Quantum Computing in Medicine

Med Sci (Basel). 2024 Nov 17;12(4):67. doi: 10.3390/medsci12040067.

Abstract

Quantum computing (QC) represents a paradigm shift in computational power, offering unique capabilities for addressing complex problems that are infeasible for classical computers. This review paper provides a detailed account of the current state of QC, with a particular focus on its applications within medicine. It explores fundamental concepts such as qubits, superposition, and entanglement, as well as the evolution of QC from theoretical foundations to practical advancements. The paper covers significant milestones where QC has intersected with medical research, including breakthroughs in drug discovery, molecular modeling, genomics, and medical diagnostics. Additionally, key quantum techniques such as quantum algorithms, quantum machine learning (QML), and quantum-enhanced imaging are explained, highlighting their relevance in healthcare. The paper also addresses challenges in the field, including hardware limitations, scalability, and integration within clinical environments. Looking forward, the paper discusses the potential for quantum-classical hybrid systems and emerging innovations in quantum hardware, suggesting how these advancements may accelerate the adoption of QC in medical research and clinical practice. By synthesizing reliable knowledge and presenting it through a comprehensive lens, this paper serves as a valuable reference for researchers interested in the transformative potential of QC in medicine.

Keywords: Monte Carlo simulation; drug discovery; healthcare; medical diagnostics; medicine; personalized medicine; quantum algorithms; quantum computing; quantum machine learning; radiotherapy optimization.

Publication types

  • Review

MeSH terms

  • Algorithms
  • Computing Methodologies
  • Humans
  • Machine Learning*
  • Quantum Theory*