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首页> 外文期刊>IEEE transactions on industrial informatics >Parallel Deep Learning Algorithms With Hybrid Attention Mechanism for Image Segmentation of Lung Tumors
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Parallel Deep Learning Algorithms With Hybrid Attention Mechanism for Image Segmentation of Lung Tumors

机译:具有肺肿瘤图像分割的平行深度学习算法

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摘要

At present, medical images have played a more and more important role in clinical treatment. Lung images provide an important reference for doctors to make a diagnosis. Especially for surgical patients, a tumor can be accurately removed based on the full cognition about its size, position, and quantity. Therefore, computer-aided diagnosis for the analysis and treatment of a lot of lung tumor images is very important. Aiming at complexity and self-adaption of image segmentation in lung tumors, this article proposed a parallel deep learning algorithm with hybrid attention mechanism for image segmentation. First, lung parenchyma was extracted via preprocessing images. Then, images were input into hybrid attention mechanism and densely connected convolutional networks (DenseNet) module, respectively, where hybrid attention mechanism consisted of a spatial attention mechanism and a channel attention mechanism. Finally, four feasible solutions were proposed for the verification through changing the convolution quantity of dense block in DenseNet. The network structure with the better performance was achieved. The experimental results prove the parallel deep learning algorithm with hybrid attention mechanism performed well in image segmentation of lung tumors, and its accuracy can reach 94.61%.
机译:目前,医学图像在临床处理中发挥了越来越重要的作用。肺图像为医生提供了诊断的重要参考。特别是对于手术患者,可以基于对其大小,位置和数量的完全认知来精确去除肿瘤。因此,计算机辅助诊断对大量肺肿瘤图像的分析和治疗非常重要。旨在肺肿瘤中图像分割的复杂性和自适应,本文提出了一种平行深度学习算法,具有用于图像分割的混合注意机制。首先,通过预处理图像提取肺实质。然后,将图像分别输入混合注意力机构和密集连接的卷积网络(DENSENET)模块,其中混合注意力机构包括空间注意机制和通道注意机制。最后,提出了四种可行的解决方案来验证,通过改变DENSENET中的密集块的卷积量。实现了具有更好性能的网络结构。实验结果证明了肺肿瘤图像分割中杂交注意机制的平行深度学习算法,其精度可达94.61%。

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