Computational Design and Experimental Validation of Photoactive PARP1 Inhibitors
Simon Axelrod, Miroslav Kašpar, Kristýna Jelínková, Markéta Šmídková, Erika Bartůňková + 6 more
TLDR
Computational design and ML identified photoactive PARP1 inhibitors, with one showing a 15-fold increase in inhibition under green light, validated experimentally.
Key contributions
- Developed a computational workflow using ML, quantum chemistry, and FEP to screen 5 million photoactive ligands.
- Prioritized 10 candidates with red-shifted absorption and seconds-to-minutes thermal half-lives for PARP1 inhibition.
- Experimentally validated candidates, finding compound 1 increased PARP1 inhibition 15-fold under green light (519 nm).
- Validated the computation-guided screening strategy for identifying red-shifted PARP1 photoinhibitors.
Why it matters
Light-activated drugs offer localized treatment with fewer side effects, but their development is challenging. This paper introduces a robust computational-experimental pipeline to accelerate the discovery of such drugs, validating it with a promising PARP1 photoinhibitor. This approach could lead to more targeted cancer therapies.
Original Abstract
Light-activated drugs are a promising way to treat localized diseases for which existing treatments have severe side effects. However, their development is complicated by the set of photophysical and biological properties that must be simultaneously optimized. Here we used computational techniques to find a set of promising candidates for the photoactive inhibition of the poly(ADP-ribose) polymerase 1 (PARP1) cancer target. Using our recently developed methods based on atomistic simulation and machine learning (ML), we screened a set of 5 million hypothetical photoactive ligands. Our workflow used protein-ligand docking to identify candidates with differential PARP1 binding under light and dark conditions; ML force fields and quantum chemistry calculations to predict p$K_\mathrm{a}$, absorption spectra, and thermal half-lives; graph-based surrogate models to screen additional compounds; excited-state nonadiabatic dynamics with ML force fields to estimate quantum yields; and free energy perturbation (FEP) to refine binding predictions. From these predictions, we prioritized a small set of synthetically feasible candidates expected to have red-shifted absorption spectra, thermal half-lives on the order of seconds to minutes, and isomer-dependent PARP1 binding under visible-light control. We synthesized 10 candidates and experimentally characterized their photobehavior and PARP1 inhibition constants. Among the validated compounds, \textbf{1} showed a 15-fold increase in inhibition of PARP1 upon green-light irradiation at 519 nm (208.8 $\pm$ 28.3 $μ$M vs 14.4 $\pm$ 1.9 $μ$M). These results validate the computation-guided screening strategy for identifying red-shifted PARP1 photoinhibitors, while also underscoring current limitations such as rapid thermal relaxation in aqueous media.
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