| Literature DB >> 30684090 |
Narendra N Khanna1, Ankush D Jamthikar2, Deep Gupta2, Matteo Piga3, Luca Saba4, Carlo Carcassi5, Argiris A Giannopoulos6, Andrew Nicolaides7,8, John R Laird9, Harman S Suri10, Sophie Mavrogeni11, A D Protogerou12, Petros Sfikakis13,14, George D Kitas15,16, Jasjit S Suri17.
Abstract
PURPOSE OF THE REVIEW: Rheumatoid arthritis (RA) is a chronic, autoimmune disease which may result in a higher risk of cardiovascular (CV) events and stroke. Tissue characterization and risk stratification of patients with rheumatoid arthritis are a challenging problem. Risk stratification of RA patients using traditional risk factor-based calculators either underestimates or overestimates the CV risk. Advancements in medical imaging have facilitated early and accurate CV risk stratification compared to conventional cardiovascular risk calculators. RECENT FINDING: In recent years, a link between carotid atherosclerosis and rheumatoid arthritis has been widely discussed by multiple studies. Imaging the carotid artery using 2-D ultrasound is a noninvasive, economic, and efficient imaging approach that provides an atherosclerotic plaque tissue-specific image. Such images can help to morphologically characterize the plaque type and accurately measure vital phenotypes such as media wall thickness and wall variability. Intelligence-based paradigms such as machine learning- and deep learning-based techniques not only automate the risk characterization process but also provide an accurate CV risk stratification for better management of RA patients. This review provides a brief understanding of the pathogenesis of RA and its association with carotid atherosclerosis imaged using the B-mode ultrasound technique. Lacunas in traditional risk scores and the role of machine learning-based tissue characterization algorithms are discussed and could facilitate cardiovascular risk assessment in RA patients. The key takeaway points from this review are the following: (i) inflammation is a common link between RA and atherosclerotic plaque buildup, (ii) carotid ultrasound is a better choice to characterize the atherosclerotic plaque tissues in RA patients, and (iii) intelligence-based paradigms are useful for accurate tissue characterization and risk stratification of RA patients.Entities:
Keywords: Atherosclerosis; Cardiovascular risk assessment; Carotid ultrasound; Deep learning; Machine learning; Optical coherence tomography; Rheumatoid arthritis; Tissue characterization
Mesh:
Year: 2019 PMID: 30684090 DOI: 10.1007/s11883-019-0766-x
Source DB: PubMed Journal: Curr Atheroscler Rep ISSN: 1523-3804 Impact factor: 5.113