Quantum Unified Adaptive Resonance Principles (QUARP): A Theoretical Framework for Quantum-Driven Dynamics in Human Biological Systems

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Abstract

Quantum Unified Anatomical Research Principles (QUARP) is proposed as a coherent framework for integrating quantum-mechanical phenomena with human biological processes. The framework aims to establish a principled bridge between foundational quantum effects—such as superposition, coherence, entanglement, tunneling, uncertainty, and decoherence—and their potential roles in biomolecular dynamics, cellular processes, neural systems, and whole-body physiology. By treating each principle as a modular axiom, QUARP provides a structured pathway to analyze how quantum signatures may emerge, persist, or be constrained within living systems. Superposition reflects the coexistence of multiple conformational states in biomolecules; coherence captures constructive interference patterns in energy transfer and neural oscillations; entanglement represents non-classical correlations in spindependent biochemical reactions; tunneling models enzyme catalysis and proton transfer; uncertainty highlights fundamental measurement limits of biological observables; and decoherence explains environmental constraints that transition systems from quantum to classical behavior. The central contribution of QUARP lies in formalizing these mappings into testable research principles supported by mathematical modeling, experimental protocols, and visualization tools. Potential applications include bioenergetics, enzymatic catalysis, sensory perception, neural computation, and medical diagnostics. In this way, QUARP transforms scattered insights of quantum biology into a unified, principle-driven research program with predictive capacity and biomedical relevance.

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