Abstract

BackgroundIdiosyncratic adverse drug reactions have been linked to a drug’s ability to bind with a human leukocyte antigen (HLA) protein. However, due to the thousands of HLA variants and limited structural data for drug-HLA complexes, predicting a specific drug-HLA combination represents a significant challenge. Recently, we investigated the binding mode of abacavir with the HLA-B*57:01 variant using molecular docking. Herein, we developed a new ensemble screening workflow involving three X-ray crystal derived docking procedures to screen the DrugBank database and identify potentially HLA-B*57:01 liable drugs. Then, we compared our workflow’s performance with another model recently developed by Metushi et al., which proposed seven in silico HLA-B*57:01 actives, but were later found to be experimentally inactive.MethodsAfter curation, there were over 6000 approved and experimental drugs remaining in DrugBank for docking using Schrodinger’s GLIDE SP and XP scoring functions. Docking was performed with our new consensus-like ensemble workflow, relying on three different X-ray crystals (3VRI, 3VRJ, and 3UPR) in presence and absence of co-binding peptides. The binding modes of HLA-B*57:01 hit compounds for all three peptides were further explored using 3D interaction fingerprints and hierarchical clustering.ResultsThe screening resulted in 22 hit compounds forecasted to bind HLA-B*57:01 in all docking conditions (SP and XP with and without peptides P1, P2, and P3). These 22 compounds afforded 2D-Tanimoto similarities being less than 0.6 when compared to the structure of native abacavir, whereas their 3D binding mode similarities varied in a broader range (0.2–0.8). Hierarchical clustering using a Ward Linkage revealed different clustering patterns for each co-binding peptide. When we docked Metushi et al.’s seven proposed hits using our workflow, our screening platform identified six out of seven as being inactive. Molecular dynamic simulations were used to explore the stability of abacavir and acyclovir in complex with peptide P3.ConclusionsThis study reports on the extensive docking of the DrugBank database and the 22 HLA-B*57:01 liable candidates we identified. Importantly, comparisons between this study and the one by Metushi et al. highlighted new critical and complementary knowledge for the development of future HLA-specific in silico models.

Highlights

  • Idiosyncratic adverse drug reactions have been linked to a drug’s ability to bind with a human leukocyte antigen (HLA) protein

  • Due to the high impact that non-standardized structural data can have upon a model’s predictive reliability and overall reproducibility, our first task was to clean and standardize the DrugBank dataset [49,50,51] as described in the “Methods” section. This resulted in a curated dataset of exactly 6094 compounds that were used for molecular docking targeting the HLA-B*57:01 variant

  • Following the same sequential docking procedure (SP − P2, SP + P2, XP − P2, and XP + P2), we identified 75 drugs that passed our thresholds for both co-binding peptides P1 and P2 (Fig. 1)

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Summary

Introduction

Idiosyncratic adverse drug reactions have been linked to a drug’s ability to bind with a human leukocyte antigen (HLA) protein. Predictable ADR events are directly caused by drugs’ polypharmacology and typically show a dosedependent relationship; idiosyncratic ADRs are not dependent upon drug pharmacology and/or dose. There are several genetic markers associated with a drug’s ability to cause ADR events: for instance, drug metabolizing proteins (cytochrome P450, CYP, glucose6-phosphate dehydrogenase, G6PD, nucleoside diphosphate linked moiety X-type motif 15, NUDT15), drug transporter proteins (ATP-binding cassette, ABC, solute carrier organic anion transporter family, SLCO1B1) or antigen-presenting cells, APC (human leukocyte antigen, HLA) [7]. Significant associations between human leukocyte antigen (HLA) proteins and idiosyncratic ADRs have been identified [4,5,6,7,8,9,10]

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