Julian Tirado-Rives

Julian Tirado-Rives

Yale University

H-index: 54

North America-United States

About Julian Tirado-Rives

Julian Tirado-Rives, With an exceptional h-index of 54 and a recent h-index of 29 (since 2020), a distinguished researcher at Yale University, specializes in the field of Computational Chemistry, Monte Carlo Simulations, Free Energy Perturbation.

His recent articles reflect a diverse array of research interests and contributions to the field:

Ensemble Geometric Deep Learning of Aqueous Solubility

Assessing Metadynamics and Docking for Absolute Binding Free Energy Calculations Using Severe Acute Respiratory Syndrome Coronavirus 2 Main Protease Inhibitors

Computation of Absolute Binding Free Energies for Noncovalent Inhibitors with SARS-CoV-2 Main Protease

OPLS/2020 Force Field for Unsaturated Hydrocarbons, Alcohols, and Ethers

Refinement of the optimized potentials for liquid simulations force field for thermodynamics and dynamics of liquid alkanes

Potent noncovalent inhibitors of the main protease of SARS-CoV-2 from molecular sculpting of the drug perampanel guided by free energy perturbation calculations

Optimization of triarylpyridinone inhibitors of the main protease of SARS-CoV-2 to low-nanomolar antiviral potency

Identification of 14 known drugs as inhibitors of the main protease of SARS-CoV-2

Julian Tirado-Rives Information

University

Yale University

Position

Senior Research Scientist Department of Chemistry

Citations(all)

38082

Citations(since 2020)

14135

Cited By

29466

hIndex(all)

54

hIndex(since 2020)

29

i10Index(all)

89

i10Index(since 2020)

57

Email

University Profile Page

Yale University

Julian Tirado-Rives Skills & Research Interests

Computational Chemistry

Monte Carlo Simulations

Free Energy Perturbation

Top articles of Julian Tirado-Rives

Ensemble Geometric Deep Learning of Aqueous Solubility

Authors

Mohammad M Ghahremanpour,Anastasia Saar,Julian Tirado-Rives,William L Jorgensen

Journal

Journal of Chemical Information and Modeling

Published Date

2023/11/22

Geometric deep learning is one of the main workhorses for harnessing the power of big data to predict molecular properties such as aqueous solubility, which is key to the pharmacokinetic improvement of drug candidates. Two ensembles of graph neural network architectures were built, one based on spectral convolution and the other on spatial convolution. The pretrained models, denoted respectively as SolNet-GCN and SolNet-GAT, significantly outperformed the existing neural networks benchmarked on a validation set of 207 molecules. The SolNet-GCN model demonstrated the best performance on both the training and validation sets, with RMSE values of 0.53 and 0.72 log molar unit and Pearson r2 values of 0.95 and 0.75, respectively. Further, the ranking power of the SolNet models agreed well with a QM-based thermodynamic cycle approach at the PBE-vdW level of theory on a series of benzophenylurea …

Assessing Metadynamics and Docking for Absolute Binding Free Energy Calculations Using Severe Acute Respiratory Syndrome Coronavirus 2 Main Protease Inhibitors

Authors

Anastasia Saar,Mohammad M Ghahremanpour,Julian Tirado-Rives,William L Jorgensen

Journal

Journal of Chemical Information and Modeling

Published Date

2023/11/7

Absolute binding free energy (ABFE) calculations can be an important part of the drug discovery process by identifying molecules that have the potential to be strong binders for a biomolecular target. Recent work has used free energy perturbation (FEP) theory for these calculations, focusing on a set of 16 inhibitors of the severe acute respiratory syndrome coronavirus 2 main protease (Mpro). Herein, the same data set is evaluated by metadynamics (MetaD), four different docking programs, and molecular mechanics with generalized Born and surface area solvation. MetaD yields a Kendall τ distance of 0.28 and Pearson r2 of 0.49, which reflect somewhat less accuracy than that from the ABFE FEP results. Notably, it is demonstrated that an ensemble docking protocol by which each ligand is docked into the 13 crystal structures in this data set provides improved performance, particularly when docking is carried out …

