Prediction models of the aphasia severity after stroke by lesion load of cortical language areas and white matter tracts: An atlas-based study

IF 3.5 3区 医学 Q2 NEUROSCIENCES
Qiwei Yu , Yan Sun , Xiaowen Ju , Tianfen Ye , Kefu Liu
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引用次数: 0

Abstract

Objective

To construct relatively objective, atlas-based multivariate models for predicting early aphasia severity after stroke, using structural magnetic resonance imaging.

Methods

We analyzed the clinical and imaging data of 46 patients with post-stroke aphasia. The aphasia severity was identified with a Western Aphasia Battery Aphasia Quotient. The assessments of stroke lesions were indicated by the lesion load of both the cortical language areas (Areas-LL) and four white matter tracts (i.e., the superior longitudinal fasciculus, SLF-LL; the inferior frontal occipital fasciculi, IFOF-LL; the inferior longitudinal, ILF-LL; and the uncinate fasciculi, UF-LL) extracted from human brain atlas. Correlation analyses and multiple linear regression analyses were conducted to evaluate the correlations between demographic, stroke- and lesion-related variables and aphasia severity. The predictive models were then established according to the identified significant variables. Finally, the receiver operating characteristic (ROC) curve was utilized to assess the accuracy of the predictive models.

Results

The variables including Areas-LL, the SLF-LL, and the IFOF-LL were significantly negatively associated with aphasia severity (p < 0.05). In multiple linear regression analyses, these variables accounted for 59.4 % of the variance (p < 0.05). The ROC curve analyses yielded the validated area under the curve (AUC) 0.84 both for Areas-LL and SLF-LL and 0.76 for IFOF-LL, indicating good predictive performance (p < 0.01). Adding the combination of SLF-LL and IFOF-LL to this model increased the explained variance to 62.6 % and the AUC to 0.92.

Conclusions

The application of atlas-based multimodal lesion assessment may help predict the aphasia severity after stroke, which needs to be further validated and generalized for the prediction of more outcome measures in populations with various brain injuries.

根据大脑皮层语言区和白质层的病变负荷预测脑卒中后失语症严重程度的模型:基于图谱的研究
目的利用结构性磁共振成像构建相对客观的、基于图谱的多变量模型,用于预测中风后早期失语症的严重程度:我们分析了 46 名卒中后失语患者的临床和影像学数据。方法:我们对 46 名中风后失语患者的临床和影像学数据进行了分析,失语严重程度通过西方失语测验(Western Aphasia Battery Aphasia Quotient)来确定。对脑卒中病变的评估是通过从人脑图谱中提取的大脑皮质语言区(Area-LL)和四条白质束(即上纵筋束,SLF-LL;下额枕筋束,IFOF-LL;下纵筋束,ILF-LL;钩状筋束,UF-LL)的病变负荷来进行的。通过相关性分析和多元线性回归分析来评估人口统计学、卒中和病变相关变量与失语症严重程度之间的相关性。然后根据确定的重要变量建立预测模型。最后,利用接收者操作特征曲线(ROC)评估预测模型的准确性:结果:Areas-LL、SLF-LL 和 IFOF-LL 等变量与失语症严重程度呈显著负相关(P < 0.05)。在多元线性回归分析中,这些变量占方差的 59.4%(p < 0.05)。通过 ROC 曲线分析,Areas-LL 和 SLF-LL 的有效曲线下面积 (AUC) 均为 0.84,IFOF-LL 为 0.76,表明预测效果良好(p < 0.01)。在该模型中加入 SLF-LL 和 IFOF-LL 组合后,解释方差增加到 62.6%,AUC 增加到 0.92:基于地图集的多模态病变评估可帮助预测脑卒中后失语症的严重程度,该方法需要进一步验证和推广,以预测各种脑损伤人群的更多结果。
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来源期刊
Brain Research Bulletin
Brain Research Bulletin 医学-神经科学
CiteScore
6.90
自引率
2.60%
发文量
253
审稿时长
67 days
期刊介绍: The Brain Research Bulletin (BRB) aims to publish novel work that advances our knowledge of molecular and cellular mechanisms that underlie neural network properties associated with behavior, cognition and other brain functions during neurodevelopment and in the adult. Although clinical research is out of the Journal''s scope, the BRB also aims to publish translation research that provides insight into biological mechanisms and processes associated with neurodegeneration mechanisms, neurological diseases and neuropsychiatric disorders. The Journal is especially interested in research using novel methodologies, such as optogenetics, multielectrode array recordings and life imaging in wild-type and genetically-modified animal models, with the goal to advance our understanding of how neurons, glia and networks function in vivo.
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