Patient and procedure selection for mechanical thrombectomy: Toward personalized medicine and the role of artificial intelligence.
Publication/Presentation Date
9-1-2022
Abstract
Mechanical thrombectomy (MT) for ischemic stroke due to large vessel occlusion is standard of care. Evidence-based guidelines on eligibility for MT have been outlined and evidence to extend the treatment benefit to more patients, particularly those at the extreme ends of a stroke clinical severity spectrum, is currently awaited. As patient selection continues to be explored, there is growing focus on procedure selection including the tools and techniques of thrombectomy and associated outcomes. Artificial intelligence (AI) has been instrumental in the area of patient selection for MT with a role in diagnosis and delivery of acute stroke care. Machine learning algorithms have been developed to detect cerebral ischemia and early infarct core, presence of large vessel occlusion, and perfusion deficit in acute ischemic stroke. Several available deep learning AI applications provide ready visualization and interpretation of cervical and cerebral arteries. Further enhancement of AI techniques to potentially include automated vessel probe tools in suspected large vessel occlusions is proposed. Value of AI may be extended to assist in procedure selection including both the tools and technique of thrombectomy. Delivering personalized medicine is the wave of the future and tailoring the MT treatment to a stroke patient is in line with this trend.
Volume
32
Issue
5
First Page
798
Last Page
807
ISSN
1552-6569
Published In/Presented At
Al Saiegh, F., Munoz, A., Velagapudi, L., Theofanis, T., Suryadevara, N., Patel, P., Jabre, R., Chen, C. J., Shehabeldin, M., Gooch, M. R., Jabbour, P., Tjoumakaris, S., Rosenwasser, R. H., & Herial, N. A. (2022). Patient and procedure selection for mechanical thrombectomy: Toward personalized medicine and the role of artificial intelligence. Journal of neuroimaging : official journal of the American Society of Neuroimaging, 32(5), 798–807. https://doi.org/10.1111/jon.13003
Disciplines
Business Administration, Management, and Operations | Health and Medical Administration | Management Sciences and Quantitative Methods
PubMedID
35567418
Department(s)
Administration and Leadership
Document Type
Article