학술논문

Considerations for the implementation of machine learning into acute care settings.
Document Type
article
Source
British Medical Bulletin. 141(1)
Subject
Bioengineering
Health Services
Clinical Research
Behavioral and Social Science
Basic Behavioral and Social Science
Networking and Information Technology R&D (NITRD)
Generic health relevance
Good Health and Well Being
Algorithms
Artificial Intelligence
Critical Care
Electronic Health Records
Humans
Machine Learning
acute care
machine learning
algorithms
Medical and Health Sciences
General & Internal Medicine
Language
Abstract
IntroductionManagement of patients in the acute care setting requires accurate diagnosis and rapid initiation of validated treatments; therefore, this setting is likely to be an environment in which cognitive augmentation of the clinician's provision of care with technology rooted in artificial intelligence, such as machine learning (ML), is likely to eventuate.Sources of dataPubMed and Google Scholar with search terms that included ML, intensive/critical care unit, electronic health records (EHR), anesthesia information management systems and clinical decision support were the primary sources for this report.Areas of agreementDifferent categories of learning of large clinical datasets, often contained in EHRs, are used for training in ML. Supervised learning uses algorithm-based models, including support vector machines, to pair patients' attributes with an expected outcome. Unsupervised learning uses clustering algorithms to define to which disease grouping a patient's attributes most closely approximates. Reinforcement learning algorithms use ongoing environmental feedback to deterministically pursue likely patient outcome.Areas of controversyApplication of ML can result in undesirable outcomes over concerns related to fairness, transparency, privacy and accountability. Whether these ML technologies irrevocably change the healthcare workforce remains unresolved.Growing pointsWell-resourced Learning Health Systems are likely to exploit ML technology to gain the fullest benefits for their patients. How these clinical advantages can be extended to patients in health systems that are neither well-endowed, nor have the necessary data gathering technologies, needs to be urgently addressed to avoid further disparities in healthcare.