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Discriminating cognitive status in Parkinson’s disease through functional connectomics and machine learning

机译:通过功能连接组学和机器学习来区分帕金森氏病的认知状态

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摘要

There is growing interest in the potential of neuroimaging to help develop non-invasive biomarkers in neurodegenerative diseases. In this study, connection-wise patterns of functional connectivity were used to distinguish Parkinson’s disease patients according to cognitive status using machine learning. Two independent subject samples were assessed with resting-state fMRI. The first (training) sample comprised 38 healthy controls and 70 Parkinson’s disease patients (27 with mild cognitive impairment). The second (validation) sample included 25 patients (8 with mild cognitive impairment). The Brainnetome atlas was used to reconstruct the functional connectomes. Using a support vector machine trained on features selected through randomized logistic regression with leave-one-out cross-validation, a mean accuracy of 82.6% (p < 0.002) was achieved in separating patients with mild cognitive impairment from those without it in the training sample. The model trained on the whole training sample achieved an accuracy of 80.0% when used to classify the validation sample (p = 0.006). Correlation analyses showed that the connectivity level in the edges most consistently selected as features was associated with memory and executive function performance in the patient group. Our results demonstrate that connection-wise patterns of functional connectivity may be useful for discriminating Parkinson’s disease patients according to the presence of cognitive deficits.
机译:人们对神经影像学的潜力越来越感兴趣,以帮助发展神经退行性疾病中的非侵入性生物标志物。在这项研究中,功能连接的连接方式被用来通过机器学习根据认知状态来区分帕金森氏病患者。用静息态功能磁共振成像评估了两个独立的受试者样本。第一个(训练)样本包括38名健康对照者和70名帕金森氏病患者(其中27名患有轻度认知障碍)。第二个(验证)样本包括25名患者(其中8名患有轻度认知障碍)。 Brainnetome图集用于重建功能连接体。使用支持向量机训练的特征,这些特征通过随机对数回归选择的特征进行留一法交叉验证,在训练中将轻度认知障碍患者与没有轻度认知障碍的患者分离开来,平​​均准确度达到82.6%(p <0.002)样品。在对整个训练样本进行训练的模型用于对验证样本进行分类时,其准确性达到了80.0%(p = 0.006)。相关分析表明,最一致地被选作特征的边缘的连通性水平与患者组的记忆力和执行功能表现有关。我们的研究结果表明,根据认知缺陷的存在,功能连接的连接方式可能有助于区分帕金森氏病患者。

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