| Literature DB >> 28714473 |
Carl A Machutta1, Christopher S Kollmann2, Kenneth E Lind2, Xiaopeng Bai2, Pan F Chan1, Jianzhong Huang1, Lluis Ballell3, Svetlana Belyanskaya2, Gurdyal S Besra4, David Barros-Aguirre3, Robert H Bates3, Paolo A Centrella2, Sandy S Chang1, Jing Chai2, Anthony E Choudhry1, Aaron Coffin2, Christopher P Davie2, Hongfeng Deng2, Jianghe Deng1, Yun Ding2, Jason W Dodson1, David T Fosbenner1, Enoch N Gao1, Taylor L Graham1, Todd L Graybill1, Karen Ingraham1, Walter P Johnson1, Bryan W King1, Christopher R Kwiatkowski1, Joël Lelièvre3, Yue Li1, Xiaorong Liu2, Quinn Lu1, Ruth Lehr1, Alfonso Mendoza-Losana3, John Martin1, Lynn McCloskey1, Patti McCormick1, Heather P O'Keefe2, Thomas O'Keeffe2, Christina Pao1, Christopher B Phelps2, Hongwei Qi1, Keith Rafferty1, Genaro S Scavello1, Matt S Steiginga1, Flora S Sundersingh2, Sharon M Sweitzer1, Lawrence M Szewczuk1, Amy Taylor1, May Fern Toh1, Juan Wang1, Minghui Wang1, Devan J Wilkins2, Bing Xia2, Gang Yao2, Jean Zhang2, Jingye Zhou2, Christine P Donahue2, Jeffrey A Messer2, David Holmes1, Christopher C Arico-Muendel2, Andrew J Pope1, Jeffrey W Gross1, Ghotas Evindar2.
Abstract
The identification and prioritization of chemically tractable therapeutic targets is a significant challenge in the discovery of new medicines. We have developed a novel method that rapidly screens multiple proteins in parallel using DNA-encoded library technology (ELT). Initial efforts were focused on the efficient discovery of antibacterial leads against 119 targets from Acinetobacter baumannii and Staphylococcus aureus. The success of this effort led to the hypothesis that the relative number of ELT binders alone could be used to assess the ligandability of large sets of proteins. This concept was further explored by screening 42 targets from Mycobacterium tuberculosis. Active chemical series for six targets from our initial effort as well as three chemotypes for DHFR from M. tuberculosis are reported. The findings demonstrate that parallel ELT selections can be used to assess ligandability and highlight opportunities for successful lead and tool discovery.Entities:
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Year: 2017 PMID: 28714473 PMCID: PMC5520047 DOI: 10.1038/ncomms16081
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919
Figure 1Schematic representation of the ELT screening and ligandability assessment strategy.
Hundreds of potential targets of interest are immobilized and screened against GSK's DNA encoded libraries. Targets with signal are ranked by the counts of ELT binders which correlate to the protein's chemical ligandability. Data is used to plan off-DNA synthesis and confirm hits in assays. In addition to novel chemical starting points for lead optimization, the output is a target/chemotype pair that enables therapeutic programs by providing tools for target validation as well as a ranking of targets to prioritize further studies.
Figure 2Count of binders that are specific to each target.
(a) Results of screening against S. aureus and A. baumanii panels. Targets are binned and coloured by the activity of molecules found for the target and sorted by the number of binders. (b) Proposed priority of targets for the M. tuberculosis panel. Targets are sorted by binder count and coloured by the proposed priority based on the number of specific binders found. *Compounds for Dxr confirmed by biochemical assay.
ELT screening progression.
| Initial number of targets considered | 39 | 80 | 42 |
| Targets amenable to ELT selection | 32 | 70 | 41 |
| Targets with ELT signal | 14 | 52 | 27 |
| Targets with off-DNA synthesis | 14 | 18 | 13 |
| Targets with confirmed active chemical series (IC50 and/or MIC) | 7 | 17 | 4 |
| Targets with confirmed MoA | 2 | 3 | ND |
ND, not determined.
The table shows a summary of the progression of protein targets through each tractability panel. For additional detail and a full list of targets prosecuted, see Supplementary Table 1.
*Off-DNA activity assessment ongoing for remaining nine targets.
Representative chemical series discovered in three tractability campaigns.
ND, not determined; MoA, mode of action.
The scaffold column represents the selected pharmacophore with areas of substitution indicated by R. All data are reported for the single exemplar shown. IC50 values are reported as the average of two replicate experiments with s.d. values calculated using the n−1 method.
*Minimum inhibitory concentration measured against S. aureus WCUH29 wild type or A. baumannii BM652 efflux strains for S. aureus or A. baumannii campaigns with a minimum of two independent experiments.
†MIC unit is in μM and is determined against M. tuberculosis H37Rv.
Consistency of HTS and ELT outcomes for 29 S. aureus targets.
| HTS active | 4 | 3 |
| HTS inactive | 5 | 17 |
Comparison of target outcomes from ELT and HTS where the same target was screened by both methods. ELT and HTS outcomes agreed in 21 of 29 campaigns. For the remaining eight targets, ELT found hits for five where HTS did not.
Figure 3Representative data set of enriched binders for the M. tuberculosis target DHFR.
The average molecular weight of clustered chemotypes is plotted versus average cLogP. Clusters are sized by the number of members and coloured by maximum signal strength. Chemical series with active molecules are indicated by their scaffolds.