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利用基于体素的形态测量和机器学习对PPMI MRI扫描进行分类以辅助帕金森病的诊断。

Classification of PPMI MRI scans with voxel-based morphometry and machine learning to assist in the diagnosis of Parkinson's disease.

作者信息

Solana-Lavalle Gabriel, Rosas-Romero Roberto

机构信息

Department of Electrical and Computer Engineering, Universidad de las Américas-Puebla Santa Catarina Mártir, San Andrés Cholula, Puebla, 72810, México.

Department of Electrical and Computer Engineering, Universidad de las Américas-Puebla Santa Catarina Mártir, San Andrés Cholula, Puebla, 72810, México.

出版信息

Comput Methods Programs Biomed. 2021 Jan;198:105793. doi: 10.1016/j.cmpb.2020.105793. Epub 2020 Oct 15.

Abstract

BACKGROUND AND OBJECTIVES

Qualitative and quantitative analyses of Magnetic Resonance Imaging (MRI) scans are carried out to study and understand Parkinson's Disease, the second most common neurodegenerative disorder in people at their 60's. Some quantitative analyses are based on the application of voxel-based morphometry (VBM) on magnetic resonance images to determine the regions of interest, within gray matter, where there is a loss of the nerve cells that generate dopamine. This loss of dopamine is indicative of Parkinson's disease. The purpose of this research is the introduction of a new method to classify the 3-D magnetic resonance scans of an individual, as an assisting tool for diagnosis of Parkinson's disease by using the largest MRI dataset (Parkinson's Progression Markers Initiative) from a population of patients with Parkinson's disease and control individuals. A contribution is that separate studies are conducted for men and women since gender plays a significant role within Neurobiology, which is demonstrated by the fact that men are more prone to Parkinson's disease than women are.

METHODS

Previous to classification, VBM is conducted on magnetic resonance images to detect the regions where features are extracted by using first- and second-order statistics methods. Furthermore, the number of features is considerably reduced by using feature selection techniques. Seven classifiers are used and we are conducting separate experiments for men and women.

RESULTS

The best detection performance achieved in men is 99.01% of accuracy, 99.35% of sensitivity, 100% of specificity, and 100% of precision. The best detection performance achieved in women is 96.97% of accuracy, 100% of sensitivity, 96.15% of specificity, and 97.22% of precision. During classification of magnetic resonance images, the corresponding computational complexity is reduced since few features are selected.

CONCLUSIONS

The proposed method provides high performance as an assisting tool in the diagnosis of Parkinson's disease, by conducting separate experiments in men and women. While previous works have focused their analysis to the striatum region of the brain (the largest nuclear complex of the basal ganglia), the proposed approach is based on analysis over the whole brain by looking for decreases of tissue thickness, with the consequence of finding other regions of interest such as the cortex.

摘要

背景与目的

对磁共振成像(MRI)扫描进行定性和定量分析,以研究和理解帕金森病,这是60岁人群中第二常见的神经退行性疾病。一些定量分析基于体素形态计量学(VBM)在磁共振图像上的应用,以确定灰质内产生多巴胺的神经细胞缺失的感兴趣区域。多巴胺的这种缺失是帕金森病的指征。本研究的目的是引入一种新方法,通过使用来自帕金森病患者群体和对照个体的最大MRI数据集(帕金森病进展标志物计划),对个体的三维磁共振扫描进行分类,作为帕金森病诊断的辅助工具。一项贡献是针对男性和女性分别进行研究,因为性别在神经生物学中起着重要作用,这一事实表明男性比女性更容易患帕金森病。

方法

在分类之前,对磁共振图像进行VBM,以检测使用一阶和二阶统计方法提取特征的区域。此外,通过使用特征选择技术,显著减少了特征数量。使用了七个分类器,并且我们针对男性和女性分别进行实验。

结果

男性获得的最佳检测性能为准确率99.01%、灵敏度99.35%、特异性100%和精确率100%。女性获得的最佳检测性能为准确率96.97%、灵敏度100%、特异性96.15%和精确率97.22%。在磁共振图像分类过程中,由于选择的特征较少,相应的计算复杂度降低。

结论

所提出的方法通过对男性和女性分别进行实验,作为帕金森病诊断的辅助工具具有高性能。虽然先前的工作将分析重点放在大脑的纹状体区域(基底神经节最大的核复合体),但所提出的方法基于对整个大脑的分析,寻找组织厚度的减少,结果发现了其他感兴趣区域,如皮层。

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