Junjie Li, Hong Peng, Bing Li, Zhicai Liu, Rikong Lugu, Bingyan He
{"title":"基于非线性峰值神经卷积模型的全局-局部特征融合网络在MRI脑肿瘤分割中的应用。","authors":"Junjie Li, Hong Peng, Bing Li, Zhicai Liu, Rikong Lugu, Bingyan He","doi":"10.1142/S0129065725500364","DOIUrl":null,"url":null,"abstract":"<p><p>Due to the differences in size, shape, and location of brain tumors, brain tumor segmentation differs greatly from that of other organs. The purpose of brain tumor segmentation is to accurately locate and segment tumors from MRI images to assist doctors in diagnosis, treatment planning and surgical navigation. NSNP-like convolutional model is a new neural-like convolutional model inspired by nonlinear spiking mechanism of nonlinear spiking neural P (NSNP) systems. Therefore, this paper proposes a global-local feature fusion network based on NSNP-like convolutional model for MRI brain tumor segmentation. To this end, we have designed three characteristic modules that take full advantage of the NSNP-like convolution model: dilated SNP module (DSNP), multi-path dilated SNP pooling module (MDSP) and Poolformer module. The DSNP and MDSP modules are employed to construct the encoders. These modules help address the issue of feature loss and enable the fusion of more high-level features. On the other hand, the Poolformer module is used in the decoder. It processes features that contain global context information and facilitates the interaction between local and global features. In addition, channel spatial attention (CSA) module is designed at the skip connection between encoder and decoder to establish the long-range dependence between the same layers, thereby enhancing the relationship between channels and making the model have global modeling capabilities. In the experiments, our model achieves Dice coefficients of 85.71[Formula: see text], 92.32[Formula: see text], 87.75[Formula: see text] for ET, WT, and TC, respectively, on the N-BraTS2021 dataset. Moreover, our model achieves Dice coefficients of 83.91[Formula: see text], 91.96[Formula: see text], 90.14[Formula: see text] and 85.05[Formula: see text], 92.30[Formula: see text], 90.31[Formula: see text] on the BraTS2018 and BraTS2019 datasets respectively. Experimental results also indicate that our model not only achieves good brain tumor segmentation performance, but also has good generalization ability. The code is already available on GitHub: https://github.com/Li-JJ-1/NSNP-brain-tumor-segmentation.</p>","PeriodicalId":94052,"journal":{"name":"International journal of neural systems","volume":" ","pages":"2550036"},"PeriodicalIF":6.4000,"publicationDate":"2025-08-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Global-Local Feature Fusion Network Based on Nonlinear Spiking Neural Convolutional Model for MRI Brain Tumor Segmentation.\",\"authors\":\"Junjie Li, Hong Peng, Bing Li, Zhicai Liu, Rikong Lugu, Bingyan He\",\"doi\":\"10.1142/S0129065725500364\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>Due to the differences in size, shape, and location of brain tumors, brain tumor segmentation differs greatly from that of other organs. The purpose of brain tumor segmentation is to accurately locate and segment tumors from MRI images to assist doctors in diagnosis, treatment planning and surgical navigation. NSNP-like convolutional model is a new neural-like convolutional model inspired by nonlinear spiking mechanism of nonlinear spiking neural P (NSNP) systems. Therefore, this paper proposes a global-local feature fusion network based on NSNP-like convolutional model for MRI brain tumor segmentation. To this end, we have designed three characteristic modules that take full advantage of the NSNP-like convolution model: dilated SNP module (DSNP), multi-path dilated SNP pooling module (MDSP) and Poolformer module. The DSNP and MDSP modules are employed to construct the encoders. These modules help address the issue of feature loss and enable the fusion of more high-level features. On the other hand, the Poolformer module is used in the decoder. It processes features that contain global context information and facilitates