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Applications of neural network analyses to in vivo 1H magnetic resonance spectroscopy of Parkinson disease patients.

机译:神经网络分析在帕金森病患者体内1H磁共振波谱中的应用。

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PurposeTo apply neural network analyses to in vivo magnetic resonance spectra of controls and Parkinson disease (PD) patients for the purpose of classification.Materials and MethodsNinety-seven in vivo proton magnetic resonance spectra of the basal ganglia were recorded from 31 patients with (PD) and 14 age-matched healthy volunteers on a 1.5-T imager. The PD patients were grouped as follows: probable PD (N = 15), possible PD (N = 11), and atypical PD (N = 5). Total acquisition times of approximately five minutes were achieved with a TE (echo time) of 135 msec, a TR (repetition time) of 2000 msec, and 128 scan averages. Neural network (back propagation, Kohonen, probabilistic, and radial basis function) and related (generative topographic mapping) data analyses were performed.ResultsConventional data analysis showed no statistically significant differences in metabolite ratios based on measuring signal intensities. The trained networks could distinguish control from PD with considerable accuracy (true positive fraction 0.971, true negative fraction 0.933). When four classes were defined, approximately 88% of the predictions were correct. The multivariate analysis indicated metabolic changes in the basal ganglia in PD.ConclusionA variety of neural network and related approaches can be successfully applied to both qualitative visualization and classification of in vivo spectra of PD patients. J. Magn. Reson. Imaging 2002;16:13-20.
机译:目的将神经网络分析应用于对照组和帕金森病(PD)患者的体内磁共振波谱,以进行分类。材料与方法记录31例(PD)患者的基底节的体内质子磁共振波谱图(共97个) 1.5吨成像仪上的14名年龄匹配的健康志愿者。 PD患者分为以下几类:可能的PD(N = 15),可能的PD(N = 11)和非典型PD(N = 5)。在135毫秒的TE(回波时间),2000毫秒的TR(重复时间)和128次扫描平均值的情况下,获得了大约五分钟的总采集时间。进行了神经网络(反向传播,Kohonen,概率和径向基函数)和相关的(生成地形图)数据分析。结果常规数据分析显示,基于测量信号强度的代谢物比率没有统计学上的显着差异。受过训练的网络可以以相当高的准确度将控制与PD区分(真实正分数0.971,真实负分数0.933)。当定义了四个类别时,大约88%的预测是正确的。多元分析表明PD患者基底神经节的代谢发生了变化。结论多种神经网络及相关方法可以成功地应用于PD患者体内谱的定性可视化和分类。 J.Magn。雷森成像2002; 16:13-20。

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