Early diagnosis of Alzheimer's Disease (AD), particularly at the mild cognitive impairment stage, is essential for timely intervention. However, this process faces significant barriers, including reliance on subjective assessments and the high cost of advanced imaging techniques. While deep learning offers automated solutions to improve diagnostic accuracy, its widespread adoption remains constrained due to high energy requirements and computational demands, particularly in resource-limited settings. Spiking neural networks (SNNs) provide a promising alternative, as their brain-inspired design is well-suited to model the sparse and event-driven patterns characteristic of neural degeneration in AD. These networks offer the potential for developing interpretable, energy-efficient diagnostic tools. Despite their advantages, existing SNNs often suffer from limited expressiveness and challenges in stable training, which reduce their effectiveness in handling complex medical tasks. To address these shortcomings, we introduce FasterSNN, a hybrid neural architecture that combines biologically inspired Leaky Integrate-and-Fire (LIF) neurons with region-adaptive convolution and multi-scale spiking attention mechanisms. This approach facilitates efficient, sparse processing of 3D MRI data while maintaining high diagnostic accuracy. Experimental results on benchmark datasets reveal that FasterSNN delivers competitive performance with significantly enhanced efficiency and training stability, highlighting its potential for practical application in AD screening. Our source code is available at https://github.com/wuchangw/FasterSNN.
翻译:阿尔茨海默病(AD)的早期诊断,尤其是在轻度认知障碍阶段,对于及时干预至关重要。然而,这一过程面临显著障碍,包括对主观评估的依赖以及先进成像技术的高昂成本。尽管深度学习提供了提高诊断准确性的自动化解决方案,但其广泛应用仍受限于高能耗和计算需求,尤其是在资源受限的环境中。脉冲神经网络(SNNs)提供了一种有前景的替代方案,其受大脑启发的设计非常适合模拟AD中神经退行性变特有的稀疏和事件驱动模式。这些网络有望开发出可解释、高能效的诊断工具。尽管具有优势,现有SNNs常面临表达能力有限和训练稳定性挑战的问题,这降低了其在处理复杂医疗任务中的有效性。为应对这些不足,我们提出了FasterSNN,一种混合神经架构,将受生物学启发的漏积分发放(LIF)神经元与区域自适应卷积和多尺度脉冲注意力机制相结合。该方法能够高效、稀疏地处理3D MRI数据,同时保持高诊断准确性。在基准数据集上的实验结果表明,FasterSNN以显著提升的效率和训练稳定性实现了有竞争力的性能,凸显了其在AD筛查中实际应用的潜力。我们的源代码可在 https://github.com/wuchangw/FasterSNN 获取。