| Literature DB >> 35391770 |
Yasasvi Tadavarthi1, Valeria Makeeva1, William Wagstaff1, Henry Zhan1, Anna Podlasek1, Neil Bhatia1, Marta Heilbrun1, Elizabeth Krupinski1, Nabile Safdar1, Imon Banerjee1, Judy Gichoya1, Hari Trivedi1.
Abstract
Artificial intelligence has become a ubiquitous term in radiology over the past several years, and much attention has been given to applications that aid radiologists in the detection of abnormalities and diagnosis of diseases. However, there are many potential applications related to radiologic image quality, safety, and workflow improvements that present equal, if not greater, value propositions to radiology practices, insurance companies, and hospital systems. This review focuses on six major categories for artificial intelligence applications: study selection and protocoling, image acquisition, worklist prioritization, study reporting, business applications, and resident education. All of these categories can substantially affect different aspects of radiology practices and workflows. Each of these categories has different value propositions in terms of whether they could be used to increase efficiency, improve patient safety, increase revenue, or save costs. Each application is covered in depth in the context of both current and future areas of work. Keywords: Use of AI in Education, Application Domain, Supervised Learning, Safety © RSNA, 2022. 2022 by the Radiological Society of North America, Inc.Entities:
Keywords: Application Domain; Safety; Supervised Learning; Use of AI in Education
Year: 2022 PMID: 35391770 PMCID: PMC8980942 DOI: 10.1148/ryai.210114
Source DB: PubMed Journal: Radiol Artif Intell ISSN: 2638-6100