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CACHE Challenge #1: Targeting the WDR Domain of LRRK2, A Parkinson’s Disease Associated Protein

Authors :
Li, Fengling
Ackloo, Suzanne
Arrowsmith, Cheryl H.
Ban, Fuqiang
Barden, Christopher J.
Beck, Hartmut
Beránek, Jan
Berenger, Francois
Bolotokova, Albina
Bret, Guillaume
Breznik, Marko
Carosati, Emanuele
Chau, Irene
Chen, Yu
Cherkasov, Artem
Corte, Dennis Della
Denzinger, Katrin
Dong, Aiping
Draga, Sorin
Dunn, Ian
Edfeldt, Kristina
Edwards, Aled
Eguida, Merveille
Eisenhuth, Paul
Friedrich, Lukas
Fuerll, Alexander
Gardiner, Spencer S
Gentile, Francesco
Ghiabi, Pegah
Gibson, Elisa
Glavatskikh, Marta
Gorgulla, Christoph
Guenther, Judith
Gunnarsson, Anders
Gusev, Filipp
Gutkin, Evgeny
Halabelian, Levon
Harding, Rachel J.
Hillisch, Alexander
Hoffer, Laurent
Hogner, Anders
Houliston, Scott
Irwin, John J
Isayev, Olexandr
Ivanova, Aleksandra
Jacquemard, Celien
Jarrett, Austin J
Jensen, Jan H.
Kireev, Dmitri
Kleber, Julian
Koby, S. Benjamin
Koes, David
Kumar, Ashutosh
Kurnikova, Maria G.
Kutlushina, Alina
Lessel, Uta
Liessmann, Fabian
Liu, Sijie
Lu, Wei
Meiler, Jens
Mettu, Akhila
Minibaeva, Guzel
Moretti, Rocco
Morris, Connor J
Narangoda, Chamali
Noonan, Theresa
Obendorf, Leon
Pach, Szymon
Pandit, Amit
Perveen, Sumera
Poda, Gennady
Polishchuk, Pavel
Puls, Kristina
Pütter, Vera
Rognan, Didier
Roskams-Edris, Dylan
Schindler, Christina
Sindt, François
Spiwok, Vojtěch
Steinmann, Casper
Stevens, Rick L.
Talagayev, Valerij
Tingey, Damon
Vu, Oanh
Walters, W. Patrick
Wang, Xiaowen
Wang, Zhenyu
Wolber, Gerhard
Wolf, Clemens Alexander
Wortmann, Lars
Zeng, Hong
Zepeda, Carlos A.
Zhang, Kam Y. J.
Zhang, Jixian
Zheng, Shuangjia
Schapira, Matthieu
Source :
Journal of Chemical Information and Modeling; 20240101, Issue: Preprints
Publication Year :
2024

Abstract

The CACHE challenges are a series of prospective benchmarking exercises to evaluate progress in the field of computational hit-finding. Here we report the results of the inaugural CACHE challenge in which 23 computational teams each selected up to 100 commercially available compounds that they predicted would bind to the WDR domain of the Parkinson’s disease target LRRK2, a domain with no known ligand and only an apo structure in the PDB. The lack of known binding data and presumably low druggability of the target is a challenge to computational hit finding methods. Of the 1955 molecules predicted by participants in Round 1 of the challenge, 73 were found to bind to LRRK2 in an SPR assay with a KDlower than 150 μM. These 73 molecules were advanced to the Round 2 hit expansion phase, where computational teams each selected up to 50 analogs. Binding was observed in two orthogonal assays for seven chemically diverse series, with affinities ranging from 18 to 140 μM. The seven successful computational workflows varied in their screening strategies and techniques. Three used molecular dynamics to produce a conformational ensemble of the targeted site, three included a fragment docking step, three implemented a generative design strategy and five used one or more deep learning steps. CACHE #1 reflects a highly exploratory phase in computational drug design where participants adopted strikingly diverging screening strategies. Machine learning-accelerated methods achieved similar results to brute force (e.g., exhaustive) docking. First-in-class, experimentally confirmed compounds were rare and weakly potent, indicating that recent advances are not sufficient to effectively address challenging targets.

Details

Language :
English
ISSN :
15499596 and 1549960X
Issue :
Preprints
Database :
Supplemental Index
Journal :
Journal of Chemical Information and Modeling
Publication Type :
Periodical
Accession number :
ejs67902202
Full Text :
https://doi.org/10.1021/acs.jcim.4c01267