Machine Learning Models Identify Inhibitors of New Delhi Metallo-β-lactamase.
Zishuo ChengMahesh AithaCaitlyn A ThomasAidan SturgillMitch FairweatherAmy HuChristopher R BethelDann D RiveraPatricia DranchakPei W ThomasHan LiQi FengKaicheng TaoMinshuai SongNa SunShuo WangSurendra Bikram SilwalRichard C PageWalter FastRobert A BonomoMaria WeeseWaldyn MartinezJames IngleseMichael W CrowderPublished in: Journal of chemical information and modeling (2024)
The worldwide spread of the metallo-β-lactamases (MBL), especially New Delhi metallo-β-lactamase-1 (NDM-1), is threatening the efficacy of β-lactams, which are the most potent and prescribed class of antibiotics in the clinic. Currently, FDA-approved MBL inhibitors are lacking in the clinic even though many strategies have been used in inhibitor development, including quantitative high-throughput screening (qHTS), fragment-based drug discovery (FBDD), and molecular docking. Herein, a machine learning-based prediction tool is described, which was generated using results from HTS of a large chemical library and previously published inhibition data. The prediction tool was then used for virtual screening of the NIH Genesis library, which was subsequently screened using qHTS. A novel MBL inhibitor was identified and shown to lower minimum inhibitory concentrations (MICs) of Meropenem for a panel of E. coli and K. pneumoniae clinical isolates expressing NDM-1. The mechanism of inhibition of this novel scaffold was probed utilizing equilibrium dialyses with metal analyses, native state electrospray ionization mass spectrometry, UV-vis spectrophotometry, and molecular docking. The uncovered inhibitor, compound 72922413, was shown to be 9-hydroxy-3-[(5-hydroxy-1-oxa-9-azaspiro[5.5]undec-9-yl)carbonyl]-4 H -pyrido[1,2- a ]pyrimidin-4-one.
Keyphrases
- molecular docking
- klebsiella pneumoniae
- gram negative
- molecular dynamics simulations
- machine learning
- multidrug resistant
- escherichia coli
- drug discovery
- mass spectrometry
- big data
- primary care
- artificial intelligence
- acinetobacter baumannii
- high resolution
- deep learning
- liquid chromatography
- molecular dynamics
- electronic health record
- ms ms
- aqueous solution