3D-CAM: a novel context-aware feature extraction framework for neurological disease classification

Front Neurosci. 2024 Feb 29:18:1364338. doi: 10.3389/fnins.2024.1364338. eCollection 2024.

Abstract

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.

Keywords: Parkinson’s disease; computer-aided diagnosis; deep learning; general feature extraction network; medical image analysis; multiple system atrophy; regional Homogeneity.

Grants and funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This work was supported by the National Natural Science Foundation of China (62073314 and 92048203), Liaoning Provincial Natural Science Foundation of China (2022-YQ-06), Beijing Hospitals Authority Clinical Medicine Development of special funding support (YGLX202321), Beijing Natural Science Foundation (JQ23038), and Wuxi Science and Technology Bureau’s Research Project Plan (Y20222022).