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Machine learning assistive rapid, label-free molecular phenotyping of blood with two-dimensional NMR correlational spectroscopy

Weng Kung Peng, Tian-Tsong Ng, Tze Ping Loh

2020Communications Biology32 citationsDOIOpen Access PDF

Abstract

Abstract Translation of the findings in basic science and clinical research into routine practice is hampered by large variations in human phenotype. Developments in genotyping and phenotyping, such as proteomics and lipidomics, are beginning to address these limitations. In this work, we developed a new methodology for rapid, label-free molecular phenotyping of biological fluids (e.g., blood) by exploiting the recent advances in fast and highly efficient multidimensional inverse Laplace decomposition technique. We demonstrated that using two-dimensional T 1 -T 2 correlational spectroscopy on a single drop of blood (<5 μL), a highly time- and patient-specific ‘molecular fingerprint’ can be obtained in minutes. Machine learning techniques were introduced to transform the NMR correlational map into user-friendly information for point-of-care disease diagnostic and monitoring. The clinical utilities of this technique were demonstrated through the direct analysis of human whole blood in various physiological (e.g., oxygenated/deoxygenated states) and pathological (e.g., blood oxidation, hemoglobinopathies) conditions.

Topics & Concepts

Human bloodWhole bloodComputer scienceNuclear magnetic resonance spectroscopyComputational biologyArtificial intelligenceMedicineNuclear magnetic resonanceBiologyImmunologyPhysicsPhysiologyNMR spectroscopy and applicationsMetabolomics and Mass Spectrometry StudiesAdvanced NMR Techniques and Applications
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