Multi-Omics Data Fusion Through Attention-Based Neural Networks: AI-Enhanced Systems for Integrated Genomic, Proteomic, and Metabolomic Analysis in Drug Discovery
Keywords:
multi-omics data fusion, attention-based neural networks, ai-enhanced systems, integrated genomic, proteomic, machine learningAbstract
The integration of genomic, proteomic, and metabolomic data in a systems biology approach is expected to be transformative for drug discovery and development, providing an opportunity to expand the discovery of novel molecules for new targets and, importantly, to determine whether these novel treatments will be effective and safe. This potential is still not fully realized, making it difficult for many researchers to obtain biologically meaningful results from their data.Downloads
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