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1.
Sci Rep ; 9(1): 5013, 2019 03 21.
Article in English | MEDLINE | ID: mdl-30899034

ABSTRACT

Identification of novel antibiotics remains a major challenge for drug discovery. The present study explores use of phenotypic readouts beyond classical antibacterial growth inhibition adopting a combined multiparametric high content screening and genomic approach. Deployment of the semi-automated bacterial phenotypic fingerprint (BPF) profiling platform in conjunction with a machine learning-powered dataset analysis, effectively allowed us to narrow down, compare and predict compound mode of action (MoA). The method identifies weak antibacterial hits allowing full exploitation of low potency hits frequently discovered by routine antibacterial screening. We demonstrate that BPF classification tool can be successfully used to guide chemical structure activity relationship optimization, enabling antibiotic development and that this approach can be fruitfully applied across species. The BPF classification tool could be potentially applied in primary screening, effectively enabling identification of novel antibacterial compound hits and differentiating their MoA, hence widening the known antibacterial chemical space of existing pharmaceutical compound libraries. More generally, beyond the specific objective of the present work, the proposed approach could be profitably applied to a broader range of diseases amenable to phenotypic drug discovery.


Subject(s)
Anti-Bacterial Agents/therapeutic use , Bacteria/drug effects , Drug Discovery , High-Throughput Screening Assays , Anti-Bacterial Agents/chemistry , Bacteria/pathogenicity , Drug Evaluation, Preclinical/methods , Humans , Machine Learning
2.
Cell Chem Biol ; 24(5): 624-634.e3, 2017 May 18.
Article in English | MEDLINE | ID: mdl-28434878

ABSTRACT

Today, novel therapeutics are identified in an environment which is intrinsically different from the clinical context in which they are ultimately evaluated. Using molecular phenotyping and an in vitro model of diabetic cardiomyopathy, we show that by quantifying pathway reporter gene expression, molecular phenotyping can cluster compounds based on pathway profiles and dissect associations between pathway activities and disease phenotypes simultaneously. Molecular phenotyping was applicable to compounds with a range of binding specificities and triaged false positives derived from high-content screening assays. The technique identified a class of calcium-signaling modulators that can reverse disease-regulated pathways and phenotypes, which was validated by structurally distinct compounds of relevant classes. Our results advocate for application of molecular phenotyping in early drug discovery, promoting biological relevance as a key selection criterion early in the drug development cascade.


Subject(s)
Computational Biology/methods , Drug Discovery/methods , Phenotype , Data Mining , Drug Evaluation, Preclinical , Humans
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