PLoS Computational Biology (Sep 2019)

Deconvolving multiplexed protease signatures with substrate reduction and activity clustering.

  • Qinwei Zhuang,
  • Brandon Alexander Holt,
  • Gabriel A Kwong,
  • Peng Qiu

DOI
https://doi.org/10.1371/journal.pcbi.1006909
Journal volume & issue
Vol. 15, no. 9
p. e1006909

Abstract

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Proteases are multifunctional, promiscuous enzymes that degrade proteins as well as peptides and drive important processes in health and disease. Current technology has enabled the construction of libraries of peptide substrates that detect protease activity, which provides valuable biological information. An ideal library would be orthogonal, such that each protease only hydrolyzes one unique substrate, however this is impractical due to off-target promiscuity (i.e., one protease targets multiple different substrates). Therefore, when a library of probes is exposed to a cocktail of proteases, each protease activates multiple probes, producing a convoluted signature. Computational methods for parsing these signatures to estimate individual protease activities primarily use an extensive collection of all possible protease-substrate combinations, which require impractical amounts of training data when expanding to search for more candidate substrates. Here we provide a computational method for estimating protease activities efficiently by reducing the number of substrates and clustering proteases with similar cleavage activities into families. We envision that this method will be used to extract meaningful diagnostic information from biological samples.