The potential use of artificial intelligence for venous thromboembolism prophylaxis and management: Clinician and healthcare informatician perspectives Journal Article


Authors: Lam, B. D.; Dodge, L. E.; Zerbey, S.; Robertson, W.; Rosovsky, R. P.; Lake, L.; Datta, S.; Elavakanar, P.; Adamski, A.; Reyes, N.; Abe, K.; Vlachos, I. S.; Zwicker, J. I.; Patell, R.
Article Title: The potential use of artificial intelligence for venous thromboembolism prophylaxis and management: Clinician and healthcare informatician perspectives
Abstract: Venous thromboembolism (VTE) is the leading cause of preventable death in hospitalized patients. Artificial intelligence (AI) and machine learning (ML) can support guidelines recommending an individualized approach to risk assessment and prophylaxis. We conducted electronic surveys asking clinician and healthcare informaticians about their perspectives on AI/ML for VTE prevention and management. Of 101 respondents to the informatician survey, most were 40 years or older, male, clinicians and data scientists, and had performed research on AI/ML. Of the 607 US-based respondents to the clinician survey, most were 40 years or younger, female, physicians, and had never used AI to inform clinical practice. Most informaticians agreed that AI/ML can be used to manage VTE (56.0%). Over one-third were concerned that clinicians would not use the technology (38.9%), but the majority of clinicians believed that AI/ML probably or definitely can help with VTE prevention (70.1%). The most common concern in both groups was a perceived lack of transparency (informaticians 54.4%; clinicians 25.4%). These two surveys revealed that key stakeholders are interested in AI/ML for VTE prevention and management, and identified potential barriers to address prior to implementation.
Keywords: risk; artificial intelligence; performance; venous thromboembolism; survey; machine learning; thromboprophylaxis; medically ill patient; deployment
Journal Title: Scientific Reports
Volume: 14
ISSN: 2045-2322
Publisher: Nature Publishing Group  
Date Published: 2024-05-01
Start Page: 12010
Language: English
ACCESSION: WOS:001232570400002
DOI: 10.1038/s41598-024-62535-9
PROVIDER: wos
PMCID: PMC11127994
PUBMED: 38796561
Notes: Article -- Source: Wos
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  1. Jeffrey Zwicker
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