Computation of Absolute Binding Free Energies for Noncovalent Inhibitors with SARS-CoV-2 Main Protease

Authors

Mohammad M Ghahremanpour,Anastasia Saar,Julian Tirado-Rives,William L Jorgensen

Journal

Journal of Chemical Information and Modeling

Published Date

2023/8/10

Accurate, routine calculation of absolute binding free energies (ABFEs) for protein–ligand complexes remains a key goal of computer-aided drug design since it can enable screening and optimization of drug candidates. For development and testing of related methods, it is important to have high-quality datasets. To this end, from our own experimental studies, we have selected a set of 16 inhibitors of the SARS-CoV-2 main protease (Mpro) with structural diversity and well-distributed BFEs covering a 5 kcal/mol range. There is also minimal structural uncertainty since X-ray crystal structures have been deposited for 12 of the compounds. For methods testing, we report ABFE results from 2 μs molecular dynamics (MD) simulations using free energy perturbation (FEP) theory. The correlation of experimental and computed results is encouraging, with a Pearson’s r2 of 0.58 and a Kendall τ of 0.24. The results indicate that …

OPLS/2020 Force Field for Unsaturated Hydrocarbons, Alcohols, and Ethers

Authors

William L Jorgensen,Mohammad M Ghahremanpour,Anastasia Saar,Julian Tirado-Rives

Journal

The Journal of Physical Chemistry B

Published Date

2023/12/21

The OPLS all-atom force field was updated and applied to modeling unsaturated hydrocarbons, alcohols, and ethers. Testing has included gas-phase conformational energetics, properties of pure liquids, and free energies of hydration. Monte Carlo statistical mechanics (MC) calculations were used to model 60 liquids. In addition, a robust, automated procedure was devised to compute the free energies of hydration with high precision via free-energy perturbation (FEP) calculations using double annihilation. Testing has included larger molecules than in the past, and parameters are reported for the first time for some less common groups including alkynes, allenes, dienes, and acetals. The average errors in comparison with experimental data for the computed properties of the pure liquids were improved with the modified force field (OPLS/2020). For liquid densities and heats of vaporization, the average unsigned …

Refinement of the optimized potentials for liquid simulations force field for thermodynamics and dynamics of liquid alkanes

Authors

Mohammad M Ghahremanpour,Julian Tirado-Rives,William L Jorgensen

Journal

The Journal of Physical Chemistry B

Published Date

2022/8/1

Torsion and Lennard-Jones parameters of the optimized potentials for liquid simulations (OPLS) all-atom force field have been refined for describing thermodynamics and dynamics of a wide range of liquid alkanes. Monte Carlo statistical mechanics (MC) and molecular dynamics (MD) simulations were carried out. For thermodynamics properties, MC simulations with truncated electrostatic interactions performed very closely to MD simulations with a Verlet neighbor list and the particle mesh Ewald algorithm. The average errors in comparison with experimental data for computed properties were improved with the modified force field (OPLS/2020), especially for long-chain alkanes. For liquid densities, heats of vaporization, and free energies of hydration, the average errors are 0.01 g/cm3, 0.2 kcal/mol, and ca. 0.5 kcal/mol, respectively; significant gains were made for relative heats of vaporization of isomeric series …

Potent noncovalent inhibitors of the main protease of SARS-CoV-2 from molecular sculpting of the drug perampanel guided by free energy perturbation calculations

Authors

Chun-Hui Zhang,Elizabeth A Stone,Maya Deshmukh,Joseph A Ippolito,Mohammad M Ghahremanpour,Julian Tirado-Rives,Krasimir A Spasov,Shuo Zhang,Yuka Takeo,Shalley N Kudalkar,Zhuobin Liang,Farren Isaacs,Brett Lindenbach,Scott J Miller,Karen S Anderson,William L Jorgensen

