Ying Yuhan, Huang Xin, Song Guoli, Zhao Yiwen, Zhao XinGang, Shi Lin, Gao Ziqi, Li Andi, Gao Tian, Lu Hua, Fan Guoguang
State Key Laboratory of Robotics, Shenyang Institute of Automation, Chinese Academy of Sciences, Shenyang, China.
Institutes for Robotics and Intelligent Manufacturing, Chinese Academy of Sciences, Shenyang, China.
Front Neurosci. 2024 Feb 29;18:1364338. doi: 10.3389/fnins.2024.1364338. eCollection 2024.
In clinical practice and research, the classification and diagnosis of neurological diseases such as Parkinson's Disease (PD) and Multiple System Atrophy (MSA) have long posed a significant challenge. Currently, deep learning, as a cutting-edge technology, has demonstrated immense potential in computer-aided diagnosis of PD and MSA. However, existing methods rely heavily on manually selecting key feature slices and segmenting regions of interest. This not only increases subjectivity and complexity in the classification process but also limits the model's comprehensive analysis of global data features. To address this issue, this paper proposes a novel 3D context-aware modeling framework, named 3D-CAM. It considers 3D contextual information based on an attention mechanism. The framework, utilizing a 2D slicing-based strategy, innovatively integrates a Contextual Information Module and a Location Filtering Module. The Contextual Information Module can be applied to feature maps at any layer, effectively combining features from adjacent slices and utilizing an attention mechanism to focus on crucial features. The Location Filtering Module, on the other hand, is employed in the post-processing phase to filter significant slice segments of classification features. By employing this method in the fully automated classification of PD and MSA, an accuracy of 85.71%, a recall rate of 86.36%, and a precision of 90.48% were achieved. These results not only demonstrates potential for clinical applications, but also provides a novel perspective for medical image diagnosis, thereby offering robust support for accurate diagnosis of neurological diseases.
在临床实践和研究中,帕金森病(PD)和多系统萎缩(MSA)等神经疾病的分类和诊断长期以来一直是一项重大挑战。目前,深度学习作为一项前沿技术,在PD和MSA的计算机辅助诊断中已展现出巨大潜力。然而,现有方法严重依赖手动选择关键特征切片和分割感兴趣区域。这不仅增加了分类过程中的主观性和复杂性,还限制了模型对全局数据特征的综合分析。为解决这一问题,本文提出了一种新颖的3D上下文感知建模框架,名为3D-CAM。它基于注意力机制考虑3D上下文信息。该框架利用基于2D切片的策略,创新性地集成了上下文信息模块和位置过滤模块。上下文信息模块可应用于任何层的特征图,有效组合相邻切片的特征,并利用注意力机制聚焦于关键特征。另一方面,位置过滤模块用于后处理阶段,以过滤分类特征的重要切片段。通过在PD和MSA的全自动分类中采用这种方法,实现了85.71%的准确率、86.36%的召回率和90.48%的精确率。这些结果不仅证明了临床应用的潜力,还为医学图像诊断提供了新的视角,从而为神经疾病的准确诊断提供了有力支持。