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Use of machine learning to predict cognitive performance based on brain metabolism in Neurofibromatosis type 1

机译:利用机器学习预测1型神经纤维瘤病基于脑代谢的认知表现

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摘要

Neurofibromatosis Type 1 (NF1) can cause a wide range of cognitive deficits, but its underlying nature is still unknown. We investigated the correlation between cognitive performance and specific patterns of resting-state brain metabolism in a NF1 sample. Sixteen individuals diagnosed with NF1 underwent 18F-FDG PET/CT brain imaging followed by a neuropsychological assessment. Principal component analysis was performed on 17 measures of cognitive function and a machine learning approach based on Gaussian Process Regression was used to individually predict the components that represented most of the variance in the neuropsychological data. The accuracy of the method was estimated using leave-one-out cross-validation and its significance through permutation testing. We found that only the first component could be accurately predicted from resting state metabolism (r = 0.926, p<0.001). Multiple and heterogeneous measures contribute to the first component, mainly WISC/WAIS Procedure and Verbal IQ, verbal memory and fluency. Considering the accurate prediction of measures of neuropsychological performance based on brain metabolism in NF1 patients, this suggests an underlying metabolic pattern that relates to cognitive performance in this group.
机译:1型神经纤维瘤病(NF1)可能引起广泛的认知缺陷,但其潜在本质仍然未知。我们调查了认知能力与NF1样本中静止状态脑代谢的特定模式之间的相关性。对16位诊断为NF1的个体进行18F-FDG PET / CT脑成像,然后进行神经心理学评估。对17种认知功能指标进行了主成分分析,并使用了基于高斯过程回归的机器学习方法来单独预测代表大部分神经心理学数据差异的成分。使用留一法交叉验证法评估了该方法的准确性,并通过排列测试对其意义进行了评估。我们发现,从静止状态代谢中只能准确预测出第一成分(r = 0.926,p <0.001)。多种多样的措施是第一部分,主要是WISC / WAIS程序和口头智商,口头记忆和流利程度。考虑到基于NF1患者脑代谢的神经心理功能测量指标的准确预测,这表明与该组认知功能相关的潜在代谢模式。

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