摘要Due to its high sensitivity and non-destructive nature,Raman spectroscopy has become an essential analytical tool in biopharmaceutical analysis and drug development.Despite of the computational de-mands,data requirements,or ethical considerations,artificial intelligence(AI)and particularly deep learning algorithms has further advanced Raman spectroscopy by enhancing data processing,feature extraction,and model optimization,which not only improves the accuracy and efficiency of Raman spectroscopy detection,but also greatly expands its range of application.AI-guided Raman spectroscopy has numerous applications in biomedicine,including characterizing drug structures,analyzing drug forms,controlling drug quality,identifying components,and studying drug-biomolecule interactions.AI-guided Raman spectroscopy has also revolutionized biomedical research and clinical diagnostics,particularly in disease early diagnosis and treatment optimization.Therefore,AI methods are crucial to advancing Raman spectroscopy in biopharmaceutical research and clinical diagnostics,offering new perspectives and tools for disease treatment and pharmaceutical process control.In summary,inte-grating AI and Raman spectroscopy in biomedicine has significantly improved analytical capabilities,offering innovative approaches for research and clinical applications.
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