Routine clinical visits of a patient produce not only image data, but also non-image data containing clinical information regarding the patient, i.e., medical data is multi-modal in nature. Such heterogeneous modalities offer different and complementary perspectives on the same patient, resulting in more accurate clinical decisions when they are properly combined. However, despite its significance, how to effectively fuse the multi-modal medical data into a unified framework has received relatively little attention. In this paper, we propose an effective graph-based framework called HetMed (Heterogeneous Graph Learning for Multi-modal Medical Data Analysis) for fusing the multi-modal medical data. Specifically, we construct a multiplex netw...
Today, many fields are characterised by having extensive quantities of data from a wide range of dis...
Recently, it has become progressively more evident that classic diagnostic labels are unable to accu...
Multi-modal learning is typically performed with network architectures containing modality-specific ...
The rapid development of diagnostic technologies in healthcare is leading to higher requirements for...
Healthcare data are inherently multimodal, including electronic health records (EHR), medical images...
Graph neural networks (GNNs) provide powerful insights for brain neuroimaging technology from the vi...
In image-based medical decision-making, different modalities of medical images of a given organ of a...
Multimodal medical data fusion has emerged as a transformative approach in smart healthcare, enablin...
Medical big data is not only enormous in its size, but also heterogeneous and complex in its data st...
abstract: The rapid development in acquiring multimodal neuroimaging data provides opportunities to ...
Medical images play an important role in clinical applications. Multimodal medical images could prov...
abstract: With the development of computer and sensing technology, rich datasets have become availab...
Multi-modality images have been widely used and provide comprehensive information for medical image ...
Medical imaging has been widely used to diagnose various disorders over the past 20 years. Primary c...
Algorithms and devices of multimodal medical image fusion have shown notable achievements in raising...
Today, many fields are characterised by having extensive quantities of data from a wide range of dis...
Recently, it has become progressively more evident that classic diagnostic labels are unable to accu...
Multi-modal learning is typically performed with network architectures containing modality-specific ...
The rapid development of diagnostic technologies in healthcare is leading to higher requirements for...
Healthcare data are inherently multimodal, including electronic health records (EHR), medical images...
Graph neural networks (GNNs) provide powerful insights for brain neuroimaging technology from the vi...
In image-based medical decision-making, different modalities of medical images of a given organ of a...
Multimodal medical data fusion has emerged as a transformative approach in smart healthcare, enablin...
Medical big data is not only enormous in its size, but also heterogeneous and complex in its data st...
abstract: The rapid development in acquiring multimodal neuroimaging data provides opportunities to ...
Medical images play an important role in clinical applications. Multimodal medical images could prov...
abstract: With the development of computer and sensing technology, rich datasets have become availab...
Multi-modality images have been widely used and provide comprehensive information for medical image ...
Medical imaging has been widely used to diagnose various disorders over the past 20 years. Primary c...
Algorithms and devices of multimodal medical image fusion have shown notable achievements in raising...
Today, many fields are characterised by having extensive quantities of data from a wide range of dis...
Recently, it has become progressively more evident that classic diagnostic labels are unable to accu...
Multi-modal learning is typically performed with network architectures containing modality-specific ...