
Supervised Machine Learning in Oncology: A Clinician's Guide
Author(s) -
Nikitha Murali,
Ahmet S. Kücükkaya,
Alexandra Petukhova,
John A. Onofrey,
Julius Chapiro
Publication year - 2020
Publication title -
digestive disease interventions
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.125
0eISSN - 2472-873X
pISSN - 2472-8721
DOI - 10.1055/s-0040-1705097
Subject(s) - machine learning , artificial intelligence , computer science , supervised learning , clinical practice , medical physics , medicine , artificial neural network , family medicine
The widespread adoption of electronic health records has resulted in an abundance of imaging and clinical information. New data-processing technologies have the potential to revolutionize the practice of medicine by deriving clinically meaningful insights from large-volume data. Among those techniques is supervised machine learning, the study of computer algorithms that use self-improving models that learn from labeled data to solve problems. One clinical area of application for supervised machine learning is within oncology, where machine learning has been used for cancer diagnosis, staging, and prognostication. This review describes a framework to aid clinicians in understanding and critically evaluating studies applying supervised machine learning methods. Additionally, we describe current studies applying supervised machine learning techniques to the diagnosis, prognostication, and treatment of cancer, with a focus on gastroenterological cancers and other related pathologies.