The cost of quantum algorithms for biochemistry: A case study in metaphosphate hydrolysis

Abstract

We evaluate the quantum resource requirements for ATP/metaphosphate hydrolysis, one of the most important reactions in all of biology with implications for metabolism, cellular signaling, and cancer therapeutics. In particular, we consider three algorithms for solving the ground state energy estimation problem: the variational quantum eigensolver, quantum Krylov, and quantum phase estimation. By utilizing exact classical simulation, numerical estimation, and analytical bounds, we provide a current and future outlook for using quantum computers to solve impactful biochemical and biological problems. Our results show that variational methods, while being the most heuristic, still require substantially fewer overall resources on quantum hardware, and could feasibly address such problems on current or near-future devices. We include our complete dataset of biomolecular Hamiltonians and code as benchmarks to improve upon with future techniques.

Type
Alan Bidart
Alan Bidart
Chemistry
Brenda Rubenstein
Brenda Rubenstein
Krieble Professor of Chemistry, Professor of Physics, and Director of Data Science
Prateek Vaish
Prateek Vaish
Chemistry