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首页> 外文期刊>Clinical cardiology. >A clinical and proteomics approach to predict the presence of obstructive peripheral arterial disease: From the Catheter Sampled Blood Archive in Cardiovascular Diseases (CASABLANCA) Study
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A clinical and proteomics approach to predict the presence of obstructive peripheral arterial disease: From the Catheter Sampled Blood Archive in Cardiovascular Diseases (CASABLANCA) Study

机译:预测阻塞性外周动脉疾病存在的临床和蛋白质组学方法:来自心血管疾病的导管采样血液档案(CASABLANCA)研究

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摘要

Background Peripheral arterial disease (PAD) is a global health problem that is frequently underdiagnosed and undertreated. Noninvasive tools to predict the presence and severity of PAD have limitations including inaccuracy, cost, or need for intravenous contrast and ionizing radiation. Hypothesis A clinical/biomarker score may offer an attractive alternative diagnostic method for PAD. Methods In a prospective cohort of 354 patients referred for diagnostic peripheral and/or coronary angiography, predictors of ≥50% stenosis in ≥1 peripheral vessel (carotid/subclavian, renal, or lower extremity arteries) were identified from >50 clinical variables and 109 biomarkers. Machine learning identified variables predictive of obstructive PAD; a score derived from the final model was developed. Results The score consisted of 1 clinical variable (history of hypertension) and 6 biomarkers (midkine, kidney injury molecule‐1, interleukin‐23, follicle‐stimulating hormone, angiopoietin‐1, and eotaxin‐1). The model had an in‐sample area under the receiver operating characteristic curve of 0.85 for obstructive PAD and a cross‐validated area under the curve of 0.84; higher scores were associated with greater severity of angiographic stenosis. At optimal cutoff, the score had 65% sensitivity, 88% specificity, 76% positive predictive value (PPV), and 81% negative predictive value (NPV) for obstructive PAD and performed consistently across vascular territories. Partitioning the score into 5 levels resulted in a PPV of 86% and NPV of 98% in the highest and lowest levels, respectively. Elevated score was associated with shorter time to revascularization during 4.3?years of follow‐up. Conclusions A clinical/biomarker score demonstrates high accuracy for predicting the presence of PAD.
机译:背景技术外周动脉疾病(PAD)是一个全球性的健康问题,经常被诊断不足和治疗不足。预测PAD的存在和严重性的非侵入性工具存在局限性,包括准确性,成本或需要静脉造影和电离辐射。假设临床/生物标志物评分可能为PAD提供有吸引力的替代诊断方法。方法在354名接受诊断性外周和/或冠状动脉造影检查的患者的前瞻性队列中,从> 50项临床变量和109项中识别出≥1条外周血管(颈动脉/锁骨下,肾或下肢动脉)狭窄≥50%的预测因子生物标志物。机器学习识别出可预测阻塞性PAD的变量;从最终模型得出的分数得到了发展。结果评分包括1个临床变量(高血压病史)和6个生物标志物(中生因子,肾损伤分子-1,白介素23,促卵泡激素,血管生成素-1和嗜酸性粒细胞趋化因子-1)。对于阻塞性PAD,该模型在接收器工作特性曲线下的样本内面积为0.85,在曲线下的交叉验证面积为0.84。分数越高,血管造影狭窄的严重程度越高。在最佳临界值时,阻塞性PAD的评分具有65%的敏感性,88%的特异性,76%的阳性预测值(PPV)和81%的阴性预测值(NPV),并且在整个血管区域均表现稳定。将分数分为5个级别,最高和最低级别的PPV分别为86%和NPV分别为98%和98%。在随访的4.3年内,评分升高与血运重建时间缩短有关。结论临床/生物标志物评分证明了预测PAD存在的准确性。

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