Present and future of machine learning in breast surgery: systematic review

Author:

Soh Chien Lin1,Shah Viraj2,Arjomandi Rad Arian23ORCID,Vardanyan Robert2,Zubarevich Alina4ORCID,Torabi Saeed5,Weymann Alexander4ORCID,Miller George36,Malawana Johann36

Affiliation:

1. School of Clinical Medicine, University of Cambridge , Cambridge , UK

2. Department of Medicine, Faculty of Medicine, Imperial College London , London , UK

3. Research Unit, The Healthcare Leadership Academy , London , UK

4. Department of Thoracic and Cardiovascular Surgery, West German Heart and Vascular Center Essen, University Hospital of Essen, University Duisburg-Essen , Essen , Germany

5. Department of Anesthesiology and Intensive Care Medicine, University Hospital of Cologne , Cologne , Germany

6. Centre for Digital Health and Education Research (CoDHER), University of Central Lancashire Medical School , Preston , UK

Abstract

Abstract Background Machine learning is a set of models and methods that can automatically detect patterns in vast amounts of data, extract information, and use it to perform decision-making under uncertain conditions. The potential of machine learning is significant, and breast surgeons must strive to be informed with up-to-date knowledge and its applications. Methods A systematic database search of Embase, MEDLINE, the Cochrane database, and Google Scholar, from inception to December 2021, was conducted of original articles that explored the use of machine learning and/or artificial intelligence in breast surgery in EMBASE, MEDLINE, Cochrane database and Google Scholar. Results The search yielded 477 articles, of which 14 studies were included in this review, featuring 73 847 patients. Four main areas of machine learning application were identified: predictive modelling of surgical outcomes; breast imaging-based context; screening and triaging of patients with breast cancer; and as network utility for detection. There is evident value of machine learning in preoperative planning and in providing information for surgery both in a cancer and an aesthetic context. Machine learning outperformed traditional statistical modelling in all studies for predicting mortality, morbidity, and quality of life outcomes. Machine learning patterns and associations could support planning, anatomical visualization, and surgical navigation. Conclusion Machine learning demonstrated promising applications for improving breast surgery outcomes and patient-centred care. Neveretheless, there remain important limitations and ethical concerns relating to implementing artificial intelligence into everyday surgical practices.

Publisher

Oxford University Press (OUP)

Subject

Surgery

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