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Network machine learning maps phytochemically rich “Hyperfoods” to fight COVID-19

Ivan Laponogov, Guadalupe Gonzalez, Madelen Shepherd, Ahad Qureshi, Dennis A. Veselkov, Georgia Charkoftaki, Vasilis S. Vasiliou, Jozef Youssef, Reza Mirnezami, Michael M. Bronstein, Kirill Veselkov

2021Human Genomics40 citationsDOIOpen Access PDF

Abstract

In this paper, we introduce a network machine learning method to identify potential bioactive anti-COVID-19 molecules in foods based on their capacity to target the SARS-CoV-2-host gene-gene (protein-protein) interactome. Our analyses were performed using a supercomputing DreamLab App platform, harnessing the idle computational power of thousands of smartphones. Machine learning models were initially calibrated by demonstrating that the proposed method can predict anti-COVID-19 candidates among experimental and clinically approved drugs (5658 in total) targeting COVID-19 interactomics with the balanced classification accuracy of 80-85% in 5-fold cross-validated settings. This identified the most promising drug candidates that can be potentially "repurposed" against COVID-19 including common drugs used to combat cardiovascular and metabolic disorders, such as simvastatin, atorvastatin and metformin. A database of 7694 bioactive food-based molecules was run through the calibrated machine learning algorithm, which identified 52 biologically active molecules, from varied chemical classes, including flavonoids, terpenoids, coumarins and indoles predicted to target SARS-CoV-2-host interactome networks. This in turn was used to construct a "food map" with the theoretical anti-COVID-19 potential of each ingredient estimated based on the diversity and relative levels of candidate compounds with antiviral properties. We expect this in silico predicted food map to play an important role in future clinical studies of precision nutrition interventions against COVID-19 and other viral diseases.

Topics & Concepts

InteractomeIn silicoCoronavirus disease 2019 (COVID-19)Drug repositioningComputational biologySevere acute respiratory syndrome coronavirus 2 (SARS-CoV-2)Machine learningDrug discoverySystems biologyInteraction networkArtificial intelligenceComputer scienceBiologyBioinformaticsDrugGenePharmacologyMedicineGeneticsDiseaseInfectious disease (medical specialty)PathologyComputational Drug Discovery MethodsCOVID-19 Clinical Research StudiesPiperaceae Chemical and Biological Studies
Network machine learning maps phytochemically rich “Hyperfoods” to fight COVID-19 | Litcius