G-quadruplexes are nucleic acid motifs
formed by stacking of guanosine-tetrad
pseudoplanes. They perform varied biological roles, and their distinctive
structural features enable diverse applications. High-resolution structural
characterization of G-quadruplexes is often time-consuming and expensive,
calling for effective methods. Herein, we develop NMR chemical shifts
and machine learning-based methodology that allows direct, rapid,
and reliable analysis of canonical three-plane DNA G-quadruplexes
sans isotopic enrichment. We show, for the first time, that each unique
topology enforces a specific distribution of glycosidic torsion angles.
Newly acquired carbon chemical shifts are exquisite probes for the
dihedral angle distribution and provide immediate and unambiguous
backbone topology assignment. The support vector machine learning
methodology aids resonance assignment by providing plane indices for
tetrad-forming guanosines. We further demonstrate the robustness by
successful application of the methodology to a sequence that folds
in two dissimilar topologies under different ionic conditions, providing
its first atomic-level characterization.