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首页> 外文期刊>Brain: A journal of neurology >Early functional magnetic resonance imaging activations predict language outcome after stroke.
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Early functional magnetic resonance imaging activations predict language outcome after stroke.

机译:早期的功能磁共振成像激活可以预测中风后的语言结局。

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An accurate prediction of system-specific recovery after stroke is essential to provide rehabilitation therapy based on the individual needs. We explored the usefulness of functional magnetic resonance imaging scans from an auditory language comprehension experiment to predict individual language recovery in 21 aphasic stroke patients. Subjects with an at least moderate language impairment received extensive language testing 2 weeks and 6 months after left-hemispheric stroke. A multivariate machine learning technique was used to predict language outcome 6 months after stroke. In addition, we aimed to predict the degree of language improvement over 6 months. 76% of patients were correctly separated into those with good and bad language performance 6 months after stroke when based on functional magnetic resonance imaging data from language relevant areas. Accuracy further improved (86% correct assignments) when age and language score were entered alongside functional magnetic resonance imaging data into the fully automatic classifier. A similar accuracy was reached when predicting the degree of language improvement based on imaging, age and language performance. No prediction better than chance level was achieved when exploring the usefulness of diffusion weighted imaging as well as functional magnetic resonance imaging acquired two days after stroke. This study demonstrates the high potential of current machine learning techniques to predict system-specific clinical outcome even for a disease as heterogeneous as stroke. Best prediction of language recovery is achieved when the brain activation potential after system-specific stimulation is assessed in the second week post stroke. More intensive early rehabilitation could be provided for those with a predicted poor recovery and the extension to other systems, for example, motor and attention seems feasible.
机译:准确预测中风后特定于系统的恢复对于根据个人需求提供康复治疗至关重要。我们探讨了来自听觉语言理解实验的功能性磁共振成像扫描的功能,以预测21名失语症中风患者的个体语言恢复。患有至少中度语言障碍的受试者在左半球卒中后2周和6个月接受了广泛的语言测试。卒中后6个月,我们使用多元机器学习技术预测语言结局。此外,我们旨在预测6个月内语言水平的提高。根据来自语言相关领域的功能性磁共振成像数据,将中风后6个月内将76%的患者正确分为语言表现良好和不良的患者。将年龄和语言得分与功能性磁共振成像数据一起输入全自动分类器后,准确性进一步提高(正确分配的86%)。根据影像,年龄和语言表现来预测语言改善的程度时,达到了类似的准确性。在探索卒中两天后获得的弥散加权成像以及功能性磁共振成像的有用性时,没有比机会水平更好的预测。这项研究表明,即使对于像卒中这样的异质性疾病,当前的机器学习技术也具有预测系统特定临床结果的巨大潜力。当在卒中后第二周评估系统特异性刺激后的大脑激活潜力时,可以达到语言恢复的最佳预测。可以为那些预计康复较差并且扩展到其他系统(例如,运动和注意力似乎可行)的患者提供更深入的早期康复。

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