  • The automatic segmentation method based on deep learning has achieved good results in medical image segmentation [3]

  • When convolutional neural network is used for end-to-end semantic segmentation of images, down sampling will reduce the resolution of the feature maps, which can reduce the amount of computation and expand the receptive field

Read more

Summary

Introduction

Glioma is the most common brain tumor, and it is the brain tumor with the highest mortality and morbidity. Accurate segmentation of gliomas is of great significance for the diagnosis and treatment of gliomas. Magnetic resonance imaging (MRI) is an important technical means to assist doctors in the diagnosis and treatment of brain tumors [1]. Various sequences of MRI can provide different brain tumor tissue structures, and it is usually combined with multimodal MRI of brain tumor to segment brain tumors. Because of the complexity of brain tumor structure, the fuzziness of tumor boundary, and the difference of different individuals, the accurate segmentation of brain tumor is a complicated and difficult task [2]. E traditional manual segmentation needs a lot of time for doctors to complete, and the segmentation accuracy is relatively rough. The automatic segmentation method based on deep learning has achieved good results in medical image segmentation [3]

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call