Oncological Applications of Quantum Machine Learning.
Milad RahimiFarkhondeh AsadiPublished in: Technology in cancer research & treatment (2023)
Background: Cancer is a leading cause of death worldwide. Machine learning (ML) and quantum computers (QCs) have recently advanced significantly. Numerous studies have examined the application of quantum machine learning (QML) in healthcare and validated its superiority over classical ML algorithms. Objectives: This review investigates and reports the oncological applications of QML. Methods: In March 2023, an electronic investigation of PubMed, Scopus, Web of Science, IEEE, and Cochrane databases was performed. The articles were screened based on titles and abstracts, and their full texts were examined. Results: Initially, a total of 207 articles were retrieved. Thereafter, 9 articles were included in the study, most of which were published from 2020 onwards. The results indicated the implementation of various QML techniques in different aspects of oncology, such as reducing mammography image noise, edge detection of breast cancer, clinical decision support in radiotherapy treatment, and cancer classification. Conclusion: These studies revealed that integrating quantum science with ML can significantly improve patient care and clinical outcomes. Future studies should explore the integration of QC and ML and the development of novel algorithms to enhance cancer prognosis, diagnosis, and treatment planning.
Keyphrases
- machine learning
- papillary thyroid
- deep learning
- healthcare
- artificial intelligence
- big data
- molecular dynamics
- clinical decision support
- squamous cell
- case control
- early stage
- rectal cancer
- childhood cancer
- prostate cancer
- lymph node metastasis
- randomized controlled trial
- electronic health record
- air pollution
- palliative care
- single cell
- smoking cessation
- monte carlo
- health insurance
- quantum dots
- magnetic resonance
- minimally invasive
- robot assisted