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Multivariate Analysis of 18F-DMFP PET Data to Assist the Diagnosis of Parkinsonism

机译:18F-DMFP PET数据的多变量分析有助于帕金森氏病的诊断

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An early and differential diagnosis of parkinsonian syndromes still remains a challenge mainly due to the similarity of their symptoms during the onset of the disease. Recently, 18F-Desmethoxyfallypride (DMFP) has been suggested to increase the diagnostic precision as it is an effective radioligand that allows us to analyze post-synaptic dopamine D2/3 receptors. Nevertheless, the analysis of these data is still poorly covered and its use limited. In order to address this challenge, this paper shows a novel model to automatically distinguish idiopathic parkinsonism from non-idiopathic variants using DMFP data. The proposed method is based on a multiple kernel support vector machine and uses the linear version of this classifier to identify some regions of interest: the olfactory bulb, thalamus, and supplementary motor area. We evaluated the proposed model for both, the binary separation of idiopathic and non-idiopathic parkinsonism and the multigroup separation of parkinsonian variants. These systems achieved accuracy rates higher than 70%, outperforming DaTSCAN neuroimages for this purpose. In addition, a system that combined DaTSCAN and DMFP data was assessed.
机译:帕金森综合症的早期和鉴别诊断仍然是一个挑战,主要是由于在疾病发作期间它们的症状相似。最近,有人建议18F-去甲氧基氟吡咯烷酮(DMFP)提高诊断的准确性,因为它是一种有效的放射性配体,它使我们能够分析突触后多巴胺D2 / 3受体。尽管如此,对这些数据的分析仍然覆盖不广,其使用受到限制。为了解决这一挑战,本文展示了一种新颖的模型,该模型可以使用DMFP数据自动将特发性帕金森病与非特发性帕金森病区分开。所提出的方法基于多核支持向量机,并使用此分类器的线性版本来识别一些感兴趣的区域:嗅球,丘脑和辅助运动区域。我们针对特发性和非特发性帕金森病的二元分离以及帕金森病变体的多组分离评估了提出的模型。这些系统的准确率超过70%,优于DaTSCAN神经图像。另外,评估了一个结合了DaTSCAN和DMFP数据的系统。

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