Quantum Algorithms for Photoreactivity in Cancer-Targeted Photosensitizers
- URL: http://arxiv.org/abs/2512.15889v1
- Date: Wed, 17 Dec 2025 19:04:45 GMT
- Title: Quantum Algorithms for Photoreactivity in Cancer-Targeted Photosensitizers
- Authors: Yanbing Zhou, Pablo A. M. Casares, Diksha Dhawan, Ignacio Loaiza, Soran Jahangiri, Robert A. Lang, Juan Miguel Arrazola, Stepan Fomichev,
- Abstract summary: Photodynamic therapy (PDT) is a targeted cancer treatment that uses light-activated photosensitizers to generate reactive oxygen species.<n>PDT relies on photosensitizers with strong optical sensitivity and high efficiency in generating reactive oxygen species.<n>We show how fault-tolerant quantum algorithms can be used to identify promising photosensitizer candidates for PDT.
- Score: 0.9677496185710476
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Photodynamic therapy (PDT) is a targeted cancer treatment that uses light-activated photosensitizers to generate reactive oxygen species that selectively destroy tumor cells, generally causing less collateral damage than conventional treatments. However, its clinical success hinges on the availability of photosensitizers with strong optical sensitivity and high efficiency in generating reactive oxygen species. While classical computational methods have provided useful insights into photosensitizer design, they struggle to scale and often lack the accuracy needed for these simulations. In this work, we show how fault-tolerant quantum algorithms can be used to identify promising photosensitizer candidates for PDT. To predict photosensitizer performance, we assess two computational properties. First, we quantify light sensitivity by calculating the cumulative absorption in the therapeutic window with a threshold projection algorithm. Second, we determine the efficiency of reactive oxygen generation by estimating intersystem crossing (ISC) rates using the evolution-proxy approach, complemented by a vibronic dynamic treatment where appropriate. We apply these algorithms to a clinically relevant and actively pursued class of photosensitizers, BODIPY derivatives, including heavy-atom and transition-metal-substituted systems that are challenging for classical methods. Our resource estimates, obtained with PennyLane, suggest that systems with active spaces ranging from 11 to 45 spatial orbitals can be simulated using $180$-$350$ logical qubits and Toffoli gate depths between $10^7$ and $10^9$, placing our algorithms within reach of realistic fault-tolerant quantum devices. This paves the way to an efficient quantum-based workflow for designing photosensitizers that can accelerate the discovery of new PDT agents.
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