The computational prediction of protein folding has represented a central challenge in biology for decades, known as the Levinthal paradox: How does an amino acid chain navigate in milliseconds through a conformational space of 10³⁰⁰ possibilities in a directed manner? This paper presents a paradigm shift by modeling folding not as a stochastic optimization process, but as a native geometric resonance response. Through the coupling of matter to a fundamental structural vacuum geometry, the chain resonantly locks into its energetically-geometric target structure. The newly introduced Geometric Data Format (GDF) replaces statistical PDB coordinates with precise, spatio-temporally clocked lattice resonance indices, thereby transforming folding from a search problem into an addressing problem. Proof-of-concept analyses on model proteins such as ubiquitin, myoglobin, protein G, and crambin demonstrate an average efficiency gain of factor 1.064 with reduced energy consumption, along with a projection toward million-fold acceleration through hardware-based resonance implementations. This work paves the way for an exact, physically grounded bioinformatics.
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Nils Sautter
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Nils Sautter (Sat,) studied this question.
synapsesocial.com/papers/69a52e75f1e85e5c73bf235c — DOI: https://doi.org/10.5281/zenodo.18819165
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