Lee, Jeon, et al. “High-Throughput Functional Annotation of Natural Products by Integrated Activity Profiling”. Proceedings of the National Academy of Sciences, vol. 119, no. 49, 2022, https://doi.org/10.1073/pnas.2208458119.

Genre

  • Journal Article
Contributors
Author: Lee, Jeon
Author: Lohith, Akshar
Author: Shaikh, Anam F.
Author: Haeckl, F. P. Jake
Author: White, Michael A.
Author: La, Scott
Author: MacMillan, John B.
Author: Linington, Roger G.
Author: Khadilkar, Aswad
Author: Wei, Shuguang
Author: McMillan, Elizabeth A.
Author: Lokey, R. Scott
Author: Kurita, Kenji L.
Author: Bray, Walter
Author: Vaden, Rachel M.
Author: Hight, Suzie K.
Author: Carnevale-Neto, Fausto
Author: Clark, Trevor N.
Date Issued
2022
Date Published Online
2022-12-06
Abstract

Determining mechanism of action (MOA) is one of the biggest challenges in natural products discovery. Here, we report a comprehensive platform that uses Similarity Network Fusion (SNF) to improve MOA predictions by integrating data from the cytological profiling high-content imaging platform and the gene expression platform Functional Signature Ontology, and pairs these data with untargeted metabolomics analysis for de novo bioactive compound discovery. The predictive value of the integrative approach was assessed using a library of target-annotated small molecules as benchmarks. Using Kolmogorov–Smirnov (KS) tests to compare in-class to out-of-class similarity, we found that SNF retains the ability to identify significant in-class similarity across a diverse set of target classes, and could find target classes not detectable in either platform alone. This confirmed that integration of expression-based and image-based phenotypes can accurately report on MOA. Furthermore, we integrated untargeted metabolomics of complex natural product fractions with the SNF network to map biological signatures to specific metabolites. Three examples are presented where SNF coupled with metabolomics was used to directly functionally characterize natural products and accelerate identification of bioactive metabolites, including the discovery of the azoxy-containing biaryl compounds parkamycins A and B. Our results support SNF integration of multiple phenotypic screening approaches along with untargeted metabolomics as a powerful approach for advancing natural products drug discovery.

Language

  • English
Rights
CC-BY
Host Title
Proceedings of the National Academy of Sciences
Host Abbreviated Title
Proc. Natl. Acad. Sci. U.S.A.
Volume
119
Issue
49
ISSN
0027-8424
1091-6490

Department

Rights

  • CC BY