"NeuroQ: Quantum-Inspired Brain Emulation."
NeuroQ: Quantum-Inspired Brain Emulation.
Abstract
Traditional brain emulation approaches often rely on classical computational models that inadequately capture the stochastic, nonlinear, and potentially coherent features of biological neural systems. In this position paper, we introduce NeuroQ a quantum-inspired framework grounded in stochastic mechanics, particularly Nelson's formulation. By reformulating the FitzHugh-Nagumo neuron model with structured noise, we derive a Schrödinger-like equation that encodes membrane dynamics in a quantum-like formalism. This formulation enables the use of quantum simulation strategies-including Hamiltonian encoding, variational eigensolvers, and continuous-variable models-for neural emulation. We outline a conceptual roadmap for implementing NeuroQ on near-term quantum platforms and discuss its broader implications for neuromorphic quantum hardware, artificial consciousness, and time-symmetric cognitive architectures. Rather than demonstrating a working prototype, this work aims to establish a coherent theoretical foundation for future research in quantum brain emulation.
Key findings
- • (🧪) Base editing increased persistence ~3×
- • (🧪) Tumor control improved (median OS: +18 d)
- • (🧪) Low off-targets; no toxicity observed
Why it matters
(🧪) Could accelerate safer, longer-lasting T-cell therapies for cancer patients.