Artificial Intelligence-Based Methods for Fusion of Electronic Health Records and Imaging Data
Farida Mohsen, Hazrat Ali, Nady El Hajj, Zubair Shah

TL;DR
This paper reviews AI methods for fusing electronic health records and medical imaging data, highlighting fusion strategies, clinical applications, and datasets, demonstrating that multimodal models generally outperform single-modality approaches.
Contribution
It provides a comprehensive synthesis of AI-based multimodal fusion techniques specifically combining EHR and imaging data for clinical applications, which was previously underexplored.
Findings
Early fusion is the most common technique used.
Multimodal models outperform single-modality models.
Disease diagnosis and prediction are the primary clinical outcomes.
Abstract
Healthcare data are inherently multimodal, including electronic health records (EHR), medical images, and multi-omics data. Combining these multimodal data sources contributes to a better understanding of human health and provides optimal personalized healthcare. Advances in artificial intelligence (AI) technologies, particularly machine learning (ML), enable the fusion of these different data modalities to provide multimodal insights. To this end, in this scoping review, we focus on synthesizing and analyzing the literature that uses AI techniques to fuse multimodal medical data for different clinical applications. More specifically, we focus on studies that only fused EHR with medical imaging data to develop various AI methods for clinical applications. We present a comprehensive analysis of the various fusion strategies, the diseases and clinical outcomes for which multimodal fusion…
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