Liu Haiyan, Zeng Yu, Li Hao, Wang Fuxin, Chang Jianjun, Guo Huaping, Zhang Jian
Department of Neurology, Xinyang Central Hospital, Xinyang, China.
School of Medicine, Xinyang Normal University, Xinyang, China.
IET Syst Biol. 2024 Dec;18(6):285-297. doi: 10.1049/syb2.12103. Epub 2024 Nov 24.
Intracranial haemorrhage (ICH) is an urgent and potentially fatal medical condition caused by brain blood vessel rupture, leading to blood accumulation in the brain tissue. Due to the pressure and damage it causes to brain tissue, ICH results in severe neurological impairment or even death. Recently, deep neural networks have been widely applied to enhance the speed and precision of ICH detection yet they are still challenged by small or subtle hemorrhages. The authors introduce DDANet, a novel haematoma segmentation model for brain CT images. Specifically, a dilated convolution pooling block is introduced in the intermediate layers of the encoder to enhance feature extraction capabilities of middle layers. Additionally, the authors incorporate a self-attention mechanism to capture global semantic information of high-level features to guide the extraction and processing of low-level features, thereby enhancing the model's understanding of the overall structure while maintaining details. DDANet also integrates residual networks, channel attention, and spatial attention mechanisms for joint optimisation, effectively mitigating the severe class imbalance problem and aiding the training process. Experiments show that DDANet outperforms current methods, achieving the Dice coefficient, Jaccard index, sensitivity, accuracy, and a specificity of 0.712, 0.601, 0.73, 0.997, and 0.998, respectively. The code is available at https://github.com/hpguo1982/DDANet.
颅内出血(ICH)是一种由脑血管破裂引起的紧急且可能致命的病症,会导致脑组织内血液积聚。由于其对脑组织造成的压力和损伤,颅内出血会导致严重的神经功能障碍甚至死亡。最近,深度神经网络已被广泛应用于提高颅内出血检测的速度和精度,但它们仍面临小出血或细微出血的挑战。作者介绍了DDANet,一种用于脑CT图像的新型血肿分割模型。具体而言,在编码器的中间层引入了扩张卷积池化块,以增强中间层的特征提取能力。此外,作者纳入了自注意力机制,以捕捉高级特征的全局语义信息,从而指导低级特征的提取和处理,进而在保持细节的同时增强模型对整体结构的理解。DDANet还集成了残差网络、通道注意力和空间注意力机制进行联合优化,有效缓解了严重的类别不平衡问题,并有助于训练过程。实验表明,DDANet优于当前方法,分别实现了0.712、0.601、0.73、0.997和0.998的Dice系数、Jaccard指数、灵敏度、准确度和特异性。代码可在https://github.com/hpguo1982/DDANet获取。