Journal

ACS central science

Published Date

2021/2/22

Starting from our previous finding of 14 known drugs as inhibitors of the main protease (Mpro) of SARS-CoV-2, the virus responsible for COVID-19, we have redesigned the weak hit perampanel to yield multiple noncovalent, nonpeptidic inhibitors with ca. 20 nM IC50 values in a kinetic assay. Free-energy perturbation (FEP) calculations for Mpro-ligand complexes provided valuable guidance on beneficial modifications that rapidly delivered the potent analogues. The design efforts were confirmed and augmented by determination of high-resolution X-ray crystal structures for five analogues bound to Mpro. Results of cell-based antiviral assays further demonstrated the potential of the compounds for treatment of COVID-19. In addition to the possible therapeutic significance, the work clearly demonstrates the power of computational chemistry for drug discovery, especially FEP-guided lead optimization.

Optimization of triarylpyridinone inhibitors of the main protease of SARS-CoV-2 to low-nanomolar antiviral potency

Authors

Chun-Hui Zhang,Krasimir A Spasov,Raquel A Reilly,Klarissa Hollander,Elizabeth A Stone,Joseph A Ippolito,Maria-Elena Liosi,Maya G Deshmukh,Julian Tirado-Rives,Shuo Zhang,Zhuobin Liang,Scott J Miller,Farren Isaacs,Brett D Lindenbach,Karen S Anderson,William L Jorgensen

Journal

ACS Medicinal Chemistry Letters

Published Date

2021/7/14

Non-covalent inhibitors of the main protease (Mpro) of SARS-CoV-2 having a pyridinone core were previously reported with IC50 values as low as 0.018 μM for inhibition of enzymatic activity and EC50 values as low as 0.8 μM for inhibition of viral replication in Vero E6 cells. The series has now been further advanced by consideration of placement of substituted five-membered-ring heterocycles in the S4 pocket of Mpro and N-methylation of a uracil ring. Free energy perturbation calculations provided guidance on the choice of the heterocycles, and protein crystallography confirmed the desired S4 placement. Here we report inhibitors with EC50 values as low as 0.080 μM, while remdesivir yields values of 0.5–2 μM in side-by-side testing with infectious SARS-CoV-2. A key factor in the improvement is enhanced cell permeability, as reflected in PAMPA measurements. Compounds 19 and 21 are particularly promising …

Identification of 14 known drugs as inhibitors of the main protease of SARS-CoV-2

Authors

Mohammad M Ghahremanpour,Julian Tirado-Rives,Maya Deshmukh,Joseph A Ippolito,Chun-Hui Zhang,Israel Cabeza de Vaca,Maria-Elena Liosi,Karen S Anderson,William L Jorgensen

Journal

ACS medicinal chemistry letters

Published Date

2020/10/25

A consensus virtual screening protocol has been applied to ca. 2000 approved drugs to seek inhibitors of the main protease (Mpro) of SARS-CoV-2, the virus responsible for COVID-19. 42 drugs emerged as top candidates, and after visual analyses of the predicted structures of their complexes with Mpro, 17 were chosen for evaluation in a kinetic assay for Mpro inhibition. Remarkably 14 of the compounds at 100-μM concentration were found to reduce the enzymatic activity and 5 provided IC50 values below 40 μM: manidipine (4.8 μM), boceprevir (5.4 μM), lercanidipine (16.2 μM), bedaquiline (18.7 μM), and efonidipine (38.5 μM). Structural analyses reveal a common cloverleaf pattern for the binding of the active compounds to the P1, P1′, and P2 pockets of Mpro. Further study of the most active compounds in the context of COVID-19 therapy is warranted, while all of the active compounds may provide a …

Explicit Representation of Cation−π Interactions in Force Fields with 1/r4 Nonbonded Terms

