Abstract— Processing data-driven healthcare allowed us unprecedented chances to enhance diagnoses, foreseen, and customized treatment by means of multi-modal learning. The present paper discusses the development of electronic health records (EHR), medical images, and genomic data through multi-modal deep learning. Multi-modal models are able to capture richer feature representations and more complex patterns not visible with unimodal processing through the use of heterogeneous data sources, and thus by combining their complementary strengths. We propose an end-to-end protocol to align, preprocess, and fuse modalities and demonstrate an application of deep neural networks learning in tandem about these structured pieces of EHR and high dimensional imaging attributes alongside gene expression data. Through experiments, it is revealed that the proposed model has better performance on the task of disease classification and patient stratification compared to single-modality counterparts. The paper highlights the need to not only ensure data alignment, imputation of missing modalities and learning representations specifically in the domain of modalities to fully utilize multi-modal in the clinical context. Keywords— Multi-modal Learning, Electronic Health Records (EHR), Medical Imaging, Genomic Data, Deep Learning, Data Fusion, Healthcare AI, Precision Medicine, Patient Stratification, Biomedical Informatics.
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INTERANTIONAL JOURNAL OF SCIENTIFIC RESEARCH IN ENGINEERING AND MANAGEMENT
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Veerendra Nath Jasthi (Tue,) studied this question.
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