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首页> 外文期刊>NeuroImage: Clinical >Resting connectivity predicts task activation in pre-surgical populations
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Resting connectivity predicts task activation in pre-surgical populations

机译:保持连通性可预测手术前人群的任务激活

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Injury and disease affect neural processing and increase individual variations in patients when compared with healthy controls. Understanding this increased variability is critical for identifying the anatomical location of eloquent brain areas for pre-surgical planning. Here we show that precise and reliable language maps can be inferred in patient populations from resting scans of idle brain activity. We trained a predictive model on pairs of resting-state and task-evoked data and tested it to predict activation of unseen patients and healthy controls based on their resting-state data alone. A well-validated language task (category fluency) was used in acquiring the task-evoked fMRI data. Although patients showed greater variation in their actual language maps, our models successfully learned variations in both patient and control responses from the individual resting-connectivity features. Importantly, we further demonstrate that a model trained exclusively on the more-homogenous control group can be used to predict task activations in patients. These results are the first to show that resting connectivity robustly predicts individual differences in neural response in cases of pathological variability. Highlights ? A method for identifying eloquent areas in the brain from resting fMRI is proposed. ? It uses supervised learning to predict task contrasts from resting connectivity. ? Good predictions were obtained in controls and in pre-surgical patient populations. ? Patient diagnoses included epilepsy, tumours, and vascular lesions. ? Language maps in patients could be predicted from models trained on controls.
机译:与健康对照相比,伤害和疾病会影响神经处理并增加患者的个体差异。了解这种增加的变异性对于确定术前计划中雄辩的大脑区域的解剖位置至关重要。在这里,我们表明,可以通过对空闲的大脑活动进行静息扫描来推断出准确而可靠的语言图。我们在静止状态和任务诱发的数据对上训练了一种预测模型,并对其进行了测试,以仅根据他们的静止状态数据预测看不见的患者和健康对照的激活。一个有效的语言任务(类别流利度)用于获取任务诱发的功能磁共振成像数据。尽管患者的实际语言图谱显示出较大的差异,但我们的模型成功地从个体的静息连接特征中学习了患者和对照反应的差异。重要的是,我们进一步证明,仅在更为同质的对照组上训练的模型可以用于预测患者的任务激活。这些结果首次表明,在病理变异的情况下,静息连通性可以强有力地预测神经反应的个体差异。强调 ?提出了一种从静息功能磁共振成像中识别大脑雄辩区域的方法。 ?它使用监督学习来预测来自静止连接的任务对比。 ?在对照组和术前患者人群中均获得了良好的预测。 ?患者诊断包括癫痫病,肿瘤和血管病变。 ?患者的语言图可以从在控件上训练的模型中预测。

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