Multi-Omics Integration in Clinical Chemistry: A New Frontier in Early Disease Detection
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The field of clinical chemistry is undergoing a profound transformation as technological advances accelerate the convergence of disciplines for comprehensive characterization of biological systems and molecules. Integrating traditional clinical chemistry with omics technologies is emerging as a powerful new approach for capturing the complexity of biological systems far beyond established strategies. The combination of omics and clinical chemistry offers the potential for a more comprehensive and far-reaching understanding of health and illness that has the potential to change the paradigm of early-disease detection for the twenty-first century Integration of omics and clinical chemistry is unfolding in the context of what has been termed multi-omics, where multiple omics technologies are combined and applied simultaneously to the same research, clinical, or laboratory problem.
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