AI-Accelerated Design of Targeted Covalent Inhibitors for SARS-CoV-2.
Rajendra P JoshiKatherine J SchultzJesse William WilsonAgustin KruelRohith Anand VarikotiChathuri J KombalaDaniel W KnellerStephanie GalanieGwyndalyn PhillipsQiu ZhangLeighton CoatesJyothi ParvathareddySurekha SurendranathanYing KongAustin ClydeArvind RamanathanColleen Beth JonssonKristoffer R BrandvoldMowei ZhouMartha S HeadAndrey Y KovalevskyNeeraj KumarPublished in: Journal of chemical information and modeling (2023)
Direct-acting antivirals for the treatment of the COVID-19 pandemic caused by the SARS-CoV-2 virus are needed to complement vaccination efforts. Given the ongoing emergence of new variants, automated experimentation, and active learning based fast workflows for antiviral lead discovery remain critical to our ability to address the pandemic's evolution in a timely manner. While several such pipelines have been introduced to discover candidates with noncovalent interactions with the main protease (M pro ), here we developed a closed-loop artificial intelligence pipeline to design electrophilic warhead-based covalent candidates. This work introduces a deep learning-assisted automated computational workflow to introduce linkers and an electrophilic "warhead" to design covalent candidates and incorporates cutting-edge experimental techniques for validation. Using this process, promising candidates in the library were screened, and several potential hits were identified and tested experimentally using native mass spectrometry and fluorescence resonance energy transfer (FRET)-based screening assays. We identified four chloroacetamide-based covalent inhibitors of M pro with micromolar affinities (K I of 5.27 μM) using our pipeline. Experimentally resolved binding modes for each compound were determined using room-temperature X-ray crystallography, which is consistent with the predicted poses. The induced conformational changes based on molecular dynamics simulations further suggest that the dynamics may be an important factor to further improve selectivity, thereby effectively lowering K I and reducing toxicity. These results demonstrate the utility of our modular and data-driven approach for potent and selective covalent inhibitor discovery and provide a platform to apply it to other emerging targets.
Keyphrases
- energy transfer
- artificial intelligence
- deep learning
- sars cov
- molecular dynamics simulations
- high throughput
- machine learning
- room temperature
- big data
- mass spectrometry
- single molecule
- convolutional neural network
- quantum dots
- respiratory syndrome coronavirus
- anti inflammatory
- high resolution
- small molecule
- risk assessment
- ionic liquid
- computed tomography
- liquid chromatography
- coronavirus disease
- single cell
- magnetic resonance imaging
- quality improvement
- genome wide
- dna methylation
- magnetic resonance
- fluorescent probe
- transcription factor
- stress induced
- drug delivery
- gas chromatography
- tandem mass spectrometry
- capillary electrophoresis