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Morphological Deconvolution of Beta-Lactam Polyspecificity in E. coli.

William J GodinezHelen ChanImtiaz HossainCindy LiSrijan RanjitkarDita RasperRobert L SimmonsXian ZhangBrian Y Feng
Published in: ACS chemical biology (2019)
Beta-lactams comprise one of the earliest classes of antibiotic therapies. These molecules covalently inhibit enzymes from the family of penicillin-binding proteins (PBPs), which are essential in construction of the bacterial cell wall. As a result, beta-lactams cause striking changes to cellular morphology, the nature of which varies by the range of PBPs simultaneously engaged in the cell. The traditional method of exploring beta-lactam polyspecificity is a gel-based binding assay which is low-throughput and typically is run  ex situ in cell extracts. Here, we describe a medium-throughput, image-based assay combined with machine learning methods to automatically profile the activity of beta-lactams in E. coli cells. By testing for morphological change across a panel of strains with perturbations to individual PBP enzymes, our approach automatically and quantifiably relates different beta-lactam antibiotics according to their preferences for individual PBPs in cells. We show the potential of our approach for guiding the design of novel inhibitors toward different PBP-binding profiles by predicting the mechanisms of two recently reported PBP inhibitors.
Keyphrases
  • machine learning
  • induced apoptosis
  • escherichia coli
  • cell wall
  • single cell
  • cell cycle arrest
  • risk assessment
  • mesenchymal stem cells
  • artificial intelligence
  • deep learning
  • big data
  • cell proliferation