池-UNet:利用Poolformer UNet从CT灌注扫描中分割缺血性脑卒中

R. Liu, Wei Pu, Yangyang Zou, Linfeng Jiang, Zhiyong Ye
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引用次数: 0

摘要

缺血性脑卒中是最常见的急性脑疾病,严重威胁患者的生命安全。为了帮助医生尽早确定缺血性脑卒中病变位置等信息,许多学者利用卷积神经网络和Transformer分割网络对CT灌注图像上的病变进行分割。然而,卷积神经网络不能充分提取空间信息,导致有效的病变信息丢失。此外,Transformer的全局注意机制模块在运行时计算量大,不适合用于高分辨率输入和密集预测任务。为了解决这些问题,我们设计了一个DSE-ResNet模块来建立空间信道信息的相关性。然后,我们创新地提出了将Poolformer结构与卷积神经网络相结合的Pool-UNet模型。它可以有效地建模全局上下文,学习多尺度特征,同时保持对低层细节的掌握。在ISLES-2018数据集上的分割结果表明,PoolUNet的分割精度为67.82%,召回率为56.54%,Dice系数为56.04%,Haushofer距离为21.14 mm。与经典的UNet、R2UNet和TransUNet 3分割模型相比,Pool-UNet分别提高了0.26%、1.52%、1.07%和0。准确率,召回率,骰子系数和豪斯多夫距离分别为17mm。与其他经典和先进的医学分割算法相比,Pool-UNet具有竞争优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pool-UNet: Ischemic Stroke Segmentation from CT Perfusion Scans Using Poolformer UNet
Ischemic strokes are the most common acute brain disorder, and seriously threaten patients’ lives. In order to help physicians determine the location of ischemic stroke lesions and other information as early as possible, many scholars have used convolutional neural networks and Transformer segmentation networks to segment lesions on CT perfusion images. However, convolutional neural networks are not capable of extracting spatial information sufficiently, which leads to loss of effective lesion information. In addition, the global attention mechanism module of Transformer is computationally intensive at runtime, which is not suitable for use in high-resolution input and intensive prediction tasks. We designed a DSE-ResNet module to solve these problems to establish spatial channel information correlation. Then we innovatively propose the Pool-UNet model, which combines the Poolformer structure with a convolutional neural network. It can efficiently model the global context and learn multi-scale features while maintaining a grasp of the lowlevel details. The segmentation results on the ISLES-2018 dataset show that PoolUNet achieves 67.82% precision, 56.54% recall, 56.04% Dice coefficient, and 21.14 mm Haushofer distance. Compared with the classical UNet, R2UNet, and TransUNet 3 segmentation models, Pool-UNet improved at least 0.26%, 1.52%, 1.07%, and 0. 17mm in accuracy, recall, Dice coefficient, and Hausdorff distance, respectively. Pool-UNet has a competitive advantage over other classical and advanced medical segmentation algorithms.
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