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首页> 外文期刊>Journal of Zhejiang University. Science, B >Screening for significant atherosclerotic renal artery stenosis with a regression model in patients undergoing transradial coronary angiography/intervention
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Screening for significant atherosclerotic renal artery stenosis with a regression model in patients undergoing transradial coronary angiography/intervention

机译:筛查颅冠血管造影/干预患者的回归模型的显着动脉粥样硬化肾动脉狭窄

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Objective: Early detection of atherosclerotic renal artery stenosis (ARAS) is clinically important with respect to blood pressure control, prevention of renal insufficiency, and even improving survival. We investigated whether the presence of significant ARAS (luminal diameter narrowing ≥70%) could be predicted using a logistic regression model before coronary angiography/intervention. Methods: Initially, we developed a logistic regression model for detecting significant ARAS based upon clinical and angiographic features and biochemical measurements in a cohort of 1813 patients undergoing transfemoral coronary and renal angiography. This model was then prospectively applied to an additional 495 patients who received transradial renal angiography to ascertain its predictive accuracy for the presence of significant ARAS. Results: Multivariate regression analysis revealed that older age (≥65 years), resistant hypertension, type 2 diabetes, creatinine clearance (Ccr) ≤60 ml/min, and multivessel coronary disease were independent predictors for significant ARAS. A logistic regression model for detecting ARAS by incorporating conventional risk factors and multivessel coronary disease was generated as: P/(1?P)=exp(?2.618+1.112[age≥65 years]+1.891[resistant hypertension]+0.453[type 2 diabetes]+0.587[Ccr≤60 ml/min]+2.254[multivessel coronary disease]). When this regression model was prospectively applied to the additional 495 patients undergoing transradial coronary and renal angiography, significant ARAS could be detected with a sensitivity of 81.2%, specificity of 88.9%, and positive and negative predictive accuracies of 53.8% and 96.7%, respectively. Conclusions: The logistic regression model generated in this study may be useful for screening for significant ARAS in patients undergoing transradial coronary angiography/intervention.
机译:目的:早期检测动脉粥样硬化肾动脉狭窄(ARAS)是对血压控制,预防肾功能不全,甚至改善存活的临床上重要性。我们研究了在冠状动脉造影/干预之前可以使用逻辑回归模型预测显着的ARAs(腔直径窄≥70%)的存在。方法:最初,我们开发了一种基于临床和血管造影特征的临床和血管造影特征和生物化学测量,在接受血换冠状动脉造影的1813名患者的群体中检测显着的ARAS的逻辑回归模型。然后将该模型潜在应用于另外495名接受颅骨肾血管造影的患者,以确定其存在显着的ARAS的预测准确性。结果:多变量回归分析显示,年龄较大的年龄(≥65岁),抗性高血压,2型糖尿病,肌酐清除(CCR)≤60mL/ min,以及多血管冠状病是重要的aras的独立预测因子。通过掺入常规风险因素和多型冠状动脉疾病来检测ARAS的逻辑回归模型为:P /(1?P)= EXP(?2.618 + 1.112 [年龄≥65岁] +1.891 [抗性高血压] +0.453 [类型2糖尿病] + 0.587 [CCR≤60mL/ min] + 2.254 [多血管冠状病])。当前瞻性应用该回归模型的递增495名正在进行的颅冠状动脉和肾脏血管造影时,可以检测到显着的ARAS,敏感性为81.2%,特异性为88.9%,积极和负面预测准确性分别为53.8%和96.7% 。结论:本研究中产生的逻辑回归模型可用于筛选经历颅冠状动脉造影/干预患者的重要痤疮。

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