Authors

Aysegul Turupcu,Julian Tirado-Rives,William L Jorgensen

Journal

Journal of chemical theory and computation

Published Date

2020/10/13

The binding energies for cation−π complexation are underestimated by traditional fixed-charge force fields owing to their lack of explicit treatment of ion-induced dipole interactions. To address this deficiency, an explicit treatment of cation−π interactions has been introduced into the OPLS-AA force field. Following prior work with atomic cations, it is found that cation−π interactions can be handled efficiently by augmenting the usual 12–6 Lennard-Jones potentials with 1/r4 terms. Results are provided for prototypical complexes as well as protein–ligand systems of relevance for drug design. Alkali cation, ammonium, guanidinium, and tetramethylammonium were chosen for the representative cations, while benzene and six heteroaromatic molecules were used as the π systems. The required nonbonded parameters were fit to reproduce structure and interaction energies for gas-phase complexes from density functional …

Metadynamics as a postprocessing method for virtual screening with application to the pseudokinase domain of JAK2

Authors

Kara J Cutrona,Ana S Newton,Stefan G Krimmer,Julian Tirado-Rives,William L Jorgensen

Journal

Journal of chemical information and modeling

Published Date

2020/5/8

With standard scoring methods, top-ranked compounds from virtual screening by docking often turn out to be inactive. For this reason, metadynamics, a method used to sample rare events, was studied to further evaluate docking poses with the aim of reducing false positives. Specifically, virtual screening was performed with Glide SP to seek potential molecules to bind to the ATP site in the pseudokinase domain of JAK2 kinase, and promising compounds were selected from the top-ranked 1000 based on visualization. Rescoring with Glide XP, GOLD, and MM/GBSA was unable to differentiate well between active and inactive compounds. Metadynamics was then used to gauge the relative binding affinity from the required time or the potential of mean force needed to dissociate the ligand from the bound complex. With consideration of previously known binders of varying affinities, metadynamics was able to …

See List of Professors in Julian Tirado-Rives University(Yale University)

Julian Tirado-Rives FAQs

What is Julian Tirado-Rives's h-index at Yale University?

The h-index of Julian Tirado-Rives has been 29 since 2020 and 54 in total.

What are Julian Tirado-Rives's top articles?

The articles with the titles of

Ensemble Geometric Deep Learning of Aqueous Solubility

Assessing Metadynamics and Docking for Absolute Binding Free Energy Calculations Using Severe Acute Respiratory Syndrome Coronavirus 2 Main Protease Inhibitors

Computation of Absolute Binding Free Energies for Noncovalent Inhibitors with SARS-CoV-2 Main Protease

OPLS/2020 Force Field for Unsaturated Hydrocarbons, Alcohols, and Ethers

Refinement of the optimized potentials for liquid simulations force field for thermodynamics and dynamics of liquid alkanes

Potent noncovalent inhibitors of the main protease of SARS-CoV-2 from molecular sculpting of the drug perampanel guided by free energy perturbation calculations

Optimization of triarylpyridinone inhibitors of the main protease of SARS-CoV-2 to low-nanomolar antiviral potency

Identification of 14 known drugs as inhibitors of the main protease of SARS-CoV-2

...

are the top articles of Julian Tirado-Rives at Yale University.

What are Julian Tirado-Rives's research interests?

The research interests of Julian Tirado-Rives are: Computational Chemistry, Monte Carlo Simulations, Free Energy Perturbation

What is Julian Tirado-Rives's total number of citations?

Julian Tirado-Rives has 38,082 citations in total.

What are the co-authors of Julian Tirado-Rives?

The co-authors of Julian Tirado-Rives are William L. Jorgensen, Robert C. Rizzo, Michael J. Robertson, Daniel J Cole, Israel Cabeza de Vaca Lopez.

    Co-Authors

    H-index: 133
    William L. Jorgensen

    William L. Jorgensen

    Yale University

    H-index: 36
    Robert C. Rizzo

    Robert C. Rizzo

    Stony Brook University

    H-index: 28
    Michael J. Robertson

    Michael J. Robertson

    Stanford University

    H-index: 24
    Daniel J Cole

    Daniel J Cole

    Newcastle University

    H-index: 11
    Israel Cabeza de Vaca Lopez

    Israel Cabeza de Vaca Lopez

    Yale University

    academic-engine

    Useful Links