Department of Clinical Neurosciences (DCN), Royal Infirmary of Edinburgh, Edinburgh EH16 4SA, UK.
MRC Cognition and Brain Sciences Unit, University of Cambridge, Cambridge CB2 7EF, UK.
J Neurol Sci. 2022 May 15;436:120229. doi: 10.1016/j.jns.2022.120229. Epub 2022 Mar 21.
Post stroke emotionalism (PSE) is a common but poorly understood condition. The value of altered brain structure as a putative risk factor for PSE alongside routinely available demographic and clinical variables has yet to be elucidated.
85 patients were recruited from acute inpatient settings within 2 weeks of stroke. PSE was diagnosed using a validated semi-structured interview and standardised measures of stroke severity, functional ability, cognition, mood and quality of life were obtained. Neuroimaging variables (intracranial volume and volumes of cortical grey matter, subcortical grey matter, normal appearing white matter, cerebrum, cerebrospinal fluid and stroke; white matter hyperintensities; and mean cortical thickness) were derived using standardised methods from Magnetic Resonance Imaging (MRI) studies. The relationships between PSE diagnosis, brain structure, demographic and clinical variables were investigated using machine learning algorithms to determine how well different sets of predictors could classify PSE.
The model with the best performance was derived from neuroradiological variables alone (sensitivity = 0.75; specificity = 0.8235), successfully classifying 9/12 individuals with PSE and 28/34 non-PSE cases.
Neuroimaging measures appear to be important in PSE. Future work is needed to determine which specific variables are key. Imaging may complement standard behavioural measures and aid clinicians and researchers.
中风后情感障碍(PSE)是一种常见但尚未被充分了解的病症。大脑结构的改变是否可以作为 PSE 的潜在风险因素,与常规的人口统计学和临床变量一起,尚未得到阐明。
在中风后 2 周内,从急性住院患者中招募了 85 名患者。使用经过验证的半结构化访谈和标准化的中风严重程度、功能能力、认知、情绪和生活质量评估来诊断 PSE。使用磁共振成像(MRI)研究中的标准方法得出神经影像学变量(颅内体积和皮质灰质、皮质下灰质、正常外观的白质、大脑、脑脊液和中风的体积;脑白质高信号;以及平均皮质厚度)。使用机器学习算法研究 PSE 诊断、大脑结构、人口统计学和临床变量之间的关系,以确定不同的预测因子集如何更好地对 PSE 进行分类。
表现最佳的模型仅来自神经影像学变量(灵敏度=0.75;特异性=0.8235),成功分类了 12 名 PSE 患者中的 9 名和 34 名非 PSE 患者中的 28 名。
神经影像学测量似乎对 PSE 很重要。需要进一步研究以确定哪些特定变量是关键。影像学可能可以补充标准行为测量,并有助于临床医生和研究人员。