ATSNet: An Attention-Based Tumor Segmentation Network

Eashan Sapre, Abhishek Chakravarthi, S. Bhanot
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Abstract

Science and technology has had a huge impact in the field of medicine leading to more accurate and preventive diagnosis, and treatment. Detecting brain tumors in early stages is essential for timely treatment of patients. Automatic segmentation of brain tumors is a challenging task as tumors vary in shapes and size. In this paper, we propose a fully automatic novel deep learning architecture for brain tumor segmentation named ATSNet. The network provides an end-to-end solution for feature extraction and brain tumor segmentation on Magnetic Resonance Images. Our proposed model uses an encoder-decoder architecture, employing residual modules for tackling gradient dispersion and uses skip connections for better feature map synthesis. The network utilizes attention gates (AG) to tackle the variability of brain tumors. Performance metrics such as dice score, precision, recall and intersection-over-union (IoU) have been used to evaluate and benchmark our model against those reported in literature. We have evaluated our model using the k-fold cross-validation approach. Our analysis also includes an ablation study on our model to identify important parts of the architecture by their effect on performance for optimizing the model.
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基于注意力的肿瘤分割网络
科学技术在医学领域产生了巨大的影响,导致更准确和预防性的诊断和治疗。早期发现脑肿瘤对于及时治疗患者至关重要。脑肿瘤的自动分割是一项具有挑战性的任务,因为肿瘤的形状和大小各不相同。在本文中,我们提出了一种全新的全自动脑肿瘤分割深度学习架构ATSNet。该网络为磁共振图像的特征提取和脑肿瘤分割提供了端到端的解决方案。我们提出的模型使用编码器-解码器架构,使用残差模块来处理梯度色散,并使用跳过连接来更好地合成特征图。该网络利用注意力门(AG)来处理脑肿瘤的可变性。性能指标,如骰子分数,精度,召回率和交叉-超联合(IoU)已被用于评估和基准我们的模型与文献报道。我们使用k-fold交叉验证方法评估了我们的模型。我们的分析还包括对模型的消融研究,通过对优化模型的性能的影响来确定架构的重要部分。
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