Abstract

BackgroundBrain tumor segmentation is a challenging problem in medical image processing and analysis. It is a very time-consuming and error-prone task. In order to reduce the burden on physicians and improve the segmentation accuracy, the computer-aided detection (CAD) systems need to be developed. Due to the powerful feature learning ability of the deep learning technology, many deep learning-based methods have been applied to the brain tumor segmentation CAD systems and achieved satisfactory accuracy. However, deep learning neural networks have high computational complexity, and the brain tumor segmentation process consumes significant time. Therefore, in order to achieve the high segmentation accuracy of brain tumors and obtain the segmentation results efficiently, it is very demanding to speed up the segmentation process of brain tumors.ResultsCompared with traditional computing platforms, the proposed FPGA accelerator has greatly improved the speed and the power consumption. Based on the BraTS19 and BraTS20 dataset, our FPGA-based brain tumor segmentation accelerator is 5.21 and 44.47 times faster than the TITAN V GPU and the Xeon CPU. In addition, by comparing energy efficiency, our design can achieve 11.22 and 82.33 times energy efficiency than GPU and CPU, respectively.ConclusionWe quantize and retrain the neural network for brain tumor segmentation and merge batch normalization layers to reduce the parameter size and computational complexity. The FPGA-based brain tumor segmentation accelerator is designed to map the quantized neural network model. The accelerator can increase the segmentation speed and reduce the power consumption on the basis of ensuring high accuracy which provides a new direction for the automatic segmentation and remote diagnosis of brain tumors.

Highlights

  • Brain tumor segmentation is a challenging problem in medical image processing and analysis

  • The brain tumor segmentation algorithm based on deep learning has the characteristics of high accuracy and automatic learning, which breaks through the limitations of traditional brain image segmentation algorithm and becomes a hot research topic in the field of brain image segmentation in recent years

  • Brain tumor is one of the most common cancers which has the characteristics of high morbidity, high recurrence, and high mortality

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Summary

Introduction

Brain tumor segmentation is a challenging problem in medical image processing and analysis. It is a very time-consuming and error-prone task. Brain glioma is the most common malignant tumor caused by the cancerization of glial cells in the brain and spinal cord It has the characteristics of high incidence, high recurrence, high mortality and low cure rate. Xiong et al BMC Bioinformatics (2021) 22:421 and cerebrospinal fluid [1] It plays an important role in the diagnosis and treatment of the brain glioma. Due to the increasing number of brain tumor images, manual segmentation of different areas of brain tumors becomes an error-prone and time-consuming task for physicians. Automated methods are needed for high accuracy brain tumor location and segmentation

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