Weigel Karolin, Klingner Carsten M, Brodoehl Stefan, Wagner Franziska, Schwab Matthias, Güllmar Daniel, Mayer Thomas E, Güttler Felix V, Teichgräber Ulf, Gaser Christian
Department of Neurology, Jena University Hospital, Jena, Germany.
Biomagnetic Center, Jena University Hospital, Jena, Germany.
Front Neurosci. 2024 Aug 9;18:1400944. doi: 10.3389/fnins.2024.1400944. eCollection 2024.
The interrelation between acute ischemic stroke, persistent disability, and uncertain prognosis underscores the need for improved methods to predict clinical outcomes. Traditional approaches have largely focused on analysis of clinical metrics, lesion characteristics, and network connectivity, using techniques such as resting-state functional magnetic resonance imaging (rs-fMRI) and diffusion tensor imaging (DTI). However, these methods are not routinely used in acute stroke diagnostics. This study introduces an innovative approach that not only considers the lesion size in relation to the National Institutes of Health Stroke Scale (NIHSS score), but also evaluates the impact of disrupted fibers and their connections to cortical regions by introducing a disconnection value. By identifying fibers traversing the lesion and estimating their number within predefined regions of interest (ROIs) using a normative connectome atlas, our method bypasses the need for individual DTI scans. In our analysis of MRI data (T1 and T2) from 51 patients with acute or subacute subcortical stroke presenting with motor or sensory deficits, we used simple linear regression to assess the explanatory power of lesion size and disconnection value on NIHSS score. Subsequent hierarchical multiple linear regression analysis determined the incremental value of disconnection metrics over lesion size alone in relation to NIHSS score. Our results showed that models incorporating the disconnection value accounted for more variance than those based solely on lesion size (lesion size explained 44% variance, disconnection value 60%). Furthermore, hierarchical regression revealed a significant improvement ( < 0.001) in model fit when adding the disconnection value, confirming its critical role in stroke assessment. Our approach, which integrates a normative connectome to quantify disconnections to cortical regions, provides a significant improvement in assessing the current state of stroke impact compared to traditional measures that focus on lesion size. This is achieved by taking into account the lesion's location and the connectivity of the affected white matter tracts, providing a more comprehensive assessment of stroke severity as reflected in the NIHSS score. Future research should extend the validation of this approach to larger and more diverse populations, with a focus on refining its applicability to clinical assessment and long-term outcome prediction.
急性缺血性中风、持续性残疾和预后不确定之间的相互关系凸显了改进临床结果预测方法的必要性。传统方法主要集中于使用静息态功能磁共振成像(rs-fMRI)和扩散张量成像(DTI)等技术对临床指标、病变特征和网络连通性进行分析。然而,这些方法在急性中风诊断中并未常规使用。本研究引入了一种创新方法,该方法不仅考虑与美国国立卫生研究院卒中量表(NIHSS评分)相关的病变大小,还通过引入一个断开连接值来评估中断纤维及其与皮质区域连接的影响。通过使用标准化连接组图谱识别穿过病变的纤维并估计其在预定义感兴趣区域(ROI)内的数量,我们的方法无需进行个体DTI扫描。在对51例出现运动或感觉障碍的急性或亚急性皮质下中风患者的MRI数据(T1和T2)进行分析时,我们使用简单线性回归来评估病变大小和断开连接值对NIHSS评分的解释力。随后的分层多元线性回归分析确定了仅考虑病变大小相比,断开连接指标相对于NIHSS评分的增量价值。我们的结果表明,纳入断开连接值的模型比仅基于病变大小的模型解释了更多的方差(病变大小解释了44%的方差,断开连接值解释了60%)。此外,分层回归显示,添加断开连接值时模型拟合有显著改善(<0.001),证实了其在中风评估中的关键作用。我们的方法通过整合标准化连接组来量化与皮质区域的断开连接,与专注于病变大小的传统测量方法相比,在评估中风影响的当前状态方面有显著改进。这是通过考虑病变的位置和受影响白质束的连通性来实现的,从而对NIHSS评分所反映的中风严重程度进行更全面的评估。未来的研究应将这种方法的验证扩展到更大、更多样化的人群,重点是优化其在临床评估和长期结果预测中的适用性。