AI Agents 相关度: 5/10

Four Generations of Quantum Biomedical Sensors

Xin Jin, Priyam Srivastava, Ronghe Wang, Yuqing Li, Jonathan Beaumariage, Tom Purdy, M. V. Gurudev Dutt, Kang Kim, Kaushik Seshadreesan, Junyu Liu
arXiv: 2603.29944v1 发布: 2026-03-31 更新: 2026-03-31

AI 摘要

论文提出了量子生物传感器发展的四代框架,并探讨了其临床转化的瓶颈和未来方向。

主要贡献

  • 提出了量子生物传感器发展的四代框架
  • 分析了不同代传感器的优势与局限
  • 探讨了量子生物传感器临床转化的关键挑战
  • 提出了利用量子学习实现量子增强智能的愿景

方法论

通过分析带宽匹配、传感器组织邻近性等关键参数,识别技术瓶颈,提出发展路线图。

原文摘要

Quantum sensing technologies offer transformative potential for ultra-sensitive biomedical sensing, yet their clinical translation remains constrained by classical noise limits and a reliance on macroscopic ensembles. We propose a unifying generational framework to organize the evolving landscape of quantum biosensors based on their utilization of quantum resources. First-generation devices utilize discrete energy levels for signal transduction but follow classical scaling laws. Second-generation sensors exploit quantum coherence to reach the standard quantum limit, while third-generation architectures leverage entanglement and spin squeezing to approach Heisenberg-limited precision. We further define an emerging fourth generation characterized by the end-to-end integration of quantum sensing with quantum learning and variational circuits, enabling adaptive inference directly within the quantum domain. By analyzing critical parameters such as bandwidth matching and sensor-tissue proximity, we identify key technological bottlenecks and propose a roadmap for transitioning from measuring physical observables to extracting structured biological information with quantum-enhanced intelligence.

标签

量子传感 生物医学 量子学习 量子计算

arXiv 分类

quant-ph cs.AI