| Literature DB >> 31905452 |
John T Schwartz1, Michael Gao1, Eric A Geng1, Kush S Mody1, Christopher M Mikhail1, Samuel K Cho1.
Abstract
Developments in machine learning in recent years have precipitated a surge in research on the applications of artificial intelligence within medicine. Machine learning algorithms are beginning to impact medicine broadly, and the field of spine surgery is no exception. Electronic medical records are a key source of medical data that can be leveraged for the creation of clinically valuable machine learning algorithms. This review examines the current state of machine learning using electronic medical records as it applies to spine surgery. Studies across the electronic medical record data domains of imaging, text, and structured data are reviewed. Discussed applications include clinical prognostication, preoperative planning, diagnostics, and dynamic clinical assistance, among others. The limitations and future challenges for machine learning research using electronic medical records are also discussed.Entities:
Keywords: Artificial intelligence; Deep learning; Electronic medical records; Machine learning; Spine surgery
Year: 2019 PMID: 31905452 PMCID: PMC6945000 DOI: 10.14245/ns.1938386.193
Source DB: PubMed Journal: Neurospine ISSN: 2586-6591
Fig. 1.Stacked area chart depicting the number of publications by publication year returned in PubMed searches using the search terms “artificial intelligence,” “machine learning,” or “deep learning.” Results were filtered to include publication dates between 1980 and 2018.
Fig. 2.A breakdown of common types of machine learning algorithms used in medical applications. t-SNE, t-Stochastic Neighbor Embedding. *Deep learning algorithms.