Artificial intelligence-enabled coronary plaque quantification for personalized risk assessment and lipid-lowering therapy: Insights from the FISH&CHIPS study(✰)

人工智能辅助冠状动脉斑块定量分析在个性化风险评估和降脂治疗中的应用:来自 FISH&CHIPS 研究的启示(✰)

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Abstract

BACKGROUND: Coronary computed tomographic angiography (CCTA) is a guideline-endorsed tool to evaluate coronary artery disease (CAD) in symptomatic patients. Artificial intelligence enabled quantitative coronary plaque analysis on CCTA (AI-CPA) is a promising strategy for tailored management of atherosclerotic cardiovascular disease (ASCVD). Population-level data are needed on how CCTA-derived plaque analyses can inform lipid-lowering strategies for ASCVD risk reduction. OBJECTIVES: To model the utility and efficiency of a total plaque volume (TPV)-based risk staging system in guiding lipid-lowering therapy in patients undergoing clinically-indicated CCTAs for evaluation of stable suspected or known CAD. METHODS: We analyzed adult patients from the Computed Tomography Angiography Helps/Hinders Improve Patient care and Societal costs (FISH&CHIPS) across 2 sites in the UK who underwent a clinically-indicated CCTA with AI-based quantitative plaque analysis. TPV was categorized into four risk stages using pre-defined thresholds of 1-100, 101-250, 251-750, and >750 mm(3) for DECIDE stages 1-4, respectively. The primary outcome was the estimated reduction in cardiovascular death or non-fatal MI, and the number needed to treat (NNT) based on AI-CPA, over 10 years. We modeled lipid-lowering therapy utilizing treat-to-target LDL-C goals of <100, <70, <55, and <40 mg/dL for DECIDE stages 1-4, respectively, to estimate risk reduction and NNT over 10 years. RESULTS: The study population included 7899 total symptomatic participants undergoing CCTA and AI-CPA. Of these, 6054 patients had any plaque and were included in the final cohort; the mean age was 59.4 ± 11.7 years and 42.7% were women. Among the full cohort, the 10-year modeled relative risk reduction using a TPV treat-to-target LDL-C was 19.1% with NNT of 61. The 10-year relative risk reduction and NNT by DECIDE stages 1-4 was 1.5% (NNT = 1686), 18.2% (NNT = 59), 24.2% (NNT = 27), and 33.8% (NNT = 11), respectively. CONCLUSIONS: Quantitative TPV measured by AI-CPA identifies symptomatic patients at elevated long-term cardiovascular risk and may efficiently inform implementation of personalized lipid-lowering strategies to reduce cardiovascular events.

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