the interaction between local and global features. In addition, channel spatial attention (CSA) module is designed at the skip connection between encoder and decoder to establish the long-range dependence between the same layers, thereby enhancing the relationship between channels and making the model have global modeling capabilities. In the experiments, our model achieves Dice coefficients of 85.71[Formula: see text], 92.32[Formula: see text], 87.75[Formula: see text] for ET, WT, and TC, respectively, on the N-BraTS2021 dataset. Moreover, our model achieves Dice coefficients of 83.91[Formula: see text], 91.96[Formula: see text], 90.14[Formula: see text] and 85.05[Formula: see text], 92.30[Formula: see text], 90.31[Formula: see text] on the BraTS2018 and BraTS2019 datasets respectively. Experimental results also indicate that our model not only achieves good brain tumor segmentation performance, but also has good generalization ability. 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引用次数: 0
摘要
由于脑肿瘤的大小、形状和位置的不同,脑肿瘤的分割与其他器官有很大的不同。脑肿瘤分割的目的是从MRI图像中对肿瘤进行准确定位和分割,以辅助医生进行诊断、治疗计划和手术导航。NSNP-like卷积模型是受非线性spike neural P (NSNP)系统的非线性spike机制启发而建立的一种新的类神经卷积模型。为此,本文提出了一种基于类nsnp卷积模型的全局-局部特征融合网络用于MRI脑肿瘤分割。为此,我们设计了充分利用类nsnp卷积模型的三个特征模块:扩展SNP模块(DSNP)、多路径扩展SNP池化模块(MDSP)和Poolformer模块。采用DSNP和MDSP模块构建编码器。这些模块有助于解决功能丢失的问题,并支持融合更高级的功能。另一方面,在解码器中使用Poolformer模块。它处理包含全局上下文信息的特征,并促进局部特征和全局特征之间的交互。此外,在编码器和解码器之间的跳接处设计信道空间注意(channel spatial attention, CSA)模块,建立同层之间的远程依赖关系,从而增强信道之间的关系,使模型具有全局建模能力。在实验中,我们的模型在N-BraTS2021数据集上,ET、WT和TC的Dice系数分别为85.71[公式:见文]、92.32[公式:见文]、87.75[公式:见文]。此外,我们的模型在BraTS2018和BraTS2019数据集上分别实现了83.91[公式:见文]、91.96[公式:见文]、90.14[公式:见文]和85.05[公式:见文]、92.30[公式:见文]、90.31[公式:见文]的Dice系数。实验结果表明,该模型不仅具有良好的脑肿瘤分割性能,而且具有良好的泛化能力。代码已经可以在GitHub上获得:https://github.com/Li-JJ-1/NSNP-brain-tumor-segmentation。
Global-Local Feature Fusion Network Based on Nonlinear Spiking Neural Convolutional Model for MRI Brain Tumor Segmentation.
Due to the differences in size, shape, and location of brain tumors, brain tumor segmentation differs greatly from that of other organs. The purpose of brain tumor segmentation is to accurately locate and segment tumors from MRI images to assist doctors in diagnosis, treatment planning and surgical navigation. NSNP-like convolutional model is a new neural-like convolutional model inspired by nonlinear spiking mechanism of nonlinear spiking neural P (NSNP) systems. Therefore, this paper proposes a global-local feature fusion network based on NSNP-like convolutional model for MRI brain tumor segmentation. To this end, we have designed three characteristic modules that take full advantage of the NSNP-like convolution model: dilated SNP module (DSNP), multi-path dilated SNP pooling module (MDSP) and Poolformer module. The DSNP and MDSP modules are employed to construct the encoders. These modules help address the issue of feature loss and enable the fusion of more high-level features. On the other hand, the Poolformer module is used in the decoder. It processes features that contain global context information and facilitates the interaction between local and global features. In addition, channel spatial attention (CSA) module is designed at the skip connection between encoder and decoder to establish the long-range dependence between the same layers, thereby enhancing the relationship between channels and making the model have global modeling capabilities. In the experiments, our model achieves Dice coefficients of 85.71[Formula: see text], 92.32[Formula: see text], 87.75[Formula: see text] for ET, WT, and TC, respectively, on the N-BraTS2021 dataset. Moreover, our model achieves Dice coefficients of 83.91[Formula: see text], 91.96[Formula: see text], 90.14[Formula: see text] and 85.05[Formula: see text], 92.30[Formula: see text], 90.31[Formula: see text] on the BraTS2018 and BraTS2019 datasets respectively. Experimental results also indicate that our model not only achieves good brain tumor segmentation performance, but also has good generalization ability. The code is already available on GitHub: https://github.com/Li-JJ-1/NSNP-brain-tumor-segmentation.