一种新的基于深度搜索的轻量级CAR网络用于脑肿瘤MR图像的分割

Sreekar Tankala , Geetha Pavani , Birendra Biswal , G. Siddartha , Gupteswar Sahu , N. Bala Subrahmanyam , S. Aakash
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引用次数: 1

摘要

在这个现代时代,脑瘤是由于异常细胞的生长或死细胞在大脑中积累而发生的可怕疾病之一。如果这些异常在早期阶段未被发现,它们会导致严重的情况,并可能导致患者死亡。随着医学影像技术的进步,磁共振成像(MRI)技术被发展为对患者进行人工分析。然而,这种手动筛选很容易出错。为了克服这一问题,将一种新的深度搜索块(DSB)和CAR模块集成在一起,提出了一种新的基于深度搜索的网络,称为轻量级信道注意和残差网络(LWCAR-Net)。深度搜索块通过执行一系列卷积操作提取相关特征,使网络能够在每个阶段恢复底层信息。另一方面,解码路径中的CAR模块对特征映射进行细化,提高网络的表示能力和泛化能力。这使得网络可以更精确地从MRI图像中定位脑肿瘤像素。通过对BraTs 2020和Kaggle LGG数据集等不同的全球可用数据集进行测试,估计了基于LWCAR-Net深度搜索的性能。该方法灵敏度为95%,特异度为99%,准确率为99.97%,骰子系数为95%。此外,所提出的模型优于现有的最先进的模型,如U-Net++, SegNet等,在分割脑肿瘤细胞时实现了98%的AUC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel depth search based light weight CAR network for the segmentation of brain tumour from MR images

In this modern era, brain tumour is one of the dreadful diseases that occur due to the growth of abnormal cells or by the accumulation of dead cells in the brain. If these abnormalities are not detected in the early stages, they lead to severe conditions and may cause death to the patients. With the advancement of medical imaging, Magnetic Resonance Images (MRI) are developed to analyze the patients manually. However, this manual screening is prone to errors. To overcome this, a novel depth search-based network termed light weight channel attention and residual network (LWCAR-Net) is proposed by integrating with a novel depth search block (DSB) and a CAR module. The depth search block extracts the pertinent features by performing a series of convolution operations enabling the network to restore low-level information at every stage. On other hand, CAR module in decoding path refines the feature maps to increase the representation and generalization abilities of the network. This allows the network to locate the brain tumor pixels from MRI images more precisely. The performance of the depth search based LWCAR-Net is estimated by testing on different globally available datasets like BraTs 2020 and Kaggle LGG dataset. This method achieved a sensitivity of 95%, specificity of 99%, the accuracy of 99.97%, and dice coefficient of 95% respectively. Furthermore, the proposed model outperformed the existing state-of-the-art models like U-Net++, SegNet, etc by achieving an AUC of 98% in segmenting the brain tumour cells.

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来源期刊
Neuroscience informatics
Neuroscience informatics Surgery, Radiology and Imaging, Information Systems, Neurology, Artificial Intelligence, Computer Science Applications, Signal Processing, Critical Care and Intensive Care Medicine, Health Informatics, Clinical Neurology, Pathology and Medical Technology
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