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脉络膜前动脉供血区白质高信号负荷及梗死体积与早期神经功能进展的相关性:一项双中心回顾性研究

Association of white matter hyperintensity burden and infarct volume in the anterior choroidal artery territory with early neurological progression: a dual-center retrospective study.

作者信息

Gao Weiwei, Wang Lixue, Huang Junyi, Yu Yitao, She Jingjing, Wang Mingyang, Cai Lijuan, Kang Taishan, Chen Xingyu, Lin Jianzhong, Zhu Renjing

机构信息

Department of Neurology, Zhongshan Hospital of Xiamen University, School of Medicine, Xiamen University, National Advanced Center for Stroke, Xiamen, China.

Xiamen Clinical Research Center for Cerebrovascular Diseases, Xiamen, China.

出版信息

Front Aging Neurosci. 2025 May 19;17:1577742. doi: 10.3389/fnagi.2025.1577742. eCollection 2025.

Abstract

OBJECTIVE

To investigate the associations of white matter hyperintensity (WMH) burden and infarct volume with early neurological progression in anterior choroidal artery (AChA) territory infarction, and to identify potential imaging-based predictive thresholds.

METHODS

This retrospective cohort study consecutively enrolled AChA infarct patients admitted to two comprehensive stroke centers between September 2018 and September 2024. WMH burden and infarct volume were assessed using the Fazekas visual rating scale and an automated volumetric quantification method based on lesion prediction algorithm, respectively. The primary outcome was early neurological progression. Multivariate logistic regression models with stepwise adjustment for confounders were used to evaluate the associations of WMH burden and infarct volume with early progression. Restricted cubic spline regression was performed to explore non-linear relationships and to determine thresholds. Continuous variables were standardized, and piecewise regression analysis was conducted based on the identified thresholds. Subgroup analyses with interaction tests were performed to assess the consistency of these associations across different populations.

RESULTS

A total of 216 patients were included, of whom 82 (38.0%) experienced early neurological progression. After adjustment for potential confounders, WMH burden showed a significant non-linear association with progression risk. For WMH volumes <66.1 mL, each standard deviation increase was associated with a 74% higher risk of progression (standardized OR: 1.74, 95% CI: 1.29-2.40,  < 0.001). Compared with the lowest quartile, patients in the highest WMH quartile showed significantly increased risk (adjusted OR: 5.32, 95% CI: 1.48-13.88,  = 0.009). This association was confirmed by Fazekas scale analysis, with grade 3 patients showing substantially higher risk than grade 0 (adjusted OR: 6.22, 95% CI: 1.74-25.42,  = 0.007). Infarct volume demonstrated a similar non-linear pattern; for volumes <1.1 mL, each standard deviation increase was associated with 59% higher progression risk (standardized OR: 1.59, 95% CI: 1.04-2.47,  = 0.036). Quartile analysis revealed the highest risk in the third quartile compared to the lowest (adjusted OR: 5.63, 95% CI: 2.06-15.40,  < 0.001).

CONCLUSION

This study revealed non-linear associations of WMH and infarct volume with early progression in AChA infarct patients.

摘要

目的

探讨脉络膜前动脉(AChA)供血区梗死患者的白质高信号(WMH)负荷和梗死体积与早期神经功能进展的相关性,并确定基于影像学的潜在预测阈值。

方法

这项回顾性队列研究连续纳入了2018年9月至2024年9月期间入住两个综合卒中中心的AChA梗死患者。分别采用Fazekas视觉评分量表和基于病变预测算法的自动体积定量方法评估WMH负荷和梗死体积。主要结局是早期神经功能进展。使用对混杂因素进行逐步调整的多变量逻辑回归模型来评估WMH负荷和梗死体积与早期进展的相关性。进行受限立方样条回归以探索非线性关系并确定阈值。对连续变量进行标准化,并基于确定的阈值进行分段回归分析。进行亚组分析和交互检验以评估这些关联在不同人群中的一致性。

结果

共纳入216例患者,其中82例(38.0%)出现早期神经功能进展。在对潜在混杂因素进行调整后,WMH负荷与进展风险呈显著非线性关联。对于WMH体积<66.1 mL,每增加一个标准差,进展风险增加74%(标准化OR:1.74,95%CI:1.29 - 2.40,P<0.001)。与最低四分位数相比,WMH最高四分位数的患者风险显著增加(调整后OR:5.32,95%CI:1.48 - 13.88,P = 0.009)。Fazekas量表分析证实了这种关联,3级患者的风险明显高于0级(调整后OR:6.22,95%CI:1.74 - 25.42,P = 0.007)。梗死体积呈现出类似的非线性模式;对于体积<1.1 mL,每增加一个标准差,进展风险增加59%(标准化OR:1.59,95%CI:1.04 - 2.47,P = 0.036)。四分位数分析显示,与最低四分位数相比,第三四分位数的风险最高(调整后OR:5.63,95%CI:2.06 - 15.40,P<0.001)。

结论

本研究揭示了AChA梗死患者中WMH和梗死体积与早期进展的非线性关联。

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