Abstract This letter reports a hybrid quantum-classical optimization framework for predicting the native tertiary structure of proteins, specifically targeting a 20-amino acid sequence. Utilizing the ARK5Q-200K protocol, we integrate Quantum Annealing (QA) with Graph Neural Networks (GNN) to map the polypeptide torsional energy landscape onto a 200,000-qubit topological manifold. Our architecture resolves the Gibbs free energy minimization with a sub-femto precision residual of 1.48 mHa, effectively bypassing the Levinthal paradox through transcendental phase synchronization of the electronic cloud. By stabilizing the folding patterns against environmental decoherence, this study establishes a foundational baseline for the synthesis of high-resilience biological tissues. These results demonstrate that the CCristo infrastructure provides the necessary fidelity for advanced bio-adaptology in extreme orbital and interstellar environments.
Teixeira A. C (Sat,) studied this question.
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