Quantification of coronary artery calcification in systemic sclerosis using visual ordinal and deep learning scoring: Association with systemic sclerosis clinical features
Yiming Luo , Daniel Hanuska , Jiehui Xu , Mary M Salvatore , Elana J Bernstein
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引用次数: 0
Abstract
Objective
To investigate the association between systemic sclerosis (SSc) clinical features and the extent and progression of coronary artery calcifications.
Methods
We conducted a single-center retrospective cohort study of patients with SSc. In our primary aim, we investigated the association between SSc clinical features and the annual progression of coronary artery calcium (CAC) scores quantified using the visual ordinal scoring method. In our secondary aim, we utilized DeepCAC, a deep learning-based method, to quantify coronary artery calcifications (“deep learning CAC score”), and explored its association with SSc clinical features.
Results
Eighty-six SSc patients were included in the primary aim and 171 in the secondary aim. SSc disease duration was inversely associated with annual ordinal CAC score progression in the demographics-adjusted model (coefficient = -0.004, 95 % CI -0.006 to -0.001, p-value = 0.01) and the demographics- and cardiovascular (CV) risk factor-adjusted model (coefficient = -0.004, 95 % CI -0.008 to -0.0004, p-value = 0.03). The presence of "fingertip ischemic ulcers or digital pitting scars" (demographics-adjusted model: coefficient = 1.07, 95 % CI 0.29 to 1.85, p < 0.01; demographics- and CV risk factor-adjusted model: coefficient = 1.39, 95 % CI 0.43 to 2.34, p < 0.01) and Group 1 pulmonary hypertension (demographics-adjusted model: coefficient = 1.34, 95 % CI 0.34 to 2.35, p < 0.01; demographics- and CV risk factor-adjusted model: coefficient = 1.52, 95 % CI 0.38 to 2.65, p < 0.01) were both associated with the deep learning CAC score.
Conclusion
Our results suggest that the progression of coronary artery calcification accelerates early during the SSc disease course and that severe microvasculopathy may be a risk factor for atherosclerotic CVD.
期刊介绍:
Seminars in Arthritis and Rheumatism provides access to the highest-quality clinical, therapeutic and translational research about arthritis, rheumatology and musculoskeletal disorders that affect the joints and connective tissue. Each bimonthly issue includes articles giving you the latest diagnostic criteria, consensus statements, systematic reviews and meta-analyses as well as clinical and translational research studies. Read this journal for the latest groundbreaking research and to gain insights from scientists and clinicians on the management and treatment of musculoskeletal and autoimmune rheumatologic diseases. The journal is of interest to rheumatologists, orthopedic surgeons, internal medicine physicians, immunologists and specialists in bone and mineral metabolism.