CACHE Challenge #3: Targeting the Nsp3 Macrodomain of SARS-CoV-2

Authors
Herasymenko, OleksandraSilva, MadhushikaCorrey, Galen J.Abu-Saleh, Abd Al-Aziz A.Ackloo, SuzanneArrowsmith, CherylAshworth, AlanBan, FuqiangBeck, HartmutBishop, Kevin P.Bohorquez, Hugo J.Bolotokova, AlbinaBreznik, MarkoChau, IreneChen, YuCherkasov, ArtemDehaen, WimDella Corte, DennisDenzinger, KatrinDoering, Niklas P.Edfeldt, KristinaEdwards, AledFayne, DarrenGentile, FrancescoGibson, ElisaGokdemir, OzanGunnarsson, AndersGunther, JudithIrwin, John J.Jensen, Jan HalborgHarding, Rachel J.Hillisch, AlexanderHoffer, LaurentHogner, AndersHutchinson, AshleyKandwal, ShubhangiKarlova, AndreaKoirala, KushalKotelnikov, SergeiKozakov, DimaLee, JuyongLee, SoowonLessel, UtaLiu, SijieLiu, XuefengLoppnau, PeterMeiler, JensMoretti, RoccoMoroz, Yurii S.Muvva, CharuvakaOprea, Tudor I.Paige, BrooksPandit, AmitPark, KeunwanPoda, GennadyProtopopov, Mykola V.Putter, VeraRavichandran, RahulRognan, DidierRosta, EdinaSabnis, YogeshScott, ThomasSeitova, AlmagulSharma, PurshotamSindt, FrancoisSong, MinghuSteinmann, CasperStevens, RickTalagayev, ValerijTararina, Valentyna V.Tarkhanova, OlgaTingey, DamonTrant, John F.Treleaven, DakotaTropsha, AlexanderWalters, PatrickWells, JudeWestermaier, YvonneWolber, GerhardWortmann, LarsZheng, ShuangjiaFraser, James S.Schapira, Matthieu
Issue Date
2026-01
Publisher
American Chemical Society
Citation
Journal of Chemical Information and Modeling
Abstract
The third Critical Assessment of Computational Hit-finding Experiments (CACHE) challenged computational teams to identify chemically novel ligands targeting the macrodomain 1 of SARS-CoV-2 Nsp3, a promising coronavirus drug target. Twenty-three groups deployed diverse design strategies to collectively select 1739 ligand candidates. While over 85% of the designed molecules were chemically novel, the best experimentally confirmed hits were structurally similar to previously published compounds. Confirming a trend observed in CACHE #1 and #2, two of the best-performing workflows used compounds selected by physics-based computational screening methods to train machine learning models able to rapidly screen large chemical libraries, while four others used exclusively physics-based approaches. Three pharmacophore searches and one fragment growing strategy were also part of the seven winning workflows. While active molecules discovered by CACHE #3 participants largely mimicked the adenine ring of the endogenous substrate, ADP-ribose, preserving the canonical chemotype commonly observed in previously reported Nsp3-Mac1 ligands, they still provide novel structure-activity relationship insights that may inform the development of future antivirals. Collectively, these results show that multiple molecular design strategies can efficiently converge on similar potent molecules.
ISSN
1549-9596
URI
https://pubs.kist.re.kr/handle/201004/154138
DOI
10.1021/acs.jcim.5c02441
Appears in Collections:
KIST Article > 2026
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