医学
狼牙棒
心脏病学
心肌灌注成像
内科学
冠状动脉疾病
心肌梗塞
胸痛
部分流量储备
心绞痛
血运重建
不稳定型心绞痛
灌注
冠状动脉造影
经皮冠状动脉介入治疗
作者
Lu Liu,Neng Dai,Guoqing Yin,Wen Zhang,Abdul‐Quddus Mohammed,Siling Xu,Xian Lv,Tingting Shi,Cailin Feng,Ayman A. Mohammed,Redhwan M. Mareai,Yawei Xu,Xuejing Yu,Fuad A. Abdu,Fei Yu,Wenliang Che
标识
DOI:10.1007/s12350-022-03038-w
摘要
BackgroundA significant proportion of ischemia with non-obstructive coronary artery disease (INOCA) demonstrate coronary microvascular dysfunction (CMD), a condition associated with abnormal myocardial perfusion imaging (MPI) and adverse outcomes. Coronary angiography-derived index of microvascular resistance (caIMR) is a novel non-invasive technique to assess CMD. We aimed to investigate the prognostic value of combined caIMR and MPI by CZT SPECT in INOCA patients.MethodsConsecutive 151 patients with chest pain and < 50% coronary stenosis who underwent coronary angiography and MPI within 3 months were enrolled. caIMR was calculated by computational pressure-flow dynamics. CMD was defined as caIMR ≥ 25. The endpoint was major adverse cardiac events (MACE: cardiovascular death, nonfatal myocardial infarction, revascularization, angina-related rehospitalization, heart failure, and stroke).ResultsOf all INOCA patients, CMD was present in 93 (61.6%) patients. The prevalence of abnormal MPI was significantly higher in CMD compared with non-CMD patients (40.9% vs 13.8%, P < .001). CMD showed a higher risk of MACE than non-CMD patients. Patients with both CMD and abnormal MPI had the worst prognosis, followed by patients with CMD and normal MPI (log-rank P < .001). Cox regression analysis identified CMD (HR 3.121, 95%CI 1.221-7.974, P = .017) and MPI (HR 2.704, 95%CI 1.030-7.099, P = .043) as predictive of MACE. The prognostic value of INOCA patients enhanced significantly by adding CMD and MPI to the model with clinical risk factors (AUC = 0.777 vs 0.686, P = .030).ConclusioncaIMR-derived CMD is associated with increased risk of MACE among INOCA patients. Patients with abnormalities on both caIMR and MPI had the worse outcomes.Graphical abstract
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