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1.
J Am Chem Soc ; 142(9): 4114-4120, 2020 03 04.
Article in English | MEDLINE | ID: mdl-32045230

ABSTRACT

This report describes the first application of the novel NMR-based machine learning tool "Small Molecule Accurate Recognition Technology" (SMART 2.0) for mixture analysis and subsequent accelerated discovery and characterization of new natural products. The concept was applied to the extract of a filamentous marine cyanobacterium known to be a prolific producer of cytotoxic natural products. This environmental Symploca extract was roughly fractionated, and then prioritized and guided by cancer cell cytotoxicity, NMR-based SMART 2.0, and MS2-based molecular networking. This led to the isolation and rapid identification of a new chimeric swinholide-like macrolide, symplocolide A, as well as the annotation of swinholide A, samholides A-I, and several new derivatives. The planar structure of symplocolide A was confirmed to be a structural hybrid between swinholide A and luminaolide B by 1D/2D NMR and LC-MS2 analysis. A second example applies SMART 2.0 to the characterization of structurally novel cyclic peptides, and compares this approach to the recently appearing "atomic sort" method. This study exemplifies the revolutionary potential of combined traditional and deep learning-assisted analytical approaches to overcome longstanding challenges in natural products drug discovery.


Subject(s)
Biological Products/chemistry , Machine Learning , Neural Networks, Computer , Biological Products/isolation & purification , Biological Products/toxicity , Cell Line, Tumor , Cheminformatics , Cyanobacteria/chemistry , Humans , Magnetic Resonance Spectroscopy , Peptides, Cyclic/chemistry , Peptides, Cyclic/isolation & purification , Peptides, Cyclic/toxicity
2.
Food Chem ; 302: 125290, 2020 Jan 01.
Article in English | MEDLINE | ID: mdl-31404873

ABSTRACT

In our daily lives, we consume foods that have been transported, stored, prepared, cooked, or otherwise processed by ourselves or others. Food storage and preparation have drastic effects on the chemical composition of foods. Untargeted mass spectrometry analysis of food samples has the potential to increase our chemical understanding of these processes by detecting a broad spectrum of chemicals. We performed a time-based analysis of the chemical changes in foods during common preparations, such as fermentation, brewing, and ripening, using untargeted mass spectrometry and molecular networking. The data analysis workflow presented implements an approach to study changes in food chemistry that can reveal global alterations in chemical profiles, identify changes in abundance, as well as identify specific chemicals and their transformation products. The data generated in this study are publicly available, enabling the replication and re-analysis of these data in isolation, and serve as a baseline dataset for future investigations.


Subject(s)
Beverages/analysis , Food Analysis , Food Handling , Mass Spectrometry , Metabolomics , Fermentation , Workflow
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