利用对比图交叉视图学习与光谱图像和临床特征的多模态融合进行帕金森病分类。

Jun-En Ding, Chien-Chin Hsu, Feng Liu
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引用次数: 0

摘要

帕金森病(PD)影响着全球数百万人的运动。之前的研究利用深度学习进行帕金森病预测,主要侧重于医学图像,忽略了数据的底层流形结构。本研究提出了一种包含图像和非图像特征的多模态方法,利用对比性跨视图图融合进行帕金森病分类。我们引入了一个新颖的多模态协同关注模块,整合了从图像和临床特征的低维表示中获得的独立图视图嵌入。这使得特征提取更加稳健和结构化,从而改进了多视图数据分析。此外,我们还设计了一种基于对比损失的简化融合方法,以加强跨视图融合学习。我们的图视图多模态方法在五倍交叉验证中达到了 91% 的准确率和 92.8% 的接收器工作特征曲线下面积 (AUC)。与单纯基于机器学习的方法相比,该方法在非图像数据上也表现出了卓越的预测能力。
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PARKINSON'S DISEASE CLASSIFICATION USING CONTRASTIVE GRAPH CROSS-VIEW LEARNING WITH MULTIMODAL FUSION OF SPECT IMAGES AND CLINICAL FEATURES.

Parkinson's Disease (PD) affects millions globally, impacting movement. Prior research utilized deep learning for PD prediction, primarily focusing on medical images, neglecting the data's underlying manifold structure. This work proposes a multimodal approach encompassing both image and non-image features, leveraging contrastive cross-view graph fusion for PD classification. We introduce a novel multimodal co-attention module, integrating embeddings from separate graph views derived from low-dimensional representations of images and clinical features. This enables more robust and structured feature extraction for improved multi-view data analysis. Additionally, a simplified contrastive loss-based fusion method is devised to enhance cross-view fusion learning. Our graph-view multimodal approach achieves an accuracy of 91% and an area under the receiver operating characteristic curve (AUC) of 92.8% in five-fold cross-validation. It also demonstrates superior predictive capabilities on non-image data compared to solely machine learning-based methods.

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