血浆蛋白与颈动脉斑块有关,可预测动脉粥样硬化性心血管事件的发生。

IF 3.5 3区 医学 Q2 PHARMACOLOGY & PHARMACY Vascular pharmacology Pub Date : 2024-06-10 DOI:10.1016/j.vph.2024.107394
Andrea Baragetti , Liliana Grigore , Elena Olmastroni , Elisa Mattavelli , Alberico Luigi Catapano
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引用次数: 0

摘要

目的:由于操作人员之间的差异和组织障碍,进行无创颈动脉成像具有挑战性,但血浆蛋白质组学可以提供一种替代方法。我们在 "表面健康 "的受试者中寻找与颈动脉斑块的存在及其数量相关联的血浆蛋白,并预测临床上明显的动脉粥样硬化性心血管事件(ASCVD)的发生率,而不是目前公认的风险因素:我们研究了 PLIC 研究中 664 名受试者的 368 种蛋白质的血浆水平,这些受试者接受了颈动脉超声成像筛查,以检查是否存在斑块。我们通过人工智能(A.I.)对与斑块的存在和数量相关的蛋白质进行了聚类,并预测了22年中发生的ASCVD事件(登记了198起事件)。研究结果:664名受试者中有299人至少有1个颈动脉斑块(1+)(77人只有1个斑块,101人有2个斑块,121人有≥3个斑块(3+))。其余365名没有斑块的受试者为对照组。106种蛋白质与1+斑块相关,但97种蛋白质仅能显著预测3+斑块(AUC = 0.683 (0.601-0.785),p 讨论和结论:血浆蛋白质组学标记了颈动脉斑块的数量,并改善了对表面健康受试者的急性心血管疾病发病率的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Plasma proteins associate with carotid plaques and predict incident atherosclerotic cardiovascular events

Purpose

Performing non-invasive carotid imaging is challenging, owing inter-operator variability and organizational barriers, but plasma proteomics can offer an alternative. We sought plasma proteins that associate with the presence of carotid plaques, their number and predict the incidence of clinically overt atherosclerotic cardiovascular events (ASCVD) above currently recognized risk factors in “apparently healthy” subjects.

Methods

We studied the plasma levels of 368 proteins in 664 subjects from the PLIC study, who underwent an ultrasound imaging screening of the carotids to check for the presence of plaques. We clustered, by artificial intelligence (A.I.), the proteins that associate with the presence, the number of plaques and that predict incident ASCVDs over 22 years (198 events were registered).

Findings

299/664 subjects had at least 1 carotid plaque (1+) (77 with only one plaque, 101 with 2 plaques, 121 with ≥3 plaques (3+)). The remaining 365 subjects with no plaques acted as controls. 106 proteins were associated with 1+ plaques, but 97 proteins significantly predicted 3+ plaques only (AUC = 0.683 (0.601–0.785), p < 0.001), when considered alone.

A.I. underscored 87 proteins that improved the performance of the classical risk factors both in detecting 3+ plaques (AUC = 0.918 (0.887–0.943) versus risk factors alone, AUC = 0.760 (0.716–0.801), p < 0.001) and in predicting the incident ASCVD (AUC = 0.739 (0.704–0.773) vs risk factors alone AUC = 0.559 (0.521–0.598), p < 0.001). The chemotaxis/migration of leukocytes and interleukins/cytokines signaling were biological pathways mostly represented by these proteins.

Discussion and conclusions

Plasma proteomics marks the number of carotid plaques and improve the prediction of incidence ASCVDs in apparently healthy subjects.

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来源期刊
Vascular pharmacology
Vascular pharmacology 医学-药学
CiteScore
6.60
自引率
2.50%
发文量
153
审稿时长
31 days
期刊介绍: Vascular Pharmacology publishes papers, which contains results of all aspects of biology and pharmacology of the vascular system. Papers are encouraged in basic, translational and clinical aspects of Vascular Biology and Pharmacology, utilizing approaches ranging from molecular biology to integrative physiology. All papers are in English. The Journal publishes review articles which include vascular aspects of thrombosis, inflammation, cell signalling, atherosclerosis, and lipid metabolism.
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