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首页> 外文期刊>NeuroImage: Clinical >A totally data-driven whole-brain multimodal pipeline for the discrimination of Parkinson's disease, multiple system atrophy and healthy control
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A totally data-driven whole-brain multimodal pipeline for the discrimination of Parkinson's disease, multiple system atrophy and healthy control

机译:完全由数据驱动的全脑多模式流水线,用于鉴别帕金森氏病,多系统萎缩和健康控制

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摘要

Parkinson's Disease (PD) and Multiple System Atrophy (MSA) are two parkinsonian syndromes that share many symptoms, albeit having very different prognosis. Although previous studies have proposed multimodal MRI protocols combined with multivariate analysis to discriminate between these two populations and healthy controls, studies combining all MRI indexes relevant for these disorders (i.e. grey matter volume, fractional anisotropy, mean diffusivity, iron deposition, brain activity at rest and brain connectivity) with a completely data-driven voxelwise analysis for discrimination are still lacking. In this study, we used such a complete MRI protocol and adapted a fully-data driven analysis pipeline to discriminate between these populations and a healthy controls (HC) group. The pipeline combined several feature selection and reduction steps to obtain interpretable models with a low number of discriminant features that can shed light onto the brain pathology of PD and MSA. Using this pipeline, we could discriminate between PD and HC (best accuracy?=?0.78), MSA and HC (best accuracy?=?0.94) and PD and MSA (best accuracy?=?0.88). Moreover, we showed that indexes derived from resting-state fMRI alone could discriminate between PD and HC, while mean diffusivity in the cerebellum and the putamen alone could discriminate between MSA and HC. On the other hand, a more diverse set of indexes derived by multiple modalities was needed to discriminate between the two disorders. We showed that our pipeline was able to discriminate between distinct pathological populations while delivering sparse model that could be used to better understand the neural underpinning of the pathologies.
机译:帕金森氏病(PD)和多系统萎缩(MSA)是两种帕金森综合症,尽管预后差异很大,但它们具有许多症状。尽管先前的研究提出了多模式MRI方案并结合多变量分析来区分这两个人群和健康对照,但是研究结合了与这些疾病相关的所有MRI指标(即灰质体积,分数各向异性,平均扩散率,铁沉积,静息大脑活动)和大脑的连通性),仍然缺乏完全由数据驱动的体素分析来识别。在这项研究中,我们使用了这样一个完整的MRI协议,并采用了完全数据驱动的分析流程来区分这些人群和健康对照组(HC)组。该管线结合了几个特征选择和归约步骤,从而获得了具有少量判别特征的可解释模型,这些判别特征可以揭示PD和MSA的脑部病理。使用该管道,我们可以区分PD和HC(最佳准确度= 0.78),MSA和HC(最佳准确度= 0.94)以及PD和MSA(最佳准确度= 0.88)。此外,我们表明,仅从静止状态fMRI得出的指标可以区分PD和HC,而仅小脑和壳核的平均扩散率可以区分MSA和HC。另一方面,需要通过多种方式得出的一组更多样化的指标来区分这两种疾病。我们展示了我们的流程能够区分不同的病理人群,同时提供了可用于更好地了解病理的神经基础的稀疏模型。

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