基于循环生物标志物鉴别症状性自发性颅内动脉夹层模型的建立与验证。

IF 3.8 2区 医学 Q1 CLINICAL NEUROLOGY Translational Stroke Research Pub Date : 2025-01-06 DOI:10.1007/s12975-024-01322-0
Peng Liu, Xin Nie, Bing Zhao, Jiangan Li, Yisen Zhang, Guibing Wang, Lei Chen, Hongwei He, Shuo Wang, Qingyuan Liu, Jinrui Ren
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引用次数: 0

摘要

自发性颅内动脉夹层(sIAD)是年轻人中风的主要原因。确定表现出症状并可能进展的高风险sIAD病例对治疗决策至关重要。本研究旨在建立一种依赖循环生物标志物来区分症状性siad的模型。该研究前瞻性地收集了2020年1月至2022年12月的sIAD组织和相应的血清作为发现队列。症状性siad被定义为有质量效应、出血性或缺血性卒中。在衍生队列(包括2018年1月至2022年8月的横断面队列)中使用机器学习算法开发了分层模型,并在验证队列(包括2017年1月至2023年4月的纵向队列)中进行了验证。在发现队列(n = 10,5有症状)中,组织和血清分析显示有症状和无症状siad之间有15种蛋白质和2种细胞因子具有显著性。在这些生物标志物中,参与免疫反应和炎症相关通路的6种蛋白和1种细胞因子在sIAD组织和血清中的表达水平具有良好的一致性。在衍生队列(n = 181,77例有症状)中,纳入这7种生物标志物的模型对有症状的siad具有高度的鉴别性(曲线下面积[AUC], 0.95)。该模型在预测验证队列(n = 84, 26例有症状)中siad相关症状的发生方面表现良好,AUC为0.88。本研究揭示了症状性sIAD的7个循环生物标志物,并提供了依赖这些循环生物标志物识别症状性sIAD的高精度模型,这可能有助于sIAD的临床决策。
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Development and Validation of a Model Based on Circulating Biomarkers for Discriminating Symptomatic Spontaneous Intracranial Artery Dissection.

Spontaneous intracranial artery dissection (sIAD) is the leading cause of stroke in young individuals. Identifying high-risk sIAD cases that exhibit symptoms and are likely to progress is crucial for treatment decision-making. This study aimed to develop a model relying on circulating biomarkers to discriminate symptomatic sIADs. The study prospectively collected sIAD tissues and corresponding serums from January 2020 to December 2022 as the discovery cohort. Symptomatic sIADs were defined as those with mass effect, hemorrhagic, or ischemic stroke. A stratification model was developed using the machine-learning algorithm within the derivation cohort (a cross-sectional cohort including from January 2018 to August 2022) and validated within the validation cohort (a longitudinal cohort including from January 2017 to April 2023). In the discovery cohort (n = 10, 5 symptomatic), analyses of tissues and serums revealed 15 proteins and 2 cytokines with significance between symptomatic and asymptomatic sIADs. Among these biomarkers, six proteins and one cytokine, participating in the immune response and inflammatory-related pathways, have a good consistency in expression level between sIAD tissues and serums. In the derivation cohort (n = 181, 77 symptomatic), a model incorporating these 7 biomarkers was highly discriminative of symptomatic sIADs (area under curve [AUC], 0.95). This model performed well in predicting the occurrence of sIAD-related symptoms in the validation cohort (n = 84, 26 symptomatic) with an AUC of 0.88. This study revealed seven circulating biomarkers of symptomatic sIAD and provided a high-accuracy model relying on these circulating biomarkers to identify symptomatic sIADs, which may aid in clinical decision-making for sIADs.

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来源期刊
Translational Stroke Research
Translational Stroke Research CLINICAL NEUROLOGY-NEUROSCIENCES
CiteScore
13.80
自引率
4.30%
发文量
130
审稿时长
6-12 weeks
期刊介绍: Translational Stroke Research covers basic, translational, and clinical studies. The Journal emphasizes novel approaches to help both to understand clinical phenomenon through basic science tools, and to translate basic science discoveries into the development of new strategies for the prevention, assessment, treatment, and enhancement of central nervous system repair after stroke and other forms of neurotrauma. Translational Stroke Research focuses on translational research and is relevant to both basic scientists and physicians, including but not restricted to neuroscientists, vascular biologists, neurologists, neuroimagers, and neurosurgeons.
期刊最新文献
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