NMR structures of small molecules bound to a model of an RNA CUG repeat expansion

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Abstract

Trinucleotide repeat expansions fold into long, stable hairpins and cause a variety of incurable RNA gain-of-function diseases such as Huntington’s disease, the myotonic dystrophies, and spinocerebellar ataxias. One approach for treating these diseases is to bind small molecules to the structured RNAs. Both Huntington’s disease-like 2 (HDL2) and myotonic dystrophy type 1 (DM1) are caused by a r(CUG) repeat expansion, or r(CUG) exp . The RNA folds into a hairpin structure with a periodic array of 1×1 nucleotide UU loops (5’C U G/3’G U C; where the underlined nucleotides indicate the Us in the internal loop) that sequester various RNA-binding proteins (RBP) and hence the source of its gain-of-function. Here, we report NMR-refined structures of single 5’C U G/3’G U C motifs in complex with three different small molecules, a diguandinobenzoate ( 1 ), a derivative of 1 where the guanidino groups have been exchanged for imidazole ( 2 ), and a quinoline with improved drug-like properties ( 3 ). These structures were determined using nuclear magnetic resonance (NMR) spectroscopy and simulated annealing with restrained molecular dynamics (MD). Compounds 1 , 2 , and 3 formed stacking and hydrogen bonding interactions with the 5’C U G/3’G U C motif. Compound 3 also formed van der Waals interactions with the internal loop. The global structure of each RNA-small molecule complexes retains an A-form conformation, while the internal loops are still dynamic but to a lesser extent compared to the unbound form. These results aid our understanding of ligand-RNA interactions and enable structure-based design of small molecules with improved binding affinity for and biological activity against r(CUG) exp . As the first ever reported structures of RNA r(CUG) repeats bound to ligands, these structures can enable virtual screening campaigns combined with machine learning assisted de novo design.

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