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Computational Prediction of the Phenotypic Effect of Flavonoids on Adiponectin Biosynthesis.

Seungchan AnSeok Young HwangJunpyo GongSungjin AhnIn Guk ParkSoyeon OhYoung Won ChinMinsoo Noh
Published in: Journal of chemical information and modeling (2023)
In silico machine learning applications for phenotype-based screening have primarily been limited due to the lack of machine-readable data related to disease phenotypes. Adiponectin, a nuclear receptor (NR)-regulated adipocytokine, is relatively downregulated in human metabolic diseases. Here, we present a machine-learning model to predict the adiponectin-secretion-promoting activity of flavonoid-associated phytochemicals (FAPs). We modeled a structure-activity relationship between the chemical similarity of FAPs and their bioactivities using a random forest-based classifier, which provided the NR activity of each FAP as a probability. To link the classifier-predicted NR activity to the phenotype, we next designed a single-cell transcriptomics-based multiple linear regression model to generate the relative adiponectin score (RAS) of FAPs. In experimental validation, estimated RAS values of FAPs isolated from Scutellaria baicalensis exhibited a significant correlation with their adiponectin-secretion-promoting activity. The combined cheminformatics and bioinformatics approach enables the computational reconstruction of phenotype-based screening systems.
Keyphrases
  • machine learning
  • metabolic syndrome
  • single cell
  • insulin resistance
  • endothelial cells
  • climate change
  • type diabetes
  • deep learning
  • high throughput
  • rna seq
  • adipose tissue
  • molecular docking
  • electronic health record